Accelerating Inference of Convolutional Neural Networks Using In-memory Computing

Open access
Date
2021-08-03Type
- Journal Article
Abstract
In-memory computing (IMC) is a non-von Neumann paradigm that has recently established itself as a promising approach for energy-efficient, high throughput hardware for deep learning applications. One prominent application of IMC is that of performing matrix-vector multiplication in (Formula presented.) time complexity by mapping the synaptic weights of a neural-network layer to the devices of an IMC core. However, because of the significantly different pattern of execution compared to previous computational paradigms, IMC requires a rethinking of the architectural design choices made when designing deep-learning hardware. In this work, we focus on application-specific, IMC hardware for inference of Convolution Neural Networks (CNNs), and provide methodologies for implementing the various architectural components of the IMC core. Specifically, we present methods for mapping synaptic weights and activations on the memory structures and give evidence of the various trade-offs therein, such as the one between on-chip memory requirements and execution latency. Lastly, we show how to employ these methods to implement a pipelined dataflow that offers throughput and latency beyond state-of-the-art for image classification tasks. Show more
Permanent link
https://doi.org/10.3929/ethz-b-000502297Publication status
publishedExternal links
Journal / series
Frontiers in Computational NeuroscienceVolume
Pages / Article No.
Publisher
Frontiers Media SASubject
Convolutional neural network; In-memory computing; Computational memory; AI hardware; Neural network accelerationOrganisational unit
03996 - Benini, Luca / Benini, Luca
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