Agent & Protocol · Toolkit
Multi-Agent Orchestration Board
SIMULATEDVerified Jul 2, 2026A supervisor decomposes the goal, agents coordinate, and a result assembles. The meter on the right is the point: multi-agent buys quality — but at a cost and latency multiple you should be able to name.
Authored, deterministic run — the steps and the cost/latency/quality figures are hand-built to teach the tradeoff, not captured from a live model. A real-model variant is on the roadmap.
Same instrument · three industries — pick a use-case to reconfigure the run
Supervisor
Idle — press Run
Researcher
Gather the entrant's public product claims, pricing, and integration model.
Analyst
Compare their approach to ours and find the gaps.
Writer
Assemble a one-page brief: the three things leadership must know.
Critic
Red-team the brief for unsupported claims.
A2A-style coordination · task lifecycle: assigned → working → completed
No messages yet.
Assembled result
Run the orchestration to assemble a result.
Multi-agent vs single-agent
When multi-agent is worth it
Steering-committee takeaway: Multi-agent bought +31% quality on this task class for 2.4× cost. That ratio, not the demo, is the decision.
How this is built
Orchestration pattern: a supervisor decomposes the goal and delegates to role-specialized agents that coordinate over A2A-style messages with explicit lifecycle states (assigned → working → completed).
The run is authored and deterministic — a scripted supervisor/worker trace with illustrative cost, latency, and quality figures for this task class, not measured from a live model. A real-model variant against claude-sonnet-5 is designed for but not wired today, so the badge stays SIMULATED.
Stack: Next.js (static) + shared design system; client-side.
Limitations: the outputs and the cost/latency/quality figures are authored illustrations of a typical run on this task class, not measured from a live execution. The +31% / 2.4× ratio is representative, not a benchmarked result.