import pandas as pd
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import numpy as np
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def start_end_times(filename):
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df = pd.read_csv(filename)
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columnname = "Date"
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dt = pd.to_datetime(df[columnname], format="%Y-%m-%d")
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print()
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print(filename)
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print("min")
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print(dt.min())
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print("max")
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print(dt.max())
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return dt.min()
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def timeframes():
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start_end_times("data/rpe.csv")
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start_end_times("data/games.csv")
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start_end_times("data/wellness.csv")
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def normalize_time_series(path, filename, start):
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df = pd.read_csv(path)
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columnname = "Date"
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dt = pd.to_datetime(df[columnname], format="%Y-%m-%d")
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df["TimeSinceAugFirst"] = (dt - start).dt.days
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df.to_csv("cleaned/time_series_" + filename)
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start = start_end_times("data/rpe.csv")
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normalize_time_series("data/games_ranked.csv", "games_ranked.csv", start)
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