Parris
ML server builder
Automates the setup and training of machine learning algorithms on remote servers
Parris, the automated infrastructure setup tool for machine learning algorithms.
316 stars
17 watching
23 forks
Language: Python
last commit: almost 7 years ago
Linked from 1 awesome list
Related projects:
Repository | Description | Stars |
---|---|---|
minimaxir/automl-gs | Automates machine learning model creation and optimization for complex datasets | 1,853 |
paulescu/hands-on-train-and-deploy-ml | A step-by-step guide to building and deploying a Machine Learning-based REST API for predicting crypto prices using Python. | 762 |
ml-tooling/ml-workspace | An all-in-one web-based IDE for machine learning and data science | 3,438 |
jvalegre/robert | Automated machine learning protocols for cheminformatics using Python | 38 |
pmerienne/trident-ml | A real-time online machine learning library built on top of Storm and Trident. | 382 |
jgreenemi/mlpleasehelp | A search engine for machine learning resources | 5 |
autoviml/auto_viml | Automatically builds multiple machine learning models using a single line of code. | 525 |
eightbec/fastapi-ml-skeleton | A FastAPI-based framework for serving machine learning models in production-ready applications | 394 |
vsoch/django-river-ml | A Django plugin for deploying river online machine learning models | 10 |
vincentclaes/datajob | Automates end-to-end machine learning pipeline deployment with AWS services | 110 |
ryuk17/machinelearning | This is a collection of machine learning algorithms implemented in Python 3.6. | 103 |
mitmath/18337 | A course project on parallel computing and scientific machine learning using Julia programming language | 226 |
open-mmlab/mmengine | Provides a flexible and configurable framework for training deep learning models with PyTorch. | 1,179 |
sematic-ai/sematic | An open-source platform for building and managing machine learning pipelines with Python | 974 |
lge-arc-advancedai/auptimizer | Automates model building and deployment process by optimizing hyperparameters and compressing models for edge computing. | 200 |