Capability
5 artifacts provide this capability.
Want a personalized recommendation?
Find the best match →via “incremental indexing and graph update with change detection”
A modular graph-based Retrieval-Augmented Generation (RAG) system
Unique: Implements change detection at the document level with selective re-extraction and graph merging, avoiding full re-indexing while maintaining graph consistency. Preserves entity IDs across updates, enabling stable references and reducing community reassignments.
vs others: More efficient than full re-indexing for large corpora with frequent updates, and more sophisticated than naive append-only approaches that don't handle entity deduplication or community optimization.
via “incremental indexing with change detection and delta updates”
An MCP server plus a CLI tool that indexes local code into a graph database to provide context to AI assistants.
Unique: Implements incremental indexing with change detection based on file modification times and checksums, enabling fast re-indexing of large codebases. Integrates with CodeWatcher for automatic delta updates as files change.
vs others: Faster than full re-indexing because it only processes changed files; more practical than manual change tracking because detection is automatic.
Local knowledge graph for Claude Code. Builds a persistent map of your codebase so Claude reads only what matters — 6.8× fewer tokens on reviews and up to 49× on daily coding tasks.
Unique: Implements delta-based incremental updates (diagram 4) that compute the difference between current and previous codebase states, then apply only necessary graph changes. The system uses SHA-256 hashing to detect file changes and identifies which entities were added/modified/deleted, reducing update time from O(n) to O(delta).
vs others: Faster than full re-indexing because it only re-parses changed files and updates affected graph nodes, whereas naive approaches would re-parse the entire codebase on every change.
via “incremental vector index updates with delta synchronization”
Local-first document and vector database for React, React Native, and Node.js
Unique: Implements incremental vector index updates with delta tracking, whereas most vector databases require full re-indexing or provide no incremental update mechanism
vs others: Reduces indexing latency for document updates by orders of magnitude compared to full re-indexing, while maintaining index consistency without external coordination
via “incremental-index-updates”
Semantic code search for coding agents. Local embeddings, LLM summaries, call graph tracing.
Unique: Implements differential indexing that tracks file-level changes and updates only affected embeddings and graph edges, enabling real-time index freshness without full re-computation
vs others: Dramatically faster than full re-indexing for active development, allowing agents to work with current code context without waiting for batch index updates
Building an AI tool with “Incremental Graph Update System With Delta Computation”?
Submit your artifact →curl unfragile.ai/agents.md | sh© 2026 Unfragile. The platform for software for agents.