2024
DOI: 10.1109/tcsii.2023.3334958
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In-Memory Principal Component Analysis by Analogue Closed-Loop Eigendecomposition

Piergiulio Mannocci,
Elisabetta Giannone,
Daniele Ielmini

Abstract: Machine learning (ML) techniques such as principal component analysis (PCA) have become pivotal in enabling efficient processing of big data in an increasing number of applications. However, the data-intensive computation in PCA causes large energy consumption in conventional von Neumann computers. In-memory computing (IMC) significantly improves throughput and energy efficiency by eliminating the physical separation between memory and processing units. Here, we present a novel closed-loop IMC circuit to compu… Show more

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