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Course summary

1. Course summary

Person: This bring us to the end of the Productions ML Systems course-- the first course in the specialization. Before you go, let's quickly recap what you've learned. In the first module, Architecting Production ML Systems, we explored what an ML system should be able to do and the components that take responsibility for those actions. We also introduced two decisions that system architects will have to make: Whether to conduct dynamic or static training, or even conduct dynamic or static inference. In module two, Designing Adaptable ML Systems, you saw how change can effect an ML System and what can be done to mitigate those effects. In module three, Designing High-Performance ML Systems, we explored how to optimize the performance of an ML System by choosing the right hardware and removing bottlenecks. And finally, in module four, Building Hybrid ML Systems, you learned about the technology behind hybrid systems that allows you to run your workloads on the cloud, on the edge using mobile devices, or on-premises. We encourage you to continue to the next course, Image Processing and Generation with Google Cloud, where we'll explore convolutional networks transfer learning, and Tensor Processing Units. Thanks for learning with us.

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