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qsc_code_frac_chars_dupe_8grams_quality_signal
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qsc_code_frac_chars_dupe_9grams_quality_signal
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qsc_code_frac_chars_dupe_10grams_quality_signal
float64
qsc_code_frac_chars_replacement_symbols_quality_signal
float64
qsc_code_frac_chars_digital_quality_signal
float64
qsc_code_frac_chars_whitespace_quality_signal
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qsc_code_size_file_byte_quality_signal
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qsc_code_num_lines_quality_signal
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qsc_code_num_chars_line_max_quality_signal
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qsc_code_num_chars_line_mean_quality_signal
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qsc_code_frac_chars_alphabet_quality_signal
float64
qsc_code_frac_chars_comments_quality_signal
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qsc_code_cate_xml_start_quality_signal
float64
qsc_code_frac_lines_dupe_lines_quality_signal
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qsc_code_cate_autogen_quality_signal
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float64
qsc_code_frac_lines_assert_quality_signal
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qsc_codepython_cate_ast_quality_signal
float64
qsc_codepython_frac_lines_func_ratio_quality_signal
float64
qsc_codepython_cate_var_zero_quality_signal
bool
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float64
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effective
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41c7c36420889797027869260f59634279ae7c65
386
py
Python
pw_manager/ui/settings/settings_screen.py
DestinyofYeet/PasswordManagerV2
e70e90f262426f097e902f8e64d2b751717f8900
[ "MIT" ]
null
null
null
pw_manager/ui/settings/settings_screen.py
DestinyofYeet/PasswordManagerV2
e70e90f262426f097e902f8e64d2b751717f8900
[ "MIT" ]
null
null
null
pw_manager/ui/settings/settings_screen.py
DestinyofYeet/PasswordManagerV2
e70e90f262426f097e902f8e64d2b751717f8900
[ "MIT" ]
null
null
null
from pw_manager.utils import utils, constants from pw_manager.ui.settings.color import color from YeetsMenu.menu import Menu from YeetsMenu.option import Option def show(): utils.clear_screen() menu = Menu(utils.get_noice_text("Settings"), colors=constants.colors) menu.add_selectable(Option("Color settings", color.show, skip_enter_confirmation=True)) menu.run()
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41c855c0455a1e213ee8f4c1aed1a04581517581
16,416
py
Python
bundestagger/bundestag/models.py
stefanw/Bundestagger
14787cf18622d0330a94696981bd28eaa8ba0f3a
[ "MIT" ]
3
2018-03-27T10:29:31.000Z
2021-02-28T21:35:27.000Z
bundestagger/bundestag/models.py
stefanw/Bundestagger
14787cf18622d0330a94696981bd28eaa8ba0f3a
[ "MIT" ]
null
null
null
bundestagger/bundestag/models.py
stefanw/Bundestagger
14787cf18622d0330a94696981bd28eaa8ba0f3a
[ "MIT" ]
null
null
null
# -*- coding: utf-8 -*- import datetime from difflib import SequenceMatcher import re from django.db import models from django.db.models import Q from django.conf import settings from django.core.urlresolvers import reverse from django.conf import settings import django.dispatch from django.template.defaultfilters import slugify from tagging.fields import TagField from bundestagger.helper.utils import padd_zeros, invalidate_cache, invalidate_cache_all_pages, get_page FRAKTIONEN = (u"fraktionslos", u"CDU/CSU", u"BÜNDNIS 90/DIE GRÜNEN", u"FDP", u"SPD", u"DIE LINKE") class PartyManager(models.Manager): cache = {} def get_party(self, name="", abbr=None): if abbr is None: return None if abbr not in FRAKTIONEN: if u"INKE" in abbr: abbr = u"DIE LINKE" if u"CDU" in abbr or u"CSU" in abbr: abbr = u"CDU/CSU" if u"NDNIS" in abbr: abbr = u"BÜNDNIS 90/DIE GRÜNEN" if u"raktionslos" in abbr: abbr = u"fraktionslos" if abbr in FRAKTIONEN: try: party = self.get(abbr=abbr) except self.model.DoesNotExist: party = self.create(name=name, abbr=abbr) return party return None def find_parties_in_text(self, text, force=False): abbrs = [] if u"INKE" in text and (not u"INKE]" in text or force): abbrs.append(u"DIE LINKE") if u"CDU" in text and (not u"[CDU" in text or force) or \ (u"CSU" in text and (not u"CSU]" in text or force)): abbrs.append(u"CDU/CSU") if u"NDNIS" in text and (not u"ÜNEN]" in text or force): abbrs.append(u"BÜNDNIS 90/DIE GRÜNEN") if u"raktionslos" in text and (not u"raktionslos]" in text or force): abbrs.append(u"fraktionslos") if u"SPD" in text and (not u"[SPD]" in text or force): abbrs.append(u"SPD") if u"FDP" in text and (not u"[FDP]" in text or force): abbrs.append(u"FDP") parties = [] for abbr in abbrs: parties.append(self.get_party(abbr=abbr)) return parties def get(self, *args, **kwargs): if "id" in kwargs: if kwargs["id"] in self.__class__.cache: return self.__class__.cache[kwargs["id"]] else: obj = super(PartyManager, self).get_query_set().get(*args, **kwargs) self.__class__.cache[obj.id] = obj return obj return super(PartyManager, self).get_query_set().get(*args, **kwargs) class Party(models.Model): name = models.CharField(blank=True, max_length=100) abbr = models.CharField(blank=True, max_length=30) objects = PartyManager() color_mapping = { 1 : "#000000", 2 : "#F1AB00", 3 : "#D71F1D", 4 : "#BE3075", 5 : "#78BC1B", 6 : "#999999" } def __unicode__(self): return self.abbr @property def color(self): return self.color_mapping[self.id] class PoliticianManager(models.Manager): def replace_politician(self, real, fake): real = Politician.objects.get(id=real) fake = Politician.objects.get(id=fake) fake.replace_with(real) fake.delete() class Politician(models.Model): first_name = models.CharField(blank=True, max_length=100) last_name_prefix = models.CharField(blank=True, max_length=100) last_name = models.CharField(blank=True, max_length=100) title = models.CharField(blank=True, max_length=100) party = models.ForeignKey(Party, blank=True, null=True) # party_member = models.OneToOneField(PartyMember, blank=True, null=True) location = models.CharField(null=True, blank=True, max_length=255) born = models.DateField(null=True, blank=True) objects = PoliticianManager() def __unicode__(self): if self.party_id is not None: party = Party.objects.get(id=self.party_id) return u"%s (%s)" % (self.name, party) else: return u"%s (unbekannt)" % (self.name) @property def slug(self): return slugify(self.name) def get_absolute_url(self): return reverse("bundestagger-bundestag-show_politician", args=(self.slug, self.id)) @property def name(self): if len(self.title): title = self.title + u" " else: title= u"" if len(self.first_name): first_name = self.first_name + u" " else: first_name = u"" if len(self.last_name_prefix): last_name_prefix = self.last_name_prefix + u" " else: last_name_prefix = u"" return "%s%s%s%s" % (title, first_name, last_name_prefix,self.last_name) def all_relations(self): relations = [x for x in dir(self) if x.endswith("_set")] result = [] for relation in relations: result.extend(getattr(self, relation).all()) return result def replace_with(self, real_politician): relations = [x for x in dir(self) if x.endswith("_set")] for relation in relations: relset = getattr(self, relation).all() if len(relset) > 0: politician_fields = [] for obj in relset: fields = obj.__class__._meta.fields for field in fields: try: if field.rel.to.__name__ == self.__class__.__name__: politician_fields.append(field.name) except AttributeError: pass if len(politician_fields)>0: for pf in politician_fields: if getattr(obj, pf) == self: setattr(obj, pf, real_politician) obj.save() class Parliament(models.Model): number = models.IntegerField() start = models.DateField(default=datetime.datetime.today, null=True, blank=True) end = models.DateField(default=datetime.datetime.today, null=True, blank=True) def __unicode__(self): return u"Parliament %d" % (self.number,) class MemberOfParliament(models.Model): politician = models.ForeignKey(Politician) parliament = models.ForeignKey(Parliament) position = models.CharField(null=True, blank=True, max_length=255) location = models.CharField(blank=True, max_length=100) direct = models.FloatField(null=True, blank=True, default=None) class Meta: unique_together = (("politician", "parliament"),) def __unicode__(self): return "%s (%s)" % (self.politician, self.parliament) class ParliamentSessionManager(models.Manager): def reversed(self): return self.order_by("-number") def ordered(self): return self.order_by("number") class ParliamentSession(models.Model): parliament = models.ForeignKey(Parliament) number = models.PositiveSmallIntegerField(db_index=True) date = models.DateTimeField() until = models.DateTimeField() checked = models.BooleanField(default=False) tags = models.TextField(blank=True) objects = ParliamentSessionManager() def __unicode__(self): return u"%d. Sitzung (%s) des %d. Deutschen Bundestags" % (self.number, self.date.strftime("%d.%m.%Y"), self.parliament.number) def get_absolute_url(self): return reverse("bundestagger-bundestag-show_session", args=(self.parliament.number, self.number)) @property def tag_list(self): return [tag.strip() for tag in self.tags.split(",") if len(tag.strip())>0] def update_tags(self,new_tags): tag_set = set([t.strip() for t in self.tags.split(",") if len(t.strip())>0]) tag_set.update([t.strip() for t in new_tags.split(",") if len(t.strip())>0]) self.tags = ",".join(tag_set) self.clear_cache() self.save() @property def document_url(self): return "http://dip21.bundestag.de/dip21/btp/%(leg)d/%(leg)d%(id)s.pdf" % {"leg":self.parliament.number, "id": padd_zeros(self.number)} def clear_cache(self): invalidate_cache(reverse("bundestagger-bundestag-list_sessions")) last_speech = self.speech_set.order_by("-ordernr")[0] url = last_speech.get_base_url() invalidate_cache_all_pages(url, last_speech.ordernr, settings.SPEECHES_PER_PAGE) class SpeechManager(models.Manager): def merge(self): for speech in self.all(): ordernr = 1 previous_parts = [] for speech_part in speech.speechpart_set.all(): if len(previous_parts) > 1 and \ (speech_part.speaker != previous_parts[-1].speaker or previous_parts[-1].event_set.count() > 0): text = u"" for p in previous_parts: text += p.text previous_parts[-1].text = text previous_parts[-1].ordernr = ordernr previous_parts[-1].save() for p in previous_parts[:-1]: p.delete() previous_parts = [] class Speech(models.Model): session = models.ForeignKey(ParliamentSession) ordernr = models.IntegerField() speaker = models.ForeignKey(Politician) start = models.DateTimeField(blank=True, default=None, null=True) end = models.DateTimeField(blank=True, default=None, null=True) webtv = models.IntegerField(blank=True, null=True) tags = TagField(blank=True) def save(self, *args, **kwargs): super(Speech,self).save(*args, **kwargs) self.session.update_tags(self.tags) def __unicode__(self): return u"Rede von %s in der %s" % (self.speaker, self.session) def text(self): return u"\n".join(map(lambda x:x.text, self.speechpart_set.order_by("ordernr"))) @property def tag_list(self): return [tag.strip() for tag in self.tags.split(",") if len(tag.strip())>0] @property def webtv_url(self): if self.webtv is not None: return u"http://webtv.bundestag.de/iptv/player/macros/_v_f_514_de/od_player.html?singleton=true&content=%d" % (self.webtv,) return u"" @property def webtv_search(self): url = u"http://webtv.bundestag.de/iptv/player/macros/bttv/list.html?pageOffset=0&pageLength=40&sort=2&lastName=%(lastname)s&firstName=%(firstname)s&fraction=&meetingNumber=%(session)s&period=%(period)s&startDay=&endDay=&topic=&submit=Suchen" return url % { "firstname": self.speaker.first_name, "lastname": self.speaker.last_name, "session": self.session.number, "period": self.session.parliament.number } def get_base_url(self): return reverse("bundestagger-bundestag-show_session", args=(self.session.parliament.number, self.session.number)) def get_absolute_url(self): page = get_page(self.ordernr, settings.SPEECHES_PER_PAGE) if page == 1: page = "" else: page = "?page=%d" % page fragment = "#speech-%d" % self.id return self.get_base_url() + page + fragment def clear_cache(self): url = self.get_base_url() invalidate_cache(url, self.ordernr, settings.SPEECHES_PER_PAGE) class SpeechPartManager(models.Manager): def list(self): return self.order_by("ordernr").select_related() class SpeechPart(models.Model): speech = models.ForeignKey(Speech) ordernr = models.IntegerField() text = models.TextField(blank=True) objects = SpeechPartManager() changed_signal = django.dispatch.Signal(providing_args=["old_text", "new_text"]) annotatable = True def __unicode__(self): return u"Teil %d der %s" % (self.ordernr, self.speech) def append_text(self, text): text = text.strip() if self.text == u"": self.text = text else: if self.text.endswith("-"): self.text = self.text[:-1] + text else: self.text = self.text+ " " + text self.save() return self.text def set_text(self, text): old_text = self.text self.text = text self.save() if hasattr(self.__class__, "changed_signal"): self.__class__.changed_signal.send(sender=self, old_text=old_text, new_text=self.text) self.clear_cache() def get_absolute_url(self): if self.ordernr == 1: return self.speech.get_absolute_url() else: return self.speech.get_absolute_url()+"-%d" % self.ordernr def clear_cache(self): self.speech.clear_cache() @classmethod def connected_update(cls, sender, **kwargs): co = kwargs["content_object"] co.clear_cache() class SessionTopManager(models.Manager): def get_tops(self, session): return self.filter(session=session).filter(Q(title__startswith="Tagesordnungspunkt")|Q(title__startswith="Zusatztagesordnungspunkt")).order_by("ordernr") class SessionTop(models.Model): session = models.ForeignKey(ParliamentSession) ordernr = models.IntegerField() title = models.TextField(blank=True) about = models.TextField(blank=True) objects = SessionTopManager() def __unicode__(self): return u"%s: %s" % (self.session, self.title) class TopSpeaker(models.Model): top = models.ForeignKey(SessionTop) speaker = models.ForeignKey(Politician) def __unicode__(self): return u"%s: %s(%s) - %s" % (self.speaker, self.top, self.top_id, self.id) class Attachment(models.Model): session = models.ForeignKey(ParliamentSession) attachmentnr = models.IntegerField(blank=True, null=True) about = models.TextField(blank=True) text = models.TextField(blank=True) def __unicode__(self): return u"%s: %s" % (self.session, self.about) class Poll(models.Model): session = models.ForeignKey(ParliamentSession) about = models.TextField(blank=True) infavor = models.IntegerField(blank=True, null=True) against = models.IntegerField(blank=True, null=True) abstinent = models.IntegerField(blank=True, null=True) def __unicode__(self): return u"%s: %s(%s)" % (self.session, self.about[:10], self.id) class PollVote(models.Model): # Ja = 1, Nein = 0, Enthalung = -1 oder 2!? poll = models.ForeignKey(Poll) vote = models.SmallIntegerField() politician = models.ForeignKey(Politician) def __unicode__(self): return u"%s: %s (%s - %d)" % (self.poll, self.politician, self.poll_id, self.vote) class Event(models.Model): # Zwischenruf, Buhruf, Heiterkeit, Beifall context = models.ForeignKey(SpeechPart, null=True, blank=True) kind = models.CharField(blank=True, max_length=100) actor_politician = models.ForeignKey(Politician, null=True, blank=True) actor_party = models.ForeignKey(Party, null=True, blank=True) text = models.TextField(blank=True, null=True) def __unicode__(self): return u"%s: %s (%s - %s @ %s)" % (self.kind, self.actor, self.text, self.id, self.context_id) @property def actor(self): if self.actor_politician is not None: return self.actor_politician else: return self.actor_party def display(self): out = u"" try: if self.kind != "": out+=u"[%s] " % self.kind if self.actor is not None: out+=u"%s" % self.actor if self.text is not None and len(self.text)>0: if self.actor is not None or self.kind !="": out+=": " out+=self.text except Exception,e: return e return out
36.15859
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16,416
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36.15859
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1
41c87d04befa3b08aff049a14265e8461d8d9c45
2,181
py
Python
rubikscubennnsolver/combinatorial.py
dwalton76/rubiks-cube-NxNxN-solver
db42aeacca81366dba87ef475274ffb99645193d
[ "MIT" ]
59
2017-04-29T15:19:29.000Z
2022-03-18T22:17:20.000Z
rubikscubennnsolver/combinatorial.py
dwalton76/rubiks-cube-NxNxN-solver
db42aeacca81366dba87ef475274ffb99645193d
[ "MIT" ]
44
2017-05-25T00:05:31.000Z
2022-03-23T22:39:34.000Z
rubikscubennnsolver/combinatorial.py
dwalton76/rubiks-cube-NxNxN-solver
db42aeacca81366dba87ef475274ffb99645193d
[ "MIT" ]
19
2017-06-17T00:32:47.000Z
2021-12-18T00:03:56.000Z
""" https://en.wikipedia.org/wiki/Combinatorial_number_system The code below is no longer used but am saving it for a rainy day """ # standard libraries import math from typing import List def choose(a: int, b: int) -> int: """ >>> choose(23, 8) 490314 >>> choose(9, 6) 84 >>> choose(8, 5) 56 >>> choose(4, 4) 1 >>> choose(3, 4) 0 >>> choose(0, 1) 0 >>> choose(7, -1) 0 """ if b < 0: return 0 elif b == a: return 1 elif b > a: return 0 return int(math.factorial(a) / (math.factorial(b) * math.factorial(a - b))) def encode(perm: List[int]) -> int: """ >>> encode([11, 10, 9, 8, 3, 2, 1, 0]) 425 >>> encode([7, 6, 5, 4, 3, 2, 1, 0]) 0 """ perm_len = len(perm) k = perm_len i = 0 total = 0 while i < perm_len: result = choose(perm[i], k) total += result k -= 1 i += 1 return total def decode(n: int, k: int, start: int) -> List[int]: """ >>> decode(0, 8, 24) [7, 6, 5, 4, 3, 2, 1, 0] >>> decode(425, 8, 24) [11, 10, 9, 8, 3, 2, 1, 0] """ result = [] for c in reversed(range(start)): result_choose = choose(c, k) if result_choose <= n: n -= result_choose k -= 1 result.append(c) return result def state_to_list(state: str) -> List[int]: """ >>> state_to_list('xxLL') [3, 2] >>> state_to_list('LLxx') [1, 0] >>> state_to_list('LxLx') [2, 0] >>> state_to_list('xLxL') [3, 1] """ result = [] for (index, char) in enumerate(state): if char != "x": result.append(index) result = list(reversed(sorted(result))) return result def state_to_rank(state: str) -> int: """ >>> state_to_rank('xxLL') 5 >>> state_to_rank('LLxx') 0 >>> state_to_rank('LxLx') 1 >>> state_to_rank('xLxL') 4 """ state_list = state_to_list(state) result = encode(state_list) return result if __name__ == "__main__": # standard libraries import doctest doctest.testmod()
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41c8b05fb5813f637c5e573303e9ec8ee0854eb2
149
py
Python
homework_day_3/6.py
wxz896446511/Manyu
5974ba3a3f27fbaf53bf9f876150ff764a70ac46
[ "Apache-2.0" ]
4
2018-09-26T00:48:02.000Z
2020-08-21T02:06:59.000Z
homework_day_3/6.py
wxz896446511/Manyu
5974ba3a3f27fbaf53bf9f876150ff764a70ac46
[ "Apache-2.0" ]
null
null
null
homework_day_3/6.py
wxz896446511/Manyu
5974ba3a3f27fbaf53bf9f876150ff764a70ac46
[ "Apache-2.0" ]
1
2020-08-21T02:07:04.000Z
2020-08-21T02:07:04.000Z
s1=0 s2=0 n=1 m=50000 while n<50001: s1=s1+1/(n*1.0) n+=1 while m>0: s2=s2+1/(m*1.0) m=m-1 print('s1='+str(s1)) print('s2='+str(s2))
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3
41c9205a05089b2cfa8d6a14c30a8d7f603ca089
835
py
Python
assignments/a3/constructBinaryTreeFromPreorderAndInorderTraversal.py
jcdiv47/geekbang-algorithms
38dae85aeadb684b2c44945bd07a32cdede4ad5a
[ "MIT" ]
null
null
null
assignments/a3/constructBinaryTreeFromPreorderAndInorderTraversal.py
jcdiv47/geekbang-algorithms
38dae85aeadb684b2c44945bd07a32cdede4ad5a
[ "MIT" ]
null
null
null
assignments/a3/constructBinaryTreeFromPreorderAndInorderTraversal.py
jcdiv47/geekbang-algorithms
38dae85aeadb684b2c44945bd07a32cdede4ad5a
[ "MIT" ]
null
null
null
""" Leetcode(https://leetcode.com/problems/construct-binary-tree-from-preorder-and-inorder-traversal/ )""" # Definition for a binary tree node. class TreeNode: def __init__(self, val=0, left=None, right=None): self.val = val self.left = left self.right = right class Solution: def buildTree(self, preorder, inorder): if len(preorder) == 0: return None root = TreeNode(preorder[0]) root_idx = 0 # find root's index in the inorder array while root_idx < len(inorder): if inorder[root_idx] == root.val: break root_idx += 1 root.left = self.buildTree(preorder[1: root_idx + 1], inorder[:root_idx]) root.right = self.buildTree(preorder[root_idx + 1:], inorder[root_idx + 1:]) return root
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41c945a668d50c919e3c2f44477e14432d43dec2
1,292
py
Python
appengine/swarming/test_env.py
stefb965/luci-py
e0a8a5640c4104e5c90781d833168aa8a8d1f24d
[ "Apache-2.0" ]
1
2017-10-30T15:08:10.000Z
2017-10-30T15:08:10.000Z
appengine/swarming/test_env.py
stefb965/luci-py
e0a8a5640c4104e5c90781d833168aa8a8d1f24d
[ "Apache-2.0" ]
1
2022-03-02T11:45:18.000Z
2022-03-02T11:45:18.000Z
appengine/swarming/test_env.py
stefb965/luci-py
e0a8a5640c4104e5c90781d833168aa8a8d1f24d
[ "Apache-2.0" ]
1
2021-07-23T15:32:55.000Z
2021-07-23T15:32:55.000Z
# Copyright 2013 The LUCI Authors. All rights reserved. # Use of this source code is governed under the Apache License, Version 2.0 # that can be found in the LICENSE file. import os import sys # swarming/ APP_DIR = os.path.dirname(os.path.realpath(os.path.abspath(__file__))) def init_symlinks(root): """Adds support for symlink-as-file on Windows. Manually resolves symlinks in path for directory and add them to sys.path. """ if sys.platform != 'win32': return for i in os.listdir(root): if '.' in i: continue path = os.path.join(root, i) if os.path.isfile(path): # Found a file instead of a symlink to a directory. Adjust sys.path # accordingly to where the symlink points. with open(path) as f: link = f.read() if '\n' in link: continue dest = os.path.normpath(os.path.join(root, link)) # This is not exactly right but close enough. sys.path.insert(0, os.path.dirname(dest)) def setup_test_env(): """Sets up App Engine test environment.""" # For application modules. sys.path.insert(0, APP_DIR) init_symlinks(APP_DIR) # TODO(maruel): Remove. sys.path.insert(0, os.path.join(APP_DIR, 'components', 'third_party')) from test_support import test_env test_env.setup_test_env()
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0.062572
0.034762
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0.04635
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0.208978
1,292
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1
41cb04f14dbe73f40c68a5e989b2ab363ee6874c
3,415
py
Python
tiddlywebplugins/tiddlyspace/template.py
TiddlySpace/tiddlyspace
5f2139340d2d9e3a37068b5c58ecb2e599d798b8
[ "BSD-3-Clause" ]
32
2015-01-04T10:54:29.000Z
2022-01-22T16:45:24.000Z
tiddlywebplugins/tiddlyspace/template.py
TiddlySpace/tiddlyspace
5f2139340d2d9e3a37068b5c58ecb2e599d798b8
[ "BSD-3-Clause" ]
4
2016-12-08T14:04:26.000Z
2018-02-20T10:23:33.000Z
tiddlywebplugins/tiddlyspace/template.py
TiddlySpace/tiddlyspace
5f2139340d2d9e3a37068b5c58ecb2e599d798b8
[ "BSD-3-Clause" ]
14
2015-01-19T23:18:20.000Z
2021-06-22T01:10:08.000Z
""" Send a template with some default data. """ from jinja2 import TemplateNotFound from tiddlywebplugins.virtualhosting import original_server_host_url from tiddlyweb import control from tiddlyweb.model.tiddler import Tiddler from tiddlyweb.model.recipe import Recipe from tiddlyweb.store import StoreError from tiddlywebplugins.templates import get_template from tiddlyweb.web.util import server_base_url, encode_name from tiddlywebplugins.tiddlyspace.web import (determine_space, determine_space_recipe, determine_host) CUSTOMIZABLES = ['friendlytiddler.html', 'friendlytiddlers.html', 'search.html'] def send_template(environ, template_name, template_data=None): """ Set some defaults for a template and send the output. """ default_css_tiddler = '/bags/common/tiddlers/profile.css' if template_data is None: template_data = {} html_template_prefix = environ['tiddlyweb.space_settings']['htmltemplate'] if html_template_prefix: default_css_tiddler = ('/bags/common/tiddlers/%s.css' % html_template_prefix) html_template_prefix += '/' try: name = html_template_prefix + template_name template = get_template(environ, name) except TemplateNotFound: template = get_template(environ, template_name) else: template = get_template(environ, template_name) store = environ['tiddlyweb.store'] linked_resources = { 'HtmlCss': [], 'HtmlJavascript': []} if not html_template_prefix or template_name in CUSTOMIZABLES: linked_resources['HtmlCss'] = [default_css_tiddler] # Load CSS and JavaScript overrides. current_space = determine_space(environ, determine_host(environ)[0]) if current_space: recipe_name = determine_space_recipe(environ, current_space) try: recipe = store.get(Recipe(recipe_name)) for title in linked_resources: try: tiddler = Tiddler(title) bag = control.determine_bag_from_recipe(recipe, tiddler, environ) tiddler.bag = bag.name try: tiddler = store.get(tiddler) if 'Javascript' in title: url_content = tiddler.text.strip() if url_content: urls = url_content.split('\n') linked_resources[title] = urls else: url = '/bags/%s/tiddlers/%s' % (encode_name( tiddler.bag), title) linked_resources[title] = [url] except StoreError: continue except StoreError: pass except StoreError: pass template_defaults = { 'original_server_host': original_server_host_url(environ), 'css': linked_resources['HtmlCss'], 'js': linked_resources['HtmlJavascript'], 'server_host': server_base_url(environ), } template_defaults.update(template_data) return template.generate(template_defaults)
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0
41cb1605a676dad204255fde9474a9b324ee8353
588
py
Python
test.py
yanzhenxing123/illegal_fund_raising_forecast
dcff8f3d73c1f1ea3548e8d25afc9fe5233e3f64
[ "Apache-2.0" ]
null
null
null
test.py
yanzhenxing123/illegal_fund_raising_forecast
dcff8f3d73c1f1ea3548e8d25afc9fe5233e3f64
[ "Apache-2.0" ]
null
null
null
test.py
yanzhenxing123/illegal_fund_raising_forecast
dcff8f3d73c1f1ea3548e8d25afc9fe5233e3f64
[ "Apache-2.0" ]
null
null
null
""" @Author: yanzx @Date: 2021-08-10 09:27:55 @Desc: """ import time li = [str(i) + "闫振兴" for i in range(1000000)] li_s = set(li) start_time1 = time.time() if "100000闫振兴" in li: print(time.time() - start_time1) start_time2 = time.time() if "100000闫振兴" in li_s: print(time.time() - start_time2) import pandas as pd import numpy as np import json df =pd.read_csv("./testdata.csv") df = df.iloc[1:20, :] res = list(json.loads(df.to_json(orient='index')).values()) print(res) data_array = np.array(df) # 然后转化为list形式 data_list =data_array.tolist() # print(data_list)
14
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0
68b72c53435e9aa9b4922a013905036e51730503
7,953
py
Python
mispro/mispro.py
dzubke/speech-lite
65f83ac2b7551650820f079ce5152741f2a6fdb8
[ "Apache-2.0" ]
null
null
null
mispro/mispro.py
dzubke/speech-lite
65f83ac2b7551650820f079ce5152741f2a6fdb8
[ "Apache-2.0" ]
null
null
null
mispro/mispro.py
dzubke/speech-lite
65f83ac2b7551650820f079ce5152741f2a6fdb8
[ "Apache-2.0" ]
null
null
null
# these functions help to detect mispronunciations using editops # # # standard libs import argparse # third-party libs import Levenshtein as lev # local libs from speech.utils.data_helpers import path_to_id from speech.utils.io import read_data_json def main(hypo_path:str, tgt_path:str, eval_phn_path:str): """This function will aim to detect mispronunciations of the `target_phn` in the predictions in `hypo_path` when compared with the reference in `phn_path` Args: hypo_path: path to model predictions tgt_path: path to phones the speaker should have said eval_phn_path: path to one-hot encoded labels of evaluation phonemes Notes: hypo_path file is formatted as: ay ih t (None-0) ao r dh ah t ay m (None-7) ay l iy v d uw (None-6) tgt_path file is formatted as: ay iy t p r ih t iy sh dh ah jh ih m eval_phn_path: id l r dh p v 00F931A9-6EA9-4233-85B4-94015A257352 1 0 0 0 1 0 012C1AC5-13E0-4337-B6CC-BFD58A12A8BC 1 1 0 0 0 0 054C13A4-9499-453F-90A0-950DA50C4576 1 0 1 0 0 0 """ hypo_dict = {} with open(hypo_path, 'r') as hypo_f: for line in hypo_f: line = line.strip().split() phones = line[:-1] # line last element has format '(None-1)' hypo_id = int(line[-1].split('-')[1].replace(')', '')) hypo_dict[hypo_id] = phones # create mapping from record_id to hypo numerical ordering tsv_path = tgt_path.replace(".phn", ".tsv") id_to_order = {} with open(tsv_path, 'r') as tsv_f: _ = next(tsv_f) for i, line in enumerate(tsv_f): sub_path = line.strip().split('\t', maxsplit=1)[0] id_to_order[path_to_id(sub_path)] = i ord_to_eval_phns = read_eval_file(eval_phn_path, id_to_order) with open(tgt_path, 'r') as phn_f: for i, line in enumerate(phn_f): ref_phns = line.strip().split() hyp_phns = hypo_dict[i] edit_ops = get_editops(hyp_phns, ref_phns) try: rec_id, has_mispro, eval_phns = ord_to_eval_phns[i] except KeyError as e: print(f"Key error at index: {i} with line: {line}") raise e for eval_phn in eval_phns: print(f"record id: {rec_id}") print(f"evaluation phone: {eval_phn}") print(f"has mispro: {bool(has_mispro)}") print_editops(edit_ops, hyp_phns, ref_phns) mispro_detected = check_mispro(edit_ops, hyp_phns, ref_phns, eval_phn) print(f"mispro detected?: {mispro_detected}") print(f"detector is correct?: {has_mispro == mispro_detected}") print('\n\n') def assess_from_json(eval_phn_path, ds_json_path): ds_preds = read_data_json(ds_json_path) rec_to_eval_phns = read_eval_file(eval_phn_path) for xmpl in ds_preds: ref_phns = xmpl['label'] hyp_phns = xmpl['prediction'] edit_ops = get_editops(hyp_phns, ref_phns) rec_id = path_to_id(xmpl['filename']) rec_id, has_mispro, eval_phns = rec_to_eval_phns[rec_id] for eval_phn in eval_phns: print(f"record id: {rec_id}") print(f"evaluation phone: {eval_phn}") print(f"has mispro: {bool(has_mispro)}") print_editops(edit_ops, hyp_phns, ref_phns) mispro_detected = check_mispro(edit_ops, hyp_phns, ref_phns, eval_phn) print(f"mispro detected?: {mispro_detected}") print(f"detector is correct?: {has_mispro == mispro_detected}") print('\n\n') def read_eval_file(eval_phn_path:str, id_to_order:dict=None)->dict: """Reads the eval-phn file that contains information on the mispronunciations for each record and returns that information as a mapping from record to phonemes. Args: eval_phn_path: path to eval file id_to_order: mapping from record_id to the ordering. used for w2v files Returns: dict: mapping record_id or order to target phonemes information """ with open(eval_phn_path, 'r') as lbl_f: header = next(lbl_f).strip().split() phn_hdr = header[2:] rec_to_eval_phns = {} for line in lbl_f: line = line.strip().split('\t') rec_id, has_mispro, row_lbl = line[0], int(line[1]), list(map(int, line[2:])) eval_phns = [phn_hdr[i] for i, one_h in enumerate(row_lbl) if one_h ==1] key = id_to_order[rec_id] if id_to_order else rec_id rec_to_eval_phns[key] = (rec_id, has_mispro, eval_phns) return rec_to_eval_phns def check_mispro(edit_ops, hyp_phns, ref_phns, target_phn): hyp_phns, ref_phns = balance_phn_lengths(edit_ops, hyp_phns, ref_phns) mispro_detected = False for op, spos, dpos in edit_ops: if target_phn in ref_phns[dpos]: # don't include delete operations when assessing mispro if op == 'delete': continue else: # if target_phn is in both the hypo and tgt # handles cases where `r` is replaced by `er`, which is not a mispro if target_phn in hyp_phns[spos] and target_phn in ref_phns[dpos]: continue else: mispro_detected = True return mispro_detected def balance_phn_lengths(edit_ops, s_phns, d_phns): """lengths the source_phones or dest_phones if the indices in editops are greater than the lengths of the respective phoneme lists""" for _, spos, dpos in edit_ops: if spos > len(s_phns)-1: s_phns += ['blank'] * (spos - (len(s_phns)-1)) if dpos > len(d_phns)-1: d_phns += ['blank'] * (dpos - (len(d_phns)-1)) return s_phns, d_phns def get_editops(hyp_phns, ref_phns): phn_super_set = set(hyp_phns + ref_phns) p2c = {ph:chr(65+i) for i, ph in enumerate(sorted(phn_super_set))} c2p = {chr(65+i):ph for i, ph in enumerate(sorted(phn_super_set))} hyp_chars = "".join([p2c[ph] for ph in hyp_phns]) ref_chars = "".join([p2c[ph] for ph in ref_phns]) return lev.editops(hyp_chars, ref_chars) def print_editops(edit_ops, hyp_phns, ref_phns): print(f"hypos: {hyp_phns}") print(f"tgts: {ref_phns}") hyp_phns, ref_phns = balance_phn_lengths(edit_ops, hyp_phns, ref_phns) for op, spos, dpos in edit_ops: try: print( '{:7} s[{}] --> d[{}] {!r:>8} --> {!r}'.\ format(op, spos, dpos, hyp_phns[spos], ref_phns[dpos]) ) except IndexError as e: print("Index Error") print(op, spos, dpos, hyp_phns, ref_phns) raise e if __name__ == "__main__": parser = argparse.ArgumentParser( description="" ) parser.add_argument( "--action", help="determines what function to call" ) parser.add_argument( "--hypo-path", help="path to w2v predictions" ) parser.add_argument( "--json-path", help="path to json prediction for deepspeech model" ) parser.add_argument( "--phn-path", help="path to w2v predictions" ) parser.add_argument( "--eval-phn-path", type=str, help="path to one-hot encoding for evaluation phonemes by utterance id" ) args = parser.parse_args() if args.action == "": main(args.hypo_path, args.phn_path, args.eval_phn_path) elif args.action == "assess-from-json": assess_from_json(args.eval_phn_path, args.json_path)
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68b8e7dbe442c7b6fd61ce801dacded91cd54f52
1,057
py
Python
tests/runtests.py
joshuagl/in-toto
9fb038fd7f3521df4ba358180de1e2bd2b8d2430
[ "Apache-2.0" ]
1
2020-02-02T23:29:15.000Z
2020-02-02T23:29:15.000Z
tests/runtests.py
MikailSeremet/in-toto
2052ba55c5351c690ee66807ca332deee44cf1cf
[ "Apache-2.0" ]
null
null
null
tests/runtests.py
MikailSeremet/in-toto
2052ba55c5351c690ee66807ca332deee44cf1cf
[ "Apache-2.0" ]
null
null
null
#!/usr/bin/env python """ <Program Name> runtests.py <Author> Santiago Torres <santiago@nyu.edu> Lukas Puehringer <lukas.puehringer@nyu.edu> <Started> May 23, 2016 <Copyright> See LICENSE for licensing information. <Purpose> Script to search, load and run in-toto tests using the Python `unittest` framework. """ from unittest import defaultTestLoader, TextTestRunner import sys import os import subprocess def check_usable_gpg(): """Set `TEST_SKIP_GPG` environment variable if neither gpg2 nor gpg is available. """ os.environ["TEST_SKIP_GPG"] = "1" for gpg in ["gpg2", "gpg"]: try: subprocess.check_call([gpg, "--version"]) except OSError: pass else: # If one of the two exists, we can unset the skip envvar and ... os.environ.pop("TEST_SKIP_GPG", None) # ... abort the availability check.: break check_usable_gpg() suite = defaultTestLoader.discover(start_dir=".") result = TextTestRunner(verbosity=2, buffer=True).run(suite) sys.exit(0 if result.wasSuccessful() else 1)
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1
68b8f74ca63a7bf7763bdfc88965696eef401268
1,980
py
Python
pipelines/utils/conv_to_json.py
cds-mipt/HPointLoc
b346c10928939ddc1fe5840aef5085418e3aa0ad
[ "MIT" ]
2
2021-05-30T04:04:51.000Z
2022-02-21T09:11:27.000Z
pipelines/utils/conv_to_json.py
cds-mipt/HPointLoc
b346c10928939ddc1fe5840aef5085418e3aa0ad
[ "MIT" ]
null
null
null
pipelines/utils/conv_to_json.py
cds-mipt/HPointLoc
b346c10928939ddc1fe5840aef5085418e3aa0ad
[ "MIT" ]
null
null
null
from tqdm import tqdm import h5py from os.path import join import os import numpy as np from pathlib import Path import json import numpy as np MAXDEPTH = 10 def conv_to_json(dataset_root, path_to_npz_folder, output_dir): root_datasets = Path(dataset_root).parent dataset_path = join(root_datasets, 'HPointLoc_dataset') pairs_npz = os.listdir(path_to_npz_folder) os.makedirs(output_dir, exist_ok = True) for pair_npz in tqdm(pairs_npz): npz = np.load(join(path_to_npz_folder, pair_npz)) q_fold, q_cloud, query, q_name = pair_npz.split('_')[:4] m_fold, m_cloud, mapping, m_name = pair_npz.split('_')[4:8] q = '_'.join(pair_npz.split('_')[:4]) m = '_'.join(pair_npz.split('_')[4:8]) q_cloud = q_fold + '_point' + q_cloud + '.hdf5' m_cloud = m_fold + '_point' + m_cloud + '.hdf5' hdf5_q_path = join(dataset_path, q_fold, q_cloud) hdf5_m_path = join(dataset_path, m_fold, m_cloud) q_file = h5py.File(hdf5_q_path, 'r') m_file = h5py.File(hdf5_m_path, 'r') depth_base = m_file['depth_base'] depth = q_file['depth'] q_depth = np.squeeze(depth[int(q_name)])*MAXDEPTH m_depth = np.squeeze(depth_base[int(m_name)])*MAXDEPTH q_coord_frame = [] m_coord_frame = [] for kpt in range(min(npz['keypoints1'].shape[0], npz['matches'].shape[0])): if npz['matches'][kpt] != -1: x_q, y_q = map(int, npz['keypoints0'][kpt]) x_m, y_m = map(int, npz['keypoints1'][npz['matches'][kpt]]) q_coord_frame.append((x_q, y_q, float(q_depth[y_q, x_q]))) m_coord_frame.append((x_m, y_m, float(m_depth[y_m, x_m]))) dictionary_kpt = {q: q_coord_frame, m:m_coord_frame} outpath = join(output_dir, q + '_' + m + '.json') with open(outpath, 'w') as outfile: json.dump(str(dictionary_kpt), outfile)
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0
68b95b6093337df79dd5bbb71ce078550e408fb4
709
py
Python
internet_SpeedTest/main.py
Mark-Kinyua/python_public
25c4eff3a6f93c35a949f94a2f9c3df3202a3113
[ "MIT" ]
null
null
null
internet_SpeedTest/main.py
Mark-Kinyua/python_public
25c4eff3a6f93c35a949f94a2f9c3df3202a3113
[ "MIT" ]
null
null
null
internet_SpeedTest/main.py
Mark-Kinyua/python_public
25c4eff3a6f93c35a949f94a2f9c3df3202a3113
[ "MIT" ]
null
null
null
import speedtest # Lets test Zuku. # Its getting frustrating now.... test = speedtest.Speedtest() print("Loading server list...") test.get_servers() # Get list of servers print("Getting best server...") best = test.get_best_server() print(f"Found: {best['host']} located in : {best['country']}") print("Performing download test..") download_result = test.download() print("Performing upload test..") upload_result = test.upload() print("Getting ping") ping_result = test.results.ping # Print all information. print(f"Download speed: {download_result / 1024 / 1024:.2f} mb/s ") # Changing bits to mbs print(f"Upload speed: {upload_result / 1024 / 1024:.2f} mb/s ") print(f"Ping: {ping_result:.2f} ms")
25.321429
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0.712271
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4.910891
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0.048387
0.056452
0.064516
0.076613
0.076613
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0.030695
0.126939
709
27
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0.770598
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0
0
0
1
0
1
68b9f1d61e16d200b4bd96fbc017a9c896eef126
1,020
py
Python
tests/test_settings.py
nerdoc/django-unicorn
e512b8f64f5c276a78127db9a05d9d5c042232d5
[ "MIT" ]
1
2021-12-21T16:20:49.000Z
2021-12-21T16:20:49.000Z
tests/test_settings.py
teury/django-unicorn
5e9142b8a7e13b862ece419d567e805cc783b517
[ "MIT" ]
null
null
null
tests/test_settings.py
teury/django-unicorn
5e9142b8a7e13b862ece419d567e805cc783b517
[ "MIT" ]
1
2022-02-10T07:47:01.000Z
2022-02-10T07:47:01.000Z
from django_unicorn.settings import get_cache_alias, get_serial_enabled, get_settings def test_settings_cache_alias(settings): settings.UNICORN["CACHE_ALIAS"] = "unicorn_cache" expected = "unicorn_cache" actual = get_cache_alias() assert expected == actual def test_settings_legacy(settings): settings.DJANGO_UNICORN = {} settings.DJANGO_UNICORN["CACHE_ALIAS"] = "unicorn_cache" expected = "unicorn_cache" actual = get_cache_alias() assert expected == actual def test_get_serial_enabled(settings): settings.UNICORN["SERIAL"]["ENABLED"] = False assert get_serial_enabled() is False settings.UNICORN["SERIAL"]["ENABLED"] = True assert get_serial_enabled() is True settings.UNICORN["SERIAL"]["ENABLED"] = True settings.CACHES["unicorn_cache"] = {} settings.CACHES["unicorn_cache"][ "BACKEND" ] = "django.core.cache.backends.dummy.DummyCache" settings.UNICORN["CACHE_ALIAS"] = "unicorn_cache" assert get_serial_enabled() is False
29.142857
85
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1,020
5.833333
0.208333
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0.114286
0.102857
0.544286
0.418571
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0.271429
0.271429
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0.163725
1,020
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0
0
0
1
0
68ba116787e1a4e63e9786fddd4525fabeef6657
104
py
Python
desafio21.py
kelson-gs/Desafios-python
b40867a331c0dab84b4ceff5391c5dcd07c42da2
[ "MIT" ]
null
null
null
desafio21.py
kelson-gs/Desafios-python
b40867a331c0dab84b4ceff5391c5dcd07c42da2
[ "MIT" ]
null
null
null
desafio21.py
kelson-gs/Desafios-python
b40867a331c0dab84b4ceff5391c5dcd07c42da2
[ "MIT" ]
null
null
null
import pygame pygame.mixer.init() pygame.mixer.music.load('anzenchitai.mp3') pygame.mixer.music.play()
17.333333
42
0.778846
15
104
5.4
0.6
0.407407
0.395062
0
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0.010204
0.057692
104
5
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20.8
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true
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1
0
0
0
0
0
0
5
68bb1ca8c41ec71774a259dc4b023dd208cc1eb5
5,208
py
Python
timemarker/timer.py
davidr/python-timemarker
16fc4d4f9d6b534b94005169c977ed143f4f9dc5
[ "MIT" ]
null
null
null
timemarker/timer.py
davidr/python-timemarker
16fc4d4f9d6b534b94005169c977ed143f4f9dc5
[ "MIT" ]
1
2017-10-31T03:54:26.000Z
2017-11-01T03:01:43.000Z
timemarker/timer.py
davidr/python-timemarker
16fc4d4f9d6b534b94005169c977ed143f4f9dc5
[ "MIT" ]
null
null
null
# -*- coding: utf-8 -*- import logging from operator import itemgetter from typing import List, Tuple, Callable, Dict # TODO(davidr) is it faster to do this here or to save the function as an attribute of the # class instance? from timeit import default_timer from collections import defaultdict _logger = logging.getLogger(__name__) class TimeMarker(object): """Time Marker class Todo: * how should this behave as a context manager vs. an instantiated object? right now, it only works as the former * we should support recurring tags (i.e. a timer.tag("foo") inside of a for loop and average the time taken for all the calls together, perhaps with stats? """ __slots__ = [ '_start', '_end', '_cumulative_time', '_last_tag', '_last_ts', '_timing' ] _reserved_tags = ['start', 'stop'] _stats_formats = ['percentage', 'raw'] def __init__(self): self._start: float = None self._end: float = None self._timing: Dict[str, float] = defaultdict(lambda: 0.0) self._cumulative_time: float = None self._last_tag: str = None self._last_ts: float = None def __enter__(self): self._start = default_timer() # Set up the initial values for our last_* tags self._last_ts = self._start self._last_tag = 'start' return self def __exit__(self, exc_type, exc_val, exc_tb): self.tag("stop", _override=True) self._end = self._last_ts self._cumulative_time = self._end - self._start def __repr__(self) -> str: return "TimeMarker(start={}, last=({}, {}))".format( self._start, self._last_tag, self._last_ts) def tag(self, tag: str, _override: bool = False) -> None: """Mark a tagged event Args: tag: name of timer tag _override: override checking for reserved tags *Warning: don't use this!* Returns: None Raises: ValueError: if given invalid tag name """ if tag in TimeMarker._reserved_tags and _override is False: raise ValueError('tag name {} is reserved'.format(tag)) _ts = default_timer() self._cumulative_time = _ts - self._start self._timing[self._last_tag] += _ts - self._last_ts self._last_tag = tag self._last_ts = _ts _logger.debug("tag took {}".format(default_timer() - _ts)) def stats(self, sort: bool = True, fmt: str = "percentage", oneline: bool = True, print_function: Callable = print, pctg_cap: float = 1.): """Print out TimeMarker stats Args: sort: if True, results are sorted by time taken, else in the order in which they were tagged fmt: format of stats. "raw" is time in seconds, "percentage" is the percentage of the total measured time oneline: if True, print stats on one line print_function: callable with string as only parameter pctg_cap: do not print results accounting for more than pctg_cap percentage of the total measured time Returns: None """ if fmt not in ['percentage', 'raw']: raise ValueError(f'Invalid format: {fmt}') if not 0. < pctg_cap <= 1.: raise ValueError('pctg must be < 0., <= 1.') elif fmt not in TimeMarker._stats_formats: raise ValueError('"{:s}" not a valid stats formatter') elif pctg_cap < 1. and fmt != "percentage": raise ValueError('pctg_cap < 1. requires fmt="percentage"') elif pctg_cap < 1. and not sort: raise ValueError('pctg_cap < 1. requires sort=True') tag_separator = " " if oneline else "\n - " tag_suffix = "" stats = list() timing_results = list(self._timing.items()) stats.append("TIME:{:.6f}s".format(self._cumulative_time)) if sort: # Sort by the time value of the tag timing_results = sorted( timing_results, key=itemgetter(1), reverse=True) if fmt == "raw": tag_suffix = "s" elif fmt == "percentage": timing_results = self._calculate_tag_percentage( self._cumulative_time, pctg_cap, timing_results) for tag, duration in timing_results: stats.append("{:s}:{:02.3f}{:s}".format(tag, duration, tag_suffix)) stats_string = tag_separator.join(stats) print_function(stats_string) @staticmethod def _calculate_tag_percentage(cumulative_time, pctg_cap, timing_results): running_pctg = 0. tags_pctg: List[Tuple[str, float]] = list() for tag, ts in timing_results: tag_pctg = ts / cumulative_time # if we have a cap of the percentage of time we want accounted for, see if we've # gone over running_pctg += tag_pctg if running_pctg > pctg_cap: break tags_pctg.append((tag, tag_pctg)) return tags_pctg
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0
0
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1
68bb5d0db0e0b727efc6187a6b67ad8cb5bad0f9
1,151
py
Python
boundfield_renderer/registry.py
bmampaey/django-form-renderer
b56eecb16bb8f7a47667aec8baf1ffcc0cd5b776
[ "MIT" ]
1
2020-10-09T15:27:47.000Z
2020-10-09T15:27:47.000Z
boundfield_renderer/registry.py
bmampaey/django-form-renderer
b56eecb16bb8f7a47667aec8baf1ffcc0cd5b776
[ "MIT" ]
null
null
null
boundfield_renderer/registry.py
bmampaey/django-form-renderer
b56eecb16bb8f7a47667aec8baf1ffcc0cd5b776
[ "MIT" ]
null
null
null
import inspect from collections import UserDict class RendererRegistry(UserDict): ''' Registry for the form field renderers. A renderer is a function that takes a context dict and returns the html representation of the form field, for example the render method of a Template instance. ''' def __getitem__(self, key): '''Return the best renderer function for the field''' # Look up the chain of inheritance for a registered renderer for form_class in inspect.getmro(key): try: return super().__getitem__(form_class) except KeyError: pass # If no renderer was found raise an Exception raise ValueError('No renderer found for field %s' % key) def register(self, renderer): ''' Form Field class decorator to register a renderer into the registry. Example: from django.template.loader import get_template from my_registry import renderer_registry renderer_registry.register(get_template('/path/to/my_field.html').render) class MyField(forms.Field): pass ''' def registerer(form_field_class): self[form_field_class] = renderer return form_field_class return registerer
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1,151
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2
68bbf627a9afc37939a7f82cf9c685bca13e0e51
10,068
py
Python
salika/views/django_admin_log_views.py
BarisSari/django_crud
ce9586c10da2f865d29d9a18e9ff5582abe5e3a0
[ "MIT" ]
null
null
null
salika/views/django_admin_log_views.py
BarisSari/django_crud
ce9586c10da2f865d29d9a18e9ff5582abe5e3a0
[ "MIT" ]
null
null
null
salika/views/django_admin_log_views.py
BarisSari/django_crud
ce9586c10da2f865d29d9a18e9ff5582abe5e3a0
[ "MIT" ]
null
null
null
from django.views.generic.detail import DetailView from django.views.generic.edit import CreateView, UpdateView, DeleteView from django.views.generic.list import ListView from ..models import DjangoAdminLog from ..forms import DjangoAdminLogForm from django.urls import reverse_lazy from django.urls import reverse from django.http import Http404 class DjangoAdminLogListView(ListView): model = DjangoAdminLog template_name = "salika/django_admin_log_list.html" paginate_by = 20 context_object_name = "django_admin_log_list" allow_empty = True page_kwarg = 'page' paginate_orphans = 0 def __init__(self, **kwargs): return super(DjangoAdminLogListView, self).__init__(**kwargs) def dispatch(self, *args, **kwargs): return super(DjangoAdminLogListView, self).dispatch(*args, **kwargs) def get(self, request, *args, **kwargs): return super(DjangoAdminLogListView, self).get(request, *args, **kwargs) def get_queryset(self): return super(DjangoAdminLogListView, self).get_queryset() def get_allow_empty(self): return super(DjangoAdminLogListView, self).get_allow_empty() def get_context_data(self, *args, **kwargs): ret = super(DjangoAdminLogListView, self).get_context_data(*args, **kwargs) return ret def get_paginate_by(self, queryset): return super(DjangoAdminLogListView, self).get_paginate_by(queryset) def get_context_object_name(self, object_list): return super(DjangoAdminLogListView, self).get_context_object_name(object_list) def paginate_queryset(self, queryset, page_size): return super(DjangoAdminLogListView, self).paginate_queryset(queryset, page_size) def get_paginator(self, queryset, per_page, orphans=0, allow_empty_first_page=True): return super(DjangoAdminLogListView, self).get_paginator(queryset, per_page, orphans=0, allow_empty_first_page=True) def render_to_response(self, context, **response_kwargs): return super(DjangoAdminLogListView, self).render_to_response(context, **response_kwargs) def get_template_names(self): return super(DjangoAdminLogListView, self).get_template_names() class DjangoAdminLogDetailView(DetailView): model = DjangoAdminLog template_name = "salika/django_admin_log_detail.html" context_object_name = "django_admin_log" slug_field = 'slug' slug_url_kwarg = 'slug' pk_url_kwarg = 'pk' def __init__(self, **kwargs): return super(DjangoAdminLogDetailView, self).__init__(**kwargs) def dispatch(self, *args, **kwargs): return super(DjangoAdminLogDetailView, self).dispatch(*args, **kwargs) def get(self, request, *args, **kwargs): return super(DjangoAdminLogDetailView, self).get(request, *args, **kwargs) def get_object(self, queryset=None): return super(DjangoAdminLogDetailView, self).get_object(queryset) def get_queryset(self): return super(DjangoAdminLogDetailView, self).get_queryset() def get_slug_field(self): return super(DjangoAdminLogDetailView, self).get_slug_field() def get_context_data(self, **kwargs): ret = super(DjangoAdminLogDetailView, self).get_context_data(**kwargs) return ret def get_context_object_name(self, obj): return super(DjangoAdminLogDetailView, self).get_context_object_name(obj) def render_to_response(self, context, **response_kwargs): return super(DjangoAdminLogDetailView, self).render_to_response(context, **response_kwargs) def get_template_names(self): return super(DjangoAdminLogDetailView, self).get_template_names() class DjangoAdminLogCreateView(CreateView): model = DjangoAdminLog form_class = DjangoAdminLogForm # fields = ['action_time', 'object_id', 'object_repr', 'action_flag', 'change_message', 'content_type', 'user'] template_name = "salika/django_admin_log_create.html" success_url = reverse_lazy("django_admin_log_list") def __init__(self, **kwargs): return super(DjangoAdminLogCreateView, self).__init__(**kwargs) def dispatch(self, request, *args, **kwargs): return super(DjangoAdminLogCreateView, self).dispatch(request, *args, **kwargs) def get(self, request, *args, **kwargs): return super(DjangoAdminLogCreateView, self).get(request, *args, **kwargs) def post(self, request, *args, **kwargs): return super(DjangoAdminLogCreateView, self).post(request, *args, **kwargs) def get_form_class(self): return super(DjangoAdminLogCreateView, self).get_form_class() def get_form(self, form_class=None): return super(DjangoAdminLogCreateView, self).get_form(form_class) def get_form_kwargs(self, **kwargs): return super(DjangoAdminLogCreateView, self).get_form_kwargs(**kwargs) def get_initial(self): return super(DjangoAdminLogCreateView, self).get_initial() def form_invalid(self, form): return super(DjangoAdminLogCreateView, self).form_invalid(form) def form_valid(self, form): obj = form.save(commit=False) obj.save() return super(DjangoAdminLogCreateView, self).form_valid(form) def get_context_data(self, **kwargs): ret = super(DjangoAdminLogCreateView, self).get_context_data(**kwargs) return ret def render_to_response(self, context, **response_kwargs): return super(DjangoAdminLogCreateView, self).render_to_response(context, **response_kwargs) def get_template_names(self): return super(DjangoAdminLogCreateView, self).get_template_names() def get_success_url(self): return reverse("salika:django_admin_log_detail", args=(self.object.pk,)) class DjangoAdminLogUpdateView(UpdateView): model = DjangoAdminLog form_class = DjangoAdminLogForm # fields = ['action_time', 'object_id', 'object_repr', 'action_flag', 'change_message', 'content_type', 'user'] template_name = "salika/django_admin_log_update.html" initial = {} slug_field = 'slug' slug_url_kwarg = 'slug' pk_url_kwarg = 'pk' context_object_name = "django_admin_log" def __init__(self, **kwargs): return super(DjangoAdminLogUpdateView, self).__init__(**kwargs) def dispatch(self, *args, **kwargs): return super(DjangoAdminLogUpdateView, self).dispatch(*args, **kwargs) def get(self, request, *args, **kwargs): return super(DjangoAdminLogUpdateView, self).get(request, *args, **kwargs) def post(self, request, *args, **kwargs): return super(DjangoAdminLogUpdateView, self).post(request, *args, **kwargs) def get_object(self, queryset=None): return super(DjangoAdminLogUpdateView, self).get_object(queryset) def get_queryset(self): return super(DjangoAdminLogUpdateView, self).get_queryset() def get_slug_field(self): return super(DjangoAdminLogUpdateView, self).get_slug_field() def get_form_class(self): return super(DjangoAdminLogUpdateView, self).get_form_class() def get_form(self, form_class=None): return super(DjangoAdminLogUpdateView, self).get_form(form_class) def get_form_kwargs(self, **kwargs): return super(DjangoAdminLogUpdateView, self).get_form_kwargs(**kwargs) def get_initial(self): return super(DjangoAdminLogUpdateView, self).get_initial() def form_invalid(self, form): return super(DjangoAdminLogUpdateView, self).form_invalid(form) def form_valid(self, form): obj = form.save(commit=False) obj.save() return super(DjangoAdminLogUpdateView, self).form_valid(form) def get_context_data(self, **kwargs): ret = super(DjangoAdminLogUpdateView, self).get_context_data(**kwargs) return ret def get_context_object_name(self, obj): return super(DjangoAdminLogUpdateView, self).get_context_object_name(obj) def render_to_response(self, context, **response_kwargs): return super(DjangoAdminLogUpdateView, self).render_to_response(context, **response_kwargs) def get_template_names(self): return super(DjangoAdminLogUpdateView, self).get_template_names() def get_success_url(self): return reverse("salika:django_admin_log_detail", args=(self.object.pk,)) class DjangoAdminLogDeleteView(DeleteView): model = DjangoAdminLog template_name = "salika/django_admin_log_delete.html" slug_field = 'slug' slug_url_kwarg = 'slug' pk_url_kwarg = 'pk' context_object_name = "django_admin_log" def __init__(self, **kwargs): return super(DjangoAdminLogDeleteView, self).__init__(**kwargs) def dispatch(self, *args, **kwargs): return super(DjangoAdminLogDeleteView, self).dispatch(*args, **kwargs) def get(self, request, *args, **kwargs): raise Http404 def post(self, request, *args, **kwargs): return super(DjangoAdminLogDeleteView, self).post(request, *args, **kwargs) def delete(self, request, *args, **kwargs): return super(DjangoAdminLogDeleteView, self).delete(request, *args, **kwargs) def get_object(self, queryset=None): return super(DjangoAdminLogDeleteView, self).get_object(queryset) def get_queryset(self): return super(DjangoAdminLogDeleteView, self).get_queryset() def get_slug_field(self): return super(DjangoAdminLogDeleteView, self).get_slug_field() def get_context_data(self, **kwargs): ret = super(DjangoAdminLogDeleteView, self).get_context_data(**kwargs) return ret def get_context_object_name(self, obj): return super(DjangoAdminLogDeleteView, self).get_context_object_name(obj) def render_to_response(self, context, **response_kwargs): return super(DjangoAdminLogDeleteView, self).render_to_response(context, **response_kwargs) def get_template_names(self): return super(DjangoAdminLogDeleteView, self).get_template_names() def get_success_url(self): return reverse("salika:django_admin_log_list")
37.707865
124
0.723977
1,150
10,068
6.067826
0.085217
0.09143
0.060906
0.089424
0.878619
0.760963
0.615649
0.598166
0.529808
0.529808
0
0.001316
0.169944
10,068
266
125
37.849624
0.833672
0.021752
0
0.475936
0
0
0.039102
0.030774
0
0
0
0
0
1
0.358289
false
0
0.042781
0.315508
0.946524
0
0
0
0
null
0
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0
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0
0
1
0
0
0
1
1
0
0
5
68bc0a2004e16535e83b92fe67c14274b4673fe7
353
py
Python
service/config.py
ssunqf/mana
eff753f83b2129e3537dc3cee3952cb61f55fea0
[ "BSD-3-Clause" ]
null
null
null
service/config.py
ssunqf/mana
eff753f83b2129e3537dc3cee3952cb61f55fea0
[ "BSD-3-Clause" ]
null
null
null
service/config.py
ssunqf/mana
eff753f83b2129e3537dc3cee3952cb61f55fea0
[ "BSD-3-Clause" ]
null
null
null
#!/usr/bin/env python3.6 # -*- coding: utf-8 -*- import os from datetime import timedelta basedir = os.path.abspath(os.path.dirname(__file__)) class Config(object): SECRET_KEY = 'private key' SEND_FILE_MAX_AGE_DEFAULT = timedelta(hours=1) CACHE_TYPE = 'redis' CACHE_DEFAULT_TIMEOUT = 240 * 60 * 60 CACHE_KEY_PREFIX = 'cilichong'
22.0625
52
0.70255
50
353
4.68
0.76
0.051282
0
0
0
0
0
0
0
0
0
0.037801
0.175637
353
16
53
22.0625
0.766323
0.127479
0
0
0
0
0.081433
0
0
0
0
0
0
1
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false
0
0.222222
0
0.888889
0
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null
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null
0
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0
0
0
0
0
0
1
0
0
1
68bd12edd81d237215484f0a679fa547355b6ddd
5,132
py
Python
tests/test_algolia_doc_manager.py
algolia/mongo-connector
d668e9fb556abe63916ba0594e035d2f34880b1c
[ "Apache-2.0" ]
15
2015-01-06T08:10:21.000Z
2017-03-12T23:06:43.000Z
tests/test_algolia_doc_manager.py
algolia/mongo-connector
d668e9fb556abe63916ba0594e035d2f34880b1c
[ "Apache-2.0" ]
16
2015-03-11T09:28:33.000Z
2016-03-06T14:45:54.000Z
tests/test_algolia_doc_manager.py
algolia/mongo-connector
d668e9fb556abe63916ba0594e035d2f34880b1c
[ "Apache-2.0" ]
13
2015-03-21T13:39:10.000Z
2022-03-14T11:50:24.000Z
# Copyright 2013-2014 MongoDB, Inc. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. """Unit tests for the Algolia DocManager.""" import base64 import sys import time sys.path[0:0] = [""] from tests import elastic_pair, unittest, TESTARGS from tests.test_algolia import AlgoliaTestCase from tests.test_gridfs_file import MockGridFSFile from mongo_connector.command_helper import CommandHelper from mongo_connector.doc_managers.algolia_doc_manager import DocManager class AlgoliaDocManagerTester(AlgoliaTestCase): """Unit tests for the Algolia DocManager.""" def test_update(self): """Test the update method.""" doc = {"_id": '1', "a": 1, "b": 2} self.algolia_doc.upsert(doc) self.algolia_doc.commit(True) # $set only update_spec = {"$set": {"a": 1, "b": 2}} self.algolia_doc.update(doc, update_spec) self.algolia_doc.commit(True) doc = self.algolia_index.getObject('1') self.assertEqual(doc, {"_id": '1', "objectID": '1', "a": 1, "b": 2}) # $unset only update_spec = {"$unset": {"a": True}} self.algolia_doc.update(doc, update_spec) self.algolia_doc.commit(True) doc = self.algolia_index.getObject('1') self.assertEqual(doc, {"_id": '1', "objectID": '1', "b": 2, "a": None}) # mixed $set/$unset update_spec = {"$unset": {"b": True}, "$set": {"c": 3}} self.algolia_doc.update(doc, update_spec) self.algolia_doc.commit(True) doc = self.algolia_index.getObject('1') self.assertEqual(doc, {"_id": '1', "objectID": '1', "c": 3, "a": None, "b": None}) def test_upsert(self): """Test the upsert method.""" docc = {'_id': '1', 'name': 'John'} self.algolia_doc.upsert(docc) self.algolia_doc.commit(True) res = self.algolia_index.search('')["hits"] for doc in res: self.assertEqual(doc['_id'], '1') self.assertEqual(doc['name'], 'John') def test_bulk_upsert(self): """Test the bulk_upsert method.""" self.algolia_doc.bulk_upsert([], *TESTARGS) self.algolia_doc.commit(True) docs = ({"_id": i} for i in range(100)) self.algolia_doc.bulk_upsert(docs, *TESTARGS) self.algolia_doc.commit(True) res = self.algolia_index.search('', { 'hitsPerPage': 101 })["hits"] returned_ids = sorted(int(doc["_id"]) for doc in res) self.assertEqual(len(returned_ids), 100) for i, r in enumerate(returned_ids): self.assertEqual(r, i) docs = ({"_id": i, "weight": 2*i} for i in range(100)) self.algolia_doc.bulk_upsert(docs, *TESTARGS) self.algolia_doc.commit(True) res = self.algolia_index.search('', { 'hitsPerPage': 101 })["hits"] returned_ids = sorted(int(doc["weight"]) for doc in res) self.assertEqual(len(returned_ids), 100) for i, r in enumerate(returned_ids): self.assertEqual(r, 2*i) def test_remove(self): """Test the remove method.""" docc = {'_id': '1', 'name': 'John'} self.algolia_doc.upsert(docc) self.algolia_doc.commit(True) res = self.algolia_index.search('')["hits"] self.assertEqual(len(res), 1) self.algolia_doc.remove(docc) self.algolia_doc.commit(True) res = self.algolia_index.search('')["hits"] self.assertEqual(len(res), 0) @unittest.skip("WIP") def test_get_last_doc(self): """Test the get_last_doc method. Make sure we can retrieve the document most recently modified from Algolia. """ base = self.algolia_doc.get_last_doc() ts = base.get("_ts", 0) if base else 0 docc = {'_id': '4', 'name': 'Hare', '_ts': ts+3, 'ns': 'test.test'} self.algolia_doc.upsert(docc) docc = {'_id': '5', 'name': 'Tortoise', '_ts': ts+2, 'ns': 'test.test'} self.algolia_doc.upsert(docc) docc = {'_id': '6', 'name': 'Mr T.', '_ts': ts+1, 'ns': 'test.test'} self.algolia_doc.upsert(docc) self.algolia_doc.commit(True) self.assertEqual(self.algolia_index.search('')['nbHits'], 3) doc = self.elastic_doc.get_last_doc() self.assertEqual(doc['_id'], '4') docc = {'_id': '6', 'name': 'HareTwin', '_ts': ts+4, 'ns': 'test.test'} self.elastic_doc.upsert(docc) self.algolia_doc.commit(True) doc = self.elastic_doc.get_last_doc() self.assertEqual(doc['_id'], '6') self.assertEqual(self.algolia_index.search('')['nbHits'], 3) if __name__ == '__main__': unittest.main()
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68bfdc92a00fb5b201a60c596f05590bb0c70edb
6,281
py
Python
File Man/note.py
splimter/Univ
f28723756616ffd212d1c59d5547240c694a2d24
[ "MIT" ]
null
null
null
File Man/note.py
splimter/Univ
f28723756616ffd212d1c59d5547240c694a2d24
[ "MIT" ]
null
null
null
File Man/note.py
splimter/Univ
f28723756616ffd212d1c59d5547240c694a2d24
[ "MIT" ]
null
null
null
import os import helpers as H # Cette function va afficher le menu def menu(): print("1- Ajouter un Etudiant") print("2- Ajouter un Matieres") print("3- Ajouter un Note") print("4- afficher la Moyenne d'un Etudiant") print("5- Modifie le numIns d'un Etudiant") print("6- suprimer une Note") print("7- quiter") # Une classs qui definie les propreiter d'Etudiant class Etudiant: numInsc = 0 nom = "" prenom = "" group = 0 # Constructeur def __init__(self, numInsc, nom, prenom, group): self.numInsc = numInsc self.nom = nom self.prenom = prenom self.group = group # Une classs qui definie les propreiter d'Matieres class Matieres: codeMat = "" libelle = "" coef = 0 # Constructeur def __init__(self, codeMat, libelle, coef): self.codeMat = codeMat self.libelle = libelle self.coef = coef # Une classs qui definie les propreiter d'Note class Note: numInsc = 0 codeMat = "" note = 0.0 # Constructeur def __init__(self, numInsc, codeMat, note): self.numInsc = numInsc self.codeMat = codeMat self.note = note def ajoutEtudiant(Etudiant): # Virifie si le ficher existe if not os.path.isfile("Etudiants.dat"): with open("Etudiants.dat", 'w') as file: file.write("Gestion des Etudiants\n") file.write("----------------------\n") # Ecrire dans le ficher les donner importer depui l'objet with open("Etudiants.dat", 'a+', encoding='utf-8') as file: file.tell() file.write("\n") file.write(str(Etudiant.numInsc) + "\n") file.write(Etudiant.nom + "\n") file.write(Etudiant.prenom + "\n") file.write(str(Etudiant.group) + "\n") file.write("------------------------") def ajoutMatiere(Matieres): # Virifie si le ficher existe if not os.path.isfile("Matieres.dat"): with open("Matieres.dat", 'w') as file: file.write("Gestion des Matieres\n") file.write("---------------\n") # Ecrire dans le ficher les donner importer depui l'objet with open("Matieres.dat", 'a+', encoding='utf-8') as file: file.tell() file.write("\n") file.write(Matieres.libelle + "\n") file.write(str(Matieres.codeMat) + "\n") file.write(str(Matieres.coef) + "\n") file.write("------------------------") def ajoutNote(Note): # Virifie si le ficher existe if not os.path.isfile("Notes.dat"): with open("Notes.dat", 'w') as file: file.write("Gestion des Notes\n") file.write("---------------\n") # Ecrire dans le ficher les donner importer depui l'objet with open("Notes.dat", 'a+', encoding='utf-8') as file: file.tell() file.write("\n") file.write(str(Note.numInsc) + "\n") file.write(Note.codeMat + "\n") file.write(str(Note.note) + "\n") file.write("------------------------") def MoyenneEtudiant(NumInsc): if os.path.isfile("Notes.dat"): n = H.fileTolist("Notes.dat") else: return print("Pas de fichier Notes") if os.path.isfile("Matieres.dat"): m = H.fileTolist("Matieres.dat") else: return print("Pas de fichier Matieres") n = (H.focusNote(NumInsc, n)) if not n: return print("Etudiant indisponible") k = [] for i in range(1, len(n), 3): if n[i] not in k: cm = m.copy() k.append(H.focusMat(n[i], cm)) m = [] for i in k: for j in i: m.append(j) if not m: return print("Matieres indisponible") H.extraTrimer(m) H.extraTrimer(n) s = 0 for i in range(len(m)): s += float(m[i]) * float(n[i]) return print("la moyen est: ", s / sum(m)) def ModifEtudiant(NumInsc, newId): # Virifie si le ficher existe if os.path.isfile("Notes.dat"): n = H.fileTolist("Notes.dat") else: return print("Pas de fichier Notes") if os.path.isfile("Etudiants.dat"): e = H.fileTolist("Etudiants.dat") else: return print("Pas de fichier Etudiants") if str(NumInsc) not in e: return print("Etudiants indisponible") if str(NumInsc) not in n: return print(n) print(e) note, std = [], [] os.remove("Etudiants.dat") i = 0 while i < len(e): if e[i] == str(NumInsc): e[i] = str(newId) ajoutEtudiant(Etudiant(e[i], e[i+1], e[i+2], e[i+3])) i += 4 os.remove("Notes.dat") i = 0 while i < len(n): if n[i] == str(NumInsc): n[i] = str(newId) ajoutNote(Note(n[i], n[i+1], n[i+2])) i += 3 def SupprimerNote(NumInsc, CodeMat): if os.path.isfile("Notes.dat"): n = H.fileTolist("Notes.dat") else: return print("Pas de fichier Notes") os.remove("Notes.dat") i = 0 while i < len(n): if n[i] == str(NumInsc) and n[i+1] == str(CodeMat): i += 3 continue ajoutNote(Note(n[i], n[i+1], n[i+2])) i += 3 while True: menu() choice = int(input("Option: ")) if choice == 1: obj = Etudiant(input("Numero d'inscription: "), input("Nom: "), input("Prenom: "), input("Group: ")) ajoutEtudiant(obj) elif choice == 2: obj = Matieres(input("Code du matieres: "), input("Libelle: "), input("Coef: ")) ajoutMatiere(obj) elif choice == 3: obj = Note(input("Numero d'inscription: "), input("Code du matieres: "), input("Note: ")) ajoutNote(obj) elif choice == 4: MoyenneEtudiant(input("donner NumInsc d'Etudiant")) elif choice == 5: ModifEtudiant(input("donner NumInsc d'Etudiant"), input("donner le nouveau NumInsc")) elif choice == 6: SupprimerNote(input("donner NumInsc d'Etudiant"), input("donner le Code du matiere")) elif choice == 7: os._exit(1) else: print("Donner une bonne option")
27.915556
109
0.532559
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6,281
4.154613
0.169576
0.059424
0.048019
0.023409
0.485294
0.382053
0.352341
0.304622
0.254502
0.254502
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0.009651
0.307117
6,281
224
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28.040179
0.755974
0.078968
0
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0.017313
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false
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0.011976
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68c4c2351edd365a050e5485ec101ebf7af1067c
3,214
py
Python
model/baa99_basemodel.py
USC3DLAB/learning-based-optimization
2f1563462de7920f6ba2624987ae1f419e05591e
[ "Apache-2.0" ]
null
null
null
model/baa99_basemodel.py
USC3DLAB/learning-based-optimization
2f1563462de7920f6ba2624987ae1f419e05591e
[ "Apache-2.0" ]
null
null
null
model/baa99_basemodel.py
USC3DLAB/learning-based-optimization
2f1563462de7920f6ba2624987ae1f419e05591e
[ "Apache-2.0" ]
4
2019-04-05T00:06:14.000Z
2021-04-29T03:32:47.000Z
# ___________________________________________________________________________ # # Pyomo: Python Optimization Modeling Objects # Copyright 2017 National Technology and Engineering Solutions of Sandia, LLC # Under the terms of Contract DE-NA0003525 with National Technology and # Engineering Solutions of Sandia, LLC, the U.S. Government retains certain # rights in this software. # This software is distributed under the 3-clause BSD License. # ___________________________________________________________________________ # # baa99: Annotated with location of stochastic rhs entries # for use with pysp2smps conversion tool. from pyomo.core import * model = ConcreteModel() # use mutable parameters so that the constraint # right-hand-sides can be updated for each scenario model.d1_rhs = Param(mutable=True) model.d2_rhs = Param(mutable=True) # first-stage variables model.x1 = Var(bounds=(0,217)) model.x2 = Var(bounds=(0,217)) # second-stage variables model.v1 = Var(within=NonNegativeReals) model.v2 = Var(within=NonNegativeReals) model.u1 = Var(within=NonNegativeReals) model.u2 = Var(within=NonNegativeReals) model.w11 = Var(within=NonNegativeReals) model.w12 = Var(within=NonNegativeReals) model.w22 = Var(within=NonNegativeReals) # stage-cost expressions model.FirstStageCost = \ Expression(initialize=(4*model.x1 + 2*model.x2)) model.SecondStageCost = \ Expression(initialize=(-8*model.w11 - 4*model.w12 - 4*model.w22 +\ 0.2*model.v1 + 0.2*model.v2 + 10*model.u1 + 10*model.u2)) # always define the objective as the sum of the stage costs model.obj = Objective(expr=model.FirstStageCost + model.SecondStageCost) # # this model only has second-stage constraints # model.s1 = Constraint(expr=-model.x1 + model.w11 + model.w12 + model.v1 == 0) model.s2 = Constraint(expr=-model.x2 + model.w22 + model.v2 == 0) # # these two constraints have stochastic right-hand-sides # model.d1 = Constraint(expr=model.w11 + model.u1 == model.d1_rhs) model.d2 = Constraint(expr=model.w12 + model.w22 + model.u2 == model.d2_rhs) # # Store the possible table values for the stochastic parameters # on the model. These will be used to either generate an explicit # list of scenarios or to represent the SP implicitly. # model.d1_rhs_table = \ [17.75731865, 32.96224832, 43.68044355, 52.29173734, 59.67893765, 66.27551249, 72.33076402, 78.00434172, 83.40733268, 88.62275117, 93.71693266, 98.74655459, 103.7634931, 108.8187082, 113.9659517, 119.2660233, 124.7925174, 130.6406496, 136.9423425, 143.8948148, 151.8216695, 161.326406, 173.7895514, 194.0396804, 216.3173937] model.d2_rhs_table = \ [5.960319592, 26.21044859, 38.673594, 48.17833053, 56.10518525, 63.05765754, 69.35935045, 75.20748263, 80.73397668, 86.03404828, 91.18129176, 96.2365069, 101.2534454, 106.2830673, 111.3772488, 116.5926673, 121.9956583, 127.669236, 133.7244875, 140.3210624, 147.7082627, 156.3195565, 167.0377517, 182.2426813, 216.3173937]
26.783333
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3,214
5.063107
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0.030201
0.083893
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0.049856
0.049856
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0
0
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0.227273
0.199129
3,214
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27.008403
0.583139
0.34692
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false
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68c4d76626da0bce8c26017b492f398cab45c0ab
18,560
py
Python
GZP_GTO_QGIS/INSTALLATION/GeoTaskOrganizer/gto_point.py
msgis/swwat-gzp-template
080afbe9d49fb34ed60ba45654383d9cfca01e24
[ "MIT" ]
3
2019-06-18T15:28:09.000Z
2019-07-11T07:31:45.000Z
GZP_GTO_QGIS/INSTALLATION/GeoTaskOrganizer/gto_point.py
msgis/swwat-gzp-template
080afbe9d49fb34ed60ba45654383d9cfca01e24
[ "MIT" ]
2
2019-07-11T14:03:25.000Z
2021-02-08T16:14:04.000Z
GZP_GTO_QGIS/INSTALLATION/GeoTaskOrganizer/gto_point.py
msgis/swwat-gzp-template
080afbe9d49fb34ed60ba45654383d9cfca01e24
[ "MIT" ]
1
2019-06-12T11:07:37.000Z
2019-06-12T11:07:37.000Z
#!/usr/bin/python # -*- coding: utf-8 -*- import sys # QDoubleValidator needs QValidator in qgis 3.4! from PyQt5.QtCore import Qt, QLocale, pyqtSignal from PyQt5.QtGui import QDoubleValidator from PyQt5.QtWidgets import QWidget, QLabel, QLineEdit, QHBoxLayout, QToolButton, QToolBar, QComboBox, QDoubleSpinBox from PyQt5 import uic from qgis.core import QgsProject, QgsCoordinateReferenceSystem, QgsPointXY, QgsCoordinateTransform, QgsVectorLayerUtils, \ QgsWkbTypes, QgsGeometry from qgis.gui import QgsProjectionSelectionWidget, QgsVertexMarker import os from .gto_point_tool import GTOPointTool class GTOPointWidget(QWidget): isActive = pyqtSignal(bool) def __init__(self, gtoObj, parent=None): super(GTOPointWidget, self).__init__(parent) self.gtomain = gtoObj.gtomain self.info = self.gtomain.info self.debug = self.gtomain.debug try: # references self.helper = self.gtomain.helper self.iface = self.gtomain.iface self.prj = QgsProject.instance() self.canvas = self.iface.mapCanvas() # references self.x = 0 self.y = 0 self.xt = 0 self.yt = 0 self.snaped = False self.crs_transform = None self.crs_layer = None self.parent_widget = None # e.g toolbar self.userEditX = False self.userEditY = False # config self.tools = [] self.coordinatereferences = None self.scale = 0 self.center = True self.enable_save = False self.precision = -1 self.cboCoordSystems = None self.is_widgetaction = False self.show_tool_button = False self.addpoint_attributes = {} self.tools_after_addpoint = [] # widgets: uic.loadUi(os.path.join(os.path.dirname(__file__), 'gto_point.ui'), self) # point tool self.btnPointTool = self.btnPoint # x self.coordX = self.coordX # self.validX = QDoubleValidator(sys.float_info.min, sys.float_info.max, 16, self.coordX) # no negative numbers possible? # self.validX = QDoubleValidator(-999999999, 999999999, 16, self.coordX) # working but no range limit self.validX = QDoubleValidator(self.coordX) # so we use the standard: self.validX.setNotation(QDoubleValidator.StandardNotation) # By default, this property is set to ScientificNotation: i.e. 1.5E-2 is possible self.coordX.setValidator(self.validX) self.btnCopyXt = self.btnCopyXt self.lblX = self.lblX # y self.coordY = self.coordY self.validY = QDoubleValidator(self.coordY) self.validY.setNotation(QDoubleValidator.StandardNotation) self.coordY.setValidator(self.validY) self.btnCopyYt = self.btnCopyYt self.lblY = self.lblY # show self.btnShow = self.btnShow self.btnShow.setIcon(self.helper.getIcon('mActionZoomPoint.png')) # add point self.btnAddPoint = self.btnAddPoint self.btnAddPoint.setIcon(self.helper.getIcon('mActionAddPoint.png')) self.btnAddPoint.setToolTip("Punkt erstellen") # marker self.marker = QgsVertexMarker(self.canvas) self.marker.setColor(Qt.yellow) self.marker.setIconType(QgsVertexMarker.ICON_CROSS) self.marker.setIconSize(10) self.marker.setPenWidth(3) # See the enum IconType from http://www.qgis.org/api/classQgsVertexMarker.html # maptool self.mapTool = GTOPointTool(self.iface, self.canvas) self.mapTool.isActive.connect(self.setToolStatus) self.mapTool.canvasReleased.connect(self.setCoords) # signals # QToolButton.toggled() self.btnPoint.clicked.connect(self.setMapTool) # self.coordX.textChanged.connect(self.set_user_editX) # self.coordY.textChanged.connect(self.set_user_editY) self.coordX.textEdited.connect(self.set_user_editX) self.coordY.textEdited.connect(self.set_user_editY) # self.coordX.editingFinished.connect(self.check_coords) # self.coordY.editingFinished.connect(self.check_coords) self.btnShow.clicked.connect(self.showCoordinate) self.btnCopyXt.clicked.connect(self.copyXt) self.btnCopyYt.clicked.connect(self.copyYt) self.btnAddPoint.clicked.connect(self.add_point) self.prj.crsChanged.connect(self.prj_crs_changed) self.iface.mapCanvas().currentLayerChanged.connect(self.layer_changed) except Exception as e: self.info.err(e) def set_user_editX(self, *args): try: if self.debug: self.info.log("set_user_editX") self.userEditX = True self.marker.hide() self.marker.setColor(Qt.blue) self.snaped = False except Exception as e: self.info.err(e) def set_user_editY(self, *args): try: if self.debug: self.info.log("set_user_editY") self.userEditY = True self.marker.hide() self.marker.setColor(Qt.blue) self.snaped = False except Exception as e: self.info.err(e) def reset_user_edit(self): if self.debug: self.info.log("reset_user_edit") self.userEditX = False self.userEditY = False def check_coords(self): try: self.marker.hide() if self.debug: self.info.log("useredit: X:", self.userEditX, "userEditY:", self.userEditY) if self.coordX.text() == '': self.coordX.setText('0') self.x = 0 if self.coordY.text() == '': self.coordY.setText('0') self.y = 0 if self.userEditX or self.userEditY: self.snaped = False self.userEditX = False self.userEditY = False self.xt = float(self.coordX.text().replace(",", ".")) self.yt = float(self.coordY.text().replace(",", ".")) tr = QgsCoordinateTransform(self.crs_transform, self.prj.crs(), self.prj) trPoint = tr.transform(QgsPointXY(self.xt, self.yt)) self.x = trPoint.x() self.y = trPoint.y() if self.debug: self.info.log("check_coords:", self.x, "/", self.y, "/snaped:", self.snaped) except Exception as e: self.info.err(e) def setMapTool(self): try: self.canvas.setMapTool(self.mapTool) except Exception as e: self.info.err(e) def set_parent_widget(self, widget): try: self.parent_widget = widget if self.parent_widget.action.isChecked(): self.setMapTool() except Exception as e: self.info.err(e) def setToolStatus(self, isActive): try: self.btnPoint.setChecked(isActive) self.marker.hide() self.isActive.emit(isActive) if self.parent_widget is not None: self.parent_widget.set_status(isActive) except Exception as e: self.info.err(e) def setConfig(self, config): try: self.tools = config.get("tools", []) self.coordinatereferences = config.get("coordinatereferences", None) self.scale = config.get("scale", 0) self.center = config.get("center", True) self.enable_save = config.get('enable_save', False) self.precision = config.get('precision', -1) self.is_widgetaction = config.get('is_widgetaction', False) self.show_tool_button = config.get('show_tool_button', not self.is_widgetaction) self.addpoint_attributes = config.get("addpoint_attributes", {}) self.tools_after_addpoint = config.get("tools_after_addpoint", []) if self.precision < 0: self.precision, type_conversion_ok = self.prj.readNumEntry("PositionPrecision", "DecimalPlaces", 3) # labels: self.lblX.setText(config.get('label_x', 'X:')) self.lblY.setText(config.get('label_y', 'Y:')) # text text = '' if self.scale > 0 and self.center: text = "Auf Koordinate zentrieren, Maßstab: " + str(self.scale) elif self.center: text = "Auf Koordinate zentrieren" elif self.scale > 0: text = "Maßstab: " + str(self.scale) elif len(self.tools) > 0: text = self.tools[0] act = self.gtomain.findAction(self.tools[0]) if act is not None: text = act.toolTip() if act.icon() is not None: self.btnShow.setIcon(act.icon()) if self.debug: self.info.log(text) self.btnShow.setToolTip(text) if self.btnShow.toolTip() == '': self.btnShow.setHidden(True) # add point self.btnAddPoint.setHidden(not self.enable_save) # point tool self.btnPointTool.setHidden(not self.show_tool_button) except Exception as e: self.info.err(e) def added(self): # widget was added to parent try: self.crs_transform = self.prj.crs() self.crs_layer = self.iface.activeLayer().crs() # set crs widget if self.coordinatereferences is None: # qgis transform self.cboCoordSys.setHidden(True) self.cboCoordSystems = self.mQgsProjectionSelectionWidget self.cboCoordSystems.setMinimumWidth(460) self.cboCoordSystems.setOptionVisible(QgsProjectionSelectionWidget.ProjectCrs, True) self.cboCoordSystems.setCrs(self.prj.crs()) self.setCrs(self.cboCoordSystems.crs()) self.cboCoordSystems.crsChanged.connect(self.setCrs) else: # custom transform self.mQgsProjectionSelectionWidget.setHidden(True) self.cboCoordSystems = self.cboCoordSys self.cboCoordSystems.setMinimumWidth(400) self.cboCoordSystems.currentIndexChanged.connect( lambda: self.setCrs(self.cboCoordSystems.currentData())) self.cboCoordSystems.addItem( "Projekt CRS: " + self.crs_transform.authid() + " - " + self.crs_transform.description(), self.crs_transform) for crsID in self.coordinatereferences: try: crs = QgsCoordinateReferenceSystem(crsID) self.cboCoordSystems.addItem(crs.authid() + " - " + crs.description(), crs) except Exception as e: self.info.err(e) self.cboCoordSystems.setCurrentIndex(0) # here we know which type is cboCoordSystems! self.setIconSizes() except Exception as e: self.info.err(e) def setIconSizes(self): try: if self.parentWidget() is not None: btns = self.findChildren(QToolButton) for btn in btns: try: btn.setIconSize(self.iface.iconSize(False)) except: pass # help for the QGIS widget :S self.cboCoordSystems.setMaximumHeight(self.cboCoordSys.height()) btns = self.cboCoordSystems.findChildren(QToolButton) for btn in btns: btn.setIconSize(self.iface.iconSize(False)) except Exception as e: self.info.err(e) def layer_changed(self, layer): try: if layer.geometryType() == QgsWkbTypes.GeometryType.PointGeometry: self.btnAddPoint.setEnabled(True) else: self.btnAddPoint.setEnabled(False) except Exception as e: self.info.err(e) def prj_crs_changed(self): try: self.reset_user_edit() if self.coordinatereferences is not None: # my combo self.crs_transform = self.prj.crs() self.cboCoordSystems.setItemText(0, "Projekt CRS: " + self.crs_transform.authid() + " - " + self.crs_transform.description()) self.cboCoordSystems.setItemData(0, self.crs_transform) self.x = 0 self.y = 0 self.xt = 0 self.yt = 0 self.coordX.setText("---") self.coordY.setText("---") except Exception as e: self.info.err(e) def add_point(self): try: self.check_coords() layer = self.iface.activeLayer() if layer.geometryType() == QgsWkbTypes.GeometryType.PointGeometry: self.prj.layerTreeRoot().findLayer(layer.id()).setItemVisibilityCheckedParentRecursive(True) if self.x != 0 and self.y != 0: feat = QgsVectorLayerUtils.createFeature(layer) tr = QgsCoordinateTransform(self.prj.crs(), self.crs_layer, self.prj) trPoint = tr.transform(QgsPointXY(self.x, self.y)) feat.setGeometry(QgsGeometry.fromPointXY(trPoint)) # direct save # (res, features) = layer.dataProvider().addFeatures([feat]) # if self.debug: self.info.log("new point:", res, features[0]) # set attributes dic_info = {"x": self.x, "y": self.y, "snaped": self.snaped} # self.info.err(None,"mapping:",dic_info) # self.info.err(None, "addpoint_attributes:", self.addpoint_attributes) for k, v in self.addpoint_attributes.items(): # self.info.err(None,"attribute:",k,"value:",dic_info[v]) feat[k] = layer.fields().field(k).convertCompatible(dic_info[v]) features = [feat] layer.featureAdded.connect(self.select_new_feature) self.save_features(layer, features) layer.featureAdded.disconnect(self.select_new_feature) self.marker.hide() self.helper.refreshLayer(layer) self.gtomain.runcmd(self.tools_after_addpoint) else: self.info.gtoWarning('Ungültige Koordinaten! x:', self.x, "y:", self.y) else: self.info.gtoWarning('Kein Punktlayer ausgewählt!') except Exception as e: self.info.err(e) def select_new_feature(self, featId): try: if self.debug: self.info.log("new featue:", self.iface.activeLayer().name(), "/ fid:", featId) self.iface.activeLayer().selectByIds([featId]) self.mapTool.reset_marker() self.marker.hide() self.helper.refreshLayer(self.iface.activeLayer()) except Exception as e: self.info.err(e) def save_features(self, layer, features): if not layer.isEditable(): layer.startEditing() layer.beginEditCommand("layer {0} edit".format(layer.name())) try: layer.addFeatures(features) layer.endEditCommand() except Exception as e: layer.destroyEditCommand() raise e def copyXt(self): self.check_coords() dsp = QDoubleSpinBox() dsp.setDecimals(16) self.helper.copyToClipboard(dsp.textFromValue(self.xt)) def copyYt(self): self.check_coords() dsp = QDoubleSpinBox() dsp.setDecimals(16) self.helper.copyToClipboard(dsp.textFromValue(self.yt)) def reset(self): if self.debug: self.info.log("widget reset") self.marker.hide() def setCoords(self, point, snaped): try: self.reset_user_edit() self.snaped = snaped self.x = point.x() self.y = point.y() if self.debug: self.info.log("setCoords", self.x, "/", self.y) self.setCrs(self.crs_transform) # marker self.marker.setCenter(QgsPointXY(self.x, self.y)) if snaped: self.marker.setColor(Qt.red) else: self.marker.setColor(Qt.blue) self.marker.show() except Exception as e: self.info.err(e) def showCoordinate(self): try: self.check_coords() self.marker.hide() if self.x != 0 and self.y != 0: pt_center = QgsPointXY(self.x, self.y) self.marker.setCenter(pt_center) self.marker.show() # center map if self.center: self.canvas.setCenter(pt_center) # scale map if self.scale is not None and self.scale > 0: self.canvas.zoomScale(self.scale) self.canvas.refresh() # run tools self.gtomain.runcmd(self.tools) else: self.info.gtoWarning('Ungültige Koordinate! x:', self.x, "y:", self.y) except Exception as e: self.info.err(e) def setCrs(self, crs): try: if self.debug: self.info.log("setCrs") self.crs_transform = crs tr = QgsCoordinateTransform(self.prj.crs(), self.crs_transform, self.prj) trPoint = tr.transform(QgsPointXY(self.x, self.y)) self.xt = trPoint.x() self.yt = trPoint.y() d = round(trPoint.x(), self.precision) display = str(d).replace(".", QLocale().decimalPoint()) self.coordX.setText(display) d = round(trPoint.y(), self.precision) display = str(d).replace(".", QLocale().decimalPoint()) self.coordY.setText(display) except Exception as e: self.info.err(e)
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68c6139534bf7157139c6f49ef0d7f2bbafd28d8
318
py
Python
quokka/module_template/quokka_module_template/__init__.py
songshansitulv/quokka
5d031d419691285481ec045d42773ed713abdaf7
[ "BSD-3-Clause" ]
1,141
2015-02-19T12:21:16.000Z
2022-03-29T10:07:18.000Z
quokka/module_template/quokka_module_template/__init__.py
songshansitulv/quokka
5d031d419691285481ec045d42773ed713abdaf7
[ "BSD-3-Clause" ]
284
2015-02-23T01:03:55.000Z
2019-12-20T04:54:31.000Z
quokka/module_template/quokka_module_template/__init__.py
songshansitulv/quokka
5d031d419691285481ec045d42773ed713abdaf7
[ "BSD-3-Clause" ]
370
2015-02-19T10:15:19.000Z
2022-03-31T20:08:15.000Z
from .admin import UserView, TweetView def configure(app): app.admin.register( app.db.users, UserView, # category='User', name='User' ) app.admin.register( app.db.get_collection('tweets'), TweetView, # category='User', name='Tweets' )
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2
68c9488a495919a38f2ff870419c8d832b14221b
11,909
py
Python
model/loss.py
arthurlirui/MVSDF
0b1014682e9b5cd5a92fea715d26ebc9845da4bf
[ "MIT" ]
76
2022-02-11T12:04:49.000Z
2022-03-30T10:43:59.000Z
model/loss.py
arthurlirui/MVSDF
0b1014682e9b5cd5a92fea715d26ebc9845da4bf
[ "MIT" ]
1
2022-03-22T12:57:43.000Z
2022-03-22T12:57:43.000Z
model/loss.py
arthurlirui/MVSDF
0b1014682e9b5cd5a92fea715d26ebc9845da4bf
[ "MIT" ]
4
2022-02-13T11:47:50.000Z
2022-03-02T12:07:21.000Z
from numpy.lib.function_base import diff import torch from torch import nn from torch.nn import functional as F from itertools import accumulate import numpy as np import os import importlib from utils.my_utils import carving_t, carving_t2, FeatExt, get_in_range, idx_cam2img, idx_world2cam, normalize_for_grid_sample import model.conf as conf if os.environ.get('IDR_USE_ENV', '0') == '1' and os.environ.get('IDR_CONF', '') != '': print('override conf: ', os.environ.get('IDR_CONF')) conf = importlib.import_module(os.environ.get('IDR_CONF')) class IDRLoss(nn.Module): def __init__(self): super().__init__() self.l1_loss = nn.L1Loss(reduction='sum') def get_rgb_loss(self,rgb_values, rgb_gt, network_object_mask, object_mask): if (network_object_mask & object_mask).sum() == 0: return torch.tensor(0.0).cuda().float() rgb_values = rgb_values[network_object_mask & object_mask] rgb_gt = rgb_gt.reshape(-1, 3)[network_object_mask & object_mask] rgb_loss = self.l1_loss(rgb_values, rgb_gt) / float(object_mask.shape[0]) return rgb_loss def get_eikonal_loss(self, grad_theta): if grad_theta.shape[0] == 0: return torch.tensor(0.0).cuda().float() eikonal_loss = ((grad_theta.norm(2, dim=1) - 1) ** 2).mean() return eikonal_loss def get_depth_loss(self, eikonal_points_hom, eikonal_output, depths, cams, size, center, far_thresh, far_att, near_thresh, near_att, smooth): eikonal_points_hom = eikonal_points_hom.detach() depths = depths.permute(1,0,2,3,4) cams = cams.permute(1,0,2,3,4) eikonal_points_hom[:,:,:3,0] = eikonal_points_hom[:,:,:3,0] / 2 * size.view(1,1,1) + center.view(1,1,3) if conf.use_invalid: # treat out-of-mask depth as inf dist, occ, in_range = carving_t(eikonal_points_hom, depths, cams, out_thresh_perc=conf.out_thresh_perc) else: # ignore out-of-mask depth dist, occ, in_range = carving_t2(eikonal_points_hom, depths, cams, out_thresh_perc=conf.out_thresh_perc) # scale is applied in cams NOTE: hard code dist_r = (dist / size.view(1,1) * 2 + (-1.25) * (~in_range).to(torch.float32)).clamp(-1.25,1.25) # loss = nn.SmoothL1Loss()(eikonal_output, -dist_r) # single depth # not_inside = (dist_r < int_thresh) # inside_weight = not_inside + (~not_inside) * int_att far_mask = dist_r.abs() > far_thresh far_weight = far_mask * far_att + (~far_mask) near_mask = dist_r.abs() < near_thresh near_weight = near_mask * near_att + (~near_mask) if smooth is not None: loss = nn.SmoothL1Loss(reduction='none')(eikonal_output / smooth, -dist_r / smooth) * smooth else: loss = nn.L1Loss(reduction='none')(eikonal_output, -dist_r) loss = (loss * far_weight * near_weight * in_range).mean() return loss def get_feat_loss2(self, diff_surf_pts, uncerts, feat, cam, feat_src, src_cams, size, center, network_object_mask, object_mask): mask = network_object_mask & object_mask if (mask).sum() == 0: return torch.tensor(0.0).float().cuda() sample_mask = mask.view(feat.size()[0], -1) hit_nums = sample_mask.sum(-1) accu_nums = [0] + hit_nums.cumsum(0).tolist() slices = [slice(accu_nums[i], accu_nums[i+1]) for i in range(len(accu_nums)-1)] loss = [] ## for each image in minibatch for view_i, slice_ in enumerate(slices): if slice_.start < slice_.stop: ## projection diff_surf_pts_slice = diff_surf_pts[slice_] pts_world = (diff_surf_pts_slice / 2 * size.view(1,1) + center.view(1,3)).view(1,-1,1,3,1) # 1m131 pts_world = torch.cat([pts_world, torch.ones_like(pts_world[...,-1:,:])], dim=-2) # 1m141 # rgb_pack = torch.cat([rgb[view_i:view_i+1], rgb_src[view_i]], dim=0) # v3hw cam_pack = torch.cat([cam[view_i:view_i+1], src_cams[view_i]], dim=0) # v244 pts_img = idx_cam2img(idx_world2cam(pts_world, cam_pack), cam_pack) # vm131 ## gathering grid = pts_img[...,:2,0] # vm12 # feat2_pack = self.feat_ext(rgb_pack)[2] # vchw # TODO: multi-scale feature feat2_pack = torch.cat([feat[view_i:view_i+1], feat_src[view_i]], dim=0) grid_n = normalize_for_grid_sample(feat2_pack, grid/2) grid_in_range = get_in_range(grid_n) valid_mask = (grid_in_range[:1,...] * grid_in_range[1:,...]).unsqueeze(1) > 0.5 # and gathered_feat = F.grid_sample(feat2_pack, grid_n, mode='bilinear', padding_mode='zeros', align_corners=False) # vcm1 ## calculation diff = gathered_feat[:1] - gathered_feat[1:] if uncerts is None: gathered_norm = gathered_feat.norm(dim=1, keepdim=True) # vcm1 diff_mask = diff.norm(dim=1, keepdim=True) < ((gathered_norm[:1,...] + gathered_norm[1:,...])/2*1) print('feat loss mask', (valid_mask & diff_mask).sum().item(), '/', valid_mask.size()[0] * valid_mask.size()[2]) sample_loss = (diff * valid_mask * diff_mask).abs().mean() else: uncert = uncerts[view_i].unsqueeze(1).unsqueeze(3) # (v-1)1m1 print(f'uncert: {uncert.min():.4f}, {uncert.median():.4f}, {uncert.max():.4f}') sample_loss = ((diff.abs() * (-uncert).exp() + 0.01 * uncert)*valid_mask).mean() else: sample_loss = torch.zeros(1).float().cuda() loss.append(sample_loss) loss = sum(loss) / len(loss) return loss def get_feat_loss_corr(self, diff_surf_pts, uncerts, feat, cam, feat_src, src_cams, size, center, network_object_mask, object_mask): mask = network_object_mask & object_mask if (mask).sum() == 0: return torch.tensor(0.0).float().cuda() sample_mask = mask.view(feat.size()[0], -1) hit_nums = sample_mask.sum(-1) accu_nums = [0] + hit_nums.cumsum(0).tolist() slices = [slice(accu_nums[i], accu_nums[i+1]) for i in range(len(accu_nums)-1)] loss = [] ## for each image in minibatch for view_i, slice_ in enumerate(slices): if slice_.start < slice_.stop: ## projection diff_surf_pts_slice = diff_surf_pts[slice_] pts_world = (diff_surf_pts_slice / 2 * size.view(1,1) + center.view(1,3)).view(1,-1,1,3,1) # 1m131 pts_world = torch.cat([pts_world, torch.ones_like(pts_world[...,-1:,:])], dim=-2) # 1m141 # rgb_pack = torch.cat([rgb[view_i:view_i+1], rgb_src[view_i]], dim=0) # v3hw cam_pack = torch.cat([cam[view_i:view_i+1], src_cams[view_i]], dim=0) # v244 pts_img = idx_cam2img(idx_world2cam(pts_world, cam_pack), cam_pack) # vm131 ## gathering grid = pts_img[...,:2,0] # vm12 # feat2_pack = self.feat_ext(rgb_pack)[2] # vchw # TODO: multi-scale feature feat2_pack = torch.cat([feat[view_i:view_i+1], feat_src[view_i]], dim=0) grid_n = normalize_for_grid_sample(feat2_pack, grid/2) grid_in_range = get_in_range(grid_n) valid_mask = (grid_in_range[:1,...] * grid_in_range[1:,...]).unsqueeze(1) > 0.5 # and gathered_feat = F.grid_sample(feat2_pack, grid_n, mode='bilinear', padding_mode='zeros', align_corners=False) # vcm1 ## calculation gathered_norm = gathered_feat.norm(dim=1, keepdim=True) # v1m1 corr = (gathered_feat[:1] * gathered_feat[1:]).sum(dim=1, keepdim=True) \ / gathered_norm[:1].clamp(min=1e-9) / gathered_norm[1:].clamp(min=1e-9) # (v-1)1m1 corr_loss = (1 - corr).abs() if uncerts is None: diff_mask = corr_loss < 0.5 print('feat loss mask', (valid_mask & diff_mask).sum().item(), '/', valid_mask.size()[0] * valid_mask.size()[2]) sample_loss = (corr_loss * valid_mask * diff_mask).mean() else: uncert = uncerts[view_i].unsqueeze(1).unsqueeze(3) # (v-1)1m1 print(f'uncert: {uncert.min():.4f}, {uncert.median():.4f}, {uncert.max():.4f}') sample_loss = ((corr_loss * (-uncert).exp() + uncert)*valid_mask).mean() else: sample_loss = torch.zeros(1).float().cuda() loss.append(sample_loss) loss = sum(loss) / len(loss) return loss def get_surf_loss(self, surf_indicator_output, network_object_mask, object_mask_true): mask = network_object_mask & object_mask_true N = mask.sum() gt1 = torch.ones(N, dtype=surf_indicator_output.dtype, device=surf_indicator_output.device) gt0 = torch.zeros(surf_indicator_output.size()[0]-N, dtype=surf_indicator_output.dtype, device=surf_indicator_output.device) gt = torch.cat([gt1, gt0], dim=0) loss = nn.BCEWithLogitsLoss(reduction='mean')(surf_indicator_output, gt) return loss def forward(self, model_outputs, ground_truth, train_progress, n_img): rgb_gt = ground_truth['rgb'].cuda() network_object_mask = model_outputs['network_object_mask'] object_mask = model_outputs['object_mask'] ground_truth['size'] = ground_truth['size'][:1] ground_truth['center'] = ground_truth['center'][:1] if conf.enable_rgb: rgb_loss = self.get_rgb_loss(model_outputs['rgb_values'], rgb_gt, network_object_mask, object_mask) else: rgb_loss = torch.zeros(1).float().cuda() eikonal_loss = self.get_eikonal_loss(model_outputs['grad_theta']) depth_loss = self.get_depth_loss(model_outputs['eikonal_points_hom'], model_outputs['eikonal_output'], ground_truth['depths'], ground_truth['depth_cams'], ground_truth['size'], ground_truth['center'], far_thresh=conf.far_thresh, far_att=conf.far_att(train_progress), near_thresh=conf.near_thresh, near_att=conf.near_att(train_progress), smooth=conf.smooth(train_progress)) if conf.phase[0] <= train_progress and conf.enable_feat: feat_loss = self.get_feat_loss_corr(model_outputs['diff_surf_pts'], model_outputs.get('uncerts'), *[ground_truth[attr] for attr in ['feat', 'cam', 'feat_src', 'src_cams', 'size', 'center']], network_object_mask, object_mask) else: feat_loss = torch.zeros(1).float().cuda() if conf.phase[0] <= train_progress: surf_loss = self.get_surf_loss(model_outputs['surf_indicator_output'], network_object_mask, model_outputs['object_mask_true']) else: surf_loss = torch.zeros(1).float().cuda() loss = rgb_loss * conf.rgb_weight(train_progress) + \ eikonal_loss * conf.eikonal_weight + \ surf_loss * conf.surf_weight + \ feat_loss * conf.feat_weight(train_progress) + \ depth_loss * conf.depth_weight(train_progress) return { 'loss': loss, 'rgb_loss': rgb_loss, 'eikonal_loss': eikonal_loss, 'depth_loss': depth_loss, 'feat_loss': feat_loss, 'surf_loss': surf_loss }
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68c9514528013da4b21120807688c8993cf15c6d
28
py
Python
__init__.py
AbhiK002/Matrix
2d83f08877dccba9e4c710bd5fb65f613848d63f
[ "MIT" ]
2
2022-02-11T04:39:21.000Z
2022-02-12T15:50:35.000Z
__init__.py
AbhiK002/Matrix
2d83f08877dccba9e4c710bd5fb65f613848d63f
[ "MIT" ]
null
null
null
__init__.py
AbhiK002/Matrix
2d83f08877dccba9e4c710bd5fb65f613848d63f
[ "MIT" ]
null
null
null
from .matrix import Matrix
9.333333
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6
68c9c5b05677eeb8639ae06e7dceaa64258bc6fc
645
py
Python
database/tables/transaction.py
gyani91/data-engineering
cdf389b42c8b715e5d8db8ac2feaf42919a8668b
[ "MIT" ]
null
null
null
database/tables/transaction.py
gyani91/data-engineering
cdf389b42c8b715e5d8db8ac2feaf42919a8668b
[ "MIT" ]
null
null
null
database/tables/transaction.py
gyani91/data-engineering
cdf389b42c8b715e5d8db8ac2feaf42919a8668b
[ "MIT" ]
null
null
null
from sqlalchemy import Column, Integer, String, Date from run import db class Transaction(db.Model): __tablename__ = "transaction" id = Column(Integer, primary_key=True, autoincrement=True) itemid = Column(String) locationid = Column(String) transactiondate = Column(Date) transferquantity = Column(Integer) def __init__(self, itemid, locationid, transactiondate, transferquantity): self.itemid = itemid self.locationid = locationid self.transactiondate = transactiondate self.transferquantity = transferquantity def __repr__(self): return "<Transaction %s>" % self.id
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1
68c9e87b18bf9b5cf5cffc96cfae86418021989e
60
py
Python
Data/Write/Write pickle.py
fraunhofer-iais/IAIS-Python-Snippets
a3ee610d6270cda2c891688851696c34831ffa2b
[ "MIT" ]
null
null
null
Data/Write/Write pickle.py
fraunhofer-iais/IAIS-Python-Snippets
a3ee610d6270cda2c891688851696c34831ffa2b
[ "MIT" ]
null
null
null
Data/Write/Write pickle.py
fraunhofer-iais/IAIS-Python-Snippets
a3ee610d6270cda2c891688851696c34831ffa2b
[ "MIT" ]
null
null
null
### Pickle the data pickle.dump(data, open("data.p", "wb"))
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68c9ea4c15db64ff1e75a845e1e422b9fc6a1a9f
682
py
Python
list-users/list-users.py
nl-hugo/power-bi-snippets
5d63f88526b8dc4241dd26301b4b8fd72096c822
[ "MIT" ]
null
null
null
list-users/list-users.py
nl-hugo/power-bi-snippets
5d63f88526b8dc4241dd26301b4b8fd72096c822
[ "MIT" ]
null
null
null
list-users/list-users.py
nl-hugo/power-bi-snippets
5d63f88526b8dc4241dd26301b4b8fd72096c822
[ "MIT" ]
null
null
null
import argparse from bs4 import BeautifulSoup def list_users(file_name): with open(file_name, 'r', encoding='utf-8') as f: soup = BeautifulSoup(f.read(), 'html.parser') for user in soup.find_all('li', class_='accessListData'): user_name = user.find(class_='username').string user_role = user.find(class_='performAction').span.string print(f'{user_name} ({user_role})') def handler(): parser = argparse.ArgumentParser() parser.add_argument('file', help='Power BI service url with user list') args = parser.parse_args() if args.file: list_users(args.file) if __name__ == "__main__": handler()
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68cf170ee8230ba31ec966d1a0949d9a8190f908
6,614
py
Python
module.py
Afvanjaffer/Image-translation-
a7b379ddd1fb3fa21a6f0a41fdb1ed986b5c68d7
[ "MIT" ]
9
2019-02-10T20:23:21.000Z
2021-03-04T04:15:49.000Z
module.py
Afvanjaffer/Image-translation-
a7b379ddd1fb3fa21a6f0a41fdb1ed986b5c68d7
[ "MIT" ]
1
2020-05-07T05:55:24.000Z
2020-05-07T05:55:24.000Z
module.py
Afvanjaffer/Image-translation-
a7b379ddd1fb3fa21a6f0a41fdb1ed986b5c68d7
[ "MIT" ]
4
2018-07-14T08:03:27.000Z
2020-07-29T09:36:54.000Z
import tensorflow as tf def conv2d_layer( inputs, filters, kernel_size = [4, 4], strides = [2, 2], padding = 'same', activation = None, kernel_initializer = tf.truncated_normal_initializer(stddev = 0.02), name = None): conv_layer = tf.layers.conv2d( inputs = inputs, filters = filters, kernel_size = kernel_size, strides = strides, padding = padding, activation = activation, kernel_initializer = kernel_initializer, name = name) return conv_layer def conv2d_transpose_layer( inputs, filters, kernel_size, strides, padding = 'same', activation = None, kernel_initializer = tf.truncated_normal_initializer(stddev = 0.02), name = None): deconv_layer = tf.layers.conv2d_transpose( inputs = inputs, filters = filters, kernel_size = kernel_size, strides = strides, padding = padding, activation = activation, kernel_initializer = kernel_initializer, name = name) return deconv_layer def instance_norm_layer( inputs, epsilon = 1e-06, activation_fn = None, name = None): instance_norm_layer = tf.contrib.layers.instance_norm( inputs = inputs, epsilon = epsilon, activation_fn = activation_fn) return instance_norm_layer def residual_block( inputs, filters, kernel_size = [3, 3], strides = [1, 1], name_prefix = 'residule_block_'): p1 = (kernel_size[0] - 1) // 2 p2 = (kernel_size[1] - 1) // 2 paddings = [[0, 0], [p1, p1], [p2, p2], [0, 0]] h0_pad = tf.pad(tensor = inputs, paddings = paddings, mode = 'REFLECT', name = 'pad0') h1 = conv2d_layer(inputs = h0_pad, filters = filters, kernel_size = kernel_size, strides = strides, padding = 'valid', activation = None, name = name_prefix + 'conv1') h1_norm = instance_norm_layer(inputs = h1, activation_fn = tf.nn.relu, name = name_prefix + 'norm1') h1_pad = tf.pad(tensor = h1_norm, paddings = paddings, mode = 'REFLECT', name = 'pad1') h2 = conv2d_layer(inputs = h1_pad, filters = filters, kernel_size = kernel_size, strides = strides, padding = 'valid', activation = None, name = name_prefix + 'conv2') h2_norm = instance_norm_layer(inputs = h2, activation_fn = None, name = name_prefix + 'norm2') return inputs + h2_norm def discriminator(inputs, num_filters = 64, reuse = False, scope_name = 'discriminator'): with tf.variable_scope(scope_name) as scope: # Discriminator would be reused in CycleGAN if reuse: scope.reuse_variables() else: assert scope.reuse is False h0 = conv2d_layer(inputs = inputs, filters = num_filters, activation = tf.nn.leaky_relu, name = 'h0_conv') h1 = conv2d_layer(inputs = h0, filters = num_filters * 2, activation = None, name = 'h1_conv') h1_norm = instance_norm_layer(inputs = h1, activation_fn = tf.nn.leaky_relu, name = 'h1_norm') h2 = conv2d_layer(inputs = h1_norm, filters = num_filters * 4, activation = None, name = 'h2_conv') h2_norm = instance_norm_layer(inputs = h2, activation_fn = tf.nn.leaky_relu, name = 'h2_norm') h3 = conv2d_layer(inputs = h2_norm, filters = num_filters * 8, strides = [1, 1], activation = None, name = 'h3_conv') h3_norm = instance_norm_layer(inputs = h3, activation_fn = tf.nn.leaky_relu, name = 'h3_norm') h4 = conv2d_layer(inputs = h3_norm, filters = 1, strides = [1, 1], activation = None, name = 'h4_conv') return h4 def generator_resnet(inputs, num_filters = 64, output_channels = 3, reuse = False, scope_name = 'generator_resnet'): with tf.variable_scope(scope_name) as scope: # Discriminator would be reused in CycleGAN if reuse: scope.reuse_variables() else: assert scope.reuse is False #output_channels = inputs.shape[-1] # Check tf.pad using 'REFLECT' mode # https://www.tensorflow.org/api_docs/python/tf/pad c0 = tf.pad(tensor = inputs, paddings = [[0, 0], [3, 3], [3, 3], [0, 0]], mode = 'REFLECT', name = 'c0_pad') c1 = conv2d_layer(inputs = c0, filters = num_filters, kernel_size = [7, 7], strides = [1, 1], padding = 'valid', activation = None, name = 'c1_conv') c1_norm = instance_norm_layer(inputs = c1, activation_fn = tf.nn.relu, name = 'c1_norm') c2 = conv2d_layer(inputs = c1_norm, filters = num_filters * 2, kernel_size = [3, 3], strides = [2, 2], activation = None, name = 'c2_conv') c2_norm = instance_norm_layer(inputs = c2, activation_fn = tf.nn.relu, name = 'c2_norm') c3 = conv2d_layer(inputs = c2_norm, filters = num_filters * 4, kernel_size = [3, 3], strides = [2, 2], activation = None, name = 'c3_conv') c3_norm = instance_norm_layer(inputs = c3, activation_fn = tf.nn.relu, name = 'c3_norm') r1 = residual_block(inputs = c3_norm, filters = num_filters * 4, name_prefix = 'residual1_') r2 = residual_block(inputs = r1, filters = num_filters * 4, name_prefix = 'residual2_') r3 = residual_block(inputs = r2, filters = num_filters * 4, name_prefix = 'residual3_') r4 = residual_block(inputs = r3, filters = num_filters * 4, name_prefix = 'residual4_') r5 = residual_block(inputs = r4, filters = num_filters * 4, name_prefix = 'residual5_') r6 = residual_block(inputs = r5, filters = num_filters * 4, name_prefix = 'residual6_') r7 = residual_block(inputs = r6, filters = num_filters * 4, name_prefix = 'residual7_') r8 = residual_block(inputs = r7, filters = num_filters * 4, name_prefix = 'residual8_') r9 = residual_block(inputs = r8, filters = num_filters * 4, name_prefix = 'residual9_') d1 = conv2d_transpose_layer(inputs = r9, filters = num_filters * 2, kernel_size = [3, 3], strides = [2, 2], name = 'd1_deconv') d1_norm = instance_norm_layer(inputs = d1, activation_fn = tf.nn.relu, name = 'd1_norm') d2 = conv2d_transpose_layer(inputs = d1_norm, filters = num_filters, kernel_size = [3, 3], strides = [2, 2], name = 'd2_deconv') d2_norm = instance_norm_layer(inputs = d2, activation_fn = tf.nn.relu, name = 'd2_norm') d2_pad = tf.pad(tensor = d2_norm, paddings = [[0, 0], [3, 3], [3, 3], [0, 0]], mode = 'REFLECT', name = 'd2_pad') d3 = conv2d_layer(inputs = d2_pad, filters = output_channels, kernel_size = [7, 7], strides = [1, 1], padding = 'valid', activation = tf.nn.tanh, name = 'd3_conv') return d3
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68d042d8038be826bddc190c99ee0038a473ba8a
260
py
Python
mayan/apps/django_gpg/runtime.py
darrenflexxu/Mayan-EDMS
6707365bfacd137e625ddc1b990168012246fa07
[ "Apache-2.0" ]
null
null
null
mayan/apps/django_gpg/runtime.py
darrenflexxu/Mayan-EDMS
6707365bfacd137e625ddc1b990168012246fa07
[ "Apache-2.0" ]
5
2021-03-19T22:59:52.000Z
2022-03-12T00:13:16.000Z
mayan/apps/django_gpg/runtime.py
Sumit-Kumar-Jha/mayan
5b7ddeccf080b9e41cc1074c70e27dfe447be19f
[ "Apache-2.0" ]
1
2020-07-29T21:03:27.000Z
2020-07-29T21:03:27.000Z
from django.utils.module_loading import import_string from .settings import setting_gpg_path SETTING_GPG_BACKEND = 'mayan.apps.django_gpg.classes.PythonGNUPGBackend' gpg_backend = import_string(SETTING_GPG_BACKEND)( binary_path=setting_gpg_path.value )
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2
68d4f0dba4165b60a9f6a49e7dd00013f11a1692
335
py
Python
Oefeningen/standalone/set.py
Seviran/Python_3
e30ead250129d25bbc0a7ee2f6298775b2f4529a
[ "MIT" ]
null
null
null
Oefeningen/standalone/set.py
Seviran/Python_3
e30ead250129d25bbc0a7ee2f6298775b2f4529a
[ "MIT" ]
null
null
null
Oefeningen/standalone/set.py
Seviran/Python_3
e30ead250129d25bbc0a7ee2f6298775b2f4529a
[ "MIT" ]
null
null
null
math_students = {"Matthew", "Helen", "Prashant", "James", "Asparna"} biology_students = {"Jane", "Matthew", "Charlotte", "Mesut", "Oliver", "James"} # Union (All unique students) students_union = math_students | biology_students # Intersection (Students who are in both sets) students_intersection = math_students & biology_students
37.222222
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2
68d55b5aefd614b22b142233553491d7448b67bf
40,735
py
Python
src/core/train.py
spencerpomme/GSPNet
ff165de95ec0f258ba444ff343d18d812a066b8f
[ "MIT" ]
null
null
null
src/core/train.py
spencerpomme/GSPNet
ff165de95ec0f258ba444ff343d18d812a066b8f
[ "MIT" ]
null
null
null
src/core/train.py
spencerpomme/GSPNet
ff165de95ec0f258ba444ff343d18d812a066b8f
[ "MIT" ]
null
null
null
''' Copyright <2019> <COPYRIGHT Pingcheng Zhang> Permission is hereby granted, free of charge, to any person obtaining a copy of this software and associated documentation files (the "Software"), to deal in the Software without restriction, including without limitation the rights to use, copy, modify, merge, publish, distribute, sublicense, and/or sell copies of the Software, and to permit persons to whom the Software is furnished to do so, subject to the following conditions: The above copyright notice and this permission notice shall be included in all copies or substantial portions of the Software. THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE SOFTWARE. Training methods defined here. A part of GSPNet project. ''' import numpy as np import pandas as pd import pickle as pkl import matplotlib.pyplot as plt import os import re import time import torch from torch import nn, optim from torch.utils import data from torch.utils.data import TensorDataset, DataLoader from torch.utils.data import SubsetRandomSampler, SequentialSampler from glob import iglob, glob from matplotlib import pyplot as plt from matplotlib.legend_handler import HandlerLine2D from tqdm import tqdm from pathlib import Path # import models, loss functions and datasets import models from models import * from losses import * from datasets import * # Environment global variable TRAIN_ON_MULTI_GPUS = False # (torch.cuda.device_count() >= 2) # helper functions def create_dir(directory: str): ''' Helper function to create directory Args: directory: a string describing the to be created dir ''' try: if not os.path.exists(directory): os.makedirs(directory) except OSError: print('Error: Creating directory. ' + directory) raise OSError def save_model(model, hyps: dict): ''' Save model to local file. Args: model: trained model hyps: hyperparameters of the trained model ''' name = '' mn = hyps["mn"] name += f'mn{hyps["mn"]}' if mn in ['VanillaLSTM', 'VanillaGRU', 'EmbedRNN', 'AutoEncoder', 'ConvAutoEncoder', 'ConvAutoEncoderShallow']: name += f'-os{hyps["os"]}' if mn in ['VanillaLSTM', 'VanillaGRU', 'EmbedRNN', 'AutoEncoder']: name += f'-is{hyps["is"]}' if mn in ['VanillaLSTM', 'VanillaGRU', 'EmbedRNN', 'AutoEncoder', 'SparseAutoEncoder', 'SparseConvAutoEncoder']: name += f'-hd{hyps["hd"]}' if mn in ['VanillaLSTM', 'VanillaGRU', 'EmbedRNN']: name += f'-nl{hyps["nl"]}-dp{hyps["dp"]}-sl{hyps["sl"]}' if mn in ['ConvClassifier', 'MLPClassifier']: name += f'-nc{hyps["nc"]}' if mn in ['ConvAutoEncoder', 'ConvAutoEncoderShallow', 'VAE', 'SparseAutoEncoder', 'SparseConvAutoEncoder']: name += f'-md{hyps["md"]}' if mn in ['VAE']: name += f'-zd{hyps["z_dim"]}' if mn in ['GAN']: name += f'-zs{hyps["zs"]}' name += f'-ss{hyps["ss"]}' name += f'-cd{hyps["cd"]}' name += f'-vs{hyps["vs"]}' name += f'-md{hyps["md"]}' name += f'-bs{hyps["bs"]}-lr{hyps["lr"]}.pt' model_path = str(Path(os.path.dirname(os.path.realpath(__file__))).resolve( ).parents[1].joinpath(f'output/trained_models/weight')) create_dir(model_path) model_path = model_path + '/' + name torch.save(model.state_dict(), model_path) def get_curve_name(dest: str, hyps: dict): ''' Generate training loss curve image name. Args: dest: folder to save trained model hyps: hyperparameters of the trained model ''' name = '' mn = hyps["mn"] name += f'mn{hyps["mn"]}' if mn in ['VanillaLSTM', 'VanillaGRU', 'EmbedRNN', 'AutoEncoder', 'ConvAutoEncoder', 'ConvAutoEncoderShallow']: name += f'-os{hyps["os"]}' if mn in ['VanillaLSTM', 'VanillaGRU', 'EmbedRNN', 'AutoEncoder']: name += f'-is{hyps["is"]}' if mn in ['VanillaLSTM', 'VanillaGRU', 'EmbedRNN', 'AutoEncoder', 'SparseAutoEncoder']: name += f'-hd{hyps["hd"]}' if mn in ['VanillaLSTM', 'VanillaGRU', 'EmbedRNN']: name += f'-nl{hyps["nl"]}-dp{hyps["dp"]}-sl{hyps["sl"]}' if mn in ['ConvClassifier', 'MLPClassifier']: name += f'-nc{hyps["nc"]}' if mn in ['ConvAutoEncoder', 'ConvAutoEncoderShallow', 'VAE', 'SparseAutoEncoder']: name += f'-md{hyps["md"]}' if mn in ['VAE']: name += f'-zd{hyps["z_dim"]}' name += f'-bs{hyps["bs"]}-lr{hyps["lr"]}.png' return dest + '/' + name # data feeder, type 2, deprecated def batch_dataset(datadir, seq_len): ''' Batch the neural network data using DataLoader. Args: datadir: Directory storing tensor data seq_len: The sequence length of each batch Return: DataLoader with batched data ''' # WARNING: this function is deprecated, will remove after 2019 May 1st data_iter = iglob(datadir + '/*') states = [] print('Loading dataset...') print('Loading training set...') for state in tqdm(data_iter, ascii=True): state = torch.load(state).numpy() states.append(state) states = np.array(states) states = states.reshape((len(states), -1)) states = states.astype('float32') num_batches = len(states) // seq_len # only full batches states = states[: num_batches * seq_len] features, targets = [], [] for idx in range(0, (len(states) - seq_len)): features.append(states[idx: idx + seq_len]) targets.append(states[idx + seq_len]) data = TensorDataset(torch.from_numpy(np.array(features)), torch.from_numpy(np.array(targets))) data_loader = torch.utils.data.DataLoader( data, shuffle=False, batch_size=batch_size, num_workers=0) return data_loader def check_encoder_dim(mode: str, model, dataset): ''' Check whether the convolutional autoencoder architecture matches data dimension. Args: mode: `pnf` or `od` mode model: convencoder model instance dataset: dataset object Returns: if_match: bool ''' loader = DataLoader(dataset, batch_size=1, num_workers=0, drop_last=True) iterator = iter(loader) X, y = iterator.next() if mode == 'od': assert X.size(1) == 1, f'Mode `od`: X expect channel size 1 but get {X.size(1)}.' elif mode == 'pnf': assert X.size(1) == 3, f'Mode `pnf`: X expect channel size 3 but get {X.size(1)}' # training function of CNN classification def train_classifier(model, optimizer, criterion, n_epochs, train_loader, valid_loader, hyps, stop_criterion=20, device='cuda:0', show_every_n_batches=100): ''' Train a CNN classifier with the given hyperparameters. Args: model: The PyTorch Module that holds the neural network optimizer: The PyTorch optimizer for the neural network criterion: The PyTorch loss function n_epochs: Total go through of entire dataset train_loader: Training data loader valid_loader: Validation data loader hyps: A dict containing hyperparameters stop_criterion: Early stop variable device: Training device show_every_batches: Display loss every this number of time steps Returns: A trained model. The best model will also be saved locally. ''' # clear cache torch.cuda.empty_cache() # start timing start = time.time() print(f'Training on device {device} started at {time.ctime()}') # validation constants early_stop_count = 0 valid_loss_min = np.inf train_losses = [] valid_losses = [] # for plot training loss and validation loss tl = [] vl = [] model.train() print("Training for %d epoch(s)..." % n_epochs) for epoch_i in range(1, n_epochs + 1): # early stop mechanism: if early_stop_count >= stop_criterion: print(f'Early stop triggered after {stop_criterion} epochs.') break for data, label in train_loader: # forward, back prop if TRAIN_ON_MULTI_GPUS: data, label = data.cuda(), label.cuda() elif torch.cuda.is_available(): data, label = data.to(device), label.to(device) optimizer.zero_grad() output = model(data) loss = criterion(output, label) loss.backward() optimizer.step() # record loss train_losses.append(loss.item()) model.eval() for v_data, v_label in valid_loader: v_data, v_label = v_data.to(device), v_label.to(device) v_output = model(v_data) val_loss = criterion(v_output, v_label) valid_losses.append(val_loss.item()) model.train() avg_val_loss = np.mean(valid_losses) avg_tra_loss = np.mean(train_losses) tl.append(avg_tra_loss) vl.append(avg_val_loss) # printing loss stats print( f'Epoch: {epoch_i:>4}/{n_epochs:<4} | Loss: {avg_tra_loss:.6f} | Val Loss: {avg_val_loss:.6f} | Min Val: {valid_loss_min:.6f}', flush=True) # decide whether to save model or not: if avg_val_loss < valid_loss_min: print(f'Valid Loss {valid_loss_min:.6f} -> {avg_val_loss:.6f}. \ Saving...', flush=True) save_model(model, hyps) valid_loss_min = avg_val_loss early_stop_count = 0 else: early_stop_count += 1 # clear train_losses = [] valid_losses = [] # returns a trained model end = time.time() print(f'Training ended at {time.ctime()}, took {end-start:2f} seconds.') return model, (tl, vl) def run_classifier_training(model_name, data_dir, epochs, bs, vs, lr, nc, dp=0.5, device='cuda:0'): ''' Main function of cnn classifier training. Args: model_name: model name data_dir: data source location epochs: number of epochs to train bs: batch_size vs: validation size, proportion of validation data set lr: learning_rate nc: number of classes dp: drop_prob device: GPU or CPU ''' # Training parameters epochs = epochs learning_rate = 0.001 batch_size = bs # Model parameters input_size = 69 * 69 * 3 # <- don't change this value drop_prob = 0.5 # Show stats for every n number of batches senb = 5000 # wrap essential info into dictionary: hyps = { 'mn': model_name, 'bs': batch_size, 'lr': learning_rate, 'nc': nc, 'dp': drop_prob } # LSTM data loader data_set = SnapshotClassificationDatasetRAM(data_dir) # split data for training and validation num_train = len(data_set) indices = list(range(num_train)) split = int(np.floor(vs * num_train)) # shuffle np.random.shuffle(indices) train_idx, valid_idx = indices[split:], indices[:split] train_sampler = SubsetRandomSampler(train_idx) valid_sampler = SubsetRandomSampler(valid_idx) train_loader = DataLoader(data_set, sampler=train_sampler, batch_size=batch_size, num_workers=0, drop_last=True) valid_loader = DataLoader(data_set, sampler=valid_sampler, batch_size=batch_size, num_workers=0, drop_last=True) # initialize model model = models.__dict__[model_name](n_classes=nc) # model training device if TRAIN_ON_MULTI_GPUS: model = nn.DataParallel(model).cuda() elif torch.cuda.is_available(): model = model.to(device) else: print('Training on CPU, very long training time is expectable.') # optimizer and criterion(loss function) if TRAIN_ON_MULTI_GPUS: optimizer = optim.SGD(model.module.parameters(), lr=learning_rate) else: optimizer = optim.Adam(model.parameters(), lr=learning_rate) criterion = nn.CrossEntropyLoss() # start training trained_model, tlvl = train_classifier(model, optimizer, criterion, epochs, train_loader, valid_loader, hyps, device=device) # loss plot tl, vl = tlvl x = np.arange(len(tl)) # for model 3 of classification only x, tl, vl = x[1:], tl[1:], vl[1:] train_curve, = plt.plot(x, tl, 'r-', label='train loss') valid_curve, = plt.plot(x, vl, 'b-', label='valid loss') plt.legend(handler_map={train_curve: HandlerLine2D(numpoints=1)}) curve_name = get_curve_name('trained_models', hyps) #BUG plt.savefig(curve_name) plt.show() def forward_back_prop(model, optimizer, criterion, inp, target, hidden, clip): """ Forward and backward propagation on the neural network. Args: model: The PyTorch Module that holds the neural network optimizer: The PyTorch optimizer for the neural network criterion: The PyTorch loss function inp: A batch of input to the neural network target: The target output for the batch of input hidden: Hidden state clip: Clip the overly large gradient Returns: The loss and the latest hidden state Tensor """ # Creating new variables for the hidden state, otherwise # we'd backprop through the entire training history if type(hidden) == tuple: h = tuple([each.data for each in hidden]) else: h = hidden.data # zero accumulated gradients if TRAIN_ON_MULTI_GPUS: model.module.zero_grad() else: model.zero_grad() # print(f'input shape: {inp}, target shape: {target}') # get the output from the model output, h = model(inp, h) # perform backpropagation and optimization # calculate the loss and perform backprop loss = criterion(output, target) loss.backward() # 'clip_grad_norm' helps prevent the exploding gradient problem in RNNs if TRAIN_ON_MULTI_GPUS: nn.utils.clip_grad_norm_(model.module.parameters(), clip) else: nn.utils.clip_grad_norm_(model.parameters(), clip) optimizer.step() # return the loss over a batch and the hidden state produced by our model return loss.item(), h # training function for sequential prediction def train_recurrent(model, batch_size, optimizer, criterion, n_epochs, train_loader, valid_loader, hyps, clip=5, stop_criterion=20, show_every_n_batches=1, multi_gpus=True, device='cuda:0'): ''' Train a LSTM model with the given hyperparameters. Args: model: The PyTorch Module that holds the neural network batch_size: batch size, integer optimizer: The PyTorch optimizer for the neural network criterion: The PyTorch loss function n_epochs: Total go through of entire dataset train_loader: Training data loader valid_loader: Validation data loader hyps: A dict containing model parameters clip: Clip the overly large gradient show_every_batches: Display loss every this number of time steps multi_gpus: Whether have multiple GPUs device: location to put tensor/model Returns: A trained model. The best model will also be saved locally. ''' # clear cache torch.cuda.empty_cache() # start timing start = time.time() print(f'Training on device {device} started at {time.ctime()}') # validation constants early_stop_count = 0 valid_loss_min = np.inf train_losses = [] # for plot training loss and validation loss tl = [] vl = [] model.train() print("Training for %d epoch(s)..." % n_epochs) for epoch_i in range(1, n_epochs + 1): if TRAIN_ON_MULTI_GPUS and multi_gpus: hidden = model.module.init_hidden(batch_size) else: hidden = model.init_hidden(batch_size) for batch_i, (inputs, labels) in enumerate(train_loader, 1): # early stop mechanism: if early_stop_count >= stop_criterion: print(f'Early stop triggered after {stop_criterion} epochs.') break # make sure you iterate over completely full batches, only n_batches = len(train_loader.dataset) // batch_size if batch_i > n_batches: break # forward, back prop # print(f'inputs shape: {inputs.shape} labels shape: {labels.shape}') # print(f'inputs dtype: {inputs[0][0][0].dtype} label shape: {labels[0][0].dtype}') if TRAIN_ON_MULTI_GPUS and multi_gpus: inputs, labels = inputs.cuda(), labels.cuda() elif torch.cuda.is_available(): inputs, labels = inputs.to(device), labels.to(device) # print(f'Input shape: {inputs.shape}') loss, hidden = forward_back_prop( model, optimizer, criterion, inputs, labels, hidden, clip ) # record loss train_losses.append(loss) # print loss every show_every_n_batches batches # including validation loss if batch_i % show_every_n_batches == 0: # get validation loss if TRAIN_ON_MULTI_GPUS: val_h = model.module.init_hidden(batch_size) else: val_h = model.init_hidden(batch_size) valid_losses = [] # switch to validation mode model.eval() for v_inputs, v_labels in valid_loader: if TRAIN_ON_MULTI_GPUS and multi_gpus: v_inputs, v_labels = v_inputs.cuda(), v_labels.cuda() elif torch.cuda.is_available(): v_inputs, v_labels = v_inputs.to(device), v_labels.to(device) # Creating new variables for the hidden state, otherwise # we'd backprop through the entire training history # if type is tuple, then the model is LSTM if type(val_h) == tuple: val_h = tuple([each.data for each in val_h]) else: val_h = val_h.data v_output, val_h = model(v_inputs, val_h) val_loss = criterion(v_output, v_labels) valid_losses.append(val_loss.item()) model.train() avg_val_loss = np.mean(valid_losses) avg_tra_loss = np.mean(train_losses) tl.append(avg_tra_loss) vl.append(avg_val_loss) # printing loss stats print( f'Epoch: {epoch_i:>4}/{n_epochs:<4} | Loss: {avg_tra_loss:.6f} ' + f'| Val Loss: {avg_val_loss:.6f} | Min Val: {valid_loss_min:.6f}', flush=True) # decide whether to save model or not: if avg_val_loss < valid_loss_min: print(f'Valid Loss {valid_loss_min:.6f} -> {avg_val_loss:.6f}. Saving...', flush=True) # saving state_dict of model save_model(model, hyps) valid_loss_min = avg_val_loss early_stop_count = 0 else: early_stop_count += 1 train_losses = [] valid_losses = [] # returns a trained model end = time.time() print(f'Training ended at {time.ctime()}, took {end-start:.2f} seconds.') return model, (tl, vl) # run functions of this module def run_recursive_training(model_name, data_dir, epochs, bs, vs, lr, sl=12, hd=256, nl=2, dp=0.5, device='cuda:0'): ''' Main function of RNNs training. Args: model_name: model name data_dir: data source location epochs: number of epochs to train bs: batch_size vs: validation proportion lr: learning_rate sl: sequence_length hd: hidden_dim nl: n_layers dp: drop_prob device: training hardware, GPU or CPU ''' # LSTM Model Data params sequence_length = sl # number of time slices in a sequence clip = 5 # Training parameters epochs = epochs learning_rate = lr batch_size = bs # Model parameters input_size = 69 * 69 * 3 # <- don't change this value output_size = input_size hidden_dim = hd # Number of RNN Layers n_layers = nl drop_prob = dp # Show stats for every n number of batches senb = 5000 # wrap essential info into dictionary: hyps = { 'mn': model_name, 'is': input_size, 'os': output_size, 'sl': sequence_length, 'bs': batch_size, 'lr': learning_rate, 'hd': hidden_dim, 'nl': n_layers, 'dp': drop_prob } data_set = S2FDatasetRAM(data_dir, sequence_length) # split dataset for training and validation num_train = len(data_set) indices = list(range(num_train)) split = int(np.floor(vs * num_train)) # hard coded to 0.8 train_idx, valid_idx = indices[split:], indices[:split] train_sampler = SequentialSampler(train_idx) valid_sampler = SequentialSampler(valid_idx) train_loader = DataLoader(data_set, sampler=train_sampler, batch_size=batch_size, num_workers=0, drop_last=True) valid_loader = DataLoader(data_set, sampler=valid_sampler, batch_size=batch_size, num_workers=0, drop_last=True) # initialize model model = models.__dict__[model_name](input_size, output_size, hidden_dim, n_layers=n_layers, drop_prob=drop_prob, device=device) # model training device if TRAIN_ON_MULTI_GPUS: model = nn.DataParallel(model).cuda() elif torch.cuda.is_available(): model = model.to(device) else: print('Training on CPU, very long training time is expectable.') # optimizer and criterion(loss function) if TRAIN_ON_MULTI_GPUS: optimizer = optim.Adam(model.module.parameters(), lr=learning_rate) else: optimizer = optim.Adam(model.parameters(), lr=learning_rate) # loss: # criterion = nn.MSELoss() criterion = dich_mse_loss # start training trained_model, tlvl = train_recurrent(model, batch_size, optimizer, criterion, epochs, train_loader, valid_loader, hyps, device=device) # loss plot tl, vl = tlvl x = np.arange(len(tl)) train_curve, = plt.plot(x, tl, 'r-', label='train loss') valid_curve, = plt.plot(x, vl, 'b-', label='valid loss') plt.legend(handler_map={train_curve: HandlerLine2D(numpoints=1)}) curve_name = get_curve_name('trained_models', hyps) plt.savefig(curve_name) plt.show() def train_encoder(model, optimizer, criterion, n_epochs, loader, hyps, early_stop_count=20, device='cuda:0', show_every_n_epochs=10): ''' Train an auto encoder with the given hyperparameters. Args: model: The PyTorch Module that holds the neural network optimizer: The PyTorch optimizer for the neural network criterion: The PyTorch loss function n_epochs: Total go through of entire dataset early_stop_count: Early stop number loader: Training data loader hyps: A dict containing hyperparameters device: Training device show_every_batches: Display loss every this number of time steps Returns: A trained model. The best model will also be saved locally. ''' torch.cuda.empty_cache() start = time.time() print(f'Training on device {device} started at {time.ctime()}') loss_min = np.inf losses = [] stop = 0 model.train() print("Training for %d epoch(s)..." % n_epochs) for epoch_i in range(1, n_epochs + 1): if stop >= early_stop_count: print(f'Stop converging for {stop} epochs, early stop triggered.') break for data, _ in loader: if TRAIN_ON_MULTI_GPUS: data = data.cuda() elif torch.cuda.is_available(): data = data.to(device) optimizer.zero_grad() output = model(data) # print(f'output.shape -> {output.shape} | data.shape -> {data.shape}') loss = criterion(output, data) loss.backward() optimizer.step() losses.append(loss.item()) if epoch_i % show_every_n_epochs == 0: avg_loss = np.mean(losses) print(f'Epoch: {epoch_i:>4}/{n_epochs:<4} | Loss: {avg_loss:.6f}') if avg_loss < loss_min: print(f'Valid Loss {loss_min:.6f} -> {avg_loss:.6f}. Saving...') # saving state_dict of model save_model(model, hyps) loss_min = avg_loss stop = 0 else: stop += 1 losses = [] end = time.time() print(f'Training ended at {time.ctime()}, took {end-start:2f} seconds.') return model def train_vae(model, optimizer, criterion, n_epochs, loader, hyps, device='cuda:0', show_every_n_batches=100): ''' Train an VAE with the given hyperparameters. Args: model: The PyTorch Module that holds the neural network optimizer: The PyTorch optimizer for the neural network criterion: The PyTorch loss function n_epochs: Total go through of entire dataset loader: Training data loader hyps: A dict containing hyperparameters device: Training device show_every_batches: Display loss every this number of time steps Returns: A trained model. The best model will also be saved locally. ''' # clear cache torch.cuda.empty_cache() # start timing start = time.time() print(f'Training on device {device} started at {time.ctime()}') # validation constants valid_loss_min = np.inf losses = [] bces = [] klds = [] model.train() print("Training for %d epoch(s)..." % n_epochs) for epoch_i in range(1, n_epochs + 1): for data, _ in loader: # forward, back prop if TRAIN_ON_MULTI_GPUS: data = data.cuda() elif torch.cuda.is_available(): data = data.to(device) recon_images, mu, logvar = model(data) # print(f'label.shape -> {label.shape} | recon_images.shape -> {recon_images.shape}') loss, bce, kld = criterion(recon_images, data, mu, logvar) optimizer.zero_grad() loss.backward() optimizer.step() # record loss losses.append(loss.item()) bces.append(bce.item()) klds.append(kld.item()) al = np.mean(losses) ab = np.mean(bces) ak = np.mean(klds) # printing loss stats print( f'Epoch: {epoch_i:>4}/{n_epochs:<4} | Loss: {al:.6f} | BCE: {ab:.6f} | KLD: {ak:.6f}', flush=True) # clear losses = [] save_model(model, hyps) # returns a trained model end = time.time() print(f'Training ended at {time.ctime()}, took {end-start:2f} seconds.') return model def run_encoder_training(model_name, data_dir, epochs, bs, vs, lr, mode='od', hd=512, device='cuda:0'): ''' Main function of auto encoder. Args: model_name: model name data_dir: location of training data epochs: number of epochs to train bs: batch_size vs: validation size lr: learning rate mode: pnf or od hd: hidden dim device: where to train the model ''' # Training parameters epochs = epochs learning_rate = lr batch_size = bs # Model parameters if mode == 'od': input_size = 69 * 69 * 1 elif mode == 'pnf': input_size = 69 * 69 * 3 else: raise ValueError('Only `od` and `pnf` are supported.') output_size = input_size hidden_dim = hd # wrap essential info into dictionary: hyps = { 'is': input_size, 'os': output_size, 'mn': model_name, 'hd': hidden_dim, 'bs': batch_size, 'lr': learning_rate, 'md': mode } # Initialize data loaders # LSTM data loader if model_name in ['ConvAutoEncoder', 'ConvAutoEncoderShallow', 'VAE', 'SparseAutoEncoder', 'SparseConvAutoEncoder']: data_set = ConvEncoderDatasetRAM(data_dir) else: data_set = EncoderDatasetRAM(data_dir) # split dataset for training and validation num_train = len(data_set) indices = list(range(num_train)) split = int(np.floor(0.8 * num_train)) # hard coded to 0.8 train_idx, valid_idx = indices[split:], indices[:split] train_sampler = SequentialSampler(train_idx) valid_sampler = SequentialSampler(valid_idx) loader = DataLoader(data_set, sampler=train_sampler, batch_size=batch_size, num_workers=0, drop_last=True) valid_loader = DataLoader(data_set, sampler=valid_sampler, batch_size=batch_size, num_workers=0, drop_last=True) # initialize model # This part is currently very mixed. Change in the future. if model_name in ['ConvAutoEncoder', 'ConvAutoEncoderShallow']: model = models.__dict__[model_name](hyps['os'], mode=hyps['md']) elif model_name == 'VAE': model = models.__dict__[model_name](hyps['md'], hidden_dim=hyps['hd'], z_dim=32) elif model_name in ['SparseConvAutoEncoder', 'SparseAutoEncoder']: model = models.__dict__[model_name](hyps['md'], hidden_dim=hyps['hd']) else: model = models.__dict__[model_name](hyps['is'], hyps['os'], hidden_dim=hyps['hd']) print(model) # model training device if TRAIN_ON_MULTI_GPUS: model = nn.DataParallel(model).cuda() elif torch.cuda.is_available(): model = model.to(device) else: print('Training on CPU, very long training time is expectable.') check_encoder_dim(mode, model, data_set) # optimizer and criterion(loss function) if TRAIN_ON_MULTI_GPUS: optimizer = optim.Adam(model.module.parameters(), lr=learning_rate) else: optimizer = optim.SGD(model.parameters(), lr=learning_rate) if model_name == 'VAE': criterion = vae_loss trained_model = train_vae(model, optimizer, criterion, epochs, loader, hyps, device=device) else: criterion = nn.MSELoss() # criterion = nn.L1Loss() # criterion = dich_mse_loss # start training trained_model = train_encoder( model, optimizer, criterion, epochs, loader, hyps, device=device ) return trained_model def train_GAN(D, G, d_optimizer, g_optimizer, n_epochs, z_size, train_loader, valid_loader, sample_size, hyps, device='cuda:0', print_every=100): ''' GAN training function. Args: D: G: d_optimizer: g_optimizer: n_epochs: z_size: latent vector size train_loader: valid_loader: sample_size: hyps: device: print_every: Returns: trained model: G and D ''' # clear cache torch.cuda.empty_cache() # start timing start = time.time() print(f'Training on device {device} started at {time.ctime()}') # keep track of loss and generated, "fake" samples samples = [] truths = [] losses = [] # Get some fixed data for sampling. These are images that are held # constant throughout training, and allow us to inspect the model's performance sample_size = 16 fixed_z = np.random.uniform(-1, 1, size=(sample_size, z_size)) fixed_z = torch.from_numpy(fixed_z).float() # train the network for epoch in range(n_epochs): for batch_i, (real_images, _) in enumerate(train_loader): batch_size = real_images.size(0) # important rescaling step real_images = scale(real_images) # ============================================ # # TRAIN THE DISCRIMINATOR # # ============================================ # d_optimizer.zero_grad() # 1. Train with real images # Compute the discriminator losses on real images if TRAIN_ON_MULTI_GPUS: real_images = real_images.cuda() elif torch.cuda.is_available(): real_images = real_images.to(device) D_real = D(real_images) d_real_loss = real_loss(D_real) # 2. Train with fake images # Generate fake images z = np.random.uniform(-1, 1, size=(batch_size, z_size)) z = torch.from_numpy(z).float() # move x to GPU, if available if TRAIN_ON_MULTI_GPUS: z = z.cuda() elif torch.cuda.is_available(): z = z.to(device) fake_images = G(z) # Compute the discriminator losses on fake images D_fake = D(fake_images) d_fake_loss = fake_loss(D_fake) # add up loss and perform backprop d_loss = d_real_loss + d_fake_loss d_loss.backward() d_optimizer.step() # ========================================= # # TRAIN THE GENERATOR # # ========================================= # g_optimizer.zero_grad() # 1. Train with fake images and flipped labels # Generate fake images z = np.random.uniform(-1, 1, size=(batch_size, z_size)) z = torch.from_numpy(z).float() if TRAIN_ON_MULTI_GPUS: z = z.cuda() elif torch.cuda.is_available(): z = z.to(device) fake_images = G(z) # Compute the discriminator losses on fake images # using flipped labels! D_fake = D(fake_images) g_loss = real_loss(D_fake) # use real loss to flip labels # perform backprop g_loss.backward() g_optimizer.step() # Print some loss stats if batch_i % print_every == 0: # append discriminator loss and generator loss losses.append((d_loss.item(), g_loss.item())) # print discriminator and generator loss print(f'Epoch [{epoch+1:5d}/{n_epochs:5d}] |' + f' d_loss: {d_loss.item():6.4f} | g_loss: {g_loss.item():6.4f}') # AFTER EACH EPOCH # generate and save sample, fake images G.eval() # for generating samples if TRAIN_ON_MULTI_GPUS: fixed_z = fixed_z.cuda() elif torch.cuda.is_available(): fixed_z = fixed_z.to(device) samples_z = G(fixed_z) samples.append(samples_z) G.train() # back to training mode # Save training generator samples with open('train_samples.pkl', 'wb') as f: pkl.dump(samples, f) save_model(D, hyps) save_model(G, hyps) end = time.time() print(f'Training ended at {time.ctime()}, took {end-start:2f} seconds.') with open('train_samples.pkl', 'rb') as f: samples = pkl.load(f) # print(f'samples.shape -> {len(samples)} {[item.shape for item in samples]}') _ = view_samples(-1, samples, mode=hyps['md']) return G, D def run_GAN_training(data_dir, epochs, bs, vs, lr=0.0002, z_size=128, sample_size=16, conv_dim=64, beta1=0.5, beta2=0.999, mode='od', device='cuda:0'): ''' Main function of GAN. Args: data_dir: location of training data epochs: number of epochs to train bs: batch_size vs: validation size lr: learning rate mode: pnf or od conv_dim: convolutional layer dimension device: where to train the model ''' # Training parameters epochs = epochs learning_rate = lr batch_size = bs valid_size = vs # wrap essential info into dictionary: hyps = { 'mn': 'GAN', 'bs': batch_size, 'vs': valid_size, 'lr': learning_rate, 'zs': z_size, 'ss': sample_size, 'cd': conv_dim, 'md': mode } data_set = ConvEncoderDatasetRAM(data_dir) # split dataset for training and validation num_train = len(data_set) indices = list(range(num_train)) split = int(np.floor(valid_size * num_train)) # hard coded to 0.8 train_idx, valid_idx = indices[split:], indices[:split] train_sampler = SequentialSampler(train_idx) valid_sampler = SequentialSampler(valid_idx) train_loader = DataLoader(data_set, sampler=train_sampler, batch_size=batch_size, num_workers=0, drop_last=True) valid_loader = DataLoader(data_set, sampler=valid_sampler, batch_size=batch_size, num_workers=0, drop_last=True) # define discriminator and generator D = Discriminator(conv_dim, mode=hyps['md']) G = Generator(z_size=z_size, conv_dim=conv_dim, mode=hyps['md']) # initialize model weights D.apply(weights_init_normal) G.apply(weights_init_normal) print(D) print() print(G) # model training device if TRAIN_ON_MULTI_GPUS: D = nn.DataParallel(D).cuda() G = nn.DataParallel(G).cuda() elif torch.cuda.is_available(): D = D.to(device) G = G.to(device) else: print('Training on CPU, very long training time is expectable.') # params lr = 0.0002 beta1 = 0.5 beta2 = 0.999 # default value # Create optimizers for the discriminator and generator d_optimizer = optim.Adam(D.parameters(), lr, [beta1, beta2]) g_optimizer = optim.Adam(G.parameters(), lr, [beta1, beta2]) # Create optimizers for the discriminator and generator if TRAIN_ON_MULTI_GPUS: d_optimizer = optim.Adam(D.module.parameters(), lr, [beta1, beta2]) g_optimizer = optim.Adam(G.module.parameters(), lr, [beta1, beta2]) else: d_optimizer = optim.Adam(D.parameters(), lr, [beta1, beta2]) g_optimizer = optim.Adam(G.parameters(), lr, [beta1, beta2]) G, D = train_GAN(D, G, d_optimizer, g_optimizer, epochs, z_size, train_loader, valid_loader, sample_size, hyps, device=device, print_every=100) return G, D if __name__ == '__main__': # dataset folders selecting factors mode = 'pnf' year = '2018' freq = '15min' data_dir = str(Path(os.path.dirname(os.path.realpath(__file__))).resolve( ).parents[1].joinpath(f'data/processed/{mode}/{year}/{freq}/tensors')) # run_recursive_training('VanillaLSTM', data_dir, 500, 512, 0.9, 0.01, sl=12, hd=512) # run_classifier_training('ConvClassifier', data_dir, 50, 128, 0.8, 0.001, 2, device='cuda:1') run_encoder_training('ConvAutoEncoderShallow', data_dir, 2000, 128, 0.8, 0.1, mode=mode, hd=113, device='cuda:1') # run_GAN_training(data_dir, 100, 64, 0.8, z_size=100, conv_dim=256, mode='pnf')
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68d59a01d4c210fcbd52841f20fd474a440205a5
7,727
py
Python
tests/time_tests.py
ankpradh/parallel-composition-RE
8e1d1df8a27951445fd1d80e89febba89d275fdf
[ "MIT" ]
null
null
null
tests/time_tests.py
ankpradh/parallel-composition-RE
8e1d1df8a27951445fd1d80e89febba89d275fdf
[ "MIT" ]
null
null
null
tests/time_tests.py
ankpradh/parallel-composition-RE
8e1d1df8a27951445fd1d80e89febba89d275fdf
[ "MIT" ]
null
null
null
import sys import time import random sys.path.append("..") from pympler import asizeof from test_automata import * # For computing average runtimes def avg_tests(runs, test, string, test_num): test_avg_runs = runs test_Ptime = 0 test_Ctime = 0 if test.__name__ in ["test4", "test5"]: test_Stime = 0 test_Mtime = 0 for _ in range(test_avg_runs): _time = test(string) test_Ptime += _time[0] test_Stime += _time[1] test_Mtime += _time[2] test_Ctime += _time[3] print("Test %s (%s)\n------------------- " %(test_num, len(string))) print("Computation time for Monolithic Enforcer : %f ms" %(test_Ptime/test_avg_runs)) print("Computation time for Serial Composition : %f ms" %(test_Stime/test_avg_runs)) print("Computation time for Maximal Prefix Parallel Composition : %f ms" %(test_Mtime/test_avg_runs)) print("Computation time for Parallel Composition : %f ms\n" %(test_Ctime/test_avg_runs)) else: for _ in range(test_avg_runs): _time = test(string) test_Ptime += _time[0] test_Ctime += _time[1] print("Test %s (%s)\n------------------- " %(test_num, len(string))) print("Computation time for Monolithic Enforcer : %f ms" %(test_Ptime/test_avg_runs)) print("Computation time for Parallel Composition : %f ms\n" %(test_Ctime/test_avg_runs)) # Generating random strings from given alphabet def generate_strings(alphabet): strings = [] ranges = [(10**i, 5*10**i) for i in range(1, 6)] for size1, size2 in ranges: strings.append("".join(random.choices(alphabet, k=size1))) strings.append("".join(random.choices(alphabet, k=size2))) return strings # Tests for compositions of EM1 and EM2 # Monolithic Composition with 3*5 = 15 states # Parallel Composition with 3+5 = 8 states def test1(Input): # Monolithic Test tsP = time.time() A, B = EM1(), EM2() A_B = monolithic_enforcer('A_B', A, B) tsP = time.time() accept = A_B.checkAccept(Input) teP = time.time() # Parallel Composition Test tsC = time.time() A, B = EM1("pDFA"), EM2("pDFA") A_B = parallel_enforcer(A, B) tsC = time.time() accept = A_B.checkAccept(Input) teC = time.time() return (teP - tsP)*1000, (teC - tsC)*1000 # Tests for compositions of EM1, EM2 and EM3 # Monolithic Composition with 3*5*7 = 105 states # Parallel Composition with 3+5+7 = 15 states def test2(Input): # Monolithic Test tsP = time.time() A, B, C = EM1(), EM2(), EM3() A_B_C = monolithic_enforcer('A_B_C', A, B, C) tsP = time.time() accept = A_B_C.checkAccept(Input) teP = time.time() if (SIZEOF): print(asizeof.asized(A_B_C, detail=1).format()) # Parallel Composition Test tsC = time.time() A, B, C = EM1("pDFA"), EM2("pDFA"), EM3("pDFA") A_B_C = parallel_enforcer(A, B, C) tsC = time.time() accept = A_B_C.checkAccept(Input) teC = time.time() return (teP - tsP)*1000, (teC - tsC)*1000 # Tests for compositions of EM4, EM5, EM6, EM7, EM8 and EM9 # Monolithic Composition with 2*3*4*5*6*7 = 5040 states # Parallel Composition with 2+3+4+5+6+7 = 27 states def test3(Input): # Monolithic Test tsP = time.time() R1, R2, R3, R4, R5, R6 = EM4(), EM5(), EM6(), EM7(), EM8(), EM9() R = monolithic_enforcer('R', R1, R2, R3, R4, R5, R6) tsP = time.time() accept = R.checkAccept(Input) teP = time.time() if (SIZEOF): print(asizeof.asized(R, detail=1).format()) # Parallel Composition Test tsC = time.time() R1, R2, R3, R4, R5, R6 = EM4("pDFA"), EM5("pDFA"), EM6("pDFA"), EM7("pDFA"), EM8("pDFA"), EM9("pDFA") R = parallel_enforcer(R1, R2, R3, R4, R5, R6) tsC = time.time() accept = R.checkAccept(Input) teC = time.time() return (teP - tsP)*1000, (teC - tsC)*1000 # Tests for compositions of EM10, EM11, EM12 (Safety properties) # Monolithic Composition with 3*4*3 = 36 states # Serial and (both) Parallel Composition with 3+4+3 = 10 states def test4(Input): # Monolithic Test tsP = time.time() RS, RT, RU = EM10(), EM11(), EM12() R = monolithic_enforcer('R', RS, RT, RU) tsP = time.time() accept = R.checkAccept(Input) teP = time.time() if (SIZEOF): print(asizeof.asized(R, detail=1).format()) # Serial Composition Test tsS = time.time() RS, RT, RU = EM10("DFA"), EM11("DFA"), EM12("DFA") R = serial_composition_enforcer(RS, RT, RU) tsS = time.time() accept = R.checkAccept(Input) teS = time.time() if (SIZEOF): print(asizeof.asized(R, detail=1).format()) # Maximal Prefix Parallel Composition Test tsM = time.time() RS, RT, RU = EM10("pDFA"), EM11("pDFA"), EM12("pDFA") R = maximal_prefix_parallel_enforcer(RS, RT, RU) tsM = time.time() accept = R.checkAccept(Input) teM = time.time() if (SIZEOF): print(asizeof.asized(R, detail=1).format()) # Parallel Composition Test tsC = time.time() RS, RT, RU = EM10("pDFA"), EM11("pDFA"), EM12("pDFA") R = parallel_enforcer(RS, RT, RU) tsC = time.time() accept = R.checkAccept(Input) teC = time.time() if (SIZEOF): print(asizeof.asized(R, detail=1).format()) return (teP - tsP)*1000, (teS - tsS)*1000, (teM - tsM)*1000, (teC - tsC)*1000 # Tests for compositions of EM13, EM14, EM15 (Co-safety properties) # Monolithic Composition with 4*5*3 = 60 states # Serial and (both) Parallel Composition with 4+5+3 = 12 states def test5(Input): # Monolithic Test tsP = time.time() RCS, RCT, RCU = EM13(), EM14(), EM15() RC = monolithic_enforcer('RC', RCS, RCT, RCU) tsP = time.time() accept = RC.checkAccept(Input) teP = time.time() if (SIZEOF): print(asizeof.asized(RC, detail=1).format()) # Serial Composition Test tsS = time.time() RCS, RCT, RCU = EM13("DFA"), EM14("DFA"), EM15("DFA") RC = serial_composition_enforcer(RCS, RCT, RCU) tsS = time.time() accept = RC.checkAccept(Input) teS = time.time() if (SIZEOF): print(asizeof.asized(RC, detail=1).format()) # Maximal Prefix Parallel Composition Test tsM = time.time() RCS, RCT, RCU = EM13("pDFA"), EM14("pDFA"), EM15("pDFA") RC = maximal_prefix_parallel_enforcer(RCS, RCT, RCU) tsM = time.time() accept = RC.checkAccept(Input) teM = time.time() if (SIZEOF): print(asizeof.asized(RC, detail=1).format()) # Parallel Composition Test tsC = time.time() RCS, RCT, RCU = EM13("pDFA"), EM14("pDFA"), EM15("pDFA") RC = parallel_enforcer(RCS, RCT, RCU) tsC = time.time() accept = RC.checkAccept(Input) teC = time.time() if (SIZEOF): print(asizeof.asized(RC, detail=1).format()) return (teP - tsP)*1000, (teS - tsS)*1000, (teM - tsM)*1000, (teC - tsC)*1000 if __name__ == '__main__': Input1 = str(bin(15*1859))[2:] Input2 = "33322555556666661111444422" Input3 = "bbbbbbbbbbbbbbabbbbbbbbbbbbbb" avg_tests(1000, test1, Input1, 1) avg_tests(1000, test2, Input1, 2) avg_tests(1000, test3, Input2, 3) avg_tests(1000, test4, Input3, 4) avg_tests(1000, test5, Input3, 5) strings1 = generate_strings('01') strings2 = generate_strings('123456') strings3 = generate_strings('abc') for string in strings1: avg_tests(1000, test2, string, 2) for string in strings2: avg_tests(1000, test3, string, 3) for string in strings3: avg_tests(100, test4, string, 4) avg_tests(100, test5, string, 5) if (SIZEOF): print(EM_size)
30.662698
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0.034595
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7,727
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0
68d613cc70f67605e1ded6567d3363c8e7b337d4
501
py
Python
Python for zombies/Rest 0.py
ElptsJunior/Python
7347b38947b439afa392764aafe0a55f808530dd
[ "MIT" ]
null
null
null
Python for zombies/Rest 0.py
ElptsJunior/Python
7347b38947b439afa392764aafe0a55f808530dd
[ "MIT" ]
null
null
null
Python for zombies/Rest 0.py
ElptsJunior/Python
7347b38947b439afa392764aafe0a55f808530dd
[ "MIT" ]
null
null
null
'''start = 0 end = int ( input(' insert an value for conting')) # criando uma variavel indice que recebe o valor inteiro digitado# while start <= end : if end % 2 == 0: print (start) start = start +1 print('this number is par') else: print('this number is impar') ''' start = 0 end = int ( input(' insert an value for conting')) # criando uma variavel indice que recebe o valor inteiro digitado# while start <= end : print (start) start = start +3
20.04
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68d6234592f2e3a24cd47ab684d14a6a36f999f3
4,815
py
Python
language/evm/hardhat-examples/compile_move.py
lxfind/move
2e7c37edada44436805e047dd26724a26c07635a
[ "Apache-2.0" ]
63
2021-12-22T10:17:18.000Z
2022-03-31T22:03:06.000Z
language/evm/hardhat-examples/compile_move.py
lxfind/move
2e7c37edada44436805e047dd26724a26c07635a
[ "Apache-2.0" ]
150
2021-11-04T20:16:14.000Z
2022-03-31T23:00:21.000Z
language/evm/hardhat-examples/compile_move.py
lxfind/move
2e7c37edada44436805e047dd26724a26c07635a
[ "Apache-2.0" ]
63
2021-11-04T19:32:56.000Z
2022-03-30T16:28:41.000Z
#!/usr/local/bin/python3 # This is a script to compile Move source code into artifacts that can be used for testing. # Copy this to the root of your hardhat project to use it. # # Note: this is a temporary solution that will be phased out once we implement the Move plugin. # # Move code should be stored within the `contracts` directory, along with an ABI file. # - contracts # - MyContract.move # - MyContract.abi.json # # The ABI file should look something like this: # [ # { # "inputs": [], # "name": "foo", # "outputs": [ # { # "internalType": "uint256", # "name": "", # "type": "uint256" # } # ], # "stateMutability": "view", # "type": "function" # } # ] dependencies = [ "../stdlib/sources", "../../move-stdlib/sources" ] named_address_mapping = { "Std": "0x1", "Evm": "0x2" } import os import shutil import tempfile import subprocess import json import sys from os import path path_root = path.dirname(__file__) path_contracts = path.join(path_root, "contracts") path_artifacts = path.join(path_root, "artifacts", "contracts") path_home = path.expanduser("~") def eprint(*args, **kwargs): print(*args, file=sys.stderr, **kwargs) def locate_solc(): p = path.join(path_home, "bin", "solc") if path.isfile(p): return p p = shutil.which("solc") if p is not None: return p eprint("Failed to locate solc.") exit(1) def locate_move_to_yul(): p = shutil.which("move-to-yul") if p is not None: return p eprint("Failed to locate move-to-yul -- you can install it by running `cargo install --path <path to the move-to-yul crate>.`") exit(1) path_solc = locate_solc() path_move_to_yul = locate_move_to_yul() def list_move_sources(): paths = [] for name in os.listdir(path_contracts): path_ = path.join(path_contracts, name) if path.isfile(path_) and path.splitext(path_)[1] == ".move": paths.append(path_) return paths def load_abi(path_source): path_abi = path.splitext(path_source)[0] + ".abi.json" if not path.isfile(path_abi): eprint() eprint("Missing ABI definition: {}.".format(path_abi)) exit(1) with open(path_abi, "r") as f: text = f.read() return json.loads(text) def move_to_yul(path_source): with tempfile.NamedTemporaryFile() as output_file: args = [path_move_to_yul, "--output", output_file.name] if len(dependencies) > 0: args.append("-d") args.extend(dependencies) if len(named_address_mapping) > 0: args.append("-n") for (name, addr) in named_address_mapping.items(): args.append("{}={}".format(name, addr)) path_abi = path.splitext(path_source)[0] + ".abi.json" args.append("--abi-output") args.append(path_abi) args.extend(["--", path_source]) move_to_yul_res = subprocess.run(args, capture_output = True) if move_to_yul_res.returncode != 0: eprint() eprint(move_to_yul_res.stderr.decode("utf-8")) exit(1) return output_file.read() def solc(path_source, yul_code): solc_res = subprocess.run([path_solc, "--optimize", "--strict-assembly", "--bin", "-"], input = yul_code, capture_output = True) if solc_res.returncode != 0: eprint() eprint(solc_res.stderr.decode("utf-8")) exit(1) output = solc_res.stdout.decode("utf-8") return "0x{}".format(output.split("Binary representation:")[1].replace("\n", "")) def gen_artifact(path_source, abi, bytecode): basename = path.basename(path_source) contract_name = path.splitext(basename)[0] path_artifact = path.join(path_artifacts, basename) if not path.isdir(path_artifact): if path.exists(path_artifact): eprint("Failed to generate artifact. Path {} already exists, but it's not a directory.".format(path_artifact)) exit(1) os.makedirs(path_artifact) artifact = { "_format": "hh-sol-artifact-1", "contractName": contract_name, "sourceName": path_source, "abi": abi, "bytecode": bytecode, "deployedBytecode": bytecode, "linkReferences": {}, "deployedLinkReferences": {} } with open(path.join(path_artifact, contract_name + ".json"), "w") as f: json.dump(artifact, f, indent = 4) def run(path_source): print("Compiling {}...".format(path_source)) yul_code = move_to_yul(path_source) abi = load_abi(path_source) bytecode = solc(path_source, yul_code) gen_artifact(path_source, abi, bytecode) for path_source in list_move_sources(): run(path_source) print("Success.")
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68d73f2fd34917de7803f28010db6b89758be818
443
py
Python
scripts/check_internet_con.py
prathimacode-hub/python-scripts-bible
7643f6324c9f771f573f254289d912d812fe2494
[ "MIT" ]
null
null
null
scripts/check_internet_con.py
prathimacode-hub/python-scripts-bible
7643f6324c9f771f573f254289d912d812fe2494
[ "MIT" ]
null
null
null
scripts/check_internet_con.py
prathimacode-hub/python-scripts-bible
7643f6324c9f771f573f254289d912d812fe2494
[ "MIT" ]
1
2021-05-14T10:18:09.000Z
2021-05-14T10:18:09.000Z
# Filename : check_internet_con.py # Author : Abhijit Kumar # Created : 29 Dec 2017 # Description : Just checks internet connection is works or not. #!/usr/bin/python3 import urllib2 def checkInternetConnectivity(): try: urllib2.urlopen("http://google.com", timeout=2) print("Working connection") except urllib2.URLError as E: print("Connection error:%s" % E.reason) checkInternetConnectivity()
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68d811e1eb8d333e27beb3d574db367c7c6dade8
326
py
Python
backend/src/baserow/contrib/database/api/fields/errors.py
OpenSourceMarketing/Baserow
5778059fde594a3b1838f7a964bc5060ab45bbad
[ "MIT" ]
null
null
null
backend/src/baserow/contrib/database/api/fields/errors.py
OpenSourceMarketing/Baserow
5778059fde594a3b1838f7a964bc5060ab45bbad
[ "MIT" ]
7
2021-03-19T12:07:13.000Z
2022-02-10T14:47:21.000Z
backend/src/baserow/contrib/database/api/fields/errors.py
OpenSourceMarketing/Baserow
5778059fde594a3b1838f7a964bc5060ab45bbad
[ "MIT" ]
null
null
null
from rest_framework.status import HTTP_404_NOT_FOUND ERROR_FIELD_DOES_NOT_EXIST = ( 'ERROR_FIELD_DOES_NOT_EXIST', HTTP_404_NOT_FOUND, 'The requested field does not exist.' ) ERROR_CANNOT_DELETE_PRIMARY_FIELD = 'ERROR_CANNOT_DELETE_PRIMARY_FIELD' ERROR_CANNOT_CHANGE_FIELD_TYPE = 'ERROR_CANNOT_CHANGE_FIELD_TYPE'
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68d9429f6da9f4047b22ecae607eeab851aaf188
253,493
py
Python
glasses/__init__.py
tonyfast/metallic-glasses
7ce019d0c8406e990836b88b9661839c3f1928cf
[ "BSD-3-Clause" ]
null
null
null
glasses/__init__.py
tonyfast/metallic-glasses
7ce019d0c8406e990836b88b9661839c3f1928cf
[ "BSD-3-Clause" ]
null
null
null
glasses/__init__.py
tonyfast/metallic-glasses
7ce019d0c8406e990836b88b9661839c3f1928cf
[ "BSD-3-Clause" ]
null
null
null
# coding: utf-8 # In[325]: __version__ = "0.0.1" __all__ = [] # In[8]: from time import sleep # In[22]: get_ipython().magic('ls /Users/tfast/Desktop/SLAC_MG_0716/') # In[23]: get_ipython().magic('ls /Users/tfast/Desktop/SLAC_MG_0716/Sample1/') # In[14]: get_ipython().magic( 'cat /Users/tfast/Desktop/SLAC_MG_0716/Sample1/Sample1_24x24_t30_0001.txt*') # * Turn metadata into a dataframe # # /Users/tfast/Desktop/SLAC_MG_0716/Sample1/Sample1_24x24_t30_0001.txt* # In[15]: from IPython import display # In[19]: import skimage.io # In[ ]: # In[27]: # In[33]: im = skimage.io.imread( '/Users/tfast/Desktop/SLAC_MG_0716/Sample1/Sample1_24x24_t30_0010.tif') skimage.io.imshow(im) # In[29]: get_ipython().magic('matplotlib inline') # In[34]: import dask.dataframe as dd # In[38]: from whatever import * # In[40]: import glob # In[42]: import pandas # In[ ]: pandas.read_csv # In[49]: from toolz.curried import * # In[ ]: # In[ ]: for the_file in glob.glob( "/Users/tfast/Desktop/SLAC_MG_0716/Sample1/Processed/*_1D.csv" ): pandas.read_csv( the_file, names=['Q', 'I'], header=None ).iloc[:1000].set_index('Q') # In[102]: # In[228]: metadata = pandas.read_csv( "/Users/tfast/Desktop/SLAC_MG_0716/Sample1/Processed/Sample1_24x24_t30_14715979master_metadata.csv") metadata = metadata.rename(columns={'scan#.1': 'scan'}).set_index('scan') for c in 'xy': metadata['plate_' + c] = metadata['plate_' + c].apply(compose( first, lambda x: x.split('e', 1) )).astype(float) # In[106]: baselines = [209, 233] # In[346]: dfs = [] for i, the_file in enumerate(glob.glob( "/Users/tfast/Desktop/SLAC_MG_0716/Sample[1-5]/Processed/*_1D.csv" )): s = pandas.read_csv( the_file, header=None, names=['Q', str(i) + '_' + str(the_file.split('_')[-2])] ).set_index('Q').iloc[:1000] dfs.append(s) signals = pandas.concat(dfs, axis=1) signals.plot(legend=None) # In[319]: get_ipython().magic('matplotlib notebook') # > _hypothesis_ - The rolling _standard deviation_. It will exentuate the # crystalline patterns because they have larger information entropy. The # rolling deviations are then used to identify non-crystalline patterns, by # some thresholding technique, that can be automated later. # In[333]: get_ipython().magic('matplotlib notebook') # In[353]: roll = signals.rolling(31, center=True).std().fillna(0).sum(axis=0) # > Identify non-crystalline states using the thresholding below. # In[350]: from magical import register_jinja2_magic env = register_jinja2_magic() # In[351]: threshold = 13e3 # In[352]: get_ipython().run_cell_magic('jinja2', '', '\n> The threshold we using is `{{threshold}}`. This value was identified using the image below.\n\n<img src="data:image/png;base64,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"/>') # In[360]: noncrystalline = signals[roll[roll < threshold].index].columns # In[376]: get_ipython().magic('matplotlib notebook') # In[390]: xtal = signals.rolling(25).sum() xtal.plot(legend=False) # In[380]: xtal_threshold = 31e3 # In[381]: get_ipython().run_cell_magic('jinja2', '', '\nThe rolling sum of the signals to find some crystalling examples. {{xtal_threshold}}\n\n![](data:image/png;base64,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)') # In[402]: xtal_features = xtal.columns[(xtal > xtal_threshold).any(axis=0)] # In[474]: trainer = pandas.concat( [ signals[xtal_features].transpose().reset_index(drop=True).set_index( np.array([0] * len(xtal_features))), signals[noncrystalline].transpose().reset_index(drop=True).set_index( np.array([1] * len(noncrystalline))), ], axis=0) # In[479]: h = signals.rolling(25).std().fillna(0) # In[485]: train = trainer.transpose().rolling(25).std().fillna(0).transpose() # In[491]: X = pipeline.make_pipeline( preprocessing.RobustScaler(), ensemble.RandomForestClassifier(), ).fit(train.values, train.index) # In[493]: signals.transpose()[X.predict(h.transpose().values) == 0].transpose().plot(legend=False) # In[494]: signals.transpose()[X.predict(h.transpose().values) == 1].transpose().plot(legend=False) # In[448]: clf = tree.DecisionTreeClassifier().fit(trainer.values, trainer.index) # In[ ]: # In[303]: roll.iloc[roll.rolling(25, center=True).std().fillna(0).sum(axis=0) < 3e5] # In[199]: model = pipeline.make_pipeline( preprocessing.MaxAbsScaler(), decomposition.PCA(), a ).fit(roll[(roll != 0).all(axis=1)].transpose().values) pandas.DataFrame( model.transform(roll[(roll != 0).all(axis=1)].transpose().values) ).plot(x=0, y=1, kind='scatter') # In[146]: r = signals.rolling(20, center=True) # In[161]: (signals.rolling(50, center=True).std().fillna(0) * signals).plot(legend=False) # In[142]: get_ipython().magic('matplotlib notebook') # In[134]: signals[baselines].plot() # In[89]: pandas.concat(l, axis=1, join='inner').plot(legend=None) # In[36]: df = dd.read_csv( "/Users/tfast/Desktop/SLAC_MG_0716/Sample1/Processed/*_1D.csv")
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68d98076bb5b653763a5e9f475b2dcc2aac6d8ae
577
py
Python
agents.py
lukebabs/autosurf
858a268765bbe4f3ae48d38816597eef0754c6e4
[ "MIT" ]
1
2020-09-23T19:10:42.000Z
2020-09-23T19:10:42.000Z
agents.py
lukebabs/autosurf
858a268765bbe4f3ae48d38816597eef0754c6e4
[ "MIT" ]
null
null
null
agents.py
lukebabs/autosurf
858a268765bbe4f3ae48d38816597eef0754c6e4
[ "MIT" ]
null
null
null
import os, random def get_user_agents(): with open('./data/user-agents.txt') as file: user_agents = [site.strip() for site in file] #function to turn the txt file content into list return user_agents #new list of user_agents in list format class UserAgent(): def __init__(self, user_agent): self.user_agent = user_agent def select_agent(self): self.user_agent = random.choice(user_agents) return self.user_agent if __name__ == "__main__": user_agents = get_user_agents() print (UserAgent.select_agent())
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2
68d99f26e2d322b5f1410136dc8d32fdc852ce2d
4,497
py
Python
tuiuiu/tuiuiuredirects/views.py
caputomarcos/tuiuiu.io
d8fb57cf95487e7fe1454b2130ef18acc916da46
[ "BSD-3-Clause" ]
3
2019-08-08T09:09:35.000Z
2020-12-15T18:04:17.000Z
tuiuiu/tuiuiuredirects/views.py
caputomarcos/tuiuiu.io
d8fb57cf95487e7fe1454b2130ef18acc916da46
[ "BSD-3-Clause" ]
null
null
null
tuiuiu/tuiuiuredirects/views.py
caputomarcos/tuiuiu.io
d8fb57cf95487e7fe1454b2130ef18acc916da46
[ "BSD-3-Clause" ]
1
2017-09-09T20:10:40.000Z
2017-09-09T20:10:40.000Z
from __future__ import absolute_import, unicode_literals from django.core.urlresolvers import reverse from django.shortcuts import get_object_or_404, redirect, render from django.utils.translation import ugettext as _ from django.views.decorators.vary import vary_on_headers from tuiuiu.utils.pagination import paginate from tuiuiu.tuiuiuadmin import messages from tuiuiu.tuiuiuadmin.forms import SearchForm from tuiuiu.tuiuiuadmin.utils import PermissionPolicyChecker, permission_denied from tuiuiu.tuiuiuredirects import models from tuiuiu.tuiuiuredirects.forms import RedirectForm from tuiuiu.tuiuiuredirects.permissions import permission_policy permission_checker = PermissionPolicyChecker(permission_policy) @permission_checker.require_any('add', 'change', 'delete') @vary_on_headers('X-Requested-With') def index(request): query_string = request.GET.get('q', "") ordering = request.GET.get('ordering', 'old_path') redirects = models.Redirect.objects.prefetch_related('redirect_page', 'site') # Search if query_string: redirects = redirects.filter(old_path__icontains=query_string) # Ordering (A bit useless at the moment as only 'old_path' is allowed) if ordering not in ['old_path']: ordering = 'old_path' redirects = redirects.order_by(ordering) # Pagination paginator, redirects = paginate(request, redirects) # Render template if request.is_ajax(): return render(request, "tuiuiuredirects/results.html", { 'ordering': ordering, 'redirects': redirects, 'query_string': query_string, }) else: return render(request, "tuiuiuredirects/index.html", { 'ordering': ordering, 'redirects': redirects, 'query_string': query_string, 'search_form': SearchForm( data=dict(q=query_string) if query_string else None, placeholder=_("Search redirects") ), 'user_can_add': permission_policy.user_has_permission(request.user, 'add'), }) @permission_checker.require('change') def edit(request, redirect_id): theredirect = get_object_or_404(models.Redirect, id=redirect_id) if not permission_policy.user_has_permission_for_instance( request.user, 'change', theredirect ): return permission_denied(request) if request.method == 'POST': form = RedirectForm(request.POST, request.FILES, instance=theredirect) if form.is_valid(): form.save() messages.success(request, _("Redirect '{0}' updated.").format(theredirect.title), buttons=[ messages.button(reverse('tuiuiuredirects:edit', args=(theredirect.id,)), _('Edit')) ]) return redirect('tuiuiuredirects:index') else: messages.error(request, _("The redirect could not be saved due to errors.")) else: form = RedirectForm(instance=theredirect) return render(request, "tuiuiuredirects/edit.html", { 'redirect': theredirect, 'form': form, 'user_can_delete': permission_policy.user_has_permission(request.user, 'delete'), }) @permission_checker.require('delete') def delete(request, redirect_id): theredirect = get_object_or_404(models.Redirect, id=redirect_id) if not permission_policy.user_has_permission_for_instance( request.user, 'delete', theredirect ): return permission_denied(request) if request.method == 'POST': theredirect.delete() messages.success(request, _("Redirect '{0}' deleted.").format(theredirect.title)) return redirect('tuiuiuredirects:index') return render(request, "tuiuiuredirects/confirm_delete.html", { 'redirect': theredirect, }) @permission_checker.require('add') def add(request): if request.method == 'POST': form = RedirectForm(request.POST, request.FILES) if form.is_valid(): theredirect = form.save() messages.success(request, _("Redirect '{0}' added.").format(theredirect.title), buttons=[ messages.button(reverse('tuiuiuredirects:edit', args=(theredirect.id,)), _('Edit')) ]) return redirect('tuiuiuredirects:index') else: messages.error(request, _("The redirect could not be created due to errors.")) else: form = RedirectForm() return render(request, "tuiuiuredirects/add.html", { 'form': form, })
35.690476
103
0.681565
483
4,497
6.165631
0.26087
0.033244
0.031901
0.057085
0.401276
0.390866
0.370047
0.314305
0.314305
0.243116
0
0.003368
0.207694
4,497
125
104
35.976
0.832445
0.022682
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0.416667
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false
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0.125
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0
68d9c2874c4137a2cc2a81b3b6c8979882134cbf
2,639
py
Python
fd_lib/feature_engineering.py
fdavidsen/Personal-Data-Science-Projects
4167744295c96e3f984830b6203428ea41b111e7
[ "MIT" ]
null
null
null
fd_lib/feature_engineering.py
fdavidsen/Personal-Data-Science-Projects
4167744295c96e3f984830b6203428ea41b111e7
[ "MIT" ]
null
null
null
fd_lib/feature_engineering.py
fdavidsen/Personal-Data-Science-Projects
4167744295c96e3f984830b6203428ea41b111e7
[ "MIT" ]
null
null
null
from itertools import combinations from sklearn.base import BaseEstimator from sklearn.base import TransformerMixin class BestPair: ''' Find out the feature pairs with the highest correlation (positive and negative). ''' def __init__(self, X, y, how='product'): self.X = X self.y = y self.how = how self._fit() def _fit(self): self.corr_list = [] for row, col in combinations(self.X._get_numeric_data(), r=2): if self.how == 'product': self._corr_append('product', self.product(row, col), row, col) elif self.how == 'distance': self._corr_append('distance', self.distance(row, col), row, col) elif self.how == 'all': self._corr_append('product', self.product(row, col), row, col) self._corr_append('distance', self.distance(row, col), row, col) self.corr_list = sorted(self.corr_list, key=lambda item: -item[3]) def product(self, row, col): return self.X[row] * self.X[col] def distance(self, row, col): return (self.X[row]**2 + self.X[col]**2)**0.5 def _corr_append(self, how, new_col, row, col): self.corr_list.append((how, row, col, self.y.corr(new_col))) def get_list(self, top=1): upper_top = self.corr_list[:top] lower_top = self.corr_list[-top:] return upper_top + lower_top def mold(self, top=1): top_corr = self.get_list(top) how_space = max([len(item[0]) for item in top_corr]) row_space = max([len(item[1]) for item in top_corr]) col_space = max([len(item[2]) for item in top_corr]) for how, row, col, score in top_corr: line = '[{:>%(how_space)s}] {:>%(row_space)s} & {:<%(col_space)s} | {:.3f}' % locals() print(line.format(how.title(), row, col, score)) class CustomFeature(BaseEstimator, TransformerMixin): ''' Select custom features to add to the feature matrix. ''' def __init__(self, columns): self.columns = columns def fit(self, X, y=None): return self def transform(self, X): X = X.copy() for how, row, col in self.columns: if how == 'product': result = X[row] * X[col] elif how == 'distance': result = (X[row]**2 + X[col]**2)**0.5 X['{}_{}'.format(row, col)] = result return X
33.405063
102
0.530125
341
2,639
3.958944
0.240469
0.075556
0.053333
0.035556
0.282222
0.20963
0.185185
0.133333
0.133333
0.133333
0
0.009101
0.333839
2,639
79
103
33.405063
0.758817
0.050777
0
0.076923
0
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0.058186
0
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1
0.192308
false
0
0.057692
0.057692
0.384615
0.019231
0
0
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null
0
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null
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0
0
0
0
0
0
0
1
0
68da0b7e3b7b6e70fde041111bd397e4346b2c04
3,778
py
Python
benchmarks/cocompilation_benchmarks.py
SanggunLee/edgetpu
d3cf166783265f475c1ddba5883e150ee84f7bfe
[ "Apache-2.0" ]
2
2020-05-07T22:34:16.000Z
2020-09-03T20:30:37.000Z
benchmarks/cocompilation_benchmarks.py
SanggunLee/edgetpu
d3cf166783265f475c1ddba5883e150ee84f7bfe
[ "Apache-2.0" ]
null
null
null
benchmarks/cocompilation_benchmarks.py
SanggunLee/edgetpu
d3cf166783265f475c1ddba5883e150ee84f7bfe
[ "Apache-2.0" ]
1
2020-01-08T05:55:58.000Z
2020-01-08T05:55:58.000Z
# Copyright 2019 Google LLC # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # https://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. """Benchmark of cocompiled models. Benchmark are measured with CPU 'performance' mode. To enable it, you need to install 'cpupower' and run: sudo cpupower frequency-set --governor performance The reference number is measured on: - 'x86_64': Intel Xeon W-2135(4.50GHz) + Edge TPU accelarator + USB 3.0 - 'rp3b': Raspberry Pi 3 B (version1.2)+ Edge TPU accelarator + USB 2.0 - 'rp3b+': Raspberry Pi 3 B+ (version1.3)+ Edge TPU accelarator + USB 2.0 - 'aarch64': Edge TPU dev board. """ import time import timeit from edgetpu.basic import edgetpu_utils from edgetpu.basic.basic_engine import BasicEngine import numpy as np import test_utils def _run_inferences(engines, input_data_list): """Runs an iteration of inferences for each engine with a random inpt. Args: engines: list of basic engines. input_data_list: list of random input data. """ for engine, input_data in zip(engines, input_data_list): engine.run_inference(input_data) def _run_benchmark_for_cocompiled_models(model_names): """Runs benchmark for a given model set with random inputs. Models run inferences alternately with random inputs. It benchmarks the total time running each model once. Args: model_names: list of string, file names of the models. Returns: float, average sum of inferences times. """ iterations = 200 print('Benchmark for ', model_names) engines = [] input_data_list = [] edge_tpus = edgetpu_utils.ListEdgeTpuPaths( edgetpu_utils.EDGE_TPU_STATE_UNASSIGNED) for model_name in model_names: # Run models on a single edgetpu to achieve accurate benchmark results. engine = BasicEngine(test_utils.test_data_path(model_name), edge_tpus[0]) # Prepare a random generated input. input_size = engine.required_input_array_size() random_input = test_utils.generate_random_input(1, input_size) # Convert it to a numpy.array. input_data = np.array(random_input, dtype=np.uint8) engines.append(engine) input_data_list.append(input_data) benchmark_time = timeit.timeit( lambda: _run_inferences(engines, input_data_list), number=iterations) # Time consumed for each iteration (milliseconds). time_per_inference = (benchmark_time / iterations) * 1000 print(time_per_inference, 'ms (iterations = ', iterations, ')') return time_per_inference if __name__ == '__main__': args = test_utils.parse_args() machine = test_utils.machine_info() test_utils.check_cpu_scaling_governor_status() # Read references from csv file. modelsets_list, reference = test_utils.read_reference( 'cocompilation_reference_%s.csv' % machine) total_modelsets = len(modelsets_list) # Put column names in first row. results = [('MODELS', 'INFERENCE_TIME')] for cnt, modelsets in enumerate(modelsets_list, start=1): print('-------------- Models ', cnt, '/', total_modelsets, ' ---------------') results.append((modelsets, _run_benchmark_for_cocompiled_models(modelsets.split(',')))) test_utils.save_as_csv( 'cocompilation_benchmarks_%s_%s.csv' % ( machine, time.strftime('%Y%m%d-%H%M%S')), results) test_utils.check_result(reference, results, args.enable_assertion)
34.981481
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3,778
5.043315
0.387947
0.036968
0.029126
0.037341
0.084018
0.060866
0.019417
0
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0
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0.014626
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3,778
107
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0.836884
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0
0
0
0
0
1
0
68da25d88380998dc70170f5b963f169ab2d9195
11,849
py
Python
pygl.py
sidd5sci/game-engin
8aa580ae79083c6420e004720ea91650029caf2c
[ "Apache-2.0" ]
null
null
null
pygl.py
sidd5sci/game-engin
8aa580ae79083c6420e004720ea91650029caf2c
[ "Apache-2.0" ]
null
null
null
pygl.py
sidd5sci/game-engin
8aa580ae79083c6420e004720ea91650029caf2c
[ "Apache-2.0" ]
null
null
null
#Import OpenGL and GLU. Don't import GLUT because it is ancient, broken, inflexible, and poorly #designed--and we aren't using it. from OpenGL.GL import * from OpenGL.GLU import * #Import PyGame. We'll mostly just use this to make a window. Also import all the local #declarations (e.g. pygame.KEYDOWN, etc.), so that we don't have to keep typing "pygame." in front #of everything. E.g., now we can do "KEYDOWN" instead of "pygame.KEYDOWN". import pygame from pygame.locals import * #Import some other useful modules import sys, os, traceback #Center the window on the screen, if we're on Windows, which supports it. if sys.platform in ["win32","win64"]: os.environ["SDL_VIDEO_CENTERED"]="1" #Import sin, cos, radians, degrees, etc. from math import * #Initialize PyGame. You could also call "pygame.init()", but in my experience this can be faster #(since you aren't initializing *everything*) and more portable (since some modules may require #extra dependencies). pygame.display.init() pygame.font.init() #Screen configuration screen_size = [800,600] multisample = 0 #Set the window's icon, as applicable, to be just a transparent square. icon = pygame.Surface((1,1)); icon.set_alpha(0); pygame.display.set_icon(icon) #Set the title of the window. pygame.display.set_caption("PyOpenGL Example - Ian Mallett - v.1.0.0 - 2013") #Set the window to be multisampled. This does depth testing at a higher resolution, leading to #smooth, antialiased edges. Most computers support at least multisample=4, and most support more #(e.g. mine does 16). if multisample: pygame.display.gl_set_attribute(GL_MULTISAMPLEBUFFERS,1) pygame.display.gl_set_attribute(GL_MULTISAMPLESAMPLES,multisample) #Create the window of the requested size. The pygame.OPENGL flag tells it to allow OpenGL to write #directly to the window context. The pygame.DOUBLEBUF flag tells it to make the window #doublebuffered. This causes the screen to only show a completed image. This function actually #returns a "surface" object, but it isn't useful for OpenGL programs. pygame.display.set_mode(screen_size,OPENGL|DOUBLEBUF) #If we draw a new pixel, we want to blend the new pixel with whatever is already there. This allows #for transparency, among other things. Since everything here is fully opaque, we don't actually #*need* this right now. ##glEnable(GL_BLEND) ##glBlendFunc(GL_SRC_ALPHA,GL_ONE_MINUS_SRC_ALPHA) #Enable textured objects. The glTexEnvi calls set up texturing in an intuitive way. Again, since #nothing here is textured, we don't actually *need* this right now. ##glEnable(GL_TEXTURE_2D) ##glTexEnvi(GL_TEXTURE_ENV,GL_TEXTURE_ENV_MODE,GL_MODULATE) ##glTexEnvi(GL_POINT_SPRITE,GL_COORD_REPLACE,GL_TRUE) #This requests that OpenGL make interpolation (filling in triangles) happen in the nicest way #possible. It's not guaranteed to happen; it's a request. glHint(GL_PERSPECTIVE_CORRECTION_HINT,GL_NICEST) #This enables depth testing (so that closer objects are always drawn in front of farther objects). #If depth testing is not enabled, then objects are drawn "over" each other in the order you draw #them. For most 3D rendering, you'll want depth testing enabled. glEnable(GL_DEPTH_TEST) #This concludes setup; the program itself will be a single triangle drawn in white at positions #(0.0,0.0,0.0), (0.8,0.0,0.0), (0.0,0.0,0.4), along with a red, green, and blue line segments #showing the axes. #I find that an intuitive basic setup for the camera (where you're looking from) is to have the #viewer located on the surface of a sphere surrounding everything. You can change your position on #the sphere, and thus fly around the scene. To do this, I put the camera in (a kind of) spherical #coordinates. camera_rot = [30.0,20.0] #The spherical coordinates' angles (degrees). camera_radius = 3.0 #The sphere's radius camera_center = [0.0,0.0,0.0] #The sphere's center def get_input(): global camera_rot, camera_radius #Input in PyGame is pretty straightforward. For now, we are concerned only with key and mouse #input. Whenever anything *happens* (move the mouse, click, etc.), an "event" happens. You get #a list of the events that happened by calling "pygame.event.get()". You can also query the #*state* of anything by checking it specifically. #Check the *state* of the keys, the mouse buttons, and the mouse's position within the window. keys_pressed = pygame.key.get_pressed() mouse_buttons = pygame.mouse.get_pressed() mouse_position = pygame.mouse.get_pos() #Check how much the mouse moved since you last called this function. mouse_rel = pygame.mouse.get_rel() #List all the events that happened. for event in pygame.event.get(): #Clicked the little "X"; close the window (return False breaks the main loop). if event.type == QUIT: return False #If the user pressed a key: elif event.type == KEYDOWN: #If the user pressed the escape key, close the window. if event.key == K_ESCAPE: return False #If the user "clicked" the scroll wheel forward or backward: elif event.type == MOUSEBUTTONDOWN: #Zoom in if event.button == 4: camera_radius *= 0.9 #Or out. elif event.button == 5: camera_radius /= 0.9 #If the user is left-clicking, then move the camera about in the spherical coordinates. if mouse_buttons[0]: camera_rot[0] += mouse_rel[0] camera_rot[1] += mouse_rel[1] return True def draw(): #Clear the screen's color and depth buffers so we have a fresh space to draw geometry onto. glClear(GL_COLOR_BUFFER_BIT|GL_DEPTH_BUFFER_BIT) #Setup the viewport (the area of the window to draw into) glViewport(0,0,screen_size[0],screen_size[1]) #Change the matrix mode to the projection matrix (all subsequent calls that change matrices will #change the projection matrix). The projection matrix should be made responsible for taking all #the geometry in the 3D world and then distorting it so that it is in perspective on the screen. glMatrixMode(GL_PROJECTION) #Set the current matrix (the projection matrix) to be the identity matrix. glLoadIdentity() #Multiply the current matrix (the projection matrix) by a matrix that projects everything like a #camera would. Basically, this makes everything look like it's in perspective. In this case, #the camera has a (vertical) field of view of 45 degrees, an aspect ratio of 800.0/600.0, a near #clipping plane of 0.1, and a far clipping plane of 100.0. The clipping planes tell you how #close and far away from the camera you can see things. Ideally, you'd set them to 0.0 and #infinity, but the clipping planes also affect the depth buffer; setting them farther apart #means objects don't occlude each other as correctly (the depth buffer is stretched over a #larger distance). The general rule is to set the near clipping plane as large as possible (and #*never* to 0.0), and then make your far plane reasonably small. gluPerspective(45, float(screen_size[0])/float(screen_size[1]), 0.1,100.0) #Change the matrix mode to the modelview matrix (all subsequent calls that change matrices will #change the modelview matrix). The modelview matrix should be made responsible for moving #things around the world (the "model" part of the name) and also making it look like the camera #is in a particular position (the "view" part of the name). glMatrixMode(GL_MODELVIEW) #Set the current matrix (the modelview matrix) to be the identity matrix. glLoadIdentity() #The matrices stay the way they are until they are changed. Since the projection matrix doesn't #actually change from frame to frame, one *could* only set it once. You will see this approach #in other tutorials. This isn't a good idea, since more advanced techniques (e.g. image-space #techniques) require the projection matrix to constantly change. #Set the camera's position to be in spherical coordinates. These aren't typical spherical #coordinates, since I take the elevation angle (camera_rot[1]) to be 0.0 at the horizon. I find #this more intuitive, but you can easily change it to your favorite parameterization by #exchanging sines and cosines. camera_pos = [ camera_center[0] + camera_radius*cos(radians(camera_rot[0]))*cos(radians(camera_rot[1])), camera_center[1] + camera_radius *sin(radians(camera_rot[1])), camera_center[2] + camera_radius*sin(radians(camera_rot[0]))*cos(radians(camera_rot[1])) ] #This multiplies the current matrix (the modelview matrix) by a matrix that makes it *look like* #all subsequent draw calls had the camera at the given position and direction. In reality, it #actually rotates and translates *the whole world* so that it *looks* that way, but the effect #is the same. Here, the camera has position "camera_pos" and is oriented so that it is looking #towards position "camera_center". The last three arguments tell it which way is up. gluLookAt( camera_pos[0],camera_pos[1],camera_pos[2], camera_center[0],camera_center[1],camera_center[2], 0,1,0 ) #Okay! Let's start *actually drawing stuff*! We use "immediate mode" OpenGL here, which is #obsoleted by vertex arrays and VBOs. Still, immediate mode is far more intuitive, so it is the #method we'll use here. #Set the color to white. All subsequent geometry we draw will be white. This is actually the #default, so we didn't *need* to do this. glColor3f(1,1,1) #Start drawing triangles. Each subsequent triplet of glVertex*() calls will draw one triangle. glBegin(GL_TRIANGLES) glVertex3f(0.0,0.0,0.0) #Make a vertex at (0.0,0.0,0.0) glVertex3f(0.8,0.0,0.0) #Make a vertex at (0.8,0.0,0.0) glVertex3f(0.0,0.0,0.4) #Make a vertex at (0.0,0.0,0.4) #Now that we've made one triplet of glVertex*() calls, it will draw one (white) triangle between #those three points. We're done drawing triangles; tell OpenGL so. glEnd() #Start drawing lines. Each subsequent pair of glVertex*() calls will draw one line. glBegin(GL_LINES) #Change the color to red. All subsequent geometry we draw will be red. glColor3f(1,0,0) #Make two vertices, thereby drawing a (red) line. glVertex(0,0,0); glVertex3f(1,0,0) #Change the color to green. All subsequent geometry we draw will be green. glColor3f(0,1,0) #Make two vertices, thereby drawing a (green) line. glVertex(0,0,0); glVertex3f(0,1,0) #Change the color to blue. All subsequent geometry we draw will be blue. glColor3f(0,0,1) #Make two vertices, thereby drawing a (blue) line. glVertex(0,0,0); glVertex3f(0,0,1) #Change the color to white again. All subsequent geometry we draw will be white. Strictly #speaking this isn't required (since we reset the color on line 166 before we draw anything #again). However, it is good practice to reset the color to white, since forgetting to can be a #hard-to-track-down bug (e.g. when combining with texturing). glColor3f(1,1,1) #We're done drawing lines; tell OpenGL so. glEnd() #Flip the buffer (draw the internal memory we've been using onto the screen). This is why we #passed pygame.DOUBLEBUF when we created the window. pygame.display.flip() def main(): clock = pygame.time.Clock() while True: if not get_input(): break draw() clock.tick(60) #Regulate the framerate to be as close as possible to 60Hz. pygame.quit() if __name__ == "__main__": try: main() except: traceback.print_exc() pygame.quit() input()
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68e1f5cc56b5a7a07848391ac060d809aa03eb20
6,827
py
Python
cogdl/models/nn/pyg_gpt_gnn.py
zhangdan0602/cogdl
35a338f29066e4b1a5d7f46217f09ebceaf13106
[ "MIT" ]
null
null
null
cogdl/models/nn/pyg_gpt_gnn.py
zhangdan0602/cogdl
35a338f29066e4b1a5d7f46217f09ebceaf13106
[ "MIT" ]
null
null
null
cogdl/models/nn/pyg_gpt_gnn.py
zhangdan0602/cogdl
35a338f29066e4b1a5d7f46217f09ebceaf13106
[ "MIT" ]
null
null
null
from typing import Any, Union, Type, Optional from cogdl.models import register_model from cogdl.models.supervised_model import ( SupervisedHomogeneousNodeClassificationModel, SupervisedHeterogeneousNodeClassificationModel, ) from cogdl.trainers.gpt_gnn_trainer import ( GPT_GNNHomogeneousTrainer, GPT_GNNHeterogeneousTrainer, ) # # @register_model("gpt_gnn") # class GPT_GNN(BaseModel): # def __init__( # self, # in_dim, # n_hid, # num_types, # num_relations, # n_heads, # n_layers, # dropout=0.2, # conv_name="hgt", # prev_norm=False, # last_norm=False, # use_RTE=True, # ): # super(GPT_GNN, self).__init__() # self.gcs = nn.ModuleList() # self.num_types = num_types # self.in_dim = in_dim # self.n_hid = n_hid # self.adapt_ws = nn.ModuleList() # self.drop = nn.Dropout(dropout) # for t in range(num_types): # self.adapt_ws.append(nn.Linear(in_dim, n_hid)) # for l in range(n_layers - 1): # self.gcs.append( # GeneralConv( # conv_name, # n_hid, # n_hid, # num_types, # num_relations, # n_heads, # dropout, # use_norm=prev_norm, # use_RTE=use_RTE, # ) # ) # self.gcs.append( # GeneralConv( # conv_name, # n_hid, # n_hid, # num_types, # num_relations, # n_heads, # dropout, # use_norm=last_norm, # use_RTE=use_RTE, # ) # ) # # def forward(self, node_feature, node_type, edge_time, edge_index, edge_type): # res = torch.zeros(node_feature.size(0), self.n_hid).to(node_feature.device) # for t_id in range(self.num_types): # idx = node_type == int(t_id) # if idx.sum() == 0: # continue # res[idx] = torch.tanh(self.adapt_ws[t_id](node_feature[idx])) # meta_xs = self.drop(res) # del res # for gc in self.gcs: # meta_xs = gc(meta_xs, node_type, edge_index, edge_type, edge_time) # return meta_xs @register_model("gpt_gnn") class GPT_GNN( SupervisedHomogeneousNodeClassificationModel, SupervisedHeterogeneousNodeClassificationModel, ): @staticmethod def add_args(parser): """Add task-specific arguments to the parser.""" # fmt: off """ Dataset arguments """ parser.add_argument( "--use_pretrain", help="Whether to use pre-trained model", action="store_true" ) parser.add_argument( "--pretrain_model_dir", type=str, default="/datadrive/models/gpt_all_cs", help="The address for pretrained model.", ) # parser.add_argument( # "--model_dir", # type=str, # default="/datadrive/models/gpt_all_reddit", # help="The address for storing the models and optimization results.", # ) parser.add_argument( "--task_name", type=str, default="reddit", help="The name of the stored models and optimization results.", ) parser.add_argument( "--sample_depth", type=int, default=6, help="How many numbers to sample the graph" ) parser.add_argument( "--sample_width", type=int, default=128, help="How many nodes to be sampled per layer per type", ) """ Model arguments """ parser.add_argument( "--conv_name", type=str, default="hgt", choices=["hgt", "gcn", "gat", "rgcn", "han", "hetgnn"], help="The name of GNN filter. By default is Heterogeneous Graph Transformer (hgt)", ) parser.add_argument("--n_hid", type=int, default=400, help="Number of hidden dimension") parser.add_argument("--n_heads", type=int, default=8, help="Number of attention head") parser.add_argument("--n_layers", type=int, default=3, help="Number of GNN layers") parser.add_argument( "--prev_norm", help="Whether to add layer-norm on the previous layers", action="store_true", ) parser.add_argument( "--last_norm", help="Whether to add layer-norm on the last layers", action="store_true", ) parser.add_argument("--dropout", type=int, default=0.2, help="Dropout ratio") """ Optimization arguments """ parser.add_argument( "--optimizer", type=str, default="adamw", choices=["adamw", "adam", "sgd", "adagrad"], help="optimizer to use.", ) parser.add_argument( "--scheduler", type=str, default="cosine", help="Name of learning rate scheduler.", choices=["cycle", "cosine"], ) parser.add_argument( "--data_percentage", type=int, default=0.1, help="Percentage of training and validation data to use", ) parser.add_argument("--n_epoch", type=int, default=50, help="Number of epoch to run") parser.add_argument( "--n_pool", type=int, default=8, help="Number of process to sample subgraph" ) parser.add_argument( "--n_batch", type=int, default=10, help="Number of batch (sampled graphs) for each epoch", ) parser.add_argument( "--batch_size", type=int, default=64, help="Number of output nodes for training" ) parser.add_argument("--clip", type=int, default=0.5, help="Gradient Norm Clipping") # fmt: on @classmethod def build_model_from_args(cls, args): return GPT_GNN() def loss(self, data: Any) -> Any: pass def predict(self, data: Any) -> Any: pass def evaluate(self, data: Any, nodes: Any, targets: Any) -> Any: pass @staticmethod def get_trainer(args) -> Optional[Type[Union[GPT_GNNHomogeneousTrainer, GPT_GNNHeterogeneousTrainer]]]: # if taskType == NodeClassification: return GPT_GNNHomogeneousTrainer # elif taskType == HeterogeneousNodeClassification: # return GPT_GNNHeterogeneousTrainer # else: # return None
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68e4fa47e5e77d8c29f364b8fa74a2d2eaa11de8
476
py
Python
ex/ex113.py
Ozcry/PythonExercicio
b4d4a4fbd6467d1ced0815677ecbd78c2613c4c9
[ "MIT" ]
null
null
null
ex/ex113.py
Ozcry/PythonExercicio
b4d4a4fbd6467d1ced0815677ecbd78c2613c4c9
[ "MIT" ]
null
null
null
ex/ex113.py
Ozcry/PythonExercicio
b4d4a4fbd6467d1ced0815677ecbd78c2613c4c9
[ "MIT" ]
null
null
null
'''Reescreva a função leiaInt() que fizemos no DESAFIO 104, incluindo agora a possibilidade da digitação de um número de tipo inválido. Aproveite e crie também uma função leiaFloot() com a mesma funcionalidade.''' from utilidadesCeV import moeda, texto n1 = moeda.leiainteiro('\033[34mDigite um Inteiro:\033[m ') n2 = moeda.leiafloat('\033[35mDigite um Real:\033[m ') texto.linha() print(f'\033[36mO valor inteiro digitado foi {n1} e o valor real foi {n2}\033[m') texto.fim()
52.888889
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1
68e8192cc2ff542a1fbc557bde4a3ec054ffbb9e
1,511
py
Python
qtpy/tests/test_qtwidgets.py
tlambert-forks/qtpy
016e8c5e67d30cb6803a2310bdbd7c4cabe33959
[ "MIT" ]
null
null
null
qtpy/tests/test_qtwidgets.py
tlambert-forks/qtpy
016e8c5e67d30cb6803a2310bdbd7c4cabe33959
[ "MIT" ]
null
null
null
qtpy/tests/test_qtwidgets.py
tlambert-forks/qtpy
016e8c5e67d30cb6803a2310bdbd7c4cabe33959
[ "MIT" ]
null
null
null
"""Test QtWidgets.""" import pytest from qtpy import PYQT5, PYQT_VERSION, QtWidgets def test_qtextedit_functions(): """Test functions mapping for QtWidgets.QTextEdit.""" assert QtWidgets.QTextEdit.setTabStopWidth assert QtWidgets.QTextEdit.tabStopWidth assert QtWidgets.QTextEdit.print_ def test_qplaintextedit_functions(): """Test functions mapping for QtWidgets.QPlainTextEdit.""" assert QtWidgets.QPlainTextEdit.setTabStopWidth assert QtWidgets.QPlainTextEdit.tabStopWidth assert QtWidgets.QPlainTextEdit.print_ def test_qapplication_functions(): """Test functions mapping for QtWidgets.QApplication.""" assert QtWidgets.QApplication.exec_ def test_qdialog_functions(): """Test functions mapping for QtWidgets.QDialog.""" assert QtWidgets.QDialog.exec_ def test_qmenu_functions(): """Test functions mapping for QtWidgets.QDialog.""" assert QtWidgets.QMenu.exec_ @pytest.mark.skipif(PYQT5 and PYQT_VERSION.startswith('5.9'), reason="A specific setup with at least sip 4.9.9 is needed for PyQt5 5.9.*" "to work with scoped enum access") def test_enum_access(): """Test scoped and unscoped enum access for qtpy.QtWidgets.*.""" assert QtWidgets.QFileDialog.AcceptOpen == QtWidgets.QFileDialog.AcceptMode.AcceptOpen assert QtWidgets.QMessageBox.InvalidRole == QtWidgets.QMessageBox.ButtonRole.InvalidRole assert QtWidgets.QStyle.State_None == QtWidgets.QStyle.StateFlag.State_None
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3
68e86e12af161f52f04fd90498184998e3306c7b
5,519
py
Python
dispatch/events/emitter.py
Alphadelta14/python-newdispatch
9d386ae0aa56af1bca38d9f732ff718a6642779c
[ "MIT" ]
1
2015-06-08T01:43:37.000Z
2015-06-08T01:43:37.000Z
dispatch/events/emitter.py
Alphadelta14/python-newdispatch
9d386ae0aa56af1bca38d9f732ff718a6642779c
[ "MIT" ]
null
null
null
dispatch/events/emitter.py
Alphadelta14/python-newdispatch
9d386ae0aa56af1bca38d9f732ff718a6642779c
[ "MIT" ]
null
null
null
import functools import sys from event import EventData, EventCancelled, EventDeferred class Emitter(object): def on(self, event, callback=None): """Hook to an event Parameters ---------- event : str Event to attach to callback : func(EventData) Callback to call when event is fired. If not specified, this is used as a decorator Returns ------- wrapper : func A decorator if callback is not set Examples -------- >>> emitter = Emitter() >>> def my_func1(evt): print('Event called me!') >>> emitter.on('some_event', my_func1) >>> @emitter.on('some_event') def my_func2(evt): print('Event called me too!') >>> emitter.fire('some_event') Event called me! Event called me too! """ try: self.event_handlers[event] except AttributeError: self.event_handlers = {event: []} except KeyError: self.event_handlers[event] = [] if callback is None: def wrapper(func): self.event_handlers[event].append(func) return func return wrapper else: self.event_handlers[event].append(callback) def off(self, event, callback): """Remove callback from an event Parameters ---------- event : str Event to remove from callback : func(EventData) Callback to be removed from this event. Only the first instance is removed Raises ------ ValueError If the callback is not attached to this event """ try: self.event_handlers[event].remove(callback) except (AttributeError, KeyError): raise ValueError('Callback not found') def once(self, event, callback=None): """Hook to an event once. Parameters ---------- event : str Event to attach to callback : func(EventData) Callback to call when event is fired. If not specified, this is used as a decorator Returns ------- wrapper : func A decorator if callback is not set """ if callback is None: def wrapper(func): @functools.wraps(func) def call_once(*args, **kwargs): ret = func(*args, **kwargs) self.off(event, call_once) return ret self.on(event, call_once) return func return wrapper else: @functools.wraps(callback) def call_once(*args, **kwargs): ret = callback(*args, **kwargs) self.off(event, call_once) return ret self.on(event, call_once) def all_off(self): """Remove all events""" try: del self.event_handlers except AttributeError: pass def fire(self, event, data=None, cancellable=True, catch_errors=True, late_throw=True): """Fires an event Parameters ---------- event : str Event to fire data : object Data passed to the event cancellable : bool If True (default), callbacks can be stopped by calling evt.cancel() catch_errors : bool If True (default), callbacks will all be called even if there is an exception thrown late_throw : bool If True (default), this function will raise the first exception thrown Returns ------- evt : EventData The passed event. Raises ------ err : Exception If catch_errors is False, this raises the error that is generated by callback() See Also -------- event.EventData """ evt = EventData(event, self, data, cancellable) try: callbacks = self.event_handlers[event] except (KeyError, AttributeError): pass else: deferred_callbacks = [] def process_callbacks(callbacks): for callback in callbacks[:]: if evt.cancelled: return evt try: callback(evt) except EventCancelled as cancel_exc: # Check to see if nested and actually called for this if cancel_exc.evt == evt: return evt else: # Raise until this event is caught raise except EventDeferred: deferred_callbacks.append(callback) except Exception as err: if catch_errors: evt.add_error(sys.exc_info()) else: raise err process_callbacks(callbacks) if deferred_callbacks: evt.deferred = True process_callbacks(deferred_callbacks) if late_throw and evt.errors: raise evt.errors[0][1], None, evt.errors[0][2] return evt
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1
68e9df88a8438097eecff1b4827fb3a86127f7cc
88
py
Python
output/models/ms_data/regex/re_t61_xsd/__init__.py
tefra/xsdata-w3c-tests
b6b6a4ac4e0ab610e4b50d868510a8b7105b1a5f
[ "MIT" ]
1
2021-08-14T17:59:21.000Z
2021-08-14T17:59:21.000Z
output/models/ms_data/regex/re_t61_xsd/__init__.py
tefra/xsdata-w3c-tests
b6b6a4ac4e0ab610e4b50d868510a8b7105b1a5f
[ "MIT" ]
4
2020-02-12T21:30:44.000Z
2020-04-15T20:06:46.000Z
output/models/ms_data/regex/re_t61_xsd/__init__.py
tefra/xsdata-w3c-tests
b6b6a4ac4e0ab610e4b50d868510a8b7105b1a5f
[ "MIT" ]
null
null
null
from output.models.ms_data.regex.re_t61_xsd.re_t61 import Doc __all__ = [ "Doc", ]
14.666667
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2
68edc1beb9d2bae550d0e6eb145fb0caa55200b1
2,663
py
Python
hadoopCluster/hadoop.py
anycode-inc/TerminalUI-CGI
8db7d19d25b0de6d599b9de8a4172d0668f4d688
[ "MIT" ]
null
null
null
hadoopCluster/hadoop.py
anycode-inc/TerminalUI-CGI
8db7d19d25b0de6d599b9de8a4172d0668f4d688
[ "MIT" ]
null
null
null
hadoopCluster/hadoop.py
anycode-inc/TerminalUI-CGI
8db7d19d25b0de6d599b9de8a4172d0668f4d688
[ "MIT" ]
null
null
null
#!/usr/bin/python3 from jinja2 import Environment, FileSystemLoader import subprocess import cgi print("content-type: text/html") print() mydata = cgi.FieldStorage() namenode_ip = mydata.getvalue("namenode_ip") namenode_port = mydata.getvalue("namenode_port") namenode_directory = mydata.getvalue("namenode_directory") datanode_ip = mydata.getvalue("datanode_ip") datanode_directory = mydata.getvalue("datanode_directory") def installtionScript(nodeType,directoryPath): file_loader = FileSystemLoader('templates') env = Environment(loader=file_loader) template = env.get_template('installationScript.sh.j2') output = template.render(nodeType = nodeType , directoryPath = directoryPath) file = open("./temp/installationScript.sh", "w") file.write("%s" %(output)) file.close() def hdfsSite(nodeType,directoryPath): file_loader = FileSystemLoader('templates') env = Environment(loader=file_loader) template = env.get_template('hdfs-site.xml.j2') output = template.render(nodeType = nodeType , directoryPath = directoryPath) file = open("./temp/hdfs-site.xml", "w") file.write("%s" %(output)) file.close() def coreSite(nodeIp,nodePort): file_loader = FileSystemLoader('templates') env = Environment(loader=file_loader) template = env.get_template('core-site.xml.j2') output = template.render(IP = nodeIp , port = nodePort) file = open("./temp/core-site.xml", "w") file.write("%s" %(output)) file.close() def copyTemplate(nodeIP): subprocess.run(f'scp ./temp/hdfs-site.xml root@{nodeIP}:/root/hdfs-site.xml',shell=True) subprocess.run(f'scp ./temp/core-site.xml root@{nodeIP}:/root/core-site.xml',shell=True) def nameNode(nameNodeIP): nameNodeDirectory = namenode_directory nameNodePort = namenode_port hdfsSite('name',f'/root/{nameNodeDirectory}') coreSite(nameNodeIP,nameNodePort) copyTemplate(nameNodeIP) installtionScript('name',nameNodeDirectory) subprocess.run(f"ssh root@{nameNodeIP} 'bash -s' < ./temp/installationScript.sh",shell=True) return nameNodePort def dataNode(dataNodeIP,nameNodeIP,nameNodePort): dataNodeDirectory = datanode_directory hdfsSite('data',f'/root/{dataNodeDirectory}') coreSite(nameNodeIP,nameNodePort) copyTemplate(dataNodeIP) installtionScript('data',dataNodeDirectory) subprocess.run(f"ssh root@{dataNodeIP} 'bash -s' < ./temp/installationScript.sh",shell=True) def configure(): nameNodeIP = namenode_ip dataNodeIP = datanode_ip nameNodePort = nameNode(nameNodeIP) dataNode(dataNodeIP,nameNodeIP,nameNodePort) print("HADOOP CLUSTER SUCCESS") configure()
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68ef832af775f775cdb4bb4048470a320e163217
10,396
py
Python
module/cek_tanda_tangan_bap.py
riandakarizal/ITeung
2d3fc7e4974c9a9b67ff61f2a77a528988b55820
[ "MIT" ]
null
null
null
module/cek_tanda_tangan_bap.py
riandakarizal/ITeung
2d3fc7e4974c9a9b67ff61f2a77a528988b55820
[ "MIT" ]
37
2020-03-22T23:21:14.000Z
2020-09-16T15:07:06.000Z
module/cek_tanda_tangan_bap.py
riandakarizal/ITeung
2d3fc7e4974c9a9b67ff61f2a77a528988b55820
[ "MIT" ]
1
2020-09-08T11:31:30.000Z
2020-09-08T11:31:30.000Z
from module import kelas from lib import numbers, wa, reply, message import subprocess, config, os def getMateriFromJadwalID(jadwalid): db = kelas.dbConnectSiap() sql = f"select MP from simak_trn_presensi_dosen WHERE `JadwalID` = {jadwalid} ORDER BY Pertemuan ASC" with db: cur = db.cursor() cur.execute(sql) rows=cur.fetchall() if rows is not None: return rows else: return None def materiToList(materiTuple): materiData=[] for i in materiTuple: materiData.append(i[0]) return materiData def getListJadwalIDfromKaprodi(prodiID): db=kelas.dbConnectSiap() sql=f"select JadwalID from simak_trn_jadwal where TahunID={kelas.getTahunID()} and ProdiID='{prodiID}'" with db: cur = db.cursor() cur.execute(sql) rows=cur.fetchall() if rows is not None: return rows else: return None def getListJadwalIDfromDeputi(status, prodiid): db=kelas.dbConnectSiap() if status: sql=f"select JadwalID from simak_trn_jadwal where TahunID={kelas.getTahunID()} and ProdiID='{prodiid}'" else: sql=f"select JadwalID from simak_trn_jadwal where TahunID={kelas.getTahunID()}" with db: cur = db.cursor() cur.execute(sql) rows=cur.fetchall() if rows is not None: return rows else: return None def cekMateriPerkuliahan(jadwalid): MateriTuple = getMateriFromJadwalID(jadwalid) MateriToList = materiToList(MateriTuple) if None in MateriToList or '' in MateriToList: ret = False else: ret = True return ret def cekStatusBKDKaprodi(jadwalid): db=kelas.dbConnectSiap() sql=f'select BKD_Prodi from simak_trn_jadwal where JadwalID={jadwalid}' with db: cur=db.cursor() cur.execute(sql) row=cur.fetchone() if row[0] == 'true': return True else: return False def cekStatusBKDDeputi(jadwalid): db=kelas.dbConnectSiap() sql=f'select BKD_Deputi from simak_trn_jadwal where JadwalID={jadwalid}' with db: cur=db.cursor() cur.execute(sql) row=cur.fetchone() if row[0] == 'true': return True else: return False def infoBAPKaprodi(prodiid): JadwalIDDataProdi=getListJadwalIDfromKaprodi(prodiid) sudah=[] siap=[] belum=[] for jadwalid in JadwalIDDataProdi: statusmateri=cekMateriPerkuliahan(jadwalid[0]) statusttd=cekStatusBKDKaprodi(jadwalid[0]) if statusmateri == False and statusttd == False: belum.append(jadwalid[0]) elif statusmateri == True and statusttd == False: siap.append(jadwalid[0]) else: sudah.append(jadwalid[0]) msgsudah = '' for i in sudah: kelas_info = kelas.getMatakuliahInfowithJadwalID(i) msgsudah += f'{config.whatsapp_api_lineBreak}{kelas_info[0]} | {getNamaProdiFromProdiID(kelas_info[5].split(".")[1])} | {kelas_info[12]} | {kelas.getNamaDosen(kelas_info[21])}' msgsudah += f'{config.whatsapp_api_lineBreak}{config.whatsapp_api_lineBreak}' msgsiap = '' for i in siap: kelas_info = kelas.getMatakuliahInfowithJadwalID(i) msgsiap += f'{config.whatsapp_api_lineBreak}{kelas_info[0]} | {getNamaProdiFromProdiID(kelas_info[5].split(".")[1])} | {kelas_info[12]} | {kelas.getNamaDosen(kelas_info[21])}' msgsiap += f'{config.whatsapp_api_lineBreak}{config.whatsapp_api_lineBreak}' msgbelum = '' for i in belum: kelas_info = kelas.getMatakuliahInfowithJadwalID(i) msgbelum += f'{config.whatsapp_api_lineBreak}{kelas_info[0]} | {getNamaProdiFromProdiID(kelas_info[5].split(".")[1])} | {kelas_info[12]} | {kelas.getNamaDosen(kelas_info[21])}' msgbelum += f'{config.whatsapp_api_lineBreak}{config.whatsapp_api_lineBreak}' msgreply = f"BAP yang sudah ditandatangani ada: {len(sudah)} berkas{msgsudah}BAP yang siap ditandatangani ada: {len(siap)} berkas{msgsiap}BAP yang belum siap ditandatangani ada: {len(belum)} berkas{msgbelum}" return msgreply, sudah, siap, belum def infoBAPDeputi(msg): msgs=msg.split(' ')[-1] if msgs == 'all': JadwalIDDataDeputi=getListJadwalIDfromDeputi(False, '') else: JadwalIDDataDeputi=getListJadwalIDfromDeputi(True, getProdiIDfromSingkatan(msgs)) sudah=[] siap=[] belum=[] for jadwalid in JadwalIDDataDeputi: statusmateri=cekMateriPerkuliahan(jadwalid[0]) statusttd=cekStatusBKDDeputi(jadwalid[0]) if statusmateri == False and statusttd == False: belum.append(jadwalid[0]) elif statusmateri == True and statusttd == False: siap.append(jadwalid[0]) else: sudah.append(jadwalid[0]) msgsudah='' for i in sudah: kelas_info=kelas.getMatakuliahInfowithJadwalID(i) msgsudah+=f'{config.whatsapp_api_lineBreak}{kelas_info[0]} | {getNamaProdiFromProdiID(kelas_info[5].split(".")[1])} | {kelas_info[12]} | {kelas.getNamaDosen(kelas_info[21])}' msgsudah+=f'{config.whatsapp_api_lineBreak}{config.whatsapp_api_lineBreak}' msgsiap='' for i in siap: kelas_info=kelas.getMatakuliahInfowithJadwalID(i) msgsiap+=f'{config.whatsapp_api_lineBreak}{kelas_info[0]} | {getNamaProdiFromProdiID(kelas_info[5].split(".")[1])} | {kelas_info[12]} | {kelas.getNamaDosen(kelas_info[21])}' msgsiap += f'{config.whatsapp_api_lineBreak}{config.whatsapp_api_lineBreak}' msgbelum='' for i in belum: kelas_info=kelas.getMatakuliahInfowithJadwalID(i) msgbelum+=f'{config.whatsapp_api_lineBreak}{kelas_info[0]} | {getNamaProdiFromProdiID(kelas_info[5].split(".")[1])} | {kelas_info[12]} | {kelas.getNamaDosen(kelas_info[21])}' msgbelum += f'{config.whatsapp_api_lineBreak}{config.whatsapp_api_lineBreak}' msgreply=f"BAP yang sudah ditandatangani ada: {len(sudah)} berkas{msgsudah}BAP yang siap ditandatangani ada: {len(siap)} berkas{msgsiap}BAP yang belum siap ditandatangani ada: {len(belum)} berkas{msgbelum}" return msgreply, sudah, siap, belum def approveBAPDeputi(msg): msgs=msg.split(' ')[-1] if msgs == 'all': JadwalIDDataDeputi=getListJadwalIDfromDeputi(False, '') else: JadwalIDDataDeputi=getListJadwalIDfromDeputi(True, getProdiIDfromSingkatan(msgs)) sudah=[] siap=[] belum=[] for jadwalid in JadwalIDDataDeputi: statusmateri=cekMateriPerkuliahan(jadwalid[0]) statusttd=cekStatusBKDDeputi(jadwalid[0]) if statusmateri == False and statusttd == False: belum.append(jadwalid[0]) elif statusmateri == True and statusttd == False: siap.append(jadwalid[0]) else: sudah.append(jadwalid[0]) msgreply = f"BAP yang sudah ditandatangani ada: {len(sudah)} berkas%0ABAP yang siap ditandatangani ada: {len(siap)} berkas%0ABAP yang belum siap ditandatangani ada: {len(belum)} berkas" return msgreply, sudah, siap, belum def approveBAPKaprodi(prodiid): JadwalIDDataProdi=getListJadwalIDfromKaprodi(prodiid) sudah=[] siap=[] belum=[] for jadwalid in JadwalIDDataProdi: statusmateri=cekMateriPerkuliahan(jadwalid[0]) statusttd=cekStatusBKDKaprodi(jadwalid[0]) if statusmateri == False and statusttd == False: belum.append(jadwalid[0]) elif statusmateri == True and statusttd == False: siap.append(jadwalid[0]) else: sudah.append(jadwalid[0]) msgreply = f"BAP yang sudah ditandatangani ada: {len(sudah)} berkas%0ABAP yang siap ditandatangani ada: {len(siap)} berkas%0ABAP yang belum siap ditandatangani ada: {len(belum)} berkas" return msgreply, sudah, siap, belum def getNIPYfromHandphone(num): num=numbers.normalize(num) db=kelas.dbConnectSiap() sql=f'select NIPY from simak_mst_dosen where Handphone="{num}"' with db: cur=db.cursor() cur.execute(sql) row=cur.fetchone() if row is not None: return row[0] else: return None def getNamaProdiFromProdiID(prodiid): db=kelas.dbConnectSiap() sql=f'select Nama from simak_mst_prodi where ProdiID={prodiid}' with db: cur=db.cursor() cur.execute(sql) row=cur.fetchone() if row is not None: return row[0] else: return None def isDeputiAkademik(NIPY): db=kelas.dbConnectSiap() sql=f'select * from simak_mst_pejabat where NIPY="{NIPY}" and JenisJabatanID=9' with db: cur=db.cursor() cur.execute(sql) row=cur.fetchone() if row is not None: return True else: return False def isKaprodi(NIPY): db = kelas.dbConnectSiap() sql = f'select * from simak_mst_pejabat where NIPY="{NIPY}" and JenisJabatanID=5' with db: cur = db.cursor() cur.execute(sql) row = cur.fetchone() if row is not None: return True else: return False def auth(data): if isKaprodi(getNIPYfromHandphone(data[0])) or isDeputiAkademik(getNIPYfromHandphone(data[0])): return True else: return False def replymsg(driver, data): num=numbers.normalize(data[0]) msg=message.normalize(data[3]) data=f'{num};{msg}' wmsg = reply.getWaitingMessage(os.path.basename(__file__).split('.')[0]) wmsg = wmsg.replace('#BOTNAME#', config.bot_name) subprocess.Popen(["python", "run.py", os.path.basename(__file__).split('.')[0], data], cwd=config.cwd) return wmsg def run(data): num=data.split(';')[0] msg=data.split(';')[1] if isKaprodi(getNIPYfromHandphone(num)): status='kaprodi' else: status='deputi' if status == 'kaprodi': msgreply=infoBAPKaprodi(f'.{kelas.getAllDataDosens(kelas.getKodeDosen(num))[20]}.') else: msgreply=infoBAPDeputi(msg) wa.setOutbox(numbers.normalize(num), msgreply[0]) def getProdiIDfromSingkatan(singkatan): db=kelas.dbConnectSiap() sql=f"select ProdiID from simak_mst_prodi where Singkatan = '{singkatan}'" with db: cur=db.cursor() cur.execute(sql) row = cur.fetchone() if row: return f".{row[0]}." else: return None
35.60274
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10,396
5.657095
0.123311
0.040311
0.045685
0.069872
0.797104
0.787847
0.767543
0.752314
0.740072
0.740072
0
0.010833
0.227491
10,396
292
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35.60274
0.823185
0
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0.750973
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0.038911
0.289795
0.129941
0
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0.07393
false
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0
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6
68efa2f47f268526a9d0f5230984fd8a4c74294f
5,184
py
Python
tests/test_plasmid_extractor.py
lowandrew/Plasmid_Assembler
7366e5e5a88e3a87d164934de0c6a3ee51f241b3
[ "MIT" ]
5
2018-01-16T04:55:10.000Z
2020-10-23T08:59:52.000Z
tests/test_plasmid_extractor.py
lowandrew/Plasmid_Assembler
7366e5e5a88e3a87d164934de0c6a3ee51f241b3
[ "MIT" ]
null
null
null
tests/test_plasmid_extractor.py
lowandrew/Plasmid_Assembler
7366e5e5a88e3a87d164934de0c6a3ee51f241b3
[ "MIT" ]
3
2018-02-16T18:49:07.000Z
2021-06-20T06:45:02.000Z
import os import shutil """ Remaining things to test: find_plasmid_kmer_scores find_score filter_similar_plasmids generate_consensus """ parentdir = os.path.dirname(os.path.dirname(os.path.abspath(__file__))) os.sys.path.insert(0, parentdir) from plasmidextractor.PlasmidExtractor import * def test_mash_paired_gzipped(): mash_for_potential_plasmids(forward_reads='tests/test_fastqs/paired_R1.fastq.gz', reverse_reads='tests/test_fastqs/paired_R2.fastq.gz', plasmid_db='tests/test_fasta/dummy_db.fasta', output_dir='tests/mash', identity_cutoff=-1) assert os.path.isfile('tests/mash/screen_results.tsv') shutil.rmtree('tests/mash') def test_mash_unpaired_gzipped(): mash_for_potential_plasmids(forward_reads='tests/test_fastqs/paired_R1.fastq.gz', plasmid_db='tests/test_fasta/dummy_db.fasta', output_dir='tests/mash', identity_cutoff=-1) assert os.path.isfile('tests/mash/screen_results.tsv') shutil.rmtree('tests/mash') def test_mash_paired_uncompressed(): mash_for_potential_plasmids(forward_reads='tests/test_fastqs/paired_R1.fastq', reverse_reads='tests/test_fastqs/paired_R2.fastq', plasmid_db='tests/test_fasta/dummy_db.fasta', output_dir='tests/mash', identity_cutoff=-1) assert os.path.isfile('tests/mash/screen_results.tsv') shutil.rmtree('tests/mash') def test_mash_unpaired_uncompressed(): mash_for_potential_plasmids(forward_reads='tests/test_fastqs/paired_R1.fastq', plasmid_db='tests/test_fasta/dummy_db.fasta', output_dir='tests/mash', identity_cutoff=-1) assert os.path.isfile('tests/mash/screen_results.tsv') shutil.rmtree('tests/mash') def test_bait_and_trim_paired_gzipped(): bait_and_trim(forward_reads='tests/test_fastqs/paired_R1.fastq.gz', reverse_reads='tests/test_fastqs/paired_R2.fastq.gz', plasmid_db='tests/test_fasta/dummy_db.fasta', output_dir='tests/out') assert os.path.isfile('tests/out/plasmid_reads_R1.fastq.gz') and os.path.isfile('tests/out/plasmid_reads_R2.fastq.gz') shutil.rmtree('tests/out') def test_bait_and_trim_paired_uncompressed(): bait_and_trim(forward_reads='tests/test_fastqs/paired_R1.fastq', reverse_reads='tests/test_fastqs/paired_R2.fastq', plasmid_db='tests/test_fasta/dummy_db.fasta', output_dir='tests/out') assert os.path.isfile('tests/out/plasmid_reads_R1.fastq.gz') and os.path.isfile('tests/out/plasmid_reads_R2.fastq.gz') shutil.rmtree('tests/out') def test_bait_and_trim_unpaired_gzipped(): bait_and_trim(forward_reads='tests/test_fastqs/paired_R1.fastq.gz', plasmid_db='tests/test_fasta/dummy_db.fasta', output_dir='tests/out') assert os.path.isfile('tests/out/plasmid_reads_R1.fastq.gz') shutil.rmtree('tests/out') def test_bait_and_trim_unpaired_uncompressed(): bait_and_trim(forward_reads='tests/test_fastqs/paired_R1.fastq', plasmid_db='tests/test_fasta/dummy_db.fasta', output_dir='tests/out') assert os.path.isfile('tests/out/plasmid_reads_R1.fastq.gz') shutil.rmtree('tests/out') def test_bait_and_trim_paired_gzipped_lowmem(): bait_and_trim(forward_reads='tests/test_fastqs/paired_R1.fastq.gz', reverse_reads='tests/test_fastqs/paired_R2.fastq.gz', plasmid_db='tests/test_fasta/dummy_db.fasta', output_dir='tests/out', low_memory=True) assert os.path.isfile('tests/out/plasmid_reads_R1.fastq.gz') and os.path.isfile('tests/out/plasmid_reads_R2.fastq.gz') shutil.rmtree('tests/out') def test_bait_and_trim_unpaired_gzipped_lowmem(): bait_and_trim(forward_reads='tests/test_fastqs/paired_R1.fastq.gz', plasmid_db='tests/test_fasta/dummy_db.fasta', output_dir='tests/out', low_memory=True) assert os.path.isfile('tests/out/plasmid_reads_R1.fastq.gz') shutil.rmtree('tests/out') def test_fasta_write(): create_individual_fastas(plasmid_db='tests/test_fasta/dummy_db.fasta', potential_plasmid_list=['seq1'], output_dir='tests/fasta/') assert os.path.isfile('tests/fasta/seq1') and not os.path.isfile('tests/fasta/seq2') shutil.rmtree('tests/fasta') def test_fasta_kmerization(): kmerize_individual_fastas(potential_plasmid_list=['dummy_db.fasta'], fasta_dir='tests/test_fasta', output_dir='tests/kmerization') assert os.path.isfile('tests/kmerization/dummy_db.fasta.kmc_pre') and os.path.isfile('tests/kmerization/dummy_db.fasta.kmc_suf') shutil.rmtree('tests/kmerization')
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7
68f2c194115b15d0b37b208d612c93ce0b1eb749
1,418
py
Python
gs15_py/Inversion.py
Jajajzhh/Blockchain_EncryptionKasumi
604352a804433e482d754ab928aaacfd70cada04
[ "MIT" ]
null
null
null
gs15_py/Inversion.py
Jajajzhh/Blockchain_EncryptionKasumi
604352a804433e482d754ab928aaacfd70cada04
[ "MIT" ]
null
null
null
gs15_py/Inversion.py
Jajajzhh/Blockchain_EncryptionKasumi
604352a804433e482d754ab928aaacfd70cada04
[ "MIT" ]
null
null
null
#!/usr/bin/env python #Examples of irreductible polynomes 16 degree #x^16 + x^9 + x^8 + x^7 + x^6 + x^4 + x^3 + x^2 + 1 #x^16 + x^12 + x^3 + x^1 + 1 #x^16 + x^12 + x^7 + x^2 + 1 from sympy.polys.domains import ZZ from sympy.polys.galoistools import gf_gcdex, gf_strip def gf_inv(a): # irriducible polynomial # mod = 0x18f57 => x^16 + x^15 + x^11 + x^10 + x^9 + x^8 + x^6 + x^4 + x^2 + x^1 + 1 Polynome irreductible mod = [1,1,0,0,0,1,1,1,1,0,1,0,1,0,1,1,1] a = hextolist(a) s, t, g = gf_gcdex(ZZ.map(gf_strip(a)), ZZ.map(mod), 2 , ZZ) return listtohex(s) def gf_degree(a) : res = 0 a >>= 1 while (a != 0) : a >>= 1 res += 1 return res def gf_invert(a, mod) : v = mod g1 = 1 g2 = 0 j = gf_degree(a) - 8 while (a != 1) : if (j < 0) : a, v = v, a g1, g2 = g2, g1 j = -j a ^= v << j g1 ^= g2 << j a %= 256 # Emulating 8-bit overflow g1 %= 256 # Emulating 8-bit overflow j = gf_degree(a) - gf_degree(v) return g1 def hextolist(num) : outlist = [1 if num & (1 << (15-n)) else 0 for n in range(16)] return outlist def listtohex(bitlist) : out = 0 for bit in bitlist: out = (out << 1) | bit return out if __name__ == '__main__': a = 0xf48 s = gf_inv(a) print(hex(s)) b = 0x4ccd s = gf_inv(b) print(hex(s))
23.245902
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1,418
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112
23.633333
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0.245416
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68f420504667e37d1a0941ff619b2ce7a315791e
252
py
Python
bot/adapters/bitfinex.py
greenseedyo/triangular_arbitrage
813282715f2c9064a160948a0305b26e15ac1bab
[ "MIT" ]
3
2020-02-26T06:41:22.000Z
2020-06-18T02:22:11.000Z
bot/adapters/bitfinex.py
greenseedyo/triangular_arbitrage
813282715f2c9064a160948a0305b26e15ac1bab
[ "MIT" ]
null
null
null
bot/adapters/bitfinex.py
greenseedyo/triangular_arbitrage
813282715f2c9064a160948a0305b26e15ac1bab
[ "MIT" ]
1
2020-02-26T06:41:28.000Z
2020-02-26T06:41:28.000Z
# -*- coding: utf-8 -*- from bot.adapters.ccxt_adapter import CcxtAdapter from secrets import BITFINEX_KEY, BITFINEX_SECRET class BitfinexAdapter(CcxtAdapter): ccxt_module_name = 'bitfinex' apiKey = BITFINEX_KEY secret = BITFINEX_SECRET
22.909091
49
0.761905
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252
6.166667
0.633333
0.118919
0
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0.004717
0.15873
252
10
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25.2
0.867925
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1
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2
68f4f86882cc9b12d44b29372c5ed00acbd058e5
2,469
py
Python
pic2formula/polyline.py
s-col/pic2formula
0e254f98fca8dd22b5136d018cd33413baba85d5
[ "MIT" ]
null
null
null
pic2formula/polyline.py
s-col/pic2formula
0e254f98fca8dd22b5136d018cd33413baba85d5
[ "MIT" ]
null
null
null
pic2formula/polyline.py
s-col/pic2formula
0e254f98fca8dd22b5136d018cd33413baba85d5
[ "MIT" ]
null
null
null
import math import numpy as np from scipy import interpolate class Polyline(list): @staticmethod def _2Dcheck(value): if len(value) != 2: raise ValueError("Value must be 2-D.") def __init__(self): super().__init__() def __setitem__(self, key, value): self._2Dcheck(value) value = np.array(value, np.float64) super().__setitem__(key, value) def __str__(self): s = "" for value in self: s += "[" for v in value: s += str(v) + ", " s = s[:-2] + "], " s = "[{}]".format(s[:-2]) return s def append(self, value): self._2Dcheck(value) value = np.array(value, np.float64) super().append(value) def extend(self, sequence): for value in sequence: self.append(value) def length(self): res = 0 n = len(self) for i in range(n-1): e = self[i+1] - self[i] d = math.sqrt(np.dot(e, e)) res += d return res def get_x_arr(self): return np.array([p[0] for p in self]) def get_y_arr(self): return np.array([p[1] for p in self]) def bspline(self, k=2): c = np.array(self) n = c.shape[0] if n <= k: msg = "The number of points must be more than {}." raise ValueError(msg.format(k)) t = np.zeros(n+k+1, dtype=np.float64) t[n+1:] = 1 t[k:n+1] = np.linspace(0, 1, n-k+1) return interpolate.BSpline(t, c, k, axis=0) def closed_bspline(self, epsilon=2, k=2): pl = self._close_polyline(epsilon=epsilon) c = np.array(pl) if np.any(c[0, :] != c[-1, :]): c = np.vstack((c, c[0, :])) c = np.vstack((c, c[1:k, :])) n = c.shape[0] dt = 1 / (n - k) t0 = - k * dt tm = 1 + k * dt t = np.linspace(t0, tm, n+k+1) return interpolate.BSpline(t, c, k, axis=0) def _close_polyline(self, epsilon): """ 折れ線を閉じる """ res = self.copy() r = self[-1] - self[0] delta = math.sqrt(r[0] ** 2 + r[1] ** 2) if delta < epsilon: res.append(self[0]) else: tmp = res[:-1] tmp.reverse() res.extend(tmp) return res
26.548387
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0.45565
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2,469
3.272455
0.260479
0.038426
0.008234
0.038426
0.247027
0.203111
0.164684
0.164684
0.164684
0.164684
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0.032952
0.397732
2,469
92
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26.836957
0.702085
0.002835
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0
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0
0
1
0
68f5649c62aa4f43394924b3ae19b877c4eef1be
188
py
Python
create_db.py
rdclif/GCloud-WebProject
5e548cce536ed71ae5f0a1641c95e9ce3b08a912
[ "CNRI-Python" ]
null
null
null
create_db.py
rdclif/GCloud-WebProject
5e548cce536ed71ae5f0a1641c95e9ce3b08a912
[ "CNRI-Python" ]
null
null
null
create_db.py
rdclif/GCloud-WebProject
5e548cce536ed71ae5f0a1641c95e9ce3b08a912
[ "CNRI-Python" ]
null
null
null
from main import db from main import Visit from main import sqlalchemy if __name__ == '__main__': print('Creating all database tables...') x = db.create_all() print('Done!')
18.8
44
0.68617
26
188
4.615385
0.615385
0.2
0.35
0
0
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0.202128
188
10
45
18.8
0.8
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3
68f9926a1a6cee5c7b3808e4d3e51e60201ff9cc
122
py
Python
pycantonese/tests/__init__.py
chaaklau/pycantonese
94694fea2f3c3405d3b6bb6d504a56bb05a6496c
[ "MIT" ]
124
2019-08-12T13:10:43.000Z
2022-03-24T18:35:58.000Z
pycantonese/tests/__init__.py
chaaklau/pycantonese
94694fea2f3c3405d3b6bb6d504a56bb05a6496c
[ "MIT" ]
13
2019-09-03T17:08:49.000Z
2021-12-28T21:37:17.000Z
pycantonese/tests/__init__.py
chaaklau/pycantonese
94694fea2f3c3405d3b6bb6d504a56bb05a6496c
[ "MIT" ]
15
2019-08-09T04:03:01.000Z
2022-03-17T10:18:21.000Z
import os _THIS_DIR = os.path.dirname(os.path.realpath(__file__)) REPO_DIR = os.path.dirname(os.path.dirname(_THIS_DIR))
24.4
55
0.778689
21
122
4.095238
0.428571
0.27907
0.453488
0.372093
0.511628
0.511628
0
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0
0
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0.07377
122
4
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30.5
0.761062
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0
0
1
0
0
0
0
6
68fb355cda715a722270422ee795218d8af71a03
3,824
py
Python
seed.py
thereals0beit/aria2-batch-downloader
22503c4c4c0cf6dbe74c83de1c2932bb4753598f
[ "MIT" ]
2
2017-03-30T22:49:28.000Z
2019-05-16T07:39:31.000Z
seed.py
thereals0beit/aria2-batch-downloader
22503c4c4c0cf6dbe74c83de1c2932bb4753598f
[ "MIT" ]
null
null
null
seed.py
thereals0beit/aria2-batch-downloader
22503c4c4c0cf6dbe74c83de1c2932bb4753598f
[ "MIT" ]
5
2015-09-05T00:48:51.000Z
2020-08-19T02:32:28.000Z
#!/usr/bin/env python import sys import subprocess import urllib2 import base64 import re import os.path from bs4 import BeautifulSoup, NavigableString USERNAME = "YOUR_USERNAME" PASSWORD = "YOUR_PASSWORD" def startAndWaitForAria(chdir, url): if os.path.exists(chdir) is not True: print "Path {0} does not exist, attempting to create".format(chdir) try: os.makedirs(chdir) except: print "Failed to make directory, exiting" return os.chdir(chdir) print "Downloading: {0} to {1}".format(url, chdir) p = subprocess.Popen(['/usr/bin/aria2c', '-s16', '-x16', '-k1M', '--check-certificate=false', '--http-user={0}'.format(USERNAME), '--http-passwd={0}'.format(PASSWORD), url]) p.wait() def findFilesWithPattern(cwd, baseurl, pattern): downloadList = [] data = downloadAuthFile(baseurl) if data is None: return downloadList data = data.read() soup = BeautifulSoup(data) table = soup.select('table') if len(table): for tr in table[0].find_all('tr'): if len(tr.contents) < 4: print "Incompatible HTTP list type" continue # Name Last Modified Size Type dlname = tr.contents[0] dltype = tr.contents[3] if dlname is None or dltype is None: print "Parse error #1" continue if type(dlname.next_element) is NavigableString: continue dlurl = dlname.next_element if dlurl is None: print "Parse error #2" continue # I added pattern check because if we're pattern matching we probably only want things from one directory # Recursion here could end up causing weird problems, especially if we're using it to download files from a root folder for example # It would traverse all the directories and end up downloading every file on the entire box that matched. Not good. # I will probably add a -r switch or something for this specific purpose if dltype.text.startswith('Directory') and dlurl['href'].startswith('.') is not True and pattern is None: newcwd = cwd + urllib2.unquote(dlurl['href']) print "Directory: " + newcwd downloadList = downloadList + findFilesWithPattern(newcwd, "{0}{1}".format(baseurl, dlurl['href']), pattern) else: filename = dlurl.contents[0] href = dlurl['href'] if pattern is not None: if pattern.findall(filename): p = [cwd, "{0}{1}".format(baseurl, href)] downloadList.append(p) else: if href.startswith('.') is not True: p = [cwd, "{0}{1}".format(baseurl, href)] downloadList.append(p) return downloadList def getBasicAuthString(): return base64.encodestring('%s:%s' % (USERNAME, PASSWORD)).replace('\n', '') def downloadFileList(downloads): if len(downloads) > 0: for f in downloads: startAndWaitForAria(f[0], f[1]) else: print "No files found in directory!" def singleFileDownload(url): if url.endswith('/'): downloadFileList(findFilesWithPattern(os.getcwd() + '/', url, None)) else: startAndWaitForAria(os.getcwd() + '/', url) def multiRegexDownload(url, reg): if url.endswith('/') is not True: print "This mode only supports directories!" else: downloadFileList(findFilesWithPattern(os.getcwd() + '/', url, re.compile(reg))) def downloadAuthFile(url): request = urllib2.Request(url) request.add_header("Authorization", "Basic %s" % getBasicAuthString()) try: return urllib2.urlopen(request) except urllib2.URLError, e: print "URL Error ({0}): {1}".format(e.errno, e.strerror) except urllib2.HTTPError, e: print "HTTP Error ({0}): {1}".format(e.errno, e.strerror) except: print "Unknown Exception: ", sys.exc_info()[0] return None if len(sys.argv) == 2: singleFileDownload(sys.argv[1]) elif len(sys.argv) == 3: multiRegexDownload(sys.argv[1], sys.argv[2]) else: print "Parameter mismatch: Please enter URL to either a file, or a directory with an optional regex pattern"
28.325926
174
0.695868
522
3,824
5.084291
0.377395
0.015825
0.015072
0.016956
0.125848
0.057272
0.057272
0.057272
0.057272
0.03165
0
0.01518
0.173117
3,824
135
175
28.325926
0.824162
0.122646
0
0.206186
0
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0.174925
0.007463
0
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null
null
0.030928
0.072165
null
null
0.134021
0
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null
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0
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0
1
0
0
0
0
0
0
0
0
1
68fc81206a378d15958f90dac2d8f1cdad2053ed
396
py
Python
python/ql/test/query-tests/Classes/should-be-context-manager/should_be_context_manager.py
vadi2/codeql
a806a4f08696d241ab295a286999251b56a6860c
[ "MIT" ]
4,036
2020-04-29T00:09:57.000Z
2022-03-31T14:16:38.000Z
python/ql/test/query-tests/Classes/should-be-context-manager/should_be_context_manager.py
vadi2/codeql
a806a4f08696d241ab295a286999251b56a6860c
[ "MIT" ]
2,970
2020-04-28T17:24:18.000Z
2022-03-31T22:40:46.000Z
python/ql/test/query-tests/Classes/should-be-context-manager/should_be_context_manager.py
ScriptBox99/github-codeql
2ecf0d3264db8fb4904b2056964da469372a235c
[ "MIT" ]
794
2020-04-29T00:28:25.000Z
2022-03-30T08:21:46.000Z
#Should be context manager class MegaDel(object): def __del__(self): a = self.x + self.y if a: print(a) if sys._getframe().f_lineno > 100: print("Hello") sum = 0 for a in range(100): sum += a print(sum) class MiniDel(object): def close(self): pass def __del__(self): self.close()
18
42
0.494949
50
396
3.72
0.58
0.096774
0.107527
0
0
0
0
0
0
0
0
0.029167
0.393939
396
22
43
18
0.745833
0.063131
0
0.125
0
0
0.013477
0
0
0
0
0
0
1
0.1875
false
0.0625
0
0
0.3125
0.1875
0
0
0
null
0
0
0
0
0
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0
0
0
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0
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0
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0
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0
0
0
0
0
null
0
0
0
0
0
0
0
1
0
0
0
0
0
1
68fe5357f2994a0a75698eb8a8e7824b9a9f7c44
2,592
py
Python
season_crawler.py
charmoky/f1_crawler
c4edec5d0a19283690347fc9ed21c454e5db2d4b
[ "MIT" ]
null
null
null
season_crawler.py
charmoky/f1_crawler
c4edec5d0a19283690347fc9ed21c454e5db2d4b
[ "MIT" ]
null
null
null
season_crawler.py
charmoky/f1_crawler
c4edec5d0a19283690347fc9ed21c454e5db2d4b
[ "MIT" ]
null
null
null
import requests from bs4 import BeautifulSoup import lxml import re import ast import urllib.parse as urllib class season_crawler(): def __init__(self, url): self.url = url self.hostname = urllib.urlparse(url).hostname self.source = requests.get(url).text self.soup = BeautifulSoup(self.source, 'html.parser') def get_calendar(self): calendar = {} # Find out where the calendar is h2s = self.soup.select('h2') for h2 in h2s: if h2.text == "Calendar": div = h2.parent # Find out where the event and date are table = div.find('table') table_head = table.find('thead') date_idx = 0 gp_idx = 0 idx = 0 rows = table_head.find_all('tr') for row in rows: cols = row.find_all('th') for col in cols: if col.text == "Date": date_idx = idx if col.text == "Event": gp_idx = idx idx = idx + 1 tables_body = table.find_all('tbody') for table in tables_body: rows = table.find_all('tr') for row in rows: cols = row.find_all('td') links = cols[gp_idx].select('a') for link in links: link = link.get("href") break link = link.replace("/classification", "/session-facts") calendar[cols[gp_idx].text] = ["http://" + self.hostname + link, cols[date_idx].text] return calendar def get_drivers(self): drivers = [] # Find out where the Drivers are h2s = self.soup.select('h2') for h2 in h2s: if h2.text == "Entry List": div = h2.parent # Find out where the drivers are table = div.find('table') table_head = table.find('thead') driver_idx = 0 idx = 0 rows = table_head.find_all('tr') for row in rows: cols = row.find_all('th') for col in cols: if col.text == "Drivers": driver_idx = idx idx = idx + 1 tables_body = table.find_all('tbody') for table in tables_body: rows = table.find_all('tr') for row in rows: cols = row.find_all('td') drivers.append(cols[driver_idx].text) return drivers
28.483516
101
0.486497
305
2,592
4.019672
0.255738
0.057096
0.039152
0.04894
0.500816
0.500816
0.474715
0.4323
0.4323
0.4323
0
0.013201
0.415509
2,592
90
102
28.8
0.79604
0.050154
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0.470588
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0.044118
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0
0.088235
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0
68ff13e3e208e09b794739d2c907043aabd15844
130
py
Python
sudoku/python/sudoku.py
sandos/MastersOfCode
582e372901857b853eb50435298001e378b45e0f
[ "Unlicense" ]
null
null
null
sudoku/python/sudoku.py
sandos/MastersOfCode
582e372901857b853eb50435298001e378b45e0f
[ "Unlicense" ]
null
null
null
sudoku/python/sudoku.py
sandos/MastersOfCode
582e372901857b853eb50435298001e378b45e0f
[ "Unlicense" ]
null
null
null
import csv with open("../sudoku.csv", "r") as csvfile: reader = csv.reader(csvfile) for row in reader: print row
18.571429
43
0.615385
19
130
4.210526
0.684211
0
0
0
0
0
0
0
0
0
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0.253846
130
7
44
18.571429
0.824742
0
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0.10687
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0
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0
3
68ffd02431b608770d9cb6427c85ad56bdc7189e
1,921
py
Python
cogs/clock/cog.py
DenverCoder1/weasley-chess-bot
70d6250cf2eea4faceacf3a809f38d8cc6f19059
[ "MIT" ]
2
2021-05-05T16:06:38.000Z
2021-05-05T19:21:30.000Z
cogs/clock/cog.py
DenverCoder1/weasley-chess-bot
70d6250cf2eea4faceacf3a809f38d8cc6f19059
[ "MIT" ]
7
2021-06-22T21:36:29.000Z
2022-01-21T19:15:58.000Z
cogs/clock/cog.py
DenverCoder1/weasley-chess-bot
70d6250cf2eea4faceacf3a809f38d8cc6f19059
[ "MIT" ]
null
null
null
import config import discord from discord.errors import HTTPException from discord.ext import commands from discord.ext.tasks import loop from .clock import ( clock_embed, get_or_create_message, new_channel_name, get_embed_title, ) class Clock(commands.Cog, name="🕒 Clock"): def __init__(self, bot: commands.Bot): self.__bot = bot @commands.Cog.listener() async def on_ready(self): """When discord is connected""" # Start clock self.clock.start() print("Starting clock...") @loop(seconds=1) async def clock(self): """Loop to check and update clock""" # update the clock message try: embed = clock_embed() # update only if the time is different if embed.title != get_embed_title(self.__message): # edit the message await self.__message.edit(embed=embed) except HTTPException: # if message doesn't exist, create a new one self.__message = await get_or_create_message(self.__bot, self.__channel) # update channel name if it has changed channel_name = new_channel_name() if self.__channel.name != channel_name: await self.__channel.edit(name=channel_name) @clock.before_loop async def clock_init(self) -> None: """print startup info before reddit feed loop begins""" # get clock channel object self.__channel = self.__bot.get_channel(config.CLOCK_CHANNEL_ID) # check that channel exists if not isinstance(self.__channel, discord.TextChannel): print("Couldn't find that channel.") return self.clock.cancel() # if channel exists, get the last message from the bot or create one self.__message = await get_or_create_message(self.__bot, self.__channel) def setup(bot): bot.add_cog(Clock(bot))
32.559322
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0
ec006c8af6686f4d727533bc4bdf28b8f92b3527
6,989
py
Python
Ellie_Lambda_Introductory_Convo.py
dodobirb/Project_2_ETF_Lex_RoboAdvisor
f8e1a5143e74c0dc6f8bef1ed6d4b4fbd6c66739
[ "MIT" ]
null
null
null
Ellie_Lambda_Introductory_Convo.py
dodobirb/Project_2_ETF_Lex_RoboAdvisor
f8e1a5143e74c0dc6f8bef1ed6d4b4fbd6c66739
[ "MIT" ]
null
null
null
Ellie_Lambda_Introductory_Convo.py
dodobirb/Project_2_ETF_Lex_RoboAdvisor
f8e1a5143e74c0dc6f8bef1ed6d4b4fbd6c66739
[ "MIT" ]
null
null
null
### Required Libraries ### from datetime import datetime from dateutil.relativedelta import relativedelta from botocore.vendored import requests ### Functionality Helper Functions ### def parse_float(n): """ Securely converts a non-numeric value to float. """ try: return float(n) except ValueError: return float("nan") def build_validation_result(is_valid, violated_slot, message_content): """ Defines an internal validation message structured as a python dictionary. """ if message_content is None: return {"isValid": is_valid, "violatedSlot": violated_slot} return { "isValid": is_valid, "violatedSlot": violated_slot, "message": {"contentType": "PlainText", "content": message_content}, } def validate_data(birthdate, term, intent_request): birthdate = get_slots(intent_request)["birthdate"] term = get_slots(intent_request)["term"] """ Validates the data provided by the user. """ # Validate that the user is over 18 years old if birthdate is not None: birth_date = datetime.strptime(birthdate, "%Y-%m-%d") age = relativedelta(datetime.now(), birth_date).years if age < 18: return build_validation_result( False, "birthdate", "You should be at least 18 years old to use this service, " "please provide a different date of birth.", ) #Validate term length (short or long) if term is not None: if term.lower() not in {"short", "long"}: return build_validation_result( False, "term", "I don't understand. Please enter short or long." ) return build_validation_result(True, True, None) ### Dialog Actions Helper Functions ### def get_slots(intent_request): """ Fetch all the slots and their values from the current intent. """ return intent_request["currentIntent"]["slots"] def elicit_slot(session_attributes, intent_name, slots, slot_to_elicit, message): """ Defines an elicit slot type response. """ return { "sessionAttributes": session_attributes, "dialogAction": { "type": "ElicitSlot", "intentName": intent_name, "slots": slots, "slotToElicit": slot_to_elicit, "message": message, }, } def delegate(session_attributes, slots): """ Defines a delegate slot type response. """ return { "sessionAttributes": session_attributes, "dialogAction": {"type": "Delegate", "slots": slots}, } def close(session_attributes, fulfillment_state, message): """ Defines a close slot type response. """ response = { "sessionAttributes": session_attributes, "dialogAction": { "type": "Close", "fulfillmentState": fulfillment_state, "message": message, }, } return response ### Intents Handlers ### def ellie_conversation(intent_request): """ Performs dialog management and fulfillment for converting from dollars to bitcoin. """ # Gets slots' values birthdate = get_slots(intent_request)["birthdate"] term_length = get_slots(intent_request)["term"] risk_level = get_slots(intent_request)["risk"] term_len_num = 0 # Gets the invocation source, for Lex dialogs "DialogCodeHook" is expected. source = intent_request["invocationSource"] if source == "DialogCodeHook": # This code performs basic validation on the supplied input slots. # Gets all the slots slots = get_slots(intent_request) # Validates user's input using the validate_data function validation_result = validate_data(birthdate, term_length, intent_request) # If the data provided by the user is not valid, # the elicitSlot dialog action is used to re-prompt for the first violation detected. if not validation_result["isValid"]: slots[validation_result["violatedSlot"]] = None # Cleans invalid slot # Returns an elicitSlot dialog to request new data for the invalid slot return elicit_slot( intent_request["sessionAttributes"], intent_request["currentIntent"]["name"], slots, validation_result["violatedSlot"], validation_result["message"], ) # Fetch current session attributes output_session_attributes = intent_request["sessionAttributes"] # Once all slots are valid, a delegate dialog is returned to Lex to choose the next course of action. return delegate(output_session_attributes, get_slots(intent_request)) if term_length is not None: if term_length.lower() == "short": term_len_num = 10 elif term_length.lower() == "long": term_len_num = 20 if risk_level is not None: if risk_level.lower() == "none": risk_lev_num = 1 elif risk_level.lower() == "low": risk_lev_num = 2 elif risk_level.lower() == "medium": risk_lev_num = 3 elif risk_level.lower() =="high": risk_lev_num = 4 allocation = term_len_num + risk_lev_num if allocation in {11, 12, 21, 22}: return close( intent_request["sessionAttributes"], "Fulfilled", { "contentType": "PlainText", "content" : "Your ideal portfolio should be 40% stocks and 60% bonds. Which would you like to explore first?" }) elif allocation in {13, 14, 23, 24}: return close( intent_request["sessionAttributes"], "Fulfilled", { "contentType": "PlainText", "content": "Your ideal portfolio should be 80% stocks and 20% bonds. Which would you like to explore first?" }) ### Intents Dispatcher ### def dispatch(intent_request): """ Called when the user specifies an intent for this bot. """ # Get the name of the current intent intent_name = intent_request["currentIntent"]["name"] # Dispatch to bot's intent handlers if intent_name == "EllieIntro": return ellie_conversation(intent_request) raise Exception("Intent with name " + intent_name + " not supported") ### Main Handler ### def lambda_handler(event, context): """ Route the incoming request based on intent. The JSON body of the request is provided in the event slot. """ return dispatch(event)
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6,989
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1
0
ec01276c37a7b31604c880dcb9890eab8f123340
876
py
Python
Algoritma/radixSort.py
SyamsulAlterra/Alta
13e8c185e91414e3f46e5d20f39370f8e58e7cd0
[ "MIT" ]
null
null
null
Algoritma/radixSort.py
SyamsulAlterra/Alta
13e8c185e91414e3f46e5d20f39370f8e58e7cd0
[ "MIT" ]
6
2021-09-02T18:50:40.000Z
2022-02-27T11:06:31.000Z
Algoritma/radixSort.py
SyamsulAlterra/Alta
13e8c185e91414e3f46e5d20f39370f8e58e7cd0
[ "MIT" ]
null
null
null
arr=[123,321,487,908,123,465,987,46,762,12389] def findMax(arr): Max=None for num in arr: if Max==None or num>Max: Max=num return Max def checkDigit(num): i=0 remainder=0 while (remainder!=num): i+=1 remainder=num%(10**i) return i def digit(i,num): return int((num%(10**i)-num%(10**(i-1)))/(10**(i-1))) def radix(arr): digitMax=checkDigit(findMax(arr)) currentDigit=0 while(currentDigit<=digitMax): currentDigit+=1 lst=[[],[],[],[],[],[],[],[],[],[]] for num in arr: numberDigit=digit(currentDigit,num) if checkDigit(num)<currentDigit: lst[0].append(num) else: lst[numberDigit].append(num) arr=[] for l in lst: arr+=l print(lst) return arr print(radix(arr))
21.365854
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0.312785
876
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0
ec029f2e7581e96d907379e0c7b77a55feafa39c
577
py
Python
users/urls.py
pauloaugusto-dmf/blog_django
7374e85dd4f0622aefbbb99d27ceb85f19fd1cd8
[ "MIT" ]
2
2021-12-31T22:14:31.000Z
2021-12-31T22:14:34.000Z
users/urls.py
pauloaugusto-dmf/blog_django
7374e85dd4f0622aefbbb99d27ceb85f19fd1cd8
[ "MIT" ]
null
null
null
users/urls.py
pauloaugusto-dmf/blog_django
7374e85dd4f0622aefbbb99d27ceb85f19fd1cd8
[ "MIT" ]
null
null
null
from django.urls import path from .views import ( UserLoginView, UserLogoutView, UserSignupView, UserUpdateView, UserDeleteView, UserProfileView, ) app_name = "user" urlpatterns = [ path("signup", UserSignupView.as_view(), name="signup"), path("update", UserUpdateView.as_view(), name="update"), path("delete", UserDeleteView.as_view(), name="delete"), path("login", UserLoginView.as_view(), name="login"), path("logout", UserLogoutView.as_view(), name="logout"), path("profile", UserProfileView.as_view(), name="profile"), ]
26.227273
63
0.679376
60
577
6.416667
0.4
0.093506
0.155844
0
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0.157712
577
21
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27.47619
0.792181
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1
0
ec037e8ff41b312d1239dc04d766e9f4b8fe7357
391
py
Python
petstagram/core/views.py
BoyanPeychinov/python_web_basics
2f892ac119f7fe3a5c03fc5e7b35670dc609a70f
[ "MIT" ]
1
2021-07-20T12:16:34.000Z
2021-07-20T12:16:34.000Z
petstagram/core/views.py
BoyanPeychinov/python_web_basics
2f892ac119f7fe3a5c03fc5e7b35670dc609a70f
[ "MIT" ]
null
null
null
petstagram/core/views.py
BoyanPeychinov/python_web_basics
2f892ac119f7fe3a5c03fc5e7b35670dc609a70f
[ "MIT" ]
null
null
null
from django.views import View class PostOnlyView(View): form_class = None def post(self, request, *args, **kwargs): form = self.form_class(request.POST) if form.is_valid(): return self.form_valid(form) else: return self.form_invalid(form) def form_valid(self, form): pass def form_invalid(self, form): pass
21.722222
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4.6
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0
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0.296675
391
18
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false
0.153846
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1
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0
1
0
0
3
ec03beeeb8e83dd9401f7dcd95618bf9eb96ca5c
7,232
py
Python
utils/image_processing.py
ebritsyn/obormot
de05707d0a9b7a8de813ee8e1104dea02caeb236
[ "MIT" ]
3
2017-12-09T16:16:18.000Z
2020-05-05T12:01:53.000Z
utils/image_processing.py
ebritsyn/obormot
de05707d0a9b7a8de813ee8e1104dea02caeb236
[ "MIT" ]
null
null
null
utils/image_processing.py
ebritsyn/obormot
de05707d0a9b7a8de813ee8e1104dea02caeb236
[ "MIT" ]
null
null
null
import io import cv2 import numpy as np import tensorflow as tf from PIL import Image from keras.models import model_from_json import dlib class Model: """This class represents the base model of the whole project. The model predicts if the face on the picture is smiling or not. The model and its weights are being loaded from data/model/. The main method of the class is predict_labels(), which takes an input image, finds faces in this image, draws their boundary boxes and labels these faces by adding corresponding emojis on the picture. """ def __init__(self): self.smiley = cv2.imread('data/pics/smiling.png') self.neutral = cv2.imread('data/pics/neutral.png') self.smiley = cv2.cvtColor(self.smiley, cv2.COLOR_BGR2RGB) self.neutral = cv2.cvtColor(self.neutral, cv2.COLOR_BGR2RGB) self.model = model_from_json(open('data/model/model.json').read()) self.model.load_weights('data/model/weights.h5') self.graph = tf.get_default_graph() @staticmethod def convert2rgb(img): """Convert BGR image into RGB Parameters: img: ndarray :rtype: ndarray """ return cv2.cvtColor(img, cv2.COLOR_BGR2RGB) @staticmethod def rect_to_bb(rect): """Returns rectangle parameters from rectangle object Parameters: rect: object :rtype: list """ rect_x = rect.left() rect_y = rect.top() rect_w = rect.right() - rect_x rect_h = rect.bottom() - rect_y return rect_x, rect_y, rect_w, rect_h def get_faces(self, img): """Find faces in the picture and return list of boundary boxes of found faces Parameters: img: ndarray :rtype: list """ image = img detector = dlib.get_frontal_face_detector() gray = cv2.cvtColor(image, cv2.COLOR_BGR2GRAY) rects = detector(gray, 1) faces = [] for rect in rects: faces.append(list(self.rect_to_bb(rect))) return faces def get_smile_label(self, img_face): """Predict smile on a face and return label (0 for neutral and 1 for smiling face) Parameters: img_face: ndarray :rtype: int """ gray_cr_res = cv2.cvtColor(cv2.resize(img_face, (32, 32)), cv2.COLOR_BGR2GRAY) gray_cr_res = np.reshape(gray_cr_res, (32, 32, 1)) / 255 with self.graph.as_default(): score = self.model.predict(np.array([gray_cr_res]))[0][1] threshold = 0.12 if score > threshold: label = 1 else: label = 0 return label @staticmethod def get_sticker_backgr(backgr, sticker): """Merge a sticker and its background and return merged image Parameters: backgr: ndarray sticker: ndarray :rtype: ndarray """ sticker_gray = cv2.cvtColor(sticker, cv2.COLOR_BGR2GRAY) _, mask = cv2.threshold(sticker_gray, 10, 255, cv2.THRESH_BINARY) mask_inv = cv2.bitwise_not(mask) backgr_bg = cv2.bitwise_and(backgr, backgr, mask=mask_inv) sticker_fg = cv2.bitwise_and(sticker, sticker, mask=mask) merged = cv2.add(backgr_bg, sticker_fg) return merged @staticmethod def crop_face(bound_box, img): """Crop face from the input image according to its boundary box Parameters: bound_box: list img: ndarray :rtype: ndarray """ f_x, f_y, f_w, f_h = bound_box top, bottom, left, right = 0, 0, 0, 0 if f_y < 0: top = - f_y f_y = 0 if f_x < 0: left = - f_x f_x = 0 if f_x + f_w > img.shape[1]: right = f_x + f_w - img.shape[1] f_w -= right if f_y + f_h > img.shape[0]: bottom = f_y + f_h - img.shape[0] f_h -= bottom img_cropped = img[f_y:f_y + f_h, f_x:f_x + f_w] img_cropped = cv2.copyMakeBorder(img_cropped, top, bottom, left, right, cv2.BORDER_REPLICATE) return img_cropped def add_stickers(self, img, faces, labels): """Add emoji sticker in the input picture according to predicted smile labels Parameters: img: ndarray of input image faces: list of boundary boxes labels: list of smile labels :rtype: ndarray """ image = np.array(img) for i, label in enumerate(labels): if faces[i][0] < 0: faces[i][2] += faces[i][0] faces[i][0] = 0 if faces[i][1] < 0: faces[i][3] += faces[i][1] faces[i][1] = 0 if faces[i][0] + faces[i][2] > image.shape[1]: faces[i][2] = image.shape[1] - faces[i][0] if faces[i][1] + faces[i][3] > image.shape[0]: faces[i][3] = image.shape[0] - faces[i][1] st_size = int(min(faces[i][2], faces[i][3]) // 2.2) smiley = cv2.resize(self.smiley, (st_size, st_size)) neutral = cv2.resize(self.neutral, (st_size, st_size)) y_1 = faces[i][1] + faces[i][3] - st_size y_2 = faces[i][1] + faces[i][3] x_1 = faces[i][0] + faces[i][2] - st_size x_2 = faces[i][0] + faces[i][2] if label == 1: image[y_1:y_2, x_1:x_2] = \ self.get_sticker_backgr(image[y_1:y_2, x_1:x_2], smiley) else: image[y_1:y_2, x_1:x_2] = \ self.get_sticker_backgr(image[y_1:y_2, x_1:x_2], neutral) return image def predict_labels(self, img): """Predict if there smiles on picture and label faces with corresponding emoji Parameters: img: ndarray of input image :rtype: ndarray """ image = self.bytes2ndarray(img) faces = self.get_faces(image) num_faces = len(faces) labels = [] if num_faces == 0: return num_faces, image for bound_box in faces: img_cropped = self.crop_face(bound_box, image) label = self.get_smile_label(img_cropped) labels.append(label) color = (0, 255, 0) for (f_x, f_y, f_w, f_h) in faces: cv2.rectangle(image, (f_x, f_y), (f_x + f_w, f_y + f_h), color, 2) image = self.add_stickers(image, faces, labels) return num_faces, self.ndarray2bytes(image) @staticmethod def ndarray2bytes(array): """Convert image into bytes Parameters: array: ndarray :rtype: io.BytesIO """ buf = io.BytesIO() Image.fromarray(array).save(buf, format="jpeg") return buf @staticmethod def bytes2ndarray(buf): """Convert image into bytes Parameters: buf: io.BytesIO :rtype: ndarray """ image = np.array(Image.open(buf)) return image
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0
ec04ace165066b72928eb9637889dba57eabd704
498
py
Python
dumbtils/_c1.py
paaksing/dumbtils
6d19bf5daa4f87b0f732ebbbec90a7327b672da9
[ "MIT" ]
null
null
null
dumbtils/_c1.py
paaksing/dumbtils
6d19bf5daa4f87b0f732ebbbec90a7327b672da9
[ "MIT" ]
null
null
null
dumbtils/_c1.py
paaksing/dumbtils
6d19bf5daa4f87b0f732ebbbec90a7327b672da9
[ "MIT" ]
null
null
null
import sys import signal from functools import partial def handler(counters, signum, *args): print(f"C1 received signal {signum}") counters["i"] += 1 if counters["i"] == 10: sys.exit() def main(): counters = {"i": 0} if sys.platform.startswith("linux"): signal.signal(signal.SIGALRM, partial(handler, counters)) else: signal.signal(signal.SIGBREAK, partial(handler, counters)) while True: pass if __name__ == '__main__': main()
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ec05ae5f172a76ae27b1aab78fa3fe888df7828e
30,898
py
Python
antipetros_discordbot/cogs/general_cogs/image_manipulation_cog.py
official-antistasi-community/Antipetros_Discord_Bot
1b5c8b61c09e61cdff671e259f0478d343a50c8d
[ "MIT" ]
null
null
null
antipetros_discordbot/cogs/general_cogs/image_manipulation_cog.py
official-antistasi-community/Antipetros_Discord_Bot
1b5c8b61c09e61cdff671e259f0478d343a50c8d
[ "MIT" ]
null
null
null
antipetros_discordbot/cogs/general_cogs/image_manipulation_cog.py
official-antistasi-community/Antipetros_Discord_Bot
1b5c8b61c09e61cdff671e259f0478d343a50c8d
[ "MIT" ]
1
2021-02-12T01:10:51.000Z
2021-02-12T01:10:51.000Z
# region [Imports] # * Standard Library Imports ----------------------------------------------------------------------------> import os import asyncio from io import BytesIO from pathlib import Path from datetime import datetime from tempfile import TemporaryDirectory # * Third Party Imports ---------------------------------------------------------------------------------> import discord from PIL import Image, ImageEnhance, ImageDraw, ImageFont, ImageFilter from pytz import timezone from discord.ext import commands, flags # * Gid Imports -----------------------------------------------------------------------------------------> import gidlogger as glog # * Local Imports ---------------------------------------------------------------------------------------> from antipetros_discordbot.utility.misc import alt_seconds_to_pretty from antipetros_discordbot.utility.checks import allowed_channel_and_allowed_role, has_attachments, log_invoker, owner_or_admin from antipetros_discordbot.utility.embed_helpers import make_basic_embed from antipetros_discordbot.utility.gidtools_functions import pathmaker from antipetros_discordbot.init_userdata.user_data_setup import ParaStorageKeeper from antipetros_discordbot.utility.exceptions import ParameterError from antipetros_discordbot.utility.image_manipulation import find_min_fontsize, make_perfect_fontsize from typing import TYPE_CHECKING from antipetros_discordbot.utility.enums import CogMetaStatus, UpdateTypus, WatermarkPosition from antipetros_discordbot.engine.replacements import AntiPetrosBaseCog, AntiPetrosBaseGroup, AntiPetrosFlagCommand, CommandCategory, auto_meta_info_command, auto_meta_info_group if TYPE_CHECKING: from antipetros_discordbot.engine.antipetros_bot import AntiPetrosBot # endregion[Imports] # region [TODO] # TODO: create regions for this file # TODO: Document and Docstrings # endregion [TODO] # region [Logging] log = glog.aux_logger(__name__) glog.import_notification(log, __name__) # endregion[Logging] # region [Constants] APPDATA = ParaStorageKeeper.get_appdata() BASE_CONFIG = ParaStorageKeeper.get_config('base_config') COGS_CONFIG = ParaStorageKeeper.get_config('cogs_config') THIS_FILE_DIR = os.path.abspath(os.path.dirname(__file__)) # location of this file, does not work if app gets compiled to exe with pyinstaller # endregion [Constants] class ImageManipulationCog(AntiPetrosBaseCog, command_attrs={'hidden': False, "categories": CommandCategory.GENERAL}): """ Commands that manipulate or generate images. """ # region [ClassAttributes] public = True meta_status = CogMetaStatus.WORKING | CogMetaStatus.OPEN_TODOS | CogMetaStatus.FEATURE_MISSING | CogMetaStatus.NEEDS_REFRACTORING long_description = "" extra_info = "" required_config_data = {'base_config': {}, 'cogs_config': {"avatar_stamp": "ASLOGO1", "avatar_stamp_fraction": "0.2", "stamps_margin": "5", "stamp_fraction": "0.3"}} required_folder = [] required_files = [] allowed_stamp_formats = {".jpg", ".jpeg", ".png", ".tga", ".tiff", ".ico", ".icns", ".gif"} stamp_positions = {'top': WatermarkPosition.Top, 'bottom': WatermarkPosition.Bottom, 'left': WatermarkPosition.Left, 'right': WatermarkPosition.Right, 'center': WatermarkPosition.Center} # endregion[ClassAttributes] # region [Init] def __init__(self, bot: "AntiPetrosBot"): super().__init__(bot) self.stamp_location = APPDATA['stamps'] self.stamps = {} self.nato_symbol_parts_location = APPDATA['nato_symbol_parts'] self.nato_symbol_parts_images = {} self.stamp_pos_functions = {WatermarkPosition.Right | WatermarkPosition.Bottom: self._to_bottom_right, WatermarkPosition.Right | WatermarkPosition.Top: self._to_top_right, WatermarkPosition.Right | WatermarkPosition.Center: self._to_center_right, WatermarkPosition.Left | WatermarkPosition.Bottom: self._to_bottom_left, WatermarkPosition.Left | WatermarkPosition.Top: self._to_top_left, WatermarkPosition.Left | WatermarkPosition.Center: self._to_center_left, WatermarkPosition.Center | WatermarkPosition.Center: self._to_center_center, WatermarkPosition.Center | WatermarkPosition.Bottom: self._to_bottom_center, WatermarkPosition.Center | WatermarkPosition.Top: self._to_top_center} self.stamp_pos_functions_by_num = {'3': self._to_bottom_right, '9': self._to_top_right, '6': self._to_center_right, '1': self._to_bottom_left, '7': self._to_top_left, '4': self._to_center_left, '5': self._to_center_center, '2': self._to_bottom_center, '8': self._to_top_center} self.position_normalization_table = {'top': ['upper', 'above', 'up', 't', 'u'], 'bottom': ['down', 'lower', 'b', 'base'], 'center': ['middle', 'c', 'm'], 'left': ['l'], 'right': ['r']} # self.base_map_image = Image.open(r"D:\Dropbox\hobby\Modding\Ressources\Arma_Ressources\maps\tanoa_v3_2000_w_outposts.png") # self.outpost_overlay = {'city': Image.open(r"D:\Dropbox\hobby\Modding\Ressources\Arma_Ressources\maps\tanoa_v2_2000_city_marker.png"), # 'volcano': Image.open(r"D:\Dropbox\hobby\Modding\Ressources\Arma_Ressources\maps\tanoa_v2_2000_volcano_marker.png"), # 'airport': Image.open(r"D:\Dropbox\hobby\Modding\Ressources\Arma_Ressources\maps\tanoa_v2_2000_airport_marker.png")} self.old_map_message = None self.color = "blue" # endregion[Init] # region [Setup] async def on_ready_setup(self): await super().on_ready_setup() self._get_stamps() self._get_nato_symbol_parts() self.ready = True log.debug('setup for cog "%s" finished', str(self)) async def update(self, typus: UpdateTypus): await super().update(typus=typus) self._get_stamps() log.debug('cog "%s" was updated', str(self)) # endregion[Setup] # region [Properties] @property def target_stamp_fraction(self): return COGS_CONFIG.retrieve(self.config_name, 'stamp_fraction', typus=float, direct_fallback=0.2) @property def stamp_margin(self): return COGS_CONFIG.retrieve(self.config_name, 'stamps_margin', typus=int, direct_fallback=5) @property def avatar_stamp_fraction(self): return COGS_CONFIG.retrieve(self.config_name, 'avatar_stamp_fraction', typus=float, direct_fallback=0.3) @property def avatar_stamp(self): stamp_name = COGS_CONFIG.retrieve(self.config_name, 'avatar_stamp', typus=str, direct_fallback='ASLOGO1').upper() return self._get_stamp_image(stamp_name, 1) @property def fonts(self): fonts = {} for file in os.scandir(APPDATA['fonts']): if file.is_file() and file.name.endswith('ttf'): fonts[file.name.split('.')[0].casefold()] = pathmaker(file.path) return fonts # endregion[Properties] # region [Listener] # endregion[Listener] # region [Commands] @flags.add_flag("--stamp-image", "-si", type=str, default='ASLOGO') @flags.add_flag("--first-pos", '-fp', type=str, default="bottom") @flags.add_flag("--second-pos", '-sp', type=str, default="right") @flags.add_flag("--stamp-opacity", '-so', type=float, default=1.0) @flags.add_flag('--factor', '-f', type=float, default=None) @auto_meta_info_command(cls=AntiPetrosFlagCommand) @allowed_channel_and_allowed_role(in_dm_allowed=False) @commands.max_concurrency(1, per=commands.BucketType.guild, wait=True) async def stamp_image(self, ctx, **flags): """ Stamps an image with a small image from the available stamps. Needs to have the to stamp image as an attachment on the invoking message. Usefull for watermarking images. Get all available stamps with '@AntiPetros available_stamps' Example: @AntiPetros stamp_image -si ASLOGO -fp bottom -sp right -so 0.5 -f 0.25 """ async with ctx.channel.typing(): if len(ctx.message.attachments) == 0: # TODO: make as embed await ctx.send('! **there is NO image to antistasify** !') return if flags.get('stamp_image') not in self.stamps: # TODO: make as embed await ctx.send("! **There is NO stamp with that name** !") return first_pos = self.stamp_positions.get(flags.get("first_pos").casefold(), None) second_pos = self.stamp_positions.get(flags.get("second_pos").casefold(), None) if any(_pos is None for _pos in [first_pos, second_pos]) or first_pos | second_pos not in self.stamp_pos_functions: # TODO: make as embed await ctx.send("! **Those are NOT valid position combinations** !") return for _file in ctx.message.attachments: # TODO: maybe make extra attribute for input format, check what is possible and working. else make a generic format list if any(_file.filename.endswith(allowed_ext) for allowed_ext in self.allowed_stamp_formats): _stamp = self._get_stamp_image(flags.get('stamp_image'), flags.get('stamp_opacity')) _stamp = _stamp.copy() with TemporaryDirectory(prefix='temp') as temp_dir: temp_file = Path(pathmaker(temp_dir, 'temp_file.png')) log.debug("Tempfile '%s' created", temp_file) await _file.save(temp_file) in_image = await asyncio.to_thread(Image.open, temp_file) in_image = await asyncio.to_thread(in_image.copy) factor = self.target_stamp_fraction if flags.get('factor') is None else flags.get('factor') pos_function = self.stamp_pos_functions.get(first_pos | second_pos) in_image = await asyncio.to_thread(pos_function, in_image, _stamp, factor) name = 'antistasified_' + os.path.splitext(_file.filename)[0] await ctx.message.delete() # TODO: make as embed await self._send_image(ctx, in_image, name, f"__**{name}**__") @auto_meta_info_command() @allowed_channel_and_allowed_role(in_dm_allowed=False) @commands.cooldown(1, 120, commands.BucketType.channel) async def available_stamps(self, ctx): """ Posts all available stamps. Removes them after 2min to keep channel clean. Example: @AntiPetros available_stamps """ await ctx.message.delete() await ctx.send(embed=await make_basic_embed(title="__**Currently available Stamps are:**__", footer="These messages will be deleted in 120 seconds", symbol='photo'), delete_after=120) for name, image_path in self.stamps.items(): thumb_image = Image.open(image_path) thumb_image.thumbnail((128, 128)) with BytesIO() as image_binary: await asyncio.sleep(0) thumb_image.save(image_binary, 'PNG', optimize=True) image_binary.seek(0) _file = discord.File(image_binary, filename=name + '.png') embed = discord.Embed(title="Available Stamp") embed.add_field(name='Stamp Name:', value=name) embed.set_image(url=f"attachment://{name}.png") await ctx.send(embed=embed, file=_file, delete_after=120) @auto_meta_info_group(case_insensitive=True, cls=AntiPetrosBaseGroup) async def member_avatar(self, ctx): """ Stamps the avatar of a Member with the Antistasi Crest. Returns the new stamped avatar as a .PNG image that the Member can save and replace his orginal avatar with. Example: @AntiPetros member_avatar """ @member_avatar.command() @allowed_channel_and_allowed_role() async def for_discord(self, ctx): modified_avatar = await self._member_avatar_helper(ctx.author, self._to_center_center, 0.66) name = f"{ctx.author.name}_Member_avatar" await self._send_image(ctx, modified_avatar, name, "**Your New Avatar**", delete_after=300) # change completion line to "Pledge your allegiance to the Antistasi Rebellion!"? await ctx.message.delete() @member_avatar.command() async def for_github(self, ctx): modified_avatar = await self._member_avatar_helper(ctx.author, self._to_bottom_center, 1) name = f"{ctx.author.name}_Member_avatar" await self._send_image(ctx, modified_avatar, name, "**Your New Avatar**", delete_after=300) # change completion line to "Pledge your allegiance to the Antistasi Rebellion!"? await ctx.message.delete() @member_avatar.command() async def by_num(self, ctx, numberpad: str): if len(numberpad) > 1: await ctx.send('please only enter a single digit for numberpad position, please retry!') return if numberpad == '0': await ctx.send('0 is not a valid position, please try again!') return func = self.stamp_pos_functions_by_num.get(numberpad) modified_avatar = await self._member_avatar_helper(ctx.author, func, 1) name = f"{ctx.author.name}_Member_avatar" await self._send_image(ctx, modified_avatar, name, "**Your New Avatar**", delete_after=300) # change completion line to "Pledge your allegiance to the Antistasi Rebellion!"? await ctx.message.delete() @member_avatar.command() async def by_place(self, ctx, first_pos: str, second_pos: str): first_pos = await self._normalize_pos(first_pos) second_pos = await self._normalize_pos(second_pos) func = self.stamp_pos_functions.get(self.stamp_positions.get(first_pos) | self.stamp_positions.get(second_pos)) modified_avatar = await self._member_avatar_helper(ctx.author, func, 1) name = f"{ctx.author.name}_Member_avatar" await self._send_image(ctx, modified_avatar, name, "**Your New Avatar**", delete_after=300) # change completion line to "Pledge your allegiance to the Antistasi Rebellion!"? await ctx.message.delete() @auto_meta_info_command(aliases=["get_image"]) @allowed_channel_and_allowed_role() async def get_stamp_image(self, ctx: commands.Context, image_name: str): image_name = image_name.split('.')[0].upper() if image_name not in self.stamps: await ctx.send(f"Don't have an image named `{image_name}` saved!", delete_after=120) return image = self.stamps.get(image_name) embed_data = await self.bot.make_generic_embed(title=image_name, description="Your requested image", thumbnail=None, image=image) await ctx.reply(**embed_data, allowed_mentions=discord.AllowedMentions.none()) @auto_meta_info_command(aliases=["add_image"]) @allowed_channel_and_allowed_role() @has_attachments(1) @log_invoker(log, "critical") async def add_stamp(self, ctx: commands.Context): """ Adds a new stamp image to the available stamps. This command needs to have the image as an attachment. Example: @AntiPetros add_stamp """ attachment = ctx.message.attachments[0] file_name = attachment.filename if file_name.casefold() in {file.casefold() for file in os.listdir(self.stamp_location)}: await ctx.reply(f"A Stamp file with the name `{file_name}` already exists, aborting!") return path = pathmaker(self.stamp_location, file_name) await attachment.save(path) stamp_name = file_name.split('.')[0].replace(' ', '_').strip().upper() await ctx.reply(f"successfully, saved new stamp. The stamp name to use is `{stamp_name}`") await self.bot.creator.send(f"New stamp was added by `{ctx.author.name}`", file=await attachment.to_file()) self._get_stamps() @auto_meta_info_command() @allowed_channel_and_allowed_role(in_dm_allowed=False) @has_attachments(1) async def text_to_image(self, ctx: commands.Context, font: str, *, text: str): mod_font_name = font.split('.')[0].casefold() if mod_font_name not in self.fonts: embed_data = await self.bot.make_generic_embed(title='Unkown Font', description=f"No font available with the name `{font}`.\nYou may have to add it via `@AntiPetros add_font`", thumbnail="cancelled") await ctx.send(**embed_data, delete_after=120) return image_attachment = ctx.message.attachments[0] if image_attachment.filename.split('.')[-1].casefold() not in ['jpeg', 'png', 'jpg', 'tga']: embed_data = await self.bot.make_generic_embed(title="Wrong Image Format", description=f"Image need to be either `jpeg`, `png` or `tga` and not `{image_attachment.filename.split('.')[-1]}`", thumbnail="cancelled") await ctx.send(**embed_data, delete_after=120) return with TemporaryDirectory() as tempdir: imagefilepath = pathmaker(tempdir, image_attachment.filename) await image_attachment.save(imagefilepath) base_image = Image.open(imagefilepath) base_image.load() width, height = base_image.size image_font = await asyncio.to_thread(find_min_fontsize, self.fonts.get(mod_font_name), [line for line in text.splitlines() if line != ''], width, height) top_space = 0 for line in text.splitlines(): if line == '': top_space += ((height // 20) * 2) else: base_image, top_space = await asyncio.to_thread(self.draw_text_line, base_image, line, top_space, image_font) await self._send_image(ctx, base_image, image_attachment.filename.split('.')[0] + '_with_text.png', "Modified Image", message_text="Here is your image with pasted Text", image_format='png') @auto_meta_info_command() @owner_or_admin() @has_attachments(1) async def add_font(self, ctx: commands.Context): font_attachment = ctx.message.attachments[0] if font_attachment.filename.split('.')[-1] != 'ttf': embed_data = await self.bot.make_generic_embed(title='Wrong input filetype', description=f"Attachment has to be a Truetype Font (extension: `.ttf`) and not `.{font_attachment.filename.split('.')[-1]}`", thumbnail="not_possible") await ctx.send(**embed_data, delete_after=120) return new_path = pathmaker(APPDATA['fonts'], font_attachment.filename) await font_attachment.save(new_path) embed_data = await self.bot.make_generic_embed(title="Added new Font", description=f"Font `{font_attachment.filename}` was successfully saved!", thumbnail="save") await ctx.send(**embed_data, delete_after=300) async def _make_font_preview(self, font_name, font_path): b_image = Image.new('RGBA', (512, 512), color=(256, 256, 256, 0)) image_font = await asyncio.to_thread(make_perfect_fontsize, font_path, font_name, 512, 512) preview_image = await asyncio.to_thread(self.draw_text_center, b_image, font_name, image_font) return preview_image @auto_meta_info_command() @allowed_channel_and_allowed_role() async def list_fonts(self, ctx: commands.Context): embed = discord.Embed(title="Available Fonts") await ctx.send(embed=embed, delete_after=60) for font_name, font_path in self.fonts.items(): embed_data = await self.bot.make_generic_embed(title=font_name, image=await self._make_font_preview(font_name, font_path), thumbnail=None) await ctx.send(**embed_data, delete_after=60) await asyncio.sleep(60) await ctx.message.delete() # endregion[Commands] # region [HelperMethods] def _get_nato_symbol_parts(self): self.nato_symbol_parts_images = {} for file in os.scandir(self.nato_symbol_parts_location): if os.path.isfile(file.path) is True: name = file.name.split('.')[0].replace(' ', '_').strip().upper() self.nato_symbol_parts_images[name] = file.path def _get_stamps(self): self.stamps = {} for file in os.scandir(self.stamp_location): if os.path.isfile(file.path) is True: name = file.name.split('.')[0].replace(' ', '_').strip().upper() self.stamps[name] = file.path def _get_stamp_image(self, stamp_name, stamp_opacity): stamp_name = stamp_name.upper() image = Image.open(self.stamps.get(stamp_name)) alpha = image.split()[3] alpha = ImageEnhance.Brightness(alpha).enhance(stamp_opacity) image.putalpha(alpha) return image.copy() @staticmethod def _stamp_resize(input_image, stamp_image, factor): input_image_width, input_image_height = input_image.size input_image_width_fractioned = input_image_width * factor input_image_height_fractioned = input_image_height * factor transform_factor_width = input_image_width_fractioned / stamp_image.size[0] transform_factor_height = input_image_height_fractioned / stamp_image.size[1] transform_factor = (transform_factor_width + transform_factor_height) / 2 return stamp_image.resize((round(stamp_image.size[0] * transform_factor), round(stamp_image.size[1] * transform_factor)), resample=Image.LANCZOS) def _to_bottom_right(self, input_image, stamp_image, factor): log.debug('pasting image to bottom_right') input_image_width, input_image_height = input_image.size _resized_stamp = self._stamp_resize(input_image, stamp_image, factor) input_image.paste(_resized_stamp, (input_image_width - _resized_stamp.size[0] - self.stamp_margin, input_image_height - _resized_stamp.size[1] - self.stamp_margin), _resized_stamp) return input_image def _to_top_right(self, input_image, stamp_image, factor): input_image_width, input_image_height = input_image.size _resized_stamp = self._stamp_resize(input_image, stamp_image, factor) input_image.paste(_resized_stamp, (input_image_width - _resized_stamp.size[0] - self.stamp_margin, 0 + self.stamp_margin), _resized_stamp) return input_image def _to_center_right(self, input_image, stamp_image, factor): input_image_width, input_image_height = input_image.size _resized_stamp = self._stamp_resize(input_image, stamp_image, factor) input_image.paste(_resized_stamp, (input_image_width - _resized_stamp.size[0] - self.stamp_margin, round((input_image_height / 2) - (_resized_stamp.size[1] / 2))), _resized_stamp) return input_image def _to_bottom_left(self, input_image, stamp_image, factor): input_image_width, input_image_height = input_image.size _resized_stamp = self._stamp_resize(input_image, stamp_image, factor) input_image.paste(_resized_stamp, (0 + self.stamp_margin, input_image_height - _resized_stamp.size[1] - self.stamp_margin), _resized_stamp) return input_image def _to_top_left(self, input_image, stamp_image, factor): _resized_stamp = self._stamp_resize(input_image, stamp_image, factor) input_image.paste(_resized_stamp, (0 + self.stamp_margin, 0 + self.stamp_margin), _resized_stamp) return input_image def _to_center_left(self, input_image, stamp_image, factor): input_image_width, input_image_height = input_image.size _resized_stamp = self._stamp_resize(input_image, stamp_image, factor) input_image.paste(_resized_stamp, (0 + self.stamp_margin, round((input_image_height / 2) - (_resized_stamp.size[1] / 2))), _resized_stamp) return input_image def _to_center_center(self, input_image, stamp_image, factor): input_image_width, input_image_height = input_image.size _resized_stamp = self._stamp_resize(input_image, stamp_image, factor) input_image.paste(_resized_stamp, (round((input_image_width / 2) - (_resized_stamp.size[0] / 2)), round((input_image_height / 2) - (_resized_stamp.size[1] / 2))), _resized_stamp) return input_image def _to_top_center(self, input_image, stamp_image, factor): input_image_width, input_image_height = input_image.size _resized_stamp = self._stamp_resize(input_image, stamp_image, factor) input_image.paste(_resized_stamp, (round((input_image_width / 2) - (_resized_stamp.size[0] / 2)), 0 + self.stamp_margin), _resized_stamp) return input_image def _to_bottom_center(self, input_image, stamp_image, factor): input_image_width, input_image_height = input_image.size _resized_stamp = self._stamp_resize(input_image, stamp_image, factor) input_image.paste(_resized_stamp, (round((input_image_width / 2) - (_resized_stamp.size[0] / 2)), input_image_height - _resized_stamp.size[1] - self.stamp_margin), _resized_stamp) return input_image async def _send_image(self, ctx, image, name, message_title, message_text=None, image_format=None, delete_after=None): image_format = 'png' if image_format is None else image_format with BytesIO() as image_binary: image.save(image_binary, image_format.upper(), optimize=True) image_binary.seek(0) file = discord.File(fp=image_binary, filename=name.replace('_', '') + '.' + image_format) embed = discord.Embed(title=message_title, description=message_text, color=self.support.cyan.discord_color, timestamp=datetime.now(tz=timezone("Europe/Berlin")), type='image') embed.set_author(name='AntiPetros', icon_url="https://www.der-buntspecht-shop.de/wp-content/uploads/Baumwollstoff-Camouflage-olivegruen-2.jpg") embed.set_image(url=f"attachment://{name.replace('_','')}.{image_format}") if delete_after is not None: embed.add_field(name='This Message will self destruct', value=f"in {alt_seconds_to_pretty(delete_after)}") await ctx.send(embed=embed, file=file, delete_after=delete_after) async def _member_avatar_helper(self, user: discord.Member, placement: callable, opacity: float): avatar_image = await self.get_avatar_from_user(user) stamp = self._get_stamp_image('ASLOGO', opacity) modified_avatar = await asyncio.to_thread(placement, avatar_image, stamp, self.avatar_stamp_fraction) return modified_avatar async def _normalize_pos(self, pos: str): pos = pos.casefold() if pos not in self.position_normalization_table: for key, value in self.position_normalization_table.items(): if pos in value: return key raise ParameterError('image_position', pos) async def get_avatar_from_user(self, user): avatar = user.avatar_url temp_dir = TemporaryDirectory() temp_file = pathmaker(temp_dir.name, 'user_avatar.png') log.debug("Tempfile '%s' created", temp_file) await avatar.save(temp_file) avatar_image = Image.open(temp_file) avatar_image = avatar_image.copy() avatar_image = avatar_image.convert('RGB') temp_dir.cleanup() return avatar_image def map_image_handling(self, base_image, marker_name, color, bytes_out): log.debug("creating changed map, changed_location: '%s', changed_color: '%s'", marker_name, color) marker_image = self.outpost_overlay.get(marker_name) marker_alpha = marker_image.getchannel('A') marker_image = Image.new('RGBA', marker_image.size, color=color) marker_image.putalpha(marker_alpha) base_image.paste(marker_image, mask=marker_alpha) base_image.save(bytes_out, 'PNG', optimize=True) bytes_out.seek(0) return base_image, bytes_out def draw_text_line(self, image: Image, text_line: str, top_space: int, in_font: ImageFont.FreeTypeFont): width, height = image.size pfont = in_font draw = ImageDraw.Draw(image) w, h = draw.textsize(text_line, font=pfont) draw.text(((width - w) / 2, h + top_space), text_line, fill=(0, 0, 0), stroke_width=width // 150, stroke_fill=(50, 200, 25), font=pfont) return image, top_space + h + (height // 20) def draw_text_center(self, image: Image, text: str, in_font: ImageFont.FreeTypeFont): width, height = image.size pfont = in_font draw = ImageDraw.Draw(image) w, h = draw.textsize(text, font=pfont) draw.text(((width - w) / 2, (height - h) / 2), text, fill=(0, 0, 0), stroke_width=width // 150, stroke_fill=(204, 255, 204), font=pfont) return image # endregion[HelperMethods] # region [SpecialMethods] def __repr__(self): return f"{self.__class__.__name__}({self.bot.__class__.__name__})" def __str__(self): return self.qualified_name # def cog_unload(self): # log.debug("Cog '%s' UNLOADED!", str(self)) # endregion[SpecialMethods] def setup(bot): """ Mandatory function to add the Cog to the bot. """ bot.add_cog(ImageManipulationCog(bot))
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ec085bbbaef39f0640fc7171919973e59bcfe3fd
885
py
Python
exe84.py
henrique-alvaro/EXERCICIOS
dd2509a682009ee4a01f0ca346d960ab09cc284b
[ "MIT" ]
null
null
null
exe84.py
henrique-alvaro/EXERCICIOS
dd2509a682009ee4a01f0ca346d960ab09cc284b
[ "MIT" ]
null
null
null
exe84.py
henrique-alvaro/EXERCICIOS
dd2509a682009ee4a01f0ca346d960ab09cc284b
[ "MIT" ]
null
null
null
reserva = list() principal = list() maior = menor = 0 while True: reserva.append(str(input('Nome: '))) reserva.append(float(input('Peso: '))) if len(principal) == 0: maior = menor = reserva[1] else: if reserva[1] > maior: maior = reserva[1] if reserva[1] < menor: menor = reserva[1] principal.append(reserva[:]) reserva.clear() d = ' ' while d not in 'SN': d = str(input('Deseja Continuar [S/N]: ')).strip().upper()[0] if d == 'N': break print('-='*20) print(f'Ao todo {len(principal)} pessoas foram inscrito') print(f'O maior peso foi {maior}. Peso de ', end='') for c in principal: if c[1] == maior: print(f'{c[0]}' , end='') print() print(f'O menor peso foi {menor}. Peso de ', end='') for c in principal: if c[1] == menor: print(f'{c[0]}' , end='') print()
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ec09685680a3107d366ed078bdbf9404ece34bc4
1,560
py
Python
ws2122-lspm/Lib/site-packages/pm4py/algo/discovery/alpha/utils/endpoints.py
Malekhy/ws2122-lspm
e4dc8b801d12f862b8ef536a0f125f346f085a00
[ "MIT" ]
1
2022-01-19T04:02:46.000Z
2022-01-19T04:02:46.000Z
ws2122-lspm/Lib/site-packages/pm4py/algo/discovery/alpha/utils/endpoints.py
Malekhy/ws2122-lspm
e4dc8b801d12f862b8ef536a0f125f346f085a00
[ "MIT" ]
1
2021-11-19T07:21:48.000Z
2021-11-19T07:21:48.000Z
ws2122-lspm/Lib/site-packages/pm4py/algo/discovery/alpha/utils/endpoints.py
Malekhy/ws2122-lspm
e4dc8b801d12f862b8ef536a0f125f346f085a00
[ "MIT" ]
1
2022-01-14T17:15:38.000Z
2022-01-14T17:15:38.000Z
''' This file is part of PM4Py (More Info: https://pm4py.fit.fraunhofer.de). PM4Py is free software: you can redistribute it and/or modify it under the terms of the GNU General Public License as published by the Free Software Foundation, either version 3 of the License, or (at your option) any later version. PM4Py is distributed in the hope that it will be useful, but WITHOUT ANY WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the GNU General Public License for more details. You should have received a copy of the GNU General Public License along with PM4Py. If not, see <https://www.gnu.org/licenses/>. ''' def derive_end_activities_from_log(log, activity_key): """ Derive end activities from log Parameters ----------- log Log object activity_key Activity key Returns ----------- e End activities """ e = set() for t in log: if len(t) > 0: if activity_key in t[len(t) - 1]: e.add(t[len(t) - 1][activity_key]) return e def derive_start_activities_from_log(log, activity_key): """ Derive start activities from log Parameters ----------- log Log object activity_key Activity key Returns ----------- s Start activities """ s = set() for t in log: if len(t) > 0: if activity_key in t[0]: s.add(t[0][activity_key]) return s
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ec09fbb6283c15ce280ed78dbf9c0d4cee3fc770
691
py
Python
view/inputs.py
gabrielfelipecsk/searchport
aa1f9067a5d1f59d9913b172cc99e933255a0824
[ "MIT" ]
2
2022-01-16T02:34:40.000Z
2022-02-26T01:31:54.000Z
view/inputs.py
gabrielfelipecsk/searchport
aa1f9067a5d1f59d9913b172cc99e933255a0824
[ "MIT" ]
null
null
null
view/inputs.py
gabrielfelipecsk/searchport
aa1f9067a5d1f59d9913b172cc99e933255a0824
[ "MIT" ]
null
null
null
from .colors import Colorize from .banners import banner def inputc(text: str, foreground_color: str = 'default', background_color: str = 'default') -> str: return input(Colorize(text, foreground_color, background_color)) def input_banner(text: str, simbol: str = '-', size: int = 50, text_foreground_color: str = 'default', text_background_color: str = 'default', line_foreground_color: str = 'default', line_background_color: str = 'default') -> str: banner(text, simbol, size, text_foreground_color, text_background_color, line_foreground_color, line_background_color) return inputc('>>> ', text_foreground_color, text_background_color)
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5
ec0b058f553343a897e71eea532d993fcfa42a8b
926
py
Python
ground_truth_labeling_jobs/bring_your_own_model_for_sagemaker_labeling_workflows_with_active_learning/src/tests/test_add_record_id.py
jerrypeng7773/amazon-sagemaker-examples
c5ddecce1f739a345465b9a38b064983a129141d
[ "Apache-2.0" ]
2,610
2020-10-01T14:14:53.000Z
2022-03-31T18:02:31.000Z
ground_truth_labeling_jobs/bring_your_own_model_for_sagemaker_labeling_workflows_with_active_learning/src/tests/test_add_record_id.py
jerrypeng7773/amazon-sagemaker-examples
c5ddecce1f739a345465b9a38b064983a129141d
[ "Apache-2.0" ]
1,959
2020-09-30T20:22:42.000Z
2022-03-31T23:58:37.000Z
ground_truth_labeling_jobs/bring_your_own_model_for_sagemaker_labeling_workflows_with_active_learning/src/tests/test_add_record_id.py
jerrypeng7773/amazon-sagemaker-examples
c5ddecce1f739a345465b9a38b064983a129141d
[ "Apache-2.0" ]
2,052
2020-09-30T22:11:46.000Z
2022-03-31T23:02:51.000Z
import boto3 from Bootstrap.add_record_id import lambda_handler from moto import mock_s3 @mock_s3 def test_add_record_id(): manifest_content = b'{"source":"Fed revises guidelines sending stocks up."}\n{"source": "Review Guardians of the Galaxy"}' s3r = boto3.resource("s3", region_name="us-east-1") s3r.create_bucket(Bucket="source_bucket") s3r.Object("source_bucket", "input.manifest").put(Body=manifest_content) event = { "ManifestS3Uri": "s3://source_bucket/input.manifest", } output = lambda_handler(event, {}) manifest_content_with_id = b'{"source": "Fed revises guidelines sending stocks up.", "id": 0}\n{"source": "Review Guardians of the Galaxy", "id": 1}\n' updated_body = s3r.Object("source_bucket", "input.manifest").get()["Body"].read() assert updated_body == manifest_content_with_id assert output["ManifestS3Uri"] == "s3://source_bucket/input.manifest"
37.04
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ec0bb06346d0c766db6b7559f79689b68488b806
523
py
Python
utils/redis.py
lq411122/fast-methods
0bca39c37abc4c9dac9a194e635641848c128b1b
[ "MIT" ]
null
null
null
utils/redis.py
lq411122/fast-methods
0bca39c37abc4c9dac9a194e635641848c128b1b
[ "MIT" ]
null
null
null
utils/redis.py
lq411122/fast-methods
0bca39c37abc4c9dac9a194e635641848c128b1b
[ "MIT" ]
null
null
null
import redis REDIS_CACHE = { "host": '192.168.196.129', "port": '6379', "db": 0, "password": '' } class RedisClient(redis.StrictRedis): """ Singleton pattern """ _instance = {} def __init__(self, server): redis.StrictRedis.__init__(self, **server) def __new__(cls, *args): if str(args) not in cls._instance: cls._instance[str(args)] = super(RedisClient, cls).__new__(cls) return cls._instance[str(args)] redis = RedisClient(REDIS_CACHE)
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1
ec0bbf6fa340a30833399fb89ab800ad2004fd7e
8,517
py
Python
src/rest-api/tests/routes/v1/test_dex.py
geometry-labs/craft-multi-token-api
e533fd02c928c4857076ee11e14d8c0608bf367d
[ "Apache-2.0" ]
null
null
null
src/rest-api/tests/routes/v1/test_dex.py
geometry-labs/craft-multi-token-api
e533fd02c928c4857076ee11e14d8c0608bf367d
[ "Apache-2.0" ]
null
null
null
src/rest-api/tests/routes/v1/test_dex.py
geometry-labs/craft-multi-token-api
e533fd02c928c4857076ee11e14d8c0608bf367d
[ "Apache-2.0" ]
null
null
null
from fastapi.testclient import TestClient from app.core.config import settings def test_get_transactions(prep_fixtures, client: TestClient) -> None: r = client.get(f"{settings.PREFIX}/dex/transactions") response = r.json() assert r.status_code == 200 assert response assert len(response) == 1 r = client.get(f"{settings.PREFIX}/dex/transactions?limit=6") response = r.json() assert r.status_code == 200 assert response assert len(response) == 6 def test_get_transactions_by_method(prep_fixtures, client: TestClient) -> None: r = client.get(f"{settings.PREFIX}/dex/transactions/add") response = r.json() assert r.status_code == 200 assert response assert len(response) == 1 r = client.get(f"{settings.PREFIX}/dex/transactions/add?limit=4") response = r.json() assert r.status_code == 200 assert response assert len(response) == 4 r = client.get(f"{settings.PREFIX}/dex/transactions/remove") response = r.json() assert r.status_code == 200 assert response assert len(response) == 1 r = client.get(f"{settings.PREFIX}/dex/transactions/remove?limit=2") response = r.json() assert r.status_code == 200 assert response assert len(response) == 2 def test_get_logs(prep_fixtures, client: TestClient) -> None: r = client.get(f"{settings.PREFIX}/dex/logs") response = r.json() assert r.status_code == 200 assert response assert len(response) == 1 r = client.get(f"{settings.PREFIX}/dex/logs?limit=3") response = r.json() assert r.status_code == 200 assert response assert len(response) == 3 def test_get_logs_by_method(prep_fixtures, client: TestClient) -> None: r = client.get(f"{settings.PREFIX}/dex/logs/TransferSingle") response = r.json() assert r.status_code == 200 assert response assert len(response) == 1 r = client.get(f"{settings.PREFIX}/dex/logs/TransferSingle?limit=1") response = r.json() assert r.status_code == 200 assert response assert len(response) == 1 r = client.get(f"{settings.PREFIX}/dex/logs/Swap") response = r.json() assert r.status_code == 200 assert response assert len(response) == 1 r = client.get(f"{settings.PREFIX}/dex/logs/Swap?limit=1") response = r.json() assert r.status_code == 200 assert response assert len(response) == 1 def test_get_stats(prep_fixtures, client: TestClient) -> None: r = client.get(f"{settings.PREFIX}/dex/stats/1") response = r.json() assert r.status_code == 200 assert response def test_get_stats_invalid_market_id(prep_fixtures, client: TestClient) -> None: r = client.get(f"{settings.PREFIX}/dex/stats/bad-market-id") response = r.json() assert r.status_code == 400 # Bad request assert response def test_get_balance_of(prep_fixtures, client: TestClient) -> None: # Fine to leave request as constant since the blockchain is immutable r = client.get(f"{settings.PREFIX}/dex/balance-of/hxe7af5fcfd8dfc67530a01a0e403882687528dfcb/2") response = r.json() assert r.status_code == 200 assert response def test_get_balance_of_invalid_address(prep_fixtures, client: TestClient) -> None: r = client.get(f"{settings.PREFIX}/dex/balance-of/0xbadaddress/2") response = r.json() assert r.status_code == 400 # Bad request assert response def test_get_swap_chart_5m(prep_fixtures, client: TestClient) -> None: r = client.get(f"{settings.PREFIX}/dex/swap-chart/0/5m/0/1000000000") response = r.json() assert r.status_code == 200 assert len(response) == 4 assert response[0][0] == 0 # Timestamp assert response[0][1] == 1 # Open assert response[0][2] == 3 # Close assert response[0][3] == 3 # High assert response[0][4] == 1 # Low assert response[0][5] == 3 # Volume assert response[1][0] == 300000000 assert response[1][1] == 3 assert response[1][2] == 6 assert response[1][3] == 6 assert response[1][4] == 3 assert response[1][5] == 3 assert response[2][0] == 600000000 assert response[2][1] == 6 assert response[2][2] == 6 assert response[2][3] == 6 assert response[2][4] == 6 assert response[2][5] == 0 assert response[3][0] == 900000000 assert response[3][1] == 6 assert response[3][2] == 9 assert response[3][3] == 9 assert response[3][4] == 6 assert response[3][5] == 3 def test_get_swap_chart_15m(prep_fixtures, client: TestClient) -> None: r = client.get(f"{settings.PREFIX}/dex/swap-chart/1/15m/0/3000000000") response = r.json() assert r.status_code == 200 assert len(response) == 4 assert response[0][0] == 0 assert response[0][1] == 1 assert response[0][2] == 3 assert response[0][3] == 3 assert response[0][4] == 1 assert response[0][5] == 3 assert response[1][0] == 900000000 assert response[1][1] == 3 assert response[1][2] == 6 assert response[1][3] == 6 assert response[1][4] == 3 assert response[1][5] == 3 assert response[2][0] == 1800000000 assert response[2][1] == 6 assert response[2][2] == 6 assert response[2][3] == 6 assert response[2][4] == 6 assert response[2][5] == 0 assert response[3][0] == 2700000000 assert response[3][1] == 6 assert response[3][2] == 9 assert response[3][3] == 9 assert response[3][4] == 6 assert response[3][5] == 3 def test_get_swap_chart_1h(prep_fixtures, client: TestClient) -> None: r = client.get(f"{settings.PREFIX}/dex/swap-chart/2/1h/0/20000000000") response = r.json() assert r.status_code == 200 assert len(response) == 6 assert response[0][0] == 0 assert response[0][1] == 1 assert response[0][2] == 3 assert response[0][3] == 3 assert response[0][4] == 1 assert response[0][5] == 3 assert response[1][0] == 3600000000 assert response[1][1] == 3 assert response[1][2] == 6 assert response[1][3] == 6 assert response[1][4] == 3 assert response[1][5] == 3 assert response[2][0] == 7200000000 assert response[2][1] == 6 assert response[2][2] == 6 assert response[2][3] == 6 assert response[2][4] == 6 assert response[2][5] == 0 assert response[3][0] == 10800000000 assert response[3][1] == 6 assert response[3][2] == 9 assert response[3][3] == 9 assert response[3][4] == 6 assert response[3][5] == 3 def test_get_swap_chart_4h(prep_fixtures, client: TestClient) -> None: r = client.get(f"{settings.PREFIX}/dex/swap-chart/3/4h/0/50000000000") response = r.json() assert r.status_code == 200 assert len(response) == 4 assert response[0][0] == 0 assert response[0][1] == 1 assert response[0][2] == 3 assert response[0][3] == 3 assert response[0][4] == 1 assert response[0][5] == 3 assert response[1][0] == 14400000000 assert response[1][1] == 3 assert response[1][2] == 6 assert response[1][3] == 6 assert response[1][4] == 3 assert response[1][5] == 3 assert response[2][0] == 28800000000 assert response[2][1] == 6 assert response[2][2] == 6 assert response[2][3] == 6 assert response[2][4] == 6 assert response[2][5] == 0 assert response[3][0] == 43200000000 assert response[3][1] == 6 assert response[3][2] == 9 assert response[3][3] == 9 assert response[3][4] == 6 assert response[3][5] == 3 def test_get_swap_chart_1d(prep_fixtures, client: TestClient) -> None: r = client.get(f"{settings.PREFIX}/dex/swap-chart/4/1d/0/300000000000") response = r.json() assert r.status_code == 200 assert len(response) == 4 assert response[0][0] == 0 assert response[0][1] == 1 assert response[0][2] == 3 assert response[0][3] == 3 assert response[0][4] == 1 assert response[0][5] == 3 assert response[1][0] == 86400000000 assert response[1][1] == 3 assert response[1][2] == 6 assert response[1][3] == 6 assert response[1][4] == 3 assert response[1][5] == 3 assert response[2][0] == 172800000000 assert response[2][1] == 6 assert response[2][2] == 6 assert response[2][3] == 6 assert response[2][4] == 6 assert response[2][5] == 0 assert response[3][0] == 259200000000 assert response[3][1] == 6 assert response[3][2] == 9 assert response[3][3] == 9 assert response[3][4] == 6 assert response[3][5] == 3
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9
ec0c6262fe29bd601bf3b54997ca27eee3386b1b
1,785
py
Python
dissertation/code/mouse-data/DecodeMouseData.py
spanners/dissertation
e7f0cbf681d2341ecb2e00d40557e4e34f8b7209
[ "MIT" ]
2
2015-09-09T16:53:46.000Z
2019-04-03T01:19:48.000Z
dissertation/code/mouse-data/DecodeMouseData.py
spanners/dissertation
e7f0cbf681d2341ecb2e00d40557e4e34f8b7209
[ "MIT" ]
null
null
null
dissertation/code/mouse-data/DecodeMouseData.py
spanners/dissertation
e7f0cbf681d2341ecb2e00d40557e4e34f8b7209
[ "MIT" ]
null
null
null
#!/usr/bin/python2.7 import json import sys class DecodeMouseData(object): def decode(self, jsonString): return json.loads(jsonString) def getNumberOfClicks(self, jsonString): return len(self.decode(jsonString)) def getSessionDuration(self, jsonString): decoded = self.decode(jsonString) finish = max([x["t"] for x in decoded.values()]) start = min([x["t"] for x in decoded.values()]) # compute number of minutes in this number of milliseconds return (finish - start) / 60000.0 def getFilesTimeClickDict(self, files): timeAndClicks = dict() filename = str() for jsonFile in files: with open(jsonFile) as f: jsonString = f.read() filename = f.name print filename timeAndClicks[filename] = (self.getSessionDuration(jsonString), self.getNumberOfClicks(jsonString)) return timeAndClicks def getDictPrettyPrint(self, timeAndClicks): output = "" tablelines = "-"*11 + " " + "-"*10 output += tablelines + "\n" output += "Time (min) Clicks\n" output += tablelines + "\n" length = len(timeAndClicks) for i,filename in enumerate(timeAndClicks): output += ("%10f %10d" % (timeAndClicks[filename][0], timeAndClicks[filename][1])) + "\n" output += tablelines return output if __name__ == "__main__": dmd = DecodeMouseData() print dmd.getDictPrettyPrint(dmd.getFilesTimeClickDict(sys.argv[1:])) timeAndClicks = dmd.getFilesTimeClickDict(sys.argv[1:]) total = 0 for filename in timeAndClicks: total += timeAndClicks[filename][1] print "TOTAL: ", total
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1
ec0ebec4153df6eb77466725e0c8fd3afb8e6d9e
2,604
py
Python
telemetry/telemetry/internal/platform/cast_platform_backend.py
BearerPipelineTest/catapult
3800a67cd916200046a50748893bbd0dcf3d7f4a
[ "BSD-3-Clause" ]
null
null
null
telemetry/telemetry/internal/platform/cast_platform_backend.py
BearerPipelineTest/catapult
3800a67cd916200046a50748893bbd0dcf3d7f4a
[ "BSD-3-Clause" ]
null
null
null
telemetry/telemetry/internal/platform/cast_platform_backend.py
BearerPipelineTest/catapult
3800a67cd916200046a50748893bbd0dcf3d7f4a
[ "BSD-3-Clause" ]
null
null
null
# Copyright 2019 The Chromium Authors. All rights reserved. # Use of this source code is governed by a BSD-style license that can be # found in the LICENSE file. from __future__ import absolute_import from telemetry.core import platform as telemetry_platform from telemetry.internal.platform import cast_device from telemetry.internal.platform import platform_backend class CastPlatformBackend(platform_backend.PlatformBackend): def __init__(self, device): super(CastPlatformBackend, self).__init__(device) self._output_dir = device.output_dir self._runtime_exe = device.runtime_exe @classmethod def SupportsDevice(cls, device): return isinstance(device, cast_device.CastDevice) @classmethod def CreatePlatformForDevice(cls, device, finder_options): assert cls.SupportsDevice(device) return telemetry_platform.Platform(CastPlatformBackend(device)) @property def output_dir(self): return self._output_dir @property def runtime_exe(self): return self._runtime_exe def IsRemoteDevice(self): return False def GetArchName(self): return 'Arch type of device not yet supported in Cast' def GetOSName(self): return 'castos' def GetDeviceTypeName(self): return 'Cast Device' def GetOSVersionName(self): return '' def GetOSVersionDetailString(self): return 'CastOS' def GetSystemTotalPhysicalMemory(self): raise NotImplementedError() def HasBeenThermallyThrottled(self): return False def IsThermallyThrottled(self): return False def InstallApplication(self, application): raise NotImplementedError() def LaunchApplication(self, application, parameters=None, elevate_privilege=False): raise NotImplementedError() def PathExists(self, path, timeout=None, retries=None): raise NotImplementedError() def CanFlushIndividualFilesFromSystemCache(self): return False def FlushEntireSystemCache(self): return None def FlushSystemCacheForDirectory(self, directory): return None def StartActivity(self, intent, blocking): raise NotImplementedError() def CooperativelyShutdown(self, proc, app_name): return False def SupportFlushEntireSystemCache(self): return False def StartDisplayTracing(self): raise NotImplementedError() def StopDisplayTracing(self): raise NotImplementedError() def TakeScreenshot(self, file_path): return None def GetTypExpectationsTags(self): tags = super(CastPlatformBackend, self).GetTypExpectationsTags() tags.append(self.GetDeviceTypeName()) return tags
25.281553
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2,604
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0.001854
0.171275
2,604
102
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25.529412
0.8962
0.059524
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0.391304
false
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0.73913
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1
1
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3
ec0f9ff9cd997919f338a2ecbd614e9c94929507
828
py
Python
pages/homepage.py
kriss-u/selenium-python-framework
d4f6416de25c955861f6d8a099a780c702693b63
[ "MIT" ]
null
null
null
pages/homepage.py
kriss-u/selenium-python-framework
d4f6416de25c955861f6d8a099a780c702693b63
[ "MIT" ]
6
2021-04-26T16:12:48.000Z
2021-04-29T17:05:33.000Z
pages/homepage.py
kriss-u/selenium-python-framework
d4f6416de25c955861f6d8a099a780c702693b63
[ "MIT" ]
null
null
null
from selenium.webdriver.common.by import By from utilities import find_all_contains_text from utilities import find_one_present from utilities import wait class Homepage: def __init__(self, driver, base_url, timeout=10): self.driver = driver self.base_url = base_url self.wait = wait(driver, timeout) def open(self): self.driver.get(f"{self.base_url}") def type_search(self, term): driver = self.driver search_input = find_one_present(driver, "//input[@name='q']", "xpath") search_input.send_keys(term) return find_all_contains_text(term, driver, "//ul[@role='listbox']//li", "xpath") def clear_search(self): driver = self.driver search_input = driver.find_element(By.XPATH, "//input[@name='q']") search_input.clear()
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4.714286
0.383929
0.113636
0.107955
0.087121
0.102273
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0.003053
0.208937
828
26
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31.846154
0.803053
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0.030193
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false
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0
0
1
0
ec109640aff1646df46aa0a6708a27349d22a4e5
1,731
py
Python
tests/test_2_cnv_annotation.py
jakob-he/TADA
8db4e0af19b4a32c7071c175a21bbafe3b02cb31
[ "MIT" ]
3
2021-12-24T18:40:14.000Z
2022-03-05T22:22:38.000Z
tests/test_2_cnv_annotation.py
jakob-he/TADA
8db4e0af19b4a32c7071c175a21bbafe3b02cb31
[ "MIT" ]
1
2020-11-30T09:49:08.000Z
2021-05-14T12:28:04.000Z
tests/test_2_cnv_annotation.py
jakob-he/TADA
8db4e0af19b4a32c7071c175a21bbafe3b02cb31
[ "MIT" ]
2
2021-12-07T17:25:55.000Z
2021-12-24T18:40:16.000Z
"""Test the annotation of CNVs""" import io import sys import unittest import pickle import pathlib import yaml import tadacnv.lib.utils as utils import tadacnv.lib.preprocessing as preprocessing from tadacnv.annotate_cnvs import annotate class CnvAnnotationTest(unittest.TestCase): """Test class for the annotation of CNVs""" def test_annotation(self): capturedOutput = io.StringIO() sys.stdout = capturedOutput # read config file with pathlib.Path("tests/test_config_cnvs.yml").open() as ymlfile: cfg = yaml.load(ymlfile, Loader=yaml.Loader) output_dir = "tests/test_data" annotated_cnvs = annotate(cfg) #save annotated cnvs output_path = pathlib.Path(output_dir) for label, cnvs in annotated_cnvs.items(): with open(output_path / f'Annotated_{label}.p', "wb") as output: pickle.dump(cnvs, output) feature_labels = ['Number of affected Genes','Number of affected Enhancers','Boundary Distance', 'Boundary Stability', 'Gene Distance', 'Enhancer Distance', 'DDG2P Distance', 'Gene LOEUF','Enhancer conservation', 'Gene HI', 'CTCF Distance', 'HI LogOdds Score', 'Exon Overlap', 'MPOI'] feature_df = preprocessing.create_feature_df(cnvs,cfg['FEATURES'],feature_labels,csv=True) feature_df.to_csv(output_path / f'Annotated_{label}.csv',sep='\t',header=True,index=False) sys.stdout = sys.__stdout__ self.assertEqual(len(annotated_cnvs['TEST_PATHOGENIC']['chr2'][0].tads),1,'Annotation of TADs does not work!') self.assertEqual(len(annotated_cnvs['TEST_PATHOGENIC']['chr2'][0].tads[0].annotations['GENES']),17,'Genes are not transferred to the CNV object!')
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0
0
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1
ec115fe1a2a4d72124bd94bbcc8e5a9b7e0ee2de
30,311
py
Python
pysnmp/BTI7800-INVENTORY-MIB.py
agustinhenze/mibs.snmplabs.com
1fc5c07860542b89212f4c8ab807057d9a9206c7
[ "Apache-2.0" ]
11
2021-02-02T16:27:16.000Z
2021-08-31T06:22:49.000Z
pysnmp/BTI7800-INVENTORY-MIB.py
agustinhenze/mibs.snmplabs.com
1fc5c07860542b89212f4c8ab807057d9a9206c7
[ "Apache-2.0" ]
75
2021-02-24T17:30:31.000Z
2021-12-08T00:01:18.000Z
pysnmp/BTI7800-INVENTORY-MIB.py
agustinhenze/mibs.snmplabs.com
1fc5c07860542b89212f4c8ab807057d9a9206c7
[ "Apache-2.0" ]
10
2019-04-30T05:51:36.000Z
2022-02-16T03:33:41.000Z
# # PySNMP MIB module BTI7800-INVENTORY-MIB (http://snmplabs.com/pysmi) # ASN.1 source file:///Users/davwang4/Dev/mibs.snmplabs.com/asn1/BTI7800-INVENTORY-MIB # Produced by pysmi-0.3.4 at Mon Apr 29 17:24:46 2019 # On host DAVWANG4-M-1475 platform Darwin version 18.5.0 by user davwang4 # Using Python version 3.7.3 (default, Mar 27 2019, 09:23:15) # ObjectIdentifier, Integer, OctetString = mibBuilder.importSymbols("ASN1", "ObjectIdentifier", "Integer", "OctetString") NamedValues, = mibBuilder.importSymbols("ASN1-ENUMERATION", "NamedValues") ConstraintsUnion, ValueRangeConstraint, SingleValueConstraint, ValueSizeConstraint, ConstraintsIntersection = mibBuilder.importSymbols("ASN1-REFINEMENT", "ConstraintsUnion", "ValueRangeConstraint", "SingleValueConstraint", "ValueSizeConstraint", "ConstraintsIntersection") ModuleCompliance, NotificationGroup = mibBuilder.importSymbols("SNMPv2-CONF", "ModuleCompliance", "NotificationGroup") Integer32, IpAddress, MibIdentifier, Unsigned32, Gauge32, NotificationType, Bits, Counter32, Counter64, iso, TimeTicks, ModuleIdentity, ObjectIdentity, enterprises, MibScalar, MibTable, MibTableRow, MibTableColumn = mibBuilder.importSymbols("SNMPv2-SMI", "Integer32", "IpAddress", "MibIdentifier", "Unsigned32", "Gauge32", "NotificationType", "Bits", "Counter32", "Counter64", "iso", "TimeTicks", "ModuleIdentity", "ObjectIdentity", "enterprises", "MibScalar", "MibTable", "MibTableRow", "MibTableColumn") DateAndTime, RowStatus, DisplayString, TextualConvention, TruthValue = mibBuilder.importSymbols("SNMPv2-TC", "DateAndTime", "RowStatus", "DisplayString", "TextualConvention", "TruthValue") bTI7800_INVENTORY_MIB = ModuleIdentity((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2)).setLabel("bTI7800-INVENTORY-MIB") bTI7800_INVENTORY_MIB.setRevisions(('2014-12-23 00:00',)) if mibBuilder.loadTexts: bTI7800_INVENTORY_MIB.setLastUpdated('201412230000Z') if mibBuilder.loadTexts: bTI7800_INVENTORY_MIB.setOrganization('@ORGANIZATION') class UnsignedByte(TextualConvention, Unsigned32): status = 'current' displayHint = 'd' subtypeSpec = Unsigned32.subtypeSpec + ValueRangeConstraint(0, 255) class UnsignedShort(TextualConvention, Unsigned32): status = 'current' displayHint = 'd' subtypeSpec = Unsigned32.subtypeSpec + ValueRangeConstraint(0, 65535) class ConfdString(TextualConvention, OctetString): status = 'current' displayHint = '1t' class InetAddressIP(TextualConvention, OctetString): status = 'current' subtypeSpec = OctetString.subtypeSpec + ConstraintsUnion(ValueSizeConstraint(4, 4), ValueSizeConstraint(16, 16), ) class String(TextualConvention, OctetString): status = 'current' displayHint = '1t' class BicIndexT(TextualConvention, Unsigned32): status = 'current' displayHint = 'd' subtypeSpec = Unsigned32.subtypeSpec + ValueRangeConstraint(1, 2) class FanIndexT(TextualConvention, Unsigned32): status = 'current' displayHint = 'd' subtypeSpec = Unsigned32.subtypeSpec + ValueRangeConstraint(1, 6) class PemIndexT(TextualConvention, Unsigned32): status = 'current' displayHint = 'd' subtypeSpec = Unsigned32.subtypeSpec + ValueRangeConstraint(1, 4) class CmmIndexT(TextualConvention, Unsigned32): status = 'current' displayHint = 'd' subtypeSpec = Unsigned32.subtypeSpec + ValueRangeConstraint(1, 2) class PortIndexT(TextualConvention, Unsigned32): status = 'current' displayHint = 'd' subtypeSpec = Unsigned32.subtypeSpec + ValueRangeConstraint(1, 12) class ModuleIndexT(TextualConvention, Unsigned32): status = 'current' displayHint = 'd' subtypeSpec = Unsigned32.subtypeSpec + ValueRangeConstraint(1, 14) class ChassisIndexT(TextualConvention, Unsigned32): status = 'current' displayHint = 'd' subtypeSpec = Unsigned32.subtypeSpec + ValueRangeConstraint(1, 16) inventory_chassisTable = MibTable((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 1), ).setLabel("inventory-chassisTable") if mibBuilder.loadTexts: inventory_chassisTable.setStatus('current') inventory_chassisEntry = MibTableRow((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 1, 1), ).setLabel("inventory-chassisEntry").setIndexNames((0, "BTI7800-INVENTORY-MIB", "inventory-chassisChassisNum")) if mibBuilder.loadTexts: inventory_chassisEntry.setStatus('current') inventory_chassisChassisNum = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 1, 1, 1), ChassisIndexT()).setLabel("inventory-chassisChassisNum") if mibBuilder.loadTexts: inventory_chassisChassisNum.setStatus('current') inventory_chassisName = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 1, 1, 2), String()).setLabel("inventory-chassisName").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_chassisName.setStatus('current') inventory_chassisPEC = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 1, 1, 3), String()).setLabel("inventory-chassisPEC").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_chassisPEC.setStatus('current') inventory_chassisRevision = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 1, 1, 4), UnsignedShort()).setLabel("inventory-chassisRevision").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_chassisRevision.setStatus('current') inventory_chassisSerialNumber = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 1, 1, 5), String()).setLabel("inventory-chassisSerialNumber").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_chassisSerialNumber.setStatus('current') inventory_chassisManufactureDate = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 1, 1, 6), DateAndTime()).setLabel("inventory-chassisManufactureDate").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_chassisManufactureDate.setStatus('current') inventory_chassisVendor = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 1, 1, 7), String()).setLabel("inventory-chassisVendor").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_chassisVendor.setStatus('current') inventory_fanTable = MibTable((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 2), ).setLabel("inventory-fanTable") if mibBuilder.loadTexts: inventory_fanTable.setStatus('current') inventory_fanEntry = MibTableRow((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 2, 1), ).setLabel("inventory-fanEntry").setIndexNames((0, "BTI7800-INVENTORY-MIB", "inventory-fanChassisNum"), (0, "BTI7800-INVENTORY-MIB", "inventory-fanSlotNum")) if mibBuilder.loadTexts: inventory_fanEntry.setStatus('current') inventory_fanChassisNum = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 2, 1, 1), ChassisIndexT()).setLabel("inventory-fanChassisNum") if mibBuilder.loadTexts: inventory_fanChassisNum.setStatus('current') inventory_fanSlotNum = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 2, 1, 2), FanIndexT()).setLabel("inventory-fanSlotNum") if mibBuilder.loadTexts: inventory_fanSlotNum.setStatus('current') inventory_fanName = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 2, 1, 3), String()).setLabel("inventory-fanName").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_fanName.setStatus('current') inventory_fanPEC = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 2, 1, 4), String()).setLabel("inventory-fanPEC").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_fanPEC.setStatus('current') inventory_fanRevision = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 2, 1, 5), UnsignedShort()).setLabel("inventory-fanRevision").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_fanRevision.setStatus('current') inventory_fanSerialNumber = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 2, 1, 6), String()).setLabel("inventory-fanSerialNumber").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_fanSerialNumber.setStatus('current') inventory_fanManufactureDate = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 2, 1, 7), DateAndTime()).setLabel("inventory-fanManufactureDate").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_fanManufactureDate.setStatus('current') inventory_fanVendor = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 2, 1, 8), String()).setLabel("inventory-fanVendor").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_fanVendor.setStatus('current') inventory_pemTable = MibTable((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 3), ).setLabel("inventory-pemTable") if mibBuilder.loadTexts: inventory_pemTable.setStatus('current') inventory_pemEntry = MibTableRow((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 3, 1), ).setLabel("inventory-pemEntry").setIndexNames((0, "BTI7800-INVENTORY-MIB", "inventory-pemChassisNum"), (0, "BTI7800-INVENTORY-MIB", "inventory-pemSlotNum")) if mibBuilder.loadTexts: inventory_pemEntry.setStatus('current') inventory_pemChassisNum = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 3, 1, 1), ChassisIndexT()).setLabel("inventory-pemChassisNum") if mibBuilder.loadTexts: inventory_pemChassisNum.setStatus('current') inventory_pemSlotNum = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 3, 1, 2), PemIndexT()).setLabel("inventory-pemSlotNum") if mibBuilder.loadTexts: inventory_pemSlotNum.setStatus('current') inventory_pemName = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 3, 1, 3), String()).setLabel("inventory-pemName").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_pemName.setStatus('current') inventory_pemPEC = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 3, 1, 4), String()).setLabel("inventory-pemPEC").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_pemPEC.setStatus('current') inventory_pemRevision = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 3, 1, 5), UnsignedShort()).setLabel("inventory-pemRevision").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_pemRevision.setStatus('current') inventory_pemSerialNumber = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 3, 1, 6), String()).setLabel("inventory-pemSerialNumber").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_pemSerialNumber.setStatus('current') inventory_pemManufactureDate = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 3, 1, 7), DateAndTime()).setLabel("inventory-pemManufactureDate").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_pemManufactureDate.setStatus('current') inventory_pemVendor = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 3, 1, 8), String()).setLabel("inventory-pemVendor").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_pemVendor.setStatus('current') inventory_cmmTable = MibTable((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 4), ).setLabel("inventory-cmmTable") if mibBuilder.loadTexts: inventory_cmmTable.setStatus('current') inventory_cmmEntry = MibTableRow((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 4, 1), ).setLabel("inventory-cmmEntry").setIndexNames((0, "BTI7800-INVENTORY-MIB", "inventory-cmmChassisNum"), (0, "BTI7800-INVENTORY-MIB", "inventory-cmmSlotNum")) if mibBuilder.loadTexts: inventory_cmmEntry.setStatus('current') inventory_cmmChassisNum = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 4, 1, 1), ChassisIndexT()).setLabel("inventory-cmmChassisNum") if mibBuilder.loadTexts: inventory_cmmChassisNum.setStatus('current') inventory_cmmSlotNum = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 4, 1, 2), CmmIndexT()).setLabel("inventory-cmmSlotNum") if mibBuilder.loadTexts: inventory_cmmSlotNum.setStatus('current') inventory_cmmName = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 4, 1, 3), String()).setLabel("inventory-cmmName").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_cmmName.setStatus('current') inventory_cmmPEC = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 4, 1, 4), String()).setLabel("inventory-cmmPEC").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_cmmPEC.setStatus('current') inventory_cmmRevision = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 4, 1, 5), UnsignedShort()).setLabel("inventory-cmmRevision").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_cmmRevision.setStatus('current') inventory_cmmSerialNumber = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 4, 1, 6), String()).setLabel("inventory-cmmSerialNumber").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_cmmSerialNumber.setStatus('current') inventory_cmmManufactureDate = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 4, 1, 7), DateAndTime()).setLabel("inventory-cmmManufactureDate").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_cmmManufactureDate.setStatus('current') inventory_cmmVendor = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 4, 1, 8), String()).setLabel("inventory-cmmVendor").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_cmmVendor.setStatus('current') inventory_moduleTable = MibTable((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 5), ).setLabel("inventory-moduleTable") if mibBuilder.loadTexts: inventory_moduleTable.setStatus('current') inventory_moduleEntry = MibTableRow((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 5, 1), ).setLabel("inventory-moduleEntry").setIndexNames((0, "BTI7800-INVENTORY-MIB", "inventory-moduleChassisNum"), (0, "BTI7800-INVENTORY-MIB", "inventory-moduleSlotNum")) if mibBuilder.loadTexts: inventory_moduleEntry.setStatus('current') inventory_moduleChassisNum = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 5, 1, 1), ChassisIndexT()).setLabel("inventory-moduleChassisNum") if mibBuilder.loadTexts: inventory_moduleChassisNum.setStatus('current') inventory_moduleSlotNum = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 5, 1, 2), ModuleIndexT()).setLabel("inventory-moduleSlotNum") if mibBuilder.loadTexts: inventory_moduleSlotNum.setStatus('current') inventory_moduleName = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 5, 1, 3), String()).setLabel("inventory-moduleName").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_moduleName.setStatus('current') inventory_modulePEC = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 5, 1, 4), String()).setLabel("inventory-modulePEC").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_modulePEC.setStatus('current') inventory_moduleRevision = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 5, 1, 5), UnsignedShort()).setLabel("inventory-moduleRevision").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_moduleRevision.setStatus('current') inventory_moduleSerialNumber = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 5, 1, 6), String()).setLabel("inventory-moduleSerialNumber").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_moduleSerialNumber.setStatus('current') inventory_moduleManufactureDate = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 5, 1, 7), DateAndTime()).setLabel("inventory-moduleManufactureDate").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_moduleManufactureDate.setStatus('current') inventory_moduleVendor = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 5, 1, 8), String()).setLabel("inventory-moduleVendor").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_moduleVendor.setStatus('current') inventory_bicTable = MibTable((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 6), ).setLabel("inventory-bicTable") if mibBuilder.loadTexts: inventory_bicTable.setStatus('current') inventory_bicEntry = MibTableRow((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 6, 1), ).setLabel("inventory-bicEntry").setIndexNames((0, "BTI7800-INVENTORY-MIB", "inventory-bicChassisNum"), (0, "BTI7800-INVENTORY-MIB", "inventory-bicSlotNum"), (0, "BTI7800-INVENTORY-MIB", "inventory-bicSubslotNum")) if mibBuilder.loadTexts: inventory_bicEntry.setStatus('current') inventory_bicChassisNum = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 6, 1, 1), ChassisIndexT()).setLabel("inventory-bicChassisNum") if mibBuilder.loadTexts: inventory_bicChassisNum.setStatus('current') inventory_bicSlotNum = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 6, 1, 2), ModuleIndexT()).setLabel("inventory-bicSlotNum") if mibBuilder.loadTexts: inventory_bicSlotNum.setStatus('current') inventory_bicSubslotNum = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 6, 1, 3), BicIndexT()).setLabel("inventory-bicSubslotNum") if mibBuilder.loadTexts: inventory_bicSubslotNum.setStatus('current') inventory_bicName = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 6, 1, 4), String()).setLabel("inventory-bicName").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_bicName.setStatus('current') inventory_bicPEC = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 6, 1, 5), String()).setLabel("inventory-bicPEC").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_bicPEC.setStatus('current') inventory_bicRevision = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 6, 1, 6), UnsignedShort()).setLabel("inventory-bicRevision").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_bicRevision.setStatus('current') inventory_bicSerialNumber = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 6, 1, 7), String()).setLabel("inventory-bicSerialNumber").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_bicSerialNumber.setStatus('current') inventory_bicManufactureDate = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 6, 1, 8), DateAndTime()).setLabel("inventory-bicManufactureDate").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_bicManufactureDate.setStatus('current') inventory_bicVendor = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 6, 1, 9), String()).setLabel("inventory-bicVendor").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_bicVendor.setStatus('current') inventory_xcvrTable = MibTable((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 7), ).setLabel("inventory-xcvrTable") if mibBuilder.loadTexts: inventory_xcvrTable.setStatus('current') inventory_xcvrEntry = MibTableRow((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 7, 1), ).setLabel("inventory-xcvrEntry").setIndexNames((0, "BTI7800-INVENTORY-MIB", "inventory-xcvrChassisNum"), (0, "BTI7800-INVENTORY-MIB", "inventory-xcvrSlotNum"), (0, "BTI7800-INVENTORY-MIB", "inventory-xcvrSubslotNum"), (0, "BTI7800-INVENTORY-MIB", "inventory-xcvrPortNum")) if mibBuilder.loadTexts: inventory_xcvrEntry.setStatus('current') inventory_xcvrChassisNum = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 7, 1, 1), ChassisIndexT()).setLabel("inventory-xcvrChassisNum") if mibBuilder.loadTexts: inventory_xcvrChassisNum.setStatus('current') inventory_xcvrSlotNum = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 7, 1, 2), ModuleIndexT()).setLabel("inventory-xcvrSlotNum") if mibBuilder.loadTexts: inventory_xcvrSlotNum.setStatus('current') inventory_xcvrSubslotNum = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 7, 1, 3), BicIndexT()).setLabel("inventory-xcvrSubslotNum") if mibBuilder.loadTexts: inventory_xcvrSubslotNum.setStatus('current') inventory_xcvrPortNum = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 7, 1, 4), PortIndexT()).setLabel("inventory-xcvrPortNum") if mibBuilder.loadTexts: inventory_xcvrPortNum.setStatus('current') inventory_xcvrName = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 7, 1, 5), String()).setLabel("inventory-xcvrName").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_xcvrName.setStatus('current') inventory_xcvrPEC = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 7, 1, 6), String()).setLabel("inventory-xcvrPEC").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_xcvrPEC.setStatus('current') inventory_xcvrRevision = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 7, 1, 7), UnsignedShort()).setLabel("inventory-xcvrRevision").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_xcvrRevision.setStatus('current') inventory_xcvrSerialNumber = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 7, 1, 8), String()).setLabel("inventory-xcvrSerialNumber").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_xcvrSerialNumber.setStatus('current') inventory_xcvrManufactureDate = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 7, 1, 9), DateAndTime()).setLabel("inventory-xcvrManufactureDate").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_xcvrManufactureDate.setStatus('current') inventory_xcvrVendor = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 7, 1, 10), String()).setLabel("inventory-xcvrVendor").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_xcvrVendor.setStatus('current') inventory_xcvrVendorPartNum = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 7, 1, 11), String()).setLabel("inventory-xcvrVendorPartNum").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_xcvrVendorPartNum.setStatus('current') inventory_xcvrType = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 7, 1, 12), Integer32().subtype(subtypeSpec=ConstraintsUnion(SingleValueConstraint(0, 1, 2, 3, 4, 5, 6, 7))).clone(namedValues=NamedValues(("unknown", 0), ("sfp", 1), ("sfpPlus", 2), ("cfp", 3), ("msa", 4), ("qsfp", 5), ("qsfp28", 6), ("msa400", 7)))).setLabel("inventory-xcvrType").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_xcvrType.setStatus('current') inventory_preampTable = MibTable((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 8), ).setLabel("inventory-preampTable") if mibBuilder.loadTexts: inventory_preampTable.setStatus('current') inventory_preampEntry = MibTableRow((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 8, 1), ).setLabel("inventory-preampEntry").setIndexNames((0, "BTI7800-INVENTORY-MIB", "inventory-preampChassisNum"), (0, "BTI7800-INVENTORY-MIB", "inventory-preampSlotNum"), (0, "BTI7800-INVENTORY-MIB", "inventory-preampSubslotNum")) if mibBuilder.loadTexts: inventory_preampEntry.setStatus('current') inventory_preampChassisNum = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 8, 1, 1), ChassisIndexT()).setLabel("inventory-preampChassisNum") if mibBuilder.loadTexts: inventory_preampChassisNum.setStatus('current') inventory_preampSlotNum = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 8, 1, 2), ModuleIndexT()).setLabel("inventory-preampSlotNum") if mibBuilder.loadTexts: inventory_preampSlotNum.setStatus('current') inventory_preampSubslotNum = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 8, 1, 3), BicIndexT()).setLabel("inventory-preampSubslotNum") if mibBuilder.loadTexts: inventory_preampSubslotNum.setStatus('current') inventory_preampName = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 8, 1, 4), String()).setLabel("inventory-preampName").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_preampName.setStatus('current') inventory_preampPEC = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 8, 1, 5), String()).setLabel("inventory-preampPEC").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_preampPEC.setStatus('current') inventory_preampRevision = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 8, 1, 6), UnsignedShort()).setLabel("inventory-preampRevision").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_preampRevision.setStatus('current') inventory_preampSerialNumber = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 8, 1, 7), String()).setLabel("inventory-preampSerialNumber").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_preampSerialNumber.setStatus('current') inventory_preampManufactureDate = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 8, 1, 8), DateAndTime()).setLabel("inventory-preampManufactureDate").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_preampManufactureDate.setStatus('current') inventory_preampVendor = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 8, 1, 9), String()).setLabel("inventory-preampVendor").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_preampVendor.setStatus('current') inventory_eslTable = MibTable((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 9), ).setLabel("inventory-eslTable") if mibBuilder.loadTexts: inventory_eslTable.setStatus('current') inventory_eslEntry = MibTableRow((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 9, 1), ).setLabel("inventory-eslEntry").setIndexNames((0, "BTI7800-INVENTORY-MIB", "inventory-eslChassisNum"), (0, "BTI7800-INVENTORY-MIB", "inventory-eslSlotNum")) if mibBuilder.loadTexts: inventory_eslEntry.setStatus('current') inventory_eslChassisNum = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 9, 1, 1), ChassisIndexT()).setLabel("inventory-eslChassisNum") if mibBuilder.loadTexts: inventory_eslChassisNum.setStatus('current') inventory_eslSlotNum = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 9, 1, 2), UnsignedByte()).setLabel("inventory-eslSlotNum") if mibBuilder.loadTexts: inventory_eslSlotNum.setStatus('current') inventory_eslName = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 9, 1, 3), String()).setLabel("inventory-eslName").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_eslName.setStatus('current') inventory_eslPEC = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 9, 1, 4), String()).setLabel("inventory-eslPEC").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_eslPEC.setStatus('current') inventory_eslRevision = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 9, 1, 5), UnsignedShort()).setLabel("inventory-eslRevision").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_eslRevision.setStatus('current') inventory_eslSerialNumber = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 9, 1, 6), String()).setLabel("inventory-eslSerialNumber").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_eslSerialNumber.setStatus('current') inventory_eslManufactureDate = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 9, 1, 7), DateAndTime()).setLabel("inventory-eslManufactureDate").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_eslManufactureDate.setStatus('current') inventory_eslVendor = MibScalar((1, 3, 6, 1, 4, 1, 18070, 2, 9, 3, 2, 9, 1, 8), String()).setLabel("inventory-eslVendor").setMaxAccess("readonly") if mibBuilder.loadTexts: inventory_eslVendor.setStatus('current') mibBuilder.exportSymbols("BTI7800-INVENTORY-MIB", inventory_cmmRevision=inventory_cmmRevision, inventory_eslTable=inventory_eslTable, inventory_xcvrSerialNumber=inventory_xcvrSerialNumber, inventory_pemPEC=inventory_pemPEC, inventory_xcvrSlotNum=inventory_xcvrSlotNum, inventory_cmmPEC=inventory_cmmPEC, inventory_pemName=inventory_pemName, inventory_eslSlotNum=inventory_eslSlotNum, FanIndexT=FanIndexT, inventory_moduleSerialNumber=inventory_moduleSerialNumber, inventory_bicName=inventory_bicName, inventory_fanChassisNum=inventory_fanChassisNum, inventory_eslRevision=inventory_eslRevision, inventory_xcvrTable=inventory_xcvrTable, String=String, inventory_chassisName=inventory_chassisName, inventory_fanManufactureDate=inventory_fanManufactureDate, inventory_xcvrEntry=inventory_xcvrEntry, inventory_eslChassisNum=inventory_eslChassisNum, inventory_moduleTable=inventory_moduleTable, inventory_preampVendor=inventory_preampVendor, inventory_pemTable=inventory_pemTable, inventory_xcvrPortNum=inventory_xcvrPortNum, inventory_preampRevision=inventory_preampRevision, inventory_preampSlotNum=inventory_preampSlotNum, inventory_fanName=inventory_fanName, inventory_preampSerialNumber=inventory_preampSerialNumber, inventory_moduleVendor=inventory_moduleVendor, inventory_eslName=inventory_eslName, inventory_bicRevision=inventory_bicRevision, inventory_cmmManufactureDate=inventory_cmmManufactureDate, inventory_preampManufactureDate=inventory_preampManufactureDate, inventory_moduleSlotNum=inventory_moduleSlotNum, inventory_cmmEntry=inventory_cmmEntry, inventory_bicSubslotNum=inventory_bicSubslotNum, inventory_pemManufactureDate=inventory_pemManufactureDate, inventory_xcvrSubslotNum=inventory_xcvrSubslotNum, inventory_bicManufactureDate=inventory_bicManufactureDate, ConfdString=ConfdString, inventory_pemVendor=inventory_pemVendor, inventory_fanSlotNum=inventory_fanSlotNum, inventory_pemSlotNum=inventory_pemSlotNum, inventory_pemChassisNum=inventory_pemChassisNum, inventory_fanEntry=inventory_fanEntry, inventory_cmmChassisNum=inventory_cmmChassisNum, inventory_cmmTable=inventory_cmmTable, inventory_cmmName=inventory_cmmName, UnsignedByte=UnsignedByte, inventory_eslVendor=inventory_eslVendor, PortIndexT=PortIndexT, inventory_cmmSlotNum=inventory_cmmSlotNum, inventory_eslPEC=inventory_eslPEC, ChassisIndexT=ChassisIndexT, inventory_bicEntry=inventory_bicEntry, inventory_preampEntry=inventory_preampEntry, inventory_bicPEC=inventory_bicPEC, inventory_chassisSerialNumber=inventory_chassisSerialNumber, inventory_preampName=inventory_preampName, inventory_xcvrVendorPartNum=inventory_xcvrVendorPartNum, inventory_xcvrType=inventory_xcvrType, inventory_bicChassisNum=inventory_bicChassisNum, inventory_moduleRevision=inventory_moduleRevision, inventory_preampSubslotNum=inventory_preampSubslotNum, inventory_pemEntry=inventory_pemEntry, inventory_xcvrPEC=inventory_xcvrPEC, inventory_xcvrManufactureDate=inventory_xcvrManufactureDate, CmmIndexT=CmmIndexT, inventory_modulePEC=inventory_modulePEC, inventory_moduleManufactureDate=inventory_moduleManufactureDate, inventory_xcvrChassisNum=inventory_xcvrChassisNum, inventory_chassisEntry=inventory_chassisEntry, inventory_chassisManufactureDate=inventory_chassisManufactureDate, inventory_moduleEntry=inventory_moduleEntry, inventory_fanSerialNumber=inventory_fanSerialNumber, inventory_cmmVendor=inventory_cmmVendor, inventory_eslManufactureDate=inventory_eslManufactureDate, InetAddressIP=InetAddressIP, inventory_pemSerialNumber=inventory_pemSerialNumber, inventory_preampChassisNum=inventory_preampChassisNum, inventory_fanRevision=inventory_fanRevision, inventory_moduleChassisNum=inventory_moduleChassisNum, inventory_xcvrVendor=inventory_xcvrVendor, inventory_bicTable=inventory_bicTable, inventory_preampTable=inventory_preampTable, inventory_eslEntry=inventory_eslEntry, PYSNMP_MODULE_ID=bTI7800_INVENTORY_MIB, inventory_chassisPEC=inventory_chassisPEC, inventory_xcvrRevision=inventory_xcvrRevision, inventory_chassisChassisNum=inventory_chassisChassisNum, inventory_preampPEC=inventory_preampPEC, inventory_xcvrName=inventory_xcvrName, inventory_bicVendor=inventory_bicVendor, inventory_bicSerialNumber=inventory_bicSerialNumber, inventory_cmmSerialNumber=inventory_cmmSerialNumber, inventory_chassisTable=inventory_chassisTable, inventory_chassisRevision=inventory_chassisRevision, PemIndexT=PemIndexT, inventory_bicSlotNum=inventory_bicSlotNum, inventory_eslSerialNumber=inventory_eslSerialNumber, UnsignedShort=UnsignedShort, inventory_pemRevision=inventory_pemRevision, inventory_fanTable=inventory_fanTable, inventory_moduleName=inventory_moduleName, BicIndexT=BicIndexT, bTI7800_INVENTORY_MIB=bTI7800_INVENTORY_MIB, inventory_fanPEC=inventory_fanPEC, inventory_chassisVendor=inventory_chassisVendor, inventory_fanVendor=inventory_fanVendor, ModuleIndexT=ModuleIndexT)
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4,847
0.769853
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0.082973
30,311
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114.814394
0.751979
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2
ec12e98cc644839d7e6aaadb7ca7b24595f6ffa0
8,897
py
Python
main/page/foreign_transfer.py
keith-lewis100/pont-workbench
010716e115c47ca881645800befffcc97d07f638
[ "MIT" ]
null
null
null
main/page/foreign_transfer.py
keith-lewis100/pont-workbench
010716e115c47ca881645800befffcc97d07f638
[ "MIT" ]
null
null
null
main/page/foreign_transfer.py
keith-lewis100/pont-workbench
010716e115c47ca881645800befffcc97d07f638
[ "MIT" ]
null
null
null
#_*_ coding: UTF-8 _*_ from flask import request, redirect, render_template from application import app import wtforms import db import data_models import mailer import renderers import properties import views from role_types import RoleType import urls from . import grants from . import purchases STATE_REQUESTED = 1 STATE_TRANSFERRED = 2 state_labels = ['Closed', 'Requested', 'Transferred'] class TransferModel(data_models.Model): def __init__(self, entity, grant_list, payment_list): super(TransferModel, self).__init__(entity, None) self.grant_list = grant_list self.payment_list = payment_list def perform_transferred(self, action_name): form = self.get_form(action_name) if not form.validate(): return False transfer = self.entity form.populate_obj(transfer) transfer.state_index = STATE_TRANSFERRED transfer.put() parent_audit = self.audit(action_name, 'Transfer performed') for payment in self.payment_list: payment.paid = True payment.put() purchase = data_models.get_parent(payment) if payment.payment_type == 'invoice': purchase.state_index = data_models.STATE_CLOSED purchase.put() self.audit(action_name, 'Payment transferred', purchase, parent_audit.key) data_models.email_entity_creator(purchase, self.user, 'Payment transferred') for grant in self.grant_list: data_models.email_entity_creator(grant, self.user, 'Transfer performed') self.send_supplier_email() return True def send_supplier_email(self): transfer = self.entity supplier = data_models.get_parent(transfer) column = views.view_entity_single_column(transfer, email_properties) purchase_payments = render_purchase_payments_list(self.payment_list) grant_payments = render_grants_due_list(self.grant_list, selectable=False, no_links=True) content = renderers.render_div(column, purchase_payments, grant_payments) mailer.send_email('PONT Transfer %s' % transfer.ref_id, content, supplier.contact_emails) def perform_ack(self, action_name): parent_audit = self.perform_close(action_name) transfer = self.entity for grant in self.grant_list: project = grant.project.get() if project.partner is None: grant.state_index = data_models.STATE_CLOSED grant.put() self.audit(action_name, 'Transfer acknowledged', grant, parent_audit.key) data_models.email_entity_creator(grant, self.user, 'Transfer acknowledged') return True ACTION_TRANSFERRED = views.StateAction('transferred', 'Transferred', RoleType.PAYMENT_ADMIN, TransferModel.perform_transferred, [STATE_REQUESTED]) ACTION_ACKNOWLEDGED = views.StateAction('ack', 'Received', RoleType.PAYMENT_ADMIN, TransferModel.perform_ack, [STATE_TRANSFERRED]) action_list = [ACTION_TRANSFERRED, ACTION_ACKNOWLEDGED] def show_totals(transfer): sterling, shillings = transfer.totals return u"£{:,} + {:,} Ush".format(sterling, shillings) def show_shillings(transfer): if not transfer.exchange_rate: return "" sterling, shillings = transfer.totals total_shillings = int(sterling * transfer.exchange_rate) + shillings return u"{:,} Ush".format(total_shillings) ref_field = properties.StringProperty('ref_id') state_field = properties.SelectProperty('state_index', 'State', enumerate(state_labels)) creator_field = properties.KeyProperty('creator') creation_date_field = properties.DateProperty('creation_date', format='%Y-%m-%d') rate_field = properties.StringProperty('exchange_rate') request_totals_field = properties.StringProperty(show_totals, 'Request Totals') shillings_total_field = properties.StringProperty(show_shillings, 'Total Amount') def get_partner(grant): project = grant.project.get() if project.partner: return project.partner.get().name return "" grant_field_list = [ grants.state_field, grants.creator_field, grants.project_field, grants.amount_field, grants.transferred_amount_field, properties.StringProperty(get_partner, 'Implementing Partner'), grants.source_field, properties.StringProperty(lambda e: e.project.get().fund.get().name, 'Destination Fund') ] po_number_field = properties.StringProperty(lambda e: e.key.parent().get().po_number, 'PO Number') requestor_field = properties.KeyProperty(lambda e: e.key.parent().get().creator, 'Requestor') source_field = properties.StringProperty(lambda e: e.key.parent().parent().get().code, 'Source Fund') payment_field_list = [purchases.payment_type_field, po_number_field, requestor_field, source_field, purchases.payment_amount_field] class ExchangeRateForm(wtforms.Form): exchange_rate = wtforms.IntegerField('Exchange Rate', validators=[wtforms.validators.InputRequired()]) @app.route('/foreigntransfer_list/<db_id>') def view_foreigntransfer_list(db_id): supplier = data_models.lookup_entity(db_id) dummy_transfer = db.ForeignTransfer(parent=supplier.key) model = data_models.Model(dummy_transfer, None) breadcrumbs = views.view_breadcrumbs(supplier) transfer_query = db.ForeignTransfer.query(ancestor=supplier.key).order(-db.ForeignTransfer.state_index, db.ForeignTransfer.ref_id) transfer_fields = [state_field, ref_field, creation_date_field, rate_field] model.show_closed = request.args.has_key('show_closed') db_filter = db.ForeignTransfer.state_index == 0 if model.show_closed else db.ForeignTransfer.state_index > 0 transfer_query = transfer_query.filter(db_filter) entity_table = views.view_entity_list(transfer_query.fetch(), transfer_fields) buttons = views.view_actions([views.ACTION_FILTER], model) user_controls = views.view_user_controls(model) return render_template('layout.html', title='Foreign Transfer List', breadcrumbs=breadcrumbs, user=user_controls, buttons=buttons, content=entity_table) def render_grants_due_list(grant_list, selectable=True, no_links=True): sub_heading = renderers.sub_heading('Grant Payments') table = views.view_entity_list(grant_list, grant_field_list, selectable, no_links) return (sub_heading, table) def render_purchase_payments_list(payment_list): column_headers = properties.get_labels(payment_field_list) payment_grid = properties.display_entity_list(payment_list, payment_field_list, no_links=True) purchase_list = [data_models.get_parent(e) for e in payment_list] payment_url_list = map(urls.url_for_entity, purchase_list) sub_heading = renderers.sub_heading('Purchase Payments') table = renderers.render_table(column_headers, payment_grid, payment_url_list) return (sub_heading, table) def calculate_totals(payments): total_sterling = 0 total_shillings = 0 for p in payments: if p.amount.currency == 'sterling': total_sterling += p.amount.value else: total_shillings += p.amount.value return (total_sterling, total_shillings) @app.route('/foreigntransfer/<db_id>', methods=['GET', 'POST']) def view_foreigntransfer(db_id): transfer = data_models.lookup_entity(db_id) grant_list = db.Grant.query(db.Grant.transfer == transfer.key).fetch() payment_list = db.PurchasePayment.query(db.PurchasePayment.transfer == transfer.key).fetch() transfer.totals = calculate_totals(grant_list + payment_list) form = ExchangeRateForm(request.form) model = TransferModel(transfer, grant_list, payment_list) model.add_form(ACTION_TRANSFERRED.name, form) if request.method == 'POST'and views.handle_post(model, action_list): return redirect(request.base_url) transfer_fields = (creation_date_field, ref_field, state_field, rate_field, request_totals_field, shillings_total_field, creator_field) breadcrumbs = views.view_breadcrumbs_list(transfer) grid = views.view_entity(transfer, transfer_fields) grant_payments = render_grants_due_list(grant_list) purchase_payments = render_purchase_payments_list(payment_list) history = views.view_entity_history(transfer.key) content = renderers.render_div(grid, purchase_payments, grant_payments, history) buttons = views.view_actions(action_list, model) user_controls = views.view_user_controls(model) return render_template('layout.html', title='Foreign Transfer', breadcrumbs=breadcrumbs, user=user_controls, buttons=buttons, content=content) email_properties = (ref_field, shillings_total_field)
46.098446
112
0.725188
1,063
8,897
5.780809
0.171214
0.021155
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0.009764
0.237592
0.177543
0.109845
0.089504
0.046216
0.030269
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0.18096
8,897
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46.338542
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ec13fe98492730273c7c459f9bb522087bca7d2e
889
py
Python
patient_app/migrations/0006_auto_20200909_1921.py
JuliasBright/SendMoney
d13e2df81bf75a9154abfc57d897a416b4950e80
[ "CC0-1.0" ]
1
2021-01-29T16:57:42.000Z
2021-01-29T16:57:42.000Z
patient_app/migrations/0006_auto_20200909_1921.py
JuliasBright/SendMoney
d13e2df81bf75a9154abfc57d897a416b4950e80
[ "CC0-1.0" ]
null
null
null
patient_app/migrations/0006_auto_20200909_1921.py
JuliasBright/SendMoney
d13e2df81bf75a9154abfc57d897a416b4950e80
[ "CC0-1.0" ]
null
null
null
# Generated by Django 3.1 on 2020-09-09 19:21 import datetime from django.db import migrations, models class Migration(migrations.Migration): dependencies = [ ('patient_app', '0005_auto_20200817_1713'), ] operations = [ migrations.AlterField( model_name='booking_patient', name='date', field=models.DateTimeField(blank=True, default=datetime.datetime(2020, 9, 9, 19, 21, 45, 74281)), ), migrations.AlterField( model_name='patient_register', name='date', field=models.DateTimeField(blank=True, default=datetime.datetime(2020, 9, 9, 19, 21, 45, 73284)), ), migrations.AlterField( model_name='patient_register', name='image', field=models.ImageField(default='log.png', upload_to='patient_app/images'), ), ]
29.633333
109
0.605174
96
889
5.479167
0.5
0.022814
0.142586
0.165399
0.463878
0.463878
0.463878
0.288973
0.288973
0.288973
0
0.098918
0.272216
889
29
110
30.655172
0.714065
0.048369
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0.434783
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0.140995
0.027251
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false
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0.086957
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2
ec1403cf6f7b91861d5877a772a1b93da4045f15
2,332
py
Python
finite_element_networks/lightning/data/common.py
martenlienen/finite-element-networks
5e8f6ecc473d1e93ccf366fcc45a47b08492ffde
[ "MIT" ]
5
2022-03-21T12:39:01.000Z
2022-03-31T06:02:01.000Z
finite_element_networks/lightning/data/common.py
martenlienen/finite-element-networks
5e8f6ecc473d1e93ccf366fcc45a47b08492ffde
[ "MIT" ]
null
null
null
finite_element_networks/lightning/data/common.py
martenlienen/finite-element-networks
5e8f6ecc473d1e93ccf366fcc45a47b08492ffde
[ "MIT" ]
1
2022-03-26T02:58:58.000Z
2022-03-26T02:58:58.000Z
from dataclasses import dataclass from typing import Callable, Optional import numpy as np from scipy.spatial import Delaunay from ...data import TimeEncoder from ...domain import ( BoundaryAnglePredicate, CellPredicate, Domain, select_boundary_mesh_cells, ) @dataclass(frozen=True) class MeshConfig: """Configuration for the generation of a sparse mesh from a larger set of points. Attributes ---------- k Number of nodes to select epsilon Maximum angle of boundary cells to filter out in degrees seed Random seed for reproducibility """ k: int epsilon: float seed: int def random_state(self): return np.random.RandomState(int(self.seed) % 2**32) def epsilon_radians(self): return self.epsilon * np.pi / 180 def angle_predicate(self, tri: Delaunay): return BoundaryAnglePredicate(tri.points, self.epsilon_radians()) def sample_mesh( config: MeshConfig, points: np.ndarray, predicate_factory: Optional[Callable[[Delaunay], CellPredicate]] = None, ) -> tuple[np.ndarray, Domain]: """Create a domain from a subset of points, optionally filtering out some cells. Returns ------- Indices of the points that were selected as mesh nodes and the domain """ import skfem from sklearn_extra.cluster import KMedoids # Select k sparse observation points uniformly-ish km = KMedoids( n_clusters=config.k, init="k-medoids++", random_state=config.random_state() ) km.fit(points) node_indices = km.medoid_indices_ # Mesh the points with Delaunay triangulation tri = Delaunay(points[node_indices]) # Filter out mesh boundary cells that are too acute or contain mostly land if predicate_factory is not None: predicate = predicate_factory(tri) filter = select_boundary_mesh_cells(tri, predicate) tri.simplices = tri.simplices[~filter] # Ensure that every node is in at least one mesh cell cell_counts = np.zeros(config.k, dtype=int) np.add.at(cell_counts, tri.simplices, 1) assert all(cell_counts >= 1) mesh = skfem.MeshTri( np.ascontiguousarray(tri.points.T), np.ascontiguousarray(tri.simplices.T) ) domain = Domain(tri.points, mesh=mesh) return node_indices, domain
27.435294
85
0.690823
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2,332
5.283333
0.423333
0.030284
0.022713
0.029022
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0.004425
0.2247
2,332
84
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27.761905
0.872235
0.268868
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0.021277
1
0.085106
false
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0.170213
0.06383
0.425532
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0
1
0
ec15071df1bf9ea9d459a13a9ce32f102c847633
1,245
py
Python
DataProcess/community_detection.py
teamclouday/Mooner
ed7deed101e92b1d8f5ec47091cdbdadb2c1159c
[ "MIT" ]
null
null
null
DataProcess/community_detection.py
teamclouday/Mooner
ed7deed101e92b1d8f5ec47091cdbdadb2c1159c
[ "MIT" ]
null
null
null
DataProcess/community_detection.py
teamclouday/Mooner
ed7deed101e92b1d8f5ec47091cdbdadb2c1159c
[ "MIT" ]
null
null
null
import os import community import pandas as pd import networkx as nx graphdf = pd.read_csv(os.path.join("..", "NetworkData", "fetchcontent.csv")) G = nx.from_pandas_edgelist(graphdf) partition = community.best_partition(G) # following code comes from https://medium.com/@adityagandhi.7/network-analysis-and-community-structure-for-market-surveillance-using-python-networkx-65413e7b7fee values=[partition.get(node) for node in G.nodes()] list_com=partition.values() # Creating a dictionary like {community_number:list_of_participants} dict_nodes={} # Populating the dictionary with items for each_item in partition.items(): community_num=each_item[1] community_node=str(each_item[0]) if community_num in dict_nodes.keys(): value=dict_nodes.get(community_num) + ' | ' + community_node dict_nodes.update({community_num:value}) else: dict_nodes.update({community_num:community_node}) # Creating a dataframe from the diet, and getting the output into excel community_df=pd.DataFrame.from_dict(dict_nodes, orient='index',columns=['Members']) community_df.index.rename('Community Num' , inplace=True) community_df.to_csv('community.csv') print("Number of communities: {}".format(len(community_df.index)))
36.617647
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34
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36.617647
0.827306
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1
0
ec18386bf1e4f992e71d8f27e8056dac7297cb93
1,404
py
Python
getFileList.py
DoJing/hd3
124b1b169422898830d2cd602cf6e074f1238b6f
[ "BSD-3-Clause" ]
null
null
null
getFileList.py
DoJing/hd3
124b1b169422898830d2cd602cf6e074f1238b6f
[ "BSD-3-Clause" ]
null
null
null
getFileList.py
DoJing/hd3
124b1b169422898830d2cd602cf6e074f1238b6f
[ "BSD-3-Clause" ]
null
null
null
import os import cv2 def ListFilesToTxt(dir,file,wildcard,recursion): file_list=[] exts = wildcard.split(" ") files = os.listdir(dir) for name in files: fullname=os.path.join(dir,name) if(os.path.isdir(fullname) & recursion): ListFilesToTxt(fullname,file,wildcard,recursion) else: for ext in exts: if(name.endswith(ext)): file_list.append(name) break file_list.sort() resize = False factor = 0.5 if(resize): for i in range(0,len(file_list)): fullname=os.path.join(dir,file_list[i]) img=cv2.imread(fullname) height, width = img.shape[:2] size = (int(width * factor), int(height * factor)) img=cv2.resize(img,size) fullname = os.path.join("/media/doing/C8BA5288BA5272C4/LINUX/pot", file_list[i]) cv2.imwrite(fullname,img) for i in range(0,len(file_list)-1): file.write(file_list[i] + " ") file.write(file_list[i+1]+"\n") def getFileList(): dir="/media/doing/Samsung USB/flowerpot" #文件路径 outfile="flowerpot.txt" #写入的txt文件名 wildcard = ".JPG" #要读取的文件类型; file = open(outfile,"w") if not file: print ("cannot open the file %s for writing" % outfile) ListFilesToTxt(dir,file,wildcard, 1) file.close() getFileList()
29.87234
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4.539326
0.404494
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0.153465
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0.056931
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1,404
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30.521739
0.782869
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ec18cd1695ba62deebb499631731dcc890f6543b
7,647
py
Python
Lib/site-packages/ginga/canvas/transform.py
fochoao/cpython
3dc84b260e5bced65ebc2c45c40c8fa65f9b5aa9
[ "bzip2-1.0.6", "0BSD" ]
null
null
null
Lib/site-packages/ginga/canvas/transform.py
fochoao/cpython
3dc84b260e5bced65ebc2c45c40c8fa65f9b5aa9
[ "bzip2-1.0.6", "0BSD" ]
20
2021-05-03T18:02:23.000Z
2022-03-12T12:01:04.000Z
Lib/site-packages/ginga/canvas/transform.py
fochoao/cpython
3dc84b260e5bced65ebc2c45c40c8fa65f9b5aa9
[ "bzip2-1.0.6", "0BSD" ]
null
null
null
# # transform.py -- coordinate transforms for Ginga # # This is open-source software licensed under a BSD license. # Please see the file LICENSE.txt for details. # import numpy as np from ginga import trcalc __all__ = ['TransformError', 'BaseTransform', 'ComposedTransform', 'CanvasWindowTransform', 'CartesianWindowTransform', 'RotationTransform', 'ScaleTransform', 'DataCartesianTransform', 'OffsetDataTransform', 'WCSDataTransform', ] class TransformError(Exception): pass class BaseTransform(object): def __init__(self): super(BaseTransform, self).__init__() def to_(self, x, y): raise TransformError("subclass should override this method") def from_(self, tx, ty): raise TransformError("subclass should override this method") def __add__(self, trans): return ComposedTransform(self, trans) class ComposedTransform(BaseTransform): """ A transform that composes two other transforms to make a new one. """ def __init__(self, tform1, tform2): super(ComposedTransform, self).__init__() self.tform1 = tform1 self.tform2 = tform2 def to_(self, x, y, **kwargs): return self.tform2.to_(*self.tform1.to_(x, y, **kwargs)) def from_(self, tx, ty, **kwargs): return self.tform1.from_(*self.tform2.from_(tx, ty), **kwargs) class CanvasWindowTransform(BaseTransform): """ A transform from a possibly Y-flipped pixel space to a typical window pixel coordinate space with the lower left at (0, 0). """ def __init__(self, viewer): super(CanvasWindowTransform, self).__init__() self.viewer = viewer def to_(self, cvs_x, cvs_y): if self.viewer._originUpper: return (cvs_x, cvs_y) # invert Y coord for backends that have the origin in the lower left win_wd, win_ht = self.viewer.get_window_size() win_x, win_y = cvs_x, win_ht - cvs_y return (win_x, win_y) def from_(self, win_x, win_y): return self.to_(win_x, win_y) class CartesianWindowTransform(BaseTransform): """ A transform from cartesian coordinates to the window pixel coordinates of a viewer. """ def __init__(self, viewer, as_int=True): super(CartesianWindowTransform, self).__init__() self.viewer = viewer self.as_int = as_int def to_(self, off_x, off_y): # add center pixel to convert from X/Y coordinate space to # canvas graphics space ctr_x, ctr_y = self.viewer.get_center() win_x = off_x + ctr_x if self.viewer._originUpper: win_y = ctr_y - off_y else: win_y = off_y + ctr_y # round to pixel units, if asked if self.as_int: win_x = np.rint(win_x).astype(np.int) win_y = np.rint(win_y).astype(np.int) return (win_x, win_y) def from_(self, win_x, win_y): """Reverse of :meth:`to_`.""" # make relative to center pixel to convert from canvas # graphics space to standard X/Y coordinate space ctr_x, ctr_y = self.viewer.get_center() off_x = win_x - ctr_x if self.viewer._originUpper: off_y = ctr_y - win_y else: off_y = win_y - ctr_y return (off_x, off_y) class RotationTransform(BaseTransform): """ A transform in cartesian coordinates based on the flip/swap setting and rotation setting of a viewer. """ def __init__(self, viewer): super(RotationTransform, self).__init__() self.viewer = viewer def to_(self, off_x, off_y): t_ = self.viewer.t_ if t_['flip_x']: off_x = - off_x if t_['flip_y']: off_y = - off_y if t_['swap_xy']: off_x, off_y = off_y, off_x if t_['rot_deg'] != 0: off_x, off_y = trcalc.rotate_pt(off_x, off_y, t_['rot_deg']) return (off_x, off_y) def from_(self, off_x, off_y): """Reverse of :meth:`to_`.""" t_ = self.viewer.t_ if t_['rot_deg'] != 0: off_x, off_y = trcalc.rotate_pt(off_x, off_y, -t_['rot_deg']) if t_['swap_xy']: off_x, off_y = off_y, off_x if t_['flip_y']: off_y = - off_y if t_['flip_x']: off_x = - off_x return (off_x, off_y) class ScaleTransform(BaseTransform): """ A transform in cartesian coordinates based on the scale of a viewer. """ def __init__(self, viewer): super(ScaleTransform, self).__init__() self.viewer = viewer def to_(self, off_x, off_y): """Reverse of :meth:`from_`.""" # scale according to current settings off_x *= self.viewer._org_scale_x off_y *= self.viewer._org_scale_y return (off_x, off_y) def from_(self, off_x, off_y): # Reverse scaling off_x = off_x * (1.0 / self.viewer._org_scale_x) off_y = off_y * (1.0 / self.viewer._org_scale_y) return (off_x, off_y) class DataCartesianTransform(BaseTransform): """ A transform from data coordinates to cartesian coordinates based on a viewer's pan position. """ def __init__(self, viewer, use_center=True): super(DataCartesianTransform, self).__init__() self.viewer = viewer # If use_center is True, then the coordinates are mapped such that the # pixel is centered on the square when the image is zoomed in past # 1X. This is the specification of the FITS image standard, # that the pixel is centered on the integer row/column. self.use_center = use_center def to_(self, data_x, data_y): """Reverse of :meth:`from_`.""" if self.use_center: data_x -= self.viewer.data_off data_y -= self.viewer.data_off # subtract data indexes at center reference pixel off_x = data_x - self.viewer._org_x off_y = data_y - self.viewer._org_y return (off_x, off_y) def from_(self, off_x, off_y): # Add data index at center to offset data_x = self.viewer._org_x + off_x data_y = self.viewer._org_y + off_y if self.use_center: data_x += self.viewer.data_off data_y += self.viewer.data_off return (data_x, data_y) class OffsetDataTransform(BaseTransform): """ A transform whose coordinate space is offsets from a point in data space. """ def __init__(self, pt): super(OffsetDataTransform, self).__init__() self.pt = pt def to_(self, delta_x, delta_y): ref_x, ref_y = self.pt[:2] return (ref_x + delta_x, ref_y + delta_y) def from_(self, data_x, data_y): ref_x, ref_y = self.pt[:2] return (data_x - ref_x, data_y - ref_y) class WCSDataTransform(BaseTransform): """ A transform whose coordinate space is based on the WCS of the primary image loaded in a viewer. """ def __init__(self, viewer): super(WCSDataTransform, self).__init__() self.viewer = viewer def to_(self, lon, lat): image = self.viewer.get_image() if image is None: raise TransformError("No image, no WCS") data_x, data_y = image.radectopix(lon, lat) return (data_x, data_y) def from_(self, data_x, data_y): image = self.viewer.get_image() if image is None: raise TransformError("No image, no WCS") lon, lat = image.pixtoradec(data_x, data_y) return (lon, lat) #END
28.427509
78
0.613574
1,058
7,647
4.135161
0.169187
0.077714
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0.032914
0.465371
0.403886
0.383314
0.294857
0.221029
0.1712
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0.286518
7,647
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0.798021
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false
0.006803
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0.027211
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ec19b37d7cd7097b5f677c5e778aa0038e22318d
1,179
py
Python
problems/098.Validate_Binary_Search_Tree/li_inorder.py
subramp-prep/leetcode
d125201d9021ab9b1eea5e5393c2db4edd84e740
[ "Unlicense" ]
null
null
null
problems/098.Validate_Binary_Search_Tree/li_inorder.py
subramp-prep/leetcode
d125201d9021ab9b1eea5e5393c2db4edd84e740
[ "Unlicense" ]
null
null
null
problems/098.Validate_Binary_Search_Tree/li_inorder.py
subramp-prep/leetcode
d125201d9021ab9b1eea5e5393c2db4edd84e740
[ "Unlicense" ]
null
null
null
# coding=utf-8 # Author: Jianghan LI # Question: 098.Validate_Binary_Search_Tree # Date: 2017-04-17 class Solution: def isValidBST(self, root): self.res = [] return self.inOrder(root) def inOrder(self, root): if not root: return True if not self.inOrder(root.left): return False if len(self) and self.res[-1] >= root.val: return False self.res.append(root.val) return self.inOrder(root.right) # Simple inorder traversal is quite slow.. # Yes, O(n) guaranteed, but do we have chance to "short circuit" as soon as # we find the incorrect ordering while doing the inOrder(). # So I modified the solution. # https://discuss.leetcode.com/topic/10455/python-version-based-on-inorder-traversal class Solution: def isValidBST(self, root): self.prev = -float('inf') return self.inOrder(root) def inOrder(self, root): if not root: return True if not self.inOrder(root.left): return False if self.prev >= root.val: return False self.prev = root.val return self.inOrder(root.right)
26.2
84
0.619169
160
1,179
4.54375
0.48125
0.090784
0.123796
0.115543
0.5337
0.456671
0.456671
0.261348
0.261348
0.261348
0
0.021176
0.27905
1,179
44
85
26.795455
0.834118
0.318066
0
0.769231
0
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0
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0.153846
false
0
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0.615385
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null
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0
0
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1
0
0
2
ec1afc2d097e9ba6dee27be5f9ffabe63e509327
1,179
py
Python
cronsense/main.py
nicwaller/cronsense
f8eebaf6604edb30c770380a798c2173041eb0fa
[ "MIT" ]
null
null
null
cronsense/main.py
nicwaller/cronsense
f8eebaf6604edb30c770380a798c2173041eb0fa
[ "MIT" ]
null
null
null
cronsense/main.py
nicwaller/cronsense
f8eebaf6604edb30c770380a798c2173041eb0fa
[ "MIT" ]
null
null
null
'''A cron wrapper that tells you more about your cron jobs ''' from __future__ import absolute_import from __future__ import print_function from .config import config from .logger import logger def main(): print("Here is our logger: " + str(logger)) print("Here is our config: " + str(config)) # parser = argparse.ArgumentParser(description='Tells you more about your cron jobs') # parser.add_argument('-s', '--statsd', required=False, help='Send metrics to statsd') # parser.add_argument('-g', '--graphite', required=False, help='Send metrics directly to Graphite') # parser.add_argument('-f', '--logfile', required=False, help='Write to a logfile') # parser.add_argument('-l', '--logformat', required=False, help='What kind of logformat you like') # # TODO: somehow clearly distinguish between the cronsense logs vs. # # how logs of the child process will be directed # # TODO: logstash version 1 and version 0 # # TODO: what if logrotate moves the file out from underneath us # # maybe later I will relent and add email options? # args = parser.parse_args() # print(args) if __name__ == '__main__': main()
34.676471
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1,179
4.901235
0.530864
0.04534
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0.143577
0.073048
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0.002096
0.19084
1,179
33
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35.727273
0.830189
0.685327
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0.030303
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0.111111
true
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0.555556
0.333333
0
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1
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1
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1
0
0
4
ec1cb933ea83bd23033b713c50c654940e1a7f32
1,771
py
Python
runtimes/alibi-explain/mlserver_alibi_explain/explainers/white_box_runtime.py
alexander-manley/MLServer
42eac4715f208f028a8920c984ab296830d90f08
[ "ECL-2.0", "Apache-2.0", "BSD-2-Clause", "BSD-3-Clause" ]
191
2020-06-16T18:07:27.000Z
2022-03-29T05:56:23.000Z
runtimes/alibi-explain/mlserver_alibi_explain/explainers/white_box_runtime.py
alexander-manley/MLServer
42eac4715f208f028a8920c984ab296830d90f08
[ "ECL-2.0", "Apache-2.0", "BSD-2-Clause", "BSD-3-Clause" ]
347
2020-08-21T02:22:04.000Z
2022-03-31T12:27:26.000Z
runtimes/alibi-explain/mlserver_alibi_explain/explainers/white_box_runtime.py
alexander-manley/MLServer
42eac4715f208f028a8920c984ab296830d90f08
[ "ECL-2.0", "Apache-2.0", "BSD-2-Clause", "BSD-3-Clause" ]
56
2020-06-22T14:29:25.000Z
2022-03-25T21:58:48.000Z
from abc import ABC from typing import Any, Type from alibi.api.interfaces import Explainer from mlserver import ModelSettings from mlserver_alibi_explain.common import AlibiExplainSettings from mlserver_alibi_explain.runtime import AlibiExplainRuntimeBase class AlibiExplainWhiteBoxRuntime(ABC, AlibiExplainRuntimeBase): """ White box alibi explain requires access to the full inference model to compute gradients etc. usually in the same domain as the explainer itself. e.g. `IntegratedGradients` """ def __init__(self, settings: ModelSettings, explainer_class: Type[Explainer]): self._inference_model = None self._explainer_class = explainer_class # if we are here we are sure that settings.parameters is set, # just helping mypy assert settings.parameters is not None extra = settings.parameters.extra explainer_settings = AlibiExplainSettings(**extra) # type: ignore # TODO: validate the settings are ok with this specific explainer super().__init__(settings, explainer_settings) async def load(self) -> bool: self._inference_model = await self._get_inference_model() if self.alibi_explain_settings.init_parameters is not None: init_parameters = self.alibi_explain_settings.init_parameters # white box explainers requires access to the inference model init_parameters["model"] = self._inference_model self._model = self._explainer_class(**init_parameters) # type: ignore else: self._model = self._load_from_uri(self._inference_model) self.ready = True return self.ready async def _get_inference_model(self) -> Any: raise NotImplementedError
37.680851
82
0.722191
208
1,771
5.918269
0.389423
0.090983
0.058489
0.038993
0.061738
0.061738
0
0
0
0
0
0
0.219085
1,771
46
83
38.5
0.890094
0.226426
0
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0
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0.021739
0.038462
1
0.038462
false
0
0.230769
0
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0
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0
0
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0
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1
ec1e30101ec04ff986f4f441cf6da3dbede160cc
13,178
py
Python
src/mvnfeed_modules/mvnfeed-cli-transfer/mvnfeed/cli/transfer/transfer.py
Bhaskers-Blu-Org2/mvnfeed-cli
cf4b43e300edee8f5bc64de9bcf1faf924fa2737
[ "MIT" ]
8
2019-08-05T20:28:45.000Z
2021-09-02T09:20:59.000Z
src/mvnfeed_modules/mvnfeed-cli-transfer/mvnfeed/cli/transfer/transfer.py
Bhaskers-Blu-Org2/mvnfeed-cli
cf4b43e300edee8f5bc64de9bcf1faf924fa2737
[ "MIT" ]
3
2019-07-31T10:12:52.000Z
2021-09-13T12:01:51.000Z
src/mvnfeed_modules/mvnfeed-cli-transfer/mvnfeed/cli/transfer/transfer.py
easterapps/mvnfeed-cli
cf4b43e300edee8f5bc64de9bcf1faf924fa2737
[ "MIT" ]
11
2019-07-31T12:58:14.000Z
2021-09-13T12:50:21.000Z
# -------------------------------------------------------------------------------------------- # Copyright (c) Microsoft Corporation. All rights reserved. # Licensed under the MIT License. See License.txt in the project root for license information. # -------------------------------------------------------------------------------------------- import logging import os.path import requests import shutil import xml.etree.ElementTree as ET try: # Python 3 from urllib.request import Request, urlopen except ImportError: # Python 2 from urllib2 import Request, urlopen from .configuration import get_repository, get_stagedir, get_repository_shortname from mvnfeed.cli.common.config import AUTHORIZATION, URL, load_config def transfer_artifact(name, from_repo, to_repo, transfer_deps=False): """ Transfers a single artifact. :param name: name of the artifact to download, following the group_id:artifact_id:version format :param from_repo: name of the source repository :param to_repo: name of the destination repository :param transfer_deps: True if the dependencies must be transferred """ logging.info('transferring %s', name) config = load_config() from_repository = get_repository(config, from_repo) to_repository = get_repository(config, to_repo) stage_dir = get_stagedir(config) _transfer_single_artifact(name, from_repository, to_repository, stage_dir, transfer_deps) def transfer_bulk(filename, from_repo, to_repo, transfer_deps=False): """ Transfers artifacts from a file, one artifact per line. :param filename: name of the file containing the mvnfeed to upload :param from_repo: name of the source repository :param to_repo: name of the destination repository :param transfer_deps: True if the dependencies must be transferred """ logging.info('transferring from file %s', filename) config = load_config() from_repository = get_repository(config, from_repo) to_repository = get_repository(config, to_repo) stage_dir = get_stagedir(config) with open(filename, 'r') as file: lines = file.readlines() for line in lines: line = line.strip().rstrip() if line: _transfer_single_artifact(line, from_repository, to_repository, stage_dir, transfer_deps) def _transfer_single_artifact(name, from_repository, to_repository, stage_dir, transfer_deps): logging.debug('download url: %s', from_repository[URL]) logging.debug('upload url: %s', to_repository[URL]) logging.debug('stage directory: %s', stage_dir) if not os.path.exists(stage_dir): raise ValueError('Output directory doesn\'t exist: ' + stage_dir) values = name.split(':') if len(values) == 3: group_id = values[0] artifact_name = values[1] # try to guess if we have a bom file if '-bom' in artifact_name: artifact_type = 'pom' else: artifact_type = 'jar' version = values[2] artifact_fullname = artifact_name + '-' + version elif len(values) == 4: group_id = values[0] artifact_name = values[1] artifact_type = values[2] version = values[3] artifact_fullname = artifact_name + '-' + version elif len(values) == 5: group_id = values[0] artifact_name = values[1] artifact_type = values[2] version = values[4] artifact_fullname = artifact_name + '-' + version + '-' + values[3] else: logging.warning('Artifact doesn\'t have correct format. Skipping ' + name) return artifact_path = group_id.replace('.', '/') + '/' + artifact_name + '/' + version if artifact_type in ['jar', 'war']: files2transfer = _java_artifacts(artifact_fullname, artifact_type, artifact_path, transfer_deps) else: files2transfer = _untyped_artifacts(artifact_fullname, artifact_type, artifact_path, transfer_deps) for file2transfer in files2transfer: artifact_relativepath = file2transfer['path'] + '/' + file2transfer['name'] already_uploaded = _already_uploaded(to_repository, artifact_relativepath) if already_uploaded and not file2transfer['name'].endswith('.pom'): logging.info('%s already uploaded. Skipping', file2transfer['name']) continue # let's always download POM files in case we need to process the parent POM # once again or upload the children dependencies. outfile = os.path.join(stage_dir, file2transfer['name']) _download_file(from_repository, artifact_relativepath, outfile) if not os.path.exists(outfile): logging.info('%s was not downloaded. Skipping', outfile) if file2transfer['target']: logging.warning('%s was not found in the repository', file2transfer['name']) continue if not already_uploaded: _upload_file(to_repository, artifact_relativepath, outfile) if file2transfer['name'].endswith('.pom'): # a library will not be installed if it's parent pom.xml file # is not present in the repository, so let's transfer the # parent POM file but without transferring its dependencies. tree = ET.parse(outfile) parentNode = tree.getroot().find('{http://maven.apache.org/POM/4.0.0}parent') if parentNode is not None: parent_group_id = _findNodeValue(parentNode, 'groupId') parent_artifact_id = _findNodeValue(parentNode, 'artifactId') parent_version = _findNodeValue(parentNode, 'version') parent_path = parent_group_id.replace('.', '/') + '/' + parent_artifact_id + '/' + parent_version files2transfer.append(_pom_artifact(parent_artifact_id + '-' + parent_version, parent_path)) if 'transfer_deps' not in file2transfer or not file2transfer['transfer_deps']: logging.info('not transferring dependencies from %s', file2transfer['name']) continue # try to download the dependencies dependenciesNode = tree.getroot().find('{http://maven.apache.org/POM/4.0.0}dependencies') if dependenciesNode is None: continue logging.debug("Downloading children") for dependencyNode in dependenciesNode.getchildren(): dep_group_id = _findNodeValue(dependencyNode, 'groupId') dep_artifact_id = _findNodeValue(dependencyNode, 'artifactId') dep_version = _findNodeValue(dependencyNode, 'version') # we're only downloading `compile` versions. The user can # easily download other dependencies if needed. dep_scope = _findNodeValue(dependencyNode, 'scope') if dep_scope is not None and dep_scope != 'compile': logging.info('not downloading %s:%s with scope %s', dep_group_id, dep_artifact_id, dep_scope) continue # if no version has been defined, than it's getting potentially # tricky so let's just give up and let the user deal with it if dep_version is None: logging.error('missing explicit version for %s:%s in %s. Skipping', dep_group_id, dep_artifact_id, file2transfer['name']) continue # let's download the dependency artifact_fullname = dep_artifact_id + '-' + dep_version artifact_path = dep_group_id.replace('.', '/') + '/' + dep_artifact_id + '/' + dep_version files2transfer.extend(_java_artifacts(artifact_fullname, 'jar', artifact_path, transfer_deps)) # Definitions of the artifacts to download: # - name: name of the artifact # - path: full path of the artifact, will be prepended to the urls # - transfer_deps: true if the dependencies defined in the pom file must be tranferred # - target: true if definition was created for an artifact that was # explicitely requested. Used for logging purpose. def _pom_artifact(artifact_fullname, artifact_path): return { 'name': artifact_fullname + '.pom', 'path': artifact_path, 'transfer_deps': False, 'target': False } def _java_artifacts(artifact_fullname, artifact_type, artifact_path, transfer_deps): return [ { 'name': artifact_fullname + '.' + artifact_type, 'path': artifact_path, 'target': True }, { 'name': artifact_fullname + '.pom', 'path': artifact_path, 'transfer_deps': transfer_deps, 'target': False }, { 'name': artifact_fullname + '-tests.jar', 'path': artifact_path, 'target': False }, { 'name': artifact_fullname + '-sources.jar', 'path': artifact_path, 'target': False }, { 'name': artifact_fullname + '-javadoc.jar', 'path': artifact_path, 'target': False } ] def _untyped_artifacts(artifact_fullname, artifact_type, artifact_path, transfer_deps): return [ { 'name': artifact_fullname + '.' + artifact_type, 'path': artifact_path, 'transfer_deps': transfer_deps, 'target': True }, { 'name': artifact_fullname + '.pom', 'path': artifact_path, 'transfer_deps': transfer_deps, 'target': False } ] def _findNodeValue(node, name): foundNode = node.find('{http://maven.apache.org/POM/4.0.0}' + name) if foundNode is None: return None return foundNode.text def _download_file(from_repository, path, filename, length=16*1024): """ Stores the path into the given filename. """ if os.path.exists(filename): logging.debug('%s already downloaded', filename) if URL not in from_repository or not from_repository[URL]: raise ValueError('Repository missing url: ' + get_repository_shortname(from_repository)) url = _append_url(from_repository[URL], path) logging.debug('downloading from %s', url) try: request = Request(url) if AUTHORIZATION in from_repository and from_repository[AUTHORIZATION]: logging.debug('authorization header added') request.add_header('Authorization', from_repository[AUTHORIZATION]) else: logging.debug('no authorization configured') response = urlopen(request) with open(filename, 'wb') as file: shutil.copyfileobj(response, file, length) except Exception as ex: logging.debug('exception while downloading (expected): %s', ex) None def _already_uploaded(to_repository, path): """ Return True if the file was already uploaded. """ if URL not in to_repository or not to_repository[URL]: raise ValueError('Repository missing upload url: ' + get_repository_shortname(to_repository)) url = _append_url(to_repository[URL], path) if AUTHORIZATION in to_repository and to_repository[AUTHORIZATION]: logging.debug('authorization header added') headers = {'Authorization': to_repository[AUTHORIZATION]} else: logging.debug('no authorization configured') headers = {} try: response = requests.head(url, headers=headers) return response.ok except Exception as ex: logging.debug('exception while checking existence %s', ex) return False def _upload_file(to_repository, path, filename): """ Returns True if the file was uploaded """ if not os.path.exists(filename): # we try to upload a file that was not downloaded (for example an artifact without # sources.) This is expected to happen and is not an error. logging.debug('missing file to upload, skipping %s', filename) return False if URL not in to_repository or not to_repository[URL]: raise ValueError('Repository missing upload url: ' + get_repository_shortname(to_repository)) url = _append_url(to_repository[URL], path) logging.debug('uploading to ' + url) if AUTHORIZATION in to_repository and to_repository[AUTHORIZATION]: logging.debug('authorization header added') headers = {'Authorization': to_repository[AUTHORIZATION]} else: logging.debug('no authorization configured') headers = {} try: with open(filename, 'rb') as file: response = requests.put(url, files={filename: file}, headers=headers) if not response.ok: logging.error('error while uploading of %s: %s', path, response.text) return True except Exception as ex: logging.warn('exception while uploading %s', ex) return False def _append_url(base_url, fragment): return base_url + fragment if base_url.endswith('/') else base_url + '/' + fragment
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ec1ec45da4dd0341da0c46ea4e27eea53aabbec2
676
py
Python
H01/Semaphore.py
scottyyf/MultiWorker
4abd361c3053140be6453d6e6e30f5c31a189e79
[ "Apache-2.0" ]
null
null
null
H01/Semaphore.py
scottyyf/MultiWorker
4abd361c3053140be6453d6e6e30f5c31a189e79
[ "Apache-2.0" ]
null
null
null
H01/Semaphore.py
scottyyf/MultiWorker
4abd361c3053140be6453d6e6e30f5c31a189e79
[ "Apache-2.0" ]
null
null
null
#!/usr/bin/env python # -*- coding: utf-8 -*- """ File: h03.py Author: Scott Yang(Scott) Email: yangyingfa@skybility.com Copyright: Copyright (c) 2021, Skybility Software Co.,Ltd. All rights reserved. Description: """ import threading import time semaphore = threading.Semaphore(10) def run(n): semaphore.acquire() time.sleep(2) print(f'run the thread: {n}') semaphore.release() def main(): for i in range(50): t = threading.Thread(target=run, args=(i,)) t.start() while threading.active_count() != 1: pass#print(threading.active_count()) else: print('all thread done') if __name__ == '__main__': main()
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ec1ee81ce412cde25b50543e502ef0e9f4204892
16,523
py
Python
portal/models/intervention.py
uwcirg/true_nth_usa_portal
e2434731aed86f1c43f15d428dde8ffc28ac7e5f
[ "BSD-3-Clause" ]
3
2017-01-15T10:11:57.000Z
2018-10-02T23:46:44.000Z
portal/models/intervention.py
uwcirg/true_nth_usa_portal
e2434731aed86f1c43f15d428dde8ffc28ac7e5f
[ "BSD-3-Clause" ]
876
2016-04-04T20:45:11.000Z
2019-02-28T00:10:36.000Z
portal/models/intervention.py
uwcirg/truenth-portal
459a0d157982f010175c50b9cccd860a61790370
[ "BSD-3-Clause" ]
9
2016-04-13T01:18:55.000Z
2018-09-19T20:44:23.000Z
"""Intervention Module""" from flask import current_app from sqlalchemy import and_ from sqlalchemy.dialects.postgresql import ENUM from sqlalchemy.ext.hybrid import hybrid_property from sqlalchemy.orm.exc import NoResultFound from werkzeug.exceptions import BadRequest from ..database import db from ..dict_tools import strip_empties from .lazy import query_by_name from .role import ROLE LOGOUT_EVENT = 0b001 USER_DOC_EVENT = 0b010 class DisplayDetails(object): """Simple abstraction to communicate display details to front end To provide a custom experience, intevention access can be set at several levels. For a user, access is either available or not, and when available, the link controls may be intentionally disabled for a reason the intervention should note in the status_text field. Attributes:: access: {True, False} card_html: Text to display on the card link_label: Text used to label the button or hyperlink link_url: URL for the button or link - link to be disabled when null status_text: Text to inform user of status, or why it's disabled """ def __init__(self, access, intervention, user_intervention): """Build best set available, prefering values in user_intervention""" ui = user_intervention self.access = access self.card_html = ui and ui.card_html or intervention.card_html self.link_label = ui and ui.link_label or intervention.link_label self.link_url = ui and ui.link_url or intervention.link_url self.status_text = ui and ui.status_text or intervention.status_text class Intervention(db.Model): __tablename__ = 'interventions' id = db.Column(db.Integer, primary_key=True) name = db.Column(db.Text, nullable=False) description = db.Column(db.Text, nullable=False) # nullable as interventions may not have a valid client client_id = db.Column(db.ForeignKey('clients.client_id')) card_html = db.Column(db.Text) link_label = db.Column(db.Text) link_url = db.Column(db.Text) status_text = db.Column(db.Text) public_access = db.Column(db.Boolean, default=True) display_rank = db.Column(db.Integer) subscribed_events = db.Column(db.Integer, nullable=False, default=0) client = db.relationship( 'Client', primaryjoin="Client.client_id==Intervention.client_id", uselist=False, backref='Client') access_strategies = db.relationship( 'AccessStrategy', order_by="AccessStrategy.rank") @hybrid_property def subscribed_to_logout_event(self): return self.subscribed_events & LOGOUT_EVENT @subscribed_to_logout_event.setter def subscribed_to_logout_event(self, value): if value: self.subscribed_events = self.subscribed_events | LOGOUT_EVENT else: self.subscribed_events = self.subscribed_events & ~LOGOUT_EVENT @hybrid_property def subscribed_to_user_doc_event(self): return self.subscribed_events & USER_DOC_EVENT @subscribed_to_user_doc_event.setter def subscribed_to_user_doc_event(self, value): if value: self.subscribed_events = self.subscribed_events | USER_DOC_EVENT else: self.subscribed_events = self.subscribed_events & ~USER_DOC_EVENT def as_json(self): """Returns the 'safe to export' portions of an intervention The client_id and link_url are non-portable between systems. The id is also independent - return the rest of the not null fields as a simple json dict. NB for staging exclusions to function, link_url and client_id are now included. Take care to remove it from persistence files where it is NOT portable, for example, when generating persistence files programmatically. """ d = {'resourceType': 'Intervention'} for attr in ('name', 'description', 'card_html', 'link_label', 'status_text', 'public_access', 'display_rank', 'subscribed_events', 'link_url', 'client_id'): if getattr(self, attr, None) is not None: d[attr] = getattr(self, attr) return d @staticmethod def rct_ids(): """returns list of RCT (randomized control trial) intervention ids""" names = current_app.config.get('RCT_INTERVENTIONS') if not names: return None ids = [i.id for i in Intervention.query.filter( Intervention.name.in_(names))] if len(ids) != len(names): raise ValueError( "can't locate all interventions named in config " "'RCT_INTERVENTIONS': {}".format(names)) return ids @classmethod def from_json(cls, data): intervention = cls() return intervention.update_from_json(data) def update_from_json(self, data): if 'name' not in data: raise ValueError("required 'name' field not found") for attr in ('name', 'description', 'card_html', 'link_label', 'status_text', 'public_access', 'display_rank', 'subscribed_events'): if attr in data: setattr(self, attr, data.get(attr)) # link_url and client_id are special - generally we don't pull # from persisted format as each instance is configured to # communicate with distinct interventions. As it is used # for prod -> staging, warn if seen on any other system if 'link_url' in data and self.link_url != data['link_url']: if current_app.config.get("SYSTEMT_TYPE", '').lower() != 'staging': current_app.logger.warning( "IMPORTING non-portable intervention({}) link_url: '{}'" "".format(self.name, data['link_url'])) self.link_url = data['link_url'] if 'client_id' in data and self.client_id != data['client_id']: if current_app.config.get("SYSTEMT_TYPE", '').lower() != 'staging': current_app.logger.warning( "IMPORTING non-portable intervention({}) client_id: '{}'" "".format(self.name, data['client_id'])) self.client_id = data['client_id'] return self def fetch_strategies(self): """Generator to return each registered strategy Strategies need to be brought to life from their persisted state. This generator does so, and returns them in a call ready fashion, ordered by the strategy's rank. """ for strat in self.access_strategies: func = strat.instantiate() yield func def display_for_user(self, user): """Return the intervention display details for the given user Somewhat complicated method, depending on intervention configuration. The following ordered steps are used to determine if a user should have access to an intervention. The first 'true' found provides access, otherwise the intervention will not be displayed. 1. call each strategy_function in intervention.access_strategies. Note, on rare occasions, a strategy may alter the UserIntervention attributes given the circumstances. 2. check for a UserIntervention row defining access for the given user on this intervention. 3. check if the intervention has `public_access` set @return DisplayDetails object defining 'access' and other details for how to render the intervention. """ access = False # 1. check strategies for access for func in self.fetch_strategies(): if func(intervention=self, user=user): access = True break # 2. check user_intervention for access ui = UserIntervention.query.filter_by( user_id=user.id, intervention_id=self.id).first() if ui and ui.access == 'granted': access = True # 3. check intervention scope for access # (NB - tempting to shortcut by testing this first, but we # need to allow all the strategies to run in case they alter settings) if self.public_access: access = True return DisplayDetails( access=access, intervention=self, user_intervention=ui) def quick_access_check(self, user): """Return boolean representing given user's access to intervention Somewhat complicated method, depending on intervention configuration. The following ordered steps are used to determine if a user should have access to an intervention. The first 'true' found is returned (as to make the check as quick as possible). 1. check if the intervention has `public_access` set 2. check for a UserIntervention row defining access for the given user on this intervention. 3. call each strategy_function in intervention.access_strategies. @return boolean representing 'access'. """ # 1. check intervention scope for access if self.public_access: return True # 2. check user_intervention for access ui = UserIntervention.query.filter_by( user_id=user.id, intervention_id=self.id).first() if ui and ui.access == 'granted': return True # 3. check strategies for access for func in self.fetch_strategies(): if func.__name__ == 'update_user_card_html': return True if func(intervention=self, user=user): return True return False def __str__(self): """print details needed in audit logs""" if self.name == INTERVENTION.DEFAULT.name: return "" return ("Intervention: {0.description}, " "public_access: {0.public_access}, " "card_html: {0.card_html}, " "link_label: {0.link_label}, " "link_url: {0.link_url}, " "status_text: {0.status_text}," "subscribed_events: {0.subscribed_events}".format(self)) access_types = ('forbidden', 'granted', 'subscribed') access_types_enum = ENUM(*access_types, name='access', create_type=False) class UserIntervention(db.Model): __tablename__ = 'user_interventions' id = db.Column(db.Integer, primary_key=True) access = db.Column('access', access_types_enum, default='forbidden') card_html = db.Column(db.Text) staff_html = db.Column(db.Text) link_label = db.Column(db.Text) link_url = db.Column(db.Text) status_text = db.Column(db.Text) user_id = db.Column(db.ForeignKey('users.id'), nullable=False) intervention_id = db.Column( db.ForeignKey('interventions.id'), nullable=False) def as_json(self, include_empties=True): d = {'user_id': self.user_id} for field in ('access', 'card_html', 'staff_html', 'link_label', 'link_url', 'status_text'): d[field] = getattr(self, field) if not include_empties: return strip_empties(d) return d def update_from_json(self, data): for attr in data: setattr(self, attr, data[attr]) @classmethod def user_access_granted(cls, intervention_id, user_id): """Shortcut to query for specific (intervention, user) access""" q = cls.query.filter(and_( cls.user_id == user_id, cls.intervention_id == intervention_id, cls.access == 'granted')) return q.count() > 0 def intervention_restrictions(user): """returns tuple of lists for interventions: (disallow, require) Users may not have access to some interventions (such as randomized control trials). In such a case, the first of the tuple items will name intervention ids which should not be included. Other users get access to all patients with one or more interventions. In this case, a list of interventions for which the user should be granted access is in the second position. :returns disallow, require:: disallow: list of intervention IDs to exclude associated patients, such as the randomized control trial interventions. require: list of intervention IDs if patients must also have the respective UserIntervention association. """ if user.has_role(ROLE.ADMIN.value): return None, None # no restrictions disallowed, required = None, None if user.has_role(ROLE.STAFF.value): if user.has_role(ROLE.INTERVENTION_STAFF.value): raise BadRequest( "Patients list for staff and intervention-staff are " "mutually exclusive - user shouldn't have both roles") # staff users aren't to see patients from RCT interventions disallowed = Intervention.rct_ids() if user.has_role(ROLE.INTERVENTION_STAFF.value): # Look up associated interventions uis = UserIntervention.query.filter( UserIntervention.user_id == user.id) # check if the user is associated with any intervention at all if uis.count() == 0: raise BadRequest("User is not associated with any intervention.") required = [ui.intervention_id for ui in uis] return disallowed, required STATIC_INTERVENTIONS = { 'analytics': 'Analytics', 'assessment_engine': 'Assessment Engine', 'care_plan': 'Care Plan', 'community_of_wellness': 'Community of Wellness', 'decision_support_p3p': 'Decision Support P3P', 'decision_support_wisercare': 'Decision Support WiserCare', 'music': 'MUSIC Integration', 'psa_tracker': 'PSA Tracker', 'self_management': 'Self Management', 'sexual_recovery': 'Sexual Recovery', 'social_support': 'Social Support Network', 'default': 'OTHER: not yet officially supported', } def add_static_interventions(): """Seed database with default static interventions Idempotent - run anytime to push any new interventions into existing dbs """ for name, description in STATIC_INTERVENTIONS.items(): if not Intervention.query.filter_by(name=name).first(): intervention = Intervention( name=name, description=description, card_html=description, subscribed_events=LOGOUT_EVENT) db.session.add(intervention) class _NamedInterventions(object): """Bunch pattern class to house references to interventions Don't use this class directly - make reference to its user, the INTERVENTION instance. Specialized to handle only Interventions. Attributes (all without a leading '_') assumed to be interventions and may be referenced in upper or lower case. """ def __init__(self, **kwargs): for k, v in kwargs.items(): setattr(self, k, query_by_name(Intervention, k)) def __getattribute__(self, attr): if attr.startswith('_'): return object.__getattribute__(self, attr) # Catch KeyError in case it's a dynamically added intervention # (i.e. not from static list) try: value = self.__dict__[attr.lower()].__call__(self) except NoResultFound: raise AttributeError("Intervention {} not found".format(attr)) except KeyError: query = Intervention.query.filter_by(name=attr) if not query.count(): raise AttributeError( "Intervention {} not found".format(attr)) value = query.one() return value def __iter__(self): for attr in dir(self): if attr.startswith('_'): continue try: yield getattr(self, attr) except AttributeError: # Intervention from static list not found in db, skip continue def __contains__(self, item): try: self.__getattribute__(item) return True except AttributeError: return False """INTERVENTION behaves like a static accessor for all interventions. Obtain intervention of choice by name in upper or lower case or by string: sr = INTERVENTION.SEXUAL_RECOVERY sr = INTERVENTION.sexual_recovery sr = getattr(INTERVENTION, 'sexual_recovery') """ INTERVENTION = _NamedInterventions(**STATIC_INTERVENTIONS)
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ec1f0874784570485a2cb6d70a6752e769ab9710
3,156
py
Python
utils/extract_features.py
ArjitJ/tbd-nets
8e93ecad54489706ec3249c9ca5d345d6866e1ba
[ "MIT" ]
371
2018-03-15T00:26:23.000Z
2022-03-30T14:32:48.000Z
utils/extract_features.py
ArjitJ/tbd-nets
8e93ecad54489706ec3249c9ca5d345d6866e1ba
[ "MIT" ]
14
2018-03-23T08:03:02.000Z
2022-02-06T18:39:05.000Z
utils/extract_features.py
ArjitJ/tbd-nets
8e93ecad54489706ec3249c9ca5d345d6866e1ba
[ "MIT" ]
81
2018-03-15T00:54:46.000Z
2021-12-07T16:09:58.000Z
# DISTRIBUTION STATEMENT A. Approved for public release: distribution unlimited. # # This material is based upon work supported by the Assistant Secretary of Defense for Research and # Engineering under Air Force Contract No. FA8721-05-C-0002 and/or FA8702-15-D-0001. Any opinions, # findings, conclusions or recommendations expressed in this material are those of the author(s) and # do not necessarily reflect the views of the Assistant Secretary of Defense for Research and # Engineering. # # © 2017 Massachusetts Institute of Technology. # # MIT Proprietary, Subject to FAR52.227-11 Patent Rights - Ownership by the contractor (May 2014) # # The software/firmware is provided to you on an As-Is basis # # Delivered to the U.S. Government with Unlimited Rights, as defined in DFARS Part 252.227-7013 or # 7014 (Feb 2014). Notwithstanding any copyright notice, U.S. Government rights in this work are # defined by DFARS 252.227-7013 or DFARS 252.227-7014 as detailed above. Use of this work other than # as specifically authorized by the U.S. Government may violate any copyrights that exist in this # work. import torch import numpy as np from scipy.misc import imread, imresize from torchvision.models import resnet101 def load_feature_extractor(model_stage=2): """ Load the appropriate parts of ResNet-101 for feature extraction. Parameters ---------- model_stage : Integral The stage of ResNet-101 from which to extract features. For 28x28 feature maps, this should be 2. For 14x14 feature maps, 3. Returns ------- torch.nn.Sequential The feature extractor (ResNet-101 at `model_stage`) Notes ----- This function will download ResNet-101 if it is not already present through torchvision. """ model = resnet101(pretrained=True) layers = [model.conv1, model.bn1, model.relu, model.maxpool] layers += [getattr(model, 'layer{}'.format(i+1)) for i in range(model_stage)] model = torch.nn.Sequential(*layers) if torch.cuda.is_available(): model.cuda() return model.eval() def extract_image_feats(img_path, model): """ Extract image features from the image at `img_path` using `model`. Parameters ---------- img_path : Union[pathlib.Path, str] The path to the image file. model : torch.nn.Module The feature extractor to use. Returns ------- Tuple[numpy.ndarray, torch.Tensor] The image and image features extracted from `model` """ # read in the image and transform it to shape (1, 3, 224, 224) path = str(img_path) # to handle pathlib img = imread(path, mode='RGB') img = imresize(img, (224, 224), interp='bicubic') img = img.transpose(2, 0, 1)[None] # use ImageNet statistics to transform the data mean = np.array([0.485, 0.456, 0.406]).reshape(1, 3, 1, 1) std = np.array([0.229, 0.224, 0.224]).reshape(1, 3, 1, 1) img_tensor = torch.FloatTensor((img / 255 - mean) / std) # push to the GPU if possible if torch.cuda.is_available(): img_tensor = img_tensor.cuda() return (img.squeeze().transpose(1, 2, 0), model(img_tensor))
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ec1f28c2ec9b0b2ceb318ed55956b42468f20f98
491
py
Python
app/schemas.py
pnguyenduong/virustracker-api
0622558ceb431667cc0af75f4835455258ec054b
[ "MIT" ]
null
null
null
app/schemas.py
pnguyenduong/virustracker-api
0622558ceb431667cc0af75f4835455258ec054b
[ "MIT" ]
null
null
null
app/schemas.py
pnguyenduong/virustracker-api
0622558ceb431667cc0af75f4835455258ec054b
[ "MIT" ]
null
null
null
from .models import VirusData from app import ma class DataSchema(ma.SQLAlchemyAutoSchema): class Meta: model = VirusData id = ma.auto_field() name = ma.auto_field() case_total = ma.auto_field() case_today = ma.auto_field() recovered_total = ma.auto_field() death_today = ma.auto_field() death_total = ma.auto_field() date = ma.auto_field() # init marshmallow schema data_schema = DataSchema() datas_schema = DataSchema(many=True)
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2
ec1feb9807faf84631629db4a3a466c150882506
14,080
py
Python
ai_solutions/maze_solver.py
zerobits01/AI-Project
68d5e7a8b2c826644683a08e916f961f878d218f
[ "MIT" ]
null
null
null
ai_solutions/maze_solver.py
zerobits01/AI-Project
68d5e7a8b2c826644683a08e916f961f878d218f
[ "MIT" ]
null
null
null
ai_solutions/maze_solver.py
zerobits01/AI-Project
68d5e7a8b2c826644683a08e916f961f878d218f
[ "MIT" ]
null
null
null
import sys import collections from queue import PriorityQueue from itertools import count from ai_solutions.graph_node import GraphNode class MazeSolver: ''' this class is for solving the maze question using three algorithms: - BFS - IDS - A* ''' def __init__(self, source, destination, black_cells, size=20): ''' Initial the source and destination cells @param source: source cell, two element (row, col) @type source: tuple @param destination: dst, two elemets (row, col) @type destication: tuple @param BLACKED: list of black cells in the maze like [(row, col), (row, col), etc] @type type: tuple @param size: the maze dimention size, this will create size*size maze @type size: integer ''' # variables self.FIRST = (0, 0) self.LAST = (size - 1, size - 1) self.BLACKED = set([(x[0], x[1]) for x in black_cells]) self.SRC = GraphNode(None, (source[0], source[1])) self.DST = GraphNode(None, (destination[0], destination[1])) self.size = size print(20*'#' + '\n' + "MazeSolver creation" + '\n' + 20*'#' + '\n') def create_path(self, node: GraphNode): """creates the solution path based on the parents till it visits SRC @param node: dst node wchich we wanna find path to it from source @type node: GraphNode @returns: list of the coordinates to go in correct order @rtype: list """ path = [] cost = 0 while node: path.insert(0, node.coordinate) node = node.parent cost = cost + 1 print(20*'#' + '\n' + "path creation" + '\n' + 20*'#' + '\n') return path, cost def is_child_valid(self, node: GraphNode): ''' checks if the created node is valid or not @param node: input node to check @type node: GraphNode @returns: boolean value which shows if the created node is valid or not @rtype: bool ''' if node.coordinate[0] < 0 or node.coordinate[1] < 0 or \ node.coordinate[0] >= self.size or node.coordinate[1] >= self.size or \ node.coordinate == node.parent.coordinate or node.coordinate in self.BLACKED : return False return True def get_children(self, node: GraphNode): ''' this will create the child nodes then return them as a list @param node: the node we wanna search for the children @type node: GraphNode @returns: list of children @rtype: list ''' children = [] try: b_child = GraphNode( node, (node.coordinate[0], node.coordinate[1] - 1)) t_child = GraphNode( node, (node.coordinate[0], node.coordinate[1] + 1)) l_child = GraphNode( node, (node.coordinate[0] - 1, node.coordinate[1])) r_child = GraphNode( node, (node.coordinate[0] + 1, node.coordinate[1])) if self.is_child_valid(b_child): children.append(b_child) if self.is_child_valid(t_child): children.append(t_child) if self.is_child_valid(r_child): children.append(r_child) if self.is_child_valid(l_child): children.append(l_child) print(20*'#' + '\n' + "get children" + '\n' + 20*'#' + '\n') except Exception as e: print(20*'$') print(sys.exc_info()[-1].tb_lineno, e) print(20*'$') return children def get_specific_child(self, node: GraphNode, which_child): ''' this will create specific child of the given node @param node: the node we wanna search for the children @type node: GraphNode @param which_child: L-eft, R-ight, B-ottom, T-op @type which_child: char @returns: list of children @rtype: list ''' try: if which_child == 'B': b_child = GraphNode( node, (node.coordinate[0], node.coordinate[1] - 1)) if self.is_child_valid(b_child): return b_child if which_child == 'T': t_child = GraphNode( node, (node.coordinate[0], node.coordinate[1] + 1)) if self.is_child_valid(t_child): return t_child if which_child == 'L': l_child = GraphNode( node, (node.coordinate[0] - 1, node.coordinate[1])) if self.is_child_valid(l_child): return l_child if which_child == 'R': r_child = GraphNode( node, (node.coordinate[0] + 1, node.coordinate[1])) if self.is_child_valid(r_child): return r_child return None except Exception as e: print(20*'$') print(sys.exc_info()[-1].tb_lineno, e) print(20*'$') return None def bfs_graph_search(self): ''' solve the maze by bfs graph search @returns : solution path, cost, count of explored set ''' try: queue = collections.deque([self.SRC]) explored_set = set() while queue: curr = queue.popleft() if curr == self.DST: # returning path, cost and explored_set count path, cost = self.create_path(curr) print(20*'#' + '\n' + "solved" + '\n' + 20*'#' + '\n') return path, cost-1, list(explored_set) explored_set.add(curr.coordinate) # add current cell's child to queue to visit children = self.get_children(curr) for child in children: if child.coordinate not in explored_set: queue.append(child) return [], 'Inf', list(explored_set) # no answer found except Exception as e: print(20*'$') print(sys.exc_info()[-1].tb_lineno, e) print(20*'$') return False def dls_graph_search(self, cut_off): '''This is the graph search implementation of dls Alg it is specificly implemented for solving Maze @returns : solution path, cost, count of explored set or False ''' if cut_off < 1: return False set_limit = 0 for i in range(0, cut_off+1): set_limit = set_limit + 4 ** i explored_set = set() level = 0 try: level = level+1 curr = self.SRC explored_set.add(curr.coordinate) if curr.coordinate == self.DST.coordinate: path, cost = self.create_path(self.SRC) return path, cost-1, list(explored_set) while True: print(len(explored_set), "\n", set_limit, "\n") if(len(explored_set) == set_limit): break if level == cut_off: level = level - 1 curr = curr.parent continue tmp = self.get_specific_child(curr, 'T') if tmp and tmp.coordinate not in explored_set: curr = tmp print(f"TOP:\t{curr.coordinate}") level = level + 1 explored_set.add(curr.coordinate) if curr == self.DST: path, cost = self.create_path(curr) print(20*'#' + '\n' + "solved" + '\n' + 20*'#' + '\n') return path, cost-1, list(explored_set) continue tmp = self.get_specific_child(curr, 'R') if tmp and tmp.coordinate not in explored_set: curr = tmp print(f"TOP:\t{curr.coordinate}") level = level + 1 explored_set.add(curr.coordinate) if curr == self.DST: path, cost = self.create_path(curr) print(20*'#' + '\n' + "solved" + '\n' + 20*'#' + '\n') return path, cost-1, list(explored_set) continue tmp = self.get_specific_child(curr, 'B') if tmp and tmp.coordinate not in explored_set: curr = tmp print(f"TOP:\t{curr.coordinate}") level = level + 1 explored_set.add(curr.coordinate) if curr == self.DST: path, cost = self.create_path(curr) print(20*'#' + '\n' + "solved" + '\n' + 20*'#' + '\n') return path, cost-1, list(explored_set) continue tmp = self.get_specific_child(curr, 'L') if tmp and tmp.coordinate not in explored_set: curr = tmp print(f"TOP:\t{curr.coordinate}") level = level + 1 explored_set.add(curr.coordinate) if curr == self.DST: path, cost = self.create_path(curr) print(20*'#' + '\n' + "solved" + '\n' + 20*'#' + '\n') return path, cost-1, list(explored_set) continue level = level - 1 curr = curr.parent return False, list(explored_set) except Exception as e: print(20*'$') print(sys.exc_info()[-1].tb_lineno, e) print(20*'$') return False def ids_graph_search(self): ''' solve the maze by ids graph search @returns : solution path, cost, count of explored set or False ''' try: explored_set_tmp = [] for cut_off in count(start=1): print(20*"!@#$") print(f"new round\t{cut_off}") print(20*"!@#$") result = self.dls_graph_search(cut_off) if result != False and isinstance(result[1], int): return result if result == False: continue if result[0] == False: return [], 'Inf', result[1] # no answer found except Exception as e: print(20*'$') print(sys.exc_info()[-1].tb_lineno, e) print(20*'$') return False def aStar_graph_search(self): ''' solve the maze by a* graph search @returns : solution path, cost, count of explored set ''' try: to_check = [] explored_set = [] to_check.append(self.SRC) while to_check: current_cell = to_check.pop(0) if current_cell.coordinate not in explored_set: explored_set.append(current_cell.coordinate) if current_cell.coordinate == self.DST.coordinate: path, cost = self.create_path(current_cell) print(20*'#' + '\n' + "solved" + '\n' + 20*'#' + '\n') return path, cost-1, list(explored_set) children = self.get_children(current_cell) for child in children: child.payed = abs(child.coordinate[0] - self.SRC.coordinate[0]) + abs( child.coordinate[1] - self.SRC.coordinate[1]) child.hurestic = abs(child.coordinate[0] - self.DST.coordinate[0]) + abs( child.coordinate[1] - self.DST.coordinate[1]) child.total = child.payed + child.hurestic flag = True for tmp in to_check: if (child == tmp and child.total >= tmp.total): flag = False break if flag: if child.coordinate not in explored_set: to_check.append(child) to_check = sorted(to_check, key=lambda GraphNode_ob: GraphNode_ob.total) return [], 'Inf', list(explored_set) except Exception as e: print(20*'$') print(sys.exc_info()[-1].tb_lineno, e) print(20*'$') return False return False """ points to pay attention - set is not serializable so use list at last step - checking advance debugging in python """ # source: https://towardsdatascience.com/a-star-a-search-algorithm-eb495fb156bb # source: https://www.annytab.com/a-star-search-algorithm-in-python/ # we have to check something important ''' what if they set the start at 1,1 and the walls arround it? '''
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ec212b4bab89667f0bd94d6a9a7ed05d39f3098c
4,998
py
Python
examples/development/simulate_policy_with_state.py
zhanghc12/mopo
f6db90f55ca6becbc34988b88404b289699637da
[ "MIT" ]
107
2020-09-07T01:06:37.000Z
2022-03-31T04:16:51.000Z
examples/development/simulate_policy_with_state.py
zhanghc12/mopo
f6db90f55ca6becbc34988b88404b289699637da
[ "MIT" ]
9
2020-09-09T06:49:03.000Z
2022-03-25T18:19:57.000Z
examples/development/simulate_policy_with_state.py
zhanghc12/mopo
f6db90f55ca6becbc34988b88404b289699637da
[ "MIT" ]
29
2020-09-10T16:26:33.000Z
2022-03-16T08:15:41.000Z
import argparse from distutils.util import strtobool import json import os import pickle import numpy as np import tensorflow as tf import pdb from softlearning.environments.utils import get_environment_from_params from softlearning.policies.utils import get_policy_from_variant # from softlearning.samplers import rollouts from softlearning import replay_pools from softlearning.samplers import ( dummy_sampler, extra_policy_info_sampler, remote_sampler, base_sampler, simple_sampler) def parse_args(): parser = argparse.ArgumentParser() parser.add_argument('checkpoint_path', type=str, help='Path to the checkpoint.') parser.add_argument('--max-path-length', '-l', type=int, default=1000) parser.add_argument('--num-rollouts', '-n', type=int, default=10) parser.add_argument('--render-mode', '-r', type=str, default=None, choices=('human', 'rgb_array', None), help="Mode to render the rollouts in.") parser.add_argument('--deterministic', '-d', type=lambda x: bool(strtobool(x)), nargs='?', const=True, default=True, help="Evaluate policy deterministically.") args = parser.parse_args() return args def rollout(env, policy, path_length, callback=None, render_mode=None, break_on_terminal=True): observation_space = env.observation_space action_space = env.action_space pool = replay_pools.SimpleReplayPool( observation_space, action_space, max_size=path_length) sampler = simple_sampler.SimpleSampler( max_path_length=path_length, min_pool_size=None, batch_size=None) sampler.initialize(env, policy, pool) images = [] infos = [] state_vectors = [] t = 0 for t in range(path_length): observation, reward, terminal, info = sampler.sample() state_vector = sampler.env.unwrapped.state_vector() infos.append(info) state_vectors.append(state_vector) if callback is not None: callback(observation) if render_mode is not None: if render_mode == 'rgb_array': image = env.render(mode=render_mode) images.append(image) else: env.render() if terminal: policy.reset() if break_on_terminal: break assert pool._size == t + 1 path = pool.batch_by_indices( np.arange(pool._size), observation_keys=getattr(env, 'observation_keys', None)) path['infos'] = infos path['state_vectors'] = np.array([sampler._reset_state_vector] + state_vectors[:-1]) if render_mode == 'rgb_array': path['images'] = np.stack(images, axis=0) return path def rollouts(n_paths, *args, **kwargs): paths = [rollout(*args, **kwargs) for i in range(n_paths)] return paths def simulate_policy(args): session = tf.keras.backend.get_session() checkpoint_path = args.checkpoint_path.rstrip('/') experiment_path = os.path.dirname(checkpoint_path) variant_path = os.path.join(experiment_path, 'params.json') with open(variant_path, 'r') as f: variant = json.load(f) with session.as_default(): pickle_path = os.path.join(checkpoint_path, 'checkpoint.pkl') with open(pickle_path, 'rb') as f: picklable = pickle.load(f) environment_params = ( variant['environment_params']['evaluation'] if 'evaluation' in variant['environment_params'] else variant['environment_params']['training']) evaluation_environment = get_environment_from_params(environment_params) policy = ( get_policy_from_variant(variant, evaluation_environment, Qs=[None])) policy.set_weights(picklable['policy_weights']) with policy.set_deterministic(args.deterministic): paths = rollouts(args.num_rollouts, evaluation_environment, policy, path_length=args.max_path_length, render_mode=args.render_mode) #### print rewards rewards = [path['rewards'].sum() for path in paths] print('Rewards: {}'.format(rewards)) print('Mean: {}'.format(np.mean(rewards))) #### if args.render_mode != 'human': from pprint import pprint; import pdb; pdb.set_trace() pass return paths if __name__ == '__main__': args = parse_args() paths = simulate_policy(args) keys = paths[0].keys() paths = {key: np.concatenate([path[key] for path in paths]) for key in keys} print(paths.keys()) print(paths['observations'].shape, paths['state_vectors'].shape) # pickle.dump(paths, open('data/hopper_state_vectors.pkl', 'wb'))
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ec21a2f2b80af73693b16e92ab450451f7f0d1b4
2,566
py
Python
test_mask_rcnn_bdd.py
sxhxliang/challenagerAI-gluon-cv
a0018adad887e9045d3d356b8eb16372323888bf
[ "Apache-2.0" ]
1
2019-12-17T14:18:00.000Z
2019-12-17T14:18:00.000Z
test_mask_rcnn_bdd.py
sxhxliang/challenagerAI-gluon-cv
a0018adad887e9045d3d356b8eb16372323888bf
[ "Apache-2.0" ]
1
2019-04-29T04:05:51.000Z
2019-04-29T04:05:51.000Z
test_mask_rcnn_bdd.py
AaronLeong/challenagerAI-gluon-cv
a0018adad887e9045d3d356b8eb16372323888bf
[ "Apache-2.0" ]
1
2019-04-28T11:53:40.000Z
2019-04-28T11:53:40.000Z
from matplotlib import pyplot as plt from gluoncv import model_zoo, data, utils import mxnet as mx import numpy as np from PIL import Image import json from tqdm import tqdm # epoch = 1 save_path = '/data1/datasets/bdd100k/testB_result/' test_path = '/data1/datasets/bdd100k/images/100k/test2018/' test_json = [] CLASSES = ['traffic light', 'traffic sign', 'person', 'rider', 'bike', 'bus', 'car', 'motor', 'train', 'truck'] _score_thresh = 0.5 ctx = mx.gpu(3) resize_map = mx.image.ForceResizeAug((1280,720), interp=2) net = model_zoo.get_model('mask_rcnn_resnet50_v1b_bdd', pretrained=False, pretrained_base=False) net.load_parameters('bddv4_continuemask_rcnn_resnet50_v1b_bdd_0024.params') net.collect_params().reset_ctx(ctx) def save_drivable_map(pred_map, file_id): drivable_name = file_id + '_drivable_id' + '.png' mask = mx.nd.softmax(pred_map, axis=2) mask = mask>0.5 color = np.array([0,1,2]) mask = mask.asnumpy() * color mask = np.sum(mask, axis=2).astype('uint8') # print(mask.shape) img = Image.fromarray(mask) # img.save() img.save(save_path + 'seg/' + drivable_name, 'png') # ctx = [mx.gpu(int(i)) for i in args.gpus.split(',') if i.strip()] with open('ai_challenger_adp2018_testb_20180917_t4.txt','r') as f: for file_id in tqdm(f.readlines()): file_id = file_id.replace('\n','') filename = file_id+'.jpg' x, orig_img = data.transforms.presets.rcnn.load_test(test_path+filename, max_size=1280) ids, scores, bboxes, drivable_maps = net(x.as_in_context(ctx)) det_id, det_score, det_bbox = [xx[0].asnumpy() for xx in [ids, scores, bboxes]] mask = drivable_maps[0].transpose((1,2,0)).as_in_context(mx.cpu()) mask = resize_map(mask) # 保存 图片 save_drivable_map(mask, file_id) # ids, scores, bboxes valid = np.where(((det_id >= 0) & (det_score >= _score_thresh)))[0] det_id = det_id[valid] det_score = det_score[valid] det_bbox = det_bbox[valid] # print(det_score.shape) for cid, score, bbox in zip(det_id, det_score, det_bbox): # print(cid) test_json.append({ "name": filename, "timestamp": 1000, "category": CLASSES[int(cid[0])], "bbox": bbox.tolist(), "score": float(score[0]) }) print(save_path + 'det4.json') with open( save_path +'det4.json', 'w') as jsonf: json.dump(test_json, jsonf)
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ec21accf9670823d9e86649f1391298f34bb5e19
300
py
Python
boj/1110.py
byeonggukgong/algorithm
d9283fdbcfe4966cd4de3e394d9fd3aa33d533a8
[ "MIT" ]
3
2018-03-11T14:10:59.000Z
2019-01-23T12:34:27.000Z
boj/1110.py
byeonggukgong/algorithm
d9283fdbcfe4966cd4de3e394d9fd3aa33d533a8
[ "MIT" ]
null
null
null
boj/1110.py
byeonggukgong/algorithm
d9283fdbcfe4966cd4de3e394d9fd3aa33d533a8
[ "MIT" ]
null
null
null
# -*- coding: utf-8 -*- if __name__ == '__main__': input = int(input()) output = 0 temp = input while True: temp = temp % 10 * 10 + (int(temp / 10) + temp % 10) % 10 output += 1 if input == temp: break print(output)
18.75
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300
3.666667
0.515152
0.14876
0.132231
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0.076471
0.433333
300
15
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ec21d79eb0f508eab1e4d4b450e489d5d2153f80
1,222
py
Python
data_load.py
IdanAzuri/tensorflow-generative-model-collections
321f45f6dc0e7d4321b35a32e2eb7e864c9e0546
[ "Apache-2.0" ]
null
null
null
data_load.py
IdanAzuri/tensorflow-generative-model-collections
321f45f6dc0e7d4321b35a32e2eb7e864c9e0546
[ "Apache-2.0" ]
null
null
null
data_load.py
IdanAzuri/tensorflow-generative-model-collections
321f45f6dc0e7d4321b35a32e2eb7e864c9e0546
[ "Apache-2.0" ]
null
null
null
from __future__ import division from __future__ import print_function from __future__ import absolute_import import scipy.misc import glob import scipy import utils import tensorflow as tf """ param """ epoch = 50 batch_size = 64 lr = 0.0002 z_dim = 100 n_critic = 5 gpu_id = 3 ''' data ''' # you should prepare your own data in ./data/img_align_celeba # celeba original size is [218, 178, 3] def preprocess_fn(img): crop_size = 108 re_size = 64 img = tf.image.crop_to_bounding_box(img, (218 - crop_size) // 2, (178 - crop_size) // 2, crop_size, crop_size) img = tf.to_float(tf.image.resize_images(img, [re_size, re_size], method=tf.image.ResizeMethod.BICUBIC)) / 127.5 - 1 return img sess = utils.session() # iteration counter it_cnt, update_cnt = utils.counter() sess.run(tf.global_variables_initializer()) sess.run(it_cnt) sess.run(update_cnt) img_paths = glob.glob('/Users/idan.a/data/celeba/*.jpg') data_pool = utils.DiskImageData(img_paths, batch_size, shape=[218, 178, 3], preprocess_fn=preprocess_fn) batch_epoch = len(data_pool) // (batch_size * n_critic) real_ipt = data_pool.batch() sess.run(it_cnt) it_epoch=1 # save_dir="tmp/" scipy.misc.imsave('sss.png', utils.immerge(real_ipt, 10, 10))
22.62963
117
0.739771
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1,222
4.17734
0.472906
0.04717
0.056604
0.028302
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0.048113
0.13257
1,222
53
118
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ec2292a307aabbcf6f5e4ccd767c69ef19ef7823
153
py
Python
gifts/urls.py
Sahil1515/First-Wish-Website
de973f2a5c682b142c6faba4b127e4d83291dac5
[ "MIT" ]
null
null
null
gifts/urls.py
Sahil1515/First-Wish-Website
de973f2a5c682b142c6faba4b127e4d83291dac5
[ "MIT" ]
null
null
null
gifts/urls.py
Sahil1515/First-Wish-Website
de973f2a5c682b142c6faba4b127e4d83291dac5
[ "MIT" ]
null
null
null
from django.contrib import admin from django.urls import path from gifts import views urlpatterns = [ path('', views.gifts, name='gifts') ]
12.75
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5.3
0.55
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2
ec22caa7cd01e65afec1f8798f9973d911f36787
3,824
py
Python
seymour/accounts/models.py
lerouxb/seymour
124a93da67b6d6757b738469673232739ff0a4dc
[ "MIT" ]
null
null
null
seymour/accounts/models.py
lerouxb/seymour
124a93da67b6d6757b738469673232739ff0a4dc
[ "MIT" ]
null
null
null
seymour/accounts/models.py
lerouxb/seymour
124a93da67b6d6757b738469673232739ff0a4dc
[ "MIT" ]
null
null
null
import datetime from django.db import models, connection from seymour.feeds.models import Feed, Item, AccountFeed class Account(models.Model): openid = models.CharField('openid', max_length=255, null=True) firstname = models.CharField('first name', max_length=100, null=True) lastname = models.CharField('last name', max_length=100, null=True) email = models.EmailField('e-mail address', null=True) date_joined = models.DateTimeField('date joined', default=datetime.datetime.now, db_index=True) last_login = models.DateTimeField('last login', null=True, db_index=True) password_salt = models.CharField('password salt', max_length=100, null=True) password_hash = models.CharField('password hash', max_length=100, null=True) confirmation_code = models.CharField('confirmation code', max_length=50, null=True, db_index=True) is_active = models.BooleanField('active', default=True, db_index=True) class Meta: db_table = 'accounts' unique_together = (('email', 'openid'),) ordering = ['email', 'openid'] def get_fullname(self): if self.firstname or self.lastname: return u"%s %s" % (self.firstname, self.lastname) else: return None fullname = property(get_fullname) def set_password(self, raw_password): import random import sha salt = sha.new(str(random.random())).hexdigest()[:5] hsh = sha.new(salt+raw_password).hexdigest() self.password_salt = salt self.password_hash = hsh def check_password(self, raw_password): """ Returns a boolean of whether the raw_password was correct. """ import random import sha hsh = sha.new(self.password_salt+raw_password).hexdigest() return self.password_hash == hsh def get_all_feeds(self): """Return all feeds associated with this account""" return self.accountfeed_set.select_related().filter().order_by('feeds.title') def get_unread_feeds(self): """Return a list of unread feeds for this account. Each feed has unread_total filled in.""" sql = """ SELECT items.feed_id, count(*) FROM items INNER JOIN accounts_feeds ON accounts_feeds.feed_id = items.feed_id WHERE accounts_feeds.account_id = %s AND (items.date_added > accounts_feeds.latest_read OR accounts_feeds.latest_read IS NULL) GROUP BY items.feed_id """ % (self.id,) cursor = connection.cursor() cursor.execute(sql) feed_totals = {} for row in cursor.fetchall(): feed_id, total_items = row feed_totals[feed_id] = total_items feed_ids = feed_totals.keys() if feed_ids: accountfeeds = AccountFeed.objects.select_related().filter(account=self, feed__id__in=feed_ids).order_by('feeds.title') for af in accountfeeds: af.feed.unread_total = feed_totals[af.feed.id] return accountfeeds else: return [] def save(self): # TODO: What would be the best standard exception here? # (This should be picked up by form validation already) if self.email and self.openid: raise Exception() if not self.email and not self.openid: raise Exception() if self.openid and (self.password_salt or self.password_hash): raise Exception() if self.email and not (self.password_salt and self.password_hash): raise Exception() super(Account, self).save()
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