gorold commited on
Commit
3406302
1 Parent(s): 59e3fce

remove metadata

Browse files
Files changed (1) hide show
  1. cloudops_tsf.py +1 -45
cloudops_tsf.py CHANGED
@@ -140,7 +140,6 @@ class CloudOpsTSFConfig(datasets.BuilderConfig):
140
  # load_dataset kwargs
141
  train_test: bool = field(default=True, init=False)
142
  pretrain: bool = field(default=False, init=False)
143
- _include_metadata: tuple[str, ...] = field(default_factory=tuple, init=False)
144
 
145
  # builder kwargs
146
  prediction_length: int = field(default=None)
@@ -158,25 +157,6 @@ class CloudOpsTSFConfig(datasets.BuilderConfig):
158
  feat_static_real_dim: int = field(default=0)
159
  past_feat_dynamic_real_dim: int = field(default=0)
160
 
161
- METADATA = [
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- "freq",
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- "prediction_length",
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- "stride",
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- "rolling_evaluations",
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- ]
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-
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- @property
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- def include_metadata(self) -> tuple[str, ...]:
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- return self._include_metadata
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-
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- @include_metadata.setter
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- def include_metadata(self, value: tuple[str, ...]):
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- assert all([v in self.METADATA for v in value]), (
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- f"Metadata: {value} is not supported, each item should be one of"
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- f" {self.METADATA}"
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- )
178
- self._include_metadata = value
179
-
180
  @cached_property
181
  def feat_static_cat_cardinalities(self) -> Optional[list[int]]:
182
  if FieldName.FEAT_STATIC_CAT not in self.optional_fields:
@@ -251,14 +231,6 @@ class CloudOpsTSF(datasets.ArrowBasedBuilder):
251
 
252
  features[ts_field] = sequence_feature(dtype, univar)
253
 
254
- for metadata in self.config.include_metadata:
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- if metadata == "freq":
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- features[metadata] = datasets.Value("string")
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- elif metadata in ("prediction_length", "stride", "rolling_evaluations"):
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- features[metadata] = datasets.Value("int32")
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- else:
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- raise ValueError(f"Invalid metadata: {metadata}")
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-
262
  features = datasets.Features(features)
263
 
264
  return datasets.DatasetInfo(
@@ -295,23 +267,7 @@ class CloudOpsTSF(datasets.ArrowBasedBuilder):
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  for batch in table.to_batches():
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  columns = batch.columns
297
  schema = batch.schema
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- if self.config.include_metadata:
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- freq = pa.array([self.config.freq] * len(batch))
300
- prediction_length = pa.array(
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- [self.config.prediction_length] * len(batch)
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- )
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- rolling_evaluations = pa.array(
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- [self.config.rolling_evaluations] * len(batch)
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- )
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- stride = pa.array([self.config.stride] * len(batch))
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- columns += [freq, prediction_length, rolling_evaluations, stride]
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- for pa_field in [
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- pa.field("freq", pa.string()),
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- pa.field("prediction_length", pa.int32()),
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- pa.field("rolling_evaluations", pa.int32()),
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- pa.field("stride", pa.int32()),
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- ]:
314
- schema = schema.append(pa_field)
315
  yield batch[FieldName.ITEM_ID].to_pylist(), pa.Table.from_arrays(
316
  columns, schema=schema
317
  )
 
140
  # load_dataset kwargs
141
  train_test: bool = field(default=True, init=False)
142
  pretrain: bool = field(default=False, init=False)
 
143
 
144
  # builder kwargs
145
  prediction_length: int = field(default=None)
 
157
  feat_static_real_dim: int = field(default=0)
158
  past_feat_dynamic_real_dim: int = field(default=0)
159
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
160
  @cached_property
161
  def feat_static_cat_cardinalities(self) -> Optional[list[int]]:
162
  if FieldName.FEAT_STATIC_CAT not in self.optional_fields:
 
231
 
232
  features[ts_field] = sequence_feature(dtype, univar)
233
 
 
 
 
 
 
 
 
 
234
  features = datasets.Features(features)
235
 
236
  return datasets.DatasetInfo(
 
267
  for batch in table.to_batches():
268
  columns = batch.columns
269
  schema = batch.schema
270
+
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
271
  yield batch[FieldName.ITEM_ID].to_pylist(), pa.Table.from_arrays(
272
  columns, schema=schema
273
  )