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3D
theaidenlab/AGWG-merge
edit/apply-edits-prep-for-next-round.sh
.sh
5,016
118
#!/bin/bash #### Description: Wrapper script that applies a list of edits to the original set of scaffolds/contigs to create a new input set, described by new cprops, new mnd and, if requested, new fasta. #### Usage: apply-edits-prep-for-next-round.sh [ -f path_to_fasta_file ] [ -r revision_label ] [ -p true/false ] <...
Shell
3D
theaidenlab/AGWG-merge
edit/run-mismatch-detector.sh
.sh
14,327
211
#!/bin/bash #### Description: Wrapper script to annotate mismatches. Consists of 3 parts: #### 1. Analysis of local mismatch signatures [done] #### 2?. Filtering local mismatch calls by checking for off-diagonal contact enrichments signatures [not done] #### 3. Mismatch boundary thinning to reduce mimassembly debris [...
Shell
3D
theaidenlab/AGWG-merge
supp/generate-table-s5.sh
.sh
448
10
#!/bin/bash extract () { awk '{str[NR]=$0}END{print str[1]; print str[2]; print str[3]; print str[7]; print str[8]}' $1 | awk '{$1=$1}1' } in_chrom=`extract chr-length.fasta.stats | awk 'NR==1{print $NF}'` awk -v in_chrom=${in_chrom} '{tmp=$NF; $NF=""; print $0"\t"tmp}NR==1{tot_len=tmp}NR==5||NR==10||NR==15{pct...
Shell
3D
theaidenlab/AGWG-merge
supp/generate-table-s1.sh
.sh
748
8
#!/bin/bash extract () { awk '{str[NR]=$0}END{print str[1]; print str[7]; print str[8]; print str[9]}' $1 | awk '{$1=$1}1' } awk '{tmp=$NF; $NF=""; print $0"\t"tmp}NR==1{tot_seq=tmp}NR==5{print "% of Total Sequenced Base Pairs\t"tmp/tot_seq}NR==9{tot_attempt=tmp; print "% of Total Sequenced Base Pairs\t"tmp/tot_...
Shell
3D
theaidenlab/AGWG-merge
supp/match-map-data.sh
.sh
3,061
87
#!/bin/bash USAGE=" ***************************** ./generate-linkage-map.sh -d <Juneja/...> -c <chrom_number> <path_to_orig_cprops> <path_to_final_tiled_cprops> <path_to_final_tiled_asm> ***************************** " ## HANDLE OPTIONS while getopts "hd:c:" opt; do case $opt in h) echo "$USAGE" >&1 exi...
Shell
3D
theaidenlab/AGWG-merge
supp/make-rainbow-tracks.sh
.sh
2,001
47
#!/bin/bash ## Helper script to generate rainbow tracks illustrating liftover ## Written by: OD olga.dudchenko@bcm.edu pipeline=`cd "$( dirname $0)" && cd .. && pwd` bin=500000; USAGE=" ***************************** ./make-rainbow-tracks.sh -b <bin> -c <ref_chrom_number> ref.cprops ref.asm target.cprops target.asm...
Shell
3D
theaidenlab/AGWG-merge
supp/generate-table-s2.sh
.sh
532
8
#!/bin/bash extract () { awk '{str[NR]=$0}END{print str[1]; print str[7]; print str[8]; print str[9]}' $1 | awk '{$1=$1}1' } awk '{tmp=$NF; $NF=""; print $0"\t"tmp}NR==1{tot_seq=tmp}NR==5{print "% of Total Sequenced Base Pairs\t"tmp/tot_seq}NR==9{tot_attempt=tmp; print "% of Total Sequenced Base Pairs\t"tmp/tot_...
Shell
3D
theaidenlab/AGWG-merge
supp/generate-table-1.sh
.sh
348
8
#!/bin/bash extract () { awk '{str[NR]=$0}END{print str[1]; print str[2]; print str[3]; print str[7]; print str[8]}' $1 | awk '{$1=$1}1' } awk '{tmp=$NF; $NF=""; print $0"\t"tmp}NR==5||NR==10||NR==15{print ""}' <(extract draft.fasta.stats && extract chr-length.fasta.stats && extract small.fasta.stats && extract ...
Shell
3D
theaidenlab/AGWG-merge
supp/fasta-count-sequenced-bases.sh
.sh
1,380
41
#!/bin/bash USAGE="./fasta-count-sequenced-bases.sh {-c <chrom_number>} <path_to_fasta>" # handle options while getopts "c:h" opt; do case $opt in h) echo "$USAGE" exit 0 ;; c) re='^[-0-9]+$' if ! [[ $OPTARG =~ $re && $OPTARG -gt 0 ]] ; then echo ":( Error: Wrong syntax for number of chromosomes: counting a...
Shell
3D
theaidenlab/AGWG-merge
supp/get-AaegL2.sh
.sh
1,226
25
#!/bin/bash ## This is a script to set up initial conditions for replicating the AaegL4 assembly ## Input: None (link to NCBI assembly hardcoded) ## Output: AaegL2.fasta file ## Written by: OD ## USAGE: ./get-AaegL2.sh [ -f temp.cprops ] || [ -f temp.asm ] && echo >&2 "Please remove or rename temp.cprops and/or temp.a...
Shell
3D
theaidenlab/AGWG-merge
supp/generate-table-s3.sh
.sh
550
8
#!/bin/bash extract () { awk '{str[NR]=$0}END{print str[1]; print str[7]; print str[8]; print str[9]}' $1 | awk '{$1=$1}1' } awk '{tmp=$NF; $NF=""; print $0"\t"tmp}NR==1{tot_seq=tmp}NR==5{print "% of Total Sequenced Base Pairs\t"tmp/tot_seq}NR==9{tot_attempt=tmp; print "% of Total Sequenced Base Pairs\t"tmp/tot_...
Shell
3D
theaidenlab/AGWG-merge
supp/generate-table-s4.sh
.sh
439
10
#!/bin/bash extract () { awk '{str[NR]=$0}END{print str[1]; print str[2]; print str[3]; print str[7]; print str[8]}' $1 | awk '{$1=$1}1' } in_chrom=`extract chr-length.fasta.stats | awk 'NR==1{print $NF}'` awk -v in_chrom=${in_chrom} '{tmp=$NF; $NF=""; print $0"\t"tmp}NR==1{tot_len=tmp}NR==5||NR==10||NR==15{pct...
Shell
3D
theaidenlab/AGWG-merge
supp/print-tables.sh
.sh
334
16
#!/bin/bash pipeline=`cd "$( dirname $0)" && cd .. && pwd` bash ${pipeline}/supp/generate-table-1.sh bash ${pipeline}/supp/generate-table-s1.sh bash ${pipeline}/supp/generate-table-s2.sh bash ${pipeline}/supp/generate-table-s3.sh bash ${pipeline}/supp/generate-table-s4.sh bash ${pipeline}/supp/generat...
Shell
3D
theaidenlab/AGWG-merge
split/run-asm-splitter.sh
.sh
11,980
226
#!/bin/bash #### Description: Wrapper script to split any given assembly. Note that this split is ignorant of the chromosome number and is simply a version of a mismatch detector at a pretty large scale. To control what is going on one might want to check if the number of mismatches pre to post-polish has decreased (c...
Shell
3D
AxDante/SAAMI
2D_Image_exampe.py
.py
278
11
# Import sammi module from saami.SAAMI import SAAMI Data2D = SAAMI('data/Chest_X-ray_example_processed', roi=None, dataset_type='Image') print('dataset loaded') mask = Data2D.calculate_mask(0, threshold= 0.003) Data2D.save_mask(0, save_path='outputs/saved_2D_sam_mask.png')
Python
3D
AxDante/SAAMI
3D_volume_example.py
.py
577
22
# Import sammi module from saami.SAAMI import SAAMI # roi = ((70, 150), (700, 600)) SAAMIdata = SAAMI('data/MRI_example', roi=None) # Calculates 3D mask for the first volume (idx = 0) mask = SAAMIdata.calculate_mask(0, threshold= 0.003) SAAMIdata.save_mask(0, save_path='outputs/saved_sam_mask.nii') # Fine-tune 3D ...
Python
3D
AxDante/SAAMI
CODE_OF_CONDUCT.md
.md
5,226
129
# Contributor Covenant Code of Conduct ## Our Pledge We as members, contributors, and leaders pledge to make participation in our community a harassment-free experience for everyone, regardless of age, body size, visible or invisible disability, ethnicity, sex characteristics, gender identity and expression, level of...
Markdown
3D
AxDante/SAAMI
saami/Dataset.py
.py
5,013
152
from torch.utils.data import Dataset import os import nibabel as nib import numpy as np import re import cv2 class VolumeDataset(Dataset): """ VolumeDataset """ def __init__(self, input_dir, roi=None): self.input_dir = input_dir self.data = {} self.folder_names = os.li...
Python
3D
AxDante/SAAMI
saami/__init__.py
.py
0
0
null
Python
3D
AxDante/SAAMI
saami/functions.py
.py
10,672
288
import os.path import urllib.request import numpy as np import cv2 from tqdm import tqdm from segment_anything import SamAutomaticMaskGenerator, sam_model_registry, SamPredictor def get_sam_mask_generator(sam_checkpoint=None, sam_model_type="vit_b", device="cuda"): if sam_checkpoint == None: if sam_model...
Python
3D
AxDante/SAAMI
saami/SAAMI.py
.py
3,842
84
import cv2 import os import nibabel as nib from typing import NamedTuple from saami.Dataset import VolumeDataset, ImageDataset from saami.utils import save_SAM_data, convert_to_nifti from saami.functions import get_SAM_data, fine_tune_3d_masks, get_sam_mask_generator from saami.visualizer import visualize_volume_SAM c...
Python
3D
AxDante/SAAMI
saami/utils.py
.py
2,533
74
"Utility file for saami package" import os import numpy as np import nibabel as nib import pickle def download_progress_hook(block_num, block_size, total_size): downloaded = block_num * block_size progress = min(100, (downloaded / total_size) * 100) print(f"\rDownload progress: {progress:.2f}%", end='') d...
Python
3D
AxDante/SAAMI
saami/visualizer.py
.py
4,523
138
import numpy as np import matplotlib.pyplot as plt import ipywidgets as widgets import os import tkinter as tk from matplotlib.backends.backend_tkagg import FigureCanvasTkAgg from matplotlib.colors import Normalize def visualize_volume_SAM(data_dict, show_widget=False, show_tkinter=False, save_path="", axis='z'): ...
Python
3D
ShanghaiTech-IMPACT/3D-MedDiffusion
AutoEncoder/utils.py
.py
4,810
178
import warnings import torch # import imageio import math import numpy as np # import skvideo.io import sys import pdb as pdb_original import logging # import imageio.core.util logging.getLogger("imageio_ffmpeg").setLevel(logging.ERROR) class ForkedPdb(pdb_original.Pdb): """A Pdb subclass that may be used ...
Python
3D
ShanghaiTech-IMPACT/3D-MedDiffusion
AutoEncoder/model/PatchVolume.py
.py
31,335
706
import math import numpy as np import pytorch_lightning as pl import torch import torch.nn as nn import torch.nn.functional as F# from einops import rearrange from torch.optim.optimizer import Optimizer from AutoEncoder.utils import shift_dim, adopt_weight from AutoEncoder.model.lpips import LPIPS from AutoEncoder.mo...
Python
3D
ShanghaiTech-IMPACT/3D-MedDiffusion
AutoEncoder/model/lpips.py
.py
6,483
182
"""Adapted from https://github.com/SongweiGe/TATS""" """Stripped version of https://github.com/richzhang/PerceptualSimilarity/tree/master/models""" from collections import namedtuple from torchvision import models import torch.nn as nn import torch from tqdm import tqdm import requests import os import hashlib URL_M...
Python
3D
ShanghaiTech-IMPACT/3D-MedDiffusion
AutoEncoder/model/__init__.py
.py
165
7
from AutoEncoder.model.codebook import Codebook from AutoEncoder.model.lpips import LPIPS from AutoEncoder.model.MedicalNetPerceptual import MedicalNetPerceptual
Python
3D
ShanghaiTech-IMPACT/3D-MedDiffusion
AutoEncoder/model/codebook.py
.py
3,982
108
import numpy as np import torch import torch.nn as nn import torch.nn.functional as F import torch.distributed as dist from AutoEncoder.utils import shift_dim class Codebook(nn.Module): def __init__(self, n_codes, embedding_dim, no_random_restart=False, restart_thres=1.0): super().__init__() s...
Python
3D
ShanghaiTech-IMPACT/3D-MedDiffusion
AutoEncoder/model/MedicalNetPerceptual.py
.py
2,710
67
import torch import torch.nn as nn import os def mednet_norm(input): mean = input.mean() std = input.std() return (input - mean) / std def mednet_norm_feature(x , eps = 1e-7): norm_factor = torch.sqrt(torch.sum(x**2, dim=1, keepdim=True)) return x / (norm_factor + eps) def spatial_average(x, keep...
Python
3D
ShanghaiTech-IMPACT/3D-MedDiffusion
warvito_MedicalNet-models_main/hubconf.py
.py
338
13
# Optional list of dependencies required by the package dependencies = ["torch", "gdown"] from medicalnet_models.models.resnet import ( medicalnet_resnet10, medicalnet_resnet10_23datasets, medicalnet_resnet50, medicalnet_resnet50_23datasets, medicalnet_resnet101, medicalnet_resnet152, medic...
Python
3D
ShanghaiTech-IMPACT/3D-MedDiffusion
warvito_MedicalNet-models_main/medicalnet_models/models/resnet.py
.py
11,374
368
from torch import Tensor from typing import List, Type, Union import errno import os from typing import Optional import gdown import torch import torch.nn as nn def conv3x3x3(in_planes: int, out_planes: int, stride: int = 1, dilation: int = 1) -> nn.Conv3d: """3x3x3 convolution with padding""" return nn.Conv...
Python
3D
ShanghaiTech-IMPACT/3D-MedDiffusion
ddpm/__init__.py
.py
37
2
from ddpm.BiFlowNet import BiFlowNet
Python
3D
ShanghaiTech-IMPACT/3D-MedDiffusion
ddpm/utils.py
.py
4,796
168
""" Various utilities for neural networks. """ import math import torch as th import torch.nn as nn class SiLU(nn.Module): def forward(self, x): return x * th.sigmoid(x) class GroupNorm32(nn.GroupNorm): def forward(self, x): return super().forward(x.float()).type(x.dtype) def conv_nd(di...
Python
3D
ShanghaiTech-IMPACT/3D-MedDiffusion
ddpm/BiFlowNet.py
.py
40,364
1,090
import math import copy import torch from torch import nn, einsum import torch.nn.functional as F from functools import partial import torchio as tio from torch.utils import data from pathlib import Path from torch.optim import Adam from torchvision import transforms as T, utils from torch.cuda.amp import autocast, Gr...
Python
3D
ShanghaiTech-IMPACT/3D-MedDiffusion
dataset/vqgan.py
.py
3,077
77
import torch from torch.utils.data.dataset import Dataset import os import random import glob import torchio as tio import json import random class VQGANDataset(Dataset): def __init__(self, root_dir=None, augmentation=False,split='train',stage = 1,patch_size = 64): randnum = 216 self.file_names = ...
Python
3D
ShanghaiTech-IMPACT/3D-MedDiffusion
dataset/tr_generate.py
.py
873
31
import torch from torch.utils.data.dataset import Dataset import os import glob import torchio as tio import json class GenerateTrData_dataset(Dataset): def __init__(self, root_dir=None,no_norm=False): self.no_norm = no_norm self.root_dir = root_dir self.all_files = glob.glob(os.path.joi...
Python
3D
ShanghaiTech-IMPACT/3D-MedDiffusion
dataset/__init__.py
.py
97
6
from dataset.vqgan import VQGANDataset from dataset.tr_generate import GenerateTrData_dataset
Python
3D
ShanghaiTech-IMPACT/3D-MedDiffusion
dataset/vqgan_4x.py
.py
2,973
76
import torch from torch.utils.data.dataset import Dataset import os import random import glob import torchio as tio import json import random class VQGANDataset_4x(Dataset): def __init__(self, root_dir=None, augmentation=False,split='train',stage = 1,patch_size = 64): randnum = 216 self.file_names...
Python
3D
ShanghaiTech-IMPACT/3D-MedDiffusion
dataset/Singleres_dataset.py
.py
1,832
49
import numpy as np import torch from torch.utils.data.dataset import Dataset import os import glob import numpy as np import json import torchio as tio class Singleres_dataset(Dataset): def __init__(self, root_dir=None, resolution= [32,32,32], generate_latents= False): self.all_files = [] self.re...
Python
3D
ShanghaiTech-IMPACT/3D-MedDiffusion
evaluation/class_conditional_generation.py
.py
5,060
116
import sys import os current_dir = os.path.dirname(os.path.abspath(__file__)) project_root = os.path.abspath(os.path.join(current_dir, "..")) sys.path.append(project_root) import torch torch.backends.cuda.matmul.allow_tf32 = True torch.backends.cudnn.allow_tf32 = True import argparse import os from ddpm.BiFlowNet impor...
Python
3D
ShanghaiTech-IMPACT/3D-MedDiffusion
evaluation/class_conditional_generation_4x.py
.py
5,068
115
import sys import os current_dir = os.path.dirname(os.path.abspath(__file__)) project_root = os.path.abspath(os.path.join(current_dir, "..")) sys.path.append(project_root) import torch torch.backends.cuda.matmul.allow_tf32 = True torch.backends.cudnn.allow_tf32 = True import argparse import os from ddpm.BiFlowNet impor...
Python
3D
ShanghaiTech-IMPACT/3D-MedDiffusion
train/generate_training_latent.py
.py
2,022
60
import sys import os current_dir = os.path.dirname(os.path.abspath(__file__)) project_root = os.path.abspath(os.path.join(current_dir, "..")) sys.path.append(project_root) from torch.utils.data import DataLoader from AutoEncoder.model.PatchVolume import patchvolumeAE from dataset.Singleres_dataset import Singleres_d...
Python
3D
ShanghaiTech-IMPACT/3D-MedDiffusion
train/train_PatchVolume.py
.py
3,501
94
import sys import os current_dir = os.path.dirname(os.path.abspath(__file__)) project_root = os.path.abspath(os.path.join(current_dir, "..")) sys.path.append(project_root) import pytorch_lightning as pl from pytorch_lightning.callbacks import ModelCheckpoint from pytorch_lightning.loggers import TensorBoardLogger from...
Python
3D
ShanghaiTech-IMPACT/3D-MedDiffusion
train/callbacks.py
.py
3,178
91
import os import numpy as np from PIL import Image import torch import torchvision from pytorch_lightning.callbacks import Callback from pytorch_lightning.utilities.rank_zero import rank_zero_only import torchio as tio class VolumeLogger(Callback): def __init__(self, batch_frequency, max_volumes, clamp=True...
Python
3D
ShanghaiTech-IMPACT/3D-MedDiffusion
train/train_BiFlowNet_SingleRes.py
.py
13,901
362
import sys import os current_dir = os.path.dirname(os.path.abspath(__file__)) project_root = os.path.abspath(os.path.join(current_dir, "..")) sys.path.append(project_root) import torch torch.backends.cuda.matmul.allow_tf32 = True torch.backends.cudnn.allow_tf32 = True import torch.distributed as dist from torch.nn.par...
Python
3D
ShanghaiTech-IMPACT/3D-MedDiffusion
train/train_PatchVolume_stage2.py
.py
3,385
91
import sys import os current_dir = os.path.dirname(os.path.abspath(__file__)) project_root = os.path.abspath(os.path.join(current_dir, "..")) sys.path.append(project_root) import pytorch_lightning as pl from pytorch_lightning.callbacks import ModelCheckpoint from pytorch_lightning.loggers import TensorBoardLogger from...
Python
3D
Demon-Kervin/3D-reconstruction
main_boundaryrecon.m
.m
345
10
% Example: I = imread('E:\1PHD\Paper\1\proe network\94.bmp'); phi = ac_SDF_2D('rectangle', size(I), 10) ; smooth_weight = 3; image_weight = 1e-3; delta_t = 2; n_iters = 100; show_result = 1; phi = ac_ChanVese_model(double(I), phi, smooth_weight, image_weight, ... delta_t, n_iters, show_result); % axis on % grid...
MATLAB
3D
brainglobe/brainreg-napari
brainreg_napari/sample_data.py
.py
1,155
43
import zipfile from typing import List import numpy as np import pooch from napari.types import LayerData from skimage.io import imread # git SHA for version of sample data to download data_commit_sha = "72b73c52f19cee2173467ecdca60747a60e5fb95" POOCH_REGISTRY = pooch.create( path=pooch.os_cache("brainreg_napari...
Python
3D
brainglobe/brainreg-napari
brainreg_napari/__init__.py
.py
131
7
import warnings warnings.warn( "brainreg-napari is deprecated, please switch to brainreg[napari].", DeprecationWarning, )
Python
3D
brainglobe/brainreg-napari
brainreg_napari/util.py
.py
2,569
89
import logging from dataclasses import dataclass import bg_space as bg import numpy as np import skimage.transform from bg_atlasapi import BrainGlobeAtlas from brainglobe_utils.general.system import get_num_processes from tqdm import tqdm def initialise_brainreg(atlas_key, data_orientation_key, voxel_sizes): sca...
Python
3D
brainglobe/brainreg-napari
brainreg_napari/register.py
.py
21,784
584
import json import logging import pathlib from collections import namedtuple from enum import Enum from typing import Dict, List, Tuple import bg_space as bg import brainreg as program_for_log import napari import numpy as np from bg_atlasapi import BrainGlobeAtlas from brainglobe_napari_io.cellfinder.reader_dir impor...
Python
3D
brainglobe/brainreg-napari
brainreg_napari/tests/__init__.py
.py
0
0
null
Python
3D
brainglobe/brainreg-napari
brainreg_napari/tests/test_brainreg_napari.py
.py
5,104
162
import napari import pytest from bg_atlasapi import BrainGlobeAtlas from brainreg_napari.register import ( add_registered_image_layers, brainreg_register, ) def test_add_detect_widget(make_napari_viewer): """ Smoke test to check that adding detection widget works """ viewer = make_napari_view...
Python
3D
brainglobe/brainreg-napari
examples/load_sample_data.py
.py
1,217
40
""" Load and show sample data ========================= This example: - loads some sample data - adds the data to a napari viewer - loads the brainreg-napari registration plugin - opens the napari viewer """ import napari import numpy as np from napari.layers import Layer from brainreg_napari.sample_data import load_t...
Python
3D
SZUHvern/D-UNet
data_load.py
.py
8,790
256
import nibabel as nib import numpy as np import os import h5py import random import cv2 import copy from matplotlib import pyplot as plt from PIL import Image import time def nii_to_h5(path_nii,path_save,ratio=0.8): data = [] label = [] ori = [] list_site = os.listdir(path_nii) list_data = [] o...
Python
3D
SZUHvern/D-UNet
model.py
.py
17,534
519
from __future__ import print_function from keras.models import Model, load_model from keras.optimizers import Adam, SGD from keras.preprocessing.image import ImageDataGenerator from keras.layers import * from keras.callbacks import EarlyStopping, ModelCheckpoint from keras.utils import multi_gpu_model import math impor...
Python
3D
SZUHvern/D-UNet
Stroke_segment.py
.py
6,124
149
import numpy as np import os from model import * from Statistics import * if __name__ == "__main__": os.environ["CUDA_VISIBLE_DEVICES"] = "0,1" path_h5_save = './h5/' output_path = './model/' dataset_name = '0.8' load_weight = '' mode = 'train' # use 'train' or 'detect' img_size = [192, ...
Python
3D
SZUHvern/D-UNet
Statistics.py
.py
3,539
108
from keras import backend as K import numpy as np def TP(y_true, y_pred): y_true_f = K.flatten(y_true) y_pred_f = K.flatten(y_pred) true_positives = K.sum(K.round(K.clip(y_true_f * y_pred_f, 0, 1))) return true_positives def FP(y_true, y_pred): y_true_f = K.flatten(y_true) y_pred_f = K.flatte...
Python
3D
overengineer/TR-FDTD
bitirme5.m
.m
1,485
66
clear all close all %TMz Polarization %physical constants c = 2.998e8; eta0 = 120*pi; mu0 = pi*4e-7; eps0 = 1e-9/(36*pi); %environment parameters nx = 249; ny = 249; delta = 1.2e-2; %1.2cm dx = delta; dy = delta; dt = 20e-12; %0.95/(c*sqrt(dx^-2+dy^-2)); %f0 = 2e9; %2GHz tw = 16*dt; t0 = 200*dt; srcx ...
MATLAB
3D
overengineer/TR-FDTD
maxwell3d.py
.py
2,255
104
import torch from math import sin, exp, sqrt, pi def get_device(): try: device = torch.device('cuda') assert device except: device = torch.device('cpu') return torch.device('cpu') #device def zeros(m,n,k): return torch.zeros((m,n,k), device=get_device(), dtype=torch.double) de...
Python
3D
overengineer/TR-FDTD
TR2D.m
.m
1,295
60
clear all close all load 'bitirme5.mat' %TMz Polarization %physical constants c = 2.998e8; eta0 = 120*pi; mu0 = pi*4e-7; eps0 = 1e-9/(36*pi); %environment parameters nx = 249; ny = 249; delta = 1.2e-2; %1.2cm dx = delta; dy = delta; dt = 20e-12; %0.95/(c*sqrt(dx^-2+dy^-2)); %f0 = 2e9; %2GHz tw = 16*dt; t0...
MATLAB
3D
overengineer/TR-FDTD
diel_tumor_lin.m
.m
4,148
160
%physical constants clear all; close all; c0 = 2.998e8; eta0 = 120*pi; mu0 = pi*4e-7; eps0 = 1e-9/(36*pi); %box dimensions width = 0.5; % cm height = 0.5; length = 0.5; % cm %source parameters f0 = 1e9; % GHz band = 2e9; %tw = sqrt(-log(0.1)/(pi*band)^2);%1e-8/pi; %spatial discretization adipose = 1; %5...
MATLAB
3D
overengineer/TR-FDTD
bitirme1.m
.m
1,243
53
%TMz Polarization %physical constants c = 2.998e8; eta0 = 120*pi; mu0 = pi*4e-7; eps0 = 1e-9/(36*pi); %environment parameters width = 1; height = 1; tw = 1e-9/pi;%? t0 = 4*tw; %discretization parameters dx = 0.005; dy = 0.005; nx = width/dx; ny = height/dy; dt = 0.95/(c*sqrt(dx^-2+dy^-2)); %calculation p...
MATLAB
3D
overengineer/TR-FDTD
Material3D.m
.m
2,882
104
%physical constants clear all; close all; c = 2.998e8; eta0 = 120*pi; mu0 = pi*4e-7; eps0 = 1e-9/(36*pi); %box dimensions width = 1; height = 1; length = 1; %spatial discretization dx = 0.02; dy = dx; dz = dx; nx = width/dx; ny = height/dy; nz = length/dz; %source f0 =1e9; tw = 1e-8/pi; t0 = 4*tw; src...
MATLAB
3D
overengineer/TR-FDTD
Maxwell3D.m
.m
2,511
83
%physical constants clear all; c = 2.998e8; eta0 = 120*pi; mu0 = pi*4e-7; eps0 = 1e-9/(36*pi); %environment parameters width = 1; height = 1; depth = 1; f0 =1e9; tw = 1e-8/pi;%? t0 = 4*tw; %discretization parameters dx = 0.01; dy = dx; dz = dx; nx = width/dx; ny = height/dy; nz = depth/dz; dt = 0.95...
MATLAB
3D
overengineer/TR-FDTD
bitirme3.m
.m
1,297
53
clear all close all %TMz Polarization %physical constants c = 2.998e8; eta0 = 120*pi; mu0 = pi*4e-7; eps0 = 1e-9/(36*pi); %environment parameters nx = 249; ny = 249; delta = 1.2e-2; %1.2cm dx = delta; dy = delta; dt = 20e-12;%0.95/(c*sqrt(dx^-2+dy^-2)); f0 = 2e9; % GHz tw = 16*dt; t0 = 200*dt; eps_r =...
MATLAB
3D
overengineer/TR-FDTD
kaynakTR_lossy.m
.m
0
0
null
MATLAB
3D
overengineer/TR-FDTD
makale3d.m
.m
3,918
152
%physical constants clear all; close all; c0 = 2.998e8; eta0 = 120*pi; mu0 = pi*4e-7; eps0 = 1e-9/(36*pi); %box dimensions nx = 249; ny = 249; delta = 1.2e-2; %1.2cm dx = delta; dy = delta; dt = 20e-12; %0.95/(c*sqrt(dx^-2+dy^-2)); f0 = 2e9; %2GHz tw = 16*dt; t0 = 200*dt; %spatial discretization adipo...
MATLAB
3D
overengineer/TR-FDTD
TR.m
.m
3,739
139
%physical constants clear all; close all; load 'withtumor.mat'; load 'withouttumor.mat'; c0 = 2.998e8; eta0 = 120*pi; mu0 = pi*4e-7; eps0 = 1e-9/(36*pi); %box dimensions width = 0.5; % 30cm height = 0.5; length = 0.5; % 1cm %source parameters f0 = 1e9; % GHz band = 2e9; tw = sqrt(-log(0.1)/(pi*band)^2...
MATLAB
3D
overengineer/TR-FDTD
Conductivity.m
.m
3,879
150
%physical constants clear all; close all; c0 = 2.998e8; eta0 = 120*pi; mu0 = pi*4e-7; eps0 = 1e-9/(36*pi); %box dimensions width = 0.05; % cm height = 0.05; length = 0.002; % cm %source parameters f0 = 2e9; % GHz tw = 1e-8/pi; t0 = 4*tw; %spatial discretization adipose = 10; tumor = 60; sigma = 1...
MATLAB
3D
overengineer/TR-FDTD
TR_lin.m
.m
3,830
141
%physical constants clear all; close all; load 'withtumor.mat'; load 'withouttumor.mat'; c0 = 2.998e8; eta0 = 120*pi; mu0 = pi*4e-7; eps0 = 1e-9/(36*pi); %box dimensions width = 0.5; % 30cm height = 0.5; length = 0.5; % 1cm %source parameters f0 = 1e9; % GHz band = 2e9; tw = sqrt(-log(0.1)/(pi*band)^2...
MATLAB
3D
overengineer/TR-FDTD
WithoutTumor.m
.m
3,851
147
%physical constants clear all; close all; c0 = 2.998e8; eta0 = 120*pi; mu0 = pi*4e-7; eps0 = 1e-9/(36*pi); %box dimensions width = 0.5; % cm height = 0.5; length = 0.5; % cm %source parameters f0 = 1e9; % GHz band = 2e9; tw = sqrt(-log(0.1)/(pi*band)^2);%1e-8/pi; t0 = 4*tw; %spatial discretization ...
MATLAB
3D
overengineer/TR-FDTD
bitirme2.m
.m
1,302
53
clear all close all %TMz Polarization %physical constants c = 2.998e8; eta0 = 120*pi; mu0 = pi*4e-7; eps0 = 1e-9/(36*pi); %environment parameters nx = 249; ny = 249; delta = 0.012; %1.2cm dx = delta; dy = delta; dt = 20e-12;%0.95/(c*sqrt(dx^-2+dy^-2)); f0 = 2e9; % GHz tw = 16*dt; t0 = 200*dt; eps_r = ...
MATLAB
3D
overengineer/TR-FDTD
hytrf.m
.m
0
0
null
MATLAB
3D
overengineer/TR-FDTD
diel_no_tumor_lin.m
.m
3,831
147
%physical constants clear all; close all; c0 = 2.998e8; eta0 = 120*pi; mu0 = pi*4e-7; eps0 = 1e-9/(36*pi); %box dimensions width = 0.5; % cm height = 0.5; length = 0.5; % cm %source parameters f0 = 1e9; % GHz band = 2e9; tw = sqrt(-log(0.1)/(pi*band)^2);%1e-8/pi; t0 = 4*tw; %spatial discretization ...
MATLAB
3D
overengineer/TR-FDTD
WithTumor.m
.m
4,179
160
%physical constants clear all; close all; c0 = 2.998e8; eta0 = 120*pi; mu0 = pi*4e-7; eps0 = 1e-9/(36*pi); %box dimensions width = 0.5; % cm height = 0.5; length = 0.5; % cm %source parameters f0 = 1e9; % GHz band = 2e9; %tw = sqrt(-log(0.1)/(pi*band)^2);%1e-8/pi; %spatial discretization adipose = 1; %5...
MATLAB
3D
overengineer/TR-FDTD
bitirme4.m
.m
1,300
53
clear all close all %TMz Polarization %physical constants c = 2.998e8; eta0 = 120*pi; mu0 = pi*4e-7; eps0 = 1e-9/(36*pi); %environment parameters nx = 249; ny = 249; delta = 1.2e-2; %1.2cm dx = delta; dy = delta; dt = 20e-12; %0.95/(c*sqrt(dx^-2+dy^-2)); f0 = 2e9; %2GHz tw = 16*dt; t0 = 200*dt; eps_r ...
MATLAB
3D
overengineer/TR-FDTD
Eztr_lossy.m
.m
0
0
null
MATLAB
3D
jianlin-cheng/TransFun
training.py
.py
10,866
290
import math import os import numpy as np import torch.optim as optim from torchsummary import summary from sklearn.metrics import accuracy_score, f1_score, precision_score, recall_score import Constants import params from Dataset.Dataset import load_dataset from models.gnn import GCN import argparse import torch impo...
Python
3D
jianlin-cheng/TransFun
predict.py
.py
8,348
227
import argparse import os import networkx as nx import obonet import torch from Bio import SeqIO from torch import optim from torch_geometric.loader import DataLoader import Constants import params from Dataset.Dataset import load_dataset from models.gnn import GCN from preprocessing.utils import load_ckp, get_sequenc...
Python
3D
jianlin-cheng/TransFun
parser.py
.py
1,369
29
import warnings import argparse import os import torch warnings.filterwarnings("ignore", category=UserWarning) os.environ['CUDA_LAUNCH_BLOCKING'] = "1" parser = argparse.ArgumentParser() parser.add_argument('--no-cuda', action='store_true', default=False, help='Disables CUDA training.') parser.add_argument('--fastmo...
Python
3D
jianlin-cheng/TransFun
params.py
.py
918
40
bio_kwargs = { 'hidden': 16, 'input_features_size': 1280, 'num_classes': 3774, 'edge_type': 'cbrt', 'edge_features': 0, 'egnn_layers': 12, 'layers': 1, 'device': 'cuda', 'wd': 5e-4 } mol_kwargs = { 'hidden': 16, 'input_features_size': 1280, 'num_classes': 600, 'edge_...
Python
3D
jianlin-cheng/TransFun
Constants.py
.py
1,930
66
residues = { "A": 1, "C": 2, "D": 3, "E": 4, "F": 5, "G": 6, "H": 7, "I": 8, "K": 9, "L": 10, "M": 11, "N": 12, "P": 13, "Q": 14, "R": 15, "S": 16, "T": 17, "V": 18, "W": 19, "Y": 20 } INVALID_ACIDS = {"U", "O", "B", "Z", "J", "X", "*"} amino_acids = { "ALA": "A", "ARG": "R", "ASN": "N", "ASP": "D", "CYS"...
Python
3D
jianlin-cheng/TransFun
net_utils.py
.py
2,480
76
import torch import torch.nn as nn from torch_geometric.nn import GCNConv, BatchNorm, global_add_pool, global_mean_pool, global_max_pool class GCN(nn.Module): def __init__(self, input_features, out_channels, relu=True): super(GCN, self).__init__() self.conv = GCNConv(input_features, out_channels) ...
Python
3D
jianlin-cheng/TransFun
tools/jackhmmer.py
.py
7,515
202
# Copyright 2021 DeepMind Technologies Limited # # 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 agr...
Python
3D
jianlin-cheng/TransFun
tools/residue_constants.py
.py
34,990
900
# Copyright 2021 DeepMind Technologies Limited # # 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 agr...
Python
3D
jianlin-cheng/TransFun
tools/hhblits.py
.py
5,522
155
# Copyright 2021 DeepMind Technologies Limited # # 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 agr...
Python
3D
jianlin-cheng/TransFun
tools/utils.py
.py
1,226
41
# Copyright 2021 DeepMind Technologies Limited # # 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 agr...
Python
3D
jianlin-cheng/TransFun
tools/parsers.py
.py
21,339
608
# Copyright 2021 DeepMind Technologies Limited # # 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 agr...
Python
3D
jianlin-cheng/TransFun
tools/msa_identifiers.py
.py
3,110
93
# Copyright 2021 DeepMind Technologies Limited # # 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 agr...
Python
3D
jianlin-cheng/TransFun
Sampler/ImbalancedDatasetSampler.py
.py
3,323
90
from typing import Callable import torch import Constants from preprocessing.utils import class_distribution_counter, pickle_load class ImbalancedDatasetSampler(torch.utils.data.sampler.Sampler): """Samples elements randomly from a given list of indices for imbalanced dataset Arguments: indices: a li...
Python
3D
jianlin-cheng/TransFun
Sampler/Smote.py
.py
2,953
86
import torch from random import randint import random class SMOTE(object): def __init__(self, distance='euclidian', dims=512, k=5): super(SMOTE, self).__init__() self.newindex = 0 self.k = k self.dims = dims self.distance_measure = distance def populate(self, N, i, nna...
Python
3D
jianlin-cheng/TransFun
prep/utils.py
.py
3,395
116
from collections import deque, Counter import warnings import pandas as pd import numpy as np import math BIOLOGICAL_PROCESS = 'GO:0008150' MOLECULAR_FUNCTION = 'GO:0003674' CELLULAR_COMPONENT = 'GO:0005575' FUNC_DICT = { 'cc': CELLULAR_COMPONENT, 'mf': MOLECULAR_FUNCTION, 'bp': BIOLOGICAL_PROCESS } NAMES...
Python
3D
jianlin-cheng/TransFun
models/gnn.py
.py
5,528
134
import itertools import torch from torch.nn import Sigmoid from models.egnn_clean import egnn_clean as eg import net_utils class GCN(torch.nn.Module): def __init__(self, **kwargs): super(GCN, self).__init__() input_features_size = kwargs['input_features_size'] hidden_channels = kwargs['h...
Python
3D
jianlin-cheng/TransFun
models/egnn_clean/egnn_clean.py
.py
8,270
217
from torch import nn import torch from torch.nn import Sigmoid, Linear from torch_geometric.nn import global_mean_pool import net_utils class E_GCL(nn.Module): """ E(n) Equivariant Convolutional Layer re """ def __init__(self, input_nf, output_nf, hidden_nf, edges_in_d=0, act_fn=nn.SiLU(), resid...
Python
3D
jianlin-cheng/TransFun
models/egnn_clean/__init__.py
.py
0
0
null
Python
3D
jianlin-cheng/TransFun
preprocessing/preprocess.py
.py
6,121
158
import os import subprocess import pandas as pd import torch import esm import torch.nn.functional as F import Constants from preprocessing.utils import pickle_save, pickle_load, count_proteins_biopython # Script to test esm def test_esm(): # Load ESM-1b model model, alphabet = esm.pretrained.esm1b_t33_650M_...
Python
3D
jianlin-cheng/TransFun
preprocessing/extract.py
.py
5,095
137
#!/usr/bin/env python3 -u # Copyright (c) Facebook, Inc. and its affiliates. # # This source code is licensed under the MIT license found in the # LICENSE file in the root directory of this source tree. import argparse import pathlib import torch from esm import Alphabet, FastaBatchedDataset, ProteinBertModel, pretr...
Python
3D
jianlin-cheng/TransFun
preprocessing/create_go.py
.py
27,035
617
import os import csv import subprocess import networkx as nx import numpy as np import obonet import pandas as pd from Bio.Seq import Seq from Bio import SeqIO, SwissProt from Bio.SeqRecord import SeqRecord import Constants from preprocessing.utils import pickle_save, pickle_load, get_sequence_from_pdb, fasta_for_msas...
Python
3D
jianlin-cheng/TransFun
preprocessing/utils.py
.py
13,800
405
import math import os, subprocess import shutil import pandas as pd import torch from Bio import SeqIO import pickle from Bio.Seq import Seq from Bio.SeqRecord import SeqRecord from biopandas.pdb import PandasPdb from collections import deque, Counter import csv from sklearn.metrics import roc_curve, auc from torchv...
Python