Issue
I am trying to write a csv file (all columns are floats) to a tfrecords file then read them back out. All the examples I have seen pack the csv columns then feed it to sess.run() directly but I can't figure out how to write the feature columns and label column to a tfrecord instead. How could I do this?
Solution
You will need a separate script to convert your csv file to TFRecords.
Imagine you have a CSV with the following header:
feature_1, feature_2, ..., feature_n, label
You need to read your CSV with something like pandas
, construct tf.train.Example
manually and then write it to file with TFRecordWriter
csv = pandas.read_csv("your.csv").values
with tf.python_io.TFRecordWriter("csv.tfrecords") as writer:
for row in csv:
features, label = row[:-1], row[-1]
example = tf.train.Example()
example.features.feature["features"].float_list.value.extend(features)
example.features.feature["label"].int64_list.value.append(label)
writer.write(example.SerializeToString())
Answered By - standy
0 comments:
Post a Comment
Note: Only a member of this blog may post a comment.