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MayDay: Using Fetch.ai to Build a Real-Time AI Co-Pilot for Air Traffic Control
The following guest blog is by Team Mayday — members Hunter Nguyen and Mizan Tompkins — who competed in the UC Berkeley Hackathon on July 21–22, 2025. As a gold sponsor of the event, Fetch.ai is proud to announce that Mayday took home our top honor, First Prize “Best Use of ASI:One”. Their exceptional project made extensive use of the Fetch.ai agentic platform.
MayDay: An AI-Powered Co-Pilot for Air Traffic Control
In high-stakes aviation environments, every second counts and every instruction matters. Today’s air-traffic controllers (ATC) juggle dozens of simultaneous tasks, often with limited tooling and zero room for error. The MayDay team — driven by firsthand tower experience and a rising number of aviation incidents — set out to build something bold: an AI-powered co-pilot that listens, understands, and responds alongside human controllers.
MayDay is a real-time ATC-augmentation platform powered by Fetch.ai agents. It transcribes live aviation audio, parses structured meaning from dense ATC chatter, detects emergencies, and notifies first responders. Designed not as a replacement but as a second brain, MayDay reduces cognitive load and highlights urgent events with full context.
We engineered MayDay around a multi-agent architecture using Fetch.ai’s uAgents, ASI:One, and Agentverse, where our agents are deployed for accessibility and reuse beyond our own system. These agents handle the full pipeline:
To ensure smooth cross-agent and cross-platform communication, we utilized MCP (Model Context Protocol) to bridge workflows between Fetch.ai agents and external services, including Vapi’s public MCP server.
The ATC-facing interface, built in Next.js, displays real-time updates via WebSockets. Controllers see a radar-style dashboard that visualizes communications, alerts, and ongoing situations in an intuitive, low-friction format. Every agent decision is logged and traceable.
Fetch.ai’s agent ecosystem was critical in breaking our system into modular, intelligent units. With uAgents, we delegated workflow components — transcription, anomaly detection, and escalation — to autonomous processes that communicate reliably via WebSockets. ASI:One managed complex asynchronous hand-offs between agents, reducing failure modes and enabling real-time responsiveness. MCP connected external tools like Vapi, enabling agent-triggered voice alerts based on live data.
MayDay proves that Fetch.ai agents can move beyond experimentation and deliver under real-time, high-consequence conditions. We’re continuing to refine and expand MayDay — if this space excites you, we’d love to connect and explore what’s next:
Hunter Nguyen: https://www.linkedin.com/in/hunterhnguyen/
Mizan Tompkins: https://www.linkedin.com/in/mizanrt/
MayDay: An AI Safety Net for Air Traffic Control, Built on Fetch.ai was originally published in Fetch.ai on Medium, where people are continuing the conversation by highlighting and responding to this story.
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