| import os |
| import pandas as pd |
| from datetime import timedelta,datetime |
|
|
| from lib.utilities import codebook |
| from lib.experiment_specs import study_config |
|
|
|
|
| from lib.data_helpers.builder_utils import BuilderUtils |
| from lib.data_helpers import test |
|
|
| from lib.utilities import serialize |
|
|
| class Gaming(): |
| gaming_dir = os.path.join("data","external","intermediate","PhoneDashboard","Gaming") |
| events_file = os.path.join(gaming_dir,"Events") |
| first_last_file = os.path.join(gaming_dir, "FirstLast") |
| diagnosed_file = os.path.join(gaming_dir, "Diagnosed") |
| diagnosed_test_file = diagnosed_file.replace("intermediate","intermediate_test") |
|
|
| good_diag = ["Phone never shut off", |
| "Phone shut off", |
| "Phone shut off, even if d1<d0", |
| ] |
|
|
| game_cols = ["AppCode", "AppRuntime", "ForegroundApp","BatteryLevel", "DeviceRuntime", "CreatedDatetime","CreatedEasternDatetime", "ScreenActive", |
| "CreatedDate", "Sequence","Zipfile","TimeZone"] |
|
|
|
|
| """ - detects suspicious events of a granular dataframe that comes from an individual zipfile |
| - records the first and last pings in each granular data frame to scan first and last """ |
| @staticmethod |
| def scan(df,file,first_last_bool = False): |
| for col in Gaming.game_cols: |
| if col in df.columns: |
| df[f"Prev{col}"] = df[col].shift(1) |
| keep_cols = [x + y for x in ["", "Prev"] for y in Gaming.game_cols] |
|
|
| |
| if first_last_bool == False: |
| ev = df.loc[(df["PrevAppRuntime"]>df["AppRuntime"]) & (df["PrevAppCode"]==df["AppCode"]),keep_cols] |
|
|
| else: |
| |
| |
| ev = df.loc[(df["PrevAppRuntime"]>df["AppRuntime"]) |
| & (df["PrevAppCode"]==df["AppCode"]) |
| & (df["Sequence"]=="First") |
| & (df["PrevSequence"]=="Last") |
| & (df["PrevZipfile"]!=df["Zipfile"]) |
| , keep_cols] |
|
|
| serialize.save_pickle(ev, os.path.join(Gaming.gaming_dir,"Granular",f"events{file}")) |
|
|
| """gets the first and last observation from each raw zipfile""" |
| @staticmethod |
| def get_first_last(df,file): |
| first = df.groupby("AppCode").first() |
| first["Sequence"] = "First" |
| last = df.groupby("AppCode").last() |
| last["Sequence"] = "Last" |
| first_last_df = first.append(last).reset_index() |
| first_last_df = first_last_df[Gaming.game_cols] |
| serialize.save_pickle(first_last_df, os.path.join(Gaming.gaming_dir, "FirstLast", f"first_last_{file}")) |
|
|
| """ assembles the events file, diagnoses gaming events, and summarizes blackouts on the user level by phase""" |
| @staticmethod |
| def process_gaming(error_margin, hour_use,raw_user_df): |
|
|
| |
| config_user_dict = serialize.open_yaml("config_user.yaml") |
| if config_user_dict['local']['test']: |
| diag_df = serialize.open_pickle(Gaming.diagnosed_file) |
|
|
| else: |
| Gaming._add_first_last_events() |
| ev_df = Gaming._aggregate_events() |
| diag_df = Gaming._diagnose_events(ev_df, error_margin, hour_use) |
|
|
| |
| game_user_df = Gaming._reshape_events(diag_df, raw_user_df) |
|
|
| |
| game_user_df_SA = Gaming._reshape_events(diag_df.loc[diag_df["PrevScreenActive"]==1], raw_user_df,"ActiveBlackoutsOverPhase") |
|
|
| game_hour_df = Gaming._expand_gaming_df(diag_df,"GameHourDf") |
|
|
| |
| |
|
|
| return game_user_df |
|
|
|
|
| """ aggregate the first last observations, and then scan them. |
| We are scanning if the last reading from the previous zipfile |
| has a app runtime that is greater than the app runtime for the next zipfile """ |
| @staticmethod |
| def _add_first_last_events(): |
| fl_dir = os.path.join(Gaming.gaming_dir, "FirstLast") |
| df = pd.concat([serialize.soft_df_open(os.path.join(fl_dir, x)) for x in os.listdir(fl_dir)]) |
| df = df.sort_values(by=["AppCode", "CreatedEasternDatetime"]).reset_index(drop=True) |
| if datetime.now()>study_config.surveys["Baseline"]["Start"]: |
| df = df.loc[df['CreatedDatetime']>study_config.surveys["Baseline"]["Start"]] |
| df["PrevSequence"] = df["Sequence"].shift(1) |
| Gaming.scan(df, "fl", first_last_bool=True) |
|
|
| """aggregates all the individual events in the granular directory""" |
| @staticmethod |
| def _aggregate_events(): |
| ev_dir = os.path.join(Gaming.gaming_dir, "Granular") |
| ev_df = pd.concat([serialize.soft_df_open(os.path.join(ev_dir, x)) for x in os.listdir(ev_dir)]) |
| ev_df = ev_df.drop_duplicates(subset=["AppCode", "CreatedEasternDatetime"], keep='last').reset_index(drop=True) |
| serialize.save_pickle(ev_df, Gaming.events_file) |
| return ev_df |
|
|
|
|
| """ estimates the runtime of the phone when the user was not tracking |
| - d0: the device runtime right before pennyworth stopped recording |
| - d1: the device runtime when PD returned to recording |
| - dd: difference in phone runtime (d1 - d0) |
| - td: difference in the timestamps associated with d0 and d1 |
| - error_margin: number of hours that CreateDateTime or runtime stamps can deviate before error is flagged |
| - all variables have hour units |
| """ |
|
|
| @staticmethod |
| def _diagnose_events(ev_df, error_margin, clean_hour_use): |
| df = ev_df.sort_values(by = ['AppCode','CreatedEasternDatetime']) |
| df = df.loc[df["PrevCreatedEasternDatetime"]>study_config.first_pull] |
|
|
| if datetime.now()>study_config.surveys["Baseline"]["Start"]: |
| df = df.loc[df['PrevCreatedDatetime']>study_config.surveys["Baseline"]["Start"]] |
|
|
| df["CreatedEasternDatetimeDiffHours"] = (df["CreatedEasternDatetime"] - df["PrevCreatedEasternDatetime"]).apply( |
| lambda x: round(x.days * 24 + x.seconds / (60 * 60), 2)) |
|
|
| for col in ["DeviceRuntime", "AppRuntime", "PrevDeviceRuntime", "PrevAppRuntime"]: |
| df[f"{col}Hours"] = (df[f"{col}"] / (1000 * 60 * 60)).round(decimals=2) |
|
|
| for col in ["DeviceRuntimeHours","AppRuntimeHours"]: |
| df[col+"Diff"] = df[col]-df[f"Prev{col}"] |
|
|
| ne_dict = df.to_dict(orient='index') |
| day = clean_hour_use.groupby(["AppCode","CreatedDate"])["UseMinutes"].sum() |
| day_dic = {k: day[k].to_dict() for k, v in day.groupby(level=0)} |
|
|
| for key, val in ne_dict.items(): |
|
|
| d0 = val["PrevDeviceRuntimeHours"] |
| d1 = val["DeviceRuntimeHours"] |
| td = val["CreatedEasternDatetimeDiffHours"] |
| date0 = val["PrevCreatedDatetime"] |
| date1 = val["CreatedDatetime"] |
|
|
| if val["AppCode"] in day_dic: |
| app_dic = day_dic[val["AppCode"]] |
| else: |
| |
| app_dic = {} |
|
|
| |
| |
| if (date0+timedelta(days=1)).date()<date1.date(): |
| next_day = date0+timedelta(days=1) |
| while next_day < date1.date(): |
| if next_day in app_dic: |
| ne_dict[key]['Diagnosis'] = "ERROR: FalsePositive" |
| break |
| else: |
| next_day = next_day + timedelta(days=1) |
|
|
| if date1<date0: |
| ne_dict[key]['Diagnosis'] = "ERROR: Date1<Date0" |
|
|
| |
| elif d1 - d0 < 0: |
| |
| ne_dict[key]['Diagnosis'] = "Phone shut off" |
| ne_dict[key]['BlackoutHoursLB'] = d1 |
| ne_dict[key]['BlackoutHoursUB'] = td |
|
|
| if td + error_margin < d1: |
| |
| ne_dict[key]['Diagnosis'] = "ERROR: td <d1 | d1-d0 <= 0 " |
|
|
| else: |
| if td >= d1: |
| |
| |
| ne_dict[key]['Diagnosis'] = f"Phone shut off, even if d1<d0" |
| ne_dict[key]['BlackoutHoursLB'] = d1 |
| ne_dict[key]['BlackoutHoursUB'] = td |
|
|
| else: |
| |
| ne_dict[key]['Diagnosis'] = f"Phone never shut off" |
| ne_dict[key]['BlackoutHoursLB'] = td |
| ne_dict[key]['BlackoutHoursUB'] = td |
|
|
| if td + error_margin < d1 - d0: |
| |
| ne_dict[key]['Diagnosis'] = "ERROR: if phone never shutoff, no way for td < d1-d0" |
|
|
|
|
|
|
| df = pd.DataFrame.from_dict(ne_dict, orient='index') |
| df["BlackoutHours"] = (df["BlackoutHoursLB"] + df["BlackoutHoursUB"])/2 |
| df = Gaming._diagnose_dups(df) |
| serialize.save_pickle(df, Gaming.diagnosed_file) |
| test.save_test_df(df,Gaming.diagnosed_test_file) |
|
|
| return df |
|
|
| @staticmethod |
| def _diagnose_dups(df): |
| df = df.sort_values(by=["AppCode", "PrevCreatedEasternDatetime"]).reset_index(drop=True) |
| d_dict = df.to_dict(orient='index') |
| for key, val in d_dict.items(): |
| if key + 1 not in d_dict: |
| continue |
|
|
| if d_dict[key]["AppCode"] != d_dict[key + 1]["AppCode"]: |
| continue |
|
|
| if d_dict[key]["CreatedEasternDatetime"] > d_dict[key + 1]["PrevCreatedEasternDatetime"]: |
| d_dict[key]["Diagnosis"] = "Error: Another event starts before this event ends" |
|
|
| |
| if d_dict[key]["CreatedEasternDatetime"] < d_dict[key + 1]["CreatedEasternDatetime"]: |
| d_dict[key + 1]["Diagnosis"] = "Error: Another event ends after this event starts" |
|
|
| df = pd.DataFrame.from_dict(d_dict, orient='index') |
| return df |
|
|
| """ |
| Input: takes the diagnosed event level dataframe |
| Output: User level df that contains the total blackout period time by phase |
| """ |
| @staticmethod |
| def _reshape_events(diag_df,raw_user,file_name = None): |
| df = diag_df.loc[diag_df["Diagnosis"].isin(Gaming.good_diag)] |
| df["CreatedDate"] = df["CreatedDatetime"].apply(lambda x: x.date()) |
| df = BuilderUtils.add_phase_label(df, |
| raw_df_date = "CreatedDate", |
| start_buffer = 0, |
| end_buffer = -1,) |
|
|
| |
| codes = [study_config.phases[x]["StartSurvey"]["Code"] for x in list(study_config.phases.keys())] |
| rename_dic = dict(zip(list(study_config.phases.keys()), codes)) |
| df["Phase"] = df["Phase"].apply(lambda x: rename_dic[x] if x in rename_dic else x) |
|
|
|
|
| df_s = df.groupby(["AppCode","Phase"])["BlackoutHours"].sum().reset_index() |
|
|
| df_p = df_s.pivot_table(index=["AppCode"], |
| values=["BlackoutHours"], |
| columns=["Phase"], |
| aggfunc='first') |
|
|
| |
| df_p.columns = ['_'.join(col[::-1]).strip() for col in df_p.columns.values] |
| df_p = df_p.reset_index() |
|
|
| |
| |
|
|
| |
| return df_p |
|
|
| @staticmethod |
| def _expand_gaming_df(diag,file_name): |
| ex = diag.loc[diag["Diagnosis"].isin(Gaming.good_diag)] |
| |
| ex["DatetimeHour"] = ex.apply(lambda x: Gaming.get_time_attributes(x, "Hour"), axis=1) |
|
|
| |
| ex = ex.explode("DatetimeHour") |
| ex["DatetimeHour"] = ex["DatetimeHour"].apply(lambda x: x.replace(minute=0, second=0, microsecond=0)) |
| ex["HourCount"] = ex.groupby(["AppCode", "CreatedDatetime"])["DatetimeHour"].transform('count') |
| |
| ex["BlackoutHours"] = ex["BlackoutHours"] / ex["HourCount"] |
|
|
| |
| ex = ex.groupby(["AppCode", "DatetimeHour"])["BlackoutHours"].sum().reset_index() |
|
|
| config_user_dict = serialize.open_yaml("config_user.yaml") |
|
|
| if config_user_dict['local']['test']==False: |
| serialize.save_pickle(ex, os.path.join(Gaming.gaming_dir,file_name)) |
| return ex |
|
|
| @staticmethod |
| def get_time_attributes(df, kind): |
| start = df["PrevCreatedDatetime"] |
| end = df["CreatedDatetime"] |
| if kind == "Hour": |
| thing = [x for x in pd.date_range(start, end, freq="H")] |
| else: |
| thing = [x.weekday() for x in pd.date_range(start, end, freq="D")] |
| return thing |
|
|