major overhaul of forecast pipeline #21
@ -231,6 +231,8 @@ def _process_sales(
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"early_stopping_rounds": [20, 50],
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}
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# --- new: best_estimator
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best_estimator: BestEstimatorXGBRegressor | None = None
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best_params: BestParametersXGBRegressor | None = None
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best_score_mae: float | None = float("inf")
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best_score_r2: float | None = None
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@ -238,20 +240,29 @@ def _process_sales(
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too_few_month_points: bool = True
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forecast: pd.DataFrame | None = None
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# change sliding window to monthly basis
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for start_year in range(current_year - 4, first_year - 1, -1):
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# --- new: dates und forecast
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#last_date = pd.to_datetime(monthly_sum.index[-1], format="%m.%Y")
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last_date = pd.to_datetime(datetime.now().strftime("%m.%Y"), format="%m.%Y")
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future_dates = pd.date_range(start=last_date + pd.DateOffset(months=1), periods=anzahl, freq="MS")
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forecast = pd.DataFrame({"Datum": future_dates.strftime("%m.%Y")}).set_index("Datum")
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dates = monthly_sum.index
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for index, i in enumerate(range(len(dates)-36, -1, -12)):
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current_date = dates[i]
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split_date = dates[-anzahl]
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train = cast(
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pd.DataFrame,
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monthly_sum[monthly_sum.index.year >= start_year].iloc[:-5].copy(), # type: ignore
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monthly_sum.loc[current_date:split_date].copy(), # type: ignore
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)
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test = cast(
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pd.DataFrame,
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monthly_sum[monthly_sum.index.year >= start_year].iloc[-5:].copy(), # type: ignore
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monthly_sum.loc[split_date:].copy(), # type: ignore
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)
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X_train, X_test = train[features], test[features]
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y_train, y_test = train[target], test[target]
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if len(train) >= (base_num_data_points_months + 10 * (current_year - 4 - start_year)):
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if len(train) >= 30 + 10 * index:
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too_few_month_points = False
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rand = RandomizedSearchCV(
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@ -271,16 +282,19 @@ def _process_sales(
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if len(np.unique(y_pred)) != 1:
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error = cast(float, mean_absolute_error(y_test, y_pred))
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if error < best_score_mae:
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# --- new: store best_estimator
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best_estimator = cast(BestEstimatorXGBRegressor, rand.best_estimator_)
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best_params = cast(BestParametersXGBRegressor, rand.best_params_)
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best_score_mae = error
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best_score_r2 = cast(float, r2_score(y_test, y_pred))
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best_start_year = start_year
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# overwrite with pre-defined prognosis DF
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forecast = test.copy()
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forecast.loc[:, "vorhersage"] = y_pred
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# remove
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if forecast is not None:
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forecast = forecast.drop(SALES_FEAT, axis=1).reset_index(drop=True)
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# --- new: use best_estimator to calculate future values and store them in forecast
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if best_estimator is not None:
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X_future = pd.DataFrame({"jahr": future_dates.year, "monat": future_dates.month}, index=future_dates)
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y_future = rand.best_estimator_.predict(X_future)
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forecast["vorhersage"] = y_future
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best_score_mae = best_score_mae if not math.isinf(best_score_mae) else None
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if too_few_month_points:
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