Context & Importance
For ContextFrame to power production AI agents, it needs server components that can efficiently serve context at scale. The MCP (Model Context Protocol) integration enables standardized context delivery to any compatible agent.
Why This Matters
- Production Ready: Move from experiments to deployed agents
- Performance: Optimized context delivery for low latency
- Standardization: MCP compatibility means broad agent support
- Scale: Serve thousands of agents from one ContextFrame
Use Cases
- Customer Support: "Serve product docs to support agents"
- Code Assistants: "Stream codebase context to Claude/Copilot"
- Research Assistants: "Provide paper context on-demand"
Acceptance Criteria
Success Metrics
- <100ms context query latency
- Support 1000+ concurrent agents
- 99.9% uptime SLA
Context & Importance
For ContextFrame to power production AI agents, it needs server components that can efficiently serve context at scale. The MCP (Model Context Protocol) integration enables standardized context delivery to any compatible agent.
Why This Matters
Use Cases
Acceptance Criteria
ContextServerclass with async architectureSuccess Metrics