ETLGJul 18, 2023

Using the IBM Analog In-Memory Hardware Acceleration Kit for Neural Network Training and Inference

arXiv:2307.09357v268 citationsh-index: 56Has Code
Originality Synthesis-oriented
AI Analysis

This tutorial provides a practical resource for researchers and engineers working on energy-efficient AI hardware, but it is incremental as it focuses on tool usage rather than new algorithmic breakthroughs.

The paper tackles the challenge of adapting deep neural networks for analog in-memory computing hardware to maintain accuracy despite device noise and non-idealities, by introducing the IBM Analog Hardware Acceleration Kit (AIHWKit) as a simulation tool and providing tutorials for its use.

Analog In-Memory Computing (AIMC) is a promising approach to reduce the latency and energy consumption of Deep Neural Network (DNN) inference and training. However, the noisy and non-linear device characteristics, and the non-ideal peripheral circuitry in AIMC chips, require adapting DNNs to be deployed on such hardware to achieve equivalent accuracy to digital computing. In this tutorial, we provide a deep dive into how such adaptations can be achieved and evaluated using the recently released IBM Analog Hardware Acceleration Kit (AIHWKit), freely available at https://github.com/IBM/aihwkit. The AIHWKit is a Python library that simulates inference and training of DNNs using AIMC. We present an in-depth description of the AIHWKit design, functionality, and best practices to properly perform inference and training. We also present an overview of the Analog AI Cloud Composer, a platform that provides the benefits of using the AIHWKit simulation in a fully managed cloud setting along with physical AIMC hardware access, freely available at https://aihw-composer.draco.res.ibm.com. Finally, we show examples on how users can expand and customize AIHWKit for their own needs. This tutorial is accompanied by comprehensive Jupyter Notebook code examples that can be run using AIHWKit, which can be downloaded from https://github.com/IBM/aihwkit/tree/master/notebooks/tutorial.

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