aiconfig-create
20
总安装量
19
周安装量
#17895
全站排名
安装命令
npx skills add https://github.com/launchdarkly/agent-skills --skill aiconfig-create
Agent 安装分布
github-copilot
17
codex
17
opencode
16
gemini-cli
16
cursor
16
claude-code
15
Skill 文档
Create AI Config
You’re using a skill that will guide you through setting up AI configuration in your application. Your job is to explore the codebase to understand the use case and stack, choose agent vs completion mode, create the config following the right path, and verify it works.
Prerequisites
- LaunchDarkly API access token with
ai-configs:writepermission or MCP server - LaunchDarkly project (use
aiconfig-projectsskill if needed)
Core Principles
- Understand the Use Case First: Know what you’re building before choosing a mode
- Choose the Right Mode: Agent mode vs completion mode depends on your framework and needs
- Two-Step Creation: Create config first, then create variations (model, prompts, parameters)
- Verify via API: The agent fetches the config to confirm it was created correctly
API Key Detection
- Check environment variables â
LAUNCHDARKLY_API_KEY,LAUNCHDARKLY_API_TOKEN,LD_API_KEY - Check MCP config â Claude:
~/.claude/config.jsonâmcpServers.launchdarkly.env.LAUNCHDARKLY_API_KEY - Prompt user â Only if detection fails
Workflow
Step 1: Understand Your Use Case
Before creating, identify what you’re building:
- What framework? LangGraph, LangChain, CrewAI, OpenAI SDK, Anthropic SDK, custom
- What does the AI need? Just text, or tools/function calling?
- Agent or completion? See decision below
Step 2: Choose Agent vs Completion Mode
| Your Need | Mode |
|---|---|
| Persistent instructions across interactions | Agent |
| LangGraph, CrewAI, AutoGen | Agent |
| Direct OpenAI/Anthropic API calls | Completion |
| Full control of message structure | Completion |
| One-off text generation | Completion |
Both modes support tools. Agent mode: single instructions string. Completion mode: full messages array.
Step 3: Create the Config
Follow API Quick Start for curl examples:
- Create config â
POST /projects/{projectKey}/ai-configs(key, name, mode) - Create variation â
POST /projects/{projectKey}/ai-configs/{configKey}/variations(instructions or messages, modelConfigKey, model.parameters) - Attach tools â After creation, PATCH variation to add tools (see
aiconfig-toolsskill)
Step 4: Verify
After creation, verify the config:
-
Fetch via API:
curl -X GET "https://app.launchdarkly.com/api/v2/projects/{projectKey}/ai-configs/{configKey}" \ -H "Authorization: {api_token}" -H "LD-API-Version: beta" -
Confirm:
- Config exists with correct mode
- Variations have model names (not “NO MODEL”)
- modelConfigKey is set
- Parameters are present
-
Report results:
- â Config created with correct structure
- â Variations have models assigned
- â ï¸ Flag any missing model or parameters
- Provide config URL:
https://app.launchdarkly.com/projects/{projectKey}/ai-configs/{configKey}
Important Notes
- modelConfigKey must be
{Provider}.{model-id}(e.g.,OpenAI.gpt-4o) for models to show in UI - Tools must be created first (
aiconfig-toolsskill), then attached via PATCH - Tools endpoint is
/ai-tools, NOT/ai-configs/tools
Edge Cases
| Situation | Action |
|---|---|
| Config already exists | Ask if user wants to update instead |
| Variation shows “NO MODEL” | PATCH variation with modelConfigKey and model |
| Invalid modelConfigKey | Use values from model-configs API |
What NOT to Do
- Don’t create configs without understanding the use case
- Don’t skip the two-step process (config then variation)
- Don’t try to attach tools during initial creation
- Don’t forget modelConfigKey (models won’t show)
Related Skills
aiconfig-toolsâ Create tools before attachingaiconfig-variationsâ Add more variations for experimentationaiconfig-updateâ Modify configs based on learnings