Goal-Directed Systems Simulator

Telos

Telos is an experimental agent simulation for studying how local decisions, information structure, energy constraints, and symbolic alignment generate order, attractors, and emergent behaviour.

It treats organisation as something that can be explored directly through a tunable objective function, turning the simulation into a laboratory for dynamics, convergence, and hidden structure.

Agents
Local entities move, reproduce, mutate, and respond to information, neighbours, and resources.
Telic Field
A weighted objective function shapes behaviour as agents search for higher-value states.
Attractors
Runs often converge toward stable symbolic or structural states that can be logged and compared.
Archive
Experiments can be stored, replayed, and analysed as a growing research instrument.

What Telos Models

Telos explores how order can emerge when agents optimise a weighted objective under local constraints. It combines movement, information, complexity, resource pressure, mutation, and stochastic choice to produce trajectories that can be observed as dynamical systems rather than static outputs.

Local Decision Making

Agents evaluate nearby possibilities rather than acting with global knowledge. This keeps the system grounded in local interactions and spatial dynamics.

Information & Symbol Dynamics

Symbol alignment and informational structure can be tracked over time, revealing collapse, diversity, convergence, and stable regimes.

Emergent Structure

The global behaviour is not scripted. Population growth, clustering, entropy change, and stability emerge from repeated local interactions.

The Telic Model

The simulation is organised around a weighted utility function that combines information, local structure, energy, and complexity. Different parameter settings reshape the landscape the agents move through.

Core Equation

T = αI + γΦ + δE − βK
  • I — information or symbol-related contribution
  • Φ — local structure / neighbourhood organisation
  • E — energy or viability
  • K — complexity or crowding penalty

What to Look For

  • Entropy collapse or symbolic alignment
  • Stable Φ under changing population size
  • Attractor-like convergence in trajectory data
  • Phase changes as parameters such as γ or temperature shift

Key Parameters

Telos is designed as a tunable system. Parameters control the balance between exploration, exploitation, survivability, and structural preference.

Behaviour

  • vision range
  • movement speed
  • softmax temperature
  • adaptive stochastic policy

Evolution

  • mutation rate
  • mutation standard deviation
  • reproduction threshold
  • senescence / lifecycle constraints

Environment

  • grid size
  • resource hotspots
  • resource regrowth
  • toroidal or bounded space

Research Use

Telos sits within the Blue Whale platform as the behavioural layer of a wider research stack. It complements folding and network simulations by offering a direct view of optimisation, emergence, and attractor formation in agent populations.

Useful Outputs

  • population trajectories
  • average telic score
  • Φ stability
  • founder dominance
  • symbol entropy
  • archived experiment logs

Why It Matters

Telos turns emergent organisation into something measurable. Rather than only visualising agent motion, it creates a framework for comparing runs, testing hypotheses, and mapping the geometry of the system's stable states.

Run an experiment

Launch the simulator, explore parameter sweeps, and begin building an archive of behavioural attractors and emergent symbolic states.