# model-analysis **Repository Path**: mirrors_tensorflow/model-analysis ## Basic Information - **Project Name**: model-analysis - **Description**: Model analysis tools for TensorFlow - **Primary Language**: Unknown - **License**: Apache-2.0 - **Default Branch**: master - **Homepage**: None - **GVP Project**: No ## Statistics - **Stars**: 0 - **Forks**: 0 - **Created**: 2020-08-22 - **Last Updated**: 2026-03-15 ## Categories & Tags **Categories**: Uncategorized **Tags**: None ## README # TensorFlow Model Analysis [![Python](https://img.shields.io/badge/python%20-3.9%7C3.10%7C3.11-blue)](https://github.com/tensorflow/model-analysis) [![PyPI](https://badge.fury.io/py/tensorflow-model-analysis.svg)](https://badge.fury.io/py/tensorflow-model-analysis) [![Documentation](https://img.shields.io/badge/api-reference-blue.svg)](https://www.tensorflow.org/tfx/model_analysis/api_docs/python/tfma) *TensorFlow Model Analysis* (TFMA) is a library for evaluating TensorFlow models. It allows users to evaluate their models on large amounts of data in a distributed manner, using the same metrics defined in their trainer. These metrics can be computed over different slices of data and visualized in Jupyter notebooks. ![TFMA Slicing Metrics Browser](https://raw.githubusercontent.com/tensorflow/model-analysis/master/g3doc/images/tfma-slicing-metrics-browser.gif) Caution: TFMA may introduce backwards incompatible changes before version 1.0. ## Installation The recommended way to install TFMA is using the [PyPI package](https://pypi.org/project/tensorflow-model-analysis/):
pip install tensorflow-model-analysis
pip install from https://pypi-nightly.tensorflow.org
pip install -i https://pypi-nightly.tensorflow.org/simple tensorflow-model-analysis
pip install from the HEAD of the git:
pip install git+https://github.com/tensorflow/model-analysis.git#egg=tensorflow_model_analysis
pip install from a released version directly from git:
pip install git+https://github.com/tensorflow/model-analysis.git@v0.21.3#egg=tensorflow_model_analysis
If you have cloned the repository locally, and want to test your local change, pip install from a local folder.
pip install -e $FOLDER_OF_THE_LOCAL_LOCATION
Note that protobuf must be installed correctly for the above option since it is building TFMA from source and it requires protoc and all of its includes reference-able. Please see [protobuf install instruction](https://github.com/protocolbuffers/protobuf#protocol-compiler-installation) for see the latest install instructions. Currently, TFMA requires that TensorFlow is installed but does not have an explicit dependency on the TensorFlow PyPI package. See the [TensorFlow install guides](https://www.tensorflow.org/install/) for instructions. ### Build TFMA from source To build from source follow the following steps: Install the protoc as per the link mentioned: [protoc](https://grpc.io/docs/protoc-installation/#install-pre-compiled-binaries-any-os) Create a virtual environment by running the commands ``` python3 -m venv source /bin/activate pip3 install setuptools wheel git clone https://github.com/tensorflow/model-analysis.git cd model-analysis python3 setup.py bdist_wheel ``` This will build the TFMA wheel in the dist directory. To install the wheel from dist directory run the commands ``` cd dist pip3 install tensorflow_model_analysis--py3-none-any.whl ``` ### Running tests To run tests, run ``` python -m unittest discover -p *_test.py ``` from the root project directory. ### Jupyter Lab As of writing, because of https://github.com/pypa/pip/issues/9187, `pip install` might never finish. In that case, you should revert pip to version 19 instead of 20: `pip install "pip<20"`. Using a JupyterLab extension requires installing dependencies on the command line. You can do this within the console in the JupyterLab UI or on the command line. This includes separately installing any pip package dependencies and JupyterLab labextension plugin dependencies, and the version numbers must be compatible. JupyterLab labextension packages refer to npm packages (eg, [tensorflow_model_analysis](https://www.npmjs.com/package/tensorflow_model_analysis). The examples below use 0.32.0. Check available [versions](#compatible-versions) below to use the latest. #### Jupyter Lab 3.0.x ```Shell pip install tensorflow_model_analysis==0.32.0 jupyter labextension install tensorflow_model_analysis@0.32.0 pip install jupyterlab_widgets==1.0.0 ``` #### Jupyter Lab 2.2.x ```Shell pip install tensorflow_model_analysis==0.32.0 jupyter labextension install tensorflow_model_analysis@0.32.0 jupyter labextension install @jupyter-widgets/jupyterlab-manager@2 ``` #### Jupyter Lab 1.2.x ```Shell pip install tensorflow_model_analysis==0.32.0 jupyter labextension install tensorflow_model_analysis@0.32.0 jupyter labextension install @jupyter-widgets/jupyterlab-manager@1.1 ``` #### Classic Jupyter Notebook To enable TFMA visualization in the classic Jupyter Notebook (either through `jupyter notebook` or [through the JupyterLab UI](https://jupyterlab.readthedocs.io/en/stable/getting_started/starting.html)), you'll also need to run: ```shell jupyter nbextension enable --py widgetsnbextension jupyter nbextension enable --py tensorflow_model_analysis ``` Note: If Jupyter notebook is already installed in your home directory, add `--user` to these commands. If Jupyter is installed as root, or using a virtual environment, the parameter `--sys-prefix` might be required. #### Building TFMA from source If you want to build TFMA from source and use the UI in JupyterLab, you'll need to make sure that the source contains valid version numbers. Check that the Python package version number and npm package version number are exactly the same, and that both are valid version numbers (eg, remove the `-dev` suffix). #### Troubleshooting Check pip packages: ```Shell pip list ``` Check JupyterLab extensions: ```Shell jupyter labextension list # for JupyterLab jupyter nbextension list # for classic Jupyter Notebook ``` ### Standalone HTML page with `embed_minimal_html` TFMA notebook extension can be built into a standalone HTML file that also bundles data into the HTML file. See the Jupyter Widgets docs on [embed_minimal_html](https://ipywidgets.readthedocs.io/en/latest/embedding.html#python-interface). ### Kubeflow Pipelines [Kubeflow Pipelines](https://www.kubeflow.org/docs/components/pipelines/sdk/output-viewer/) includes integrations that embed the TFMA notebook extension ([code](https://github.com/kubeflow/pipelines/blob/1.5.0-rc.2/backend/src/apiserver/visualization/types/tfma.py#L17)). This integration relies on network access at runtime to load a variant of the JavaScript build published on unpkg.com (see [config](https://github.com/tensorflow/model-analysis/blob/v0.29.0/tensorflow_model_analysis/notebook/jupyter/js/webpack.config.js#L78) and [loader code](https://github.com/tensorflow/model-analysis/blob/v0.29.0/tensorflow_model_analysis/notebook/jupyter/js/lib/widget.js#L23)). ### Notable Dependencies TensorFlow is required. [Apache Beam](https://beam.apache.org/) is required; it's the way that efficient distributed computation is supported. By default, Apache Beam runs in local mode but can also run in distributed mode using [Google Cloud Dataflow](https://cloud.google.com/dataflow/) and other Apache Beam [runners](https://beam.apache.org/documentation/runners/capability-matrix/). [Apache Arrow](https://arrow.apache.org/) is also required. TFMA uses Arrow to represent data internally in order to make use of vectorized numpy functions. ## Getting Started For instructions on using TFMA, see the [get started guide](https://github.com/tensorflow/model-analysis/blob/master/g3doc/get_started.md). ## Compatible Versions The following table is the TFMA package versions that are compatible with each other. This is determined by our testing framework, but other *untested* combinations may also work. |tensorflow-model-analysis |apache-beam[gcp]|pyarrow |tensorflow |tensorflow-metadata |tfx-bsl | |------------------------------------------------------------------------------------ |----------------|----------|-------------------|--------------------|----------| |[GitHub master](https://github.com/tensorflow/model-analysis/blob/master/RELEASE.md) | 2.65.0 | 10.0.1 | nightly (2.x) | 1.17.1 | 1.17.1 | |[0.48.0](https://github.com/tensorflow/model-analysis/blob/v0.48.0/RELEASE.md) | 2.65.0 | 10.0.1 | 2.17 | 1.17.1 | 1.17.1 | |[0.47.1](https://github.com/tensorflow/model-analysis/blob/v0.47.1/RELEASE.md) | 2.60.0 | 10.0.1 | 2.16 | 1.16.1 | 1.16.1 | |[0.47.0](https://github.com/tensorflow/model-analysis/blob/v0.47.0/RELEASE.md) | 2.60.0 | 10.0.1 | 2.16 | 1.16.1 | 1.16.1 | |[0.46.0](https://github.com/tensorflow/model-analysis/blob/v0.46.0/RELEASE.md) | 2.47.0 | 10.0.0 | 2.15 | 1.15.0 | 1.15.1 | |[0.45.0](https://github.com/tensorflow/model-analysis/blob/v0.45.0/RELEASE.md) | 2.47.0 | 10.0.0 | 2.13 | 1.14.0 | 1.14.0 | |[0.44.0](https://github.com/tensorflow/model-analysis/blob/v0.44.0/RELEASE.md) | 2.40.0 | 6.0.0 | 2.12 | 1.13.1 | 1.13.0 | |[0.43.0](https://github.com/tensorflow/model-analysis/blob/v0.43.0/RELEASE.md) | 2.40.0 | 6.0.0 | 2.11 | 1.12.0 | 1.12.0 | |[0.42.0](https://github.com/tensorflow/model-analysis/blob/v0.42.0/RELEASE.md) | 2.40.0 | 6.0.0 | 1.15.5 / 2.10 | 1.11.0 | 1.11.1 | |[0.41.0](https://github.com/tensorflow/model-analysis/blob/v0.41.0/RELEASE.md) | 2.40.0 | 6.0.0 | 1.15.5 / 2.9 | 1.10.0 | 1.10.1 | |[0.40.0](https://github.com/tensorflow/model-analysis/blob/v0.40.0/RELEASE.md) | 2.38.0 | 5.0.0 | 1.15.5 / 2.9 | 1.9.0 | 1.9.0 | |[0.39.0](https://github.com/tensorflow/model-analysis/blob/v0.39.0/RELEASE.md) | 2.38.0 | 5.0.0 | 1.15.5 / 2.8 | 1.8.0 | 1.8.0 | |[0.38.0](https://github.com/tensorflow/model-analysis/blob/v0.38.0/RELEASE.md) | 2.36.0 | 5.0.0 | 1.15.5 / 2.8 | 1.7.0 | 1.7.0 | |[0.37.0](https://github.com/tensorflow/model-analysis/blob/v0.37.0/RELEASE.md) | 2.35.0 | 5.0.0 | 1.15.5 / 2.7 | 1.6.0 | 1.6.0 | |[0.36.0](https://github.com/tensorflow/model-analysis/blob/v0.36.0/RELEASE.md) | 2.34.0 | 5.0.0 | 1.15.5 / 2.7 | 1.5.0 | 1.5.0 | |[0.35.0](https://github.com/tensorflow/model-analysis/blob/v0.35.0/RELEASE.md) | 2.33.0 | 5.0.0 | 1.15 / 2.6 | 1.4.0 | 1.4.0 | |[0.34.1](https://github.com/tensorflow/model-analysis/blob/v0.34.1/RELEASE.md) | 2.32.0 | 2.0.0 | 1.15 / 2.6 | 1.2.0 | 1.3.0 | |[0.34.0](https://github.com/tensorflow/model-analysis/blob/v0.34.0/RELEASE.md) | 2.31.0 | 2.0.0 | 1.15 / 2.6 | 1.2.0 | 1.3.1 | |[0.33.0](https://github.com/tensorflow/model-analysis/blob/v0.33.0/RELEASE.md) | 2.31.0 | 2.0.0 | 1.15 / 2.5 | 1.2.0 | 1.2.0 | |[0.32.1](https://github.com/tensorflow/model-analysis/blob/v0.32.1/RELEASE.md) | 2.29.0 | 2.0.0 | 1.15 / 2.5 | 1.1.0 | 1.1.1 | |[0.32.0](https://github.com/tensorflow/model-analysis/blob/v0.32.0/RELEASE.md) | 2.29.0 | 2.0.0 | 1.15 / 2.5 | 1.1.0 | 1.1.0 | |[0.31.0](https://github.com/tensorflow/model-analysis/blob/v0.31.0/RELEASE.md) | 2.29.0 | 2.0.0 | 1.15 / 2.5 | 1.0.0 | 1.0.0 | |[0.30.0](https://github.com/tensorflow/model-analysis/blob/v0.30.0/RELEASE.md) | 2.28.0 | 2.0.0 | 1.15 / 2.4 | 0.30.0 | 0.30.0 | |[0.29.0](https://github.com/tensorflow/model-analysis/blob/v0.29.0/RELEASE.md) | 2.28.0 | 2.0.0 | 1.15 / 2.4 | 0.29.0 | 0.29.0 | |[0.28.0](https://github.com/tensorflow/model-analysis/blob/v0.28.0/RELEASE.md) | 2.28.0 | 2.0.0 | 1.15 / 2.4 | 0.28.0 | 0.28.0 | |[0.27.0](https://github.com/tensorflow/model-analysis/blob/v0.27.0/RELEASE.md) | 2.27.0 | 2.0.0 | 1.15 / 2.4 | 0.27.0 | 0.27.0 | |[0.26.1](https://github.com/tensorflow/model-analysis/blob/v0.26.1/RELEASE.md) | 2.28.0 | 0.17.0 | 1.15 / 2.3 | 0.26.0 | 0.26.0 | |[0.26.0](https://github.com/tensorflow/model-analysis/blob/v0.26.0/RELEASE.md) | 2.25.0 | 0.17.0 | 1.15 / 2.3 | 0.26.0 | 0.26.0 | |[0.25.0](https://github.com/tensorflow/model-analysis/blob/v0.25.0/RELEASE.md) | 2.25.0 | 0.17.0 | 1.15 / 2.3 | 0.25.0 | 0.25.0 | |[0.24.3](https://github.com/tensorflow/model-analysis/blob/v0.24.3/RELEASE.md) | 2.24.0 | 0.17.0 | 1.15 / 2.3 | 0.24.0 | 0.24.1 | |[0.24.2](https://github.com/tensorflow/model-analysis/blob/v0.24.2/RELEASE.md) | 2.23.0 | 0.17.0 | 1.15 / 2.3 | 0.24.0 | 0.24.0 | |[0.24.1](https://github.com/tensorflow/model-analysis/blob/v0.24.1/RELEASE.md) | 2.23.0 | 0.17.0 | 1.15 / 2.3 | 0.24.0 | 0.24.0 | |[0.24.0](https://github.com/tensorflow/model-analysis/blob/v0.24.0/RELEASE.md) | 2.23.0 | 0.17.0 | 1.15 / 2.3 | 0.24.0 | 0.24.0 | |[0.23.0](https://github.com/tensorflow/model-analysis/blob/v0.23.0/RELEASE.md) | 2.23.0 | 0.17.0 | 1.15 / 2.3 | 0.23.0 | 0.23.0 | |[0.22.2](https://github.com/tensorflow/model-analysis/blob/v0.22.2/RELEASE.md) | 2.20.0 | 0.16.0 | 1.15 / 2.2 | 0.22.2 | 0.22.0 | |[0.22.1](https://github.com/tensorflow/model-analysis/blob/v0.22.1/RELEASE.md) | 2.20.0 | 0.16.0 | 1.15 / 2.2 | 0.22.2 | 0.22.0 | |[0.22.0](https://github.com/tensorflow/model-analysis/blob/v0.22.0/RELEASE.md) | 2.20.0 | 0.16.0 | 1.15 / 2.2 | 0.22.0 | 0.22.0 | |[0.21.6](https://github.com/tensorflow/model-analysis/blob/v0.21.6/RELEASE.md) | 2.19.0 | 0.15.0 | 1.15 / 2.1 | 0.21.0 | 0.21.3 | |[0.21.5](https://github.com/tensorflow/model-analysis/blob/v0.21.5/RELEASE.md) | 2.19.0 | 0.15.0 | 1.15 / 2.1 | 0.21.0 | 0.21.3 | |[0.21.4](https://github.com/tensorflow/model-analysis/blob/v0.21.4/RELEASE.md) | 2.19.0 | 0.15.0 | 1.15 / 2.1 | 0.21.0 | 0.21.3 | |[0.21.3](https://github.com/tensorflow/model-analysis/blob/v0.21.3/RELEASE.md) | 2.17.0 | 0.15.0 | 1.15 / 2.1 | 0.21.0 | 0.21.0 | |[0.21.2](https://github.com/tensorflow/model-analysis/blob/v0.21.2/RELEASE.md) | 2.17.0 | 0.15.0 | 1.15 / 2.1 | 0.21.0 | 0.21.0 | |[0.21.1](https://github.com/tensorflow/model-analysis/blob/v0.21.1/RELEASE.md) | 2.17.0 | 0.15.0 | 1.15 / 2.1 | 0.21.0 | 0.21.0 | |[0.21.0](https://github.com/tensorflow/model-analysis/blob/v0.21.0/RELEASE.md) | 2.17.0 | 0.15.0 | 1.15 / 2.1 | 0.21.0 | 0.21.0 | |[0.15.4](https://github.com/tensorflow/model-analysis/blob/v0.15.4/RELEASE.md) | 2.16.0 | 0.15.0 | 1.15 / 2.0 | n/a | 0.15.1 | |[0.15.3](https://github.com/tensorflow/model-analysis/blob/v0.15.3/RELEASE.md) | 2.16.0 | 0.15.0 | 1.15 / 2.0 | n/a | 0.15.1 | |[0.15.2](https://github.com/tensorflow/model-analysis/blob/v0.15.2/RELEASE.md) | 2.16.0 | 0.15.0 | 1.15 / 2.0 | n/a | 0.15.1 | |[0.15.1](https://github.com/tensorflow/model-analysis/blob/v0.15.1/RELEASE.md) | 2.16.0 | 0.15.0 | 1.15 / 2.0 | n/a | 0.15.0 | |[0.15.0](https://github.com/tensorflow/model-analysis/blob/v0.15.0/RELEASE.md) | 2.16.0 | 0.15.0 | 1.15 | n/a | n/a | |[0.14.0](https://github.com/tensorflow/model-analysis/blob/v0.14.0/RELEASE.md) | 2.14.0 | n/a | 1.14 | n/a | n/a | |[0.13.1](https://github.com/tensorflow/model-analysis/blob/v0.13.1/RELEASE.md) | 2.11.0 | n/a | 1.13 | n/a | n/a | |[0.13.0](https://github.com/tensorflow/model-analysis/blob/v0.13.0/RELEASE.md) | 2.11.0 | n/a | 1.13 | n/a | n/a | |[0.12.1](https://github.com/tensorflow/model-analysis/blob/v0.12.1/RELEASE.md) | 2.10.0 | n/a | 1.12 | n/a | n/a | |[0.12.0](https://github.com/tensorflow/model-analysis/blob/v0.12.0/RELEASE.md) | 2.10.0 | n/a | 1.12 | n/a | n/a | |[0.11.0](https://github.com/tensorflow/model-analysis/blob/v0.11.0/RELEASE.md) | 2.8.0 | n/a | 1.11 | n/a | n/a | |[0.9.2](https://github.com/tensorflow/model-analysis/blob/v0.9.2/RELEASE.md) | 2.6.0 | n/a | 1.9 | n/a | n/a | |[0.9.1](https://github.com/tensorflow/model-analysis/blob/v0.9.1/RELEASE.md) | 2.6.0 | n/a | 1.10 | n/a | n/a | |[0.9.0](https://github.com/tensorflow/model-analysis/blob/v0.9.0/RELEASE.md) | 2.5.0 | n/a | 1.9 | n/a | n/a | |[0.6.0](https://github.com/tensorflow/model-analysis/blob/v0.6.0/RELEASE.md) | 2.4.0 | n/a | 1.6 | n/a | n/a | ## Questions Please direct any questions about working with TFMA to [Stack Overflow](https://stackoverflow.com) using the [tensorflow-model-analysis](https://stackoverflow.com/questions/tagged/tensorflow-model-analysis) tag.