rapids/src/features/applications_foreground_met...

77 lines
4.0 KiB
Python

import pandas as pd
import numpy as np
import itertools
from scipy.stats import entropy
def compute_metrics(filtered_data, apps_type, metrics, apps_features):
if "count" in metrics:
apps_features["apps_" + day_segment + "_count" + apps_type] = filtered_data.groupby(["local_date"]).count()["timestamp"]
if "timeoffirstuse" in metrics:
time_first_event = filtered_data.sort_values(by="timestamp", ascending=True).drop_duplicates(subset="local_date", keep="first").set_index("local_date")
apps_features["apps_" + day_segment + "_timeoffirstuse" + apps_type] = time_first_event["local_hour"] * 60 + time_first_event["local_minute"]
if "timeoflastuse" in metrics:
time_last_event = filtered_data.sort_values(by="timestamp", ascending=False).drop_duplicates(subset="local_date", keep="first").set_index("local_date")
apps_features["apps_" + day_segment + "_timeoflastuse" + apps_type] = time_last_event["local_hour"] * 60 + time_last_event["local_minute"]
if "frequencyentropy" in metrics:
apps_with_count = filtered_data.groupby(["local_date","application_name"]).count().sort_values(by="timestamp", ascending=False).reset_index()
apps_features["apps_" + day_segment + "_frequencyentropy" + apps_type] = apps_with_count.groupby("local_date")["timestamp"].agg(entropy)
return apps_features
apps_data = pd.read_csv(snakemake.input[0], parse_dates=["local_date_time", "local_date"])
day_segment = snakemake.params["day_segment"]
single_categories = snakemake.params["single_categories"]
multiple_categories_with_genres = snakemake.params["multiple_categories"]
single_apps = snakemake.params["single_apps"]
excluded_categories = snakemake.params["excluded_categories"]
excluded_apps = snakemake.params["excluded_apps"]
metrics = snakemake.params["metrics"]
single_categories = list(set(single_categories) - set(excluded_categories))
multiple_categories = list(multiple_categories_with_genres.keys() - set(excluded_categories))
apps = list(set(single_apps) - set(excluded_apps))
# exclude categories in the excluded_categories list
if "system_apps" in excluded_categories:
apps_data = apps_data[apps_data["is_system_app"] == 0]
apps_data = apps_data[~apps_data["genre"].isin(excluded_categories)]
# exclude apps in the excluded_apps list
apps_data = apps_data[~apps_data["application_name"].isin(excluded_apps)]
# deep copy the apps_data for the top1global computation
apps_data_global = apps_data.copy()
apps_features = pd.DataFrame(columns=["local_date"] + ["apps_" + day_segment + "_" + x for x in ["".join(metric) for metric in itertools.product(metrics, single_categories + multiple_categories + apps)]])
if not apps_data.empty:
apps_features = pd.DataFrame()
if day_segment != "daily":
apps_data =apps_data[apps_data["local_day_segment"] == day_segment]
# single category
for sc in single_categories:
if sc == "all":
apps_features = compute_metrics(apps_data, "all", metrics, apps_features)
else:
filtered_data = apps_data[apps_data["genre"].isin([sc])]
apps_features = compute_metrics(filtered_data, sc, metrics, apps_features)
# multiple category
for mc in multiple_categories:
filtered_data = apps_data[apps_data["genre"].isin(multiple_categories_with_genres[mc])]
apps_features = compute_metrics(filtered_data, mc, metrics, apps_features)
# single apps
for app in apps:
col_name = app
if app == "top1global":
# get the most used app
apps_with_count = apps_data_global.groupby(["local_date","package_name"]).count().sort_values(by="timestamp", ascending=False).reset_index()
app = apps_with_count.iloc[0]["package_name"]
col_name = "top1global"
filtered_data = apps_data[apps_data["package_name"].isin([app])]
apps_features = compute_metrics(filtered_data, col_name, metrics, apps_features)
apps_features = apps_features.reset_index()
apps_features.to_csv(snakemake.output[0], index=False)