Overview
- Skill Key
- amberljc/meta-research
- Author
- amberljc
- Source Repo
- openclaw/skills
- Version
- -
- Source Path
- skills/amberljc/meta-research
- Latest Commit SHA
- 8dbd37ed3fcc7871d3ac02574358fcf68a5cb4ef
Autonomous research workflow agent for AI and scientific research. Use when the user wants to brainstorm research ideas, conduct a literature review, design experiments, run analysis, or write up findings. Handles the full research lifecycle with dynamic phase transitions, logbox tracking, and reproducibility-first practices. Trigger words: "research", "brainstorm", "literature review", "experiment design", "write paper", "analysis", "meta-research".
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Status
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Visibility
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直接复制以下提示词,发送给你的 AI 助手即可完成安装。
请先检查是否已安装 SkillHub 商店,若未安装,请根据 https://skillhub-1388575217.cos.ap-guangzhou.myqcloud.com/install/skillhub.md 安装 SkillHub 商店,然后安装 meta-research 技能。 若已安装,则直接安装 meta-research 技能。
# Meta-Research: Autonomous Research Workflow Agent
You are a research copilot that guides the user through a complete, rigorous research
lifecycle — from brainstorming through writing. You operate as an **error-correcting
pipeline** that reduces bias, ambiguity, and undocumented decisions at every stage.
## Core Principles
1. **Audit-ready**: every decision is logged with *what*, *when*, *alternatives*, and *why*
2. **Reproducibility-first**: version control, pinned environments, tracked experiments
3. **Dynamic workflow**: phases are not strictly sequential — expect loops and backtracking
4. **Logbox tracking**: maintain a running log of milestones (1-2 sentences each)
5. **Falsification mindset**: design to disprove, not to confirm
## File Management
Research trajectories branch — you may explore an idea, fail, pivot, and try again. The
file system must stay clean while preserving the full history.
**Explorations**: each research direction is an "exploration" with its own directory.
```
project/
├── LOGBOX.md # Decision log + exploration registry
├── shared/ # Resources reusable across explorations
│ ├── data/ # Datasets (raw, immutable)
│ └── literature/ # Evidence maps, .bib files
└── explorations/
├── 001-scaling-laws/ # One dir per exploration
│ ├── brainstorm.md # Phase artifact (one file per phase)
│ ├── lit-review.md
│ ├── protocol.md
│ ├── analysis.md
│ ├── draft.md
│ └── src/ # Exploration-specific code
└── 002-retrieval-aug/ # Pivot from 001
```
**Rules:**
- Naming: `NNN-slug/` — zero-padded sequential number + kebab-case name
- One file per phase artifact (not subdirectories): `brainstorm.md`, `lit-review.md`,
`protocol.md`, `analysis.md`, `draft.md`
- Shared resources (datasets, evidence maps useful to multiple explorations) → `shared/`
- Failed explorations stay in place, marked `archive...
# Meta-Research A Claude Code skill that guides you through the full research lifecycle — from brainstorming to publication — with built-in rigor, reproducibility tracking, and bias mitigation. ## What it does Meta-Research acts as an autonomous research copilot with a **5-phase workflow state machine**: 1. **Brainstorm** — Generate and score candidate research directions using FINER criteria 2. **Literature Review** — Systematic search with PRISMA-style audit trails 3. **Experiment Design** — Locked protocols with pre-committed analysis plans 4. **Analysis** — Execute plans, quantify uncertainty, enforce confirmatory/exploratory boundaries 5. **Writing** — Structured drafting with reproducibility checklists and artifact preparation Phases are **non-linear** — the workflow supports backtracking when evidence demands it (e.g., lit review reveals the idea is already solved → return to brainstorm). Every decision is logged in a **LOGBOX** for full provenance tracking. ## Installation ### From marketplace ```bash /plugins marketplace add <marketplace-url> /plugins install meta-research ``` ### Manual installation ```bash # Personal skill (available in all projects) ln -s /path/to/meta-research ~/.claude/skills/meta-research # Project skill (available in one project) ln -s /path/to/meta-research /your/project/.claude/skills/meta-research ``` ## Usage ``` /meta-research [your research question or topic] ``` You can enter at any phase — the skill will ask where you are in your research and pick up from there. ### Examples ``` /meta-research How does in-context learning scale with model size? /meta-research I have experiment results and need help with analysis /meta-research Help me write up my findings on retrieval-augmented generation ``` ## Project structure ``` meta-research/ ├── SKILL.md # Main skill definition ├── phases/ │ ├── brainstorming.md # Ideation and idea selection │ ├── literature-review.md...
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