ML Metadata (MLMD) is a library for recording and retrieving metadata associated with ML developer and data scientist workflows.
NOTE: ML Metadata may be backwards incompatible before version 1.0.
For more background on MLMD and instructions on using it, see the getting started guide
The recommended way to install ML Metadata is to use the PyPI package:
pip install ml-metadata
Then import the relevant packages:
from ml_metadata import metadata_store
from ml_metadata.proto import metadata_store_pb2
This is the recommended way to build ML Metadata under Linux, and is continuously tested at Google.
Please first install docker
and docker-compose
by following the directions:
docker;
docker-compose.
Then, run the following at the project root:
DOCKER_SERVICE=manylinux-python${PY_VERSION}
sudo docker-compose build ${DOCKER_SERVICE}
sudo docker-compose run ${DOCKER_SERVICE}
where PY_VERSION
is one of {35, 36, 37}
.
A wheel will be produced under dist/
, and installed as follows:
pip install dist/*.whl
To compile and use ML Metadata, you need to set up some prerequisites.
If Bazel is not installed on your system, install it now by following these directions.
If cmake is not installed on your system, install it now by following these directions.
git clone https://github.com/google/ml-metadata
cd ml-metadata
Note that these instructions will install the latest master branch of ML
Metadata. If you want to install a specific branch (such as a release branch),
pass -b <branchname>
to the git clone
command.
ML Metadata uses Bazel to build the pip package from source:
bazel run -c opt --define grpc_no_ares=true ml_metadata:build_pip_package
You can find the generated .whl
file in the dist
subdirectory.
pip install dist/*.whl
ML Metadata uses Bazel to build the c++ binary from source:
bazel build -c opt --define grpc_no_ares=true //ml_metadata/metadata_store:metadata_store_server
MLMD is built and tested on the following 64-bit operating systems:
- macOS 10.12.6 (Sierra) or later.
- Ubuntu 16.04 or later.
- Windows 7 or later.