iterative / mlem

🐶 A tool to package, serve, and deploy any ML model on any platform. Archived to be resurrected one day🤞
https://mlem.ai
Apache License 2.0
717 stars 44 forks source link
cli data-science deployment developer-tools git machine-learning mlem model-registry python

image

Check, test and release codecov PyPi License: Apache 2.0

MLEM helps you package and deploy machine learning models. It saves ML models in a standard format that can be used in a variety of production scenarios such as real-time REST serving or batch processing.

Why is MLEM special?

The main reason to use MLEM instead of other tools is to adopt a GitOps approach to manage model lifecycles.

Usage

This a quick walkthrough showcasing deployment functionality of MLEM.

Please read Get Started guide for a full version.

Installation

MLEM requires Python 3.

$ python -m pip install mlem

To install the pre-release version:

$ python -m pip install git+https://github.com/iterative/mlem

Saving the model

# train.py
from mlem.api import save
from sklearn.ensemble import RandomForestClassifier
from sklearn.datasets import load_iris

def main():
    data, y = load_iris(return_X_y=True, as_frame=True)
    rf = RandomForestClassifier(
        n_jobs=2,
        random_state=42,
    )
    rf.fit(data, y)

    save(
        rf,
        "models/rf",
        sample_data=data,
    )

if __name__ == "__main__":
    main()

Codification

Check out what we have:

$ ls models/
rf
rf.mlem
$ cat rf.mlem
Click to show `cat` output ```yaml artifacts: data: hash: ea4f1bf769414fdacc2075ef9de73be5 size: 163651 uri: rf model_type: methods: predict: args: - name: data type_: columns: - sepal length (cm) - sepal width (cm) - petal length (cm) - petal width (cm) dtypes: - float64 - float64 - float64 - float64 index_cols: [] type: dataframe name: predict returns: dtype: int64 shape: - null type: ndarray predict_proba: args: - name: data type_: columns: - sepal length (cm) - sepal width (cm) - petal length (cm) - petal width (cm) dtypes: - float64 - float64 - float64 - float64 index_cols: [] type: dataframe name: predict_proba returns: dtype: float64 shape: - null - 3 type: ndarray type: sklearn object_type: model requirements: - module: sklearn version: 1.0.2 - module: pandas version: 1.4.1 - module: numpy version: 1.22.3 ```

Deploying the model

If you want to follow this Quick Start, you'll need to sign up on https://heroku.com, create an API_KEY and populate HEROKU_API_KEY env var (or run heroku login in command line). Besides, you'll need to run heroku container:login. This will log you in to Heroku container registry.

Now we can deploy the model with mlem deploy (you need to use different app_name, since it's going to be published on https://herokuapp.com):

$ mlem deployment run heroku app.mlem \
  --model models/rf \
  --app_name example-mlem-get-started-app
⏳️ Loading model from models/rf.mlem
⏳️ Loading deployment from app.mlem
🛠 Creating docker image for heroku
  🛠 Building MLEM wheel file...
  💼 Adding model files...
  🛠 Generating dockerfile...
  💼 Adding sources...
  💼 Generating requirements file...
  🛠 Building docker image registry.heroku.com/example-mlem-get-started-app/web...
  ✅  Built docker image registry.heroku.com/example-mlem-get-started-app/web
  🔼 Pushing image registry.heroku.com/example-mlem-get-started-app/web to registry.heroku.com
  ✅  Pushed image registry.heroku.com/example-mlem-get-started-app/web to registry.heroku.com
🛠 Releasing app example-mlem-get-started-app formation
✅  Service example-mlem-get-started-app is up. You can check it out at https://example-mlem-get-started-app.herokuapp.com/

Contributing

Contributions are welcome! Please see our Contributing Guide for more details.

Thanks to all our contributors!

Copyright

This project is distributed under the Apache license version 2.0 (see the LICENSE file in the project root).

By submitting a pull request to this project, you agree to license your contribution under the Apache license version 2.0 to this project.