lore
Living typed knowledge graph for software projects, exposed over MCP so coding assistants can capture and query modules, capabilities, flows, events, rules and decisions across sessions. SQLite-backed, schema-validated, ships as a Claude Code plugin.
README
Lore
The living knowledge graph for your software project.
Status: pre-1.0, solo-maintained. Lore is functional and used in production projects, but the API, the schema and the MCP surface may still break between minor versions. Bug reports are welcome; feature PRs may not be merged while the design stabilizes. The repository will open up to broader collaboration once the API is stable (target: 1.0).
Lore captures the business logic of a project — modules, capabilities, flows, events, rules, forms, entities and decisions — as a typed graph backed by SQLite, and exposes it over MCP so AI coding assistants (Claude Code, Cursor, Claude Desktop) can query and maintain it as part of normal work.
It answers questions like "how many ways of registering a payment exist?", "what breaks if I touch flow-checkout?" or "which rules protect this entity?" in a single tool call, with provenance, without re-exploring the codebase each time.
Why
- Persistent memory across sessions — the graph survives context resets.
- Zero documentation overhead — the assistant writes as concepts get decided, not as a separate chore.
- Auditable — every node carries
source,confidence,source_context. Every MCP call is logged. - Token-efficient — summary-only listings, batch ops, cheap sub-agents for exploration, WAL-mode SQLite.
Install (Claude Code plugin — recommended)
/plugin marketplace add YACB2/lore
/plugin install lore@lore
Reload, then from the project you want to model run lore init (or /lore:bootstrap for a guided onboarding that scans the code with Haiku). "Project" can be a single repo or a workspace that contains several repos — Lore has no opinion, .lore/lore.db is created relative to whatever directory you launched Claude Code from.
The plugin bundles:
- MCP server exposing
lore_add_node,lore_add_nodes,lore_update_node,lore_delete_node,lore_get_node,lore_add_edge,lore_add_edges,lore_remove_edge,lore_query,lore_traverse,lore_list,lore_find_variants,lore_audit,lore_history,lore_stats,lore_export_markdown. - Auto-invoked skill (
lore-usage) that tells Claude to read before acting and write on decision, with provenance rules and lifecycle conventions. - Sub-agent
lore-explorer(Haiku, read-only) for broad exploration without burning expensive tokens. - Slash commands:
/lore:init,/lore:bootstrap,/lore:audit,/lore:show <id>,/lore:recent,/lore:impact <id>,/lore:probe <path>(audit another project's graph without switching directory).
Install (standalone CLI / other MCP hosts)
pipx install projectlore # or: uv tool install projectlore
lore init
For Cursor / Claude Desktop:
{
"mcpServers": {
"lore": {
"command": "lore",
"args": ["mcp", "--db", ".lore/lore.db"]
}
}
}
CLI reference
lore init # create .lore/lore.db
lore list [--type flow] # summary listing (id, type, title, status)
lore show <id> # full detail + edges
lore query "payment" # exact id → title substring → tag fallback
lore variants <capability-id> # flows implementing a capability
lore audit # orphans, cycles, id hygiene
lore stats [--since ISO] # token/usage analytics from the audit log
lore export --out .lore/export # one markdown file per node
Schema
Eight node types (stack-agnostic): module, capability, flow, event, rule, form, entity, decision.
Nine relations: part_of, implements, depends_on, triggers, validates, enforces, supersedes, references, conflicts_with. Type pairs are restricted (see schema.py).
Statuses: active | draft | deprecated | superseded | archived. Soft-delete is the default; lore_delete_node is reserved for typos and warns about edge loss.
The central abstraction is capability — a thing the system knows how to do, independent of how. Multiple flow nodes can implements the same capability, surfacing UX/logic divergences.
Model routing
Operations are split by cost:
- Reads (broad scans, traversals, audits): delegated to Haiku via the
lore-explorersub-agent ormodel: haikufrontmatter on slash commands. - Writes & modeling decisions: caller's model (Sonnet/Opus). A sub-agent proposes JSON; the caller reviews and persists.
Override per-project in .lore/config.json:
{
"language": "es",
"app_name": "my-app",
"models": { "exploration": "haiku", "write": "sonnet" }
}
Provenance & history
Every node carries metadata.{source, confidence, source_context} and, when relevant, source_ref (path:line), last_verified_at, deprecated_at, deprecated_reason, replaced_by.
lore_update_node(metadata_patch=…) merges without destroying provenance; metadata still exists for rare full replacements.
lore_history(id) returns every MCP event for a node (newest first) from the append-only audit log. lore_stats aggregates by tool/op and reports input/output bytes.
Status
Pre-MVP, alpha. Schema and MCP tool surface may change before 0.1.0.
Development
uv sync --all-groups
uv run pytest -q
uv run ruff check src tests
Tests live in tests/. The plugin layout is validated by test_plugin_structure.py.
License
MIT.
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