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Library for exploring and validating machine learning data

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tensorflow/data-validation

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PythonPyPIDocumentation

TensorFlow Data Validation (TFDV) is a library for exploring and validatingmachine learning data. It is designed to be highly scalableand to work well with TensorFlow andTensorFlow Extended (TFX).

TF Data Validation includes:

  • Scalable calculation of summary statistics of training and test data.
  • Integration with a viewer for data distributions and statistics, as wellas faceted comparison of pairs of features (Facets)
  • Automateddata-schemageneration to describe expectations about datalike required values, ranges, and vocabularies
  • A schema viewer to help you inspect the schema.
  • Anomaly detection to identifyanomalies,such as missing features,out-of-range values, or wrong feature types, to name a few.
  • An anomalies viewer so that you can see what features have anomalies andlearn more in order to correct them.

For instructions on using TFDV, see theget started guideand try out theexample notebook.Some of the techniques implemented in TFDV are described in atechnical paper published in SysML'19.

Caution: TFDV may be backwards incompatible before version 1.0.

Installing from PyPI

The recommended way to install TFDV is using thePyPI package:

pip install tensorflow-data-validation

Build with Docker

This is the recommended way to build TFDV under Linux, and is continuouslytested at Google.

1. Install Docker

Please first installdocker anddocker-compose by following the directions:docker;docker-compose.

2. Clone the TFDV repository

git clone https://github.com/tensorflow/data-validationcd data-validation

Note that these instructions will install the latest master branch of TensorFlowData Validation. If you want to install a specific branch (such as a releasebranch), pass-b <branchname> to thegit clone command.

When building on Python 2, make sure to strip the Python types in the sourcecode using the following commands:

pip install strip-hintspython tensorflow_data_validation/tools/strip_type_hints.py tensorflow_data_validation/

3. Build the pip package

Then, run the following at the project root:

sudo docker-compose build manylinux2010sudo docker-compose run -e PYTHON_VERSION=${PYTHON_VERSION} manylinux2010

wherePYTHON_VERSION is one of{27, 35, 36, 37}.

A wheel will be produced underdist/.

4. Install the pip package

pip install dist/*.whl

Build from source

1. Prerequisites

To compile and use TFDV, you need to set up some prerequisites.

Install NumPy

If NumPy is not installed on your system, install it now by followingthesedirections.

Install Bazel

If Bazel is not installed on your system, install it now by followingthesedirections.

2. Clone the TFDV repository

git clone https://github.com/tensorflow/data-validationcd data-validation

Note that these instructions will install the latest master branch of TensorFlowData Validation. If you want to install a specific branch (such as a release branch),pass-b <branchname> to thegit clone command.

When building on Python 2, make sure to strip the Python types in the sourcecode using the following commands:

pip install strip-hintspython tensorflow_data_validation/tools/strip_type_hints.py tensorflow_data_validation/

3. Build the pip package

TFDV uses Bazel to build the pip package from source. Before invoking thefollowing commands, make sure thepython in your$PATH is the one of thetarget version and has NumPy installed.

bazel run -c opt --cxxopt=-D_GLIBCXX_USE_CXX11_ABI=0 tensorflow_data_validation:build_pip_package

Note that we are assuming here that dependent packages (e.g. PyArrow) are builtwith a GCC older than 5.1 and use the flagD_GLIBCXX_USE_CXX11_ABI=0 to becompatible with the old std::string ABI.

You can find the generated.whl file in thedist subdirectory.

4. Install the pip package

pip install dist/*.whl

Supported platforms

TFDV is tested on the following 64-bit operating systems:

  • macOS 10.12.6 (Sierra) or later.
  • Ubuntu 16.04 or later.
  • Windows 7 or later.

Dependencies

TFDV requires TensorFlow but does not depend on thetensorflowPyPI package. See theTensorFlow install guidesfor instructions on how to get started with TensorFlow.

Apache Beam is required; it's the way that efficientdistributed computation is supported. By default, Apache Beam runs in localmode but can also run in distributed mode usingGoogle Cloud Dataflow.TFDV is designed to be extensible for other Apache Beam runners.

Apache Arrow is also required. TFDV uses Arrow torepresent data internally in order to make use of vectorized numpy functions.

Compatible versions

The following table shows the package versions that arecompatible with each other. This is determined by our testing framework, butotheruntested combinations may also work.

tensorflow-data-validationtensorflowapache-beam[gcp]pyarrow
GitHub masternightly (1.x/2.x)2.17.00.15.0
0.21.01.15 / 2.12.17.00.15.0
0.15.01.15 / 2.02.16.00.14.0
0.14.11.142.14.00.14.0
0.14.01.142.14.00.14.0
0.13.11.132.11.0n/a
0.13.01.132.11.0n/a
0.12.01.122.10.0n/a
0.11.01.112.8.0n/a
0.9.01.92.6.0n/a

Questions

Please direct any questions about working with TF Data Validation toStack Overflow using thetensorflow-data-validationtag.

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