Production-Level-Deep-Learning
Production system design
A guide to building production-ready deep learning systems for real-world applications
A guideline for building practical production-level deep learning systems to be deployed in real world applications.
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last commit: over 1 year ago aiartificial-intelligencedeep-learningdeploymentkubeflowmachine-learningpipelinepractical-machine-learningproduction-systemscalable-applicationssystem-designtfx
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