AI/ML talent search, paper author discovery, lab member crawling, GitHub researcher mining and personalized recruitment email generation skills. As long as the user mentions looking for AI/ML PhDs, researchers, and engineers, grab lab members, OpenReview/CVF conference authors, GitHub network researchers, extract homepage/Scholar/GitHub/email/research direction, identify Chinese, analyze...
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What Crawling papers and talent access workflow can do for your AI workflow
Ai/ml talent search, paper directly from your Claude conversation
Works across Claude, Cursor, OpenClaw β install once, use everywhere
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 Crawling papers and talent access workflow
Help me get started with Crawling papers and talent access workflow
Explains what Crawling papers and talent access workflow does, walks through the setup, and runs a quick demo based on your current project
Use Crawling papers and talent access workflow to aI/ML talent search, paper author discovery, lab member crawling, G...
Invokes Crawling papers and talent access workflow with the right parameters and returns the result directly in the conversation
What can I do with Crawling papers and talent access workflow in my developer & devops workflow?
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Crawling papers and talent access workflow extends your AI assistant with the ability to aI/ML talent search, paper author discovery, lab member crawling, GitHub researcher mining and personalized recruitment email generation skills. As long as the user mentions looking for AI/ML PhDs, researchers, and engineers, grab lab members, OpenReview/CVF conference authors, GitHub network researchers, extract homepage/Scholar/GitHub/email/research direction, identify Chinese, analyze... 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 Crawling papers and talent access workflow as its underlying capability.
Crawling papers and talent access workflow 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 Crawling papers and talent access workflow 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.
Getting started with Crawling papers and talent access workflow takes about two minutes. Place the skill at `~/.claude/skills/mapping-skill/` (personal, all projects) or `.claude/skills/mapping-skill/` (project-specific), then restart your AI client. From that point, typing `/mapping-skill` in any conversation activates it, or the AI will use it on its own when it detects a relevant request.
Crawling papers and talent access workflow has 349 installs and is part of the growing Developer & DevOps skill ecosystem on DiscoverAISkills. The source code is open on GitHub β you can inspect it, contribute fixes, or fork it to adapt the skill for your specific setup. 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/mapping-skill/ for personal use (all projects), or .claude/skills/mapping-skill/ for project-specific use. Restart your AI client, then invoke with /mapping-skill or let the AI discover it automatically.
Crawling papers and talent access workflow supports Claude, Cursor, OpenClaw. It integrates seamlessly with these AI platforms to extend their capabilities.
Crawling papers and talent access workflow is free to install. Check the repository for licensing information.
AI/ML talent search, paper author discovery, lab member crawling, GitHub researcher mining and personalized recruitment email generation skills. As long as the user mentions looking for AI/ML PhDs, researchers, and engineers, grab lab members, OpenReview/CVF conference authors, GitHub network researchers, extract homepage/Scholar/GitHub/email/research direction, identify Chinese, analyze...
Select your agent
Option 1: Install via CLI (recommended)
Recommended (no pre-install needed)
npx clawhub@latest --dir ~/.claude/skills install mapping-skillOr via clawhub CLI (if already installed)
clawhub --dir ~/.claude/skills install mapping-skillβ 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/mapping-skill/π‘Extract and place the folder at the path above, then restart your agent.
Lists the top use cases for Crawling papers and talent access workflow, with example commands for each scenario
Automate my developer & devops tasks using Crawling papers and talent access workflow
Identifies repetitive steps in your workflow and sets up Crawling papers and talent access workflow to handle them automatically
Crawling papers and talent access workflow is categorized under Developer & DevOps. These skills help AI agents perform specialized tasks in this domain.