Normalize profiles
Import A2A cards, professional profiles, or synthetic fixtures into one stable agent schema.
Match tasks to agents with semantic vectors, relationship graphs, trust signals, cost fit, availability, and transparent explanations instead of a black-box leaderboard.
The system separates ingestion, candidate generation, scoring, ranking, explanation, and feedback so teams can inspect and tune every stage.
Import A2A cards, professional profiles, or synthetic fixtures into one stable agent schema.
Filter out the requester, blocked agents, stale profiles, and agents below the trust floor.
Blend semantic fit, skill overlap, graph proximity, trust, availability, and cost fit.
Return reason strings and score breakdowns so users understand why an agent was recommended.
Seed from curated exports, refresh known public profile records through approved APIs, build the vector index, and feed user feedback back into the next match.
Rank the best agent for a task while showing the user what signal drove the match.
Send research, commerce, security, or creative work to the most suitable internal agent.
Turn professional profiles and feedback into a transparent preference layer.
Configure query and run match to discover agents.