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Releases: raminmohammadi/MLOps

V2.1.0

17 Jan 21:25

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MLOPs and LLMOPs

07 Sep 20:43
0e1808d

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New in This Release: LLMOps Content and Labs

In this release version, we are excited to announce that LLMOps has been added to the content and labs.
This enhancement expands the curriculum beyond core MLOps to include specialized practices for managing large language models (LLMs) in production.

Students will now gain hands-on experience with topics such as:

  • Model evaluation and monitoring
  • Alignment and responsible AI practices
  • Deployment strategies tailored for LLMs
  • Lifecycle management at scale

The labs have also been updated to provide practical, real-world exercises that demonstrate end-to-end LLMOps workflows. This ensures participants not only understand the concepts but also build the technical skills needed to operate and maintain LLM systems in production environments.

What's Changed

Full Changelog: V1.2.0...V2.0.0

V1.2.0

05 Nov 19:43
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What's Changed

New Contributors

Full Changelog: V1.1.0...V1.2.0

V1.1.0

15 Oct 12:12
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What's Changed

New Contributors

Full Changelog: release...V1.1.0

Release version: v2024.1

09 Jun 19:58
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Version 2024.1

Overview

We are pleased to announce the latest release of the MLOps Repository for 2024. This release includes updated labs, new exercises, and enhanced documentation to support the MLOps course at Northeastern University. Our goal is to provide a robust and comprehensive resource for students, instructors, and anyone interested in MLOps.

New Features and Updates

  • Updated Lab Content:

    • Refreshed existing labs with the latest industry practices and tools.
    • New lab exercises focused on advanced MLOps topics like data drift handling and continuous training.
  • Enhanced Documentation:

    • Improved documentation for easier navigation and understanding.
    • Detailed step-by-step instructions for each lab.
  • Additional Resources:

    • New reading materials and references added.
    • Links to relevant external resources for deeper learning.
  • Video Tutorials:

    • Added new video tutorials to complement the lab exercises.
    • Access videos on our Youtube channel.

Bug Fixes

  • Resolved issues with outdated code samples.
  • Fixed broken links in the documentation.
  • Addressed compatibility issues with newer versions of libraries and tools.

Getting Started

To get started with the new labs and exercises:

  1. Clone this repository to your local machine.
  2. Navigate to the specific lab you are interested in.
  3. Read the lab instructions and review any accompanying documentation.
  4. Follow the provided code samples and examples to complete the lab exercises.
  5. Feel free to explore, modify, and experiment with the code to deepen your understanding.

For more detailed information on each lab and prerequisites, please refer to the lab's README or documentation.

Contributing

We welcome contributions to this repository. If you would like to contribute:

  1. Fork this repository.
  2. Create a branch for your changes.
  3. Make your changes and commit them with clear, concise messages.
  4. Test your changes to ensure they work as expected.
  5. Submit a pull request to the main repository.

Your contributions will help improve the overall quality of the labs and benefit the entire MLOps community.

License

This repository is open-source and is distributed under the Creative Commons License. Please review the license for more details on how you can use and share the content within this repository.

Acknowledgments

We would like to thank the students, instructors, and contributors who have provided valuable feedback and suggestions to improve this repository. Special thanks to Coursera for providing reading materials under the Creative Commons License.


For any questions or further information, please visit our Website.

Thank you for your continued support and contribution to the MLOps community.


Release Date: June 9, 2024