skill-creator by langchain-ai/deepagents
npx skills add https://github.com/langchain-ai/deepagents --skill skill-creatordeepagents CLI 从五个来源加载技能,按优先级从低到高排列如下:
---|---|---|---
0 | <package>/built_in_skills/ | 内置 | 随 deepagents CLI 一起提供
1 | ~/.deepagents/<agent>/skills/ | 用户 (deepagents 别名) | deepagents skills create 的默认位置
2 | ~/.agents/skills/ | 用户 | 跨智能体工具共享
3 | .deepagents/skills/ | 项目 (deepagents 别名) | deepagents skills create --project 的默认位置
4 | .agents/skills/ | 项目 | 跨智能体工具共享
<agent> 是智能体配置名称(默认:)。当两个目录包含同名技能时,优先级更高的版本胜出——项目技能覆盖用户技能,任何用户或项目技能覆盖内置技能。
广告位招租
在这里展示您的产品或服务
触达数万 AI 开发者,精准高效
agent目录布局示例:
~/.deepagents/agent/skills/ # 用户技能(优先级最低)
├── skill-name-1/
│ └── SKILL.md
└── ...
<project-root>/.deepagents/skills/ # 项目技能(优先级更高)
├── skill-name-2/
│ └── SKILL.md
└── ...
上下文窗口是公共资源。技能与智能体所需的一切(系统提示、对话历史、其他技能的元数据以及实际的用户请求)共享上下文窗口。
默认假设:智能体已经非常强大。 只添加智能体尚不具备的上下文。质疑每一条信息:“智能体真的需要这个解释吗?”以及“这段文字是否值得其令牌成本?”
优先选择简洁的示例,而非冗长的解释。
根据任务的脆弱性和可变性匹配具体程度:
高自由度(基于文本的指令):当存在多种有效方法、决策取决于上下文或启发式方法指导时使用。
中等自由度(带参数的伪代码或脚本):当存在首选模式、可以接受一些变化或配置影响行为时使用。
低自由度(特定脚本,参数很少):当操作脆弱且容易出错、一致性至关重要或必须遵循特定顺序时使用。
将智能体想象为探索一条路径:两侧是悬崖的狭窄桥梁需要特定的护栏(低自由度),而开阔的田野则允许多条路线(高自由度)。
每个技能包含一个必需的 SKILL.md 文件以及可选的捆绑资源:
skill-name/
├── SKILL.md (必需)
│ ├── YAML 前置元数据 (必需)
│ │ ├── name: (必需)
│ │ └── description: (必需)
│ └── Markdown 指令 (必需)
└── 捆绑资源 (可选)
├── scripts/ - 可执行代码 (Python/Bash/等)
├── references/ - 旨在根据需要加载到上下文中的文档
└── assets/ - 输出中使用的文件(模板、图标、字体等)
每个 SKILL.md 包含:
name 和 description 字段。这些是智能体用来确定何时使用该技能的唯一字段,因此清晰全面地描述技能是什么以及何时应该使用它非常重要。scripts/)用于需要确定性可靠性或需要重复重写的任务的可执行代码(Python/Bash/等)。
scripts/rotate_pdf.pyreferences/)旨在根据需要加载到上下文中的文档和参考资料,以告知智能体的过程和思考。
references/finance.md,用于公司 NDA 模板的 references/mnda.md,用于公司政策的 references/policies.md,用于 API 规范的 references/api_docs.mdassets/)不打算加载到上下文中,而是在智能体产生的输出中使用的文件。
assets/logo.png,用于 PowerPoint 模板的 assets/slides.pptx,用于 HTML/React 样板代码的 assets/frontend-template/,用于字体的 assets/font.ttf技能应仅包含直接支持其功能的基本文件。请勿创建无关的文档或辅助文件,包括:
技能应仅包含 AI 智能体完成手头工作所需的信息。它不应包含关于创建它的过程、设置和测试程序、面向用户的文档等的辅助上下文。创建额外的文档文件只会增加混乱和困惑。
技能使用三级加载系统来高效管理上下文:
保持 SKILL.md 正文简洁,不超过 500 行,以最小化上下文膨胀。超过 10 MB 的 SKILL.md 文件会被智能体运行时静默跳过。当内容接近行数限制时,将其拆分为单独的文件。将内容拆分到其他文件时,从 SKILL.md 引用它们并清楚地描述何时读取它们非常重要,以确保技能的读者知道它们的存在以及何时使用它们。
关键原则: 当技能支持多种变体、框架或选项时,仅在 SKILL.md 中保留核心工作流程和选择指导。将特定于变体的详细信息(模式、示例、配置)移动到单独的参考资料文件中。
模式 1:带有参考资料的高级指南
# PDF 处理
## 快速开始
使用 pdfplumber 提取文本:
[代码示例]
## 高级功能
- **表单填写**:完整指南请参阅 [FORMS.md](FORMS.md)
- **API 参考**:所有方法请参阅 [REFERENCE.md](REFERENCE.md)
- **示例**:常见模式请参阅 [EXAMPLES.md](EXAMPLES.md)
智能体仅在需要时加载 FORMS.md、REFERENCE.md 或 EXAMPLES.md。
模式 2:特定领域组织
对于具有多个领域的技能,按领域组织内容以避免加载不相关的上下文:
bigquery-skill/
├── SKILL.md (概述和导航)
└── reference/
├── finance.md (收入、计费指标)
├── sales.md (机会、销售渠道)
├── product.md (API 使用、功能)
└── marketing.md (活动、归因)
当用户询问销售指标时,智能体只读取 sales.md。
类似地,对于支持多个框架或变体的技能,按变体组织:
cloud-deploy/
├── SKILL.md (工作流程 + 提供商选择)
└── references/
├── aws.md (AWS 部署模式)
├── gcp.md (GCP 部署模式)
└── azure.md (Azure 部署模式)
当用户选择 AWS 时,智能体只读取 aws.md。
模式 3:条件性细节
显示基本内容,链接到高级内容:
# DOCX 处理
## 创建文档
使用 docx-js 创建新文档。请参阅 [DOCX-JS.md](DOCX-JS.md)。
## 编辑文档
对于简单的编辑,直接修改 XML。
**对于跟踪更改**:请参阅 [REDLINING.md](REDLINING.md)
**对于 OOXML 详细信息**:请参阅 [OOXML.md](OOXML.md)
智能体仅在用户需要这些功能时才读取 REDLINING.md 或 OOXML.md。
重要指南:
技能创建涉及以下步骤:
按顺序执行这些步骤,仅在明确不适用的情况下才跳过。
仅当技能的使用模式已经清晰理解时才跳过此步骤。即使在使用现有技能时,它仍然有价值。
要创建有效的技能,请清楚地理解技能将如何使用的具体示例。这种理解可以来自直接的用户示例,也可以来自经过用户反馈验证的生成示例。
例如,在构建图像编辑器技能时,相关的问题包括:
为避免让用户不知所措,避免在单条消息中问太多问题。从最重要的问题开始,并根据需要进行跟进以获得更好的效果。
当对技能应支持的功能有清晰的认识时,结束此步骤。
要将具体示例转化为有效的技能,请通过以下方式分析每个示例:
示例:在构建 pdf-editor 技能来处理诸如“帮我旋转这个 PDF”之类的查询时,分析显示:
scripts/rotate_pdf.py 脚本会很有帮助示例:在设计 frontend-webapp-builder 技能来处理诸如“为我构建一个待办事项应用”或“为我构建一个跟踪步数的仪表板”之类的查询时,分析显示:
assets/hello-world/ 模板会很有帮助示例:在构建 big-query 技能来处理诸如“今天有多少用户登录了?”之类的查询时,分析显示:
references/schema.md 文件会很有帮助要确定技能的内容,请分析每个具体示例,以创建要包含的可重用资源列表:脚本、参考资料和资产。
此时,是时候实际创建技能了。
仅当正在开发的技能已经存在,并且需要迭代或打包时才跳过此步骤。在这种情况下,请继续下一步。
有两种创建新技能的方法:
init_skill.py(推荐用于丰富的技能)从头开始创建新技能时,运行 init_skill.py 脚本。该脚本生成一个新的模板技能目录,自动包含技能所需的一切,使技能创建过程更加高效和可靠。
用法:
scripts/init_skill.py <skill-name> --path <output-directory>
对于 deepagents CLI,请使用上面“Deepagents 技能位置”中列出的任何技能目录:
# 用户技能(默认)
scripts/init_skill.py <skill-name> --path ~/.deepagents/agent/skills
# 项目技能
scripts/init_skill.py <skill-name> --path .deepagents/skills
该脚本:
scripts/、references/ 和 assets/初始化后,根据需要自定义或删除生成的 SKILL.md 和示例文件。
deepagents skills create(快速开始)内置的 CLI 命令创建一个仅包含 SKILL.md 模板的最小技能——没有资源目录。将此用于只需要指令而不需要捆绑脚本、参考资料或资产的简单技能。
# 在用户技能目录中创建
deepagents skills create <skill-name>
# 在项目技能目录中创建
deepagents skills create <skill-name> --project
当技能将包含捆绑资源(scripts/、references/、assets/)时,使用 init_skill.py。使用 deepagents skills create 进行快速、最小的起点。
编辑(新生成的或现有的)技能时,请记住,技能是为智能体使用而创建的。包含对智能体有益且非显而易见的信息。考虑哪些程序性知识、特定领域的细节或可重用资产将有助于智能体更有效地执行这些任务。
请参考上面的“渐进式披露设计原则”和“核心原则”部分,了解有关顺序工作流程、条件逻辑和输出格式的既定模式。
要开始实施,请从上面确定的可重用资源开始:scripts/、references/ 和 assets/ 文件。请注意,此步骤可能需要用户输入。例如,在实现 brand-guidelines 技能时,用户可能需要提供品牌资产或模板以存储在 assets/ 中,或提供文档以存储在 references/ 中。
添加的脚本必须通过实际运行来测试,以确保没有错误并且输出符合预期。如果有许多类似的脚本,只需要测试一个代表性样本,以确保它们都能正常工作,同时平衡完成时间。
应删除技能不需要的任何示例文件和目录。初始化脚本在 scripts/、references/ 和 assets/ 中创建示例文件以演示结构,但大多数技能不需要所有这些文件。
写作指南: 始终使用祈使句/不定式形式。
使用 name 和 description 编写 YAML 前置元数据:
name:技能名称description:这是技能的主要触发机制,帮助智能体理解何时使用该技能。
docx 技能的描述示例:“全面的文档创建、编辑和分析,支持跟踪更改、评论、格式保留和文本提取。在处理专业文档(.docx 文件)时使用,用于:(1) 创建新文档,(2) 修改或编辑内容,(3) 处理跟踪更改,(4) 添加评论,或任何其他文档任务”YAML 前置元数据中唯一允许的其他字段是根据 Agent Skills 规范的可选属性:license、compatibility、allowed-tools 和 metadata。不要包含超出这些字段的任何字段。
编写使用技能及其捆绑资源的说明。
技能开发完成后,验证它以确保满足所有要求:
scripts/quick_validate.py <path/to/skill-folder>
验证脚本检查:
name 和 descriptionname、description、license、compatibility、allowed-tools、metadata如果验证失败,请修复报告的错误并再次运行验证命令。
测试技能后,用户可能会请求改进。这通常发生在使用技能后不久,对技能的表现有新鲜的了解。
迭代工作流程:
每周安装
190
代码仓库
GitHub Stars
17.1K
首次出现
2026年1月22日
安全审计
安装于
opencode174
codex173
gemini-cli169
github-copilot164
cursor157
amp156
The deepagents CLI loads skills from five sources, listed here from lowest to highest precedence:
---|---|---|---
0 | <package>/built_in_skills/ | Built-in | Ships with deepagents CLI
1 | ~/.deepagents/<agent>/skills/ | User (deepagents alias) | Default for deepagents skills create
2 | ~/.agents/skills/ | User | Shared across agent tools
3 | .deepagents/skills/ | Project (deepagents alias) | Default for deepagents skills create --project
4 | .agents/skills/ | Project | Shared across agent tools
<agent> is the agent configuration name (default: agent). When two directories contain a skill with the same name, the higher-precedence version wins — project skills override user skills, and any user or project skill overrides built-in skills.
Example directory layout:
~/.deepagents/agent/skills/ # user skills (lowest precedence)
├── skill-name-1/
│ └── SKILL.md
└── ...
<project-root>/.deepagents/skills/ # project skills (higher precedence)
├── skill-name-2/
│ └── SKILL.md
└── ...
The context window is a public good. Skills share the context window with everything else the agent needs: system prompt, conversation history, other Skills' metadata, and the actual user request.
Default assumption: The agent is already very capable. Only add context the agent doesn't already have. Challenge each piece of information: "Does the agent really need this explanation?" and "Does this paragraph justify its token cost?"
Prefer concise examples over verbose explanations.
Match the level of specificity to the task's fragility and variability:
High freedom (text-based instructions) : Use when multiple approaches are valid, decisions depend on context, or heuristics guide the approach.
Medium freedom (pseudocode or scripts with parameters) : Use when a preferred pattern exists, some variation is acceptable, or configuration affects behavior.
Low freedom (specific scripts, few parameters) : Use when operations are fragile and error-prone, consistency is critical, or a specific sequence must be followed.
Think of the agent as exploring a path: a narrow bridge with cliffs needs specific guardrails (low freedom), while an open field allows many routes (high freedom).
Every skill consists of a required SKILL.md file and optional bundled resources:
skill-name/
├── SKILL.md (required)
│ ├── YAML frontmatter metadata (required)
│ │ ├── name: (required)
│ │ └── description: (required)
│ └── Markdown instructions (required)
└── Bundled Resources (optional)
├── scripts/ - Executable code (Python/Bash/etc.)
├── references/ - Documentation intended to be loaded into context as needed
└── assets/ - Files used in output (templates, icons, fonts, etc.)
Every SKILL.md consists of:
name and description fields. These are the only fields that the agent reads to determine when the skill gets used, thus it is very important to be clear and comprehensive in describing what the skill is, and when it should be used.scripts/)Executable code (Python/Bash/etc.) for tasks that require deterministic reliability or are repeatedly rewritten.
scripts/rotate_pdf.py for PDF rotation tasksreferences/)Documentation and reference material intended to be loaded as needed into context to inform the agent's process and thinking.
references/finance.md for financial schemas, references/mnda.md for company NDA template, references/policies.md for company policies, references/api_docs.md for API specificationsassets/)Files not intended to be loaded into context, but rather used within the output the agent produces.
assets/logo.png for brand assets, assets/slides.pptx for PowerPoint templates, assets/frontend-template/ for HTML/React boilerplate, assets/font.ttf for typographyA skill should only contain essential files that directly support its functionality. Do NOT create extraneous documentation or auxiliary files, including:
The skill should only contain the information needed for an AI agent to do the job at hand. It should not contain auxiliary context about the process that went into creating it, setup and testing procedures, user-facing documentation, etc. Creating additional documentation files just adds clutter and confusion.
Skills use a three-level loading system to manage context efficiently:
Keep SKILL.md body to the essentials and under 500 lines to minimize context bloat. SKILL.md files exceeding 10 MB are silently skipped by the agent runtime. Split content into separate files when approaching the line limit. When splitting out content into other files, it is very important to reference them from SKILL.md and describe clearly when to read them, to ensure the reader of the skill knows they exist and when to use them.
Key principle: When a skill supports multiple variations, frameworks, or options, keep only the core workflow and selection guidance in SKILL.md. Move variant-specific details (patterns, examples, configuration) into separate reference files.
Pattern 1: High-level guide with references
# PDF Processing
## Quick start
Extract text with pdfplumber:
[code example]
## Advanced features
- **Form filling**: See [FORMS.md](FORMS.md) for complete guide
- **API reference**: See [REFERENCE.md](REFERENCE.md) for all methods
- **Examples**: See [EXAMPLES.md](EXAMPLES.md) for common patterns
The agent loads FORMS.md, REFERENCE.md, or EXAMPLES.md only when needed.
Pattern 2: Domain-specific organization
For Skills with multiple domains, organize content by domain to avoid loading irrelevant context:
bigquery-skill/
├── SKILL.md (overview and navigation)
└── reference/
├── finance.md (revenue, billing metrics)
├── sales.md (opportunities, pipeline)
├── product.md (API usage, features)
└── marketing.md (campaigns, attribution)
When a user asks about sales metrics, the agent only reads sales.md.
Similarly, for skills supporting multiple frameworks or variants, organize by variant:
cloud-deploy/
├── SKILL.md (workflow + provider selection)
└── references/
├── aws.md (AWS deployment patterns)
├── gcp.md (GCP deployment patterns)
└── azure.md (Azure deployment patterns)
When the user chooses AWS, the agent only reads aws.md.
Pattern 3: Conditional details
Show basic content, link to advanced content:
# DOCX Processing
## Creating documents
Use docx-js for new documents. See [DOCX-JS.md](DOCX-JS.md).
## Editing documents
For simple edits, modify the XML directly.
**For tracked changes**: See [REDLINING.md](REDLINING.md)
**For OOXML details**: See [OOXML.md](OOXML.md)
The agent reads REDLINING.md or OOXML.md only when the user needs those features.
Important guidelines:
Skill creation involves these steps:
Follow these steps in order, skipping only if there is a clear reason why they are not applicable.
Skip this step only when the skill's usage patterns are already clearly understood. It remains valuable even when working with an existing skill.
To create an effective skill, clearly understand concrete examples of how the skill will be used. This understanding can come from either direct user examples or generated examples that are validated with user feedback.
For example, when building an image-editor skill, relevant questions include:
To avoid overwhelming users, avoid asking too many questions in a single message. Start with the most important questions and follow up as needed for better effectiveness.
Conclude this step when there is a clear sense of the functionality the skill should support.
To turn concrete examples into an effective skill, analyze each example by:
Example: When building a pdf-editor skill to handle queries like "Help me rotate this PDF," the analysis shows:
scripts/rotate_pdf.py script would be helpful to store in the skillExample: When designing a frontend-webapp-builder skill for queries like "Build me a todo app" or "Build me a dashboard to track my steps," the analysis shows:
assets/hello-world/ template containing the boilerplate HTML/React project files would be helpful to store in the skillExample: When building a big-query skill to handle queries like "How many users have logged in today?" the analysis shows:
references/schema.md file documenting the table schemas would be helpful to store in the skillTo establish the skill's contents, analyze each concrete example to create a list of the reusable resources to include: scripts, references, and assets.
At this point, it is time to actually create the skill.
Skip this step only if the skill being developed already exists, and iteration or packaging is needed. In this case, continue to the next step.
There are two ways to create a new skill:
init_skill.py (recommended for rich skills)When creating a new skill from scratch, run the init_skill.py script. The script generates a new template skill directory that automatically includes everything a skill requires, making the skill creation process much more efficient and reliable.
Usage:
scripts/init_skill.py <skill-name> --path <output-directory>
For deepagents CLI, use any of the skill directories listed in "Skill Location for Deepagents" above:
# User skills (default)
scripts/init_skill.py <skill-name> --path ~/.deepagents/agent/skills
# Project skills
scripts/init_skill.py <skill-name> --path .deepagents/skills
The script:
scripts/, references/, and assets/After initialization, customize or remove the generated SKILL.md and example files as needed.
deepagents skills create (quick start)The built-in CLI command creates a minimal skill with just a SKILL.md template — no resource directories. Use this for simple skills that only need instructions and no bundled scripts, references, or assets.
# Create in user skills directory
deepagents skills create <skill-name>
# Create in project skills directory
deepagents skills create <skill-name> --project
Use init_skill.py when the skill will include bundled resources (scripts/, references/, assets/). Use deepagents skills create for a quick, minimal starting point.
When editing the (newly-generated or existing) skill, remember that the skill is being created for an agent to use. Include information that would be beneficial and non-obvious to the agent. Consider what procedural knowledge, domain-specific details, or reusable assets would help the agent execute these tasks more effectively.
Refer to the "Progressive Disclosure Design Principle" and "Core Principles" sections above for established patterns around sequential workflows, conditional logic, and output formatting.
To begin implementation, start with the reusable resources identified above: scripts/, references/, and assets/ files. Note that this step may require user input. For example, when implementing a brand-guidelines skill, the user may need to provide brand assets or templates to store in assets/, or documentation to store in references/.
Added scripts must be tested by actually running them to ensure there are no bugs and that the output matches what is expected. If there are many similar scripts, only a representative sample needs to be tested to ensure confidence that they all work while balancing time to completion.
Any example files and directories not needed for the skill should be deleted. The initialization script creates example files in scripts/, references/, and assets/ to demonstrate structure, but most skills won't need all of them.
Writing Guidelines: Always use imperative/infinitive form.
Write the YAML frontmatter with name and description:
name: The skill namedescription: This is the primary triggering mechanism for your skill, and helps the agent understand when to use the skill.
docx skill: "Comprehensive document creation, editing, and analysis with support for tracked changes, comments, formatting preservation, and text extraction. Use when working with professional documents (.docx files) for: (1) Creating new documents, (2) Modifying or editing content, (3) Working with tracked changes, (4) Adding comments, or any other document tasks"The only other allowed fields in YAML frontmatter are optional properties per the Agent Skills spec: license, compatibility, allowed-tools, and metadata. Do not include any fields beyond these.
Write instructions for using the skill and its bundled resources.
Once development of the skill is complete, validate it to ensure it meets all requirements:
scripts/quick_validate.py <path/to/skill-folder>
The validation script checks:
name and descriptionname, description, license, compatibility, allowed-tools, metadataIf validation fails, fix the reported errors and run the validation command again.
After testing the skill, users may request improvements. Often this happens right after using the skill, with fresh context of how the skill performed.
Iteration workflow:
Weekly Installs
190
Repository
GitHub Stars
17.1K
First Seen
Jan 22, 2026
Security Audits
Gen Agent Trust HubPassSocketPassSnykPass
Installed on
opencode174
codex173
gemini-cli169
github-copilot164
cursor157
amp156
AI Elements:基于shadcn/ui的AI原生应用组件库,快速构建对话界面
62,200 周安装