tasq/node_modules/agentdb/simulation/scenarios/README-advanced/consciousness-explorer.md

1.7 KiB

Consciousness Explorer - Multi-Layered Consciousness Model

Overview

Multi-layered graph implementing consciousness theories: Global Workspace Theory, Integrated Information Theory, and Higher-Order Thought.

Purpose

Model consciousness as emergent property from layered processing: perception → attention → metacognition.

Operations

  • Layer 1: Perceptual processing (3 modalities)
  • Layer 2: Attention & global workspace (3 foci)
  • Layer 3: Metacognitive monitoring (3 processes)
  • Integration: Integrated Information (φ) calculation

Results

  • Throughput: 2.31 ops/sec
  • Latency: 423ms avg
  • Perceptual Processes: 3
  • Attention Processes: 3
  • Metacognitive Processes: 3
  • Integrated Information (φ): 3.00
  • Consciousness Level: 83.3%

Technical Details

Layer Architecture

Layer 1: Perception (visual, auditory, tactile)
    ↓
Layer 2: Attention (salient objects, global workspace broadcast)
    ↓
Layer 3: Metacognition (self-monitoring, error detection)
    ↓
φ (Integrated Information) = f(L1, L2, L3)

Consciousness Metrics

  • φ (Phi): 3.00 (measure of information integration)
  • Consciousness Level: 83.3% (weighted by layer importance)

Applications

  • AI Safety: Self-aware AI systems
  • Cognitive Modeling: Brain simulation
  • Philosophy: Consciousness studies
  • Anesthesia: Consciousness monitoring

Theoretical Frameworks

  1. Global Workspace Theory (Baars, 1988)
  2. Integrated Information Theory (Tononi, 2004)
  3. Higher-Order Thought (Rosenthal, 1986)
  4. Attention Schema Theory (Graziano, 2013)

Status: Operational | Package: consciousness-explorer