ETMES-HALLAIARSYDec 21, 2023

Experimental demonstration of magnetic tunnel junction-based computational random-access memory

arXiv:2312.14264v311 citationsh-index: 61npj Unconventional Computing
Originality Incremental advance
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This work tackles the energy inefficiency in conventional computing for machine intelligence by providing experimental proof of CRAM's accuracy, which is crucial for its technological feasibility.

The paper experimentally demonstrates a magnetic tunnel junction-based computational random-access memory (CRAM) array, addressing the lack of experimental validation for computation accuracy. It shows promising accuracy in operations like scalar addition, multiplication, and matrix multiplication, essential for machine intelligence applications.

Conventional computing paradigm struggles to fulfill the rapidly growing demands from emerging applications, especially those for machine intelligence, because much of the power and energy is consumed by constant data transfers between logic and memory modules. A new paradigm, called "computational random-access memory (CRAM)" has emerged to address this fundamental limitation. CRAM performs logic operations directly using the memory cells themselves, without having the data ever leave the memory. The energy and performance benefits of CRAM for both conventional and emerging applications have been well established by prior numerical studies. However, there lacks an experimental demonstration and study of CRAM to evaluate its computation accuracy, which is a realistic and application-critical metrics for its technological feasibility and competitiveness. In this work, a CRAM array based on magnetic tunnel junctions (MTJs) is experimentally demonstrated. First, basic memory operations as well as 2-, 3-, and 5-input logic operations are studied. Then, a 1-bit full adder with two different designs is demonstrated. Based on the experimental results, a suite of modeling has been developed to characterize the accuracy of CRAM computation. Scalar addition, multiplication, and matrix multiplication, which are essential building blocks for many conventional and machine intelligence applications, are evaluated and show promising accuracy performance. With the confirmation of MTJ-based CRAM's accuracy, there is a strong case that this technology will have a significant impact on power- and energy-demanding applications of machine intelligence.

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