Files
nanoclaw/.claude/skills/add-ollama-tool/SKILL.md
gavrielc 2f472a8600 feat: add opt-in model management tools to ollama skill setup
Update SKILL.md to ask users during setup whether they want model
management tools (pull, delete, show, list-running) and set
OLLAMA_ADMIN_TOOLS=true in .env accordingly. Core inference tools
remain always available.

Incorporates #1456 by @bitcryptic-gw. Closes #1331.

Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
2026-03-27 14:32:58 +03:00

5.9 KiB

name, description
name description
add-ollama-tool Add Ollama MCP server so the container agent can call local models and optionally manage the Ollama model library.

Add Ollama Integration

This skill adds a stdio-based MCP server that exposes local Ollama models as tools for the container agent. Claude remains the orchestrator but can offload work to local models, and can optionally manage the model library directly.

Core tools (always available):

  • ollama_list_models — list installed Ollama models with name, size, and family
  • ollama_generate — send a prompt to a specified model and return the response

Management tools (opt-in via OLLAMA_ADMIN_TOOLS=true):

  • ollama_pull_model — pull (download) a model from the Ollama registry
  • ollama_delete_model — delete a locally installed model to free disk space
  • ollama_show_model — show model details: modelfile, parameters, and architecture info
  • ollama_list_running — list models currently loaded in memory with memory usage and processor type

Phase 1: Pre-flight

Check if already applied

Check if container/agent-runner/src/ollama-mcp-stdio.ts exists. If it does, skip to Phase 3 (Configure).

Check prerequisites

Verify Ollama is installed and running on the host:

ollama list

If Ollama is not installed, direct the user to https://ollama.com/download.

If no models are installed, suggest pulling one:

You need at least one model. I recommend:

ollama pull gemma3:1b    # Small, fast (1GB)
ollama pull llama3.2     # Good general purpose (2GB)
ollama pull qwen3-coder:30b  # Best for code tasks (18GB)

Phase 2: Apply Code Changes

Ensure upstream remote

git remote -v

If upstream is missing, add it:

git remote add upstream https://github.com/qwibitai/nanoclaw.git

Merge the skill branch

git fetch upstream skill/ollama-tool
git merge upstream/skill/ollama-tool

This merges in:

  • container/agent-runner/src/ollama-mcp-stdio.ts (Ollama MCP server)
  • scripts/ollama-watch.sh (macOS notification watcher)
  • Ollama MCP config in container/agent-runner/src/index.ts (allowedTools + mcpServers)
  • [OLLAMA] log surfacing in src/container-runner.ts
  • OLLAMA_HOST in .env.example

If the merge reports conflicts, resolve them by reading the conflicted files and understanding the intent of both sides.

Copy to per-group agent-runner

Existing groups have a cached copy of the agent-runner source. Copy the new files:

for dir in data/sessions/*/agent-runner-src; do
  cp container/agent-runner/src/ollama-mcp-stdio.ts "$dir/"
  cp container/agent-runner/src/index.ts "$dir/"
done

Validate code changes

npm run build
./container/build.sh

Build must be clean before proceeding.

Phase 3: Configure

Enable model management tools (optional)

Ask the user:

Would you like the agent to be able to manage Ollama models (pull, delete, inspect, list running)?

  • Yes — adds tools to pull new models, delete old ones, show model info, and check what's loaded in memory
  • No — the agent can only list installed models and generate responses (you manage models yourself on the host)

If the user wants management tools, add to .env:

OLLAMA_ADMIN_TOOLS=true

If they decline (or don't answer), do not add the variable — management tools will be disabled by default.

Set Ollama host (optional)

By default, the MCP server connects to http://host.docker.internal:11434 (Docker Desktop) with a fallback to localhost. To use a custom Ollama host, add to .env:

OLLAMA_HOST=http://your-ollama-host:11434

Restart the service

launchctl kickstart -k gui/$(id -u)/com.nanoclaw  # macOS
# Linux: systemctl --user restart nanoclaw

Phase 4: Verify

Test inference

Tell the user:

Send a message like: "use ollama to tell me the capital of France"

The agent should use ollama_list_models to find available models, then ollama_generate to get a response.

Test model management (if enabled)

If OLLAMA_ADMIN_TOOLS=true was set, tell the user:

Send a message like: "pull the gemma3:1b model" or "which ollama models are currently loaded in memory?"

The agent should call ollama_pull_model or ollama_list_running respectively.

Monitor activity (optional)

Run the watcher script for macOS notifications when Ollama is used:

./scripts/ollama-watch.sh

Check logs if needed

tail -f logs/nanoclaw.log | grep -i ollama

Look for:

  • [OLLAMA] >>> Generating — generation started
  • [OLLAMA] <<< Done — generation completed
  • [OLLAMA] Pulling model: — pull in progress (management tools)
  • [OLLAMA] Deleted: — model removed (management tools)

Troubleshooting

Agent says "Ollama is not installed"

The agent is trying to run ollama CLI inside the container instead of using the MCP tools. This means:

  1. The MCP server wasn't registered — check container/agent-runner/src/index.ts has the ollama entry in mcpServers
  2. The per-group source wasn't updated — re-copy files (see Phase 2)
  3. The container wasn't rebuilt — run ./container/build.sh

"Failed to connect to Ollama"

  1. Verify Ollama is running: ollama list
  2. Check Docker can reach the host: docker run --rm curlimages/curl curl -s http://host.docker.internal:11434/api/tags
  3. If using a custom host, check OLLAMA_HOST in .env

Agent doesn't use Ollama tools

The agent may not know about the tools. Try being explicit: "use the ollama_generate tool with gemma3:1b to answer: ..."

ollama_pull_model times out on large models

Large models (7B+) can take several minutes. The tool uses stream: false so it blocks until complete — this is intentional. For very large pulls, use the host CLI directly: ollama pull <model>

Management tools not showing up

Ensure OLLAMA_ADMIN_TOOLS=true is set in .env and the service was restarted after adding it.