TensorFlow Transform is a library for preprocessing data with TensorFlow.
tf.Transform
is useful for data that requires a full-pass, such as:
- Normalize an input value by mean and standard deviation.
- Convert strings to integers by generating a vocabulary over all input values.
- Convert floats to integers by assigning them to buckets based on the observed data distribution.
TensorFlow has built-in support for manipulations on a single example or a batch
of examples. tf.Transform
extends these capabilities to support full-passes
over the example data.
The output of tf.Transform
is exported as a
TensorFlow graph to use for training and serving.
Using the same graph for both training and serving can prevent skew since the
same transformations are applied in both stages.
For an introduction to tf.Transform
, see the tf.Transform
section of the
TFX Dev Summit talk on TFX
(link).
Caution: tf.Transform
may be backwards incompatible before version 1.0.
The tensorflow-transform
PyPI package is the
recommended way to install tf.Transform
:
pip install tensorflow-transform
tf.Transform
requires TensorFlow but does not depend on the tensorflow
PyPI package. See the
TensorFlow install guides for
instructions.
Apache Beam is required to run distributed analysis.
By default, Apache Beam runs in local mode but can also run in distributed mode
using Google Cloud Dataflow.
tf.Transform
is designed to be extensible for other Apache Beam runners.
The following table is the tf.Transform
package versions that are
compatible with each other. This is determined by our testing framework, but
other untested combinations may also work.
tensorflow-transform | tensorflow | apache-beam[gcp] |
---|---|---|
GitHub master | nightly (1.x) | 2.11.0 |
0.13.0 | 1.13 | 2.11.0 |
0.12.0 | 1.12 | 2.10.0 |
0.11.0 | 1.11 | 2.8.0 |
0.9.0 | 1.9 | 2.6.0 |
0.8.0 | 1.8 | 2.5.0 |
0.6.0 | 1.6 | 2.4.0 |
0.5.0 | 1.5 | 2.3.0 |
0.4.0 | 1.4 | 2.2.0 |
0.3.1 | 1.3 | 2.1.1 |
0.3.0 | 1.3 | 2.1.1 |
0.1.10 | 1.0 | 2.0.0 |
Please direct any questions about working with tf.Transform
to
Stack Overflow using the
tensorflow-transform
tag.