forked from h2oai/driverlessai-recipes
-
Notifications
You must be signed in to change notification settings - Fork 1
/
parallel_prophet_forecast.py
586 lines (483 loc) · 23 KB
/
parallel_prophet_forecast.py
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138
139
140
141
142
143
144
145
146
147
148
149
150
151
152
153
154
155
156
157
158
159
160
161
162
163
164
165
166
167
168
169
170
171
172
173
174
175
176
177
178
179
180
181
182
183
184
185
186
187
188
189
190
191
192
193
194
195
196
197
198
199
200
201
202
203
204
205
206
207
208
209
210
211
212
213
214
215
216
217
218
219
220
221
222
223
224
225
226
227
228
229
230
231
232
233
234
235
236
237
238
239
240
241
242
243
244
245
246
247
248
249
250
251
252
253
254
255
256
257
258
259
260
261
262
263
264
265
266
267
268
269
270
271
272
273
274
275
276
277
278
279
280
281
282
283
284
285
286
287
288
289
290
291
292
293
294
295
296
297
298
299
300
301
302
303
304
305
306
307
308
309
310
311
312
313
314
315
316
317
318
319
320
321
322
323
324
325
326
327
328
329
330
331
332
333
334
335
336
337
338
339
340
341
342
343
344
345
346
347
348
349
350
351
352
353
354
355
356
357
358
359
360
361
362
363
364
365
366
367
368
369
370
371
372
373
374
375
376
377
378
379
380
381
382
383
384
385
386
387
388
389
390
391
392
393
394
395
396
397
398
399
400
401
402
403
404
405
406
407
408
409
410
411
412
413
414
415
416
417
418
419
420
421
422
423
424
425
426
427
428
429
430
431
432
433
434
435
436
437
438
439
440
441
442
443
444
445
446
447
448
449
450
451
452
453
454
455
456
457
458
459
460
461
462
463
464
465
466
467
468
469
470
471
472
473
474
475
476
477
478
479
480
481
482
483
484
485
486
487
488
489
490
491
492
493
494
495
496
497
498
499
500
501
502
503
504
505
506
507
508
509
510
511
512
513
514
515
516
517
518
519
520
521
522
523
524
525
526
527
528
529
530
531
532
533
534
535
536
537
538
539
540
541
542
543
544
545
546
547
548
549
550
551
552
553
554
555
556
557
558
559
560
561
562
563
564
565
566
567
568
569
570
571
572
573
574
575
576
577
578
579
580
581
582
583
584
585
586
"""Parallel FB Prophet transformer is a time series transformer that predicts target using FBProphet models."""
"""
This transformer fits one FBProphet model per time group and therefore may take time. Before using this transformer
we suggest you check FBProphet prediction significance by running an experiment with
parallel_prophet_forecast_using_individual_groups. Then enable parallel prophet forecast to get even better predictions."""
"""
In this implementation, Time Group Models are fitted in parallel
The recipe outputs 2 predictors:
- The first one is trained on the average of the target over the time column
- The second one is trained on TopN groups, where TopN is defined by recipe_dict in config.toml.
These groups are those with the highest number of data points.
If TopN is not defined in config.toml set using the toml override in the expert settings,
TopN group defaults to 1. Setting TopN is done with recipe_dict="{'prophet_top_n': 200}"
You may also want to modify the parameters explored line 99 to 103 to fit your needs.
"""
import importlib
from h2oaicore.transformer_utils import CustomTimeSeriesTransformer
from h2oaicore.systemutils import (
small_job_pool, save_obj, load_obj, remove, max_threads, config,
user_dir)
import datatable as dt
import numpy as np
import os
import uuid
import shutil
import random
import importlib
import pandas as pd
from sklearn.preprocessing import LabelEncoder, MinMaxScaler
from h2oaicore.systemutils import make_experiment_logger, loggerinfo, loggerwarning
from datetime import datetime
# For more information about FB prophet please visit :
# This parallel implementation is faster than the serial implementation
# available in the repository.
# Standard implementation is therefore disabled.
class suppress_stdout_stderr(object):
def __init__(self):
self.null_fds = [os.open(os.devnull, os.O_RDWR) for x in range(2)]
self.save_fds = [os.dup(1), os.dup(2)]
def __enter__(self):
os.dup2(self.null_fds[0], 1)
os.dup2(self.null_fds[1], 2)
def __exit__(self, *_):
os.dup2(self.save_fds[0], 1)
os.dup2(self.save_fds[1], 2)
for fd in self.null_fds + self.save_fds:
os.close(fd)
# Parallel implementation requires methods being called from different processes
# Global methods support this feature
# We use global methods as a wrapper for member methods of the transformer
def MyParallelProphetTransformer_fit_async(*args, **kwargs):
return MyParallelProphetTransformer._fit_async(*args, **kwargs)
def MyParallelProphetTransformer_transform_async(*args, **kwargs):
return MyParallelProphetTransformer._transform_async(*args, **kwargs)
class MyParallelProphetTransformer(CustomTimeSeriesTransformer):
"""Implementation of the FB Prophet transformer using a pool of processes to fit models in parallel"""
_is_reproducible = True
_binary = False
_multiclass = False
_unsupervised = False # uses target
_uses_target = True # uses target
# some package dependencies are best sequential to overcome known issues
froms3 = True
if froms3:
_root_path = "https://s3.amazonaws.com/artifacts.h2o.ai/deps/dai/recipes"
_suffix = "-cp38-cp38-linux_x86_64.whl"
_modules_needed_by_name = [
'%s/setuptools_git-1.2%s' % (_root_path, _suffix),
'%s/LunarCalendar-0.0.9%s' % (_root_path, _suffix),
'%s/ephem-3.7.7.1%s' % (_root_path, _suffix),
'%s/cmdstanpy-0.9.5%s' % (_root_path, _suffix),
'%s/pystan-2.19.1.1%s' % (_root_path, _suffix),
'%s/httpstan-4.5.0%s' % (_root_path, _suffix),
'%s/fbprophet-0.7.1%s' % (_root_path, _suffix),
]
else:
_modules_needed_by_name = ['holidays==0.11.1', 'convertdate', 'lunarcalendar', 'pystan==2.19.1.1',
'fbprophet==0.7.1']
_included_model_classes = None # ["gblinear"] for strong trends - can extrapolate
_testing_can_skip_failure = False # ensure tested as if shouldn't fail
def __init__(
self,
country_holidays=None,
monthly_seasonality=False,
**kwargs
):
super().__init__(**kwargs)
self.country_holidays = country_holidays
self.monthly_seasonality = monthly_seasonality
@property
def display_name(self):
name = "FBProphet"
if self.country_holidays is not None:
name += "_Holiday_{}".format(self.country_holidays)
if self.monthly_seasonality:
name += "_Month"
return name
@staticmethod
def get_default_properties():
return dict(col_type="time_column", min_cols=1, max_cols=1, relative_importance=1)
@staticmethod
def get_parameter_choices():
return {
"country_holidays": [None, "US"],
"monthly_seasonality": [False, True],
}
@staticmethod
def acceptance_test_timeout():
return 30 # allow for 20 minutes to do acceptance test
@staticmethod
def is_enabled():
return False
@staticmethod
def _fit_async(X_path, grp_hash, tmp_folder, params):
"""
Fits a FB Prophet model for a particular time group
:param X_path: Path to the data used to fit the FB Prophet model
:param grp_hash: Time group identifier
:return: time group identifier and path to the pickled model
"""
np.random.seed(1234)
random.seed(1234)
X = load_obj(X_path)
# Commented for performance, uncomment for debug
# print("prophet - fitting on data of shape: %s for group: %s" % (str(X.shape), grp_hash))
if X.shape[0] < 20:
# print("prophet - small data work-around for group: %s" % grp_hash)
return grp_hash, None
# Import FB Prophet package
mod = importlib.import_module('fbprophet')
Prophet = getattr(mod, "Prophet")
model = Prophet(yearly_seasonality=True, weekly_seasonality=True, daily_seasonality=True)
if params["country_holidays"] is not None:
model.add_country_holidays(country_name=params["country_holidays"])
if params["monthly_seasonality"]:
model.add_seasonality(name='monthly', period=30.5, fourier_order=5)
with suppress_stdout_stderr():
model.fit(X[['ds', 'y']])
model_path = os.path.join(tmp_folder, "fbprophet_model" + str(uuid.uuid4()))
save_obj(model, model_path)
remove(X_path) # remove to indicate success
return grp_hash, model_path
@staticmethod
def _get_n_jobs(logger, **kwargs):
if 'n_jobs_prophet' in config.recipe_dict:
return min(config.recipe_dict['n_jobs_prophet'], max_threads())
try:
if config.fixed_num_folds <= 0:
n_jobs = max(1, int(int(max_threads() / min(config.num_folds, kwargs['max_workers']))))
else:
n_jobs = max(1, int(
int(max_threads() / min(config.fixed_num_folds, config.num_folds, kwargs['max_workers']))))
except KeyError:
loggerinfo(logger, "Prophet No Max Worker in kwargs. Set n_jobs to 1")
n_jobs = 1
return n_jobs if n_jobs > 1 else 1
def _clean_tmp_folder(self, logger, tmp_folder):
try:
shutil.rmtree(tmp_folder)
loggerinfo(logger, "Prophet cleaned up temporary file folder.")
except:
loggerwarning(logger, "Prophet could not delete the temporary file folder.")
def _create_tmp_folder(self, logger):
# Create a temp folder to store files used during multi processing experiment
# This temp folder will be removed at the end of the process
# Set the default value without context available (required to pass acceptance test
tmp_folder = os.path.join(user_dir(), "%s_prophet_folder" % uuid.uuid4())
# Make a real tmp folder when experiment is available
if self.context and self.context.experiment_id:
tmp_folder = os.path.join(self.context.experiment_tmp_dir, "%s_prophet_folder" % uuid.uuid4())
# Now let's try to create that folder
try:
os.mkdir(tmp_folder)
except PermissionError:
# This not occur so log a warning
loggerwarning(logger, "Prophet was denied temp folder creation rights")
tmp_folder = os.path.join(user_dir(), "%s_prophet_folder" % uuid.uuid4())
os.mkdir(tmp_folder)
except FileExistsError:
# We should never be here since temp dir name is expected to be unique
loggerwarning(logger, "Prophet temp folder already exists")
tmp_folder = os.path.join(self.context.experiment_tmp_dir, "%s_prophet_folder" % uuid.uuid4())
os.mkdir(tmp_folder)
except:
# Revert to temporary file path
tmp_folder = os.path.join(user_dir(), "%s_prophet_folder" % uuid.uuid4())
os.mkdir(tmp_folder)
loggerinfo(logger, "Prophet temp folder {}".format(tmp_folder))
return tmp_folder
def fit(self, X: dt.Frame, y: np.array = None, **kwargs):
"""
Fits FB Prophet models (1 per time group) using historical target values contained in y
Model fitting is distributed over a pool of processes and uses file storage to share the data with workers
:param X: Datatable frame containing the features
:param y: numpy array containing the historical values of the target
:return: self
"""
# Get the logger if it exists
logger = None
if self.context and self.context.experiment_id:
logger = make_experiment_logger(
experiment_id=self.context.experiment_id,
tmp_dir=self.context.tmp_dir,
experiment_tmp_dir=self.context.experiment_tmp_dir,
username=self.context.username,
)
try:
# Add value of prophet_top_n in recipe_dict variable inside of config.toml file
# eg1: recipe_dict="{'prophet_top_n': 200}"
# eg2: recipe_dict="{'prophet_top_n':10}"
self.top_n = config.recipe_dict['prophet_top_n']
except KeyError:
self.top_n = 50
loggerinfo(logger, f"Prophet will use {self.top_n} groups as well as average target data.")
tmp_folder = self._create_tmp_folder(logger)
n_jobs = self._get_n_jobs(logger, **kwargs)
# Reduce X to TGC
tgc_wo_time = list(np.setdiff1d(self.tgc, self.time_column))
X = X[:, self.tgc].to_pandas()
# Fill NaNs or None
X = X.replace([None, np.nan], 0)
# Add target, Label encoder is only used for Classif. which we don't support...
if self.labels is not None:
y = LabelEncoder().fit(self.labels).transform(y)
X['y'] = np.array(y)
self.nan_value = X['y'].mean()
# Change date feature name to match Prophet requirements
X.rename(columns={self.time_column: "ds"}, inplace=True)
# Create a general scale now that will be used for unknown groups at prediction time
# Can we do smarter than that ?
self.general_scaler = MinMaxScaler().fit(X[['y', 'ds']].groupby('ds').median().values)
# Go through groups and standard scale them
if len(tgc_wo_time) > 0:
X_groups = X.groupby(tgc_wo_time)
else:
X_groups = [([None], X)]
self.scalers = {}
scaled_ys = []
print(f'{datetime.now()} Start of group scaling')
for key, X_grp in X_groups:
# Create dict key to store the min max scaler
grp_hash = self.get_hash(key)
# Scale target for current group
self.scalers[grp_hash] = MinMaxScaler()
y_skl = self.scalers[grp_hash].fit_transform(X_grp[['y']].values)
# Put back in a DataFrame to keep track of original index
y_skl_df = pd.DataFrame(y_skl, columns=['y'])
# (0, 'A') (1, 4) (100, 1) (100, 1)
# print(grp_hash, X_grp.shape, y_skl.shape, y_skl_df.shape)
y_skl_df.index = X_grp.index
scaled_ys.append(y_skl_df)
print(f'{datetime.now()} End of group scaling')
# Set target back in original frame but keep original
X['y_orig'] = X['y']
X['y'] = pd.concat(tuple(scaled_ys), axis=0)
# Now Average groups
X_avg = X[['ds', 'y']].groupby('ds').mean().reset_index()
# Send that to Prophet
params = {
"country_holidays": self.country_holidays,
"monthly_seasonality": self.monthly_seasonality
}
mod = importlib.import_module('fbprophet')
Prophet = getattr(mod, "Prophet")
self.model = Prophet(yearly_seasonality=True, weekly_seasonality=True, daily_seasonality=True)
if params["country_holidays"] is not None:
self.model.add_country_holidays(country_name=params["country_holidays"])
if params["monthly_seasonality"]:
self.model.add_seasonality(name='monthly', period=30.5, fourier_order=5)
with suppress_stdout_stderr():
self.model.fit(X[['ds', 'y']])
print(f'{datetime.now()} General Model Fitted')
self.top_groups = None
if len(tgc_wo_time) > 0:
if self.top_n > 0:
top_n_grp = X.groupby(tgc_wo_time).size().sort_values().reset_index()[tgc_wo_time].iloc[
-self.top_n:].values
self.top_groups = [
'_'.join(map(str, key))
for key in top_n_grp
]
if self.top_groups:
self.grp_models = {}
self.priors = {}
# Prepare for multi processing
num_tasks = len(self.top_groups)
def processor(out, res):
out[res[0]] = res[1]
pool_to_use = small_job_pool
loggerinfo(logger, f"Prophet will use {n_jobs} workers for fitting.")
loggerinfo(logger, "Prophet parameters holidays {} / monthly {}".format(self.country_holidays,
self.monthly_seasonality))
pool = pool_to_use(
logger=None, processor=processor,
num_tasks=num_tasks, max_workers=n_jobs
)
#
# Fit 1 FB Prophet model per time group columns
nb_groups = len(X_groups)
# Put y back to its unscaled value for top groups
X['y'] = X['y_orig']
for _i_g, (key, X) in enumerate(X_groups):
# Just log where we are in the fitting process
if (_i_g + 1) % max(1, nb_groups // 20) == 0:
loggerinfo(logger, "FB Prophet : %d%% of groups fitted" % (100 * (_i_g + 1) // nb_groups))
X_path = os.path.join(tmp_folder, "fbprophet_X" + str(uuid.uuid4()))
X = X.reset_index(drop=True)
save_obj(X, X_path)
grp_hash = self.get_hash(key)
if grp_hash not in self.top_groups:
continue
self.priors[grp_hash] = X['y'].mean()
params = {
"country_holidays": self.country_holidays,
"monthly_seasonality": self.monthly_seasonality
}
args = (X_path, grp_hash, tmp_folder, params)
kwargs = {}
pool.submit_tryget(None, MyParallelProphetTransformer_fit_async,
args=args, kwargs=kwargs, out=self.grp_models)
pool.finish()
for k, v in self.grp_models.items():
self.grp_models[k] = load_obj(v) if v is not None else None
remove(v)
self._clean_tmp_folder(logger, tmp_folder)
return self
@staticmethod
def _transform_async(model_path, X_path, nan_value, tmp_folder):
"""
Predicts target for a particular time group
:param model_path: path to the stored model
:param X_path: Path to the data used to fit the FB Prophet model
:param nan_value: Value of target prior, used when no fitted model has been found
:return: self
"""
model = load_obj(model_path)
XX_path = os.path.join(tmp_folder, "fbprophet_XX" + str(uuid.uuid4()))
X = load_obj(X_path)
# Facebook Prophet returns the predictions ordered by time
# So we should keep track of the time order for each group so that
# predictions are ordered the same as the imput frame
# Keep track of the order
order = np.argsort(pd.to_datetime(X["ds"]))
if model is not None:
# Run prophet
yhat = model.predict(X)['yhat'].values
XX = pd.DataFrame(yhat, columns=['yhat'])
else:
XX = pd.DataFrame(np.full((X.shape[0], 1), nan_value), columns=['yhat']) # invalid models
XX.index = X.index[order]
assert XX.shape[1] == 1
save_obj(XX, XX_path)
remove(model_path) # indicates success, no longer need
remove(X_path) # indicates success, no longer need
return XX_path
def transform(self, X: dt.Frame, **kwargs):
"""
Uses fitted models (1 per time group) to predict the target
:param X: Datatable Frame containing the features
:return: FB Prophet predictions
"""
# Get the logger if it exists
logger = None
if self.context and self.context.experiment_id:
logger = make_experiment_logger(
experiment_id=self.context.experiment_id,
tmp_dir=self.context.tmp_dir,
experiment_tmp_dir=self.context.experiment_tmp_dir
)
tmp_folder = self._create_tmp_folder(logger)
n_jobs = self._get_n_jobs(logger, **kwargs)
# Reduce X to TGC
tgc_wo_time = list(np.setdiff1d(self.tgc, self.time_column))
X = X[:, self.tgc].to_pandas()
# Fill NaNs or None
X = X.replace([None, np.nan], 0)
# Change date feature name to match Prophet requirements
X.rename(columns={self.time_column: "ds"}, inplace=True)
# Predict y using unique dates
X_time = X[['ds']].groupby('ds').first().reset_index()
with suppress_stdout_stderr():
y_avg = self.model.predict(X_time)[['ds', 'yhat']]
# Prophet transforms the date column to datetime so we need to transfrom that to merge back
X_time.sort_values('ds', inplace=True)
X_time['yhat'] = y_avg['yhat']
X_time.sort_index(inplace=True)
# Merge back into original frame on 'ds'
# pd.merge wipes the index ... so keep it to provide it again
indices = X.index
X = pd.merge(
left=X,
right=X_time[['ds', 'yhat']],
on='ds',
how='left'
)
X.index = indices
# Go through groups and recover the scaled target for knowed groups
if len(tgc_wo_time) > 0:
X_groups = X.groupby(tgc_wo_time)
else:
X_groups = [([None], X)]
inverted_ys = []
for key, X_grp in X_groups:
grp_hash = self.get_hash(key)
# Scale target for current group
if grp_hash in self.scalers.keys():
inverted_y = self.scalers[grp_hash].inverse_transform(X_grp[['yhat']])
else:
inverted_y = self.general_scaler.inverse_transform(X_grp[['yhat']])
# Put back in a DataFrame to keep track of original index
inverted_df = pd.DataFrame(inverted_y, columns=['yhat'])
inverted_df.index = X_grp.index
inverted_ys.append(inverted_df)
XX_general = pd.concat(tuple(inverted_ys), axis=0).sort_index()
if self.top_groups:
# Go though the groups and predict only top
XX_paths = []
model_paths = []
def processor(out, res):
out.append(res)
num_tasks = len(self.top_groups)
pool_to_use = small_job_pool
pool = pool_to_use(logger=None, processor=processor, num_tasks=num_tasks, max_workers=n_jobs)
nb_groups = len(X_groups)
for _i_g, (key, X_grp) in enumerate(X_groups):
# Just log where we are in the fitting process
if (_i_g + 1) % max(1, nb_groups // 20) == 0:
loggerinfo(logger, "FB Prophet : %d%% of groups predicted" % (100 * (_i_g + 1) // nb_groups))
# Create dict key to store the min max scaler
grp_hash = self.get_hash(key)
X_path = os.path.join(tmp_folder, "fbprophet_Xt" + str(uuid.uuid4()))
if grp_hash not in self.top_groups:
XX = pd.DataFrame(np.full((X_grp.shape[0], 1), np.nan), columns=['yhat']) # unseen groups
XX.index = X_grp.index
save_obj(XX, X_path)
XX_paths.append(X_path)
continue
if self.grp_models[grp_hash] is None:
XX = pd.DataFrame(np.full((X_grp.shape[0], 1), np.nan), columns=['yhat']) # unseen groups
XX.index = X_grp.index
save_obj(XX, X_path)
XX_paths.append(X_path)
continue
model = self.grp_models[grp_hash]
model_path = os.path.join(tmp_folder, "fbprophet_modelt" + str(uuid.uuid4()))
save_obj(model, model_path)
save_obj(X_grp, X_path)
model_paths.append(model_path)
args = (model_path, X_path, self.priors[grp_hash], tmp_folder)
kwargs = {}
pool.submit_tryget(None, MyParallelProphetTransformer_transform_async, args=args, kwargs=kwargs,
out=XX_paths)
pool.finish()
XX_top_groups = pd.concat((load_obj(XX_path) for XX_path in XX_paths), axis=0).sort_index()
for p in XX_paths + model_paths:
remove(p)
self._clean_tmp_folder(logger, tmp_folder)
features_df = pd.DataFrame()
features_df[self.display_name + '_GrpAvg'] = XX_general['yhat']
if self.top_groups:
features_df[self.display_name + f'_Top{self.top_n}Grp'] = XX_top_groups['yhat']
self._output_feature_names = list(features_df.columns)
self._feature_desc = list(features_df.columns)
return features_df
def get_hash(self, key):
# Create dict key to store the min max scaler
if isinstance(key, tuple):
key = list(key)
elif isinstance(key, list):
pass
else:
# Not tuple, not list
key = [key]
grp_hash = '_'.join(map(str, key))
return grp_hash
def fit_transform(self, X: dt.Frame, y: np.array = None, **kwargs):
"""
Fits the FB Prophet models (1 per time group) and outputs the corresponding predictions
:param X: Datatable Frame
:param y: Target to be used to fit FB Prophet models
:return: FB Prophet predictions
"""
return self.fit(X, y, **kwargs).transform(X, **kwargs)