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Forked from swyoon/np_to_tfrecords.py
Created August 12, 2018 18:55
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From numpy ndarray to tfrecords
import numpy as np
import tensorflow as tf
__author__ = "Sangwoong Yoon"
def np_to_tfrecords(X, Y, file_path_prefix, verbose=True):
"""
Converts a Numpy array (or two Numpy arrays) into a tfrecord file.
For supervised learning, feed training inputs to X and training labels to Y.
For unsupervised learning, only feed training inputs to X, and feed None to Y.
The length of the first dimensions of X and Y should be the number of samples.
Parameters
----------
X : numpy.ndarray of rank 2
Numpy array for training inputs. Its dtype should be float32, float64, or int64.
If X has a higher rank, it should be rshape before fed to this function.
Y : numpy.ndarray of rank 2 or None
Numpy array for training labels. Its dtype should be float32, float64, or int64.
None if there is no label array.
file_path_prefix : str
The path and name of the resulting tfrecord file to be generated, without '.tfrecords'
verbose : bool
If true, progress is reported.
Raises
------
ValueError
If input type is not float (64 or 32) or int.
"""
def _dtype_feature(ndarray):
"""match appropriate tf.train.Feature class with dtype of ndarray. """
assert isinstance(ndarray, np.ndarray)
dtype_ = ndarray.dtype
if dtype_ == np.float64 or dtype_ == np.float32:
return lambda array: tf.train.Feature(float_list=tf.train.FloatList(value=array))
elif dtype_ == np.int64:
return lambda array: tf.train.Feature(int64_list=tf.train.Int64List(value=array))
else:
raise ValueError("The input should be numpy ndarray. \
Instaed got {}".format(ndarray.dtype))
assert isinstance(X, np.ndarray)
assert len(X.shape) == 2 # If X has a higher rank,
# it should be rshape before fed to this function.
assert isinstance(Y, np.ndarray) or Y is None
# load appropriate tf.train.Feature class depending on dtype
dtype_feature_x = _dtype_feature(X)
if Y is not None:
assert X.shape[0] == Y.shape[0]
assert len(Y.shape) == 2
dtype_feature_y = _dtype_feature(Y)
# Generate tfrecord writer
result_tf_file = file_path_prefix + '.tfrecords'
writer = tf.python_io.TFRecordWriter(result_tf_file)
if verbose:
print "Serializing {:d} examples into {}".format(X.shape[0], result_tf_file)
# iterate over each sample,
# and serialize it as ProtoBuf.
for idx in range(X.shape[0]):
x = X[idx]
if Y is not None:
y = Y[idx]
d_feature = {}
d_feature['X'] = dtype_feature_x(x)
if Y is not None:
d_feature['Y'] = dtype_feature_y(y)
features = tf.train.Features(feature=d_feature)
example = tf.train.Example(features=features)
serialized = example.SerializeToString()
writer.write(serialized)
if verbose:
print "Writing {} done!".format(result_tf_file)
#################################
## Test and Use Cases ##
#################################
# 1-1. Saving a dataset with input and label (supervised learning)
xx = np.random.randn(10,5)
yy = np.random.randn(10,1)
np_to_tfrecords(xx, yy, 'test1', verbose=True)
# 1-2. Check if the data is stored correctly
# open the saved file and check the first entries
for serialized_example in tf.python_io.tf_record_iterator('test1.tfrecords'):
example = tf.train.Example()
example.ParseFromString(serialized_example)
x_1 = np.array(example.features.feature['X'].float_list.value)
y_1 = np.array(example.features.feature['Y'].float_list.value)
break
# the numbers may be slightly different because of the floating point error.
print xx[0]
print x_1
print yy[0]
print y_1
# 2. Saving a dataset with only inputs (unsupervised learning)
xx = np.random.randn(100,100)
np_to_tfrecords(xx, None, 'test2', verbose=True)
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