# rag-rat
`rag-rat` is a local repo-intelligence index and MCP server for coding agents. It keeps source
files read-only, writes only its configured SQLite database, and exposes current source, graph,
git, GitHub papertrail, local-AI artifact status, and source-anchored repo memories as evidence.
Current release: `v0.3.0`.
```mermaid
sequenceDiagram
autonumber
participant Repo as Repository evidence
participant Engine as rag-rat evidence engine
participant MCP as MCP tools
participant Agent as Coding agent
Repo->>Engine: Index current source<br/>files, chunks, symbols
Repo->>Engine: Add git history and GitHub papertrail
Repo->>Engine: Load source-anchored repo memories
Engine->>Engine: Build logical symbols and code graph
Engine->>Engine: Reconcile FTS, vectors, freshness
Engine->>Engine: Validate memory anchors<br/>current | relocated | stale | gone
Agent->>MCP: Ask about code, rationale, callers, impact
MCP->>Engine: Query source, graph, history, memories
Engine-->>MCP: Return local evidence with provenance
MCP-->>Agent: Surface source text, call paths,<br/>papertrail, and repo memories
Agent->>MCP: Create or update finding
MCP->>Engine: Bind memory to symbol, chunk,<br/>path, edge, commit, or issue
Engine->>Repo: Persist source-anchored repo memory
```
It is built for agents that need more than `rg` but still need local, inspectable provenance:
- current source chunks with stale-anchor validation
- Rust, TypeScript/TSX, Kotlin, C/C++, and Markdown structure
- tree-sitter-derived call/reference/import/export graph edges
- git history, lazy chunk blame, and path-level commit evidence
- ownership clusters from path proximity, graph edges, churn, and git co-touches
- cached GitHub issue/PR/review/comment rationale
- local embedding model bookkeeping and reconciliation
- symbol/edge/path-bound repo memories that surface during future queries
GPT-5.5's take:
> Keep it in the default toolbox. Use `rag-rat` first for "where is this concept implemented?",
> "why was this decision made?", "what historical PR/comment explains this?", and "what calls
> this?". For final correctness, still verify with direct file reads and targeted tests.
## Install From Scratch
The MCP server is a STDIO server, not an HTTP service. MCP clients start `rag-rat` as a child
process and talk to it over stdin/stdout.
### Install From crates.io
Install the published CLI. This is the recommended path for most users and includes FastEmbed
support by default:
```bash
cargo install rag-rat
```
### Install From Source
For local development from a checkout, clone the repository and install the CLI package:
```bash
git clone https://github.com/cq27-dev/rag-rat.git
cd rag-rat
cargo install --path crates/rag-rat-cli --bin rag-rat
```
The source build also enables FastEmbed by default.
For a smaller hash-only build without real embeddings, disable default features explicitly:
```bash
cargo install rag-rat --no-default-features
cargo install --path crates/rag-rat-cli --bin rag-rat --no-default-features
```
### First-Run Setup
Run the initializer from the repository you want to index:
```bash
cd /path/to/your/repo
rag-rat init
```
`rag-rat init` scans the repository, prompts for languages and path bindings, writes
`rag-rat.toml`, migrates the SQLite schema, indexes the repo, and offers to install/reconcile the
local embedding model. At the end it can also register the MCP server for Claude Code or Codex and
install the optional git maintenance hooks.
The initializer is the recommended first-run path. It derives source-root candidates from the files
present in the repo, keeps defaults conservative for broad projects, asks before installing the
local embedding model, then runs migration, indexing, and local-AI reconciliation in the same setup
flow. If a repo has unusual layout or generated-heavy paths, run the dry-run first and adjust the
generated `rag-rat.toml` before indexing.
Preview the generated config without writing anything:
```bash
rag-rat init --dry-run
```
Use `--yes` for the default non-interactive setup, or `--config <path>` when the config should live
somewhere other than `rag-rat.toml`.
Manual setup is still available when you need exact control:
```toml
[index]
root = "."
database = ".rag-rat/index.sqlite"
[local_ai.embedding.runtime]
batch_size = 64
ort_threads = 4
omp_threads = 1
max_embedding_chars = 4000
[target_bindings]
rust = ["src"]
typescript = ["src"]
kotlin = ["src"]
c = ["src", "include"]
cpp = ["src", "include"]
[[target]]
name = "rust-src"
language = "rust"
directories = ["src"]
include = ["**/*.rs"]
[[target]]
name = "typescript-src"
language = "typescript"
directories = ["src"]
include = ["**/*.ts", "**/*.tsx"]
[[target]]
name = "kotlin-src"
language = "kotlin"
directories = ["src"]
include = ["**/*.kt"]
[[target]]
name = "c-src"
language = "c"
directories = ["src", "include"]
include = ["**/*.c", "**/*.h"]
[[target]]
name = "cpp-src"
language = "cpp"
directories = ["src", "include"]
include = ["**/*.cc", "**/*.cpp", "**/*.cxx", "**/*.hpp", "**/*.hh", "**/*.hxx"]
[[target]]
name = "docs"
language = "markdown"
directories = ["."]
include = ["**/*.md"]
exclude = [".git/**", ".rag-rat/**", "target/**", "node_modules/**"]
```
Then run the pieces directly:
```bash
rag-rat migrate
rag-rat index --discover
rag-rat doctor
```
Install and reconcile the local embedding model:
```bash
rag-rat models install fastembed-all-minilm-l6-v2
rag-rat reconcile --changed-first --limit 500 --batch-size 64
```
If installed with `--no-default-features`, use the hash baseline instead:
```bash
rag-rat models install embedding-hash
```
Add the installed binary to an MCP client config. Use an absolute `--config` path to the target
repository's `rag-rat.toml`:
```json
{
"mcpServers": {
"rag-rat": {
"command": "/home/you/.cargo/bin/rag-rat",
"args": ["mcp", "--config", "/path/to/your/repo/rag-rat.toml"]
}
}
}
```
For development without installing the binary, point the MCP client at a local `rag-rat` checkout:
```json
{
"mcpServers": {
"rag-rat-dev": {
"command": "cargo",
"args": [
"run",
"--manifest-path",
"/path/to/rag-rat/Cargo.toml",
"--bin",
"rag-rat",
"--",
"mcp",
"--config",
"/path/to/your/repo/rag-rat.toml"
]
}
}
}
```
## Supported Today
### Source Indexing
`rag-rat` indexes configured repository targets into SQLite. It supports:
- Rust, TypeScript, TSX, Kotlin, C, C++, and Markdown
- generated/coarse targets for large or generated files
- tree-sitter symbols and chunks for supported source languages
- Markdown heading chunks for docs
- parser failure tracking, file counts, and index freshness reporting
- changed-file, discovery, and full-rebuild index modes
Index rows are context-aware for git worktrees. Clean files are stored by `commit_sha`; dirty or
untracked files are stored under a worktree overlay. Queries prefer the active worktree overlay and
fall back to the active commit, so a single database can reuse rows across branch switches while
still reflecting uncommitted local edits.
### Current-Source Safety
Chunks store text hashes, boundary hashes, context hashes, and an anchor version. `read_chunk` and
search validate indexed hits against current source before returning them. Small line drift can be
relocated; larger rewrites are reported as stale or gone. SQLite FTS is refreshed when the stored
content revision says it is dirty.
### Graph Intelligence
The graph is tree-sitter-derived, not compiler-grade. Edges are stored with explicit confidence and
provenance:
- edge kinds: `calls_name`, `constructs`, `uses_macro`, `references_type`, `imports`, `exports`,
`contains`, `implements`
- confidence labels: `Exact`, `Syntactic`, `NameOnly`, `Ambiguous`
- callsite path/span, raw evidence snippets, receiver hints, target names, resolved symbol ids, and
resolution reasons
`trace_callees` defaults to call-like edges (`calls_name` and `constructs`) so type references and
macro/module collisions do not look like normal callees unless requested. Duplicate cfg-gated Rust
definitions are grouped as logical symbols, so agents can ask for one logical API without falling
back to unsafe bare-name matching.
### Search And Impact
The MCP surface includes:
- `semantic_search`: indexed source/docs recall with SQLite BM25 lexical search and stale-hit
validation
- `symbol_lookup`: exact or fuzzy Rust/TypeScript/Kotlin/C/C++ symbol lookup
- `find_callers` and `trace_callees`: reverse/forward graph traversal
- `compare_graph_to_text`: graph caller edges compared against regex text hits
- `impact_surface`: coding preflight that combines graph, optional text fallback, docs, git,
GitHub papertrail, tests, and repo memories
- `repo_brief`: compact orientation view with `spine`, `churn`, `god_modules`, and
`refactor_candidates` modes
- `repo_clusters`: fast file-level similarity and ownership clusters for finding split candidates
and closely related code
- `docs_for_symbol`: documentation chunks related to a symbol
- `read_chunk`: current text for a selected chunk with anchor validation
The name `semantic_search` is historical: the current supported MCP behavior is lexical BM25 recall
plus freshness checks. Local embedding infrastructure exists, but vector recall should be treated as
model/artifact-dependent rather than guaranteed.
### Git And GitHub Evidence
When the target root is a git worktree, `rag-rat` indexes commit subjects, bodies, and touched
paths. It also computes chunk blame lazily and caches blame against the current chunk text hash.
Supported MCP tools:
- `commit_search`
- `git_history_for_path`
- `git_history_for_symbol`
- `commits_touching_query`
- `git_blame_chunk`
GitHub papertrail is cache-first. `github sync` uses `gh api` explicitly; normal MCP tools read only
the SQLite cache. Cached issues, PRs, issue comments, PR reviews, and review comments are indexed as
historical rationale.
Supported MCP tools:
- `papertrail_for_chunk`
- `papertrail_for_symbol`
- `papertrail_for_commit`
- `github_issue_search`
- `github_refs_for_path`
- `rationale_search`
- `github_sync_status`
Reference discovery supports common issue forms such as `Fixes #123`, `GH-123`,
`owner/repo#123`, and full GitHub issue/PR URLs.
### FFI Discovery
`ffi_surface` finds likely FFI-relevant rows with evidence classes:
- Rust UniFFI/exported items
- native binding references
- generated binding artifacts
This is a discovery/preflight tool, not a proof of ABI compatibility.
### Local AI Artifacts
Local AI state is explicit and inspectable:
- `embedding-hash`: deterministic baseline embedder
- `fastembed-all-minilm-l6-v2`: local FastEmbed backend, included in the default build
- `models list/install`: model registry and install state
- `local_ai_status`: active/installed/missing status plus chunk/vector counters
- `reconcile`: derived-artifact queue for embedding current eligible chunks
`reconcile` embeds only eligible current chunks whose bounded embedding input is missing, stale by
input hash, stale by model/version/dimension, or retryable after failure. Low-signal chunks are
skipped with explicit policy reasons such as `SkipGenerated`, `SkipTooSmall`, `SkipTooLarge`,
`SkipLowSignal`, `SkipLanguageUnsupported`, and `SkipTestFixture`.
### Repo Memories
Repo memories are first-class local evidence, not chat memory. They are typed, source-anchored notes
bound to code or repository evidence.
Supported memory kinds:
- `Invariant`
- `Decision`
- `RejectedAlternative`
- `Risk`
- `BugPattern`
- `TestExpectation`
- `PerformanceNote`
- `SecurityNote`
- `FFIBoundary`
- `PlatformQuirk`
- `FollowUp`
- `OpenQuestion`
- `Obsolete`
Supported bindings:
- `logical_symbol_id`
- `symbol_id`
- `chunk_id`
- path plus optional line span
- graph `edge_id`
- call-path edge sequence hash
- commit hash
- GitHub issue/PR reference
Memories track `current`, `relocated`, `stale`, `gone`, or `unverified` anchor state. They surface
through `memory_*` tools and through integrated tools such as `read_chunk`, `symbol_lookup`,
`find_callers`, `trace_callees`, and `impact_surface`. Edge-bound memories appear under
`repo_memories.path_crossed` when an impact query crosses that graph edge.
Supported MCP tools:
- `memory_create`
- `memory_update`
- `memory_search`
- `memory_for_symbol`
- `memory_for_path`
- `memory_for_call_path`
- `memory_validate`
- `memory_mark_obsolete`
### Maintenance And Evaluation
Supported operational commands:
- `migrate` / `migrate --check`
- `doctor`
- `index_status`
- `heal_index`
- `hooks install/status/uninstall`
- `maintenance --trigger <hook> --max-seconds <n>`
- `eval`, `eval --json`, `eval --update-baseline`
- `dump-config`
- `brief --mode spine|churn|god_modules|refactor_candidates`
- `clusters --limit 10`
`eval` runs fixture-driven ranking and freshness checks and reports search, graph, impact, git, and
papertrail metrics. Current-source violations must stay at zero.
## Known Limits
- Graph resolution is pragmatic tree-sitter analysis, not compiler/typechecker resolution.
- Kotlin and C/C++ graph extraction are useful but less mature than Rust and TypeScript.
- `index --watch` is reserved and currently returns an explicit not-implemented error.
- `semantic_search` is currently best understood as lexical BM25 recall plus freshness checks unless
a real embedding model is installed and reconciled.
- `repo_brief` is a compact file-level triage view. It does not replace direct file reads,
`impact_surface`, or tests before refactoring.
- `repo_clusters` is a file-level heuristic. It highlights co-changing and graph-related code, but
it is not semantic ownership truth.
- FFI surface detection is heuristic.
- Call-path hash memories can be looked up, but authoritative edge-sequence hashes are not yet
generated by traversal tools.
- Repo memories do not yet have review/approval workflow, multi-bind editing, or low-confidence
filtering in integrated tools.
## Commands
Commands read `rag-rat.toml` by default. Use `--config <path>` when running from another directory
or with another repository profile.
```bash
rag-rat index
rag-rat index --changed
rag-rat index --discover
rag-rat index --full
rag-rat init
rag-rat doctor
rag-rat migrate --check
rag-rat migrate
rag-rat github sync --from-refs
rag-rat github sync --issue cq27-dev/rag-rat#42
rag-rat github sync --from-refs --offline
rag-rat models list
rag-rat models install embedding-hash
rag-rat models install fastembed-all-minilm-l6-v2
rag-rat reconcile --limit 100 --batch-size 32
rag-rat reconcile --changed-first --max-seconds 60 --batch-size 64
rag-rat reconcile --until-clean --batch-size 64
rag-rat hooks install
rag-rat hooks status
rag-rat maintenance --trigger post-checkout --max-seconds 30
rag-rat eval
rag-rat eval --json
rag-rat eval --update-baseline
rag-rat query "semantic recall"
rag-rat mcp
```
By default, rag-rat links against the system SQLite library through `rusqlite`.
## Configuration
The indexed repository owns `rag-rat.toml`. This keeps project-specific target bindings out of the
reusable tool.
```toml
[index]
root = "."
database = ".rag-rat/index.sqlite"
[local_ai.embedding.runtime]
batch_size = 64
ort_threads = 4
omp_threads = 1
max_embedding_chars = 4000
[target_bindings]
rust = ["crates/app/src"]
typescript = ["web/src"]
kotlin = ["android/src/main/java"]
[[target]]
name = "app-rust"
language = "rust"
directories = ["crates/app/src"]
include = ["**/*.rs"]
[[target]]
name = "web-typescript"
language = "typescript"
directories = ["web/src"]
include = ["**/*.ts", "**/*.tsx"]
[[target]]
name = "android-kotlin"
language = "kotlin"
directories = ["android/src/main/java"]
include = ["**/*.kt"]
```
## Git Hooks
`rag-rat hooks install` installs generated `post-checkout`, `post-merge`, and `post-rewrite` hooks
for the current worktree. The hooks run in the background and call one bounded command:
`rag-rat maintenance --trigger <hook> --max-seconds 30`. Existing unmanaged hook files are never
overwritten.
`rag-rat maintenance` operates on the current worktree only. For branch switches, merges, and
rewrites it runs discover indexing for new/changed/deleted files, refreshes SQLite FTS through the
index path when needed, then reconciles embeddings with `changed_first` until the remaining time
budget is spent.
## Security
The MCP server exposes read-only source tools only. It does not execute shell commands or write
configured target files. It may write the configured SQLite index during indexing, migration,
maintenance, model reconciliation, repo-memory operations, and automatic stale-index healing before
returning search or `read_chunk` results.
GitHub sync is explicit and uses `gh api`; normal query tools read the local SQLite cache.
## License
`rag-rat` is licensed under the MIT License. See [LICENSE](LICENSE).
## Size Budget
Storage dependency changes must keep the binary slim. See `docs/binary-size.md` for the manual size
check and heavyweight dependency policy.