ワンクリックで
gemini-deep-research
Perform complex, long-running research tasks using Gemini Deep Research Agent.
Codex または Claude でインストール この Prompt をコピーして Codex、Claude、または他のアシスタントに貼り付けると、Skill ページを確認してインストールできます。
メニュー
Perform complex, long-running research tasks using Gemini Deep Research Agent.
Codex または Claude でインストール この Prompt をコピーして Codex、Claude、または他のアシスタントに貼り付けると、Skill ページを確認してインストールできます。
SOC 職業分類に基づく
Search traceable academic papers, download legally accessible PDFs from arXiv and open-access sources, convert PDFs or page images to Markdown with a PaddleOCR layout-parsing API (or local pdfminer fallback), and organize the results into an AI-readable literature library. Use when Claude Code needs to build a paper corpus, batch OCR PDFs to Markdown, ingest real literature into a knowledge base, fetch arXiv or Hugging Face paper leads, or turn a directory of papers into structured Markdown plus metadata.
Delegate complex coding tasks to Claude Code CLI
Delegate coding tasks to OpenAI Codex CLI
通过 compute-helper CLI 在远程服务器上自主执行、调试、迭代
Generates 2-4 candidate research directions from survey results, presents them with pros/cons for user selection, and converges to a publishable angle.
Academic research assistant for literature reviews, paper analysis, and scholarly writing.
| id | gemini-deep-research |
| name | gemini-deep-research |
| version | 1.0.0 |
| description | Perform complex, long-running research tasks using Gemini Deep Research Agent. |
| stages | ["survey"] |
| tools | ["read_file","search_project","write_file","run_terminal"] |
| summary | Perform complex, long-running research tasks using Gemini Deep Research Agent. Use when: asked to research topics requiring multi-source synthesis, competitive analysis, market research, literature review, or comprehensive technical invest... |
| primaryIntent | research |
| intents | ["research"] |
| capabilities | ["search-retrieval","agent-workflow"] |
| domains | ["general"] |
| keywords | ["gemini-deep-research","survey","search-retrieval","agent-workflow","gemini","deep","research","perform","complex","long","running","tasks"] |
| source | builtin |
| status | verified |
| upstream | {"repo":"dr-claw","path":"skills/gemini-deep-research","revision":"8322dc4ef575affaa374aa7922c0a0971c6db7d7"} |
| resourceFlags | {"hasReferences":false,"hasScripts":true,"hasTemplates":false,"hasAssets":false,"referenceCount":0,"scriptCount":1,"templateCount":0,"assetCount":0,"optionalScripts":true} |
Perform complex, long-running research tasks using Gemini Deep Research Agent. Use when: asked to research topics requiring multi-source synthesis, competitive analysis, market research, literature review, or comprehensive technical invest...
Use this skill when the user request matches its research workflow scope. Prefer the bundled resources instead of recreating templates or reference material. Keep outputs traceable to project files, citations, scripts, or upstream evidence.
scripts/ as optional helpers. Run them only when their dependencies are available, keep outputs in the project workspace, and explain a manual fallback if execution is blocked.Use Google Gemini's Deep Research Agent to perform complex, long-running context gathering and synthesis tasks. The agent autonomously breaks down your query, searches the web, and synthesizes findings into a comprehensive report.
GEMINI_API_KEY environment variable (obtain from Google AI Studio)requests libraryThe Deep Research agent:
scripts/deep_research.py --query "Research the current state of quantum error correction" --stream
scripts/deep_research.py --query "Competitive landscape of EV batteries" \
--format "1. Executive Summary\n2. Key Players (data table)\n3. Technology Comparison\n4. Supply Chain Risks"
scripts/deep_research.py --query "Compare our fiscal year report against current public web news" \
--file-search-store "fileSearchStores/my-store-name"
scripts/deep_research.py --query "Your research topic" --output-dir ./reports --stream
Results are saved as timestamped files in the output directory:
deep-research-YYYY-MM-DD-HH-MM-SS.md — Final report in markdowndeep-research-YYYY-MM-DD-HH-MM-SS.json — Full interaction metadataThe report is also printed to stdout for immediate use.
https://generativelanguage.googleapis.com/v1beta/interactionsdeep-research-pro-preview-12-2025x-goog-api-key header