LOW-COST FIELD PROGRAMMABLE GATE ARRAY ACCELERATES DEEP Q-LEARNING

Jinghui Wang, Yuanchao Zhao
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Abstract

Abstract. Due to recent advances in digital technologies, deep reinforcement learning has emerged, and has demonstrated its ability and effectiveness in solving complex learning problems not possible before. In particular, convolution neural networks (CNNs) have been demonstrated their effectiveness in reinforcement learning. However, they require intensive CPU operations and memory bandwidth that make general CPUs fail to achieve desired performance levels. In this paper, we used some low-cost field programming gates array (FPGA) designed a parallel Deep Qlearning accelerator to solve this problem. And the system has high efficient and flexibility.
低成本现场可编程门阵列加速深度q -学习
摘要由于最近数字技术的进步,深度强化学习已经出现,并且已经证明了它在解决以前不可能解决的复杂学习问题方面的能力和有效性。特别是卷积神经网络(cnn)在强化学习中的有效性已经得到了证明。然而,它们需要密集的CPU操作和内存带宽,这使得普通CPU无法达到预期的性能水平。在本文中,我们使用一些低成本的现场编程门阵列(FPGA)设计了一个并行深度Qlearning加速器来解决这个问题。该系统具有较高的效率和灵活性。
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