fastapi-ml-skeleton
ML server framework
A FastAPI-based framework for serving machine learning models in production-ready applications
FastAPI Skeleton App to serve machine learning models production-ready.
394 stars
6 watching
83 forks
Language: Python
last commit: 5 months ago
Linked from 1 awesome list
fastapimachine-learningmodel-servingpythonpython3
Related projects:
Repository | Description | Stars |
---|---|---|
mosecorg/mosec | A high-performance ML model serving framework | 790 |
mirzadelic/fastapi-starter-project | A FastAPI starter project that sets up a basic API with models and migrations using SQLModel and Alembic. | 116 |
erfanzar/easydel | A flexible framework for training and serving machine learning models with JAX/Flax | 206 |
openbmb/bmlist | A curated list of large machine learning models tracked over time | 341 |
jgreenemi/parris | Automates the setup and training of machine learning algorithms on remote servers | 316 |
monadicsystems/okapi | A data-driven micro web framework for building RESTful APIs in Haskell | 104 |
arthurhenrique/cookiecutter-fastapi | A template to create FastAPI projects with machine learning and other features | 493 |
msoedov/langcorn | A framework for serving large language models with a robust and efficient API | 906 |
mmorafah/pacfl | Implementation of federated learning algorithms for distributed machine learning on private client data | 37 |
h2oai/article-information-2019 | A framework for building and evaluating machine learning systems with high accuracy and interpretability, particularly in human-centered applications. | 13 |
beastbyteai/falcon | Automates machine learning model training using pre-set configurations and modular design. | 159 |
a3data/hermione | A framework for simplifying machine learning development and deployment | 207 |
xjiajiahao/federated-minimax | A framework for developing and testing decentralized machine learning algorithms | 2 |
microsoft/0xdeca10b | A framework for hosting and training machine learning models on a blockchain, enabling secure sharing and prediction without requiring users to pay for data or model updates. | 556 |
mlcommons/inference | Measures the performance of deep learning models in various deployment scenarios. | 1,236 |