RUDIMENTARY SOLUTION FOR REFLEX ARTIFICIAL INTELLIGENCE IN DISTRIBUTED COMPUTING

Authors:

Gandhi Sivakumar,G. Arumugam,

DOI NO:

https://doi.org/10.26782/jmcms.2020.04.00017

Keywords:

Artificial Intelligence,Distributed Artificial Intelligence,Reflex AI,

Abstract

Artificial Intelligence (AI) technology has been adopted rapidly in the industry. Various research initiatives have been carried out to innate the AI system characteristics as humans. In our concept paper [VI] we disclosed the “Reflex layer” to mimic human systems. A reflex layer would have the ability to differentiate the repetitive stimuli, its related responses and ability to process this through a separate layer. We discussed the key characteristics of reflex features of the following AI capabilities:
  • The vision interface
  • The audio interface
  • The kinematic interface
  • The sheath interface
  • The core layer
   In this paper we baseline the scope to core and kinematic interface; elaborate key characteristics, provide solutions and results.  

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