ontomics

ontomics

Extract domain knowledge from codebases to reduce LLM token consumption by 20x and time in agentic search by 10x — gathers and makes concepts, naming conventions, and vocabulary queryable via MCP.

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ontomics

Python Rust TypeScript JavaScript platform MCP MCP Registry Glama Claude Code Codex pi

ontomics gives Claude Code instant knowledge of your codebase. One tool call instead of 19. ~20x fewer tokens.

Benchmark

Tested with Claude Sonnet — same question, with and without ontomics.

"What does 'transform' mean in this codebase?" on voxelmorph (full transcript):

With ontomics Without
Tool calls 1 19
Tokens ~3.7k ~76k
Time 5s 1m 15s
Answer quality Complete Complete

"What are the main domain concepts in this codebase?" on ScribblePrompt (full transcript):

With ontomics Without
Tool calls 1 26
Tokens ~3.7k ~61.6k
Time ~5s 56s
Answer quality Complete Complete

Both conditions produced complete, correct answers. ontomics got there in one call.

What it does that search can't

Search tells you where a string appears. An LSP tells you where a symbol is defined and referenced. Neither answers: what are the domain concepts in this codebase? How do they relate? What naming conventions emerged? What changed in the domain vocabulary since last release? Which functions behave similarly, regardless of what they're named?

ontomics builds a semantic index of your project's domain — clustering related symbols into concepts, detecting naming conventions from usage frequency, resolving abbreviations, grouping functions by behavioral similarity, and tracking how the vocabulary evolves over time. That index can be exported as a portable artifact to bootstrap conventions in other repos.

Behavioral similarity

Beyond naming and concepts, ontomics embeds raw function bodies using CodeRankEmbed (768-dim, contrastive code retrieval) and clusters them by behavioral similarity. This surfaces relationships that neither naming nor call graphs expose:

❯ What functions behave like spatial_transform()?

  random_transform()   nn/functional.py:352   0.80
  spatial_transform()  functional.py:596      0.69
  random_transform()   functional.py:1399     0.67
  random_disp()        nn/functional.py:275   0.65
  integrate_disp()     functional.py:764      0.65
  compose()            nn/functional.py:216   0.63
  disp_to_trf()        functional.py:343      0.62

The result also reveals that random_transform appears at two locations with different similarity scores — a sign of implementation duplication that concept-level search would miss entirely.

Install

Install once, available in every project. No configuration needed — ontomics auto-detects the repo and indexes it on first run.

ontomics requires a git repository (.git/ directory). It will refuse to index home, root, or temp directories. To index a non-git directory, pass --force.

1. Install the binary

npm (macOS/Linux):

npm install -g @ontomics/ontomics

macOS (Homebrew):

brew install EtienneChollet/tap/ontomics

Shell installer (macOS/Linux):

curl --proto '=https' --tlsv1.2 -LsSf https://github.com/EtienneChollet/ontomics/releases/latest/download/ontomics-installer.sh | sh

From source:

git clone https://github.com/EtienneChollet/ontomics.git
cd ontomics
cargo build --release

2. Register with your harness

Claude Code:

claude mcp add -s user ontomics -- ontomics

Codex:

codex mcp add ontomics -- ontomics

OpenClaw:

openclaw mcp set ontomics '{"command":"ontomics"}'

pi-coding-agent:

pi install npm:@ontomics/ontomics

Share with your team — drop an .mcp.json in your repo root:

{
  "mcpServers": {
    "ontomics": {
      "command": "npx",
      "args": ["-y", "@ontomics/ontomics", "--repo", "."]
    }
  }
}

Supported languages

Python, TypeScript, JavaScript, Rust. Auto-detected from file extensions.

Tools

Concepts and vocabulary

Tool What it does
query_concept Find all variants, related concepts, and occurrences of a term
locate_concept Find the key signatures, classes, and files for a concept
describe_symbol Get the signature, docstring, and relationships for a function or class
trace_concept Trace how a concept flows through the codebase via call chains
list_concepts List the top domain concepts by frequency
list_conventions List all detected naming patterns (prefixes, suffixes, conversions)
list_entities List code entities (classes, functions) filtered by concept, role, or kind
check_naming Check an identifier against project conventions; suggests the canonical form
suggest_name Generate an identifier name that fits the project's vocabulary
vocabulary_health Measure convention coverage, naming consistency, and cluster cohesion
ontology_diff Show new, changed, or removed domain concepts since a git ref
export_domain_pack Export domain knowledge as portable YAML for use in other repos

Behavioral similarity

Tool What it does
find_similar_logic Find functions with behaviorally similar implementations, ranked by embedding similarity
describe_logic Get the behavioral description, body text, and logic cluster membership for a function
compact_context Assemble tiered context (concepts + logic) for a symbol, optimized for LLM consumption

Codebase structure

Tool What it does
describe_file Overview of a file's entities, concepts, and relationships
concept_map Show which modules contain which domain concepts
type_flows Show dominant types and how data flows through the codebase
trace_type Trace how a specific type propagates across files and call sites

Resources

Resource What it does
ontomics://briefing Session briefing: top conventions, abbreviations, key concepts, contrastive pairs, and vocabulary warnings. Also available via ontomics briefing CLI.

How it works

ontomics runs a multi-stage pipeline entirely on your machine — no API keys required:

  1. Parse — tree-sitter extracts every identifier, signature, and call site from your source files
  2. Analyze — TF-IDF scoring identifies domain-specific concepts and detects naming conventions
  3. Embed (concepts) — BGE-small (384-dim) clusters related concepts by semantic similarity
  4. Embed (logic) — CodeRankEmbed (768-dim) embeds raw function bodies and clusters them by behavioral similarity
  5. Centrality — PageRank scores entities by structural importance

Both embedding models are downloaded once on first run and cached locally. The index lives at <repo>/.ontomics/index.db — subsequent startups load from cache and watch for file changes.

Configuration via .ontomics/config.toml in the repo root. All fields have sensible defaults. See SPEC.md for the full design contract.

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