Published Jul 13, 2020
The Case for Hardware-ML Model Co-design with Diana Marculescu - #391
Diana Marculescu delves into the co-design of hardware and machine learning models with host Sam Charrington, revealing strategies for optimizing efficiency through predictive models, unified metrics, and integrating hardware constraints in neural architecture search to achieve power and memory savings without losing accuracy.

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