SIFS indexes a repo in 6.5 ms, answers queries in 0.376 ms, and hits NDCG@10 = 0.8641, beating every other tool on the benchmark, including the 137M-parameter CodeRankEmbed Hybrid. It runs as a CLI, a Rust crate, or a local MCP server. No GPU, no API keys, no external services.
Quickstart
The default mode is hybrid (semantic + BM25). Omit --source to search the
current directory, or pass a local path or Git URL explicitly.
Agent Integration
SIFS is CLI-first for agents. Install a project instruction snippet or local skill so Codex, Claude Code, OpenClaw, Hermes, and generic skill-aware agents know to use SIFS before broad file reads:
The generated guidance tells agents to use MCP tools only when they are visible
in the current session, and to fall back to shell commands such as
sifs search, sifs list-files, sifs get, and sifs agent-context --json
otherwise.
Full integration reference: docs/agent-integration.md.
Features
- Fastest in class. 6.5 ms cold index, 0.376 ms warm query, 0.0012 ms for cached repeats. Pure Rust, all on CPU.
- State-of-the-art quality. NDCG@10 of 0.8641 across 63 repositories and 19 languages. Ahead of CodeRankEmbed Hybrid (0.8617) and Semble (0.8544).
- Three search modes.
hybridfor most queries,semanticfor natural language,bm25for symbols and identifiers. Switch per query. - Fully offline. BM25 mode loads nothing — no tokenizers, no model files, no network. Hybrid and semantic modes work offline once the model is cached locally.
- MCP server. Drop-in tool for Claude Code, Codex, Cursor, and any other MCP-compatible agent. Sources are indexed on demand and can be refreshed explicitly after files change.
- Agent skills and snippets. Print, install, inspect, and remove CLI-first
SIFS guidance with
sifs agent. - Local and remote. Pass a local path or a Git URL with
--source. - Discover the machine-readable command contract with
sifs agent-context --json. - Save source/search defaults in profiles and record local feedback when agents hit friction.
- Generate agent skills/snippets and run benchmark diagnostics for quality and latency checks.
Install
# crates.io
# Homebrew
# From source
The sifs-benchmark and sifs-embed diagnostic binaries require the diagnostics feature:
Run the test suite after changing indexing, chunking, ranking, model loading, or MCP behavior:
MCP Server
SIFS installs itself as a local stdio MCP server in two commands:
This installs a reusable MCP server instead of pinning the config to one
repository. Agent clients can ask SIFS to search the current project, and tool
calls can pass source when they need a specific local checkout or Git URL.
To pin the server to a single source:
You can also start the server directly. Without --source it uses the server
process working directory as the default source. Passing --source pins the
server to that source, so MCP clients can call search and find_related
without sending a source on every tool call.
The installer calls the client CLIs when they're available:
If a client CLI isn't available, sifs mcp install --dry-run prints the config to paste manually.
Codex (~/.codex/config.toml):
[]
= "/absolute/path/to/sifs"
= ["mcp"]
= 20
= 60
Claude Code (.mcp.json in your project):
Only check a project-scoped .mcp.json into repositories you trust — it grants read access to local paths passed in tool calls.
To debug the daemon directly:
CLI
# Search the current directory
# Search a local project with hybrid ranking
# Use model-free offline BM25 search
# Search a remote Git repository
# Find code related to a known location
Use --json, --jsonl, or --format for structured output. Use
--language, --filter-path, and --context-lines when an agent needs
narrower results.
Use profiles for repeated agent sessions:
Index caches live in platform cache directories by default (~/Library/Caches/sifs on macOS, ${XDG_CACHE_HOME:-~/.cache}/sifs on Linux). Override with --cache-dir, disable with --no-cache, or opt into a repo-local .sifs/ cache with --project-cache.
Full CLI reference: docs/cli.md.
Rust Library
use ;
For BM25-only indexes that never touch semantic state, use SifsIndex::from_path_sparse. For remote repos, use SifsIndex::from_git. Full API docs, model policy, filters, and chunk-level construction: docs/library.md.
How It Works
SIFS walks a repo using .gitignore-aware file selection, splits files into code chunks, builds a sparse BM25 index, and keeps semantic state lazy until a semantic or hybrid query actually needs it.
bm25 — sparse lexical search. Good for identifiers, symbols, and exact terms. No model files required.
semantic — embedding similarity using minishlab/potion-code-16M through a local Model2Vec loader. The model tensors and tokenizer files are read directly into the Rust process; nothing leaves the machine after the initial download.
hybrid — the default. Semantic and BM25 rankings are fused with reciprocal rank fusion, then reranked. Symbol-like queries lean on BM25; natural-language questions keep more semantic weight.
- Query-aware mode weighting. Symbol queries (
Foo::bar,getUserById) get more BM25 weight. Natural-language queries stay balanced. - Definition boosts. A chunk that defines the queried symbol (
class,fn,def) ranks above chunks that only reference it. - Identifier stemming. Query tokens are stemmed and matched against identifier stems, so
parse configboosts chunks containingparseConfig,ConfigParser, orconfig_parser. - File coherence. When multiple chunks from the same file match, the file is boosted so results reflect file-level relevance rather than a single out-of-context snippet.
- Noise penalties. Test files,
compat//legacy/shims, example code, and.d.tsstubs are down-ranked so canonical implementations surface first.
Use sifs model pull or sifs model fetch to pre-download the default model. Use sifs doctor to confirm semantic search is ready for offline use.
Benchmarks
Benchmarks run across 63 pinned open-source repositories, 19 languages, and 1,251 annotated search tasks.

| Method | NDCG@10 | Cold index | Warm query | Cached repeat |
|---|---|---|---|---|
| SIFS | 0.8641 | 6.5 ms | 0.376 ms | 0.0012 ms |
| CodeRankEmbed Hybrid | 0.8617 | 57.3 s | 16.9 ms | n/a |
| Semble | 0.8544 | 439.4 ms | 1.3 ms | n/a |
| CodeRankEmbed | 0.7648 | 57.3 s | 13.3 ms | n/a |
| ColGREP | 0.6925 | 3.9 s | 979.3 ms | n/a |
| grepai | 0.5606 | 35.0 s | 47.7 ms | n/a |
| probe | 0.3872 | — | 207.1 ms | n/a |
| ripgrep | 0.1257 | — | 8.8 ms | n/a |
SIFS reports three timing fields to avoid mixing up caching effects:
cold_index_ms— fresh index, no cachewarm_uncached_query_ms— normal query after index exists (use this for comparisons)warm_cached_repeat_query_ms— repeated identical query in the same process
Quality by query type
SIFS is strongest on symbol queries but holds up well on semantic and architecture questions too.
| Query type | NDCG@10 |
|---|---|
| symbol | 0.9437 |
| semantic | 0.8551 |
| architecture | 0.8313 |

Context efficiency
The chart below tracks how quickly annotated relevant files enter an agent's context as retrieved chunks are added to the prompt budget.

Full methodology, per-language breakdown, ablations, and benchmark artifacts: docs/benchmark-report.md.
File Coverage
SIFS indexes code files by default, skipping generated files, dependency directories, and caches. It uses the ignore crate, so .gitignore files, Git excludes, global ignores, and hidden files behave exactly like familiar developer search tools.
Recognized extensions: Python, JavaScript, TypeScript, Go, Rust, Java, Kotlin, Ruby, PHP, C, C++, C#, Swift, Scala, Elixir, Dart, Lua, SQL, Bash, Zig, Haskell, Markdown, YAML, TOML, JSON.
Text-like documents (Markdown, YAML, TOML, JSON) are available through library options.
Documentation
- CLI usage — every command and flag
- Rust library —
SifsIndex, search modes, filters, indexing options - MCP server — stdio protocol and tool schemas
- Agent-native scorecard — agent-facing contract and readiness evidence
- Benchmarking — quality, latency, embedding, and smoke benchmarks
- Architecture — file selection, chunking, embedding, sparse search, dense search, hybrid ranking
License
MIT