Baya Systems and Semidynamics Team Up for RISC-V SoC Development
Baya Systems and Semidynamics have announced a collaboration to accelerate the development of RISC-V system-on-chip (SoC) platforms for artificial intelligence (AI), machine learning (ML), and high-performance computing (HPC) applications, announced in a press release. This partnership aims to optimize data movement for next-generation applications by integrating Semidynamics' 64-bit RISC-V processor IP cores with Baya Systems' WeaveIP™ Network on Chip (NoC) system IP.
The collaboration focuses on enhancing the efficiency of data transport, which is crucial for modern workloads. Baya Systems' WeaveIP™ technology is designed for high-bandwidth and low-latency data transport, while their WeaverPro™ platform enables rapid system-level optimization. This integration is expected to eliminate data transport bottlenecks, allowing for improved performance in AI and HPC applications.
Baya Systems, having recently secured Series B funding, is positioned as a key player in semiconductor innovation. Their NoC solutions are engineered for scalability and complement Semidynamics' high-bandwidth architectures. Both companies will showcase their technologies at Embedded World 2025 in Nuremberg, Germany, from March 11-13.
We hope you enjoyed this article.
Consider subscribing to one of several newsletters we publish like Silicon Brief.
Also, consider following us on social media:
More from: Chips & Data Centers
Subscribe to Silicon Brief
Weekly coverage of AI hardware developments including chips, GPUs, cloud platforms, and data center technology.
Whitepaper
Stanford HAI’s 2025 AI Index Reveals Record Growth in AI Capabilities, Investment, and Regulation
The 2025 AI Index by Stanford HAI provides a comprehensive overview of the global state of artificial intelligence, highlighting significant advancements in AI capabilities, investment, and regulation. The report details improvements in AI performance, increased adoption in various sectors, and the growing global optimism towards AI, despite ongoing challenges in reasoning and trust. It serves as a critical resource for policymakers, researchers, and industry leaders to understand AI's rapid evolution and its implications.
Read more