Cryogenic Neuromorphic Hardware
- URL: http://arxiv.org/abs/2204.07503v1
- Date: Fri, 25 Mar 2022 20:44:02 GMT
- Title: Cryogenic Neuromorphic Hardware
- Authors: Md Mazharul Islam, Shamiul Alam, Md Shafayat Hossain, Kaushik Roy,
Ahmedullah Aziz
- Abstract summary: The concept of implementing neuromorphic computing systems in cryogenic temperature has garnered immense attention.
Here we provide a comprehensive overview of the reported cryogenic neuromorphic hardware.
- Score: 5.399870108760824
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The revolution in artificial intelligence (AI) brings up an enormous storage
and data processing requirement. Large power consumption and hardware overhead
have become the main challenges for building next-generation AI hardware.
Therefore, it is imperative to look for a new architecture capable of
circumventing these bottlenecks of conventional von Neumann architecture. Since
the human brain is the most compact and energy-efficient intelligent device
known, it was intuitive to attempt to build an architecture that could mimic
our brain, and so the chase for neuromorphic computing began. While relentless
research has been underway for years to minimize the power consumption in
neuromorphic hardware, we are still a long way off from reaching the energy
efficiency of the human brain. Besides, design complexity, process variation,
etc. hinder the large-scale implementation of current neuromorphic platforms.
Recently, the concept of implementing neuromorphic computing systems in
cryogenic temperature has garnered immense attention. Several cryogenic devices
can be engineered to work as neuromorphic primitives with ultra-low demand for
power. Cryogenic electronics has therefore become a promising exploratory
platform for an energy-efficient and bio-realistic neuromorphic system. Here we
provide a comprehensive overview of the reported cryogenic neuromorphic
hardware. We carefully classify the existing cryogenic neuromorphic hardware
into different categories and draw a comparative analysis based on several
performance metrics. Finally, we explore the future research prospects to
circumvent the challenges associated with the current technologies.
Related papers
- A Review of Neuroscience-Inspired Machine Learning [58.72729525961739]
Bio-plausible credit assignment is compatible with practically any learning condition and is energy-efficient.
In this paper, we survey several vital algorithms that model bio-plausible rules of credit assignment in artificial neural networks.
We conclude by discussing the future challenges that will need to be addressed in order to make such algorithms more useful in practical applications.
arXiv Detail & Related papers (2024-02-16T18:05:09Z) - Neuromorphic hardware for sustainable AI data centers [3.011658333753524]
Neuromorphic hardware takes inspiration from how the brain processes information.
Despite its potential, neuromorphic hardware has not found its way into commercial AI data centers.
This article aims to increase awareness of the challenges of integrating neuromorphic hardware into data centers.
arXiv Detail & Related papers (2024-02-04T15:08:50Z) - Spike-based Neuromorphic Computing for Next-Generation Computer Vision [1.2367795537503197]
Neuromorphic Computing promises orders of magnitude improvement in energy efficiency compared to traditional von Neumann computing paradigm.
The goal is to develop an adaptive, fault-tolerant, low-footprint, fast, low-energy intelligent system by learning and emulating brain functionality.
arXiv Detail & Related papers (2023-10-15T01:05:35Z) - A Neuro-mimetic Realization of the Common Model of Cognition via Hebbian
Learning and Free Energy Minimization [55.11642177631929]
Large neural generative models are capable of synthesizing semantically rich passages of text or producing complex images.
We discuss the COGnitive Neural GENerative system, such an architecture that casts the Common Model of Cognition.
arXiv Detail & Related papers (2023-10-14T23:28:48Z) - Neuromorphic Computing and Sensing in Space [69.34740063574921]
Neuromorphic computer chips are designed to mimic the architecture of a biological brain.
The emphasis on low power and energy efficiency of neuromorphic devices is a perfect match for space applications.
arXiv Detail & Related papers (2022-12-10T07:46:29Z) - A perspective on physical reservoir computing with nanomagnetic devices [1.9007022664972197]
We focus on the reservoir computing paradigm, a recurrent network with a simple training algorithm suitable for computation with spintronic devices.
We review technologies and methods for developing neuromorphic spintronic devices and conclude with critical open issues to address before such devices become widely used.
arXiv Detail & Related papers (2022-12-09T13:43:21Z) - Neuromorphic Artificial Intelligence Systems [58.1806704582023]
Modern AI systems, based on von Neumann architecture and classical neural networks, have a number of fundamental limitations in comparison with the brain.
This article discusses such limitations and the ways they can be mitigated.
It presents an overview of currently available neuromorphic AI projects in which these limitations are overcome.
arXiv Detail & Related papers (2022-05-25T20:16:05Z) - Mapping and Validating a Point Neuron Model on Intel's Neuromorphic
Hardware Loihi [77.34726150561087]
We investigate the potential of Intel's fifth generation neuromorphic chip - Loihi'
Loihi is based on the novel idea of Spiking Neural Networks (SNNs) emulating the neurons in the brain.
We find that Loihi replicates classical simulations very efficiently and scales notably well in terms of both time and energy performance as the networks get larger.
arXiv Detail & Related papers (2021-09-22T16:52:51Z) - A Case for 3D Integrated System Design for Neuromorphic Computing & AI
Applications [13.885942364616948]
We argue that 3D integration not only provides strategic advantages to the cost-effective and flexible design of neuromorphic chips, it may provide design flexibility in incorporating advanced capabilities to further benefits the designs in the future.
arXiv Detail & Related papers (2021-03-02T21:50:12Z) - Photonics for artificial intelligence and neuromorphic computing [52.77024349608834]
Photonic integrated circuits have enabled ultrafast artificial neural networks.
Photonic neuromorphic systems offer sub-nanosecond latencies.
These systems could address the growing demand for machine learning and artificial intelligence.
arXiv Detail & Related papers (2020-10-30T21:41:44Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.