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Mlops-ai library for managing machine learning projects, experiments, iterations and datasets.

Project description

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mlops

Open-source tool for tracking & monitoring machine learning models.

FastAPI React MongoDB Docker PyPI

PyPI version License

Table of Contents

Introduction

End-to-end machine learning projects require long-term lifecycles during which different models are evaluated, with various hyperparameters or data representations. Then, out of all the experiments, a final model must be selected for deployment in the production environment. There are some solutions available to manage the model creation process, such as mlflow or neptune.ai. However, none of them support the functionality of monitoring a deployed model in production.

As a part of the mlops project, we aim to create a ready-to-use tool for professionals in the Machine Learning industry allowing them not only to manage experiments during model creation process (tracking module), but also monitoring a deployed model working on real-world production data (monitoring module) with an option to setup email alerts using MailGun (email alerts module).

Technologies

Application consist of two main components:

Additionally, we use mongoDB database for storing tracking module data.

Installation & usage

To install the application locally, you need to have docker and docker-compose installed on your machine. Then, you can run the following command:

docker-compose up

After that you can access the application at http://localhost:3000.

To install the python package make sure you have Python >=3.9 installed on your machine. Then, you can install the package using pip:

pip install mlops-ai

Documentation

You can find the detailed documentation of the application here.

Examples

The main end-to-end notebook that presents key features of the package can be found here. Some other example notebooks are also provided inside the library/tests/notebooks directory.

License

Distributed under the open-source Apache 2.0 License. See LICENSE for more information.

Contact

Project authors are (in alphabetical order):

Feel free to contact us in case of any questions or suggestions.

References

This project was created as a final BE project of Computer Science course at Faculty of Mathematics and Computer Science of Adam Mickiewicz University.

To-Do

Application is still under development. Here is a list of features we plan to implement in the future:

  • Add support for the whole monitoring module
  • Add support for email alerts
  • AWS EC2 integration
  • Add support for multiple users (optionally)

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