With the growing computational demands of neural networks, modern processors must provide efficient acceleration while maintaining flexibility. RISC-V, an open-source instruction set architecture (ISA), has emerged as a promising alternative for neural network acceleration due to its extensibility, customization, and hardware-software co-design capabilities. This paper explores how RISC-V architecture benefits neural networks, focusing on its scalability, vector processing capabilities, and dedicated extensions such as the RISC-V Vector (RVV) and Bit Manipulation (Bitmanip) extensions. We analyze its performance in deep learning workloads, compare it with conventional architectures, and propose optimizations for enhanced efficiency.
MohammadHossein AskariHemmatOlexa BilaniukSean WagnerYvon SavariaJean‐Pierre David
Nicolás RodríguezDiego Gigena IvanovichMartín VillemurP. Julián
Feihong DongLin-Jie JiangCunyang LuanRong SunYongkui Yang