AI agents today are powerful, but still fundamentally stateless and fragmented. They complete tasks in isolation, lose context across sessions, and struggle to share knowledge across tools, teams, or workflows. Memory is often tied to a single app, model, or device — making agent systems brittle, hard to scale, and difficult to trust.

As agents evolve from simple assistants to autonomous, long-running systems, they need a more durable foundation:

This track challenges you to rethink how agentic systems are built by using Walrus as a Verifiable Data Platform for AI.

What you’ll build

Build functional AI agents or agentic workflows (single or multi-agent) in any domain — from finance to productivity to gaming — that demonstrate:

To guide you, we’re especially interested in:

For integrations and tooling, think along the lines of: