feat: add grouped time analysis endpoint
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@@ -3,6 +3,7 @@ from flask_cors import CORS
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from server.stat_gen import StatGen
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import pandas as pd
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import traceback
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app = Flask(__name__)
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@@ -103,6 +104,19 @@ def get_summary():
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except Exception as e:
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return jsonify({"error": f"An unexpected error occurred: {str(e)}"}), 500
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@app.route("/stats/time", methods=["GET"])
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def get_time_analysis():
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if stat_obj is None:
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return jsonify({"error": "No data uploaded"}), 400
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try:
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return jsonify(stat_obj.time_analysis()), 200
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except ValueError as e:
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return jsonify({"error": f"Malformed or missing data: {str(e)}"}), 400
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except Exception as e:
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print(traceback.format_exc())
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return jsonify({"error": f"An unexpected error occurred: {str(e)}"}), 500
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@app.route('/reset', methods=["GET"])
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def reset_dataset():
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if stat_obj is None:
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@@ -38,25 +38,35 @@ class StatGen:
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df["weekday"] = df["dt"].dt.day_name()
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## Public
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def get_heatmap(self) -> pd.DataFrame:
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def time_analysis(self) -> pd.DataFrame:
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per_day = (
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self.df.groupby("date")
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.size()
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.reset_index(name="count")
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)
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weekday_order = [
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"Monday", "Tuesday", "Wednesday",
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"Thursday", "Friday", "Saturday", "Sunday"
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]
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self.df["weekday"] = pd.Categorical(
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self.df["weekday"],
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categories=weekday_order,
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ordered=True
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)
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return (
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heatmap = (
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self.df
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.groupby(["weekday", "hour"], observed=True)
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.assign(weekday=pd.Categorical(self.df["weekday"], weekday_order, ordered=True))
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.groupby(["weekday", "hour"])
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.size()
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.unstack(fill_value=0)
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.reindex(columns=range(24), fill_value=0)
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)
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heatmap.columns = heatmap.columns.map(str)
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burst_index = per_day["count"].std() / max(per_day["count"].mean(), 1)
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return {
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"events_per_day": per_day.to_dict(orient="records"),
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"weekday_hour_heatmap": heatmap.reset_index().to_dict(orient="records"),
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"burstiness": round(burst_index, 2)
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}
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def get_word_frequencies(self, limit: int = 100) -> pd.DataFrame:
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texts = (
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