Difference between revisions of "AMatterRequirements"

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* target research - split specific and non-specific mind - done
 
* target research - split specific and non-specific mind - done
* split mind into target, core, lifecycle, specific and integration modules
+
* split mind into target, core, lifecycle, specific and integration modules - done
* design lifecycle set for software alive creature (aSoftLife)
+
* copy aHuman core model to aWee - done
* copy aHuman core model to aWee, reduce aWee core model to functionally transparent, improve external circuit coverage
+
* create aWee target model - in progress
* define aSoftLife lifecycle model
+
* design lifecycle set for software alive creature (aSoftLife) - in progress
 +
* reduce aWee core model to functionally transparent, improve external circuit coverage
 
* define aWee specific and integration models
 
* define aWee specific and integration models
 
* biological research - define set of neural tissue types
 
* biological research - define set of neural tissue types

Revision as of 00:26, 3 February 2016

aMatter Requirements

@@Home -> ProjectPlanning -> aMatterRequirements

Contents:


2016 book of work

  • target research - split specific and non-specific mind - done
  • split mind into target, core, lifecycle, specific and integration modules - done
  • copy aHuman core model to aWee - done
  • create aWee target model - in progress
  • design lifecycle set for software alive creature (aSoftLife) - in progress
  • reduce aWee core model to functionally transparent, improve external circuit coverage
  • define aWee specific and integration models
  • biological research - define set of neural tissue types
  • biological research - describe logic of neural tissue types
  • create aWee dynamical model
  • setup running aWee model, define runtime metrics to measure proof of the concept

Overall Features

  • to be refined later

Mocked Functions

  • M-01. aMatter has primitive predefined set of effectors producing representation in external world based on predefined set of low-level commands provided by hardcoded motor strategies
  • M-02. aMatter limits effectors actions to ones explaining internal representations by means of hardcoded symbolical language
  • M-03. aMatter has primitive predefined hierarchy of behavioural strategies, on leaf level directly connected with effectors commands

Cognition

  • C-01. aMatter receives information using predefined set of sensors
  • C-02. aMatter recognises received information in real-time mode and calculates recognition metric R reflecting percentage of successfully recognised sensors inputs in given environment
  • C-03. aMatter generalises unrecognised inputs so that R monotonously increases for the same static environment
  • C-04. aMatter forms growing set of internal entities, so that specific subset of internal entities, when being in active state, can be treated as a representation of specific external data from sensors, disregarding whether previously perceived or internally inspired
  • C-05. aMatter is able to forget internal entities, if not activated for a long time, so that the same input triggers another set of internal entities after a while
  • C-06. aMatter forms growing set of associations between internal entities activated about the same time

Feeling

  • F-01. aMatter collects information from predefined set of embodiment signals equivalent in purpose with human being, with body treated as related operating system process with all its inherent features and properties
  • F-02. aMatter collects predefined set of uncertainty metrics from expectation flow of behavioural strategies

Goals Achievement

Perception/Self-Learning features

Perception

  • Effective Signal Processing
    • MindSensorArea - receptive field averaging and inhibition
    • ThalamusArea - create relay sensory nuclei - done
    • ThalamusArea - create inhibitory NeuroPool - done
    • Connect PerceptionArea feedback and inhibitory NeuroPool - done
    • Connect internal InhibitoryLink from relay NeuroPool and inhibitory NeuroPool - done
    • Implement realistic inhibitory properties (150ms inhibition vs 20 ms excitatory non-firing interval)
  • Functional value
    • implement sampling
    • implement subsampling

Self-Learning

  • Mock cortex implementation - to allow development of other components
    • create feed-forward NeuroPool - done
    • create spatial pooler - process feed-forward signal from ThalamusArea - done
    • create temporal pooler - process fixed-size sequences and derive predicted spatial pooler item - done
    • create feedback NeuroPool - done
    • apply temporal pooler prediction to feedback NeuroPool and generate cortex feedback signal - done
  • Cortex implementation
    • Columnar processing
    • Hierarchical Processing
    • Infinite Temporal Prediciton
    • Focus Processing
    • Attention Processing
    • Event Driven Implementation
  • Functional value
    • implement high-probability predictive sampling and subsampling

Cognition as Meaningful Sensor Control

  • saccadic scene scanning, spacial into temporal-spatial approach
  • novelty, motavation, attention
  • virtuality

Demonstrate Feeling Feature

  • TBD

Real-Time Neural Networks

  • Neural Structures
    • NeuroPool - accumulate arriving action potentials in membrane potential - done
    • NeuroPool - time-based dissolving of membrane potential - done
    • NeuroPool - postpone firing to minimum time interval after last firing - done
  • Signal Processing
    • ExcitatoryLink - project excitatory signal to NeuroPool - done
    • ExcitatoryLink - generate excited signal from projection - done
    • NeuroSignal - store only activated source items - done