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Modeling Analog-Digital-Converter Energy and Area for Compute-In-Memory Accelerator Design (2404.06553v2)

Published 9 Apr 2024 in cs.AR

Abstract: Analog Compute-in-Memory (CiM) accelerators use analog-digital converters (ADCs) to read the analog values that they compute. ADCs can consume significant energy and area, so architecture-level ADC decisions such as ADC resolution or number of ADCs can significantly impact overall CiM accelerator energy and area. Therefore, modeling how architecture-level decisions affect ADC energy and area is critical for performing architecture-level design space exploration of CiM accelerators. This work presents an open-source architecture-level model to estimate ADC energy and area. To enable fast design space exploration, the model uses only architecture-level attributes while abstracting circuit-level details. Our model enables researchers to quickly and easily model key architecture-level tradeoffs in accelerators that use ADCs.

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Authors (5)
  1. Tanner Andrulis (4 papers)
  2. Ruicong Chen (1 paper)
  3. Hae-Seung Lee (3 papers)
  4. Joel S. Emer (13 papers)
  5. Vivienne Sze (34 papers)
Citations (2)