A COMPARATIVE REVIEW OF FPGA AND GPU ACCELERATORS FOR AI

Main Article Content

Аннотация:

This investigation presents a brief yet thorough comparative assessment of FPGA (SoC)–based and GPU-based AI accelerators across applications that encompass edge devices to data center training environments. Primary performance parameters—latency, throughput, energy efficiency, programmability, and scalability—are thoroughly evaluated with a specific concentration on deep neural network inference and training. The research further highlights the significance of hardware/software co-design and high-level synthesis (HLS) in augmenting FPGA performance. Representative platforms, such as the one from Xilinx and Nvidia, are referenced to illustrate prevailing trends. Findings suggest that while GPUs excel in throughput and development simplicity, FPGAs exhibit reduced latency and enhanced energy efficiency in power-sensitive or real-time applications.

Article Details

Как цитировать:

Usmonov, M. ., Asretdinova, L. ., & Mahamatov, N. (2025). A COMPARATIVE REVIEW OF FPGA AND GPU ACCELERATORS FOR AI. Молодые ученые, 3(8), 68–75. извлечено от https://in-academy.uz/index.php/yo/article/view/47841

Библиографические ссылки:

M. Vaithianathan et al., “Comparative Study of FPGA and GPU for High-Performance Computing and AI,” ESP Int. J. Adv. Comput. Technol., vol. 1, no. 1, pp. 37–46, 2024.

D. Goz et al., “Performance and Energy Footprint Assessment of FPGAs and GPUs on HPC Systems Using Astrophysics Application,” Computation, vol. 8, no. 2, Art. 34, 2020.

E. Nurvitadhi et al., “Can FPGAs Beat GPUs in Accelerating Next-Generation Deep Neural Networks?” in Proc. ACM/SIGDA Int. Symp. Field-Programmable Gate Arrays (FPGA), 2017, pp. 271–274.

C. Vasile, A. Ulmămei, and C. Bîră, “Image Processing Hardware Acceleration—A Review of Operations Involved and Current Hardware Approaches,” J. Imaging, vol. 10, no. 12, p. 298, 2024.

T. P. D. Gamage, M. Z. K. Siddiqui, and H. T. Mouftah, “Novel Case Study and Benchmarking of AlexNet for Edge AI: From CPU and GPU to FPGA,” in Proc. IEEE CCECE, 2020, pp. 1–6.

M. Qasaimeh et al., “Comparing Energy Efficiency of CPU, GPU and FPGA Implementations for Vision Kernels,” in Proc. IEEE Int. Conf. Embedded Software and Systems (ICESS), 2019, pp. 1–8.

S. Biookaghazadeh and M. Zhao, “Are FPGAs Suitable for Edge Computing?” in Proc. 2nd USENIX Workshop on Hot Topics in Edge Computing (HotEdge), 2018, pp. 1–6.

A. Putnam et al., “A Reconfigurable Fabric for Accelerating Large-Scale Datacenter Services,” in Proc. 41st Int. Symp. Computer Architecture (ISCA), 2014, pp. 13–24.