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SpiNNaker2: A Large-Scale Neuromorphic System for Event-Based and Asynchronous Machine Learning

Authors :
Gonzalez, Hector A.
Huang, Jiaxin
Kelber, Florian
Nazeer, Khaleelulla Khan
Langer, Tim
Liu, Chen
Lohrmann, Matthias
Rostami, Amirhossein
Schöne, Mark
Vogginger, Bernhard
Wunderlich, Timo C.
Yan, Yexin
Akl, Mahmoud
Mayr, Christian
Publication Year :
2024

Abstract

The joint progress of artificial neural networks (ANNs) and domain specific hardware accelerators such as GPUs and TPUs took over many domains of machine learning research. This development is accompanied by a rapid growth of the required computational demands for larger models and more data. Concurrently, emerging properties of foundation models such as in-context learning drive new opportunities for machine learning applications. However, the computational cost of such applications is a limiting factor of the technology in data centers, and more importantly in mobile devices and edge systems. To mediate the energy footprint and non-trivial latency of contemporary systems, neuromorphic computing systems deeply integrate computational principles of neurobiological systems by leveraging low-power analog and digital technologies. SpiNNaker2 is a digital neuromorphic chip developed for scalable machine learning. The event-based and asynchronous design of SpiNNaker2 allows the composition of large-scale systems involving thousands of chips. This work features the operating principles of SpiNNaker2 systems, outlining the prototype of novel machine learning applications. These applications range from ANNs over bio-inspired spiking neural networks to generalized event-based neural networks. With the successful development and deployment of SpiNNaker2, we aim to facilitate the advancement of event-based and asynchronous algorithms for future generations of machine learning systems.<br />Comment: Submitted at the Workshop on Machine Learning with New Compute Paradigms at NeurIPS 2023 (MLNPCP 2023)

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2401.04491
Document Type :
Working Paper