Positive/Negative Approximate Multipliers for DNN Accelerators
Ourania Spantidi,
Georgios Zervakis,
Iraklis Anagnostopoulos
et al.
Abstract:Recent Deep Neural Networks (DNNs) managed to deliver superhuman accuracy levels on many AI tasks. Several applications rely more and more on DNNs to deliver sophisticated services and DNN accelerators are becoming integral components of modern systems-on-chips. DNNs perform millions of arithmetic operations per inference and DNN accelerators integrate thousands of multiply-accumulate units leading to increased energy requirements. Approximate computing principles are employed to significantly lower the energy… Show more
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