2019
DOI: 10.3389/fnins.2019.00666
|View full text |Cite
|
Sign up to set email alerts
|

Making BREAD: Biomimetic Strategies for Artificial Intelligence Now and in the Future

Abstract: The Artificial Intelligence (AI) revolution foretold of during the 1960s is well underway in the second decade of the twenty first century. Its period of phenomenal growth likely lies ahead. AI-operated machines and technologies will extend the reach of Homo sapiens far beyond the biological constraints imposed by evolution: outwards further into deep space, as well as inwards into the nano-world of DNA sequences and relevant medical applications. And yet, we believe, there are crucial lessons that biology can… Show more

Help me understand this report

Search citation statements

Order By: Relevance

Paper Sections

Select...
3
1
1

Citation Types

0
13
0

Year Published

2019
2019
2023
2023

Publication Types

Select...
6
1
1

Relationship

1
7

Authors

Journals

citations
Cited by 15 publications
(15 citation statements)
references
References 112 publications
(187 reference statements)
0
13
0
Order By: Relevance
“…In the case of the JMVAE-kl network which learns unimodal representations in parallel to, and in support of, the joint modal distribution during training, the additional encoder-decoder network pairs are also disregarded during inference. In a purely software-based system this inefficiency is not an issue, however, as we look toward the future of embedded machine learning, particularly within robotics and edge based applications, we anticipate the increasing adoption of energy efficient hardware platforms, such as neuromorphic devices Krichmar et al (2019) . The immediate practical advantage in adopting the PCN approach, therefore, is that the algorithm is highly amenable to hardware optimisation through parallel distributed learning and processing.…”
Section: Discussionmentioning
confidence: 99%
“…In the case of the JMVAE-kl network which learns unimodal representations in parallel to, and in support of, the joint modal distribution during training, the additional encoder-decoder network pairs are also disregarded during inference. In a purely software-based system this inefficiency is not an issue, however, as we look toward the future of embedded machine learning, particularly within robotics and edge based applications, we anticipate the increasing adoption of energy efficient hardware platforms, such as neuromorphic devices Krichmar et al (2019) . The immediate practical advantage in adopting the PCN approach, therefore, is that the algorithm is highly amenable to hardware optimisation through parallel distributed learning and processing.…”
Section: Discussionmentioning
confidence: 99%
“…Rather it frees up the system from expending energy and computational resources on some functions, while allowing it to concentrate on other functionality. Saving energy is a recurring theme in biology since biological organisms are under tight metabolic constraints (Beyeler et al, 2019 ; Krichmar et al, 2019 ). However, there is a trade-off that comes with efficiency.…”
Section: Embodiment and Reactions - Responding To The Here And Nowmentioning
confidence: 99%
“…Therefore, the nervous system must encode information as cheaply as possible. The brain operates on a mere 20 watts of power, approximately the same power required for a ceiling fan operating at low speed (Krichmar et al, 2019 ). Although being severely metabolically constrained is at one level a disadvantage, evolution has optimized brains in ways that lead to incredibly efficient representations of important environmental features that are distinctly different from those employed in current digital computers.…”
Section: Embodiment and Reactions - Responding To The Here And Nowmentioning
confidence: 99%
See 1 more Smart Citation
“…The primary motivation for this work is toward a deeper understanding of the complete head direction system of the rodent through the integration of components modeled at different levels of abstraction; namely, spiking neural attractor network models, deep learning based generative and discriminative models, and simulated robotic embodiment. However, the integration of models at multiple levels of abstraction also provides a framework for how energy efficient neuromorphic hardware components (Krichmar et al, 2019 ) can be usefully integrated into mobile robotic applications in the near future. We contend that to fully exploit this biologically inspired computing paradigm requires continued biomimetic study of fundamental neuroscience as epitomized in the field of neurorobotics.…”
Section: Introductionmentioning
confidence: 99%