Workshops on Extreme Scale Design Automation (ESDA) Challenges and
Opportunities for 2025 and Beyond
- URL: http://arxiv.org/abs/2005.01588v1
- Date: Mon, 4 May 2020 15:58:09 GMT
- Title: Workshops on Extreme Scale Design Automation (ESDA) Challenges and
Opportunities for 2025 and Beyond
- Authors: R. Iris Bahar, Alex K. Jones, Srinivas Katkoori, Patrick H. Madden,
Diana Marculescu, and Igor L. Markov
- Abstract summary: The CCC workshop series on Extreme-Scale Design Automation studied challenges faced by the EDA community.
This document represents a summary of the findings from these meetings.
- Score: 10.439182852633788
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Integrated circuits and electronic systems, as well as design technologies,
are evolving at a great rate -- both quantitatively and qualitatively. Major
developments include new interconnects and switching devices with atomic-scale
uncertainty, the depth and scale of on-chip integration, electronic
system-level integration, the increasing significance of software, as well as
more effective means of design entry, compilation, algorithmic optimization,
numerical simulation, pre- and post-silicon design validation, and chip test.
Application targets and key markets are also shifting substantially from
desktop CPUs to mobile platforms to an Internet-of-Things infrastructure. In
light of these changes in electronic design contexts and given EDA's
significant dependence on such context, the EDA community must adapt to these
changes and focus on the opportunities for research and commercial success. The
CCC workshop series on Extreme-Scale Design Automation, organized with the
support of ACM SIGDA, studied challenges faced by the EDA community as well as
new and exciting opportunities currently available. This document represents a
summary of the findings from these meetings.
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