SKILL.md
$27
Core Principles
- Test One Thing at a Time: Change model OR prompt OR parameters, not all at once
- Have a Hypothesis: Know what you're trying to improve
- Measure Results: Use metrics to compare variations
- Verify via Tool: The agent fetches the config to confirm variations exist
Workflow
Step 1: Identify What to Optimize
What's the problem? Cost, quality, speed, accuracy? How will you measure success?
Step 2: Design the Experiment
Goal
What to Vary
Reduce cost
Cheaper model (e.g., gpt-4o-mini)
Improve quality
Better model or more detailed prompt
Reduce latency
Faster model, lower max_tokens
Increase accuracy
Different model family (Claude vs GPT-4)
Step 3: Create Variations (Recommended: Clone with Overrides)
Use clone-ai-config-variation to duplicate the baseline and override only what you're testing. The tool reads the source variation, merges your overrides, and creates the new variation. Everything you don't pass is inherited from the source automatically.
Required fields:
sourceVariationKey-- the baseline to clone from
keyandname-- identifiers for the new variation (e.g.,gpt4o-mini-cost-test)
Override ONLY the fields you are testing. Leave all other fields unset -- do not pass them even if you know their current values. The clone tool inherits them from the source. This enforces the one-variable-at-a-time principle:
- Testing a cheaper model? Pass only
modelConfigKeyandmodelName. Do NOT passinstructions,messages, orparameters.
- Testing different instructions? Pass only
instructions. Do NOT passmodelConfigKeyormodelName.
- Testing a parameter? Pass only
parameters. Do NOT pass model or prompt fields.
The response returns both the source and created variation, so you can immediately verify the diff.
Step 3 (Alternative): Create from Scratch
If you need full control, use get-ai-config first to review the current state, then create-ai-config-variation with all fields specified manually. Always fetch before creating so you understand the existing config's mode, model, and parameters.
Step 4: Verify
If you used clone-ai-config-variation, the response includes both source and created variations for immediate comparison. Otherwise, use get-ai-config to confirm.
Report results:
- Variations created with correct models and parameters
- Only the intended variable differs between variations
- Flag any issues
Note on API responses: After calling a creation or clone tool, treat a successful response as confirmation that the operation succeeded. The API response may not echo back every field you sent (e.g., model fields may show defaults). Do not retry or assume failure based on response field values alone -- verify with get-ai-config if needed.
modelConfigKey Format
Required for models to display in the UI. Format: {Provider}.{model-id}:
OpenAI.gpt-4o,OpenAI.gpt-4o-mini
Anthropic.claude-sonnet-4-5,Anthropic.claude-3-5-sonnet
Safety: Protect the Baseline
When the user wants to try a different model, prompt, or parameters, always create a new variation alongside the baseline. Never modify or delete the existing baseline variation. This applies even if the user says "replace" or "switch" -- the correct action is to create a new variation and let targeting/rollouts control traffic, not to edit the original.
- Use
clone-ai-config-variationorcreate-ai-config-variationto add the new variation
- Do NOT use
update-ai-config-variationon the baseline to change its model or instructions
- Do NOT use
delete-ai-config-variationon the baseline
- Explain to the user that keeping the baseline enables comparison and safe rollback
What NOT to Do
- Don't test too many things at once -- change one variable per variation
- Don't pass unchanged fields when cloning -- let the tool inherit them from the source
- Don't forget modelConfigKey (variations without it show as "NO MODEL" in the UI)
- Don't make decisions on small sample sizes
- Don't modify or remove the baseline variation -- create new variations alongside it
- Don't use
update-ai-config-variationto "replace" a baseline -- create a new variation instead
Related Skills
aiconfig-create-- Create the initial config
aiconfig-update-- Refine based on learnings