资源与支持

SiFive 博客

来自 RISC-V 专家的最新洞察与深度技术解析

March 30, 2023

SiFive Expands U.S. Presence with New Office in Boston

In March, SiFive announced the opening of its new office in the greater Boston area. 2022 was a monumental year for SiFive and 2023 is shaping up to be another strong year. Marlborough was an ideal location for the new office as the company continues to expand its footprint and serve our growing customer base located in Massachusetts and the surrounding Northeast region.

The office will be led by Shubu Mukherjee, vice president of architecture at SiFive, with plans to grow its headcount in the next 12-to-24 months. The greater Boston area is rich in talent in all areas of semiconductor development, including architecture, RTL, digital verification, and physical design, as well as sales, marketing, and business development. Having a physical presence in the area will help reach both experienced professionals as well as tap into the strong University programs in the region.

SiFive Boston team members celebrate opening SiFive is always seeking talented designers and engineers ready to make an impact on the world and help accelerate the adoption of RISC-V. You can always check our website for open roles. Careers

David Miller
David Miller
Head of Corporate Communications, SiFive

Read more Insights from the RISC-V Experts

Investing In Our Next Chapter of Growth
Blog Post
Investing In Our Next Chapter of Growth
Today, we are proud to announce one of the most significant milestones in our journey: a $400M funding round led by Atreides Management with other A-list investors, valuing the company at $3.65 billion and will accelerate SiFive’s RISC-V CPU and AI IP solutions into the heart of the data center and AI infrastructure markets.
RISC-V 代码模型(2026 版)
Blog Post
RISC-V 代码模型(2026 版)
RISC-V 指令集架构 (ISA) 在设计上兼顾简洁与模块化。为了实现上述设计目标,RISC-V 有意识地减少了寻址方式的种类,从而降低了实现复杂 ISA 时的一项重大成本。寻址方式成本高昂:在小型设计中,会增加解码开销;在大型设计中,则会引入隐式依赖成本。
模块化是 AI 的未来:为何 SiFive-NVIDIA 的里程碑意义重大
Blog Post
模块化是 AI 的未来:为何 SiFive-NVIDIA 的里程碑意义重大
AI 的巨大潜力目前正受限于一个主要瓶颈:数据传输。在当今系统中,GPU 的处理速度往往受到互联技术以及 CPU、加速器与系统其余部分间数据流动效率的限制。