jagadeshchilla/MLOPS

This is self study about the MLOPS

26
/ 100
Experimental

This project offers a structured learning path for data scientists and machine learning engineers to master the full lifecycle of machine learning operations (MLOps). It guides users through developing robust machine learning models, tracking experiments, managing data versions, and deploying models to cloud environments like AWS and Azure. By completing the curriculum, users will gain the skills to take raw data, build predictive models, and implement them into production systems.

No commits in the last 6 months.

Use this if you are a data scientist or machine learning engineer looking for a comprehensive, hands-on guide to building and deploying machine learning models in a production-ready MLOps framework.

Not ideal if you are looking for a plug-and-play solution or a quick tool to solve a specific, isolated problem without diving into the underlying MLOps principles.

Machine Learning Engineering MLOps Model Deployment Experiment Tracking Cloud MLOps
No License Stale 6m No Package No Dependents
Maintenance 2 / 25
Adoption 4 / 25
Maturity 7 / 25
Community 13 / 25

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Stars

8

Forks

2

Language

Jupyter Notebook

License

Last pushed

Jul 05, 2025

Commits (30d)

0

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