mlops-roadmap
MLOps strategy
Collaborative effort to define and document the key milestones and strategies for adopting and implementing Machine Learning Operations (MLOps) practices in software development
16 stars
4 watching
5 forks
last commit: about 5 years ago Related projects:
Repository | Description | Stars |
---|---|---|
| A platform for managing and orchestrating the machine learning lifecycle | 3,581 |
| A tool to help teams assess and improve their machine learning project's maturity in MLOps practices | 59 |
| Collaborative community for practitioners and experts in managing the end-to-end lifecycle of machine learning projects | 607 |
| A lightweight MLOps library for small teams and individuals to manage machine learning model development lifecycle | 22 |
| An MLOps platform providing tools and services to deploy, collaborate and manage machine learning models and data pipelines in a simplified way | 96 |
| A reference architecture and starter kit for operationalizing machine learning models in production environments. | 37 |
| Automates the end-to-end machine learning workflow from code commit to model deployment | 18 |
| Provides end-to-end examples and solutions for operationalizing ML workflows with Azure Machine Learning | 3 |
| A suggested learning path for Android development | 4,129 |
| An MLOps platform providing tools and services for efficient machine learning development and deployment | 214 |
| A comprehensive guide to learning Android app development | 149 |
| Building and deploying Machine Learning models for production use | 56 |
| Guides teams through their DevOps transformation journey with a set of capabilities and guidelines to increase efficiency, effectiveness, and team happiness. | 585 |
| A collection of resources and examples around machine learning for education and development | 954 |
| Provides resources and patterns for implementing machine learning workflows on Google Cloud Platform | 784 |