NumpyReader
Defined in tensorflow/contrib/timeseries/python/timeseries/input_pipeline.py
.
A time series parser for feeding Numpy arrays to a TimeSeriesInputFn
.
Avoids embedding data in the graph as constants.
__init__
__init__( data, read_num_records_hint=4096 )
Numpy array input for a TimeSeriesInputFn
.
data
: A dictionary mapping feature names to Numpy arrays, with two possible shapes (requires keys TrainEvalFeatures.TIMES
and TrainEvalFeatures.VALUES
): Univariate; TIMES
and VALUES
are both vectors of shape [series length] Multivariate; TIMES
is a vector of shape [series length], VALUES
has shape [series length x number of features]. In any case, VALUES
and any exogenous features must have their shapes prefixed by the shape of the value corresponding to the TIMES
key.read_num_records_hint
: The maximum number of samples to read at one time, for efficiency.check_dataset_size
check_dataset_size(minimum_dataset_size)
Raise an error if the dataset is too small.
read
read()
Returns a large chunk of the Numpy arrays for later re-chunking.
read_full
read_full()
Returns Tensor
versions of the full Numpy arrays.
© 2018 The TensorFlow Authors. All rights reserved.
Licensed under the Creative Commons Attribution License 3.0.
Code samples licensed under the Apache 2.0 License.
https://www.tensorflow.org/api_docs/python/tf/contrib/timeseries/NumpyReader