AINov 16, 2021

From Convolutions towards Spikes: The Environmental Metric that the Community currently Misses

arXiv:2111.08361v1
Originality Synthesis-oriented
AI Analysis

This addresses the problem of unsustainable AI development for researchers and practitioners by highlighting a critical but overlooked environmental issue, though it is incremental as it builds on existing ideas in neuromorphic computing.

The paper tackles the AI community's neglect of environmental metrics like carbon footprint, proposing that spiking neural networks (SNNs) and neuromorphic hardware could offer more energy-efficient solutions, and introduces a new metric 'NATURE' for reporting environmental impact.

Today, the AI community is obsessed with 'state-of-the-art' scores (80% papers in NeurIPS) as the major performance metrics, due to which an important parameter, i.e., the environmental metric, remains unreported. Computational capabilities were a limiting factor a decade ago; however, in foreseeable future circumstances, the challenge will be to develop environment-friendly and power-efficient algorithms. The human brain, which has been optimizing itself for almost a million years, consumes the same amount of power as a typical laptop. Therefore, developing nature-inspired algorithms is one solution to it. In this study, we show that currently used ANNs are not what we find in nature, and why, although having lower performance, spiking neural networks, which mirror the mammalian visual cortex, have attracted much interest. We further highlight the hardware gaps restricting the researchers from using spike-based computation for developing neuromorphic energy-efficient microchips on a large scale. Using neuromorphic processors instead of traditional GPUs might be more environment friendly and efficient. These processors will turn SNNs into an ideal solution for the problem. This paper presents in-depth attention highlighting the current gaps, the lack of comparative research, while proposing new research directions at the intersection of two fields -- neuroscience and deep learning. Further, we define a new evaluation metric 'NATURE' for reporting the carbon footprint of AI models.

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