hydro-serving
Model serving platform
A MLOps platform for deploying and versioning machine learning models in production.
MLOps Platform
271 stars
24 watching
42 forks
Language: Mustache
last commit: 24 days ago
Linked from 2 awesome lists
machine-learningmodelspipelinesrealtimescikit-learnscoringserverlessservingsparktensorflow
Related projects:
Repository | Description | Stars |
---|---|---|
star-whale/starwhale | An MLOps platform providing tools and services for efficient machine learning development and deployment | 208 |
omegaml/omegaml | An end-to-end MLOps platform that streamlines machine learning development, deployment, and collaboration. | 95 |
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 |
h2oai/h2o-tutorials | Provides tutorials and training materials for machine learning with H2O, a platform for building predictive models. | 1,483 |
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 |
oxid15/cascade | A lightweight MLOps library for small teams and individuals to manage machine learning model development lifecycle | 22 |
polyaxon/polyaxon | A platform for managing and orchestrating the machine learning lifecycle | 3,571 |
combust/mleap | Enables deployment of machine learning data pipelines and algorithms to production | 1,504 |
hydrospheredata/mist | A platform for deploying and managing Spark applications in a serverless environment | 326 |
logicalclocks/hopsworks | A platform for managing machine learning data and workflows, integrating feature engineering, governance, and model serving capabilities. | 1,165 |
mosecorg/mosec | A high-performance ML model serving framework | 790 |
h2oai/sparkling-water | Integrates H2O's machine learning capabilities with Apache Spark for big data processing and analytics | 968 |
caraml-dev/merlin | A platform for deploying and serving machine learning models in a scalable, cost-efficient, and easy-to-use manner | 167 |
deltares/hydromt | Automates spatial geoscientific model building and analysis from raw data | 74 |
hydroframe/hf_hydrodata | A Python package providing access to national hydrologic simulations and gridded model input datasets. | 6 |