온디맨드 웨비나

Doing Research with Catapult HLS at Harvard

예상 소요 시간: 29분

공유

One of them is about proposing adaptive floating-point (FP) quantization to replace integer (INT) quantization for NNs.

This presentation introduces Harvard's experiences of using Catapult HLS in research projects. Since 2018, we have taped out several chips with hardware components designed in SystemC. The HLS design flow has been very helpful to shorten development cycle of accelerators as well as providing a way to quickly prototype different research ideas. First half of the talk focuses on our learnings with the HLS tool. Even though comparing with Verilog RTL, SystemC allows us to design hardware in a more concise and efficient manner, we find it difficult at first to figure out what kind of coding is more appropriate. Specifically, how to pass HLS and achieve pipeline initial interval “II = 1” for critical parts of accelerator designs. Throughout many trial and errors, we have developed intuitions and strategies for SystemC coding. In addition, we also extensively leverage standard hardware IPs provided in Mentor Algorithmic C and NVIDIA MatchLib to implement our designs. For the second half, we share some projects involving Catapult HLS. One of them is about proposing adaptive floating-point (FP) quantization to replace integer (INT) quantization for NNs, especially for large-scale NLP models. For hardware evaluation of this idea, we utilize Catapult HLS and PowerPro to compare power and area of FP and INT MAC datapath designs. The work has been selected as the best research paper in DAC 2020 conference.

발표자 소개

Harvard University

En-Yu Daniel Yang

PhD Student

En-Yu (Daniel) Yang is a PhD student in Computer Science at Harvard. He received B.S. in Electrical Engineering from National Tsing Hua University in 2018. His research focuses on specialized architecture and hardware design for machine learning applications. He has been working on designing accelerators using SystemC with Catapult HLS tool, and some of his work is accepted in DAC’20 and ISSCC’21 conferences.

관련 자료

IoT 및 블록체인을 활용하여 농장에서 식탁까지 공급망 투명성 확보 – ARC 애널리스트 리포트
White Paper

IoT 및 블록체인을 활용하여 농장에서 식탁까지 공급망 투명성 확보 – ARC 애널리스트 리포트

식품 및 음료 회사가 클라우드 기반의 개방형 IoT 운영 체제인 MindSphere를 사용하여 농장에서 식탁까지 투명성을 확보함으로써 이점을 얻는 방법에 대해 자세히 알아보십시오.

블록체인을 활용한 식음료 추적 가능성 솔루션
White Paper

블록체인을 활용한 식음료 추적 가능성 솔루션

블록체인을 활용한 추적 가능성 솔루션을 통해 모든 식음료 재료를 완전하게 추적하여 식품 안전과 투명성을 개선할 수 있습니다.