Discover what two sources agree on β find the signal in the noise.
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Select your agent
Option 1: Install via CLI (recommended)
Recommended (no pre-install needed)
npx clawhub@latest --dir ~/.claude/skills install pattern-finderOr via clawhub CLI (if already installed)
clawhub --dir ~/.claude/skills install pattern-finderβ οΈ Requires Node.js 18+. No Node? Use Option 2 below to download the ZIP instead. Install Node.js β
Option 2: Manual install (no Node required)
Download the ZIP, extract it, and place the folder at the path below. Restart your agent to activate.
Install path
~/.claude/skills/pattern-finder/π‘Extract and place the folder at the path above, then restart your agent.
Category
π οΈGeneral ToolsPlatforms
What Pattern Finder can do for your AI workflow
Discover what two sources directly from your Claude conversation
Works across Claude, Cursor, OpenClaw β install once, use everywhere
Trusted by 1,645+ developers worldwide
One-command installation β no complex setup required
Combine with other skills to build powerful multi-step AI workflows
Try these prompts with your AI agent after installing Pattern Finder
Help me get started with Pattern Finder
Explains what Pattern Finder does, walks through the setup, and runs a quick demo based on your current project
Use Pattern Finder to discover what two sources agree on β find the signal in the noise
Invokes Pattern Finder with the right parameters and returns the result directly in the conversation
What can I do with Pattern Finder in my general tools workflow?
Lists the top use cases for Pattern Finder, with example commands for each scenario
Guides & tutorials for AI skills
Pattern Finder extends your AI assistant with the ability to discover what two sources agree on β find the signal in the noise. Rather than leaving your conversation to handle this manually, you can ask your Claude agent directly β and it will take care of the task end-to-end, using Pattern Finder as its underlying capability.
Pattern Finder works across Claude, Cursor, OpenClaw through the Model Context Protocol (MCP) β an open standard that lets AI clients share tools and skills without lock-in. Because MCP is platform-agnostic by design, you install Pattern Finder once and it becomes available across all your AI clients. Whether you're working in Claude for focused sessions or Cursor for integrated workflows, the skill behaves consistently.
Pattern Finder installs like any other MCP skill: drop the folder into `~/.claude/skills/pattern-finder/` for global access, or `.claude/skills/pattern-finder/` to keep it scoped to one project. After a quick restart of Claude, you can trigger it explicitly with `/pattern-finder`, or let the AI decide when it's the right tool for your request.
Pattern Finder has been installed 1,645 times, making it one of the more actively used skills in the General Tools category. The install rate suggests it solves a real, recurring need rather than a niche edge case. Like all skills on DiscoverAISkills, it is free to install and use. The broader AI skills ecosystem continues to expand as developers contribute new capabilities across categories like developer tools, data analysis, writing, automation, and more.
Place the skill folder at ~/.claude/skills/pattern-finder/ for personal use (all projects), or .claude/skills/pattern-finder/ for project-specific use. Restart your AI client, then invoke with /pattern-finder or let the AI discover it automatically.
Pattern Finder supports Claude, Cursor, OpenClaw. It integrates seamlessly with these AI platforms to extend their capabilities.
Pattern Finder is free to install. Check the repository for licensing information.
Discover what two sources agree on β find the signal in the noise.
Automate my general tools tasks using Pattern Finder
Identifies repetitive steps in your workflow and sets up Pattern Finder to handle them automatically
MCP vs traditional plugins: what's the difference?
Pattern Finder is categorized under General Tools. These skills help AI agents perform specialized tasks in this domain.