Alterlab Deep Research
技能 活跃Part of the AlterLab Academic Skills suite for faculty and researchers. Universal deep research agent team. 13-agent pipeline for rigorous academic research on any topic. 7 modes: full research, quick brief, paper review, lit-review, fact-check, Socratic guided research dialogue, and systematic review with optional meta-analysis. Covers research question formulation, Socratic mentoring, methodology design, systematic literature search, source verification, cross-source synthesis, risk of bias assessment, meta-analysis, APA 7.0 report compilation, editorial review, devil's advocate challenges, ethics review, and post-research literature monitoring. Triggers on: research, deep research, literature review, systematic review, meta-analysis, PRISMA, evidence synthesis, fact-check, guide my research, help me think through, 研究, 深度研究, 文獻回顧, 文獻探討, 系統性回顧, 後設分析, 事實查核, 引導我的研究, 幫我釐清, 幫我想想, 我不確定要研究什麼, 研究方向, 研究主題.
To provide faculty and researchers with a powerful, multi-agent AI team capable of conducting comprehensive academic research across diverse methodologies and topics.
功能
- 13 specialized agents for academic research workflows
- 7 distinct research modes (full, quick, review, lit-review, fact-check, Socratic, systematic review)
- Handles systematic reviews with optional meta-analysis (PRISMA compliant)
- Offers Socratic guided research dialogue for clarifying research questions
- Supports literature monitoring and handoff to paper writing skills
使用场景
- Conducting a complete research project from question formulation to report
- Getting guided assistance for developing research questions and methodology
- Performing systematic literature reviews and meta-analyses
- Quickly obtaining a research brief on a topic under time constraints
- Getting professional review feedback on a completed research paper
非目标
- Replacing human researchers or advisors
- Performing primary data collection or laboratory experiments
- Providing definitive answers without supporting evidence or analysis
Trust
- warning:Issues Attention2 issues were opened and 0 closed in the last 90 days, indicating slow maintainer engagement with reported problems.
安装
npx skills add AlterLab-IEU/AlterLab-Academic-Skills通过 npx 运行 Vercel skills CLI(skills.sh)— 需要本地安装 Node.js,以及至少一个兼容 skills 的智能体(Claude Code、Cursor、Codex 等)。前提是仓库遵循 agentskills.io 格式。
质量评分
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