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2025-06-06 06:50:59,676 - main.py - DEBUG - 99 - loading sales data..

2025-06-06 06:51:00,580 - reading_data.py - DEBUG - 129 - start date: 2022-03-01 00:00:00 end date: 2025-06-30 00:00:00 

2025-06-06 06:52:04,598 - functions.py - INFO - 274 - Fetched prediction months:
('2023-12-7', (2024, 1))
('2024-01-7', (2024, 2))
('2024-02-7', (2024, 3))
('2024-03-7', (2024, 4))
('2024-04-7', (2024, 5))
('2024-05-7', (2024, 6))
('2024-06-7', (2024, 7))
('2024-07-7', (2024, 8))
('2024-08-7', (2024, 9))
('2024-09-7', (2024, 10))
('2024-10-7', (2024, 11))
('2024-11-7', (2024, 12))
('2024-12-7', (2025, 1))
('2025-01-7', (2025, 2))
('2025-02-7', (2025, 3))
('2025-03-7', (2025, 4))
('2025-04-7', (2025, 6))
('2025-04-7', (2025, 5))

2025-06-06 06:52:05,013 - algorithm.py - DEBUG - 72 - start training with xgboost...

2025-06-06 06:52:05,116 - algorithm.py - DEBUG - 78 - shape: (52587, 279)  start: 2022-05-02 00:00:00  end: 2023-12-06 00:00:00 

2025-06-06 06:52:14,152 - algorithm.py - INFO - 122 - parameters {'objective': 'reg:squarederror', 'base_score': None, 'booster': None, 'callbacks': None, 'colsample_bylevel': None, 'colsample_bynode': None, 'colsample_bytree': 0.8, 'device': None, 'early_stopping_rounds': None, 'enable_categorical': True, 'eval_metric': <function mean_squared_error at 0x7b743bfeec10>, 'feature_types': None, 'gamma': None, 'grow_policy': None, 'importance_type': None, 'interaction_constraints': None, 'learning_rate': 0.01, 'max_bin': None, 'max_cat_threshold': None, 'max_cat_to_onehot': None, 'max_delta_step': None, 'max_depth': 7, 'max_leaves': None, 'min_child_weight': None, 'missing': nan, 'monotone_constraints': None, 'multi_strategy': None, 'n_estimators': 1250, 'n_jobs': -1, 'num_parallel_tree': None, 'random_state': 42, 'reg_alpha': 0.05, 'reg_lambda': 1.0, 'sampling_method': None, 'scale_pos_weight': None, 'subsample': 0.8, 'tree_method': 'hist', 'validate_parameters': None, 'verbosity': None} 

2025-06-06 06:52:14,153 - algorithm.py - INFO - 130 - parameters:
{   'colsample_bytree': 0.8,
    'enable_categorical': True,
    'eval_metric': <function mean_squared_error at 0x7b743bfeec10>,
    'learning_rate': 0.01,
    'max_depth': 7,
    'missing': nan,
    'n_estimators': 1250,
    'n_jobs': -1,
    'objective': 'reg:squarederror',
    'random_state': 42,
    'reg_alpha': 0.05,
    'reg_lambda': 1.0,
    'subsample': 0.8,
    'tree_method': 'hist'}

2025-06-06 06:52:14,153 - algorithm.py - INFO - 131 - indep vars:
['ladenvkpmean', 'ladenvkpmin', 'ladenvkpmax', 'ladenvkpstd', 'fg_bl_BW', 'fg_bl_BY', 'fg_bl_HE', 'fg_bl_NW', 'fg_bl_RP', 'weekdayname_Monday', 'weekdayname_Tuesday', 'weekdayname_Wednesday', 'weekdayname_Thursday', 'weekdayname_Friday', 'weekdayname_Saturday', 'isoweek_1', 'isoweek_2', 'isoweek_3', 'isoweek_4', 'isoweek_5', 'isoweek_6', 'isoweek_7', 'isoweek_8', 'isoweek_9', 'isoweek_10', 'isoweek_11', 'isoweek_12', 'isoweek_13', 'isoweek_14', 'isoweek_15', 'isoweek_16', 'isoweek_17', 'isoweek_18', 'isoweek_19', 'isoweek_20', 'isoweek_21', 'isoweek_22', 'isoweek_23', 'isoweek_24', 'isoweek_25', 'isoweek_26', 'isoweek_27', 'isoweek_28', 'isoweek_29', 'isoweek_30', 'isoweek_31', 'isoweek_32', 'isoweek_33', 'isoweek_34', 'isoweek_35', 'isoweek_36', 'isoweek_37', 'isoweek_38', 'isoweek_39', 'isoweek_40', 'isoweek_41', 'isoweek_42', 'isoweek_43', 'isoweek_44', 'isoweek_45', 'isoweek_46', 'isoweek_47', 'isoweek_48', 'isoweek_49', 'isoweek_50', 'isoweek_51', 'isoweek_52', 'month_1', 'month_2', 'month_3', 'month_4', 'month_5', 'month_6', 'month_7', 'month_8', 'month_9', 'month_10', 'month_11', 'month_12', 'year_2022', 'year_2023', 'year_2024', 'fg_sg_1', 'fg_sg_2', 'fg_sg_3', 'fg_sg_9', 'fg_sg_19', 'fg_sg_21', 'fg_sg_24', 'fg_sg_26', 'fg_sg_27', 'fg_sg_28', 'fg_sg_29', 'fg_sg_31', 'fg_sg_34', 'fg_sg_40', 'fg_sg_41', 'fg_sg_43', 'fg_sg_44', 'fg_sg_52', 'fg_sg_55', 'fg_sg_57', 'fg_sg_58', 'fg_sg_61', 'fg_sg_62', 'fg_sg_63', 'fg_sg_64', 'fg_sg_65', 'fg_sg_66', 'fg_sg_68', 'fg_sg_69', 'fg_sg_71', 'fg_sg_73', 'fg_sg_74', 'fg_sg_76', 'fg_sg_77', 'fg_sg_80', 'fg_sg_81', 'fg_sg_82', 'fg_sg_83', 'fg_sg_85', 'fg_sg_88', 'fg_sg_89', 'fg_sg_91', 'fg_sg_92', 'fg_sg_96', 'fg_sg_97', 'fg_sg_99', 'fg_sg_101', 'fg_sg_103', 'fg_sg_104', 'fg_sg_105', 'fg_sg_107', 'fg_sg_108', 'fg_sg_109', 'fg_sg_110', 'fg_sg_111', 'fg_sg_112', 'fg_sg_113', 'fg_sg_117', 'fg_sg_118', 'fg_sg_120', 'fg_sg_125', 'fg_sg_126', 'fg_sg_128', 'fg_sg_130', 'fg_sg_131', 'fg_sg_133', 'fg_sg_134', 'fg_sg_136', 'fg_sg_139', 'fg_sg_141', 'fg_sg_142', 'fg_sg_143', 'fg_sg_146', 'fg_sg_147', 'fg_sg_148', 'fg_sg_149', 'fg_sg_150', 'fg_sg_151', 'fg_sg_153', 'fg_sg_154', 'fg_sg_155', 'fg_sg_157', 'fg_sg_159', 'fg_sg_160', 'fg_sg_161', 'fg_sg_162', 'fg_sg_164', 'fg_sg_165', 'fg_sg_166', 'fg_sg_167', 'fg_sg_168', 'fg_sg_169', 'fg_sg_170', 'fg_sg_171', 'fg_sg_172', 'fg_sg_173', 'fg_sg_174', 'fg_sg_176', 'fg_sg_177', 'fg_sg_179', 'fg_sg_181', 'fg_sg_182', 'fg_sg_183', 'fg_sg_185', 'fg_sg_187', 'fg_sg_188', 'fg_sg_189', 'fg_sg_190', 'fg_sg_191', 'fg_sg_192', 'fg_sg_193', 'psv_starts', 'psv', 'salesday', 'presales', 'postsales', 'bridge_days', 'outlet', 'store_opening', 'weiberfasching_2022', 'faschingsfreitag_2022', 'faschingssamstag_2022', 'rosenmontag_2022', 'faschingdienstag_2022', 'weiberfasching', 'faschingsfreitag', 'faschingssamstag', 'pre_christmas_peaks', 'valentines_day', 'interaction', 'market_Montags', 'market_Dienstags', 'market_Mittwochs', 'market_Donnerstags', 'market_Freitags', 'market_Samstags', 'population', 'shop_area', 'dist_from_weiden', 'ratio', 'average', 'shop_count', 'weekday_special', 'weekend_special', 'x_coord', 'y_coord', 'dayofmonth', 'isoweek', 'month', 'dayofyear', 'dayofseason', 'season_month']

2025-06-06 06:52:14,156 - main.py - INFO - 137 - Successfully trained xgb9 xgboost for month (2024, 1) training data to: 2023-12-7

2025-06-06 06:52:14,156 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:52:24,705 - prediction_task.py - DEBUG - 31 - test data not found for 194 Michelfeld in period (2024, 1)

2025-06-06 06:52:24,707 - prediction_task.py - DEBUG - 31 - test data not found for 195 Kelheim in period (2024, 1)

2025-06-06 06:52:24,708 - main.py - INFO - 145 - Successfully predicted with xgb9 xgboost for month (2024, 1)

2025-06-06 06:52:24,708 - main.py - INFO - 137 - Successfully trained agp agp for month (2024, 1) training data to: 2023-12-7

2025-06-06 06:52:24,708 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:52:25,250 - prediction_task.py - DEBUG - 31 - test data not found for 194 Michelfeld in period (2024, 1)

2025-06-06 06:52:25,252 - prediction_task.py - DEBUG - 31 - test data not found for 195 Kelheim in period (2024, 1)

2025-06-06 06:52:25,253 - main.py - INFO - 145 - Successfully predicted with agp agp for month (2024, 1)

2025-06-06 06:52:25,253 - algorithm.py - DEBUG - 72 - start training with xgboost...

2025-06-06 06:52:25,360 - algorithm.py - DEBUG - 78 - shape: (55164, 279)  start: 2022-05-02 00:00:00  end: 2024-01-06 00:00:00 

2025-06-06 06:52:34,815 - algorithm.py - INFO - 122 - parameters {'objective': 'reg:squarederror', 'base_score': None, 'booster': None, 'callbacks': None, 'colsample_bylevel': None, 'colsample_bynode': None, 'colsample_bytree': 0.8, 'device': None, 'early_stopping_rounds': None, 'enable_categorical': True, 'eval_metric': <function mean_squared_error at 0x7b743bfeec10>, 'feature_types': None, 'gamma': None, 'grow_policy': None, 'importance_type': None, 'interaction_constraints': None, 'learning_rate': 0.01, 'max_bin': None, 'max_cat_threshold': None, 'max_cat_to_onehot': None, 'max_delta_step': None, 'max_depth': 7, 'max_leaves': None, 'min_child_weight': None, 'missing': nan, 'monotone_constraints': None, 'multi_strategy': None, 'n_estimators': 1250, 'n_jobs': -1, 'num_parallel_tree': None, 'random_state': 42, 'reg_alpha': 0.05, 'reg_lambda': 1.0, 'sampling_method': None, 'scale_pos_weight': None, 'subsample': 0.8, 'tree_method': 'hist', 'validate_parameters': None, 'verbosity': None} 

2025-06-06 06:52:34,816 - algorithm.py - INFO - 130 - parameters:
{   'colsample_bytree': 0.8,
    'enable_categorical': True,
    'eval_metric': <function mean_squared_error at 0x7b743bfeec10>,
    'learning_rate': 0.01,
    'max_depth': 7,
    'missing': nan,
    'n_estimators': 1250,
    'n_jobs': -1,
    'objective': 'reg:squarederror',
    'random_state': 42,
    'reg_alpha': 0.05,
    'reg_lambda': 1.0,
    'subsample': 0.8,
    'tree_method': 'hist'}

2025-06-06 06:52:34,817 - algorithm.py - INFO - 131 - indep vars:
['ladenvkpmean', 'ladenvkpmin', 'ladenvkpmax', 'ladenvkpstd', 'fg_bl_BW', 'fg_bl_BY', 'fg_bl_HE', 'fg_bl_NW', 'fg_bl_RP', 'weekdayname_Monday', 'weekdayname_Tuesday', 'weekdayname_Wednesday', 'weekdayname_Thursday', 'weekdayname_Friday', 'weekdayname_Saturday', 'isoweek_1', 'isoweek_2', 'isoweek_3', 'isoweek_4', 'isoweek_5', 'isoweek_6', 'isoweek_7', 'isoweek_8', 'isoweek_9', 'isoweek_10', 'isoweek_11', 'isoweek_12', 'isoweek_13', 'isoweek_14', 'isoweek_15', 'isoweek_16', 'isoweek_17', 'isoweek_18', 'isoweek_19', 'isoweek_20', 'isoweek_21', 'isoweek_22', 'isoweek_23', 'isoweek_24', 'isoweek_25', 'isoweek_26', 'isoweek_27', 'isoweek_28', 'isoweek_29', 'isoweek_30', 'isoweek_31', 'isoweek_32', 'isoweek_33', 'isoweek_34', 'isoweek_35', 'isoweek_36', 'isoweek_37', 'isoweek_38', 'isoweek_39', 'isoweek_40', 'isoweek_41', 'isoweek_42', 'isoweek_43', 'isoweek_44', 'isoweek_45', 'isoweek_46', 'isoweek_47', 'isoweek_48', 'isoweek_49', 'isoweek_50', 'isoweek_51', 'isoweek_52', 'month_1', 'month_2', 'month_3', 'month_4', 'month_5', 'month_6', 'month_7', 'month_8', 'month_9', 'month_10', 'month_11', 'month_12', 'year_2022', 'year_2023', 'year_2024', 'fg_sg_1', 'fg_sg_2', 'fg_sg_3', 'fg_sg_9', 'fg_sg_19', 'fg_sg_21', 'fg_sg_24', 'fg_sg_26', 'fg_sg_27', 'fg_sg_28', 'fg_sg_29', 'fg_sg_31', 'fg_sg_34', 'fg_sg_40', 'fg_sg_41', 'fg_sg_43', 'fg_sg_44', 'fg_sg_52', 'fg_sg_55', 'fg_sg_57', 'fg_sg_58', 'fg_sg_61', 'fg_sg_62', 'fg_sg_63', 'fg_sg_64', 'fg_sg_65', 'fg_sg_66', 'fg_sg_68', 'fg_sg_69', 'fg_sg_71', 'fg_sg_73', 'fg_sg_74', 'fg_sg_76', 'fg_sg_77', 'fg_sg_80', 'fg_sg_81', 'fg_sg_82', 'fg_sg_83', 'fg_sg_85', 'fg_sg_88', 'fg_sg_89', 'fg_sg_91', 'fg_sg_92', 'fg_sg_96', 'fg_sg_97', 'fg_sg_99', 'fg_sg_101', 'fg_sg_103', 'fg_sg_104', 'fg_sg_105', 'fg_sg_107', 'fg_sg_108', 'fg_sg_109', 'fg_sg_110', 'fg_sg_111', 'fg_sg_112', 'fg_sg_113', 'fg_sg_117', 'fg_sg_118', 'fg_sg_120', 'fg_sg_125', 'fg_sg_126', 'fg_sg_128', 'fg_sg_130', 'fg_sg_131', 'fg_sg_133', 'fg_sg_134', 'fg_sg_136', 'fg_sg_139', 'fg_sg_141', 'fg_sg_142', 'fg_sg_143', 'fg_sg_146', 'fg_sg_147', 'fg_sg_148', 'fg_sg_149', 'fg_sg_150', 'fg_sg_151', 'fg_sg_153', 'fg_sg_154', 'fg_sg_155', 'fg_sg_157', 'fg_sg_159', 'fg_sg_160', 'fg_sg_161', 'fg_sg_162', 'fg_sg_164', 'fg_sg_165', 'fg_sg_166', 'fg_sg_167', 'fg_sg_168', 'fg_sg_169', 'fg_sg_170', 'fg_sg_171', 'fg_sg_172', 'fg_sg_173', 'fg_sg_174', 'fg_sg_176', 'fg_sg_177', 'fg_sg_179', 'fg_sg_181', 'fg_sg_182', 'fg_sg_183', 'fg_sg_185', 'fg_sg_187', 'fg_sg_188', 'fg_sg_189', 'fg_sg_190', 'fg_sg_191', 'fg_sg_192', 'fg_sg_193', 'psv_starts', 'psv', 'salesday', 'presales', 'postsales', 'bridge_days', 'outlet', 'store_opening', 'weiberfasching_2022', 'faschingsfreitag_2022', 'faschingssamstag_2022', 'rosenmontag_2022', 'faschingdienstag_2022', 'weiberfasching', 'faschingsfreitag', 'faschingssamstag', 'pre_christmas_peaks', 'valentines_day', 'interaction', 'market_Montags', 'market_Dienstags', 'market_Mittwochs', 'market_Donnerstags', 'market_Freitags', 'market_Samstags', 'population', 'shop_area', 'dist_from_weiden', 'ratio', 'average', 'shop_count', 'weekday_special', 'weekend_special', 'x_coord', 'y_coord', 'dayofmonth', 'isoweek', 'month', 'dayofyear', 'dayofseason', 'season_month']

2025-06-06 06:52:34,820 - main.py - INFO - 137 - Successfully trained xgb9 xgboost for month (2024, 2) training data to: 2024-01-7

2025-06-06 06:52:34,820 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:52:45,462 - prediction_task.py - DEBUG - 31 - test data not found for 194 Michelfeld in period (2024, 2)

2025-06-06 06:52:45,465 - prediction_task.py - DEBUG - 31 - test data not found for 195 Kelheim in period (2024, 2)

2025-06-06 06:52:45,465 - main.py - INFO - 145 - Successfully predicted with xgb9 xgboost for month (2024, 2)

2025-06-06 06:52:45,465 - main.py - INFO - 137 - Successfully trained agp agp for month (2024, 2) training data to: 2024-01-7

2025-06-06 06:52:45,465 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:52:45,999 - prediction_task.py - DEBUG - 31 - test data not found for 194 Michelfeld in period (2024, 2)

2025-06-06 06:52:46,001 - prediction_task.py - DEBUG - 31 - test data not found for 195 Kelheim in period (2024, 2)

2025-06-06 06:52:46,001 - main.py - INFO - 145 - Successfully predicted with agp agp for month (2024, 2)

2025-06-06 06:52:46,001 - algorithm.py - DEBUG - 72 - start training with xgboost...

2025-06-06 06:52:46,109 - algorithm.py - DEBUG - 78 - shape: (58048, 279)  start: 2022-05-02 00:00:00  end: 2024-02-06 00:00:00 

2025-06-06 06:52:55,736 - algorithm.py - INFO - 122 - parameters {'objective': 'reg:squarederror', 'base_score': None, 'booster': None, 'callbacks': None, 'colsample_bylevel': None, 'colsample_bynode': None, 'colsample_bytree': 0.8, 'device': None, 'early_stopping_rounds': None, 'enable_categorical': True, 'eval_metric': <function mean_squared_error at 0x7b743bfeec10>, 'feature_types': None, 'gamma': None, 'grow_policy': None, 'importance_type': None, 'interaction_constraints': None, 'learning_rate': 0.01, 'max_bin': None, 'max_cat_threshold': None, 'max_cat_to_onehot': None, 'max_delta_step': None, 'max_depth': 7, 'max_leaves': None, 'min_child_weight': None, 'missing': nan, 'monotone_constraints': None, 'multi_strategy': None, 'n_estimators': 1250, 'n_jobs': -1, 'num_parallel_tree': None, 'random_state': 42, 'reg_alpha': 0.05, 'reg_lambda': 1.0, 'sampling_method': None, 'scale_pos_weight': None, 'subsample': 0.8, 'tree_method': 'hist', 'validate_parameters': None, 'verbosity': None} 

2025-06-06 06:52:55,737 - algorithm.py - INFO - 130 - parameters:
{   'colsample_bytree': 0.8,
    'enable_categorical': True,
    'eval_metric': <function mean_squared_error at 0x7b743bfeec10>,
    'learning_rate': 0.01,
    'max_depth': 7,
    'missing': nan,
    'n_estimators': 1250,
    'n_jobs': -1,
    'objective': 'reg:squarederror',
    'random_state': 42,
    'reg_alpha': 0.05,
    'reg_lambda': 1.0,
    'subsample': 0.8,
    'tree_method': 'hist'}

2025-06-06 06:52:55,737 - algorithm.py - INFO - 131 - indep vars:
['ladenvkpmean', 'ladenvkpmin', 'ladenvkpmax', 'ladenvkpstd', 'fg_bl_BW', 'fg_bl_BY', 'fg_bl_HE', 'fg_bl_NW', 'fg_bl_RP', 'weekdayname_Monday', 'weekdayname_Tuesday', 'weekdayname_Wednesday', 'weekdayname_Thursday', 'weekdayname_Friday', 'weekdayname_Saturday', 'isoweek_1', 'isoweek_2', 'isoweek_3', 'isoweek_4', 'isoweek_5', 'isoweek_6', 'isoweek_7', 'isoweek_8', 'isoweek_9', 'isoweek_10', 'isoweek_11', 'isoweek_12', 'isoweek_13', 'isoweek_14', 'isoweek_15', 'isoweek_16', 'isoweek_17', 'isoweek_18', 'isoweek_19', 'isoweek_20', 'isoweek_21', 'isoweek_22', 'isoweek_23', 'isoweek_24', 'isoweek_25', 'isoweek_26', 'isoweek_27', 'isoweek_28', 'isoweek_29', 'isoweek_30', 'isoweek_31', 'isoweek_32', 'isoweek_33', 'isoweek_34', 'isoweek_35', 'isoweek_36', 'isoweek_37', 'isoweek_38', 'isoweek_39', 'isoweek_40', 'isoweek_41', 'isoweek_42', 'isoweek_43', 'isoweek_44', 'isoweek_45', 'isoweek_46', 'isoweek_47', 'isoweek_48', 'isoweek_49', 'isoweek_50', 'isoweek_51', 'isoweek_52', 'month_1', 'month_2', 'month_3', 'month_4', 'month_5', 'month_6', 'month_7', 'month_8', 'month_9', 'month_10', 'month_11', 'month_12', 'year_2022', 'year_2023', 'year_2024', 'fg_sg_1', 'fg_sg_2', 'fg_sg_3', 'fg_sg_9', 'fg_sg_19', 'fg_sg_21', 'fg_sg_24', 'fg_sg_26', 'fg_sg_27', 'fg_sg_28', 'fg_sg_29', 'fg_sg_31', 'fg_sg_34', 'fg_sg_40', 'fg_sg_41', 'fg_sg_43', 'fg_sg_44', 'fg_sg_52', 'fg_sg_55', 'fg_sg_57', 'fg_sg_58', 'fg_sg_61', 'fg_sg_62', 'fg_sg_63', 'fg_sg_64', 'fg_sg_65', 'fg_sg_66', 'fg_sg_68', 'fg_sg_69', 'fg_sg_71', 'fg_sg_73', 'fg_sg_74', 'fg_sg_76', 'fg_sg_77', 'fg_sg_80', 'fg_sg_81', 'fg_sg_82', 'fg_sg_83', 'fg_sg_85', 'fg_sg_88', 'fg_sg_89', 'fg_sg_91', 'fg_sg_92', 'fg_sg_96', 'fg_sg_97', 'fg_sg_99', 'fg_sg_101', 'fg_sg_103', 'fg_sg_104', 'fg_sg_105', 'fg_sg_107', 'fg_sg_108', 'fg_sg_109', 'fg_sg_110', 'fg_sg_111', 'fg_sg_112', 'fg_sg_113', 'fg_sg_117', 'fg_sg_118', 'fg_sg_120', 'fg_sg_125', 'fg_sg_126', 'fg_sg_128', 'fg_sg_130', 'fg_sg_131', 'fg_sg_133', 'fg_sg_134', 'fg_sg_136', 'fg_sg_139', 'fg_sg_141', 'fg_sg_142', 'fg_sg_143', 'fg_sg_146', 'fg_sg_147', 'fg_sg_148', 'fg_sg_149', 'fg_sg_150', 'fg_sg_151', 'fg_sg_153', 'fg_sg_154', 'fg_sg_155', 'fg_sg_157', 'fg_sg_159', 'fg_sg_160', 'fg_sg_161', 'fg_sg_162', 'fg_sg_164', 'fg_sg_165', 'fg_sg_166', 'fg_sg_167', 'fg_sg_168', 'fg_sg_169', 'fg_sg_170', 'fg_sg_171', 'fg_sg_172', 'fg_sg_173', 'fg_sg_174', 'fg_sg_176', 'fg_sg_177', 'fg_sg_179', 'fg_sg_181', 'fg_sg_182', 'fg_sg_183', 'fg_sg_185', 'fg_sg_187', 'fg_sg_188', 'fg_sg_189', 'fg_sg_190', 'fg_sg_191', 'fg_sg_192', 'fg_sg_193', 'psv_starts', 'psv', 'salesday', 'presales', 'postsales', 'bridge_days', 'outlet', 'store_opening', 'weiberfasching_2022', 'faschingsfreitag_2022', 'faschingssamstag_2022', 'rosenmontag_2022', 'faschingdienstag_2022', 'weiberfasching', 'faschingsfreitag', 'faschingssamstag', 'pre_christmas_peaks', 'valentines_day', 'interaction', 'market_Montags', 'market_Dienstags', 'market_Mittwochs', 'market_Donnerstags', 'market_Freitags', 'market_Samstags', 'population', 'shop_area', 'dist_from_weiden', 'ratio', 'average', 'shop_count', 'weekday_special', 'weekend_special', 'x_coord', 'y_coord', 'dayofmonth', 'isoweek', 'month', 'dayofyear', 'dayofseason', 'season_month']

2025-06-06 06:52:55,739 - main.py - INFO - 137 - Successfully trained xgb9 xgboost for month (2024, 3) training data to: 2024-02-7

2025-06-06 06:52:55,740 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:53:06,346 - prediction_task.py - DEBUG - 31 - test data not found for 194 Michelfeld in period (2024, 3)

2025-06-06 06:53:06,349 - prediction_task.py - DEBUG - 31 - test data not found for 195 Kelheim in period (2024, 3)

2025-06-06 06:53:06,350 - main.py - INFO - 145 - Successfully predicted with xgb9 xgboost for month (2024, 3)

2025-06-06 06:53:06,350 - main.py - INFO - 137 - Successfully trained agp agp for month (2024, 3) training data to: 2024-02-7

2025-06-06 06:53:06,350 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:53:06,891 - prediction_task.py - DEBUG - 31 - test data not found for 194 Michelfeld in period (2024, 3)

2025-06-06 06:53:06,893 - prediction_task.py - DEBUG - 31 - test data not found for 195 Kelheim in period (2024, 3)

2025-06-06 06:53:06,893 - main.py - INFO - 145 - Successfully predicted with agp agp for month (2024, 3)

2025-06-06 06:53:06,893 - algorithm.py - DEBUG - 72 - start training with xgboost...

2025-06-06 06:53:07,008 - algorithm.py - DEBUG - 78 - shape: (60793, 279)  start: 2022-05-02 00:00:00  end: 2024-03-06 00:00:00 

2025-06-06 06:53:16,857 - algorithm.py - INFO - 122 - parameters {'objective': 'reg:squarederror', 'base_score': None, 'booster': None, 'callbacks': None, 'colsample_bylevel': None, 'colsample_bynode': None, 'colsample_bytree': 0.8, 'device': None, 'early_stopping_rounds': None, 'enable_categorical': True, 'eval_metric': <function mean_squared_error at 0x7b743bfeec10>, 'feature_types': None, 'gamma': None, 'grow_policy': None, 'importance_type': None, 'interaction_constraints': None, 'learning_rate': 0.01, 'max_bin': None, 'max_cat_threshold': None, 'max_cat_to_onehot': None, 'max_delta_step': None, 'max_depth': 7, 'max_leaves': None, 'min_child_weight': None, 'missing': nan, 'monotone_constraints': None, 'multi_strategy': None, 'n_estimators': 1250, 'n_jobs': -1, 'num_parallel_tree': None, 'random_state': 42, 'reg_alpha': 0.05, 'reg_lambda': 1.0, 'sampling_method': None, 'scale_pos_weight': None, 'subsample': 0.8, 'tree_method': 'hist', 'validate_parameters': None, 'verbosity': None} 

2025-06-06 06:53:16,857 - algorithm.py - INFO - 130 - parameters:
{   'colsample_bytree': 0.8,
    'enable_categorical': True,
    'eval_metric': <function mean_squared_error at 0x7b743bfeec10>,
    'learning_rate': 0.01,
    'max_depth': 7,
    'missing': nan,
    'n_estimators': 1250,
    'n_jobs': -1,
    'objective': 'reg:squarederror',
    'random_state': 42,
    'reg_alpha': 0.05,
    'reg_lambda': 1.0,
    'subsample': 0.8,
    'tree_method': 'hist'}

2025-06-06 06:53:16,857 - algorithm.py - INFO - 131 - indep vars:
['ladenvkpmean', 'ladenvkpmin', 'ladenvkpmax', 'ladenvkpstd', 'fg_bl_BW', 'fg_bl_BY', 'fg_bl_HE', 'fg_bl_NW', 'fg_bl_RP', 'weekdayname_Monday', 'weekdayname_Tuesday', 'weekdayname_Wednesday', 'weekdayname_Thursday', 'weekdayname_Friday', 'weekdayname_Saturday', 'isoweek_1', 'isoweek_2', 'isoweek_3', 'isoweek_4', 'isoweek_5', 'isoweek_6', 'isoweek_7', 'isoweek_8', 'isoweek_9', 'isoweek_10', 'isoweek_11', 'isoweek_12', 'isoweek_13', 'isoweek_14', 'isoweek_15', 'isoweek_16', 'isoweek_17', 'isoweek_18', 'isoweek_19', 'isoweek_20', 'isoweek_21', 'isoweek_22', 'isoweek_23', 'isoweek_24', 'isoweek_25', 'isoweek_26', 'isoweek_27', 'isoweek_28', 'isoweek_29', 'isoweek_30', 'isoweek_31', 'isoweek_32', 'isoweek_33', 'isoweek_34', 'isoweek_35', 'isoweek_36', 'isoweek_37', 'isoweek_38', 'isoweek_39', 'isoweek_40', 'isoweek_41', 'isoweek_42', 'isoweek_43', 'isoweek_44', 'isoweek_45', 'isoweek_46', 'isoweek_47', 'isoweek_48', 'isoweek_49', 'isoweek_50', 'isoweek_51', 'isoweek_52', 'month_1', 'month_2', 'month_3', 'month_4', 'month_5', 'month_6', 'month_7', 'month_8', 'month_9', 'month_10', 'month_11', 'month_12', 'year_2022', 'year_2023', 'year_2024', 'fg_sg_1', 'fg_sg_2', 'fg_sg_3', 'fg_sg_9', 'fg_sg_19', 'fg_sg_21', 'fg_sg_24', 'fg_sg_26', 'fg_sg_27', 'fg_sg_28', 'fg_sg_29', 'fg_sg_31', 'fg_sg_34', 'fg_sg_40', 'fg_sg_41', 'fg_sg_43', 'fg_sg_44', 'fg_sg_52', 'fg_sg_55', 'fg_sg_57', 'fg_sg_58', 'fg_sg_61', 'fg_sg_62', 'fg_sg_63', 'fg_sg_64', 'fg_sg_65', 'fg_sg_66', 'fg_sg_68', 'fg_sg_69', 'fg_sg_71', 'fg_sg_73', 'fg_sg_74', 'fg_sg_76', 'fg_sg_77', 'fg_sg_80', 'fg_sg_81', 'fg_sg_82', 'fg_sg_83', 'fg_sg_85', 'fg_sg_88', 'fg_sg_89', 'fg_sg_91', 'fg_sg_92', 'fg_sg_96', 'fg_sg_97', 'fg_sg_99', 'fg_sg_101', 'fg_sg_103', 'fg_sg_104', 'fg_sg_105', 'fg_sg_107', 'fg_sg_108', 'fg_sg_109', 'fg_sg_110', 'fg_sg_111', 'fg_sg_112', 'fg_sg_113', 'fg_sg_117', 'fg_sg_118', 'fg_sg_120', 'fg_sg_125', 'fg_sg_126', 'fg_sg_128', 'fg_sg_130', 'fg_sg_131', 'fg_sg_133', 'fg_sg_134', 'fg_sg_136', 'fg_sg_139', 'fg_sg_141', 'fg_sg_142', 'fg_sg_143', 'fg_sg_146', 'fg_sg_147', 'fg_sg_148', 'fg_sg_149', 'fg_sg_150', 'fg_sg_151', 'fg_sg_153', 'fg_sg_154', 'fg_sg_155', 'fg_sg_157', 'fg_sg_159', 'fg_sg_160', 'fg_sg_161', 'fg_sg_162', 'fg_sg_164', 'fg_sg_165', 'fg_sg_166', 'fg_sg_167', 'fg_sg_168', 'fg_sg_169', 'fg_sg_170', 'fg_sg_171', 'fg_sg_172', 'fg_sg_173', 'fg_sg_174', 'fg_sg_176', 'fg_sg_177', 'fg_sg_179', 'fg_sg_181', 'fg_sg_182', 'fg_sg_183', 'fg_sg_185', 'fg_sg_187', 'fg_sg_188', 'fg_sg_189', 'fg_sg_190', 'fg_sg_191', 'fg_sg_192', 'fg_sg_193', 'psv_starts', 'psv', 'salesday', 'presales', 'postsales', 'bridge_days', 'outlet', 'store_opening', 'weiberfasching_2022', 'faschingsfreitag_2022', 'faschingssamstag_2022', 'rosenmontag_2022', 'faschingdienstag_2022', 'weiberfasching', 'faschingsfreitag', 'faschingssamstag', 'pre_christmas_peaks', 'valentines_day', 'interaction', 'market_Montags', 'market_Dienstags', 'market_Mittwochs', 'market_Donnerstags', 'market_Freitags', 'market_Samstags', 'population', 'shop_area', 'dist_from_weiden', 'ratio', 'average', 'shop_count', 'weekday_special', 'weekend_special', 'x_coord', 'y_coord', 'dayofmonth', 'isoweek', 'month', 'dayofyear', 'dayofseason', 'season_month']

2025-06-06 06:53:16,860 - main.py - INFO - 137 - Successfully trained xgb9 xgboost for month (2024, 4) training data to: 2024-03-7

2025-06-06 06:53:16,860 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:53:27,380 - prediction_task.py - DEBUG - 31 - test data not found for 194 Michelfeld in period (2024, 4)

2025-06-06 06:53:27,384 - prediction_task.py - DEBUG - 31 - test data not found for 195 Kelheim in period (2024, 4)

2025-06-06 06:53:27,385 - main.py - INFO - 145 - Successfully predicted with xgb9 xgboost for month (2024, 4)

2025-06-06 06:53:27,385 - main.py - INFO - 137 - Successfully trained agp agp for month (2024, 4) training data to: 2024-03-7

2025-06-06 06:53:27,385 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:53:27,939 - prediction_task.py - DEBUG - 31 - test data not found for 194 Michelfeld in period (2024, 4)

2025-06-06 06:53:27,941 - prediction_task.py - DEBUG - 31 - test data not found for 195 Kelheim in period (2024, 4)

2025-06-06 06:53:27,941 - main.py - INFO - 145 - Successfully predicted with agp agp for month (2024, 4)

2025-06-06 06:53:27,942 - algorithm.py - DEBUG - 72 - start training with xgboost...

2025-06-06 06:53:28,067 - algorithm.py - DEBUG - 78 - shape: (63568, 279)  start: 2022-05-02 00:00:00  end: 2024-04-06 00:00:00 

2025-06-06 06:53:38,086 - algorithm.py - INFO - 122 - parameters {'objective': 'reg:squarederror', 'base_score': None, 'booster': None, 'callbacks': None, 'colsample_bylevel': None, 'colsample_bynode': None, 'colsample_bytree': 0.8, 'device': None, 'early_stopping_rounds': None, 'enable_categorical': True, 'eval_metric': <function mean_squared_error at 0x7b743bfeec10>, 'feature_types': None, 'gamma': None, 'grow_policy': None, 'importance_type': None, 'interaction_constraints': None, 'learning_rate': 0.01, 'max_bin': None, 'max_cat_threshold': None, 'max_cat_to_onehot': None, 'max_delta_step': None, 'max_depth': 7, 'max_leaves': None, 'min_child_weight': None, 'missing': nan, 'monotone_constraints': None, 'multi_strategy': None, 'n_estimators': 1250, 'n_jobs': -1, 'num_parallel_tree': None, 'random_state': 42, 'reg_alpha': 0.05, 'reg_lambda': 1.0, 'sampling_method': None, 'scale_pos_weight': None, 'subsample': 0.8, 'tree_method': 'hist', 'validate_parameters': None, 'verbosity': None} 

2025-06-06 06:53:38,086 - algorithm.py - INFO - 130 - parameters:
{   'colsample_bytree': 0.8,
    'enable_categorical': True,
    'eval_metric': <function mean_squared_error at 0x7b743bfeec10>,
    'learning_rate': 0.01,
    'max_depth': 7,
    'missing': nan,
    'n_estimators': 1250,
    'n_jobs': -1,
    'objective': 'reg:squarederror',
    'random_state': 42,
    'reg_alpha': 0.05,
    'reg_lambda': 1.0,
    'subsample': 0.8,
    'tree_method': 'hist'}

2025-06-06 06:53:38,086 - algorithm.py - INFO - 131 - indep vars:
['ladenvkpmean', 'ladenvkpmin', 'ladenvkpmax', 'ladenvkpstd', 'fg_bl_BW', 'fg_bl_BY', 'fg_bl_HE', 'fg_bl_NW', 'fg_bl_RP', 'weekdayname_Monday', 'weekdayname_Tuesday', 'weekdayname_Wednesday', 'weekdayname_Thursday', 'weekdayname_Friday', 'weekdayname_Saturday', 'isoweek_1', 'isoweek_2', 'isoweek_3', 'isoweek_4', 'isoweek_5', 'isoweek_6', 'isoweek_7', 'isoweek_8', 'isoweek_9', 'isoweek_10', 'isoweek_11', 'isoweek_12', 'isoweek_13', 'isoweek_14', 'isoweek_15', 'isoweek_16', 'isoweek_17', 'isoweek_18', 'isoweek_19', 'isoweek_20', 'isoweek_21', 'isoweek_22', 'isoweek_23', 'isoweek_24', 'isoweek_25', 'isoweek_26', 'isoweek_27', 'isoweek_28', 'isoweek_29', 'isoweek_30', 'isoweek_31', 'isoweek_32', 'isoweek_33', 'isoweek_34', 'isoweek_35', 'isoweek_36', 'isoweek_37', 'isoweek_38', 'isoweek_39', 'isoweek_40', 'isoweek_41', 'isoweek_42', 'isoweek_43', 'isoweek_44', 'isoweek_45', 'isoweek_46', 'isoweek_47', 'isoweek_48', 'isoweek_49', 'isoweek_50', 'isoweek_51', 'isoweek_52', 'month_1', 'month_2', 'month_3', 'month_4', 'month_5', 'month_6', 'month_7', 'month_8', 'month_9', 'month_10', 'month_11', 'month_12', 'year_2022', 'year_2023', 'year_2024', 'fg_sg_1', 'fg_sg_2', 'fg_sg_3', 'fg_sg_9', 'fg_sg_19', 'fg_sg_21', 'fg_sg_24', 'fg_sg_26', 'fg_sg_27', 'fg_sg_28', 'fg_sg_29', 'fg_sg_31', 'fg_sg_34', 'fg_sg_40', 'fg_sg_41', 'fg_sg_43', 'fg_sg_44', 'fg_sg_52', 'fg_sg_55', 'fg_sg_57', 'fg_sg_58', 'fg_sg_61', 'fg_sg_62', 'fg_sg_63', 'fg_sg_64', 'fg_sg_65', 'fg_sg_66', 'fg_sg_68', 'fg_sg_69', 'fg_sg_71', 'fg_sg_73', 'fg_sg_74', 'fg_sg_76', 'fg_sg_77', 'fg_sg_80', 'fg_sg_81', 'fg_sg_82', 'fg_sg_83', 'fg_sg_85', 'fg_sg_88', 'fg_sg_89', 'fg_sg_91', 'fg_sg_92', 'fg_sg_96', 'fg_sg_97', 'fg_sg_99', 'fg_sg_101', 'fg_sg_103', 'fg_sg_104', 'fg_sg_105', 'fg_sg_107', 'fg_sg_108', 'fg_sg_109', 'fg_sg_110', 'fg_sg_111', 'fg_sg_112', 'fg_sg_113', 'fg_sg_117', 'fg_sg_118', 'fg_sg_120', 'fg_sg_125', 'fg_sg_126', 'fg_sg_128', 'fg_sg_130', 'fg_sg_131', 'fg_sg_133', 'fg_sg_134', 'fg_sg_136', 'fg_sg_139', 'fg_sg_141', 'fg_sg_142', 'fg_sg_143', 'fg_sg_146', 'fg_sg_147', 'fg_sg_148', 'fg_sg_149', 'fg_sg_150', 'fg_sg_151', 'fg_sg_153', 'fg_sg_154', 'fg_sg_155', 'fg_sg_157', 'fg_sg_159', 'fg_sg_160', 'fg_sg_161', 'fg_sg_162', 'fg_sg_164', 'fg_sg_165', 'fg_sg_166', 'fg_sg_167', 'fg_sg_168', 'fg_sg_169', 'fg_sg_170', 'fg_sg_171', 'fg_sg_172', 'fg_sg_173', 'fg_sg_174', 'fg_sg_176', 'fg_sg_177', 'fg_sg_179', 'fg_sg_181', 'fg_sg_182', 'fg_sg_183', 'fg_sg_185', 'fg_sg_187', 'fg_sg_188', 'fg_sg_189', 'fg_sg_190', 'fg_sg_191', 'fg_sg_192', 'fg_sg_193', 'psv_starts', 'psv', 'salesday', 'presales', 'postsales', 'bridge_days', 'outlet', 'store_opening', 'weiberfasching_2022', 'faschingsfreitag_2022', 'faschingssamstag_2022', 'rosenmontag_2022', 'faschingdienstag_2022', 'weiberfasching', 'faschingsfreitag', 'faschingssamstag', 'pre_christmas_peaks', 'valentines_day', 'interaction', 'market_Montags', 'market_Dienstags', 'market_Mittwochs', 'market_Donnerstags', 'market_Freitags', 'market_Samstags', 'population', 'shop_area', 'dist_from_weiden', 'ratio', 'average', 'shop_count', 'weekday_special', 'weekend_special', 'x_coord', 'y_coord', 'dayofmonth', 'isoweek', 'month', 'dayofyear', 'dayofseason', 'season_month']

2025-06-06 06:53:38,089 - main.py - INFO - 137 - Successfully trained xgb9 xgboost for month (2024, 5) training data to: 2024-04-7

2025-06-06 06:53:38,089 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:53:48,482 - prediction_task.py - DEBUG - 31 - test data not found for 194 Michelfeld in period (2024, 5)

2025-06-06 06:53:48,486 - prediction_task.py - DEBUG - 31 - test data not found for 195 Kelheim in period (2024, 5)

2025-06-06 06:53:48,487 - main.py - INFO - 145 - Successfully predicted with xgb9 xgboost for month (2024, 5)

2025-06-06 06:53:48,487 - main.py - INFO - 137 - Successfully trained agp agp for month (2024, 5) training data to: 2024-04-7

2025-06-06 06:53:48,488 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:53:49,022 - prediction_task.py - DEBUG - 31 - test data not found for 194 Michelfeld in period (2024, 5)

2025-06-06 06:53:49,024 - prediction_task.py - DEBUG - 31 - test data not found for 195 Kelheim in period (2024, 5)

2025-06-06 06:53:49,024 - main.py - INFO - 145 - Successfully predicted with agp agp for month (2024, 5)

2025-06-06 06:53:49,024 - algorithm.py - DEBUG - 72 - start training with xgboost...

2025-06-06 06:53:49,153 - algorithm.py - DEBUG - 78 - shape: (66230, 279)  start: 2022-05-02 00:00:00  end: 2024-05-06 00:00:00 

2025-06-06 06:53:59,615 - algorithm.py - INFO - 122 - parameters {'objective': 'reg:squarederror', 'base_score': None, 'booster': None, 'callbacks': None, 'colsample_bylevel': None, 'colsample_bynode': None, 'colsample_bytree': 0.8, 'device': None, 'early_stopping_rounds': None, 'enable_categorical': True, 'eval_metric': <function mean_squared_error at 0x7b743bfeec10>, 'feature_types': None, 'gamma': None, 'grow_policy': None, 'importance_type': None, 'interaction_constraints': None, 'learning_rate': 0.01, 'max_bin': None, 'max_cat_threshold': None, 'max_cat_to_onehot': None, 'max_delta_step': None, 'max_depth': 7, 'max_leaves': None, 'min_child_weight': None, 'missing': nan, 'monotone_constraints': None, 'multi_strategy': None, 'n_estimators': 1250, 'n_jobs': -1, 'num_parallel_tree': None, 'random_state': 42, 'reg_alpha': 0.05, 'reg_lambda': 1.0, 'sampling_method': None, 'scale_pos_weight': None, 'subsample': 0.8, 'tree_method': 'hist', 'validate_parameters': None, 'verbosity': None} 

2025-06-06 06:53:59,616 - algorithm.py - INFO - 130 - parameters:
{   'colsample_bytree': 0.8,
    'enable_categorical': True,
    'eval_metric': <function mean_squared_error at 0x7b743bfeec10>,
    'learning_rate': 0.01,
    'max_depth': 7,
    'missing': nan,
    'n_estimators': 1250,
    'n_jobs': -1,
    'objective': 'reg:squarederror',
    'random_state': 42,
    'reg_alpha': 0.05,
    'reg_lambda': 1.0,
    'subsample': 0.8,
    'tree_method': 'hist'}

2025-06-06 06:53:59,616 - algorithm.py - INFO - 131 - indep vars:
['ladenvkpmean', 'ladenvkpmin', 'ladenvkpmax', 'ladenvkpstd', 'fg_bl_BW', 'fg_bl_BY', 'fg_bl_HE', 'fg_bl_NW', 'fg_bl_RP', 'weekdayname_Monday', 'weekdayname_Tuesday', 'weekdayname_Wednesday', 'weekdayname_Thursday', 'weekdayname_Friday', 'weekdayname_Saturday', 'isoweek_1', 'isoweek_2', 'isoweek_3', 'isoweek_4', 'isoweek_5', 'isoweek_6', 'isoweek_7', 'isoweek_8', 'isoweek_9', 'isoweek_10', 'isoweek_11', 'isoweek_12', 'isoweek_13', 'isoweek_14', 'isoweek_15', 'isoweek_16', 'isoweek_17', 'isoweek_18', 'isoweek_19', 'isoweek_20', 'isoweek_21', 'isoweek_22', 'isoweek_23', 'isoweek_24', 'isoweek_25', 'isoweek_26', 'isoweek_27', 'isoweek_28', 'isoweek_29', 'isoweek_30', 'isoweek_31', 'isoweek_32', 'isoweek_33', 'isoweek_34', 'isoweek_35', 'isoweek_36', 'isoweek_37', 'isoweek_38', 'isoweek_39', 'isoweek_40', 'isoweek_41', 'isoweek_42', 'isoweek_43', 'isoweek_44', 'isoweek_45', 'isoweek_46', 'isoweek_47', 'isoweek_48', 'isoweek_49', 'isoweek_50', 'isoweek_51', 'isoweek_52', 'month_1', 'month_2', 'month_3', 'month_4', 'month_5', 'month_6', 'month_7', 'month_8', 'month_9', 'month_10', 'month_11', 'month_12', 'year_2022', 'year_2023', 'year_2024', 'fg_sg_1', 'fg_sg_2', 'fg_sg_3', 'fg_sg_9', 'fg_sg_19', 'fg_sg_21', 'fg_sg_24', 'fg_sg_26', 'fg_sg_27', 'fg_sg_28', 'fg_sg_29', 'fg_sg_31', 'fg_sg_34', 'fg_sg_40', 'fg_sg_41', 'fg_sg_43', 'fg_sg_44', 'fg_sg_52', 'fg_sg_55', 'fg_sg_57', 'fg_sg_58', 'fg_sg_61', 'fg_sg_62', 'fg_sg_63', 'fg_sg_64', 'fg_sg_65', 'fg_sg_66', 'fg_sg_68', 'fg_sg_69', 'fg_sg_71', 'fg_sg_73', 'fg_sg_74', 'fg_sg_76', 'fg_sg_77', 'fg_sg_80', 'fg_sg_81', 'fg_sg_82', 'fg_sg_83', 'fg_sg_85', 'fg_sg_88', 'fg_sg_89', 'fg_sg_91', 'fg_sg_92', 'fg_sg_96', 'fg_sg_97', 'fg_sg_99', 'fg_sg_101', 'fg_sg_103', 'fg_sg_104', 'fg_sg_105', 'fg_sg_107', 'fg_sg_108', 'fg_sg_109', 'fg_sg_110', 'fg_sg_111', 'fg_sg_112', 'fg_sg_113', 'fg_sg_117', 'fg_sg_118', 'fg_sg_120', 'fg_sg_125', 'fg_sg_126', 'fg_sg_128', 'fg_sg_130', 'fg_sg_131', 'fg_sg_133', 'fg_sg_134', 'fg_sg_136', 'fg_sg_139', 'fg_sg_141', 'fg_sg_142', 'fg_sg_143', 'fg_sg_146', 'fg_sg_147', 'fg_sg_148', 'fg_sg_149', 'fg_sg_150', 'fg_sg_151', 'fg_sg_153', 'fg_sg_154', 'fg_sg_155', 'fg_sg_157', 'fg_sg_159', 'fg_sg_160', 'fg_sg_161', 'fg_sg_162', 'fg_sg_164', 'fg_sg_165', 'fg_sg_166', 'fg_sg_167', 'fg_sg_168', 'fg_sg_169', 'fg_sg_170', 'fg_sg_171', 'fg_sg_172', 'fg_sg_173', 'fg_sg_174', 'fg_sg_176', 'fg_sg_177', 'fg_sg_179', 'fg_sg_181', 'fg_sg_182', 'fg_sg_183', 'fg_sg_185', 'fg_sg_187', 'fg_sg_188', 'fg_sg_189', 'fg_sg_190', 'fg_sg_191', 'fg_sg_192', 'fg_sg_193', 'psv_starts', 'psv', 'salesday', 'presales', 'postsales', 'bridge_days', 'outlet', 'store_opening', 'weiberfasching_2022', 'faschingsfreitag_2022', 'faschingssamstag_2022', 'rosenmontag_2022', 'faschingdienstag_2022', 'weiberfasching', 'faschingsfreitag', 'faschingssamstag', 'pre_christmas_peaks', 'valentines_day', 'interaction', 'market_Montags', 'market_Dienstags', 'market_Mittwochs', 'market_Donnerstags', 'market_Freitags', 'market_Samstags', 'population', 'shop_area', 'dist_from_weiden', 'ratio', 'average', 'shop_count', 'weekday_special', 'weekend_special', 'x_coord', 'y_coord', 'dayofmonth', 'isoweek', 'month', 'dayofyear', 'dayofseason', 'season_month']

2025-06-06 06:53:59,619 - main.py - INFO - 137 - Successfully trained xgb9 xgboost for month (2024, 6) training data to: 2024-05-7

2025-06-06 06:53:59,619 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:54:10,224 - prediction_task.py - DEBUG - 31 - test data not found for 194 Michelfeld in period (2024, 6)

2025-06-06 06:54:10,227 - prediction_task.py - DEBUG - 31 - test data not found for 195 Kelheim in period (2024, 6)

2025-06-06 06:54:10,227 - main.py - INFO - 145 - Successfully predicted with xgb9 xgboost for month (2024, 6)

2025-06-06 06:54:10,227 - main.py - INFO - 137 - Successfully trained agp agp for month (2024, 6) training data to: 2024-05-7

2025-06-06 06:54:10,227 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:54:10,781 - prediction_task.py - DEBUG - 31 - test data not found for 194 Michelfeld in period (2024, 6)

2025-06-06 06:54:10,784 - prediction_task.py - DEBUG - 31 - test data not found for 195 Kelheim in period (2024, 6)

2025-06-06 06:54:10,784 - main.py - INFO - 145 - Successfully predicted with agp agp for month (2024, 6)

2025-06-06 06:54:10,784 - algorithm.py - DEBUG - 72 - start training with xgboost...

2025-06-06 06:54:10,920 - algorithm.py - DEBUG - 78 - shape: (68894, 279)  start: 2022-05-02 00:00:00  end: 2024-06-06 00:00:00 

2025-06-06 06:54:21,480 - algorithm.py - INFO - 122 - parameters {'objective': 'reg:squarederror', 'base_score': None, 'booster': None, 'callbacks': None, 'colsample_bylevel': None, 'colsample_bynode': None, 'colsample_bytree': 0.8, 'device': None, 'early_stopping_rounds': None, 'enable_categorical': True, 'eval_metric': <function mean_squared_error at 0x7b743bfeec10>, 'feature_types': None, 'gamma': None, 'grow_policy': None, 'importance_type': None, 'interaction_constraints': None, 'learning_rate': 0.01, 'max_bin': None, 'max_cat_threshold': None, 'max_cat_to_onehot': None, 'max_delta_step': None, 'max_depth': 7, 'max_leaves': None, 'min_child_weight': None, 'missing': nan, 'monotone_constraints': None, 'multi_strategy': None, 'n_estimators': 1250, 'n_jobs': -1, 'num_parallel_tree': None, 'random_state': 42, 'reg_alpha': 0.05, 'reg_lambda': 1.0, 'sampling_method': None, 'scale_pos_weight': None, 'subsample': 0.8, 'tree_method': 'hist', 'validate_parameters': None, 'verbosity': None} 

2025-06-06 06:54:21,480 - algorithm.py - INFO - 130 - parameters:
{   'colsample_bytree': 0.8,
    'enable_categorical': True,
    'eval_metric': <function mean_squared_error at 0x7b743bfeec10>,
    'learning_rate': 0.01,
    'max_depth': 7,
    'missing': nan,
    'n_estimators': 1250,
    'n_jobs': -1,
    'objective': 'reg:squarederror',
    'random_state': 42,
    'reg_alpha': 0.05,
    'reg_lambda': 1.0,
    'subsample': 0.8,
    'tree_method': 'hist'}

2025-06-06 06:54:21,481 - algorithm.py - INFO - 131 - indep vars:
['ladenvkpmean', 'ladenvkpmin', 'ladenvkpmax', 'ladenvkpstd', 'fg_bl_BW', 'fg_bl_BY', 'fg_bl_HE', 'fg_bl_NW', 'fg_bl_RP', 'weekdayname_Monday', 'weekdayname_Tuesday', 'weekdayname_Wednesday', 'weekdayname_Thursday', 'weekdayname_Friday', 'weekdayname_Saturday', 'isoweek_1', 'isoweek_2', 'isoweek_3', 'isoweek_4', 'isoweek_5', 'isoweek_6', 'isoweek_7', 'isoweek_8', 'isoweek_9', 'isoweek_10', 'isoweek_11', 'isoweek_12', 'isoweek_13', 'isoweek_14', 'isoweek_15', 'isoweek_16', 'isoweek_17', 'isoweek_18', 'isoweek_19', 'isoweek_20', 'isoweek_21', 'isoweek_22', 'isoweek_23', 'isoweek_24', 'isoweek_25', 'isoweek_26', 'isoweek_27', 'isoweek_28', 'isoweek_29', 'isoweek_30', 'isoweek_31', 'isoweek_32', 'isoweek_33', 'isoweek_34', 'isoweek_35', 'isoweek_36', 'isoweek_37', 'isoweek_38', 'isoweek_39', 'isoweek_40', 'isoweek_41', 'isoweek_42', 'isoweek_43', 'isoweek_44', 'isoweek_45', 'isoweek_46', 'isoweek_47', 'isoweek_48', 'isoweek_49', 'isoweek_50', 'isoweek_51', 'isoweek_52', 'month_1', 'month_2', 'month_3', 'month_4', 'month_5', 'month_6', 'month_7', 'month_8', 'month_9', 'month_10', 'month_11', 'month_12', 'year_2022', 'year_2023', 'year_2024', 'fg_sg_1', 'fg_sg_2', 'fg_sg_3', 'fg_sg_9', 'fg_sg_19', 'fg_sg_21', 'fg_sg_24', 'fg_sg_26', 'fg_sg_27', 'fg_sg_28', 'fg_sg_29', 'fg_sg_31', 'fg_sg_34', 'fg_sg_40', 'fg_sg_41', 'fg_sg_43', 'fg_sg_44', 'fg_sg_52', 'fg_sg_55', 'fg_sg_57', 'fg_sg_58', 'fg_sg_61', 'fg_sg_62', 'fg_sg_63', 'fg_sg_64', 'fg_sg_65', 'fg_sg_66', 'fg_sg_68', 'fg_sg_69', 'fg_sg_71', 'fg_sg_73', 'fg_sg_74', 'fg_sg_76', 'fg_sg_77', 'fg_sg_80', 'fg_sg_81', 'fg_sg_82', 'fg_sg_83', 'fg_sg_85', 'fg_sg_88', 'fg_sg_89', 'fg_sg_91', 'fg_sg_92', 'fg_sg_96', 'fg_sg_97', 'fg_sg_99', 'fg_sg_101', 'fg_sg_103', 'fg_sg_104', 'fg_sg_105', 'fg_sg_107', 'fg_sg_108', 'fg_sg_109', 'fg_sg_110', 'fg_sg_111', 'fg_sg_112', 'fg_sg_113', 'fg_sg_117', 'fg_sg_118', 'fg_sg_120', 'fg_sg_125', 'fg_sg_126', 'fg_sg_128', 'fg_sg_130', 'fg_sg_131', 'fg_sg_133', 'fg_sg_134', 'fg_sg_136', 'fg_sg_139', 'fg_sg_141', 'fg_sg_142', 'fg_sg_143', 'fg_sg_146', 'fg_sg_147', 'fg_sg_148', 'fg_sg_149', 'fg_sg_150', 'fg_sg_151', 'fg_sg_153', 'fg_sg_154', 'fg_sg_155', 'fg_sg_157', 'fg_sg_159', 'fg_sg_160', 'fg_sg_161', 'fg_sg_162', 'fg_sg_164', 'fg_sg_165', 'fg_sg_166', 'fg_sg_167', 'fg_sg_168', 'fg_sg_169', 'fg_sg_170', 'fg_sg_171', 'fg_sg_172', 'fg_sg_173', 'fg_sg_174', 'fg_sg_176', 'fg_sg_177', 'fg_sg_179', 'fg_sg_181', 'fg_sg_182', 'fg_sg_183', 'fg_sg_185', 'fg_sg_187', 'fg_sg_188', 'fg_sg_189', 'fg_sg_190', 'fg_sg_191', 'fg_sg_192', 'fg_sg_193', 'psv_starts', 'psv', 'salesday', 'presales', 'postsales', 'bridge_days', 'outlet', 'store_opening', 'weiberfasching_2022', 'faschingsfreitag_2022', 'faschingssamstag_2022', 'rosenmontag_2022', 'faschingdienstag_2022', 'weiberfasching', 'faschingsfreitag', 'faschingssamstag', 'pre_christmas_peaks', 'valentines_day', 'interaction', 'market_Montags', 'market_Dienstags', 'market_Mittwochs', 'market_Donnerstags', 'market_Freitags', 'market_Samstags', 'population', 'shop_area', 'dist_from_weiden', 'ratio', 'average', 'shop_count', 'weekday_special', 'weekend_special', 'x_coord', 'y_coord', 'dayofmonth', 'isoweek', 'month', 'dayofyear', 'dayofseason', 'season_month']

2025-06-06 06:54:21,483 - main.py - INFO - 137 - Successfully trained xgb9 xgboost for month (2024, 7) training data to: 2024-06-7

2025-06-06 06:54:21,483 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:54:31,801 - prediction_task.py - DEBUG - 31 - test data not found for 194 Michelfeld in period (2024, 7)

2025-06-06 06:54:31,805 - prediction_task.py - DEBUG - 31 - test data not found for 195 Kelheim in period (2024, 7)

2025-06-06 06:54:31,806 - main.py - INFO - 145 - Successfully predicted with xgb9 xgboost for month (2024, 7)

2025-06-06 06:54:31,806 - main.py - INFO - 137 - Successfully trained agp agp for month (2024, 7) training data to: 2024-06-7

2025-06-06 06:54:31,806 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:54:32,530 - prediction_task.py - DEBUG - 31 - test data not found for 194 Michelfeld in period (2024, 7)

2025-06-06 06:54:32,532 - prediction_task.py - DEBUG - 31 - test data not found for 195 Kelheim in period (2024, 7)

2025-06-06 06:54:32,532 - main.py - INFO - 145 - Successfully predicted with agp agp for month (2024, 7)

2025-06-06 06:54:32,532 - algorithm.py - DEBUG - 72 - start training with xgboost...

2025-06-06 06:54:32,673 - algorithm.py - DEBUG - 78 - shape: (71778, 279)  start: 2022-05-02 00:00:00  end: 2024-07-06 00:00:00 

2025-06-06 06:54:43,623 - algorithm.py - INFO - 122 - parameters {'objective': 'reg:squarederror', 'base_score': None, 'booster': None, 'callbacks': None, 'colsample_bylevel': None, 'colsample_bynode': None, 'colsample_bytree': 0.8, 'device': None, 'early_stopping_rounds': None, 'enable_categorical': True, 'eval_metric': <function mean_squared_error at 0x7b743bfeec10>, 'feature_types': None, 'gamma': None, 'grow_policy': None, 'importance_type': None, 'interaction_constraints': None, 'learning_rate': 0.01, 'max_bin': None, 'max_cat_threshold': None, 'max_cat_to_onehot': None, 'max_delta_step': None, 'max_depth': 7, 'max_leaves': None, 'min_child_weight': None, 'missing': nan, 'monotone_constraints': None, 'multi_strategy': None, 'n_estimators': 1250, 'n_jobs': -1, 'num_parallel_tree': None, 'random_state': 42, 'reg_alpha': 0.05, 'reg_lambda': 1.0, 'sampling_method': None, 'scale_pos_weight': None, 'subsample': 0.8, 'tree_method': 'hist', 'validate_parameters': None, 'verbosity': None} 

2025-06-06 06:54:43,624 - algorithm.py - INFO - 130 - parameters:
{   'colsample_bytree': 0.8,
    'enable_categorical': True,
    'eval_metric': <function mean_squared_error at 0x7b743bfeec10>,
    'learning_rate': 0.01,
    'max_depth': 7,
    'missing': nan,
    'n_estimators': 1250,
    'n_jobs': -1,
    'objective': 'reg:squarederror',
    'random_state': 42,
    'reg_alpha': 0.05,
    'reg_lambda': 1.0,
    'subsample': 0.8,
    'tree_method': 'hist'}

2025-06-06 06:54:43,624 - algorithm.py - INFO - 131 - indep vars:
['ladenvkpmean', 'ladenvkpmin', 'ladenvkpmax', 'ladenvkpstd', 'fg_bl_BW', 'fg_bl_BY', 'fg_bl_HE', 'fg_bl_NW', 'fg_bl_RP', 'weekdayname_Monday', 'weekdayname_Tuesday', 'weekdayname_Wednesday', 'weekdayname_Thursday', 'weekdayname_Friday', 'weekdayname_Saturday', 'isoweek_1', 'isoweek_2', 'isoweek_3', 'isoweek_4', 'isoweek_5', 'isoweek_6', 'isoweek_7', 'isoweek_8', 'isoweek_9', 'isoweek_10', 'isoweek_11', 'isoweek_12', 'isoweek_13', 'isoweek_14', 'isoweek_15', 'isoweek_16', 'isoweek_17', 'isoweek_18', 'isoweek_19', 'isoweek_20', 'isoweek_21', 'isoweek_22', 'isoweek_23', 'isoweek_24', 'isoweek_25', 'isoweek_26', 'isoweek_27', 'isoweek_28', 'isoweek_29', 'isoweek_30', 'isoweek_31', 'isoweek_32', 'isoweek_33', 'isoweek_34', 'isoweek_35', 'isoweek_36', 'isoweek_37', 'isoweek_38', 'isoweek_39', 'isoweek_40', 'isoweek_41', 'isoweek_42', 'isoweek_43', 'isoweek_44', 'isoweek_45', 'isoweek_46', 'isoweek_47', 'isoweek_48', 'isoweek_49', 'isoweek_50', 'isoweek_51', 'isoweek_52', 'month_1', 'month_2', 'month_3', 'month_4', 'month_5', 'month_6', 'month_7', 'month_8', 'month_9', 'month_10', 'month_11', 'month_12', 'year_2022', 'year_2023', 'year_2024', 'fg_sg_1', 'fg_sg_2', 'fg_sg_3', 'fg_sg_9', 'fg_sg_19', 'fg_sg_21', 'fg_sg_24', 'fg_sg_26', 'fg_sg_27', 'fg_sg_28', 'fg_sg_29', 'fg_sg_31', 'fg_sg_34', 'fg_sg_40', 'fg_sg_41', 'fg_sg_43', 'fg_sg_44', 'fg_sg_52', 'fg_sg_55', 'fg_sg_57', 'fg_sg_58', 'fg_sg_61', 'fg_sg_62', 'fg_sg_63', 'fg_sg_64', 'fg_sg_65', 'fg_sg_66', 'fg_sg_68', 'fg_sg_69', 'fg_sg_71', 'fg_sg_73', 'fg_sg_74', 'fg_sg_76', 'fg_sg_77', 'fg_sg_80', 'fg_sg_81', 'fg_sg_82', 'fg_sg_83', 'fg_sg_85', 'fg_sg_88', 'fg_sg_89', 'fg_sg_91', 'fg_sg_92', 'fg_sg_96', 'fg_sg_97', 'fg_sg_99', 'fg_sg_101', 'fg_sg_103', 'fg_sg_104', 'fg_sg_105', 'fg_sg_107', 'fg_sg_108', 'fg_sg_109', 'fg_sg_110', 'fg_sg_111', 'fg_sg_112', 'fg_sg_113', 'fg_sg_117', 'fg_sg_118', 'fg_sg_120', 'fg_sg_125', 'fg_sg_126', 'fg_sg_128', 'fg_sg_130', 'fg_sg_131', 'fg_sg_133', 'fg_sg_134', 'fg_sg_136', 'fg_sg_139', 'fg_sg_141', 'fg_sg_142', 'fg_sg_143', 'fg_sg_146', 'fg_sg_147', 'fg_sg_148', 'fg_sg_149', 'fg_sg_150', 'fg_sg_151', 'fg_sg_153', 'fg_sg_154', 'fg_sg_155', 'fg_sg_157', 'fg_sg_159', 'fg_sg_160', 'fg_sg_161', 'fg_sg_162', 'fg_sg_164', 'fg_sg_165', 'fg_sg_166', 'fg_sg_167', 'fg_sg_168', 'fg_sg_169', 'fg_sg_170', 'fg_sg_171', 'fg_sg_172', 'fg_sg_173', 'fg_sg_174', 'fg_sg_176', 'fg_sg_177', 'fg_sg_179', 'fg_sg_181', 'fg_sg_182', 'fg_sg_183', 'fg_sg_185', 'fg_sg_187', 'fg_sg_188', 'fg_sg_189', 'fg_sg_190', 'fg_sg_191', 'fg_sg_192', 'fg_sg_193', 'psv_starts', 'psv', 'salesday', 'presales', 'postsales', 'bridge_days', 'outlet', 'store_opening', 'weiberfasching_2022', 'faschingsfreitag_2022', 'faschingssamstag_2022', 'rosenmontag_2022', 'faschingdienstag_2022', 'weiberfasching', 'faschingsfreitag', 'faschingssamstag', 'pre_christmas_peaks', 'valentines_day', 'interaction', 'market_Montags', 'market_Dienstags', 'market_Mittwochs', 'market_Donnerstags', 'market_Freitags', 'market_Samstags', 'population', 'shop_area', 'dist_from_weiden', 'ratio', 'average', 'shop_count', 'weekday_special', 'weekend_special', 'x_coord', 'y_coord', 'dayofmonth', 'isoweek', 'month', 'dayofyear', 'dayofseason', 'season_month']

2025-06-06 06:54:43,627 - main.py - INFO - 137 - Successfully trained xgb9 xgboost for month (2024, 8) training data to: 2024-07-7

2025-06-06 06:54:43,627 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:54:54,289 - prediction_task.py - DEBUG - 31 - test data not found for 194 Michelfeld in period (2024, 8)

2025-06-06 06:54:54,292 - prediction_task.py - DEBUG - 31 - test data not found for 195 Kelheim in period (2024, 8)

2025-06-06 06:54:54,292 - main.py - INFO - 145 - Successfully predicted with xgb9 xgboost for month (2024, 8)

2025-06-06 06:54:54,292 - main.py - INFO - 137 - Successfully trained agp agp for month (2024, 8) training data to: 2024-07-7

2025-06-06 06:54:54,292 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:54:54,840 - prediction_task.py - DEBUG - 31 - test data not found for 194 Michelfeld in period (2024, 8)

2025-06-06 06:54:54,843 - prediction_task.py - DEBUG - 31 - test data not found for 195 Kelheim in period (2024, 8)

2025-06-06 06:54:54,843 - main.py - INFO - 145 - Successfully predicted with agp agp for month (2024, 8)

2025-06-06 06:54:54,843 - algorithm.py - DEBUG - 72 - start training with xgboost...

2025-06-06 06:54:54,987 - algorithm.py - DEBUG - 78 - shape: (74647, 279)  start: 2022-05-02 00:00:00  end: 2024-08-06 00:00:00 

2025-06-06 06:55:06,012 - algorithm.py - INFO - 122 - parameters {'objective': 'reg:squarederror', 'base_score': None, 'booster': None, 'callbacks': None, 'colsample_bylevel': None, 'colsample_bynode': None, 'colsample_bytree': 0.8, 'device': None, 'early_stopping_rounds': None, 'enable_categorical': True, 'eval_metric': <function mean_squared_error at 0x7b743bfeec10>, 'feature_types': None, 'gamma': None, 'grow_policy': None, 'importance_type': None, 'interaction_constraints': None, 'learning_rate': 0.01, 'max_bin': None, 'max_cat_threshold': None, 'max_cat_to_onehot': None, 'max_delta_step': None, 'max_depth': 7, 'max_leaves': None, 'min_child_weight': None, 'missing': nan, 'monotone_constraints': None, 'multi_strategy': None, 'n_estimators': 1250, 'n_jobs': -1, 'num_parallel_tree': None, 'random_state': 42, 'reg_alpha': 0.05, 'reg_lambda': 1.0, 'sampling_method': None, 'scale_pos_weight': None, 'subsample': 0.8, 'tree_method': 'hist', 'validate_parameters': None, 'verbosity': None} 

2025-06-06 06:55:06,012 - algorithm.py - INFO - 130 - parameters:
{   'colsample_bytree': 0.8,
    'enable_categorical': True,
    'eval_metric': <function mean_squared_error at 0x7b743bfeec10>,
    'learning_rate': 0.01,
    'max_depth': 7,
    'missing': nan,
    'n_estimators': 1250,
    'n_jobs': -1,
    'objective': 'reg:squarederror',
    'random_state': 42,
    'reg_alpha': 0.05,
    'reg_lambda': 1.0,
    'subsample': 0.8,
    'tree_method': 'hist'}

2025-06-06 06:55:06,012 - algorithm.py - INFO - 131 - indep vars:
['ladenvkpmean', 'ladenvkpmin', 'ladenvkpmax', 'ladenvkpstd', 'fg_bl_BW', 'fg_bl_BY', 'fg_bl_HE', 'fg_bl_NW', 'fg_bl_RP', 'weekdayname_Monday', 'weekdayname_Tuesday', 'weekdayname_Wednesday', 'weekdayname_Thursday', 'weekdayname_Friday', 'weekdayname_Saturday', 'isoweek_1', 'isoweek_2', 'isoweek_3', 'isoweek_4', 'isoweek_5', 'isoweek_6', 'isoweek_7', 'isoweek_8', 'isoweek_9', 'isoweek_10', 'isoweek_11', 'isoweek_12', 'isoweek_13', 'isoweek_14', 'isoweek_15', 'isoweek_16', 'isoweek_17', 'isoweek_18', 'isoweek_19', 'isoweek_20', 'isoweek_21', 'isoweek_22', 'isoweek_23', 'isoweek_24', 'isoweek_25', 'isoweek_26', 'isoweek_27', 'isoweek_28', 'isoweek_29', 'isoweek_30', 'isoweek_31', 'isoweek_32', 'isoweek_33', 'isoweek_34', 'isoweek_35', 'isoweek_36', 'isoweek_37', 'isoweek_38', 'isoweek_39', 'isoweek_40', 'isoweek_41', 'isoweek_42', 'isoweek_43', 'isoweek_44', 'isoweek_45', 'isoweek_46', 'isoweek_47', 'isoweek_48', 'isoweek_49', 'isoweek_50', 'isoweek_51', 'isoweek_52', 'month_1', 'month_2', 'month_3', 'month_4', 'month_5', 'month_6', 'month_7', 'month_8', 'month_9', 'month_10', 'month_11', 'month_12', 'year_2022', 'year_2023', 'year_2024', 'fg_sg_1', 'fg_sg_2', 'fg_sg_3', 'fg_sg_9', 'fg_sg_19', 'fg_sg_21', 'fg_sg_24', 'fg_sg_26', 'fg_sg_27', 'fg_sg_28', 'fg_sg_29', 'fg_sg_31', 'fg_sg_34', 'fg_sg_40', 'fg_sg_41', 'fg_sg_43', 'fg_sg_44', 'fg_sg_52', 'fg_sg_55', 'fg_sg_57', 'fg_sg_58', 'fg_sg_61', 'fg_sg_62', 'fg_sg_63', 'fg_sg_64', 'fg_sg_65', 'fg_sg_66', 'fg_sg_68', 'fg_sg_69', 'fg_sg_71', 'fg_sg_73', 'fg_sg_74', 'fg_sg_76', 'fg_sg_77', 'fg_sg_80', 'fg_sg_81', 'fg_sg_82', 'fg_sg_83', 'fg_sg_85', 'fg_sg_88', 'fg_sg_89', 'fg_sg_91', 'fg_sg_92', 'fg_sg_96', 'fg_sg_97', 'fg_sg_99', 'fg_sg_101', 'fg_sg_103', 'fg_sg_104', 'fg_sg_105', 'fg_sg_107', 'fg_sg_108', 'fg_sg_109', 'fg_sg_110', 'fg_sg_111', 'fg_sg_112', 'fg_sg_113', 'fg_sg_117', 'fg_sg_118', 'fg_sg_120', 'fg_sg_125', 'fg_sg_126', 'fg_sg_128', 'fg_sg_130', 'fg_sg_131', 'fg_sg_133', 'fg_sg_134', 'fg_sg_136', 'fg_sg_139', 'fg_sg_141', 'fg_sg_142', 'fg_sg_143', 'fg_sg_146', 'fg_sg_147', 'fg_sg_148', 'fg_sg_149', 'fg_sg_150', 'fg_sg_151', 'fg_sg_153', 'fg_sg_154', 'fg_sg_155', 'fg_sg_157', 'fg_sg_159', 'fg_sg_160', 'fg_sg_161', 'fg_sg_162', 'fg_sg_164', 'fg_sg_165', 'fg_sg_166', 'fg_sg_167', 'fg_sg_168', 'fg_sg_169', 'fg_sg_170', 'fg_sg_171', 'fg_sg_172', 'fg_sg_173', 'fg_sg_174', 'fg_sg_176', 'fg_sg_177', 'fg_sg_179', 'fg_sg_181', 'fg_sg_182', 'fg_sg_183', 'fg_sg_185', 'fg_sg_187', 'fg_sg_188', 'fg_sg_189', 'fg_sg_190', 'fg_sg_191', 'fg_sg_192', 'fg_sg_193', 'psv_starts', 'psv', 'salesday', 'presales', 'postsales', 'bridge_days', 'outlet', 'store_opening', 'weiberfasching_2022', 'faschingsfreitag_2022', 'faschingssamstag_2022', 'rosenmontag_2022', 'faschingdienstag_2022', 'weiberfasching', 'faschingsfreitag', 'faschingssamstag', 'pre_christmas_peaks', 'valentines_day', 'interaction', 'market_Montags', 'market_Dienstags', 'market_Mittwochs', 'market_Donnerstags', 'market_Freitags', 'market_Samstags', 'population', 'shop_area', 'dist_from_weiden', 'ratio', 'average', 'shop_count', 'weekday_special', 'weekend_special', 'x_coord', 'y_coord', 'dayofmonth', 'isoweek', 'month', 'dayofyear', 'dayofseason', 'season_month']

2025-06-06 06:55:06,015 - main.py - INFO - 137 - Successfully trained xgb9 xgboost for month (2024, 9) training data to: 2024-08-7

2025-06-06 06:55:06,016 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:55:16,665 - prediction_task.py - DEBUG - 31 - test data not found for 194 Michelfeld in period (2024, 9)

2025-06-06 06:55:16,668 - prediction_task.py - DEBUG - 31 - test data not found for 195 Kelheim in period (2024, 9)

2025-06-06 06:55:16,668 - main.py - INFO - 145 - Successfully predicted with xgb9 xgboost for month (2024, 9)

2025-06-06 06:55:16,668 - main.py - INFO - 137 - Successfully trained agp agp for month (2024, 9) training data to: 2024-08-7

2025-06-06 06:55:16,668 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:55:17,223 - prediction_task.py - DEBUG - 31 - test data not found for 194 Michelfeld in period (2024, 9)

2025-06-06 06:55:17,225 - prediction_task.py - DEBUG - 31 - test data not found for 195 Kelheim in period (2024, 9)

2025-06-06 06:55:17,225 - main.py - INFO - 145 - Successfully predicted with agp agp for month (2024, 9)

2025-06-06 06:55:17,225 - algorithm.py - DEBUG - 72 - start training with xgboost...

2025-06-06 06:55:17,373 - algorithm.py - DEBUG - 78 - shape: (77566, 279)  start: 2022-05-02 00:00:00  end: 2024-09-06 00:00:00 

2025-06-06 06:55:28,721 - algorithm.py - INFO - 122 - parameters {'objective': 'reg:squarederror', 'base_score': None, 'booster': None, 'callbacks': None, 'colsample_bylevel': None, 'colsample_bynode': None, 'colsample_bytree': 0.8, 'device': None, 'early_stopping_rounds': None, 'enable_categorical': True, 'eval_metric': <function mean_squared_error at 0x7b743bfeec10>, 'feature_types': None, 'gamma': None, 'grow_policy': None, 'importance_type': None, 'interaction_constraints': None, 'learning_rate': 0.01, 'max_bin': None, 'max_cat_threshold': None, 'max_cat_to_onehot': None, 'max_delta_step': None, 'max_depth': 7, 'max_leaves': None, 'min_child_weight': None, 'missing': nan, 'monotone_constraints': None, 'multi_strategy': None, 'n_estimators': 1250, 'n_jobs': -1, 'num_parallel_tree': None, 'random_state': 42, 'reg_alpha': 0.05, 'reg_lambda': 1.0, 'sampling_method': None, 'scale_pos_weight': None, 'subsample': 0.8, 'tree_method': 'hist', 'validate_parameters': None, 'verbosity': None} 

2025-06-06 06:55:28,722 - algorithm.py - INFO - 130 - parameters:
{   'colsample_bytree': 0.8,
    'enable_categorical': True,
    'eval_metric': <function mean_squared_error at 0x7b743bfeec10>,
    'learning_rate': 0.01,
    'max_depth': 7,
    'missing': nan,
    'n_estimators': 1250,
    'n_jobs': -1,
    'objective': 'reg:squarederror',
    'random_state': 42,
    'reg_alpha': 0.05,
    'reg_lambda': 1.0,
    'subsample': 0.8,
    'tree_method': 'hist'}

2025-06-06 06:55:28,722 - algorithm.py - INFO - 131 - indep vars:
['ladenvkpmean', 'ladenvkpmin', 'ladenvkpmax', 'ladenvkpstd', 'fg_bl_BW', 'fg_bl_BY', 'fg_bl_HE', 'fg_bl_NW', 'fg_bl_RP', 'weekdayname_Monday', 'weekdayname_Tuesday', 'weekdayname_Wednesday', 'weekdayname_Thursday', 'weekdayname_Friday', 'weekdayname_Saturday', 'isoweek_1', 'isoweek_2', 'isoweek_3', 'isoweek_4', 'isoweek_5', 'isoweek_6', 'isoweek_7', 'isoweek_8', 'isoweek_9', 'isoweek_10', 'isoweek_11', 'isoweek_12', 'isoweek_13', 'isoweek_14', 'isoweek_15', 'isoweek_16', 'isoweek_17', 'isoweek_18', 'isoweek_19', 'isoweek_20', 'isoweek_21', 'isoweek_22', 'isoweek_23', 'isoweek_24', 'isoweek_25', 'isoweek_26', 'isoweek_27', 'isoweek_28', 'isoweek_29', 'isoweek_30', 'isoweek_31', 'isoweek_32', 'isoweek_33', 'isoweek_34', 'isoweek_35', 'isoweek_36', 'isoweek_37', 'isoweek_38', 'isoweek_39', 'isoweek_40', 'isoweek_41', 'isoweek_42', 'isoweek_43', 'isoweek_44', 'isoweek_45', 'isoweek_46', 'isoweek_47', 'isoweek_48', 'isoweek_49', 'isoweek_50', 'isoweek_51', 'isoweek_52', 'month_1', 'month_2', 'month_3', 'month_4', 'month_5', 'month_6', 'month_7', 'month_8', 'month_9', 'month_10', 'month_11', 'month_12', 'year_2022', 'year_2023', 'year_2024', 'fg_sg_1', 'fg_sg_2', 'fg_sg_3', 'fg_sg_9', 'fg_sg_19', 'fg_sg_21', 'fg_sg_24', 'fg_sg_26', 'fg_sg_27', 'fg_sg_28', 'fg_sg_29', 'fg_sg_31', 'fg_sg_34', 'fg_sg_40', 'fg_sg_41', 'fg_sg_43', 'fg_sg_44', 'fg_sg_52', 'fg_sg_55', 'fg_sg_57', 'fg_sg_58', 'fg_sg_61', 'fg_sg_62', 'fg_sg_63', 'fg_sg_64', 'fg_sg_65', 'fg_sg_66', 'fg_sg_68', 'fg_sg_69', 'fg_sg_71', 'fg_sg_73', 'fg_sg_74', 'fg_sg_76', 'fg_sg_77', 'fg_sg_80', 'fg_sg_81', 'fg_sg_82', 'fg_sg_83', 'fg_sg_85', 'fg_sg_88', 'fg_sg_89', 'fg_sg_91', 'fg_sg_92', 'fg_sg_96', 'fg_sg_97', 'fg_sg_99', 'fg_sg_101', 'fg_sg_103', 'fg_sg_104', 'fg_sg_105', 'fg_sg_107', 'fg_sg_108', 'fg_sg_109', 'fg_sg_110', 'fg_sg_111', 'fg_sg_112', 'fg_sg_113', 'fg_sg_117', 'fg_sg_118', 'fg_sg_120', 'fg_sg_125', 'fg_sg_126', 'fg_sg_128', 'fg_sg_130', 'fg_sg_131', 'fg_sg_133', 'fg_sg_134', 'fg_sg_136', 'fg_sg_139', 'fg_sg_141', 'fg_sg_142', 'fg_sg_143', 'fg_sg_146', 'fg_sg_147', 'fg_sg_148', 'fg_sg_149', 'fg_sg_150', 'fg_sg_151', 'fg_sg_153', 'fg_sg_154', 'fg_sg_155', 'fg_sg_157', 'fg_sg_159', 'fg_sg_160', 'fg_sg_161', 'fg_sg_162', 'fg_sg_164', 'fg_sg_165', 'fg_sg_166', 'fg_sg_167', 'fg_sg_168', 'fg_sg_169', 'fg_sg_170', 'fg_sg_171', 'fg_sg_172', 'fg_sg_173', 'fg_sg_174', 'fg_sg_176', 'fg_sg_177', 'fg_sg_179', 'fg_sg_181', 'fg_sg_182', 'fg_sg_183', 'fg_sg_185', 'fg_sg_187', 'fg_sg_188', 'fg_sg_189', 'fg_sg_190', 'fg_sg_191', 'fg_sg_192', 'fg_sg_193', 'psv_starts', 'psv', 'salesday', 'presales', 'postsales', 'bridge_days', 'outlet', 'store_opening', 'weiberfasching_2022', 'faschingsfreitag_2022', 'faschingssamstag_2022', 'rosenmontag_2022', 'faschingdienstag_2022', 'weiberfasching', 'faschingsfreitag', 'faschingssamstag', 'pre_christmas_peaks', 'valentines_day', 'interaction', 'market_Montags', 'market_Dienstags', 'market_Mittwochs', 'market_Donnerstags', 'market_Freitags', 'market_Samstags', 'population', 'shop_area', 'dist_from_weiden', 'ratio', 'average', 'shop_count', 'weekday_special', 'weekend_special', 'x_coord', 'y_coord', 'dayofmonth', 'isoweek', 'month', 'dayofyear', 'dayofseason', 'season_month']

2025-06-06 06:55:28,725 - main.py - INFO - 137 - Successfully trained xgb9 xgboost for month (2024, 10) training data to: 2024-09-7

2025-06-06 06:55:28,725 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:55:29,654 - prediction_task.py - DEBUG - 31 - test data not found for 29 Kelheim II in period (2024, 10)

2025-06-06 06:55:39,159 - prediction_task.py - DEBUG - 31 - test data not found for 194 Michelfeld in period (2024, 10)

2025-06-06 06:55:39,162 - prediction_task.py - DEBUG - 31 - test data not found for 195 Kelheim in period (2024, 10)

2025-06-06 06:55:39,162 - main.py - INFO - 145 - Successfully predicted with xgb9 xgboost for month (2024, 10)

2025-06-06 06:55:39,162 - main.py - INFO - 137 - Successfully trained agp agp for month (2024, 10) training data to: 2024-09-7

2025-06-06 06:55:39,162 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:55:39,218 - prediction_task.py - DEBUG - 31 - test data not found for 29 Kelheim II in period (2024, 10)

2025-06-06 06:55:39,716 - prediction_task.py - DEBUG - 31 - test data not found for 194 Michelfeld in period (2024, 10)

2025-06-06 06:55:39,718 - prediction_task.py - DEBUG - 31 - test data not found for 195 Kelheim in period (2024, 10)

2025-06-06 06:55:39,718 - main.py - INFO - 145 - Successfully predicted with agp agp for month (2024, 10)

2025-06-06 06:55:39,718 - algorithm.py - DEBUG - 72 - start training with xgboost...

2025-06-06 06:55:39,869 - algorithm.py - DEBUG - 78 - shape: (80206, 279)  start: 2022-05-02 00:00:00  end: 2024-10-05 00:00:00 

2025-06-06 06:55:51,582 - algorithm.py - INFO - 122 - parameters {'objective': 'reg:squarederror', 'base_score': None, 'booster': None, 'callbacks': None, 'colsample_bylevel': None, 'colsample_bynode': None, 'colsample_bytree': 0.8, 'device': None, 'early_stopping_rounds': None, 'enable_categorical': True, 'eval_metric': <function mean_squared_error at 0x7b743bfeec10>, 'feature_types': None, 'gamma': None, 'grow_policy': None, 'importance_type': None, 'interaction_constraints': None, 'learning_rate': 0.01, 'max_bin': None, 'max_cat_threshold': None, 'max_cat_to_onehot': None, 'max_delta_step': None, 'max_depth': 7, 'max_leaves': None, 'min_child_weight': None, 'missing': nan, 'monotone_constraints': None, 'multi_strategy': None, 'n_estimators': 1250, 'n_jobs': -1, 'num_parallel_tree': None, 'random_state': 42, 'reg_alpha': 0.05, 'reg_lambda': 1.0, 'sampling_method': None, 'scale_pos_weight': None, 'subsample': 0.8, 'tree_method': 'hist', 'validate_parameters': None, 'verbosity': None} 

2025-06-06 06:55:51,583 - algorithm.py - INFO - 130 - parameters:
{   'colsample_bytree': 0.8,
    'enable_categorical': True,
    'eval_metric': <function mean_squared_error at 0x7b743bfeec10>,
    'learning_rate': 0.01,
    'max_depth': 7,
    'missing': nan,
    'n_estimators': 1250,
    'n_jobs': -1,
    'objective': 'reg:squarederror',
    'random_state': 42,
    'reg_alpha': 0.05,
    'reg_lambda': 1.0,
    'subsample': 0.8,
    'tree_method': 'hist'}

2025-06-06 06:55:51,583 - algorithm.py - INFO - 131 - indep vars:
['ladenvkpmean', 'ladenvkpmin', 'ladenvkpmax', 'ladenvkpstd', 'fg_bl_BW', 'fg_bl_BY', 'fg_bl_HE', 'fg_bl_NW', 'fg_bl_RP', 'weekdayname_Monday', 'weekdayname_Tuesday', 'weekdayname_Wednesday', 'weekdayname_Thursday', 'weekdayname_Friday', 'weekdayname_Saturday', 'isoweek_1', 'isoweek_2', 'isoweek_3', 'isoweek_4', 'isoweek_5', 'isoweek_6', 'isoweek_7', 'isoweek_8', 'isoweek_9', 'isoweek_10', 'isoweek_11', 'isoweek_12', 'isoweek_13', 'isoweek_14', 'isoweek_15', 'isoweek_16', 'isoweek_17', 'isoweek_18', 'isoweek_19', 'isoweek_20', 'isoweek_21', 'isoweek_22', 'isoweek_23', 'isoweek_24', 'isoweek_25', 'isoweek_26', 'isoweek_27', 'isoweek_28', 'isoweek_29', 'isoweek_30', 'isoweek_31', 'isoweek_32', 'isoweek_33', 'isoweek_34', 'isoweek_35', 'isoweek_36', 'isoweek_37', 'isoweek_38', 'isoweek_39', 'isoweek_40', 'isoweek_41', 'isoweek_42', 'isoweek_43', 'isoweek_44', 'isoweek_45', 'isoweek_46', 'isoweek_47', 'isoweek_48', 'isoweek_49', 'isoweek_50', 'isoweek_51', 'isoweek_52', 'month_1', 'month_2', 'month_3', 'month_4', 'month_5', 'month_6', 'month_7', 'month_8', 'month_9', 'month_10', 'month_11', 'month_12', 'year_2022', 'year_2023', 'year_2024', 'fg_sg_1', 'fg_sg_2', 'fg_sg_3', 'fg_sg_9', 'fg_sg_19', 'fg_sg_21', 'fg_sg_24', 'fg_sg_26', 'fg_sg_27', 'fg_sg_28', 'fg_sg_29', 'fg_sg_31', 'fg_sg_34', 'fg_sg_40', 'fg_sg_41', 'fg_sg_43', 'fg_sg_44', 'fg_sg_52', 'fg_sg_55', 'fg_sg_57', 'fg_sg_58', 'fg_sg_61', 'fg_sg_62', 'fg_sg_63', 'fg_sg_64', 'fg_sg_65', 'fg_sg_66', 'fg_sg_68', 'fg_sg_69', 'fg_sg_71', 'fg_sg_73', 'fg_sg_74', 'fg_sg_76', 'fg_sg_77', 'fg_sg_80', 'fg_sg_81', 'fg_sg_82', 'fg_sg_83', 'fg_sg_85', 'fg_sg_88', 'fg_sg_89', 'fg_sg_91', 'fg_sg_92', 'fg_sg_96', 'fg_sg_97', 'fg_sg_99', 'fg_sg_101', 'fg_sg_103', 'fg_sg_104', 'fg_sg_105', 'fg_sg_107', 'fg_sg_108', 'fg_sg_109', 'fg_sg_110', 'fg_sg_111', 'fg_sg_112', 'fg_sg_113', 'fg_sg_117', 'fg_sg_118', 'fg_sg_120', 'fg_sg_125', 'fg_sg_126', 'fg_sg_128', 'fg_sg_130', 'fg_sg_131', 'fg_sg_133', 'fg_sg_134', 'fg_sg_136', 'fg_sg_139', 'fg_sg_141', 'fg_sg_142', 'fg_sg_143', 'fg_sg_146', 'fg_sg_147', 'fg_sg_148', 'fg_sg_149', 'fg_sg_150', 'fg_sg_151', 'fg_sg_153', 'fg_sg_154', 'fg_sg_155', 'fg_sg_157', 'fg_sg_159', 'fg_sg_160', 'fg_sg_161', 'fg_sg_162', 'fg_sg_164', 'fg_sg_165', 'fg_sg_166', 'fg_sg_167', 'fg_sg_168', 'fg_sg_169', 'fg_sg_170', 'fg_sg_171', 'fg_sg_172', 'fg_sg_173', 'fg_sg_174', 'fg_sg_176', 'fg_sg_177', 'fg_sg_179', 'fg_sg_181', 'fg_sg_182', 'fg_sg_183', 'fg_sg_185', 'fg_sg_187', 'fg_sg_188', 'fg_sg_189', 'fg_sg_190', 'fg_sg_191', 'fg_sg_192', 'fg_sg_193', 'psv_starts', 'psv', 'salesday', 'presales', 'postsales', 'bridge_days', 'outlet', 'store_opening', 'weiberfasching_2022', 'faschingsfreitag_2022', 'faschingssamstag_2022', 'rosenmontag_2022', 'faschingdienstag_2022', 'weiberfasching', 'faschingsfreitag', 'faschingssamstag', 'pre_christmas_peaks', 'valentines_day', 'interaction', 'market_Montags', 'market_Dienstags', 'market_Mittwochs', 'market_Donnerstags', 'market_Freitags', 'market_Samstags', 'population', 'shop_area', 'dist_from_weiden', 'ratio', 'average', 'shop_count', 'weekday_special', 'weekend_special', 'x_coord', 'y_coord', 'dayofmonth', 'isoweek', 'month', 'dayofyear', 'dayofseason', 'season_month']

2025-06-06 06:55:51,586 - main.py - INFO - 137 - Successfully trained xgb9 xgboost for month (2024, 11) training data to: 2024-10-7

2025-06-06 06:55:51,586 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:55:52,514 - prediction_task.py - DEBUG - 31 - test data not found for 29 Kelheim II in period (2024, 11)

2025-06-06 06:56:01,950 - prediction_task.py - DEBUG - 31 - test data not found for 194 Michelfeld in period (2024, 11)

2025-06-06 06:56:02,042 - main.py - INFO - 145 - Successfully predicted with xgb9 xgboost for month (2024, 11)

2025-06-06 06:56:02,042 - main.py - INFO - 137 - Successfully trained agp agp for month (2024, 11) training data to: 2024-10-7

2025-06-06 06:56:02,042 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:56:02,094 - prediction_task.py - DEBUG - 31 - test data not found for 29 Kelheim II in period (2024, 11)

2025-06-06 06:56:02,569 - prediction_task.py - DEBUG - 31 - test data not found for 194 Michelfeld in period (2024, 11)

2025-06-06 06:56:02,574 - main.py - INFO - 145 - Successfully predicted with agp agp for month (2024, 11)

2025-06-06 06:56:02,575 - algorithm.py - DEBUG - 72 - start training with xgboost...

2025-06-06 06:56:02,734 - algorithm.py - DEBUG - 78 - shape: (83073, 279)  start: 2022-05-02 00:00:00  end: 2024-11-06 00:00:00 

2025-06-06 06:56:14,880 - algorithm.py - INFO - 122 - parameters {'objective': 'reg:squarederror', 'base_score': None, 'booster': None, 'callbacks': None, 'colsample_bylevel': None, 'colsample_bynode': None, 'colsample_bytree': 0.8, 'device': None, 'early_stopping_rounds': None, 'enable_categorical': True, 'eval_metric': <function mean_squared_error at 0x7b743bfeec10>, 'feature_types': None, 'gamma': None, 'grow_policy': None, 'importance_type': None, 'interaction_constraints': None, 'learning_rate': 0.01, 'max_bin': None, 'max_cat_threshold': None, 'max_cat_to_onehot': None, 'max_delta_step': None, 'max_depth': 7, 'max_leaves': None, 'min_child_weight': None, 'missing': nan, 'monotone_constraints': None, 'multi_strategy': None, 'n_estimators': 1250, 'n_jobs': -1, 'num_parallel_tree': None, 'random_state': 42, 'reg_alpha': 0.05, 'reg_lambda': 1.0, 'sampling_method': None, 'scale_pos_weight': None, 'subsample': 0.8, 'tree_method': 'hist', 'validate_parameters': None, 'verbosity': None} 

2025-06-06 06:56:14,881 - algorithm.py - INFO - 130 - parameters:
{   'colsample_bytree': 0.8,
    'enable_categorical': True,
    'eval_metric': <function mean_squared_error at 0x7b743bfeec10>,
    'learning_rate': 0.01,
    'max_depth': 7,
    'missing': nan,
    'n_estimators': 1250,
    'n_jobs': -1,
    'objective': 'reg:squarederror',
    'random_state': 42,
    'reg_alpha': 0.05,
    'reg_lambda': 1.0,
    'subsample': 0.8,
    'tree_method': 'hist'}

2025-06-06 06:56:14,881 - algorithm.py - INFO - 131 - indep vars:
['ladenvkpmean', 'ladenvkpmin', 'ladenvkpmax', 'ladenvkpstd', 'fg_bl_BW', 'fg_bl_BY', 'fg_bl_HE', 'fg_bl_NW', 'fg_bl_RP', 'weekdayname_Monday', 'weekdayname_Tuesday', 'weekdayname_Wednesday', 'weekdayname_Thursday', 'weekdayname_Friday', 'weekdayname_Saturday', 'isoweek_1', 'isoweek_2', 'isoweek_3', 'isoweek_4', 'isoweek_5', 'isoweek_6', 'isoweek_7', 'isoweek_8', 'isoweek_9', 'isoweek_10', 'isoweek_11', 'isoweek_12', 'isoweek_13', 'isoweek_14', 'isoweek_15', 'isoweek_16', 'isoweek_17', 'isoweek_18', 'isoweek_19', 'isoweek_20', 'isoweek_21', 'isoweek_22', 'isoweek_23', 'isoweek_24', 'isoweek_25', 'isoweek_26', 'isoweek_27', 'isoweek_28', 'isoweek_29', 'isoweek_30', 'isoweek_31', 'isoweek_32', 'isoweek_33', 'isoweek_34', 'isoweek_35', 'isoweek_36', 'isoweek_37', 'isoweek_38', 'isoweek_39', 'isoweek_40', 'isoweek_41', 'isoweek_42', 'isoweek_43', 'isoweek_44', 'isoweek_45', 'isoweek_46', 'isoweek_47', 'isoweek_48', 'isoweek_49', 'isoweek_50', 'isoweek_51', 'isoweek_52', 'month_1', 'month_2', 'month_3', 'month_4', 'month_5', 'month_6', 'month_7', 'month_8', 'month_9', 'month_10', 'month_11', 'month_12', 'year_2022', 'year_2023', 'year_2024', 'fg_sg_1', 'fg_sg_2', 'fg_sg_3', 'fg_sg_9', 'fg_sg_19', 'fg_sg_21', 'fg_sg_24', 'fg_sg_26', 'fg_sg_27', 'fg_sg_28', 'fg_sg_29', 'fg_sg_31', 'fg_sg_34', 'fg_sg_40', 'fg_sg_41', 'fg_sg_43', 'fg_sg_44', 'fg_sg_52', 'fg_sg_55', 'fg_sg_57', 'fg_sg_58', 'fg_sg_61', 'fg_sg_62', 'fg_sg_63', 'fg_sg_64', 'fg_sg_65', 'fg_sg_66', 'fg_sg_68', 'fg_sg_69', 'fg_sg_71', 'fg_sg_73', 'fg_sg_74', 'fg_sg_76', 'fg_sg_77', 'fg_sg_80', 'fg_sg_81', 'fg_sg_82', 'fg_sg_83', 'fg_sg_85', 'fg_sg_88', 'fg_sg_89', 'fg_sg_91', 'fg_sg_92', 'fg_sg_96', 'fg_sg_97', 'fg_sg_99', 'fg_sg_101', 'fg_sg_103', 'fg_sg_104', 'fg_sg_105', 'fg_sg_107', 'fg_sg_108', 'fg_sg_109', 'fg_sg_110', 'fg_sg_111', 'fg_sg_112', 'fg_sg_113', 'fg_sg_117', 'fg_sg_118', 'fg_sg_120', 'fg_sg_125', 'fg_sg_126', 'fg_sg_128', 'fg_sg_130', 'fg_sg_131', 'fg_sg_133', 'fg_sg_134', 'fg_sg_136', 'fg_sg_139', 'fg_sg_141', 'fg_sg_142', 'fg_sg_143', 'fg_sg_146', 'fg_sg_147', 'fg_sg_148', 'fg_sg_149', 'fg_sg_150', 'fg_sg_151', 'fg_sg_153', 'fg_sg_154', 'fg_sg_155', 'fg_sg_157', 'fg_sg_159', 'fg_sg_160', 'fg_sg_161', 'fg_sg_162', 'fg_sg_164', 'fg_sg_165', 'fg_sg_166', 'fg_sg_167', 'fg_sg_168', 'fg_sg_169', 'fg_sg_170', 'fg_sg_171', 'fg_sg_172', 'fg_sg_173', 'fg_sg_174', 'fg_sg_176', 'fg_sg_177', 'fg_sg_179', 'fg_sg_181', 'fg_sg_182', 'fg_sg_183', 'fg_sg_185', 'fg_sg_187', 'fg_sg_188', 'fg_sg_189', 'fg_sg_190', 'fg_sg_191', 'fg_sg_192', 'fg_sg_193', 'psv_starts', 'psv', 'salesday', 'presales', 'postsales', 'bridge_days', 'outlet', 'store_opening', 'weiberfasching_2022', 'faschingsfreitag_2022', 'faschingssamstag_2022', 'rosenmontag_2022', 'faschingdienstag_2022', 'weiberfasching', 'faschingsfreitag', 'faschingssamstag', 'pre_christmas_peaks', 'valentines_day', 'interaction', 'market_Montags', 'market_Dienstags', 'market_Mittwochs', 'market_Donnerstags', 'market_Freitags', 'market_Samstags', 'population', 'shop_area', 'dist_from_weiden', 'ratio', 'average', 'shop_count', 'weekday_special', 'weekend_special', 'x_coord', 'y_coord', 'dayofmonth', 'isoweek', 'month', 'dayofyear', 'dayofseason', 'season_month']

2025-06-06 06:56:14,884 - main.py - INFO - 137 - Successfully trained xgb9 xgboost for month (2024, 12) training data to: 2024-11-7

2025-06-06 06:56:14,884 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:56:15,811 - prediction_task.py - DEBUG - 31 - test data not found for 29 Kelheim II in period (2024, 12)

2025-06-06 06:56:25,358 - main.py - INFO - 145 - Successfully predicted with xgb9 xgboost for month (2024, 12)

2025-06-06 06:56:25,358 - main.py - INFO - 137 - Successfully trained agp agp for month (2024, 12) training data to: 2024-11-7

2025-06-06 06:56:25,358 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:56:25,411 - prediction_task.py - DEBUG - 31 - test data not found for 29 Kelheim II in period (2024, 12)

2025-06-06 06:56:25,910 - main.py - INFO - 145 - Successfully predicted with agp agp for month (2024, 12)

2025-06-06 06:56:25,910 - algorithm.py - DEBUG - 72 - start training with xgboost...

2025-06-06 06:56:26,073 - algorithm.py - DEBUG - 78 - shape: (85947, 279)  start: 2022-05-02 00:00:00  end: 2024-12-06 00:00:00 

2025-06-06 06:56:38,098 - algorithm.py - INFO - 122 - parameters {'objective': 'reg:squarederror', 'base_score': None, 'booster': None, 'callbacks': None, 'colsample_bylevel': None, 'colsample_bynode': None, 'colsample_bytree': 0.8, 'device': None, 'early_stopping_rounds': None, 'enable_categorical': True, 'eval_metric': <function mean_squared_error at 0x7b743bfeec10>, 'feature_types': None, 'gamma': None, 'grow_policy': None, 'importance_type': None, 'interaction_constraints': None, 'learning_rate': 0.01, 'max_bin': None, 'max_cat_threshold': None, 'max_cat_to_onehot': None, 'max_delta_step': None, 'max_depth': 7, 'max_leaves': None, 'min_child_weight': None, 'missing': nan, 'monotone_constraints': None, 'multi_strategy': None, 'n_estimators': 1250, 'n_jobs': -1, 'num_parallel_tree': None, 'random_state': 42, 'reg_alpha': 0.05, 'reg_lambda': 1.0, 'sampling_method': None, 'scale_pos_weight': None, 'subsample': 0.8, 'tree_method': 'hist', 'validate_parameters': None, 'verbosity': None} 

2025-06-06 06:56:38,099 - algorithm.py - INFO - 130 - parameters:
{   'colsample_bytree': 0.8,
    'enable_categorical': True,
    'eval_metric': <function mean_squared_error at 0x7b743bfeec10>,
    'learning_rate': 0.01,
    'max_depth': 7,
    'missing': nan,
    'n_estimators': 1250,
    'n_jobs': -1,
    'objective': 'reg:squarederror',
    'random_state': 42,
    'reg_alpha': 0.05,
    'reg_lambda': 1.0,
    'subsample': 0.8,
    'tree_method': 'hist'}

2025-06-06 06:56:38,099 - algorithm.py - INFO - 131 - indep vars:
['ladenvkpmean', 'ladenvkpmin', 'ladenvkpmax', 'ladenvkpstd', 'fg_bl_BW', 'fg_bl_BY', 'fg_bl_HE', 'fg_bl_NW', 'fg_bl_RP', 'weekdayname_Monday', 'weekdayname_Tuesday', 'weekdayname_Wednesday', 'weekdayname_Thursday', 'weekdayname_Friday', 'weekdayname_Saturday', 'isoweek_1', 'isoweek_2', 'isoweek_3', 'isoweek_4', 'isoweek_5', 'isoweek_6', 'isoweek_7', 'isoweek_8', 'isoweek_9', 'isoweek_10', 'isoweek_11', 'isoweek_12', 'isoweek_13', 'isoweek_14', 'isoweek_15', 'isoweek_16', 'isoweek_17', 'isoweek_18', 'isoweek_19', 'isoweek_20', 'isoweek_21', 'isoweek_22', 'isoweek_23', 'isoweek_24', 'isoweek_25', 'isoweek_26', 'isoweek_27', 'isoweek_28', 'isoweek_29', 'isoweek_30', 'isoweek_31', 'isoweek_32', 'isoweek_33', 'isoweek_34', 'isoweek_35', 'isoweek_36', 'isoweek_37', 'isoweek_38', 'isoweek_39', 'isoweek_40', 'isoweek_41', 'isoweek_42', 'isoweek_43', 'isoweek_44', 'isoweek_45', 'isoweek_46', 'isoweek_47', 'isoweek_48', 'isoweek_49', 'isoweek_50', 'isoweek_51', 'isoweek_52', 'month_1', 'month_2', 'month_3', 'month_4', 'month_5', 'month_6', 'month_7', 'month_8', 'month_9', 'month_10', 'month_11', 'month_12', 'year_2022', 'year_2023', 'year_2024', 'fg_sg_1', 'fg_sg_2', 'fg_sg_3', 'fg_sg_9', 'fg_sg_19', 'fg_sg_21', 'fg_sg_24', 'fg_sg_26', 'fg_sg_27', 'fg_sg_28', 'fg_sg_29', 'fg_sg_31', 'fg_sg_34', 'fg_sg_40', 'fg_sg_41', 'fg_sg_43', 'fg_sg_44', 'fg_sg_52', 'fg_sg_55', 'fg_sg_57', 'fg_sg_58', 'fg_sg_61', 'fg_sg_62', 'fg_sg_63', 'fg_sg_64', 'fg_sg_65', 'fg_sg_66', 'fg_sg_68', 'fg_sg_69', 'fg_sg_71', 'fg_sg_73', 'fg_sg_74', 'fg_sg_76', 'fg_sg_77', 'fg_sg_80', 'fg_sg_81', 'fg_sg_82', 'fg_sg_83', 'fg_sg_85', 'fg_sg_88', 'fg_sg_89', 'fg_sg_91', 'fg_sg_92', 'fg_sg_96', 'fg_sg_97', 'fg_sg_99', 'fg_sg_101', 'fg_sg_103', 'fg_sg_104', 'fg_sg_105', 'fg_sg_107', 'fg_sg_108', 'fg_sg_109', 'fg_sg_110', 'fg_sg_111', 'fg_sg_112', 'fg_sg_113', 'fg_sg_117', 'fg_sg_118', 'fg_sg_120', 'fg_sg_125', 'fg_sg_126', 'fg_sg_128', 'fg_sg_130', 'fg_sg_131', 'fg_sg_133', 'fg_sg_134', 'fg_sg_136', 'fg_sg_139', 'fg_sg_141', 'fg_sg_142', 'fg_sg_143', 'fg_sg_146', 'fg_sg_147', 'fg_sg_148', 'fg_sg_149', 'fg_sg_150', 'fg_sg_151', 'fg_sg_153', 'fg_sg_154', 'fg_sg_155', 'fg_sg_157', 'fg_sg_159', 'fg_sg_160', 'fg_sg_161', 'fg_sg_162', 'fg_sg_164', 'fg_sg_165', 'fg_sg_166', 'fg_sg_167', 'fg_sg_168', 'fg_sg_169', 'fg_sg_170', 'fg_sg_171', 'fg_sg_172', 'fg_sg_173', 'fg_sg_174', 'fg_sg_176', 'fg_sg_177', 'fg_sg_179', 'fg_sg_181', 'fg_sg_182', 'fg_sg_183', 'fg_sg_185', 'fg_sg_187', 'fg_sg_188', 'fg_sg_189', 'fg_sg_190', 'fg_sg_191', 'fg_sg_192', 'fg_sg_193', 'psv_starts', 'psv', 'salesday', 'presales', 'postsales', 'bridge_days', 'outlet', 'store_opening', 'weiberfasching_2022', 'faschingsfreitag_2022', 'faschingssamstag_2022', 'rosenmontag_2022', 'faschingdienstag_2022', 'weiberfasching', 'faschingsfreitag', 'faschingssamstag', 'pre_christmas_peaks', 'valentines_day', 'interaction', 'market_Montags', 'market_Dienstags', 'market_Mittwochs', 'market_Donnerstags', 'market_Freitags', 'market_Samstags', 'population', 'shop_area', 'dist_from_weiden', 'ratio', 'average', 'shop_count', 'weekday_special', 'weekend_special', 'x_coord', 'y_coord', 'dayofmonth', 'isoweek', 'month', 'dayofyear', 'dayofseason', 'season_month']

2025-06-06 06:56:38,102 - main.py - INFO - 137 - Successfully trained xgb9 xgboost for month (2025, 1) training data to: 2024-12-7

2025-06-06 06:56:38,102 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:56:39,048 - prediction_task.py - DEBUG - 31 - test data not found for 29 Kelheim II in period (2025, 1)

2025-06-06 06:56:42,025 - prediction_task.py - DEBUG - 31 - test data not found for 96 Hof in period (2025, 1)

2025-06-06 06:56:48,684 - main.py - INFO - 145 - Successfully predicted with xgb9 xgboost for month (2025, 1)

2025-06-06 06:56:48,684 - main.py - INFO - 137 - Successfully trained agp agp for month (2025, 1) training data to: 2024-12-7

2025-06-06 06:56:48,685 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:56:48,738 - prediction_task.py - DEBUG - 31 - test data not found for 29 Kelheim II in period (2025, 1)

2025-06-06 06:56:48,890 - prediction_task.py - DEBUG - 31 - test data not found for 96 Hof in period (2025, 1)

2025-06-06 06:56:49,218 - main.py - INFO - 145 - Successfully predicted with agp agp for month (2025, 1)

2025-06-06 06:56:49,218 - algorithm.py - DEBUG - 72 - start training with xgboost...

2025-06-06 06:56:49,381 - algorithm.py - DEBUG - 78 - shape: (88432, 279)  start: 2022-05-02 00:00:00  end: 2025-01-06 00:00:00 

2025-06-06 06:57:01,491 - algorithm.py - INFO - 122 - parameters {'objective': 'reg:squarederror', 'base_score': None, 'booster': None, 'callbacks': None, 'colsample_bylevel': None, 'colsample_bynode': None, 'colsample_bytree': 0.8, 'device': None, 'early_stopping_rounds': None, 'enable_categorical': True, 'eval_metric': <function mean_squared_error at 0x7b743bfeec10>, 'feature_types': None, 'gamma': None, 'grow_policy': None, 'importance_type': None, 'interaction_constraints': None, 'learning_rate': 0.01, 'max_bin': None, 'max_cat_threshold': None, 'max_cat_to_onehot': None, 'max_delta_step': None, 'max_depth': 7, 'max_leaves': None, 'min_child_weight': None, 'missing': nan, 'monotone_constraints': None, 'multi_strategy': None, 'n_estimators': 1250, 'n_jobs': -1, 'num_parallel_tree': None, 'random_state': 42, 'reg_alpha': 0.05, 'reg_lambda': 1.0, 'sampling_method': None, 'scale_pos_weight': None, 'subsample': 0.8, 'tree_method': 'hist', 'validate_parameters': None, 'verbosity': None} 

2025-06-06 06:57:01,491 - algorithm.py - INFO - 130 - parameters:
{   'colsample_bytree': 0.8,
    'enable_categorical': True,
    'eval_metric': <function mean_squared_error at 0x7b743bfeec10>,
    'learning_rate': 0.01,
    'max_depth': 7,
    'missing': nan,
    'n_estimators': 1250,
    'n_jobs': -1,
    'objective': 'reg:squarederror',
    'random_state': 42,
    'reg_alpha': 0.05,
    'reg_lambda': 1.0,
    'subsample': 0.8,
    'tree_method': 'hist'}

2025-06-06 06:57:01,492 - algorithm.py - INFO - 131 - indep vars:
['ladenvkpmean', 'ladenvkpmin', 'ladenvkpmax', 'ladenvkpstd', 'fg_bl_BW', 'fg_bl_BY', 'fg_bl_HE', 'fg_bl_NW', 'fg_bl_RP', 'weekdayname_Monday', 'weekdayname_Tuesday', 'weekdayname_Wednesday', 'weekdayname_Thursday', 'weekdayname_Friday', 'weekdayname_Saturday', 'isoweek_1', 'isoweek_2', 'isoweek_3', 'isoweek_4', 'isoweek_5', 'isoweek_6', 'isoweek_7', 'isoweek_8', 'isoweek_9', 'isoweek_10', 'isoweek_11', 'isoweek_12', 'isoweek_13', 'isoweek_14', 'isoweek_15', 'isoweek_16', 'isoweek_17', 'isoweek_18', 'isoweek_19', 'isoweek_20', 'isoweek_21', 'isoweek_22', 'isoweek_23', 'isoweek_24', 'isoweek_25', 'isoweek_26', 'isoweek_27', 'isoweek_28', 'isoweek_29', 'isoweek_30', 'isoweek_31', 'isoweek_32', 'isoweek_33', 'isoweek_34', 'isoweek_35', 'isoweek_36', 'isoweek_37', 'isoweek_38', 'isoweek_39', 'isoweek_40', 'isoweek_41', 'isoweek_42', 'isoweek_43', 'isoweek_44', 'isoweek_45', 'isoweek_46', 'isoweek_47', 'isoweek_48', 'isoweek_49', 'isoweek_50', 'isoweek_51', 'isoweek_52', 'month_1', 'month_2', 'month_3', 'month_4', 'month_5', 'month_6', 'month_7', 'month_8', 'month_9', 'month_10', 'month_11', 'month_12', 'year_2022', 'year_2023', 'year_2024', 'fg_sg_1', 'fg_sg_2', 'fg_sg_3', 'fg_sg_9', 'fg_sg_19', 'fg_sg_21', 'fg_sg_24', 'fg_sg_26', 'fg_sg_27', 'fg_sg_28', 'fg_sg_29', 'fg_sg_31', 'fg_sg_34', 'fg_sg_40', 'fg_sg_41', 'fg_sg_43', 'fg_sg_44', 'fg_sg_52', 'fg_sg_55', 'fg_sg_57', 'fg_sg_58', 'fg_sg_61', 'fg_sg_62', 'fg_sg_63', 'fg_sg_64', 'fg_sg_65', 'fg_sg_66', 'fg_sg_68', 'fg_sg_69', 'fg_sg_71', 'fg_sg_73', 'fg_sg_74', 'fg_sg_76', 'fg_sg_77', 'fg_sg_80', 'fg_sg_81', 'fg_sg_82', 'fg_sg_83', 'fg_sg_85', 'fg_sg_88', 'fg_sg_89', 'fg_sg_91', 'fg_sg_92', 'fg_sg_96', 'fg_sg_97', 'fg_sg_99', 'fg_sg_101', 'fg_sg_103', 'fg_sg_104', 'fg_sg_105', 'fg_sg_107', 'fg_sg_108', 'fg_sg_109', 'fg_sg_110', 'fg_sg_111', 'fg_sg_112', 'fg_sg_113', 'fg_sg_117', 'fg_sg_118', 'fg_sg_120', 'fg_sg_125', 'fg_sg_126', 'fg_sg_128', 'fg_sg_130', 'fg_sg_131', 'fg_sg_133', 'fg_sg_134', 'fg_sg_136', 'fg_sg_139', 'fg_sg_141', 'fg_sg_142', 'fg_sg_143', 'fg_sg_146', 'fg_sg_147', 'fg_sg_148', 'fg_sg_149', 'fg_sg_150', 'fg_sg_151', 'fg_sg_153', 'fg_sg_154', 'fg_sg_155', 'fg_sg_157', 'fg_sg_159', 'fg_sg_160', 'fg_sg_161', 'fg_sg_162', 'fg_sg_164', 'fg_sg_165', 'fg_sg_166', 'fg_sg_167', 'fg_sg_168', 'fg_sg_169', 'fg_sg_170', 'fg_sg_171', 'fg_sg_172', 'fg_sg_173', 'fg_sg_174', 'fg_sg_176', 'fg_sg_177', 'fg_sg_179', 'fg_sg_181', 'fg_sg_182', 'fg_sg_183', 'fg_sg_185', 'fg_sg_187', 'fg_sg_188', 'fg_sg_189', 'fg_sg_190', 'fg_sg_191', 'fg_sg_192', 'fg_sg_193', 'psv_starts', 'psv', 'salesday', 'presales', 'postsales', 'bridge_days', 'outlet', 'store_opening', 'weiberfasching_2022', 'faschingsfreitag_2022', 'faschingssamstag_2022', 'rosenmontag_2022', 'faschingdienstag_2022', 'weiberfasching', 'faschingsfreitag', 'faschingssamstag', 'pre_christmas_peaks', 'valentines_day', 'interaction', 'market_Montags', 'market_Dienstags', 'market_Mittwochs', 'market_Donnerstags', 'market_Freitags', 'market_Samstags', 'population', 'shop_area', 'dist_from_weiden', 'ratio', 'average', 'shop_count', 'weekday_special', 'weekend_special', 'x_coord', 'y_coord', 'dayofmonth', 'isoweek', 'month', 'dayofyear', 'dayofseason', 'season_month']

2025-06-06 06:57:01,495 - main.py - INFO - 137 - Successfully trained xgb9 xgboost for month (2025, 2) training data to: 2025-01-7

2025-06-06 06:57:01,495 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:57:02,415 - prediction_task.py - DEBUG - 31 - test data not found for 29 Kelheim II in period (2025, 2)

2025-06-06 06:57:05,377 - prediction_task.py - DEBUG - 31 - test data not found for 96 Hof in period (2025, 2)

2025-06-06 06:57:11,787 - main.py - INFO - 145 - Successfully predicted with xgb9 xgboost for month (2025, 2)

2025-06-06 06:57:11,787 - main.py - INFO - 137 - Successfully trained agp agp for month (2025, 2) training data to: 2025-01-7

2025-06-06 06:57:11,787 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:57:11,840 - prediction_task.py - DEBUG - 31 - test data not found for 29 Kelheim II in period (2025, 2)

2025-06-06 06:57:12,242 - prediction_task.py - DEBUG - 31 - test data not found for 96 Hof in period (2025, 2)

2025-06-06 06:57:12,594 - main.py - INFO - 145 - Successfully predicted with agp agp for month (2025, 2)

2025-06-06 06:57:12,594 - algorithm.py - DEBUG - 72 - start training with xgboost...

2025-06-06 06:57:12,765 - algorithm.py - DEBUG - 78 - shape: (91428, 279)  start: 2022-05-02 00:00:00  end: 2025-02-06 00:00:00 

2025-06-06 06:57:25,422 - algorithm.py - INFO - 122 - parameters {'objective': 'reg:squarederror', 'base_score': None, 'booster': None, 'callbacks': None, 'colsample_bylevel': None, 'colsample_bynode': None, 'colsample_bytree': 0.8, 'device': None, 'early_stopping_rounds': None, 'enable_categorical': True, 'eval_metric': <function mean_squared_error at 0x7b743bfeec10>, 'feature_types': None, 'gamma': None, 'grow_policy': None, 'importance_type': None, 'interaction_constraints': None, 'learning_rate': 0.01, 'max_bin': None, 'max_cat_threshold': None, 'max_cat_to_onehot': None, 'max_delta_step': None, 'max_depth': 7, 'max_leaves': None, 'min_child_weight': None, 'missing': nan, 'monotone_constraints': None, 'multi_strategy': None, 'n_estimators': 1250, 'n_jobs': -1, 'num_parallel_tree': None, 'random_state': 42, 'reg_alpha': 0.05, 'reg_lambda': 1.0, 'sampling_method': None, 'scale_pos_weight': None, 'subsample': 0.8, 'tree_method': 'hist', 'validate_parameters': None, 'verbosity': None} 

2025-06-06 06:57:25,423 - algorithm.py - INFO - 130 - parameters:
{   'colsample_bytree': 0.8,
    'enable_categorical': True,
    'eval_metric': <function mean_squared_error at 0x7b743bfeec10>,
    'learning_rate': 0.01,
    'max_depth': 7,
    'missing': nan,
    'n_estimators': 1250,
    'n_jobs': -1,
    'objective': 'reg:squarederror',
    'random_state': 42,
    'reg_alpha': 0.05,
    'reg_lambda': 1.0,
    'subsample': 0.8,
    'tree_method': 'hist'}

2025-06-06 06:57:25,423 - algorithm.py - INFO - 131 - indep vars:
['ladenvkpmean', 'ladenvkpmin', 'ladenvkpmax', 'ladenvkpstd', 'fg_bl_BW', 'fg_bl_BY', 'fg_bl_HE', 'fg_bl_NW', 'fg_bl_RP', 'weekdayname_Monday', 'weekdayname_Tuesday', 'weekdayname_Wednesday', 'weekdayname_Thursday', 'weekdayname_Friday', 'weekdayname_Saturday', 'isoweek_1', 'isoweek_2', 'isoweek_3', 'isoweek_4', 'isoweek_5', 'isoweek_6', 'isoweek_7', 'isoweek_8', 'isoweek_9', 'isoweek_10', 'isoweek_11', 'isoweek_12', 'isoweek_13', 'isoweek_14', 'isoweek_15', 'isoweek_16', 'isoweek_17', 'isoweek_18', 'isoweek_19', 'isoweek_20', 'isoweek_21', 'isoweek_22', 'isoweek_23', 'isoweek_24', 'isoweek_25', 'isoweek_26', 'isoweek_27', 'isoweek_28', 'isoweek_29', 'isoweek_30', 'isoweek_31', 'isoweek_32', 'isoweek_33', 'isoweek_34', 'isoweek_35', 'isoweek_36', 'isoweek_37', 'isoweek_38', 'isoweek_39', 'isoweek_40', 'isoweek_41', 'isoweek_42', 'isoweek_43', 'isoweek_44', 'isoweek_45', 'isoweek_46', 'isoweek_47', 'isoweek_48', 'isoweek_49', 'isoweek_50', 'isoweek_51', 'isoweek_52', 'month_1', 'month_2', 'month_3', 'month_4', 'month_5', 'month_6', 'month_7', 'month_8', 'month_9', 'month_10', 'month_11', 'month_12', 'year_2022', 'year_2023', 'year_2024', 'fg_sg_1', 'fg_sg_2', 'fg_sg_3', 'fg_sg_9', 'fg_sg_19', 'fg_sg_21', 'fg_sg_24', 'fg_sg_26', 'fg_sg_27', 'fg_sg_28', 'fg_sg_29', 'fg_sg_31', 'fg_sg_34', 'fg_sg_40', 'fg_sg_41', 'fg_sg_43', 'fg_sg_44', 'fg_sg_52', 'fg_sg_55', 'fg_sg_57', 'fg_sg_58', 'fg_sg_61', 'fg_sg_62', 'fg_sg_63', 'fg_sg_64', 'fg_sg_65', 'fg_sg_66', 'fg_sg_68', 'fg_sg_69', 'fg_sg_71', 'fg_sg_73', 'fg_sg_74', 'fg_sg_76', 'fg_sg_77', 'fg_sg_80', 'fg_sg_81', 'fg_sg_82', 'fg_sg_83', 'fg_sg_85', 'fg_sg_88', 'fg_sg_89', 'fg_sg_91', 'fg_sg_92', 'fg_sg_96', 'fg_sg_97', 'fg_sg_99', 'fg_sg_101', 'fg_sg_103', 'fg_sg_104', 'fg_sg_105', 'fg_sg_107', 'fg_sg_108', 'fg_sg_109', 'fg_sg_110', 'fg_sg_111', 'fg_sg_112', 'fg_sg_113', 'fg_sg_117', 'fg_sg_118', 'fg_sg_120', 'fg_sg_125', 'fg_sg_126', 'fg_sg_128', 'fg_sg_130', 'fg_sg_131', 'fg_sg_133', 'fg_sg_134', 'fg_sg_136', 'fg_sg_139', 'fg_sg_141', 'fg_sg_142', 'fg_sg_143', 'fg_sg_146', 'fg_sg_147', 'fg_sg_148', 'fg_sg_149', 'fg_sg_150', 'fg_sg_151', 'fg_sg_153', 'fg_sg_154', 'fg_sg_155', 'fg_sg_157', 'fg_sg_159', 'fg_sg_160', 'fg_sg_161', 'fg_sg_162', 'fg_sg_164', 'fg_sg_165', 'fg_sg_166', 'fg_sg_167', 'fg_sg_168', 'fg_sg_169', 'fg_sg_170', 'fg_sg_171', 'fg_sg_172', 'fg_sg_173', 'fg_sg_174', 'fg_sg_176', 'fg_sg_177', 'fg_sg_179', 'fg_sg_181', 'fg_sg_182', 'fg_sg_183', 'fg_sg_185', 'fg_sg_187', 'fg_sg_188', 'fg_sg_189', 'fg_sg_190', 'fg_sg_191', 'fg_sg_192', 'fg_sg_193', 'psv_starts', 'psv', 'salesday', 'presales', 'postsales', 'bridge_days', 'outlet', 'store_opening', 'weiberfasching_2022', 'faschingsfreitag_2022', 'faschingssamstag_2022', 'rosenmontag_2022', 'faschingdienstag_2022', 'weiberfasching', 'faschingsfreitag', 'faschingssamstag', 'pre_christmas_peaks', 'valentines_day', 'interaction', 'market_Montags', 'market_Dienstags', 'market_Mittwochs', 'market_Donnerstags', 'market_Freitags', 'market_Samstags', 'population', 'shop_area', 'dist_from_weiden', 'ratio', 'average', 'shop_count', 'weekday_special', 'weekend_special', 'x_coord', 'y_coord', 'dayofmonth', 'isoweek', 'month', 'dayofyear', 'dayofseason', 'season_month']

2025-06-06 06:57:25,426 - main.py - INFO - 137 - Successfully trained xgb9 xgboost for month (2025, 3) training data to: 2025-02-7

2025-06-06 06:57:25,426 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:57:26,329 - prediction_task.py - DEBUG - 31 - test data not found for 29 Kelheim II in period (2025, 3)

2025-06-06 06:57:29,337 - prediction_task.py - DEBUG - 31 - test data not found for 96 Hof in period (2025, 3)

2025-06-06 06:57:35,685 - main.py - INFO - 145 - Successfully predicted with xgb9 xgboost for month (2025, 3)

2025-06-06 06:57:35,685 - main.py - INFO - 137 - Successfully trained agp agp for month (2025, 3) training data to: 2025-02-7

2025-06-06 06:57:35,685 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:57:35,740 - prediction_task.py - DEBUG - 31 - test data not found for 29 Kelheim II in period (2025, 3)

2025-06-06 06:57:35,891 - prediction_task.py - DEBUG - 31 - test data not found for 96 Hof in period (2025, 3)

2025-06-06 06:57:36,220 - main.py - INFO - 145 - Successfully predicted with agp agp for month (2025, 3)

2025-06-06 06:57:36,220 - algorithm.py - DEBUG - 72 - start training with xgboost...

2025-06-06 06:57:36,394 - algorithm.py - DEBUG - 78 - shape: (94067, 279)  start: 2022-05-02 00:00:00  end: 2025-03-06 00:00:00 

2025-06-06 06:57:49,202 - algorithm.py - INFO - 122 - parameters {'objective': 'reg:squarederror', 'base_score': None, 'booster': None, 'callbacks': None, 'colsample_bylevel': None, 'colsample_bynode': None, 'colsample_bytree': 0.8, 'device': None, 'early_stopping_rounds': None, 'enable_categorical': True, 'eval_metric': <function mean_squared_error at 0x7b743bfeec10>, 'feature_types': None, 'gamma': None, 'grow_policy': None, 'importance_type': None, 'interaction_constraints': None, 'learning_rate': 0.01, 'max_bin': None, 'max_cat_threshold': None, 'max_cat_to_onehot': None, 'max_delta_step': None, 'max_depth': 7, 'max_leaves': None, 'min_child_weight': None, 'missing': nan, 'monotone_constraints': None, 'multi_strategy': None, 'n_estimators': 1250, 'n_jobs': -1, 'num_parallel_tree': None, 'random_state': 42, 'reg_alpha': 0.05, 'reg_lambda': 1.0, 'sampling_method': None, 'scale_pos_weight': None, 'subsample': 0.8, 'tree_method': 'hist', 'validate_parameters': None, 'verbosity': None} 

2025-06-06 06:57:49,202 - algorithm.py - INFO - 130 - parameters:
{   'colsample_bytree': 0.8,
    'enable_categorical': True,
    'eval_metric': <function mean_squared_error at 0x7b743bfeec10>,
    'learning_rate': 0.01,
    'max_depth': 7,
    'missing': nan,
    'n_estimators': 1250,
    'n_jobs': -1,
    'objective': 'reg:squarederror',
    'random_state': 42,
    'reg_alpha': 0.05,
    'reg_lambda': 1.0,
    'subsample': 0.8,
    'tree_method': 'hist'}

2025-06-06 06:57:49,202 - algorithm.py - INFO - 131 - indep vars:
['ladenvkpmean', 'ladenvkpmin', 'ladenvkpmax', 'ladenvkpstd', 'fg_bl_BW', 'fg_bl_BY', 'fg_bl_HE', 'fg_bl_NW', 'fg_bl_RP', 'weekdayname_Monday', 'weekdayname_Tuesday', 'weekdayname_Wednesday', 'weekdayname_Thursday', 'weekdayname_Friday', 'weekdayname_Saturday', 'isoweek_1', 'isoweek_2', 'isoweek_3', 'isoweek_4', 'isoweek_5', 'isoweek_6', 'isoweek_7', 'isoweek_8', 'isoweek_9', 'isoweek_10', 'isoweek_11', 'isoweek_12', 'isoweek_13', 'isoweek_14', 'isoweek_15', 'isoweek_16', 'isoweek_17', 'isoweek_18', 'isoweek_19', 'isoweek_20', 'isoweek_21', 'isoweek_22', 'isoweek_23', 'isoweek_24', 'isoweek_25', 'isoweek_26', 'isoweek_27', 'isoweek_28', 'isoweek_29', 'isoweek_30', 'isoweek_31', 'isoweek_32', 'isoweek_33', 'isoweek_34', 'isoweek_35', 'isoweek_36', 'isoweek_37', 'isoweek_38', 'isoweek_39', 'isoweek_40', 'isoweek_41', 'isoweek_42', 'isoweek_43', 'isoweek_44', 'isoweek_45', 'isoweek_46', 'isoweek_47', 'isoweek_48', 'isoweek_49', 'isoweek_50', 'isoweek_51', 'isoweek_52', 'month_1', 'month_2', 'month_3', 'month_4', 'month_5', 'month_6', 'month_7', 'month_8', 'month_9', 'month_10', 'month_11', 'month_12', 'year_2022', 'year_2023', 'year_2024', 'fg_sg_1', 'fg_sg_2', 'fg_sg_3', 'fg_sg_9', 'fg_sg_19', 'fg_sg_21', 'fg_sg_24', 'fg_sg_26', 'fg_sg_27', 'fg_sg_28', 'fg_sg_29', 'fg_sg_31', 'fg_sg_34', 'fg_sg_40', 'fg_sg_41', 'fg_sg_43', 'fg_sg_44', 'fg_sg_52', 'fg_sg_55', 'fg_sg_57', 'fg_sg_58', 'fg_sg_61', 'fg_sg_62', 'fg_sg_63', 'fg_sg_64', 'fg_sg_65', 'fg_sg_66', 'fg_sg_68', 'fg_sg_69', 'fg_sg_71', 'fg_sg_73', 'fg_sg_74', 'fg_sg_76', 'fg_sg_77', 'fg_sg_80', 'fg_sg_81', 'fg_sg_82', 'fg_sg_83', 'fg_sg_85', 'fg_sg_88', 'fg_sg_89', 'fg_sg_91', 'fg_sg_92', 'fg_sg_96', 'fg_sg_97', 'fg_sg_99', 'fg_sg_101', 'fg_sg_103', 'fg_sg_104', 'fg_sg_105', 'fg_sg_107', 'fg_sg_108', 'fg_sg_109', 'fg_sg_110', 'fg_sg_111', 'fg_sg_112', 'fg_sg_113', 'fg_sg_117', 'fg_sg_118', 'fg_sg_120', 'fg_sg_125', 'fg_sg_126', 'fg_sg_128', 'fg_sg_130', 'fg_sg_131', 'fg_sg_133', 'fg_sg_134', 'fg_sg_136', 'fg_sg_139', 'fg_sg_141', 'fg_sg_142', 'fg_sg_143', 'fg_sg_146', 'fg_sg_147', 'fg_sg_148', 'fg_sg_149', 'fg_sg_150', 'fg_sg_151', 'fg_sg_153', 'fg_sg_154', 'fg_sg_155', 'fg_sg_157', 'fg_sg_159', 'fg_sg_160', 'fg_sg_161', 'fg_sg_162', 'fg_sg_164', 'fg_sg_165', 'fg_sg_166', 'fg_sg_167', 'fg_sg_168', 'fg_sg_169', 'fg_sg_170', 'fg_sg_171', 'fg_sg_172', 'fg_sg_173', 'fg_sg_174', 'fg_sg_176', 'fg_sg_177', 'fg_sg_179', 'fg_sg_181', 'fg_sg_182', 'fg_sg_183', 'fg_sg_185', 'fg_sg_187', 'fg_sg_188', 'fg_sg_189', 'fg_sg_190', 'fg_sg_191', 'fg_sg_192', 'fg_sg_193', 'psv_starts', 'psv', 'salesday', 'presales', 'postsales', 'bridge_days', 'outlet', 'store_opening', 'weiberfasching_2022', 'faschingsfreitag_2022', 'faschingssamstag_2022', 'rosenmontag_2022', 'faschingdienstag_2022', 'weiberfasching', 'faschingsfreitag', 'faschingssamstag', 'pre_christmas_peaks', 'valentines_day', 'interaction', 'market_Montags', 'market_Dienstags', 'market_Mittwochs', 'market_Donnerstags', 'market_Freitags', 'market_Samstags', 'population', 'shop_area', 'dist_from_weiden', 'ratio', 'average', 'shop_count', 'weekday_special', 'weekend_special', 'x_coord', 'y_coord', 'dayofmonth', 'isoweek', 'month', 'dayofyear', 'dayofseason', 'season_month']

2025-06-06 06:57:49,206 - main.py - INFO - 137 - Successfully trained xgb9 xgboost for month (2025, 4) training data to: 2025-03-7

2025-06-06 06:57:49,206 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:57:50,128 - prediction_task.py - DEBUG - 31 - test data not found for 29 Kelheim II in period (2025, 4)

2025-06-06 06:57:53,051 - prediction_task.py - DEBUG - 31 - test data not found for 96 Hof in period (2025, 4)

2025-06-06 06:57:59,473 - main.py - INFO - 145 - Successfully predicted with xgb9 xgboost for month (2025, 4)

2025-06-06 06:57:59,473 - main.py - INFO - 137 - Successfully trained agp agp for month (2025, 4) training data to: 2025-03-7

2025-06-06 06:57:59,473 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:57:59,526 - prediction_task.py - DEBUG - 31 - test data not found for 29 Kelheim II in period (2025, 4)

2025-06-06 06:57:59,678 - prediction_task.py - DEBUG - 31 - test data not found for 96 Hof in period (2025, 4)

2025-06-06 06:58:00,281 - main.py - INFO - 145 - Successfully predicted with agp agp for month (2025, 4)

2025-06-06 06:58:00,281 - algorithm.py - DEBUG - 72 - start training with xgboost...

2025-06-06 06:58:00,455 - algorithm.py - DEBUG - 78 - shape: (96946, 279)  start: 2022-05-02 00:00:00  end: 2025-04-05 00:00:00 

2025-06-06 06:58:13,221 - algorithm.py - INFO - 122 - parameters {'objective': 'reg:squarederror', 'base_score': None, 'booster': None, 'callbacks': None, 'colsample_bylevel': None, 'colsample_bynode': None, 'colsample_bytree': 0.8, 'device': None, 'early_stopping_rounds': None, 'enable_categorical': True, 'eval_metric': <function mean_squared_error at 0x7b743bfeec10>, 'feature_types': None, 'gamma': None, 'grow_policy': None, 'importance_type': None, 'interaction_constraints': None, 'learning_rate': 0.01, 'max_bin': None, 'max_cat_threshold': None, 'max_cat_to_onehot': None, 'max_delta_step': None, 'max_depth': 7, 'max_leaves': None, 'min_child_weight': None, 'missing': nan, 'monotone_constraints': None, 'multi_strategy': None, 'n_estimators': 1250, 'n_jobs': -1, 'num_parallel_tree': None, 'random_state': 42, 'reg_alpha': 0.05, 'reg_lambda': 1.0, 'sampling_method': None, 'scale_pos_weight': None, 'subsample': 0.8, 'tree_method': 'hist', 'validate_parameters': None, 'verbosity': None} 

2025-06-06 06:58:13,221 - algorithm.py - INFO - 130 - parameters:
{   'colsample_bytree': 0.8,
    'enable_categorical': True,
    'eval_metric': <function mean_squared_error at 0x7b743bfeec10>,
    'learning_rate': 0.01,
    'max_depth': 7,
    'missing': nan,
    'n_estimators': 1250,
    'n_jobs': -1,
    'objective': 'reg:squarederror',
    'random_state': 42,
    'reg_alpha': 0.05,
    'reg_lambda': 1.0,
    'subsample': 0.8,
    'tree_method': 'hist'}

2025-06-06 06:58:13,222 - algorithm.py - INFO - 131 - indep vars:
['ladenvkpmean', 'ladenvkpmin', 'ladenvkpmax', 'ladenvkpstd', 'fg_bl_BW', 'fg_bl_BY', 'fg_bl_HE', 'fg_bl_NW', 'fg_bl_RP', 'weekdayname_Monday', 'weekdayname_Tuesday', 'weekdayname_Wednesday', 'weekdayname_Thursday', 'weekdayname_Friday', 'weekdayname_Saturday', 'isoweek_1', 'isoweek_2', 'isoweek_3', 'isoweek_4', 'isoweek_5', 'isoweek_6', 'isoweek_7', 'isoweek_8', 'isoweek_9', 'isoweek_10', 'isoweek_11', 'isoweek_12', 'isoweek_13', 'isoweek_14', 'isoweek_15', 'isoweek_16', 'isoweek_17', 'isoweek_18', 'isoweek_19', 'isoweek_20', 'isoweek_21', 'isoweek_22', 'isoweek_23', 'isoweek_24', 'isoweek_25', 'isoweek_26', 'isoweek_27', 'isoweek_28', 'isoweek_29', 'isoweek_30', 'isoweek_31', 'isoweek_32', 'isoweek_33', 'isoweek_34', 'isoweek_35', 'isoweek_36', 'isoweek_37', 'isoweek_38', 'isoweek_39', 'isoweek_40', 'isoweek_41', 'isoweek_42', 'isoweek_43', 'isoweek_44', 'isoweek_45', 'isoweek_46', 'isoweek_47', 'isoweek_48', 'isoweek_49', 'isoweek_50', 'isoweek_51', 'isoweek_52', 'month_1', 'month_2', 'month_3', 'month_4', 'month_5', 'month_6', 'month_7', 'month_8', 'month_9', 'month_10', 'month_11', 'month_12', 'year_2022', 'year_2023', 'year_2024', 'fg_sg_1', 'fg_sg_2', 'fg_sg_3', 'fg_sg_9', 'fg_sg_19', 'fg_sg_21', 'fg_sg_24', 'fg_sg_26', 'fg_sg_27', 'fg_sg_28', 'fg_sg_29', 'fg_sg_31', 'fg_sg_34', 'fg_sg_40', 'fg_sg_41', 'fg_sg_43', 'fg_sg_44', 'fg_sg_52', 'fg_sg_55', 'fg_sg_57', 'fg_sg_58', 'fg_sg_61', 'fg_sg_62', 'fg_sg_63', 'fg_sg_64', 'fg_sg_65', 'fg_sg_66', 'fg_sg_68', 'fg_sg_69', 'fg_sg_71', 'fg_sg_73', 'fg_sg_74', 'fg_sg_76', 'fg_sg_77', 'fg_sg_80', 'fg_sg_81', 'fg_sg_82', 'fg_sg_83', 'fg_sg_85', 'fg_sg_88', 'fg_sg_89', 'fg_sg_91', 'fg_sg_92', 'fg_sg_96', 'fg_sg_97', 'fg_sg_99', 'fg_sg_101', 'fg_sg_103', 'fg_sg_104', 'fg_sg_105', 'fg_sg_107', 'fg_sg_108', 'fg_sg_109', 'fg_sg_110', 'fg_sg_111', 'fg_sg_112', 'fg_sg_113', 'fg_sg_117', 'fg_sg_118', 'fg_sg_120', 'fg_sg_125', 'fg_sg_126', 'fg_sg_128', 'fg_sg_130', 'fg_sg_131', 'fg_sg_133', 'fg_sg_134', 'fg_sg_136', 'fg_sg_139', 'fg_sg_141', 'fg_sg_142', 'fg_sg_143', 'fg_sg_146', 'fg_sg_147', 'fg_sg_148', 'fg_sg_149', 'fg_sg_150', 'fg_sg_151', 'fg_sg_153', 'fg_sg_154', 'fg_sg_155', 'fg_sg_157', 'fg_sg_159', 'fg_sg_160', 'fg_sg_161', 'fg_sg_162', 'fg_sg_164', 'fg_sg_165', 'fg_sg_166', 'fg_sg_167', 'fg_sg_168', 'fg_sg_169', 'fg_sg_170', 'fg_sg_171', 'fg_sg_172', 'fg_sg_173', 'fg_sg_174', 'fg_sg_176', 'fg_sg_177', 'fg_sg_179', 'fg_sg_181', 'fg_sg_182', 'fg_sg_183', 'fg_sg_185', 'fg_sg_187', 'fg_sg_188', 'fg_sg_189', 'fg_sg_190', 'fg_sg_191', 'fg_sg_192', 'fg_sg_193', 'psv_starts', 'psv', 'salesday', 'presales', 'postsales', 'bridge_days', 'outlet', 'store_opening', 'weiberfasching_2022', 'faschingsfreitag_2022', 'faschingssamstag_2022', 'rosenmontag_2022', 'faschingdienstag_2022', 'weiberfasching', 'faschingsfreitag', 'faschingssamstag', 'pre_christmas_peaks', 'valentines_day', 'interaction', 'market_Montags', 'market_Dienstags', 'market_Mittwochs', 'market_Donnerstags', 'market_Freitags', 'market_Samstags', 'population', 'shop_area', 'dist_from_weiden', 'ratio', 'average', 'shop_count', 'weekday_special', 'weekend_special', 'x_coord', 'y_coord', 'dayofmonth', 'isoweek', 'month', 'dayofyear', 'dayofseason', 'season_month']

2025-06-06 06:58:13,225 - main.py - INFO - 137 - Successfully trained xgb9 xgboost for month (2025, 5) training data to: 2025-04-7

2025-06-06 06:58:13,225 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:58:14,140 - prediction_task.py - DEBUG - 31 - test data not found for 29 Kelheim II in period (2025, 5)

2025-06-06 06:58:15,158 - prediction_task.py - DEBUG - 31 - test data not found for 62 Heidenheim in period (2025, 5)

2025-06-06 06:58:16,979 - prediction_task.py - DEBUG - 31 - test data not found for 96 Hof in period (2025, 5)

2025-06-06 06:58:23,628 - main.py - INFO - 145 - Successfully predicted with xgb9 xgboost for month (2025, 5)

2025-06-06 06:58:23,628 - main.py - INFO - 137 - Successfully trained agp agp for month (2025, 5) training data to: 2025-04-7

2025-06-06 06:58:23,628 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:58:23,680 - prediction_task.py - DEBUG - 31 - test data not found for 29 Kelheim II in period (2025, 5)

2025-06-06 06:58:23,733 - prediction_task.py - DEBUG - 31 - test data not found for 62 Heidenheim in period (2025, 5)

2025-06-06 06:58:23,831 - prediction_task.py - DEBUG - 31 - test data not found for 96 Hof in period (2025, 5)

2025-06-06 06:58:24,175 - main.py - INFO - 145 - Successfully predicted with agp agp for month (2025, 5)

2025-06-06 06:58:24,175 - algorithm.py - DEBUG - 72 - start training with xgboost...

2025-06-06 06:58:24,356 - algorithm.py - DEBUG - 78 - shape: (96946, 279)  start: 2022-05-02 00:00:00  end: 2025-04-05 00:00:00 

2025-06-06 06:58:37,346 - algorithm.py - INFO - 122 - parameters {'objective': 'reg:squarederror', 'base_score': None, 'booster': None, 'callbacks': None, 'colsample_bylevel': None, 'colsample_bynode': None, 'colsample_bytree': 0.8, 'device': None, 'early_stopping_rounds': None, 'enable_categorical': True, 'eval_metric': <function mean_squared_error at 0x7b743bfeec10>, 'feature_types': None, 'gamma': None, 'grow_policy': None, 'importance_type': None, 'interaction_constraints': None, 'learning_rate': 0.01, 'max_bin': None, 'max_cat_threshold': None, 'max_cat_to_onehot': None, 'max_delta_step': None, 'max_depth': 7, 'max_leaves': None, 'min_child_weight': None, 'missing': nan, 'monotone_constraints': None, 'multi_strategy': None, 'n_estimators': 1250, 'n_jobs': -1, 'num_parallel_tree': None, 'random_state': 42, 'reg_alpha': 0.05, 'reg_lambda': 1.0, 'sampling_method': None, 'scale_pos_weight': None, 'subsample': 0.8, 'tree_method': 'hist', 'validate_parameters': None, 'verbosity': None} 

2025-06-06 06:58:37,346 - algorithm.py - INFO - 130 - parameters:
{   'colsample_bytree': 0.8,
    'enable_categorical': True,
    'eval_metric': <function mean_squared_error at 0x7b743bfeec10>,
    'learning_rate': 0.01,
    'max_depth': 7,
    'missing': nan,
    'n_estimators': 1250,
    'n_jobs': -1,
    'objective': 'reg:squarederror',
    'random_state': 42,
    'reg_alpha': 0.05,
    'reg_lambda': 1.0,
    'subsample': 0.8,
    'tree_method': 'hist'}

2025-06-06 06:58:37,346 - algorithm.py - INFO - 131 - indep vars:
['ladenvkpmean', 'ladenvkpmin', 'ladenvkpmax', 'ladenvkpstd', 'fg_bl_BW', 'fg_bl_BY', 'fg_bl_HE', 'fg_bl_NW', 'fg_bl_RP', 'weekdayname_Monday', 'weekdayname_Tuesday', 'weekdayname_Wednesday', 'weekdayname_Thursday', 'weekdayname_Friday', 'weekdayname_Saturday', 'isoweek_1', 'isoweek_2', 'isoweek_3', 'isoweek_4', 'isoweek_5', 'isoweek_6', 'isoweek_7', 'isoweek_8', 'isoweek_9', 'isoweek_10', 'isoweek_11', 'isoweek_12', 'isoweek_13', 'isoweek_14', 'isoweek_15', 'isoweek_16', 'isoweek_17', 'isoweek_18', 'isoweek_19', 'isoweek_20', 'isoweek_21', 'isoweek_22', 'isoweek_23', 'isoweek_24', 'isoweek_25', 'isoweek_26', 'isoweek_27', 'isoweek_28', 'isoweek_29', 'isoweek_30', 'isoweek_31', 'isoweek_32', 'isoweek_33', 'isoweek_34', 'isoweek_35', 'isoweek_36', 'isoweek_37', 'isoweek_38', 'isoweek_39', 'isoweek_40', 'isoweek_41', 'isoweek_42', 'isoweek_43', 'isoweek_44', 'isoweek_45', 'isoweek_46', 'isoweek_47', 'isoweek_48', 'isoweek_49', 'isoweek_50', 'isoweek_51', 'isoweek_52', 'month_1', 'month_2', 'month_3', 'month_4', 'month_5', 'month_6', 'month_7', 'month_8', 'month_9', 'month_10', 'month_11', 'month_12', 'year_2022', 'year_2023', 'year_2024', 'fg_sg_1', 'fg_sg_2', 'fg_sg_3', 'fg_sg_9', 'fg_sg_19', 'fg_sg_21', 'fg_sg_24', 'fg_sg_26', 'fg_sg_27', 'fg_sg_28', 'fg_sg_29', 'fg_sg_31', 'fg_sg_34', 'fg_sg_40', 'fg_sg_41', 'fg_sg_43', 'fg_sg_44', 'fg_sg_52', 'fg_sg_55', 'fg_sg_57', 'fg_sg_58', 'fg_sg_61', 'fg_sg_62', 'fg_sg_63', 'fg_sg_64', 'fg_sg_65', 'fg_sg_66', 'fg_sg_68', 'fg_sg_69', 'fg_sg_71', 'fg_sg_73', 'fg_sg_74', 'fg_sg_76', 'fg_sg_77', 'fg_sg_80', 'fg_sg_81', 'fg_sg_82', 'fg_sg_83', 'fg_sg_85', 'fg_sg_88', 'fg_sg_89', 'fg_sg_91', 'fg_sg_92', 'fg_sg_96', 'fg_sg_97', 'fg_sg_99', 'fg_sg_101', 'fg_sg_103', 'fg_sg_104', 'fg_sg_105', 'fg_sg_107', 'fg_sg_108', 'fg_sg_109', 'fg_sg_110', 'fg_sg_111', 'fg_sg_112', 'fg_sg_113', 'fg_sg_117', 'fg_sg_118', 'fg_sg_120', 'fg_sg_125', 'fg_sg_126', 'fg_sg_128', 'fg_sg_130', 'fg_sg_131', 'fg_sg_133', 'fg_sg_134', 'fg_sg_136', 'fg_sg_139', 'fg_sg_141', 'fg_sg_142', 'fg_sg_143', 'fg_sg_146', 'fg_sg_147', 'fg_sg_148', 'fg_sg_149', 'fg_sg_150', 'fg_sg_151', 'fg_sg_153', 'fg_sg_154', 'fg_sg_155', 'fg_sg_157', 'fg_sg_159', 'fg_sg_160', 'fg_sg_161', 'fg_sg_162', 'fg_sg_164', 'fg_sg_165', 'fg_sg_166', 'fg_sg_167', 'fg_sg_168', 'fg_sg_169', 'fg_sg_170', 'fg_sg_171', 'fg_sg_172', 'fg_sg_173', 'fg_sg_174', 'fg_sg_176', 'fg_sg_177', 'fg_sg_179', 'fg_sg_181', 'fg_sg_182', 'fg_sg_183', 'fg_sg_185', 'fg_sg_187', 'fg_sg_188', 'fg_sg_189', 'fg_sg_190', 'fg_sg_191', 'fg_sg_192', 'fg_sg_193', 'psv_starts', 'psv', 'salesday', 'presales', 'postsales', 'bridge_days', 'outlet', 'store_opening', 'weiberfasching_2022', 'faschingsfreitag_2022', 'faschingssamstag_2022', 'rosenmontag_2022', 'faschingdienstag_2022', 'weiberfasching', 'faschingsfreitag', 'faschingssamstag', 'pre_christmas_peaks', 'valentines_day', 'interaction', 'market_Montags', 'market_Dienstags', 'market_Mittwochs', 'market_Donnerstags', 'market_Freitags', 'market_Samstags', 'population', 'shop_area', 'dist_from_weiden', 'ratio', 'average', 'shop_count', 'weekday_special', 'weekend_special', 'x_coord', 'y_coord', 'dayofmonth', 'isoweek', 'month', 'dayofyear', 'dayofseason', 'season_month']

2025-06-06 06:58:37,349 - main.py - INFO - 137 - Successfully trained xgb9 xgboost for month (2025, 6) training data to: 2025-04-7

2025-06-06 06:58:37,350 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:58:38,267 - prediction_task.py - DEBUG - 31 - test data not found for 29 Kelheim II in period (2025, 6)

2025-06-06 06:58:41,253 - prediction_task.py - DEBUG - 31 - test data not found for 96 Hof in period (2025, 6)

2025-06-06 06:58:47,552 - main.py - INFO - 145 - Successfully predicted with xgb9 xgboost for month (2025, 6)

2025-06-06 06:58:47,552 - main.py - INFO - 137 - Successfully trained agp agp for month (2025, 6) training data to: 2025-04-7

2025-06-06 06:58:47,552 - prediction_task.py - DEBUG - 21 - predictions starting...

2025-06-06 06:58:47,606 - prediction_task.py - DEBUG - 31 - test data not found for 29 Kelheim II in period (2025, 6)

2025-06-06 06:58:47,759 - prediction_task.py - DEBUG - 31 - test data not found for 96 Hof in period (2025, 6)

2025-06-06 06:58:48,383 - main.py - INFO - 145 - Successfully predicted with agp agp for month (2025, 6)

2025-06-06 06:58:48,384 - functions.py - INFO - 425 - NB: using calibrate2 to meet AGP monthly totals

2025-06-06 06:59:18,409 - functions.py - INFO - 87 - No duplicates found in predictions.

2025-06-06 06:59:55,681 - functions.py - DEBUG - 207 - metric: mae 

2025-06-06 07:00:03,441 - functions.py - DEBUG - 207 - metric: mape 

2025-06-06 07:00:11,155 - functions.py - DEBUG - 207 - metric: jensen_shannon 

2025-06-06 07:00:18,806 - functions.py - DEBUG - 207 - metric: kullback_leibler 

2025-06-06 07:00:28,010 - conversion_functions.py - DEBUG - 168 - business hours file: (1332, 9)  Index(['fg_sg', 'fg_bez', 'Bundesland', 'year', 'month', 'weekday_hours', 'saturday_hours', 'weekday_hours_extra', 'saturday_hours_extra'], dtype='object') 

2025-06-06 07:00:28,273 - conversion_functions.py - DEBUG - 168 - business hours file: (2664, 9)  Index(['fg_sg', 'fg_bez', 'Bundesland', 'year', 'month', 'weekday_hours', 'saturday_hours', 'weekday_hours_extra', 'saturday_hours_extra'], dtype='object') 

2025-06-06 07:00:28,531 - conversion_functions.py - DEBUG - 168 - business hours file: (3996, 9)  Index(['fg_sg', 'fg_bez', 'Bundesland', 'year', 'month', 'weekday_hours', 'saturday_hours', 'weekday_hours_extra', 'saturday_hours_extra'], dtype='object') 

2025-06-06 07:00:28,640 - conversion_functions.py - DEBUG - 168 - business hours file: (4662, 10)  Index(['fg_sg', 'fg_bez', 'Bundesland', 'year', 'month', 'weekday_hours', 'saturday_hours', 'weekday_hours_extra', 'saturday_hours_extra', 'season'], dtype='object')