Dikbayir, 2019 - Google Patents
Kernel and launch time optimizations for deep learning frameworksDikbayir, 2019
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- 9139875445421480040
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- Dikbayir D
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Deep learning has become a prominent tool for extracting and exploring information in a wide selection of areas ranging from computer vision to natural language processing. With the increasing availability of modern hardware accelerators like GPUs and FPGAs, deep …
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