hands-on-train-and-deploy-ml
ML API builder
A step-by-step guide to building and deploying a Machine Learning-based REST API for predicting crypto prices using Python.
Train and Deploy an ML REST API to predict crypto prices, in 10 steps
769 stars
7 watching
131 forks
Language: Python
last commit: 10 months ago
Linked from 2 awesome lists
cryptodeploymentmlmlops
Related projects:
Repository | Description | Stars |
---|---|---|
| Automates the setup and training of machine learning algorithms on remote servers | 316 |
| Enables deployment of machine learning pipelines from Spark and Scikit-Learn to production | 1,506 |
| Simplifies deployment of machine learning models to production-ready endpoints with minimal configuration and cost. | 1,341 |
| Automates the end-to-end machine learning workflow from code commit to model deployment | 18 |
| An MLOps Python library that enables data scientists to deploy and orchestrate machine learning pipelines for production-ready inference. | 117 |
| Teaches Machine Learning fundamentals in Python using Scikit-Learn and TensorFlow | 5 |
| A lightweight MLOps library for small teams and individuals to manage machine learning model development lifecycle | 22 |
| A Python package to build and experiment with machine learning pipelines using Kedro, MLflow, and other tools | 226 |
| An open-source platform for building and managing machine learning pipelines with Python | 976 |
| A framework to perform time series forecasting using machine learning models on large datasets. | 924 |
| Builds machine learning platforms on Kubernetes by combining popular tools and services | 381 |
| Automates machine learning model creation and optimization for complex datasets | 1,857 |
| Automated machine learning protocols for cheminformatics using Python | 39 |
| A Django plugin for deploying river online machine learning models | 11 |
| An MLOps platform providing tools and services to deploy, collaborate and manage machine learning models and data pipelines in a simplified way | 96 |