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How To: Dynamic Batch, Low Bit Quantization Calibration, FP16 Inference, Training via TVM #1

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kalcohol opened this issue Aug 13, 2019 · 3 comments

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@kalcohol
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Most wanted:
Dynamic Batch
Low Bit Quantization Calibration
FP16 Inference
Training via TVM

Low level:
Adapt to a new CPU/GPU Architecture, such as MIPS, Specialization RISC-V(with special SIMD implementation).

@kalcohol
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kalcohol commented Aug 13, 2019

The more C++ courses, the less injuries caused.

@kalcohol
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add neural architecture search to the list?

@yidawang
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yidawang commented Nov 9, 2019

It depends on the latest advance of the area. We will cover some on-going research topics at the end.

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