Welcome to niceML 🍦, a Python-based MLOps framework that uses TensorFlow and Dagster. This framework streamlines the development, and maintenance of machine learning models, providing an end-to-end solution for building efficient and scalable pipelines.
Project description
This is the readme for niceML
niceML is a tool to help you set up your machine learning projects faster. It provides pipelines for a variety of ML tasks, like
- Object Detection,
- Semantic Segmentation,
- Regression,
- Classification
- and others.
All you have to do is configure your pipeline, and you're ready to go!
You can also add your own components to the build-in dashboard, where you can compare the results and performance of your ML models.
Further documentation is available at niceML.io.
A lot more documentation will follow soon!
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