Automates complex, multi-agent research tasks by orchestrating parallel search threads and synthesizing findings into comprehensive reports.
Deep Research is an autonomous multi-agent skill designed for Claude Code that handles intensive inquiries requiring multi-source analysis. It operates through a structured three-phase architecture: a planning phase with a query analyzer, an execution phase using parallel research sub-agents, and a synthesis phase that compiles findings into actionable briefs or detailed reports. By persisting intermediate data in local files and utilizing high-quality sources like Exa and YouTube transcripts, it delivers high-fidelity research while minimizing context window usage.
Key Features
01Multi-agent parallel execution for rapid, multi-threaded information gathering
02File-based findings storage to optimize token context and persistence
03Intelligent source selection across technical docs, web search, and video transcripts
04Structured three-phase workflow: Planning, Parallel Research, and Synthesis
05Automated synthesis into either concise 300-word briefs or detailed 1500-word reports
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Use Cases
01Comprehensive market analysis and domain knowledge gathering
02Deep technical research into architectural patterns or library comparisons
03Complex learning and synthesis of information from disparate web sources