Automating Machine Learning Testing using GitHub Actions and DeepChecks
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Updated
Jul 16, 2024 - Python
Automating Machine Learning Testing using GitHub Actions and DeepChecks
Modelling and prediction of default + deployment via AWS Sagemaker
Repository contains the detail about ML model deployment and building end-to-end ML pipeline for production
Comparison between several Python data profile libraries.
A production-grade MLOps pipeline for image classification — featuring ZenML orchestration, MLflow tracking, DeepChecks validation, and automated model deployment.
"End-to-end MLOps pipeline for image classification using ZenML, MLflow, and TensorFlow. Features automated training, continuous deployment, drift detection with Deepchecks, and a Streamlit frontend."
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