Lincoln AI Computing Survey (LAICS) Update
- URL: http://arxiv.org/abs/2310.09145v1
- Date: Fri, 13 Oct 2023 14:36:26 GMT
- Title: Lincoln AI Computing Survey (LAICS) Update
- Authors: Albert Reuther and Peter Michaleas and Michael Jones and Vijay
Gadepally and Siddharth Samsi and Jeremy Kepner
- Abstract summary: This paper is an update of the survey of AI accelerators and processors from past four years.
It collects and summarizes the current commercial accelerators that have been publicly announced.
Market segments are highlighted on the scatter plot, and zoomed plots of each segment are also included.
- Score: 8.790207519640472
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This paper is an update of the survey of AI accelerators and processors from
past four years, which is now called the Lincoln AI Computing Survey - LAICS
(pronounced "lace"). As in past years, this paper collects and summarizes the
current commercial accelerators that have been publicly announced with peak
performance and peak power consumption numbers. The performance and power
values are plotted on a scatter graph, and a number of dimensions and
observations from the trends on this plot are again discussed and analyzed.
Market segments are highlighted on the scatter plot, and zoomed plots of each
segment are also included. Finally, a brief description of each of the new
accelerators that have been added in the survey this year is included.
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