Hasty Briefsbeta

Show HN: Built a memory layer that stops AI agents from forgetting everything

5 days ago
  • #AI coding assistants
  • #pattern learning
  • #persistent memory
  • In Memoria solves AI coding tools' memory loss by providing persistent intelligence through the Model Context Protocol (MCP).
  • Current AI tools re-analyze codebases every session, lack memory of architectural decisions, and can't learn from corrections.
  • In Memoria runs as an MCP server with tools for codebase analysis and pattern learning, enhancing AI tools like Claude and Copilot.
  • Core engines include AST Parser, Pattern Learner, Semantic Engine, and storage with SQLite and SurrealDB.
  • Features include learning coding patterns, naming conventions, and architectural decisions to provide context-aware suggestions.
  • Supports individual developers and teams, allowing sharing of intelligence and maintaining consistent AI suggestions.
  • Performance is optimized with incremental analysis, cross-platform Rust binaries, and handling of large codebases.
  • Comparison with GitHub Copilot, Cursor, and Custom RAG highlights In Memoria's advanced pattern learning and semantic analysis.
  • Open-source with contributions welcome for language support, pattern learning improvements, and performance optimizations.
  • No external data collection; all data stays local with minimal performance impact.