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yao23

Agent Experience Graph

by Yao Li · GitHub ↗ · v0.1.1 · MIT-0
cross-platform ✓ Security Clean
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Install in OpenClaw
/install agent-experience-graph
Description
Use when an agent should learn from prior task-solving traces, recommend tools or skills for a new decomposed task, record reusable execution experience, or...
README (SKILL.md)

Agent Experience Graph

This is a portable agent capability, not a runtime-specific plugin. It should work in any agent environment that can read markdown instructions and run Python 3 scripts. Runtime-specific metadata lives outside this file:

  • capability.json: neutral capability manifest for launchers, registries, and importers
  • agents/openai.yaml: Codex UI metadata
  • adapters/README.md: install notes for Codex, Claude Code, OpenClaw, Hermes, and generic agents

Use this skill to turn prior agent runs into reusable guidance for new tasks. The core loop is:

  1. Describe the current task and likely subtasks.
  2. Retrieve similar solved traces.
  3. Recommend skills, tools, workflow patterns, and warnings.
  4. Apply only the recommendations that fit the current constraints.
  5. After the task, record a sanitized trace so future agents can learn from it.

Quick Workflow

Create a query with a task and optional subtasks:

{
  "task": "Build an ingestion pipeline for markdown API docs",
  "subtasks": [
    {"description": "Parse markdown into structured sections"},
    {"description": "Chunk content for coding-agent retrieval"},
    {"description": "Evaluate extracted endpoint metadata"}
  ]
}

Run the bundled recommender against a trace file:

python3 scripts/recommend_traces.py \
  --traces assets/example_traces.json \
  --query query.json

Use the output as evidence, not as an order. Prefer recommendations with:

  • successful or partially successful outcomes
  • matched subtasks, not only matched task titles
  • clear lessons or failure notes
  • skills/tools that are available in the current environment

Recording A Trace

After finishing a task, create a compact trace with no secrets, credentials, private user data, or proprietary snippets. Keep enough detail to support future retrieval:

{
  "id": "trace-2026-05-18-doc-ingestion",
  "task": "Build a structured ingestion demo for API documentation",
  "outcome": "success",
  "subtasks": [
    {
      "description": "Normalize markdown into sections",
      "skills": ["structured-ingestion"],
      "tools": ["python"],
      "outcome": "success",
      "lessons": ["Preserve headings and code blocks before chunking."]
    }
  ],
  "skills": ["structured-ingestion"],
  "tools": ["python", "ripgrep"],
  "lessons": ["Chunk metadata improves downstream retrieval."]
}

Append it to an existing trace library:

python3 scripts/recommend_traces.py \
  --traces traces.json \
  --append-trace new_trace.json

Interpretation Rules

  • Similarity is a hint. Always check whether the prior environment, constraints, and outcome match the current task.
  • A tool appearing in a trace does not prove it caused success. Prefer tools attached to matched successful subtasks.
  • Preserve negative evidence. Failed traces are useful when their lessons explain what to avoid.
  • When traces disagree, choose the recommendation with the closest subtask match and the best outcome evidence.
  • Do not expose raw traces from private workspaces. Share redacted summaries or derived recommendations.

Trace Schema

For field definitions and an example trace library, read references/trace_schema.md when creating new datasets, validators, or import/export adapters.

Usage Guidance
This result is low confidence because the artifact files were not inspectable in the sandbox. Re-run the review with readable metadata.json and artifact/ contents before relying on this install decision.
Capability Assessment
Purpose & Capability
Review could not confirm the skill purpose or capabilities because metadata.json and artifact/ were not readable in this run.
Instruction Scope
No instruction-scope issue is supported by artifact evidence available to this reviewer.
Install Mechanism
Install behavior could not be assessed from artifacts because workspace inspection failed.
Credentials
No environment access concern is supported by artifact evidence available to this reviewer.
Persistence & Privilege
No persistence or privilege concern is supported by artifact evidence available to this reviewer.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install agent-experience-graph
  3. After installation, invoke the skill by name or use /agent-experience-graph
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v0.1.1
Move homepage and source metadata to the standalone repository
v0.1.0
Initial release of a portable agent trace recommender capability
Metadata
Slug agent-experience-graph
Version 0.1.1
License MIT-0
All-time Installs 0
Active Installs 0
Total Versions 2
Frequently Asked Questions

What is Agent Experience Graph?

Use when an agent should learn from prior task-solving traces, recommend tools or skills for a new decomposed task, record reusable execution experience, or... It is an AI Agent Skill for Claude Code / OpenClaw, with 107 downloads so far.

How do I install Agent Experience Graph?

Run "/install agent-experience-graph" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is Agent Experience Graph free?

Yes, Agent Experience Graph is completely free, licensed under MIT-0. You can download, install and use it at no cost.

Which platforms does Agent Experience Graph support?

Agent Experience Graph is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created Agent Experience Graph?

It is built and maintained by Yao Li (@yao23); the current version is v0.1.1.

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