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Publication | Open Access

Hardware implementation of memristor-based artificial neural networks

344

Citations

222

References

2024

Year

TLDR

Artificial intelligence relies on deep learning networks, but conventional von Neumann architectures suffer from memory‑processor bandwidth limits; near‑memory computing and memristors offer a low‑power, massively parallel alternative, though practical challenges remain. This review aims to supply a detailed protocol for building hardware‑based memristive artificial neural networks, guiding newcomers and experts alike. We examine the working principles of each network block, compare design alternatives, and outline the tools needed to estimate performance metrics.

Abstract

Abstract Artificial Intelligence (AI) is currently experiencing a bloom driven by deep learning (DL) techniques, which rely on networks of connected simple computing units operating in parallel. The low communication bandwidth between memory and processing units in conventional von Neumann machines does not support the requirements of emerging applications that rely extensively on large sets of data. More recent computing paradigms, such as high parallelization and near-memory computing, help alleviate the data communication bottleneck to some extent, but paradigm- shifting concepts are required. Memristors, a novel beyond-complementary metal-oxide-semiconductor (CMOS) technology, are a promising choice for memory devices due to their unique intrinsic device-level properties, enabling both storing and computing with a small, massively-parallel footprint at low power. Theoretically, this directly translates to a major boost in energy efficiency and computational throughput, but various practical challenges remain. In this work we review the latest efforts for achieving hardware-based memristive artificial neural networks (ANNs), describing with detail the working principia of each block and the different design alternatives with their own advantages and disadvantages, as well as the tools required for accurate estimation of performance metrics. Ultimately, we aim to provide a comprehensive protocol of the materials and methods involved in memristive neural networks to those aiming to start working in this field and the experts looking for a holistic approach.

References

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