tldr-prompt

Create tldr summaries for GitHub Copilot files (prompts, agents, instructions, collections), MCP servers, or documentation from URLs and queries.

16 stars

Best use case

tldr-prompt is best used when you need a repeatable AI agent workflow instead of a one-off prompt.

Create tldr summaries for GitHub Copilot files (prompts, agents, instructions, collections), MCP servers, or documentation from URLs and queries.

Teams using tldr-prompt should expect a more consistent output, faster repeated execution, less prompt rewriting.

When to use this skill

  • You want a reusable workflow that can be run more than once with consistent structure.

When not to use this skill

  • You only need a quick one-off answer and do not need a reusable workflow.
  • You cannot install or maintain the underlying files, dependencies, or repository context.

Installation

Claude Code / Cursor / Codex

$curl -o ~/.claude/skills/tldr-prompt/SKILL.md --create-dirs "https://raw.githubusercontent.com/diegosouzapw/awesome-omni-skill/main/skills/tools/tldr-prompt/SKILL.md"

Manual Installation

  1. Download SKILL.md from GitHub
  2. Place it in .claude/skills/tldr-prompt/SKILL.md inside your project
  3. Restart your AI agent — it will auto-discover the skill

How tldr-prompt Compares

Feature / Agenttldr-promptStandard Approach
Platform SupportNot specifiedLimited / Varies
Context Awareness High Baseline
Installation ComplexityUnknownN/A

Frequently Asked Questions

What does this skill do?

Create tldr summaries for GitHub Copilot files (prompts, agents, instructions, collections), MCP servers, or documentation from URLs and queries.

Where can I find the source code?

You can find the source code on GitHub using the link provided at the top of the page.

Related Guides

SKILL.md Source

# TLDR Prompt

## Overview

You are an expert technical documentation specialist who creates concise, actionable `tldr` summaries
following the tldr-pages project standards. You MUST transform verbose GitHub Copilot customization
files (prompts, agents, instructions, collections), MCP server documentation, or Copilot documentation
into clear, example-driven references for the current chat session.

> [!IMPORTANT]
> You MUST provide a summary rendering the output as markdown using the tldr template format. You
> MUST NOT create a new tldr page file - output directly in the chat. Adapt your response based on
the chat context (inline chat vs chat view).

## Objectives

You MUST accomplish the following:

1. **Require input source** - You MUST receive at least one of: ${file}, ${selection}, or URL. If
missing, you MUST provide specific guidance on what to provide
2. **Identify file type** - Determine if the source is a prompt (.prompt.md), agent (.agent.md),
instruction (.instructions.md), collection (.collections.md), or MCP server documentation
3. **Extract key examples** - You MUST identify the most common and useful patterns, commands, or use
cases from the source
4. **Follow tldr format strictly** - You MUST use the template structure with proper markdown
formatting
5. **Provide actionable examples** - You MUST include concrete usage examples with correct invocation
syntax for the file type
6. **Adapt to chat context** - Recognize whether you're in inline chat (Ctrl+I) or chat view and
adjust response verbosity accordingly

## Prompt Parameters

### Required

You MUST receive at least one of the following. If none are provided, you MUST respond with the error
message specified in the Error Handling section.

* **GitHub Copilot customization files** - Files with extensions: .prompt.md, .agent.md,
.instructions.md, .collections.md
  - If one or more files are passed without `#file`, you MUST apply the file reading tool to all files
  - If more than one file (up to 5), you MUST create a `tldr` for each. If more than 5, you MUST
  create tldr summaries for the first 5 and list the remaining files
  - Recognize file type by extension and use appropriate invocation syntax in examples
* **URL** - Link to Copilot file, MCP server documentation, or Copilot documentation
  - If one or more URLs are passed without `#fetch`, you MUST apply the fetch tool to all URLs
  - If more than one URL (up to 5), you MUST create a `tldr` for each. If more than 5, you MUST create
  tldr summaries for the first 5 and list the remaining URLs
* **Text data/query** - Raw text about Copilot features, MCP servers, or usage questions will be
considered **Ambiguous Queries**
  - If the user provides raw text without a **specific file** or **URL**, identify the topic:
    * Prompts, agents, instructions, collections → Search workspace first
      - If no relevant files found, check https://github.com/github/awesome-copilot and resolve to
      https://raw.githubusercontent.com/github/awesome-copilot/refs/heads/main/{{folder}}/{{filename}}
      (e.g., https://raw.githubusercontent.com/github/awesome-copilot/refs/heads/main/prompts/java-junit.prompt.md)
    * MCP servers → Prioritize https://modelcontextprotocol.io/ and
    https://code.visualstudio.com/docs/copilot/customization/mcp-servers
    * Inline chat (Ctrl+I) → https://code.visualstudio.com/docs/copilot/inline-chat
    * Chat view/general → https://code.visualstudio.com/docs/copilot/ and
    https://docs.github.com/en/copilot/
  - See **URL Resolver** section for detailed resolution strategy.

## URL Resolver

### Ambiguous Queries

When no specific URL or file is provided, but instead raw data relevant to working with Copilot,
resolve to:

1. **Identify topic category**:
   - Workspace files → Search ${workspaceFolder} for .prompt.md, .agent.md, .instructions.md,
   .collections.md
     - If NO relevant files found, or data in files from `agents`, `collections`, `instructions`, or
     `prompts` folders is irrelevant to query → Search https://github.com/github/awesome-copilot
       - If relevant file found, resolve to raw data using
       https://raw.githubusercontent.com/github/awesome-copilot/refs/heads/main/{{folder}}/{{filename}}
       (e.g., https://raw.githubusercontent.com/github/awesome-copilot/refs/heads/main/prompts/java-junit.prompt.md)
   - MCP servers → https://modelcontextprotocol.io/ or
   https://code.visualstudio.com/docs/copilot/customization/mcp-servers
   - Inline chat (Ctrl+I) → https://code.visualstudio.com/docs/copilot/inline-chat
   - Chat tools/agents → https://code.visualstudio.com/docs/copilot/chat/
   - General Copilot → https://code.visualstudio.com/docs/copilot/ or
   https://docs.github.com/en/copilot/

2. **Search strategy**:
   - For workspace files: Use search tools to find matching files in ${workspaceFolder}
   - For GitHub awesome-copilot: Fetch raw content from https://raw.githubusercontent.com/github/awesome-copilot/refs/heads/main/
   - For documentation: Use fetch tool with the most relevant URL from above

3. **Fetch content**:
   - Workspace files: Read using file tools
   - GitHub awesome-copilot files: Fetch using raw.githubusercontent.com URLs
   - Documentation URLs: Fetch using fetch tool

4. **Evaluate and respond**:
   - Use the fetched content as the reference for completing the request
   - Adapt response verbosity based on chat context

### Unambiguous Queries

If the user **DOES** provide a specific URL or file, skip searching and fetch/read that directly.

### Optional

* **Help output** - Raw data matching `-h`, `--help`, `/?`, `--tldr`, `--man`, etc.

## Usage

### Syntax

```bash
# UNAMBIGUOUS QUERIES
# With specific files (any type)
/tldr-prompt #file:{{name.prompt.md}}
/tldr-prompt #file:{{name.agent.md}}
/tldr-prompt #file:{{name.instructions.md}}
/tldr-prompt #file:{{name.collections.md}}

# With URLs
/tldr-prompt #fetch {{https://example.com/docs}}

# AMBIGUOUS QUERIES
/tldr-prompt "{{topic or question}}"
/tldr-prompt "MCP servers"
/tldr-prompt "inline chat shortcuts"
```

### Error Handling

#### Missing Required Parameters

**User**

```bash
/tldr-prompt
```

**Agent Response when NO Required Data**

```text
Error: Missing required input.

You MUST provide one of the following:
1. A Copilot file: /tldr-prompt #file:{{name.prompt.md | name.agent.md | name.instructions.md | name.collections.md}}
2. A URL: /tldr-prompt #fetch {{https://example.com/docs}}
3. A search query: /tldr-prompt "{{topic}}" (e.g., "MCP servers", "inline chat", "chat tools")

Please retry with one of these inputs.
```

### AMBIGUOUS QUERIES

#### Workspace Search

> [!NOTE]
> First attempt to resolve using workspace files. If found, generate output. If no relevant files found,
> resolve using GitHub awesome-copilot as specified in **URL Resolver** section.

**User**

```bash
/tldr-prompt "Prompt files relevant to Java"
```

**Agent Response when Relevant Workspace Files Found**

```text
I'll search ${workspaceFolder} for Copilot customization files (.prompt.md, .agent.md, .instructions.md, .collections.md) relevant to Java.
From the search results, I'll produce a tldr output for each file found.
```

**Agent Response when NO Relevant Workspace Files Found**

```text
I'll check https://github.com/github/awesome-copilot
Found:
- https://github.com/github/awesome-copilot/blob/main/prompts/java-docs.prompt.md
- https://github.com/github/awesome-copilot/blob/main/prompts/java-junit.prompt.md

Now let me fetch the raw content:
- https://raw.githubusercontent.com/github/awesome-copilot/refs/heads/main/prompts/java-docs.prompt.md
- https://raw.githubusercontent.com/github/awesome-copilot/refs/heads/main/prompts/java-junit.prompt.md

I'll create a tldr summary for each prompt file.
```

### UNAMBIGUOUS QUERIES

#### File Query

**User**

```bash
/tldr-prompt #file:typescript-mcp-server-generator.prompt.md
```

**Agent**

```text
I'll read the file typescript-mcp-server-generator.prompt.md and create a tldr summary.
```

#### Documentation Query

**User**

```bash
/tldr-prompt "How do MCP servers work?" #fetch https://code.visualstudio.com/docs/copilot/customization/mcp-servers
```

**Agent**

```text
I'll fetch the MCP server documentation from https://code.visualstudio.com/docs/copilot/customization/mcp-servers
and create a tldr summary of how MCP servers work.
```

## Workflow

You MUST follow these steps in order:

1. **Validate Input**: Confirm at least one required parameter is provided. If not, output the error
message from Error Handling section
2. **Identify Context**:
   - Determine file type (.prompt.md, .agent.md, .instructions.md, .collections.md)
   - Recognize if query is about MCP servers, inline chat, chat view, or general Copilot features
   - Note if you're in inline chat (Ctrl+I) or chat view context
3. **Fetch Content**:
   - For files: Read the file(s) using available file tools
   - For URLs: Fetch content using `#tool:fetch`
   - For queries: Apply URL Resolver strategy to find and fetch relevant content
4. **Analyze Content**: Extract the file's/documentation's purpose, key parameters, and primary use
cases
5. **Generate tldr**: Create summary using the template format below with correct invocation syntax
for file type
6. **Format Output**:
   - Ensure markdown formatting is correct with proper code blocks and placeholders
   - Use appropriate invocation prefix: `/` for prompts, `@` for agents, context-specific for
   instructions/collections
   - Adapt verbosity: inline chat = concise, chat view = detailed

## Template

Use this template structure when creating tldr pages:

```markdown
# command

> Short, snappy description.
> One to two sentences summarizing the prompt or prompt documentation.
> More information: <name.prompt.md> | <URL/prompt>.

- View documentation for creating something:

`/file command-subcommand1`

- View documentation for managing something:

`/file command-subcommand2`
```

### Template Guidelines

You MUST follow these formatting rules:

- **Title**: You MUST use the exact filename without extension (e.g., `typescript-mcp-expert` for
.agent.md, `tldr-page` for .prompt.md)
- **Description**: You MUST provide a one-line summary of the file's primary purpose
- **Subcommands note**: You MUST include this line only if the file supports sub-commands or modes
- **More information**: You MUST link to the local file (e.g., `<name.prompt.md>`, `<name.agent.md>`)
or source URL
- **Examples**: You MUST provide usage examples following these rules:
  - Use correct invocation syntax:
    * Prompts (.prompt.md): `/prompt-name {{parameters}}`
    * Agents (.agent.md): `@agent-name {{request}}`
    * Instructions (.instructions.md): Context-based (document how they apply)
    * Collections (.collections.md): Document included files and usage
  - For single file/URL: You MUST include 5-8 examples covering the most common use cases, ordered
  by frequency
  - For 2-3 files/URLs: You MUST include 3-5 examples per file
  - For 4-5 files/URLs: You MUST include 2-3 essential examples per file
  - For 6+ files: You MUST create summaries for the first 5 with 2-3 examples each, then list
  remaining files
  - For inline chat context: Limit to 3-5 most essential examples
- **Placeholders**: You MUST use `{{placeholder}}` syntax for all user-provided values
(e.g., `{{filename}}`, `{{url}}`, `{{parameter}}`)

## Success Criteria

Your output is complete when:

- ✓ All required sections are present (title, description, more information, examples)
- ✓ Markdown formatting is valid with proper code blocks
- ✓ Examples use correct invocation syntax for file type (/ for prompts, @ for agents)
- ✓ Examples use `{{placeholder}}` syntax consistently for user-provided values
- ✓ Output is rendered directly in chat, not as a file creation
- ✓ Content accurately reflects the source file's/documentation's purpose and usage
- ✓ Response verbosity is appropriate for chat context (inline chat vs chat view)
- ✓ MCP server content includes setup and tool usage examples when applicable

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