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mlops-platforms's Introduction

MLOps Platforms

MLOps is an especially confusing landscape with hundreds of tools available. This project helps to navigate the space of MLOps platforms.

Understanding MLOps platforms is complex. Platforms have their own specializations and there is no clear line between a tool (with a narrow focus) and a platform (which supports many ML lifecycle activities). The below (from the Thoughtworks Guide to MLOps Platforms) illustrates how some of the platforms specialize in particular areas (bottom) and others aim to cover the whole lifecycle with equal focus (top):

MLOps Landscape Diagram

Even platforms that have a similar scope have different concepts and strategies, making them hard to compare directly. This repository provides resources for evaluating MLOps platforms.

If you're wondering what process to use to evaluate MLOps platforms, see the Thoughtworks Guide and the webinar recording. If you know how to evaluate MLOps platforms and want materials, read on.

Comparison Matrix Format

The matrix an open format of categories with links to vendor documentation within cells to highlight features. This lets vendors do things their own ways and helps readers find the detail they need.

Comparison Matrix

We suggest to click through to the master spreadsheet in google sheets:

matrix

If you can't access or don't like google sheets then there is a translation of the matrix into Github markdown

Platform Profiles

These profiles are concise marketing-free introductions to key concepts of MLOps platforms. This provides just enough context to make sense of the features in the matrix.

Contributions

Everyone is welcome to contribute, including vendors. Language should be neutral - marketing language will not be accepted.

Changes are welcome by PR or issues - please create a copy of the spreadsheet, link to or upload your copy and explain which parts are changed. Please follow the existing format or raise an issue in advance to suggest changes to the format. On approval a maintainer will then update the master spreadsheet used to generate the markdown.

Disclaimer

We do our best to keep this information accurate and up-to-date but cannot provide guarantees. References to documentation are provided throughout so readers can check for themselves. If you spot anything inaccurate then please raise an issue or pull request (see Contributing section).

mlops-platforms's People

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mlops-platforms's Issues

Added PrimeHub

Added PrimeHub in the last column of the spreadsheet.
Please review it and inform us if ay problem.

Many thanks

Add KitOps FOSS to the spreadsheet

I've added the open source KitOps project to the linked spreadsheet as column S.

KitOps is an open source MLOps project that packages your model, datasets, code, and configuration so data scientists and developers can use their preferred tools while collaborating effortlessly. Since we're focused on simplifying and standardizing the packaging of AI/ML models, the answers to most of the questions are "we support that as long as the asset you put into the ModelKit supports it." For example we support any model serialization type so if your deployment pipeline works with ONNX and you package up a ModelKit with an ONNX model then all is good.

Project site: https://kitops.ml/
GitHub repo: https://github.com/jozu-ai/kitops

Adding Neptune.ai to MLOps Platforms

Hi,
I'd love to add Neptune.ai to the spreadsheet. Here you can find the updated file.

I added column Q with all the necessary details about Neptune.ai, no other changes have been made.

Thanks!

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