Practical Summary: It's important to make efficient use of both server-side and on-device compute resources when developing ML applications.
How To Statically Quantize A Pytorch Model Eager Mode - Helpful Context
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It's important to make efficient use of both server-side and on-device compute resources when developing ML applications.
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