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SkillMesh

CI License: MIT Python 3.10+

Stop stuffing hundreds of tools into your LLM prompt. Route to the right ones.

SkillMesh is a retrieval router for agent tool catalogs. Instead of loading every skill/tool into every prompt, it selects the best few cards for the query and injects only those.

Why Teams Adopt SkillMesh

  • Keeps prompts small as your catalog grows (top-K instead of full dump)

  • Improves tool selection quality on multi-domain tasks

  • Cuts token cost per call by avoiding irrelevant tool context

  • Works with Claude (MCP), Codex (skill bundle), and local CLI workflows

  • Standardized OpenAI-style function schemas for tool expansion

The Problem

LLM agents break when you load every tool into the prompt. Token counts explode, accuracy drops, and cost scales linearly with your catalog size. Teams with 50+ skills end up with bloated system prompts that confuse the model and burn budget.

SkillMesh solves this with retrieval-based routing: given a user query, it selects only the top-K most relevant expert cards and injects them into the prompt — keeping context small, accurate, and cheap.

High-Value Use Cases

  • Internal AI assistants with large tool/skill catalogs (50+ cards)

  • Multi-step workflows crossing domains (data -> ML -> infra -> reporting)

  • Teams using MCP where tool overload hurts selection quality

  • Role-based execution flows (Data-Analyst, Financial-Analyst, AWS-Engineer)

SkillMesh vs Static Skill Docs

Static SKILL.md only

SkillMesh routing

Prompt strategy

Load broad instructions every turn

Inject only relevant top-K cards

Scale behavior

Gets noisy as catalog grows

Remains focused with retrieval

Multi-domain tasks

Manual tool prompting

Query-driven cross-domain routing

Expansion

Add docs and hope model picks right one

Add cards + retrieval handles selection

Before vs After

Without SkillMesh

With SkillMesh

Prompt tokens

~50,000+ (all tools loaded)

~3,000 (top-K only)

Tool selection

Model guesses from a huge list

BM25+Dense retrieval picks the best match

Cost per call

High (full catalog every time)

Low (only relevant cards)

Accuracy

Degrades as catalog grows

Stays consistent

Multi-domain tasks

Confusing for the model

Routed precisely (clean + train + deploy)

How It Works

User Query
    │
    ▼
┌─────────────────────┐
│  BM25 + Dense Index  │  ← Scores every card in your registry
└─────────┬───────────┘
          │
          ▼
┌─────────────────────┐
│   RRF Fusion Rank    │  ← Merges sparse + dense rankings
└─────────┬───────────┘
          │
          ▼
┌─────────────────────┐
│   Top-K Card Select  │  ← Returns the K best expert cards
└─────────┬───────────┘
          │
          ▼
┌─────────────────────┐
│  Agent acts as expert │  ← Full instructions injected into prompt
└─────────────────────┘

Each card contains: execution behavior, decision trees, anti-patterns, output contracts, and composability hints — everything the agent needs to act as a domain expert.

One-line MCP install (Claude Desktop / Claude Code)

Add this to your Claude Desktop config (claude_desktop_config.json) or Claude Code MCP settings:

{
  "mcpServers": {
    "skillmesh": {
      "command": "uvx",
      "args": ["--from", "skillmesh[mcp]", "skillmesh-mcp"]
    }
  }
}

No env vars. No file paths. No cloning. The bundled registry is included in the package.

Requires uv to be installed.

60-Second Demo

git clone https://github.com/varunreddy/SkillMesh.git
cd SkillMesh
pip install -e .
skillmesh emit \
  --provider claude \
  --registry examples/registry/tools.json \
  --query "clean messy sales data, train a baseline model, and generate charts" \
  --top-k 5

Output (truncated):

<context>
  <card id="data.data-cleaning" title="Data Cleaning and Validation Expert">
    # Data Cleaning and Validation Expert
    Specialist in detecting and correcting data quality issues...
  </card>
  <card id="ml.sklearn-modeling" title="Scikit-learn Modeling and Evaluation">
    ...
  </card>
  <card id="viz.matplotlib-seaborn" title="Visualization with Matplotlib and Seaborn">
    ...
  </card>
</context>

Only the relevant experts are injected — the rest of the 100+ card catalog stays out of the prompt.

Integrations

Platform

Method

Status

Docs

Claude Code

MCP server

Supported

Setup guide

Claude Desktop

MCP server

Supported

Setup guide

Codex

Skill bundle

Supported

Setup guide

Claude MCP Server

The easiest way to run it is via uvx (see "One-line MCP install" above). For local development:

pip install -e .[mcp]
skillmesh-mcp

The server auto-discovers the registry: env var SKILLMESH_REGISTRY → repo root → bundled registry.

Exposes five tools via MCP:

  • route_with_skillmesh(query, top_k) — provider-formatted context block

  • retrieve_skillmesh_cards(query, top_k) — structured JSON payload

  • list_skillmesh_roles(catalog?, registry?) — full role list with installed status

  • list_installed_skillmesh_roles(catalog?, registry?) — installed roles only

  • install_skillmesh_role(role, catalog?, registry?, dry_run?) — install by id or friendly name (for example Data-Analyst)

Copy-ready config templates in examples/mcp/.

Codex Skill Bundle

$skill-installer install https://github.com/varunreddy/SkillMesh/tree/main/skills/skillmesh

Direct role commands in SkillMesh:

skillmesh roles
skillmesh roles list
skillmesh Data-Analyst install
skillmesh roles install Data-Analyst

Or via installed bundle wrapper:

~/.codex/skills/skillmesh/scripts/roles.sh
~/.codex/skills/skillmesh/scripts/roles.sh list
~/.codex/skills/skillmesh/scripts/roles.sh install --role-id role.data-engineer

Quickstart

Install

python -m venv .venv && source .venv/bin/activate
pip install -e .[dev]

Optional extras:

pip install -e .[dense]   # Dense reranking with sentence-transformers
pip install -e .[mcp]     # Claude MCP server

Retrieve top-K cards

skillmesh retrieve \
  --registry examples/registry/tools.json \
  --query "set up nginx reverse proxy with SSL" \
  --top-k 3

Emit provider-ready context

skillmesh emit \
  --provider claude \
  --registry examples/registry/tools.json \
  --query "deploy container to GCP Cloud Run" \
  --top-k 5

Role Quickstart

List available role cards:

skillmesh roles list --catalog examples/registry/tools.json

Install a role by friendly name (adds missing dependencies):

skillmesh roles install Data-Analyst \
  --catalog examples/registry/tools.json \
  --registry ~/.codex/skills/skillmesh/installed.registry.yaml

Dry-run an install to preview what will be added:

skillmesh roles install AWS-Engineer \
  --catalog examples/registry/tools.json \
  --registry ~/.codex/skills/skillmesh/installed.registry.yaml \
  --dry-run

MCP equivalent (tool call):

install_skillmesh_role(role="Data-Analyst", catalog="examples/registry/tools.json", dry_run=false)

Curated Registries

Use domain-specific registries for tighter routing:

Registry

Domain

Cards

tools.json / tools.yaml

Full catalog

154

ml-engineering.registry.yaml

ML training & evaluation

33

data-engineering.registry.yaml

Pipelines & data platforms

14

bi-analytics.registry.yaml

BI & dashboards

21

devops.registry.yaml

DevOps & infrastructure

18

web-apis.registry.yaml

API design & patterns

11

cloud-gcp.registry.yaml

Google Cloud Platform

13

cloud-bi.registry.yaml

Cloud BI

17

roles.registry.yaml

Role orchestrators

11

skillmesh emit \
  --provider claude \
  --registry examples/registry/devops.registry.yaml \
  --query "configure prometheus alerting and grafana dashboards" \
  --top-k 3

Benchmarking

Use the reproducible benchmark template:

CLI Commands

Command

Description

skillmesh retrieve

Top-K retrieval payload (JSON)

skillmesh fetch

Alias for retrieve (supports free-text query shorthand)

skillmesh emit

Provider-formatted context block

skillmesh index

Index registry into Chroma for persistent retrieval

skillmesh roles wizard

Interactive role picker and installer

skillmesh roles list

List available role cards from a catalog

skillmesh roles install

Install role card + missing dependency cards into target registry

skillmesh role

Alias for roles

skillmesh-mcp

Stdio MCP server for Claude

skillmesh retrieve/MCP payloads include invocation in OpenAI function-tool format for every card.

skillmesh --help

Repository Layout

src/skill_registry_rag/
├── models.py          # Tool/role card models
├── registry.py        # Registry loading + validation
├── retriever.py       # BM25 + optional dense retrieval
├── adapters/          # Provider formatters (codex, claude)
└── cli.py             # skillmesh CLI

examples/registry/
├── tools.json         # Full tool catalog
├── tools.yaml         # YAML version of full catalog
├── instructions/      # Expert instruction files (90+)
├── roles/             # Role orchestrator files
└── *.registry.yaml    # Domain-specific registries

skills/skillmesh/      # Codex-installable skill

Contributing

See CONTRIBUTING.md for how to add expert cards, create registries, and submit PRs.

Troubleshooting

skillmesh: command not found

pip install -e .

Missing registry path

The CLI and MCP server auto-discover the registry. If auto-discovery fails, pass --registry or set:

export SKILLMESH_REGISTRY=/path/to/tools.json
# or pass --registry on every command

skillmesh-mcp fails to start

pip install -e .[mcp]

Codex does not detect new skill

Restart Codex after running $skill-installer.

Development

ruff check src tests
pytest

License

MIT — see LICENSE.


If SkillMesh helps your team, please star the repo — it directly improves discoverability and helps others find the project.

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security - not tested
A
license - permissive license
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quality - not tested

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