MRS Meetings and Events

 

EL01.03.05 2023 MRS Spring Meeting

Analog In-Memory Computing for Deep Neural Network Acceleration

When and Where

Apr 12, 2023
11:00am - 11:30am

Moscone West, Level 3, Room 3001

Presenter

Co-Author(s)

Andrea Fasoli1,Geoffrey Burr1,Hsinyu Tsai1,Pritish Narayanan1,Stefano Ambrogio1,Kohji Hosokawa2,Masatoshi Ishii2,Charles Mackin1,Atsuya Okazaki2,Akiyo Nomura2,Takeo Yasuda2,Alexander Friz1,Yasuteru Kohda2,An Chen1,Jose Luquin1

IBM Research–Almaden1,IBM Tokyo Research Laboratory2

Abstract

Andrea Fasoli1,Geoffrey Burr1,Hsinyu Tsai1,Pritish Narayanan1,Stefano Ambrogio1,Kohji Hosokawa2,Masatoshi Ishii2,Charles Mackin1,Atsuya Okazaki2,Akiyo Nomura2,Takeo Yasuda2,Alexander Friz1,Yasuteru Kohda2,An Chen1,Jose Luquin1

IBM Research–Almaden1,IBM Tokyo Research Laboratory2
Multiply-accumulate (MAC) operations are at the core of Deep Neural Network (DNN) workloads. In-Memory Computing (IMC) enables hardware accelerators that achieve very high-throughput and energy-efficient MAC, thus tackling the issue of exploding computational costs in ever growing DNNs. In particular, non-volatile memory (NVM)-based analog accelerators materialize massively parallelized compute by leveraging Ohm’s law and Kirchhoff’s current law on arrays of resistive memory devices. Provided that weights are accurately programmed onto NVM devices and MAC operations are sufficiently linear, competitive end-to-end DNN accuracies can be achieved via this approach.<br/>In this presentation, we describe an analog IMC chip consisting of more than 35 million Phase-Change Memory devices, analog peripheral circuitry, and massive parallel routing to accelerate communication between inputs, outputs, and analog cores. We demonstrate the speed and power advantages of analog computing when applied to multiple DNN inference benchmarks, with tasks ranging from image classification to natural language processing, and show that high accuracy can be retained by a careful combination of materials, circuit, architecture, and operational choices.

Symposium Organizers

Stefania Privitera, CNR
Carlos Ríos, University of Maryland
Syed Ghazi Sarwat, IBM
Matthias Wuttig, RWTH Aachen University

Publishing Alliance

MRS publishes with Springer Nature