MLSpec

ML pipeline schema

A framework to standardize intercomponent schemas for multi-stage machine learning pipelines

GitHub

7 stars
2 watching
1 forks
last commit: about 5 years ago

Related projects:

Repository Description Stars
visenger/ml-project-template A template project facilitating structured machine learning development and deployment phases 4
visenger/mlops Provides end-to-end examples and solutions for operationalizing ML workflows with Azure Machine Learning 3
visenger/handson-ml Teaches Machine Learning fundamentals in Python using Scikit-Learn and TensorFlow 6
ml-schema/core Develops and maintains a standard ontology of machine learning concepts and their relationships with other vocabularies and ontologies 26
combust/mleap Enables deployment of machine learning data pipelines and algorithms to production 1,504
elpinal/bright-ml A statically-typed programming language with a unique module system and support for type inference and mutually-recursive definitions. 80
sematic-ai/sematic An open-source platform for building and managing machine learning pipelines with Python 974
lightforever/mlcomp A distributed framework for building and managing complex machine learning pipelines with a user-friendly interface. 188
abstractsdk/schemas A repository for defining and managing interfaces for smart contract schemas used in Abstract SDKs. 0
guanh01/cs692-mlsys A repository of papers and resources on systems for machine learning and machine learning for systems. 56
valdanylchuk/swiftlearner A collection of machine learning algorithms implemented in Scala for prototyping and experimentation. 39
aronchick/mlops-pipeline Automates the end-to-end machine learning workflow from code commit to model deployment 18
skner/iasi-pipe A data pipeline framework for processing Ion Torrent sequencing data 2
pcg-mlp/ksanallm An LLM inference and serving engine with high performance, flexibility, and support for various hardware platforms. 288
ibm-cloud-architecture/refarch-ml-ops A reference architecture and starter kit for operationalizing machine learning models in production environments. 37