オンデマンド・ウェビナー

How NVIDIA Uses High-Level Synthesis Tools for AI Hardware Accelerator Research

視聴時間の目安: 19 分

共有

To keep up with the rapid pace of change in AI/ML workloads, NVIDIA Research leverages a High-Level Synthesis (HLS) based design methodology based off SystemC and libraries like MatchLib for maximizing code reuse and minimizing design verification effort.

Artificial Intelligence (AI) and Machine Learning (ML) are rapidly transforming many aspects of integrated circuit (IC) design. The high computational demands and evolving AI/ML workloads are dramatically impacting the architecture, VLSI implementation, and circuit design tradeoffs of hardware accelerators. To keep up with the rapid pace of change in AI/ML workloads, NVIDIA Research leverages a High-Level Synthesis (HLS) based design methodology based off SystemC and libraries such as MatchLib for maximizing code reuse and minimizing design verification effort. This methodology provides for rapid co-optimization of AI algorithms and hardware architecture and has enabled NVIDIA Research to tape out a state-of-the-art 5nm deep learning inference accelerator testchip that achieves up to 95.6 TOPS/ with per-vector scaled 4-bit quantization for Transformer neural network inference.

講演者の紹介

NVIDIA

Brucek Khailany

Senior Director of ASIC and VLSI Research

Brucek Khailany joined NVIDIA in 2009 and currently leads the ASIC & VLSI Research group. During his time at NVIDIA, he has contributed to projects within research and product groups on topics spanning computer architecture, unit micro-architecture, and ASIC and VLSI design techniques. Dr. Khailany is also currently the Principal Investigator to a NVIDIA-led team under the DARPA CRAFT project researching high-productivity design methodology and design tools. Previously, Dr. Khailany was a Co-Founder and Principal Architect at Stream Processors, Inc. (SPI) where he led research and development activities related to highly-parallel programmable processor architectures. He received his Ph.D. and Masters in Electrical Engineering from Stanford University and received B.S.E. degrees in Electrical Engineering and Computer Engineering from the University of Michigan.

関連情報

航空宇宙向けMBSEを使用して、複雑化と統合の問題を克服
Solution Brief

航空宇宙向けMBSEを使用して、複雑化と統合の問題を克服

航空宇宙システムの開発を加速させ、敏捷性を高めるとともに、安全性、信頼性の高い製品を予算内でより迅速に提供できます。電子ブックで詳細をご覧ください。

航空宇宙業界向けMBSEプロセスの導入
Brochure

航空宇宙業界向けMBSEプロセスの導入

航空宇宙関連企業の各ニーズに合わせてMBSE統合計画をカスタマイズします。シーメンスのチームがお客様に寄り添ってプロセスの各段階を通じてサポートします。詳細情報