Agent skill

web-research-workflow

Unified decision tree for web research and competitive monitoring. Auto-selects WebFetch, Tavily, or agent-browser based on target site characteristics and available API keys. Includes competitor page tracking, snapshot diffing, and change alerting. Use when researching web content, scraping, extracting raw markdown, capturing documentation, or monitoring competitor changes.

Stars 143
Forks 15

Install this agent skill to your Project

npx add-skill https://github.com/yonatangross/orchestkit/tree/main/src/skills/web-research-workflow

Metadata

Additional technical details for this skill

category
mcp-enhancement

SKILL.md

Web Research Workflow

Unified approach for web content research that automatically selects the right tool for each situation.

Quick Decision Tree

URL to research
     │
     ▼
┌─────────────────┐
│ 1. Try WebFetch │ ← Fast, free, no overhead
│    (always try) │
└─────────────────┘
     │
Content OK? ──Yes──► Parse and return
     │
     No (empty/partial/<500 chars)
     │
     ▼
┌───────────────────────┐
│ 2. TAVILY_API_KEY set?│
└───────────────────────┘
     │          │
    Yes         No ──► Skip to step 3
     │
     ▼
┌───────────────────────────┐
│ Tavily search/extract/    │ ← Raw markdown, batch URLs
│ crawl/research            │
└───────────────────────────┘
     │
Content OK? ──Yes──► Parse and return
     │
     No (JS-rendered/auth-required)
     │
     ▼
┌─────────────────────┐
│ 3. Use agent-browser │ ← Full browser, last resort
└─────────────────────┘
     │
├─ SPA (react/vue/angular) ──► wait --load networkidle
├─ Login required ──► auth flow + state save
├─ Dynamic content ──► wait --text "Expected"
└─ Multi-page ──► crawl pattern

Tavily Enhanced Research

When TAVILY_API_KEY is set, Tavily provides a powerful middle tier between WebFetch and agent-browser. It returns raw markdown content, supports batch URL extraction, and offers semantic search with relevance scoring. If TAVILY_API_KEY is not set, the 3-tier tree collapses to 2-tier (WebFetch → agent-browser) automatically.

Load details: Read("${CLAUDE_SKILL_DIR}/rules/tool-selection.md") for when-to-use-what tables, escalation heuristics, SPA detection patterns, and cost awareness.

Load details: Read("${CLAUDE_SKILL_DIR}/references/tavily-api.md") for Search, Extract, Map, Crawl, and Research endpoint examples and options.

Browser Patterns

For content requiring JavaScript rendering, authentication, or multi-page crawling, fall back to agent-browser.

Load details: Read("${CLAUDE_SKILL_DIR}/rules/browser-patterns.md") for auto-fallback, authentication flow, multi-page research patterns, best practices, and troubleshooting.

Competitive Monitoring

Track competitor websites for changes in pricing, features, positioning, and content.

Load details: Read("${CLAUDE_SKILL_DIR}/rules/monitoring-competitor.md") for snapshot capture, structured data extraction, and change classification.

Load details: Read("${CLAUDE_SKILL_DIR}/rules/monitoring-change-detection.md") for diff detection, structured comparison, Tavily site discovery, and CI automation.

Change Classification

Severity Examples Action
Critical Price increase/decrease, major feature change Immediate alert
High New feature added, feature removed Review required
Medium Copy changes, positioning shift Note for analysis
Low Typos, minor styling Log only

Integration with Agents

This skill is used by:

  • web-research-analyst - Primary user
  • market-intelligence - Competitor research
  • product-strategist - Deep competitive analysis

Related Skills

  • browser-content-capture - Detailed browser patterns
  • agent-browser - CLI reference

Version: 1.3.0 (March 2026)

Expand your agent's capabilities with these related and highly-rated skills.

yonatangross/orchestkit

expect

Diff-aware AI browser testing — analyzes git changes, generates targeted test plans, and executes them via agent-browser. Reads git diff to determine what changed, maps changes to affected pages via route map, generates a test plan scoped to the diff, and runs it with pass/fail reporting. Use when testing UI changes, verifying PRs before merge, running regression checks on changed components, or validating that recent code changes don't break the user-facing experience.

143 15
Explore
yonatangross/orchestkit

github-operations

GitHub CLI operations for issues, PRs, milestones, and Projects v2. Covers gh commands, REST API patterns, and automation scripts. Use when managing GitHub issues, PRs, milestones, or Projects with gh.

143 15
Explore
yonatangross/orchestkit

chain-patterns

Chain patterns for CC 2.1.71 pipelines — MCP detection, handoff files, checkpoint-resume, worktree agents, CronCreate monitoring. Use when building multi-phase pipeline skills. Loaded via skills: field by pipeline skills (fix-issue, implement, brainstorm, verify). Not user-invocable.

143 15
Explore
yonatangross/orchestkit

storybook-mcp-integration

Storybook MCP server integration for component-aware AI development. Covers 6 tools across 3 toolsets (dev, docs, testing): component discovery via list-all-documentation/get-documentation, story previews via preview-stories, and automated testing via run-story-tests. Use when generating components that should reuse existing Storybook components, running component tests via MCP, or previewing stories in chat.

143 15
Explore
yonatangross/orchestkit

component-search

Search 21st.dev component registry for production-ready React components. Finds components by natural language description, filters by framework and style system, returns ranked results with install instructions. Use when looking for UI components, finding alternatives to existing components, or sourcing design system building blocks.

143 15
Explore
yonatangross/orchestkit

ai-ui-generation

AI-assisted UI generation patterns for json-render, v0, Bolt, and Cursor workflows. Covers prompt engineering for component generation, review checklists for AI-generated code, design token injection, refactoring for design system conformance, and CI gates for quality assurance. Use when generating UI components with AI tools, rendering multi-surface MCP visual output, reviewing AI-generated code, or integrating AI output into design systems.

143 15
Explore

Didn't find tool you were looking for?

Be as detailed as possible for better results