vardoger-analyze작성자: github
Use when the user asks to personalize the GitHub Copilot CLI assistant, adapt Copilot to their style, use vardoger, or analyze their Copilot CLI conversation…
npx skills add https://github.com/github/awesome-copilot --skill vardoger-analyzeAnalyze Copilot CLI history and generate personalized instructions
Drive the local vardoger CLI to read the user's GitHub Copilot CLI conversation history, extract behavioral patterns, and write a personalization block into ~/.copilot/copilot-instructions.md.
How it works
vardoger prepares the history in batches. You (the assistant) summarize each batch for behavioral signals, then synthesize all summaries into a final personalization. vardoger writes the result, fenced by <!-- vardoger:start --> / <!-- vardoger:end --> markers so any hand-authored rules in the same file are preserved.
Sandbox note (read before running any command)
vardoger reads and writes files outside the current workspace:
- Reads Copilot CLI history from
~/.copilot/session-state/. - Writes a checkpoint state file to
~/.vardoger/state.json(created on first run). - Writes the final personalization to
~/.copilot/copilot-instructions.md.
When the host asks to approve a vardoger command, grant it write access beyond the workspace. Otherwise the first vardoger prepare call will fail with PermissionError: ... ~/.vardoger/state.tmp because the sandbox blocks writes outside the current working directory.
Workflow
- Verify the
vardogerCLI is installed and fail fast with install guidance if not. - Check staleness with
vardoger status --platform copilot --jsonand stop early if the personalization is still fresh. - Get batch metadata with
vardoger prepare --platform copilotto learn the number of batches. - For each batch, run
vardoger prepare --platform copilot --batch <N>and write a concise bullet summary of the behavioral signals. - Get the synthesis prompt with
vardoger prepare --platform copilot --synthesize. - Synthesize all batch summaries into a single personalization following the synthesis prompt.
- Write the result by piping the personalization into
vardoger write --platform copilot --scope global(or--scope project --project <path>). - Report back to the user what was written, where, and that the write is idempotent.
Steps
1. Verify vardoger is installed
if ! command -v vardoger >/dev/null 2>&1; then
cat <<'INSTALL_EOF'
vardoger CLI is not installed.
This skill calls the `vardoger` CLI to read your Copilot CLI history and
write a personalization file, so the CLI must be on PATH.
Install options:
# Recommended:
pipx install vardoger
# Or run without installing:
uvx vardoger --help
If you do not have pipx, see https://pipx.pypa.io/stable/installation/.
Project page: https://github.com/dstrupl/vardoger
After installing, re-run the personalization request.
INSTALL_EOF
exit 1
fi
2. Check if a refresh is needed
vardoger status --platform copilot --json
If the output shows "is_stale": false, tell the user their personalization is up to date and ask if they want to re-run anyway. If stale or never generated, continue with the analysis.
3. Get batch metadata
vardoger prepare --platform copilot
This prints JSON like {"batches": 3, "total_conversations": 29}. Note the number of batches. Tell the user: "Found N conversations in M batches. Analyzing..."
4. Summarize each batch
For each batch number from 1 to N, run:
vardoger prepare --platform copilot --batch 1
The output contains a summarization prompt followed by conversation data. Read the output carefully and produce a concise bullet-point summary of the behavioral signals you observe in that batch. Keep your summary for later.
Tell the user which batch you are processing: "Analyzing batch 1 of N..."
Repeat for all batches (--batch 2, --batch 3, etc.).
5. Get the synthesis prompt
vardoger prepare --platform copilot --synthesize
6. Synthesize the personalization
Following the synthesis prompt, combine all your batch summaries into a single personalization. The output should be clean markdown with actionable instructions for an AI assistant.
7. Write the result
Pipe your personalization to vardoger:
echo "YOUR_PERSONALIZATION_HERE" | vardoger write --platform copilot --scope global
Replace YOUR_PERSONALIZATION_HERE with the actual personalization markdown you generated. --scope global writes to ~/.copilot/copilot-instructions.md; use --scope project --project <path> to scope the write to a specific repository instead.
8. Report to the user
Tell the user what was written and where. Mention they can ask you to re-run vardoger any time to update the personalization, and that writes are idempotent (the fenced block is replaced; anything outside it is preserved).
When to use
- When the user asks to personalize their Copilot CLI assistant.
- When the user asks to analyze their Copilot CLI conversation history.
- When the user mentions "vardoger".