A framework for acceleration of CNN training on deeply-pipelined FPGA clusters with work and weight load balancing

A framework for acceleration of CNN training on deeply-pipelined FPGA clusters with work and weight load balancing

Geng, T.
proceedings - 2018 international conference on field-programmable logic and applications, fpl 2018 2018 pp. 394-398
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