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ARCTIC: Agile and Robust Compute-In-Memory Compiler with Parameterized INT/FP Precision and Built-In Self Test.

2024 Design, Automation & Test in Europe Conference & Exhibition (DATE)(2024)

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摘要
Digital Compute-in-Memory (DCIM) architectures are playing an increasingly vital role in artificial intelligence (AI) applications due to their significant energy efficiency enhancement. Coupling memory and computing logic in DCIM requires extensive customization of custom cells and layouts, thus increasing design complexity and implementation effort. To adapt to the swiftly evolving AI algorithms, DCIM compiler for agile customization is required. Previous DCIM compilers accelerate the customization process but only focus on integer computation. Moreover, with technology node scaling down, design-for-test circuits are critical for robust chip design, while previous built-in-self-test (BIST) schemes for traditional memory fail to offer support for DCIM. This paper presents ARCTIC, an agile and robust DCIM compiler supporting parameterized integer/floating-point formats with corresponding BIST circuits. To support variable precision formats (including integer and floating-point), ARCTIC applies adaptive topology and layout optimization schemes for optimal performance. The compiler is also equipped with DCIM-friendly MarchCIM BIST circuits for efficient post-silicon tests with negligible area overhead. The energy efficiency of the generated DCIM macros remains competent with the state-of-the-art counterparts.
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关键词
Compute-in-memory,Floating-point,BIST,Agile customization
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