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Sverklo

Sverklo is a repo memory system for coding agents that gives AI assistants persistent, searchable context about a codebase's architecture, conventions, and decisions. Instead of forcing agents to re-read entire repositories on every task, Sverklo builds and maintains a structured memory layer that coding agents can query through MCP. It is designed for developers and engineering teams who use Claude Code, Cursor, Codex, or similar AI coding tools and want faster, more accurate agent output grounded in project-specific knowledge. Sverklo launched on Show HN and targets a growing pain: as AI coding agents handle larger tasks, their effectiveness depends on deep repo understanding that pure context windows cannot provide. By offering persistent repo memory as a service, Sverklo helps agents maintain continuity across sessions.

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