April 2020
Intermediate to advanced
436 pages
10h 16m
English
In the previous chapter, we covered machine learning (ML) deployments in Azure using automated Azure Machine Learning deployments for real-time scoring services, Azure Pipelines for batch prediction services, and ONNX, FPGAs, and Azure IoT Edge for alternative deployment targets. If you have read all of the chapters preceding this one, you will have seen and implemented a complete end-to-end ML pipeline with data cleansing, preprocessing, labeling, experimentation, model development, training, optimization, and deployment.
Congratulations on making it this far! You now possess all the skills needed to connect the bits and pieces together for MLOps and to create DevOps pipelines for your ML models. ...
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