| Course : the organisation | 
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| Course : the subject : the web and the New Media, some context, History | |
| Next Monday Discussion : MacOSX and the first lab : Survival Kit | 
ABSTRACT:
  It can be demonstrated on system theoretical grounds that any system which learns 
  to perform many behavioural features with limited information handling resources 
  is constrained within a set of bounds called the recommendation architecture 
  by the requirement to find a compromise between the need to conserve physical 
  information handling resources and the need to learn without severe interference 
  with earlier learning.
  Overall architecture, the definition of modules and components, and even device 
  algorithms are all constrained, with the severity of the constraints increasing 
  as the ratio of features to resources increases. Algorithms widely used in artificial 
  neural networks cannot be used in some major subsystems of the recommendation 
  architecture.
  There are strong resemblances between the physical forms of a system within 
  the recommendation architecture bounds and the physiology of the human brain 
  including separations between and functions of the cortex, hippocampus, thalamus, 
  basal ganglia, cerebellum, hypothalamus and amygdala; the internal organization 
  of the cortex into layers, columns and areas; and the topology and synaptic 
  algorithms of neurons. Detailed psychological observations of a wide range of 
  cognitive phenomena, including semantic, episodic, working and procedural memory; 
  processes such as arithmetic; the deficits resulting from physical damage; and 
  sleep with dreaming can be modelled in a physiologically plausible manner by 
  a system within the recommendation architecture bounds.
  Learning can be bootstrapped from experience with minimal and plausible a priori 
  information. Many phenomena labelled "conscious" can be modelled in 
  terms of physiology. Electronic systems within the recommendation architecture 
  bounds confirm the capabilities of the architecture and point the way to implementation 
  of systems with human like cognitive capabilities.
  BIO:
  Andrew was employed by Nortel Networks as a system designer and architect in 
  the design of extremely complex real time control telecommunications systems 
  from 1969 to 1999, and participated in successful projects to design and introduce 
  commercially successful state of the art systems with up to 20 million lines 
  of code and custom integrated circuit based hardware.
  While still employed as a system architect, he wrote a book on understanding 
  the brain as a system, introducing a novel cognitive architecture. He subsequently 
  obtained a US patent for system architectures which can learn to manage a complex 
  telecommunications network based on the cognitive architecture. Since 1999 he 
  has been full time in academic research into cognitive systems, most recently 
  as a research fellow at the Australian National University.
  His new book, "A Systems Architecture Approach to the Brain: from Neurons 
  to Consciousness", was published December 12th 2005 and will be introduced 
  at this seminar.