Agent skill
graph-retrieval
Install this agent skill to your Project
npx add-skill https://github.com/study8677/antigravity-workspace-template/tree/main/engine/antigravity_engine/skills/graph-retrieval
SKILL.md
Graph Retrieval Skill
Purpose
Expose graph-based retrieval as a tool capability without breaking the existing Antigravity execution chain.
Tool
query_graph(query, max_hops=2, workspace='.')
Behavior
- Reads normalized graph store files under
.antigravity/graph/. - Builds a query-relevant subgraph.
- Returns LLM-friendly semantic triples plus replayable evidence metadata.
Output Contract
{
"summary": "...",
"triples": [["subject", "predicate", "object"]],
"evidence": [{"retrieval_id": "...", "tool_name": "..."}],
"nodes": [...],
"edges": [...]
}
Design Notes
- Keeps tool-driven and replayable architecture.
- Does not bypass pipeline.
- Intended for structure/dependency questions and context enrichment.
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