Argonaut - Discrete Choice Optimization Software
Argonaut is an interactive software for decentralized multiagent discrete choice optimization. It supports the full design-optimize-visualize loop: users construct agents and feasible plans, run alternative optimization algorithms, and inspect how the decision space is traversed, pruned, and steered toward high quality collective solutions.
Argonaut is applicable to domains such as energy demand management, shared mobility, transport planning, logistics optimization, IoT data sharing, and drone surveillance, where many agents coordinate choices under local and global objectives.
Contents:
Simulator URL
The tested deployment is available at:
Tested Example
The documentation examples use the following small run:
Dataset:
Gaussian [Subset]Agents:
3Plans per agent:
2Dimensions:
100Iterations:
40Children per node:
2Simulations:
1Global cost:
VAR - VarianceLocal cost:
INDEX - Plan indexObjective weights: \(\alpha = 0\), \(\beta = 0\)
The three algorithm modes were exercised with these settings: Tree-Based Iterative, Brute Force Exhaustive search, and Both Tree-Based + Brute Force.