seldon-server

ML deployment platform

A platform for deploying machine learning models into production on-premise or in the cloud using Kubernetes and various machine learning frameworks.

Machine Learning Platform and Recommendation Engine built on Kubernetes

GitHub

1k stars
135 watching
299 forks
Language: Java
last commit: over 4 years ago
awsazureclouddeep-learningdeploymentdockergcpjavakafkakafka-streamskubernetesmachine-learningmicroservicespredictionpythonrecommendation-enginerecommender-systemseldonsparktensorflow

Related projects:

Repository Description Stars
axsaucedo/seldon-core Platform to deploy machine learning models on Kubernetes at scale 18
seldonio/mlserver An inference server for machine learning models with support for multiple frameworks and scalable deployment options. 720
deploykf/deploykf Builds machine learning platforms on Kubernetes by combining popular tools and services 376
caraml-dev/merlin A platform for deploying and serving machine learning models in a scalable, cost-efficient, and easy-to-use manner 167
seldonio/tempo An MLOps Python library that enables data scientists to deploy and orchestrate machine learning pipelines for production-ready inference. 116
samsung/veles A distributed machine learning platform for rapid Deep learning application development 906
hydrospheredata/hydro-serving A MLOps platform for deploying and versioning machine learning models in production. 271
combust/mleap Enables deployment of machine learning data pipelines and algorithms to production 1,504
h2oai/h2o-3 An in-memory machine learning platform that supports various algorithms and provides tools for building, deploying, and scaling machine learning models 6,922
aws-samples/machine-learning-using-k8s Demystifies deploying machine learning models on Kubernetes 163
logicalclocks/hopsworks A platform for managing machine learning data and workflows, integrating feature engineering, governance, and model serving capabilities. 1,165
jedld/tensor_stream A Ruby-based framework for building and deploying machine learning models on various hardware platforms. 507
ebhy/budgetml Simplifies deployment of machine learning models to production-ready endpoints with minimal configuration and cost. 1,338
star-whale/starwhale An MLOps platform providing tools and services for efficient machine learning development and deployment 208
apache/incubator-samoa A distributed streaming machine learning framework that enables development of new algorithms and execution in multiple processing engines 248