refarch-ml-ops

ML ops framework

A reference architecture and starter kit for operationalizing machine learning models in production environments.

Reference architecture for machine learning operations

GitHub

37 stars
12 watching
13 forks
last commit: over 4 years ago

Related projects:

Repository Description Stars
omegaml/omegaml An end-to-end MLOps platform that streamlines machine learning development, deployment, and collaboration. 95
tdcox/mlops-roadmap Collaborative effort to define and document the key milestones and strategies for adopting and implementing Machine Learning Operations (MLOps) practices in software development 16
oxid15/cascade A lightweight MLOps library for small teams and individuals to manage machine learning model development lifecycle 22
visenger/mlops Provides end-to-end examples and solutions for operationalizing ML workflows with Azure Machine Learning 3
cdfoundation/sig-mlops An initiative focused on developing and sharing best practices for integrating machine learning into software development workflows 604
mlr-org/mlr3 Provides an object-oriented framework for efficient machine learning in R 945
runllm/aqueduct An MLOps framework that allows developers to define and deploy machine learning workloads on any cloud infrastructure using a Python native API. 521
mlr-org/mlr Provides an infrastructure for machine learning in R, enabling users to focus on experiments without writing lengthy wrappers and boilerplate code. 1,643
sethjuarez/numl Provides a set of reusable C# components for building machine learning models in .NET 430
jedld/tensor_stream A Ruby-based framework for building and deploying machine learning models on various hardware platforms. 507
mlreef/mlreef A platform for collaboration, data management, and reproducibility in machine learning development 1,442
aporia-ai/mlplatform-workshop An open-source project providing a basic framework for building a full-fledged machine learning platform. 434
polyaxon/polyaxon A platform for managing and orchestrating the machine learning lifecycle 3,571
eugeneyan/applied-ml Curated collection of papers and articles on data science and machine learning practices in production environments. 27,348
operationalfallacy/max-lambda-out A resource for maximizing AWS Lambda's capacity without incurring excessive costs 0