With the rapid growth of deep neural networks, their increasing demand for computing resources poses significant challenges to resource-constrained edge devices. Field Programmable Gate Array (FPGA) and Coarse-Grained Reconfigurable Arrays (CGRA) have emerged as promising solutions due to their parallelism and energy efficiency advantages. This paper conducts a comprehensive comparative analysis of FPGA and CGRA for accelerating deep learning workloads. It begins by introducing convolutional neural network architecture and optimization techniques. Various dataflow strategies are discussed for memory access optimization. The paper then analyzes representative cases to clarify FPGA and CGRA architectural advantages, along with optimization techniques through different dataflow strategies. The comparison reveals that FPGA offers higher throughput with fine-grained programmability for flexible bit-level operations and dataflow control. In contrast, CGRA excels in energy efficiency and area consumption with coarse-grained custom processing units and optimized on-chip interconnection networks. Quantitative comparisons are provided for throughput, energy efficiency, and area occupation. These insights can serve as a reference for selecting the appropriate architecture when designing custom hardware accelerators for deep learning workloads.
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