code-context

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Guvenlik Denetimi
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SUMMARY

Local code search for AI coding agents: a CLI and MCP server with hybrid keyword + semantic search and SQL relevance-ranked aggregation over an index in plain files. No accounts, no keys, no server.

README.md

code-context: let your coding agent search, not crawl

CI
npm
License: Apache-2.0
Node.js
Ask DeepWiki

code-context is the retrieval layer under your coding agent: one local
index over the whole repo (keyword, semantic, hybrid, and SQL), reached
through an MCP server and a CLI, with the index living in plain files inside
your repo. Your agent answers questions about the codebase without reading it
file by file.

The rule of thumb: the more a question spans the repo, the more this saves,
because the answer comes from a ranked index instead of pulling source into
context one file at a time.

On your own codebase, ~30-40% fewer tokens and ~50% fewer tool calls
(so answers land faster too - aggregation questions run about 2× quicker).
The harness is in the repo, so you can reproduce it on your own code.

Try it live (early preview): ask questions about any public GitHub repo
at lantern.infino.ai, a demo agent that runs on
code-context.

  • 🔎 Find code by words or meaning. One ranked pass fuses exact keyword
    matching with semantic similarity, and every hit carries the code with
    path:line citations.
  • 📊 Ask questions grep can't answer. Search works as a SQL table
    function, so "which files have the most code about X" is one query:
    ranked by relevance, tallied by GROUP BY.
  • Searching in seconds, fresh forever. The keyword index commits
    before the embedding model even finishes downloading, vectors backfill in
    the background, and edits re-sync incrementally: only changed files
    re-chunk and re-embed.
  • 🔒 Nothing leaves your machine. No accounts, no API keys, no database
    server, no telemetry. Embedding is a small local model, downloaded once;
    after that everything works offline.

Built on infino, a fast retrieval
engine that runs SQL, full-text search, and vector search over a single copy
of your data. Text and numeric data is stored as spec-compliant Parquet, and
the same engine handles logs, docs, and agent memory.

Claude Code using code-context: index a repo, then ask in plain English, and it reaches for search and SQL on its own

Claude Code answering questions about a repo through code-context: index it, then ask, and it reaches for search and SQL on its own.

Quick start

Add it to Claude Code with one command, nothing to install:

claude mcp add code-context -- npx -y @infino-ai/code-context mcp

Then just ask a question about the code. The first search or sql on an
unindexed repo builds the index inline and answers on the same call: keyword
search is live in seconds, and vectors backfill in the background. (Prefer to
kick it off yourself? The reindex tool does the same build on demand.)

CI-tested on Linux x64 (glibc) and macOS arm64; linux-arm64, musl, and
Windows-via-WSL are expected to work through the engine's prebuilt bindings
but are not CI-covered.

Evaluation

Real agent runs over a codebase-Q&A suite (claude-sonnet-4-6, the same
minimal prompt for both lanes), on a repo the model has not memorized -
infino, the engine this is built on -
because that is the realistic case for your private code. Baseline is stock
file tools including Bash; the code-context lane is the same tools plus the
MCP server. Measured on three axes:

code-context vs stock file tools: tool calls, wall time, and tokens

Category Tokens Tool calls Wall time
Aggregation ("most code about X") -43% -71% -48%
Comprehension ("how does X work") -29% -27% -13%
Blended -32% -53% -32%

Aggregation is the structural win - ranked search composed with GROUP BY,
which file tools cannot express at any budget - and it roughly halves
end-to-end time. These numbers are on a strong model; weaker, cheaper models
explore less efficiently, so the savings tend to be larger there. On
pinpoint symbol lookup, where a single grep is already cheap, an index
matches file tools rather than beating them.

Full methodology and per-question tables are in
docs/benchmark.md, with the harness in
bench/ so you can run the same lanes on your own repo.

What you get

One index and a deliberately small tool surface for agents:

Tool What it does When agents use it
search One ranked pass fusing exact keyword matching (BM25) with semantic similarity (reciprocal-rank fusion). Hits carry the chunk content, so answers come straight from results. A strong default for finding and understanding code: how a subsystem works, code by meaning or exact term, context before a change, similar implementations - exact identifiers and paraphrases in the same call.
sql Read-only SQL over the index, with the ranked search functions (bm25_search/hybrid_search) usable as table-valued relations. Counts, rankings, aggregates over the whole repo in one query.
reindex Incremental sync (the server also auto-syncs in the background). After significant edits.

Three tools is a deliberate design: one way to find, one way to count, one
way to stay fresh. Every additional near-duplicate retrieval tool worsens an
agent's tool selection, and hybrid search's keyword half already ranks
exact identifier terms highly, so a separate lexical tool has no job left.

The SQL move

Search-as-a-table composes with aggregation. Ranked by relevance, tallied by
SQL, one engine pass:

SELECT path, SUM(end_line - start_line + 1) AS lines, COUNT(*) AS chunks
FROM bm25_search('chunks', 'content', 'vector index quantization', 300)
GROUP BY path ORDER BY lines DESC LIMIT 15

hybrid_search(...) and vector_search(...) work the same way. The CLI and
MCP server embed {{name}} placeholders server-side, so agents never handle
raw vectors.

Staged readiness

cx index commits the keyword (BM25) index first. On a ~3,000-chunk repo
that takes under a second, so search works before any embedding model even
exists on the machine. Vectors backfill in the background with a local model
(downloaded once, no key; about two minutes for that same repo), and
hybrid/semantic ranking unlocks automatically when they land. If the vector
stage fails, keyword search stays live and the index says so honestly.

The default model optimizes quality-per-minute. See
docs/embedder-eval.md for how it was chosen.

Your index is just files

Everything lives in .infino/ in your repo root (added to your
.gitignore automatically on first index): plain files you can copy,
cache in CI, or put on object storage. It's a live index the engine queries in place, not a snapshot you
export and pass around.

Setup for agents

code-context is an MCP server over stdio, so any MCP client works. Register
it once and the tools (search, sql, reindex) become available to the
agent.

Claude Code
claude mcp add code-context -- npx -y @infino-ai/code-context mcp
Cursor

Add to .cursor/mcp.json:

{ "mcpServers": { "code-context": { "command": "npx", "args": ["-y", "@infino-ai/code-context", "mcp"] } } }
Codex CLI

In ~/.codex/config.toml (note the key is mcp_servers):

[mcp_servers.code-context]
command = "npx"
args = ["-y", "@infino-ai/code-context", "mcp"]
Gemini CLI

In ~/.gemini/settings.json:

{ "mcpServers": { "code-context": { "command": "npx", "args": ["-y", "@infino-ai/code-context", "mcp"] } } }
Windsurf, Cline, and other MCP clients

Standard stdio MCP config:

{ "mcpServers": { "code-context": { "command": "npx", "args": ["-y", "@infino-ai/code-context", "mcp"] } } }

Point the server at a repo explicitly with env: { "CX_ROOT": "/path/to/repo" }
when the client's working directory is not the repo.

Tools: search, sql, reindex (incremental sync: an unchanged repo is
a fast no-op, and the server also auto-syncs in the background as queries
arrive, so results track your edits without anyone asking).

Multiple repos in one session. Each tool takes an optional path (an
absolute repo root). Omit it and the server uses its startup root; set it to
target a specific repo when a session spans more than one. One server
instance serves them all, each with its own index in its own .infino/ -
no restart, no per-repo config.

Configuration

Variable Default Purpose
CX_INDEX_DIR <repo>/.infino where the index lives
CX_SEARCH_K 10 default number of hits search returns (also settable per call and via the CLI -k flag)
CX_MAX_FILES / CX_MAX_FILE_BYTES 20000 / 1MB indexing caps (files over the file cap are left out; search/sql then flag the index as partial so an absence isn't read as proof)
CX_ROOT current directory default repo root for the MCP server / CLI when not run from the repo (each tool call can override it with a path argument)
CX_AUTO_INDEX on 0 makes a query on an unindexed repo error instead of building the index inline on the first search/sql
CX_AUTO_SYNC on 0 disables the MCP server's background staleness sync
CX_SYNC_INTERVAL_SECS 30 auto-sync debounce between staleness checks
CX_NO_EMBED off keyword-only mode for the MCP server (skip the vector stage)

CLI

The same index is reachable from the terminal too, for scripting, CI, or
inspecting results yourself. Install the binary, then run any command inside
a repo:

npm install -g @infino-ai/code-context
cx index [path]           sync the index (incremental; --full rebuilds, --watch follows edits)
cx search <query>         exact terms + meaning, one ranked pass           (-k hits)
cx sql <statement>        read-only SQL; --embed q="text" fills {{q}}
cx status                 what the index holds, how fresh, vector readiness
cx mcp                    serve the MCP tools over stdio

What it is, and what it isn't

code-context's lane is ranked content retrieval and content-relevance
aggregation: find code by words or meaning, rank whole files by how much
they're about a topic, always with path:line receipts. It deliberately
does not do structural code intelligence (call-graph tracing, dead-code
detection, type resolution). Tools that do are complementary: MCP servers
stack, so run both.

Architecture

How code-context fits together: your coding agent reaches code-context through a CLI and an MCP server, code-context runs the infino engine in-process, and the index lives as plain files in your repo

  • Chunking: tree-sitter (WASM, no native compiles) cuts at definition
    boundaries for TypeScript/JS, Python, Rust, Go, Java, C/C++, Ruby, C#, PHP;
    Markdown splits at headings; everything else falls back to fixed windows.
    Every chunk carries path, start_line, end_line, lang, content.
  • Index: infino tables in
    .infino/: BM25 (FTS) and IVF vector indexes over a single copy of the
    data, queried in-process through the Node binding. No server.
  • Embeddings: always local. A small model (chosen by a
    measured eval) downloaded once; no key, no
    per-query network, code never leaves the machine. Queries embed with the
    same model the index was built with, and a mismatch is a clear error, not
    silently wrong results.
  • Freshness: incremental by design. A per-file state map (size/mtime
    prefilter, then content hash) means a sync re-chunks and re-embeds only
    the files that changed: on a ~3,000-chunk repo an unchanged tree checks
    in ~20ms and a one-file edit syncs in ~0.7s with vectors kept current
    (larger-repo numbers in the benchmark). The MCP
    server auto-syncs in the background as queries arrive (never blocking a
    query), cx index is incremental by default (--full to rebuild), and
    cx index --watch syncs on file events.

Learn more

  • Code search for coding agents - the crawl-vs-retrieve model and when an index saves tokens.
  • FAQ - what it is, when to use it, local-only guarantees, freshness.
  • Tradeoffs - the honest limits.
  • Benchmark - measured results, with a harness to reproduce them on your own repo.

License

Apache-2.0

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