Cross-platform skills manager and agent tool for SKILL.md-based skills.
Project description
🪄 MagicSkills: Build Skills Once, Reuse Them Across Every Agent
Local-first skill infrastructure for multi-agent projects
Turn scattered SKILL.md directories into a reusable · composable · syncable · callable shared capability library
| 🤖 Agent Apps | 🧩 Agent Frameworks |
| Claude Code · Cursor · Windsurf · Aider · Codex Any agent app that can read `AGENTS.md` |
AutoGen · CrewAI · LangChain · LangGraph · Haystack Semantic Kernel · smolagents · LlamaIndex Any agent framework with tool / function integration support |
Initiated and maintained by Narwhal-Lab, Peking University
English | 简体中文
Overview · Quick Start · How It Works · CLI · Python API · Tips
🧭 Overview
MagicSkills is a local-first skill infrastructure layer for multi-agent projects.
It turns scattered SKILL.md directories into something you can:
- install into one shared skill pool
- compose into per-agent
Skillscollections - sync into
AGENTS.md - expose as a tool through one stable API
The core model is simple:
Skill: one concrete skill directoryALL_SKILLS(): access the current built-inAllskillsviewSkills: the subset an agent or workflow actually usesREGISTRY: the global named-collection registry persisted across runs
MagicSkills is most useful when:
- you maintain multiple agents that should reuse one skill library
- you already have
SKILL.mdcontent but no install/selection workflow - some agents read
AGENTS.md, while others need direct tool integration - you want skill management to stay transparent and file-based
🤔 Why MagicSkills
Without a skill layer, multi-agent projects usually drift into one of these states:
- the same skill is copied into multiple agent folders and quickly diverges
SKILL.mdexists, but it is still just a document, not an operational unit- every agent loads too many irrelevant skills
AGENTS.md, prompt glue, and framework tools evolve independently- changing frameworks means redoing the whole integration
MagicSkills solves that by separating:
- the total installed skill pool
- the subset each agent should actually see
- the persistence layer that stores named collections
🚀 Quick Start
The shortest recommended workflow is:
- Install MagicSkills.
- Install one or more skills into the local pool.
- Create a named
Skillscollection for one agent. - Sync that collection to
AGENTS.mdor expose it as a tool.
1. 📦 Install The Project
From source:
git clone https://github.com/Narwhal-Lab/MagicSkills.git
cd MagicSkills
python -m pip install -e .
magicskills -h
Or from PyPI:
pip install MagicSkills
magicskills -h
2. ⬇️ Install Skills
magicskills install anthropics/skills
By default, installed skills are copied into ./.claude/skills/ and then become discoverable from the built-in Allskills view.
If you downloaded a skill bundle as a non-GitHub .zip, unzip it first and then install the extracted local directory:
unzip vendor-skills.zip -d ./tmp/vendor-skills
magicskills install ./tmp/vendor-skills
If the archive contains only one skill directory, you can also install that extracted directory directly.
3. 🧩 Create One Agent Collection
magicskills createskills agent1_skills --skill-list pdf docx --agent-md-path /agent_workdir/AGENTS.md
This means:
- resolve
pdfanddocxfromAllskills - create a named collection called
agent1_skills - remember
/agent_workdir/AGENTS.mdas its default sync target
4. 🔄 Sync To AGENTS.md
magicskills syncskills agent1_skills
syncskills supports two AGENTS.md sync modes:
none: keep the standard<usage> + <available_skills>structure; use this for agents that can directly discover and use skills from the skill information list inAGENTS.mdcli_description: write only<usage>using the collection'scli_description; use this for agents that cannot directly use skills from the skill information list inAGENTS.mdand instead need CLI guidance throughmagicskills skill-tool
Examples:
magicskills syncskills agent1_skills --mode none
magicskills syncskills agent1_skills --mode cli_description
If the target file already contains a skills section, it is replaced. If not, a new one is appended.
5. 🛠️ Or Use The Tool Interface Directly
For agents that do not read AGENTS.md, use the unified CLI tool entrypoint:
magicskills skill-tool listskill --name agent1_skills
magicskills skill-tool readskill --name agent1_skills --arg pdf
magicskills skill-tool execskill --name agent1_skills --arg "echo hello"
🐍 Python Example
If you are integrating MagicSkills into an agent framework, keep the Python side minimal:
import json
from langchain_core.tools import tool
from magicskills import ALL_SKILLS, Skills
skill_a = ALL_SKILLS().get_skill("pdf")
skill_b = ALL_SKILLS().get_skill("docx")
agent1_skills = Skills(
name="agent1_skills",
skill_list=[skill_a, skill_b],
)
@tool("_skill_tool", description=agent1_skills.tool_description)
def _skill_tool(action: str, arg: str = "") -> str:
return json.dumps(agent1_skills.skill_tool(action, arg), ensure_ascii=False)
Use syncskills if your runtime consumes AGENTS.md. Use skill_tool or the Python API directly if it does not.
🧪 Examples and Ecosystem Integrations
MagicSkills provides integration examples for both agent / IDE products that can directly read AGENTS.md and mainstream agent frameworks that integrate through tools or functions.
Agent / IDEs that can read AGENTS.md
Framework examples via tools / functions
🗺️ Documentation Map
- How It Works: architecture and object model
- CLI: command-by-command reference
- Python API: object and function reference
- Tips: integration guidance
⚙️ How It Works
🧠 Core Idea
The core of MagicSkills is not "a pile of commands", but a stable three-layer model for skill management:
Skill: describes one skill directory and its metadataSkills: describes an operable collection of skills- the global registry layer centered on
REGISTRY: describes how multiple namedSkillscollections are registered, loaded, and persisted
CLI and Python API are just different entry points to these three layers. Whether you call readskill, install, syncskills, or skill_tool, everything eventually goes through the same core objects and command implementations.
From the recommended runtime workflow, MagicSkills is closest to the following chain:
- Use
installto install relevant skills into a local skills directory - During installation, MagicSkills scans those skill directories, parses
SKILL.mdfrontmatter, and constructsSkillobjects - All installed and discovered skills are first aggregated into the built-in
Allskillsview - Then you select a subset from that view through
ALL_SKILLS()orREGISTRY.get_skills("Allskills")and compose a specificSkillscollection for an agent - Finally, that named
Skillscollection is registered intoREGISTRY, optionally persisted, and synced toAGENTS.md
🧱 Skill Layer
In MagicSkills, the minimum requirement for a valid skill is simple: it must be a directory, and that directory must contain SKILL.md.
A typical structure looks like this:
demo-skill/
├── SKILL.md
├── references/
├── scripts/
└── assets/
Where:
SKILL.mdis the entry document of the skill and also the metadata sourcereferences/,scripts/, andassets/are common convention folders, but they are not mandatory
In code, one skill is represented as a Skill object. Its core fields include:
name: the skill name, usually the directory namedescription: extracted from theSKILL.mdfrontmatterpath: the skill directory pathbase_dir: the skills root directory that contains this skillsource: where the skill comes from, such as a local path or Git repositoryis_global/universal: marks which installation scope it comes from
This layer solves the question "what is a single skill". It does not manage groups of skills and does not handle registry persistence.
Common capabilities around a single skill include:
readskill: read a skill'sSKILL.mdshowskill: inspect the full contents of a skill directorycreateskill_template: create a standard skill skeletoncreateskill: register an existing skill directory into a collection
🧩 Skills Collection Layer
The Skills layer solves the problem of organizing multiple skills into one operable working set.
A Skills object can be built in two ways:
- pass
skill_listdirectly - pass
paths, and let the system automatically scan those paths for skill directories
Once constructed, the collection exposes a unified set of higher-level capabilities:
listskill(): list all skills in the collectionreadskill(target): read skill file contentsshowskill(target): display the full skill contentsexecskill(command, ...): run a command and return a structured resultuploadskill(target): upload a skill through the default repository workflowdeleteskill(target): remove a skill from the collection; when applied toAllskills, it also removes the on-disk directorychange_tool_description(description): update the collection's tool-oriented descriptionchange_cli_description(description): update the collection's CLI-oriented descriptionsyncskills(output_path=None, mode="none"): write the collection intoAGENTS.mdskill_tool(action, arg=""): dispatch list/read/exec in a tool-function style
There are two key design points in this layer:
Skillssupports both name-based and path-based skill lookup; when names collide, the path is the final disambiguatorSkillsis a runtime view, not the installation directory itself; the same skill can be referenced by multiple named collections
One important detail: execskill() runs commands in the current process working directory, not automatically inside the skill directory. That means MagicSkills unifies the execution entry point, but does not silently change your runtime context.
🗃️ Registry Persistence Layer
The global registry layer centered on REGISTRY solves the problem of saving and restoring multiple named skills collections.
Its responsibilities include:
- maintaining the global registry singleton
REGISTRY - ensuring the built-in collection
Allskillsalways exists - creating, querying, and deleting named skills collections
- writing collection metadata into a JSON file and reloading it later
By default, the registry is stored at:
~/.magicskills/collections.json
What is stored there is not the full file contents of each skill, but only the minimum information needed to restore collections:
pathstool_descriptioncli_descriptionagent_md_path
In other words, the Registry stores "collection configuration" and "skill path references", not full copies of skill contents. The actual skill content remains in the filesystem.
The typical workflow for this layer is:
- Create a named collection with
createskills - Persist it with
saveskillsorREGISTRY.saveskills() - Restore those collections with
loadskills, or through default loading on process startup - Sync a specific collection to the target
AGENTS.mdwithsyncskills
So in essence, the Registry layer is the project-level configuration center of MagicSkills. Skill defines a single item, Skills organizes a working set, and REGISTRY makes those collections survive across different runtime cycles.
🛠️ CLI
The full CLI reference has moved to doc/cli.md. Chinese version: doc/cli.zh-CN.md.
| Command | Use case | Main capability |
|---|---|---|
listskill |
See which skills exist in the current built-in set | List skill names, descriptions, and SKILL.md paths |
readskill |
Read a skill description or any local text file | Output content by skill name or file path |
execskill |
Run commands in the current working directory | Supports streaming, JSON output, no-shell mode, custom paths |
syncskills |
Sync a named skills collection into AGENTS.md |
Generate or replace the <skills_system> block |
install |
Install skills from local paths, Git repos, or default | Copy skill files and register them into Allskills |
createskill |
Register an existing skill directory into Allskills |
Register metadata without copying files |
uploadskill |
Submit a local skill to the default MagicSkills repo | Automate fork, push, and PR flow |
deleteskill |
Delete one skill | Delete the skill directory and remove shared references |
showskill |
Review the full contents of a skill package | Show metadata and all files inside the skill directory |
createskills |
Create a named skills collection | Build an isolated skill set for an agent or team |
listskills |
List all named skills collections | Human-readable output or JSON output |
deleteskills |
Delete one or more named skills collections | Delete only collection registrations, not the skill files |
changetooldescription |
Modify the collection's tool_description metadata |
Update tool-oriented description for later querying and integration |
changeclidescription |
Modify the collection's cli_description metadata |
Update CLI-oriented description for later querying and integration |
skill-tool |
Invoke skill capabilities in a tool-function style | Use unified JSON output to dispatch list/read/exec |
🐍 Python API
The full Python API reference has moved to doc/python-api.md. Chinese version: doc/python-api.zh-CN.md.
If you want to call MagicSkills directly from scripts, tests, agent runtimes, or higher-level frameworks instead of going through the CLI, use the Python API. The content below follows the current __all__ in /root/LLK/MagicSkills/src/magicskills/__init__.py.
from pathlib import Path
from magicskills import (
ALL_SKILLS,
REGISTRY,
Skills,
listskill,
readskill,
execskill,
)
Exports
- types:
Skill,Skills - accessors and constants:
REGISTRY,ALL_SKILLS(),DEFAULT_SKILLS_ROOT - single-skill and execution functions:
listskill,readskill,showskill,execskill,createskill,createskill_template,install,uploadskill,deleteskill - skills collection and registry functions:
createskills,listskills,deleteskills,syncskills,loadskills,saveskills - description and dispatch functions:
change_tool_description,changetooldescription,change_cli_description,changeclidescription,skill_tool
Usage advice
- If you already have a
Skillsobject, prefer instance methods such asskills.readskill(),skills.execskill(), andskills.syncskills(). - If you want to directly reuse CLI-equivalent capabilities, top-level functions are more direct.
changetooldescriptionis a compatibility alias ofchange_tool_description; they are equivalent.changeclidescriptionis a compatibility alias ofchange_cli_description; they are equivalent.
💡 Tips
🧾 Integration via AGENTS.md
It is recommended to first install or maintain all skills under one shared skills root, then select only the subset a given agent actually needs, build a named skills collection from it, and finally sync that collection into the target AGENTS.md.
This has several benefits:
- the physical storage location of skills stays unified, making maintenance, upgrades, and debugging easier
- different agents can reuse the same underlying skills while exposing only the subset each one actually needs
AGENTS.mdkeeps only the skills that the current agent truly needs to see, reducing context noise
The recommended flow is:
- Install skills into a shared directory, such as
~/allskills/,./.claude/skills, or~/.claude/skills - Use
createskillsto create a named collection that contains only a subset of skills - Use
syncskillsto write that collection into the targetAGENTS.md - Choose the sync mode based on the target runtime:
nonefor agents that can directly use the skill information list inAGENTS.md,cli_descriptionfor agents that need CLI guidance throughmagicskills skill-toolinstead - Let the agent read only that target
AGENTS.md
Example:
magicskills install anthropics/skills -t ~/allskills/
magicskills createskills agent1_skills --skill-list pdf docx --agent-md-path /agent_workdir/AGENTS.md
magicskills syncskills agent1_skills
If you want finer-grained exposure control, install all skills into one shared directory first, then generate different AGENTS.md files for different agents through multiple named collections.
🔌 Integration without AGENTS.md
Some agents or frameworks do not read AGENTS.md proactively. In that case, you can expose MagicSkills' unified dispatch interface directly to them instead of relying on document syncing.
CLI entrypoint:
magicskills skill-tool <action> --arg "<arg>" --name <skills-name>
For example:
magicskills skill-tool listskill --name agent1_skills
magicskills skill-tool readskill --name agent1_skills --arg "<path>"
magicskills skill-tool execskill --name agent1_skills --arg "<command>"
Python API entrypoint:
agent1_skills.skill_tool(action: str, arg: str = "")
For example:
import json
from langchain_core.tools import tool
from magicskills import ALL_SKILLS, Skills
skill_a = ALL_SKILLS().get_skill("pdf")
skill_b = ALL_SKILLS().get_skill("docx") # Replace with your own second skill name or path
agent1_skills = Skills(
skill_list=[skill_a, skill_b],
name="agent1_skills",
)
print(agent1_skills.skill_tool("listskill"))
print(agent1_skills.skill_tool("readskill", "<path>"))
print(agent1_skills.skill_tool("execskill", "<command>"))
@tool("_skill_tool", description=agent1_skills.tool_description)
def _skill_tool(action: str, arg: str = "") -> str:
return json.dumps(agent1_skills.skill_tool(action, arg), ensure_ascii=False)
This approach fits two kinds of scenarios:
- the agent supports tool-call / function-call mechanisms, but cannot read
AGENTS.md - you want the upper-level program itself to control when to list skills, when to read skills, and when to execute commands
The simplified rule of thumb is:
- for agents that read
AGENTS.md, prefercreateskills + syncskills - for agents that do not read
AGENTS.md, preferskill-toolorskills.skill_tool()
🌱 Sharing and Growing the Skill Ecosystem
MagicSkills is not only a local skill management tool. It also aims to support a growing skill ecosystem where reusable capabilities can be accumulated, shared, and installed across projects.
If you have implemented a reusable local skill, you can use uploadskill to upload it into this project's skills/ directory through the default fork / push / PR workflow.
If you want to reuse skills contributed by others, you can use install to download them locally and integrate them into your own agents or workflows.
The recommended flow is:
- Build a reusable local skill and make sure the directory contains
SKILL.md - Use
uploadskillto submit that skill into the open-source MagicSkills skill library - Other users install those skills with
installand compose them into their ownSkillscollections orAGENTS.md
Example:
magicskills uploadskill ./skills/my-skill
magicskills install my-skill
❓ FAQ
What is the minimum structure of a skill?
At minimum, a skill must satisfy two conditions:
- it is a directory
- the directory contains
SKILL.md
Folders such as references/, scripts/, and assets/ are common conventions, but they are optional.
Should I use syncskills or skill-tool?
Choose based on how your agent integrates:
- if your agent reads
AGENTS.md, prefercreateskills + syncskills - if your agent does not read
AGENTS.mdand instead integrates through tool-call / function-call, preferskill-toolorskills.skill_tool()
The former is better for document-driven integration; the latter is better for direct programmatic integration.
Where does install put skills by default?
By default, skills are installed into ./.claude/skills/ under the current project.
If you use:
--global, the default becomes~/.claude/skills--universal, the default becomes./.agent/skillsin the current project--global --universal, the default becomes~/.agent/skills--target, the explicitly specified directory is used instead
What should I do when skill names conflict?
Many commands accept either a skill name or a skill path.
If multiple skills share the same name, stop passing the name and use an explicit path instead, for example:
magicskills readskill ./skills/demo/SKILL.md
magicskills deleteskill ./skills/demo
In short: names are for convenience, paths are for disambiguation.
Does execskill automatically run inside the skill directory?
No. execskill() runs in the current process working directory. It does not automatically switch into a skill directory.
This means:
- MagicSkills gives you a unified execution entrypoint
- but it does not silently change your runtime context
If your command depends on a specific directory, cd into it yourself in the command, or invoke MagicSkills from the correct working directory.
How can I share a local skill with others?
If you want to contribute a local skill into the open-source ecosystem, use uploadskill to submit it into this project's skills/ directory. Other users can then download and reuse it with install.
A typical flow looks like this:
magicskills uploadskill ./skills/my-skill
magicskills install my-skill
The first command shares the skill; the second reuses it.
📋 Requirements
- Python 3.10 / 3.11 / 3.12 / 3.13
- Git (used to install skills from remote repositories)
📜 License
Open-sourced and maintained by Narwhal-Lab, Peking University
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