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Research Automation

作者 biohackerrrrrr · GitHub ↗ · v1.0.0
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在 OpenClaw 中安装
/install research-automation
功能描述
Automated web research for peptides, biohacking protocols, longevity science, and trending health topics. Use when you need to discover new information, trac...
使用说明 (SKILL.md)

Research Automation

Automated research system that searches the web for new developments in peptides, biohacking, longevity, and trending health topics.

What It Does

  • Web Search: Queries multiple sources for latest research, protocols, and trends
  • Content Curation: Filters and organizes findings by topic
  • Insight Generation: Extracts actionable insights and content angles
  • Auto-Save: Stores research in structured markdown files for easy access

Topics Covered

  1. Peptides: New peptides, clinical studies, protocols, dosing updates
  2. Biohacking Protocols: Emerging techniques, stack combinations, optimization methods
  3. Longevity Science: Aging research, interventions, biomarkers, clinical trials
  4. Trending Topics: Viral health content, controversial topics, zeitgeist shifts
  5. Performance Optimization: Founder health, cognitive enhancement, metabolic optimization

Usage

On-Demand Research

Run a targeted research query:

Run research on [topic] - focus on [specific angle]

Example:

Run research on GLP-1 peptides - focus on recent clinical trials and dosing protocols

Scheduled Research (Heartbeat)

The skill runs automatically via heartbeat rotation, cycling through research topics:

  • Peptides (weekly)
  • Biohacking protocols (twice weekly)
  • Longevity updates (weekly)
  • Trending topics (daily)

Output Format

Research is saved to research/[topic]/[date].md:

# [Topic] Research - [Date]

## Key Findings

1. **[Finding Title]**
   - Source: [URL]
   - Key Insight: [1-2 sentence summary]
   - Actionable: [What you can do with this]
   - Content Angle: [How to turn this into content]

2. **[Next Finding]**
   ...

## Trending Discussions

- [Topic]: [Summary of discourse]
- [Topic]: [Summary of discourse]

## Content Ideas Generated

1. [Tweet/thread angle]
2. [LinkedIn post angle]
3. [Article angle]

## Sources Reviewed

- [Source 1]
- [Source 2]
...

Search Strategy

For each research run:

  1. Query Construction: Build 3-5 targeted search queries
  2. Source Diversity: Mix academic, clinical, and practical sources
  3. Recency Filter: Prioritize last 30 days (configurable)
  4. Signal Extraction: Identify novel information vs. repetition
  5. Content Angle Generation: Translate findings into tweet/post ideas

Integration with Content Creation

Research outputs feed directly into:

  • content/biohacker-angles-[date].md (Twitter content)
  • content/tokuflow-angles-[date].md (Nattokinase angles)
  • notes/research-insights/ (Long-form reference)

Search Queries by Topic

Peptides

  • "new peptides 2026"
  • "GLP-1 peptides clinical trials"
  • "peptide protocols biohacking"
  • "BPC-157 latest research"
  • "thymosin beta-4 studies"

Biohacking

  • "biohacking protocols 2026"
  • "founder health optimization"
  • "cognitive enhancement stack"
  • "metabolic optimization techniques"
  • "bloodwork optimization protocols"

Longevity

  • "aging research 2026"
  • "longevity interventions clinical trials"
  • "senolytics latest studies"
  • "rapamycin longevity research"
  • "NAD+ aging protocols"

Trending

  • "health twitter trending"
  • "biohacking controversy"
  • "peptide discussion twitter"
  • "longevity debate 2026"

Filtering Criteria

Include:

  • Novel findings (not widely covered)
  • Clinical/scientific backing
  • Actionable protocols
  • Controversial/debate-worthy topics
  • Counter-narrative insights

Exclude:

  • Generic wellness advice
  • Repeated information
  • Non-peer-reviewed claims without strong reasoning
  • Pure speculation without mechanism

Best Practices

  1. Run research before content creation sprints - Fresh angles generate better ideas
  2. Review weekly summaries - Track emerging patterns and shifts
  3. Cross-reference findings - Connect dots between topics (e.g., peptides + longevity)
  4. Archive high-value findings - Move breakthrough research to notes/research-insights/

Manual Research Workflow

When you need deep research on a specific topic:

  1. Specify the topic and angle:

    Research [topic] with focus on [specific angle] - find clinical backing and protocols
    
  2. Review the output:

    • Check research/[topic]/[date].md
    • Assess signal vs. noise
    • Request refinement if needed
  3. Generate content:

    Turn the [specific finding] into 5 tweet angles
    

Heartbeat Integration

To enable scheduled research, add to HEARTBEAT.md:

### 8. Research Automation - Peptides (Priority: Medium)
- Run research-automation skill for peptides
- Focus: New compounds, clinical studies, protocols
- Save to `research/peptides/[date].md`
- Frequency: Once per week

### 9. Research Automation - Trending (Priority: High)
- Run research-automation skill for trending topics
- Focus: Viral health content, debates, controversies
- Save to `research/trending/[date].md`
- Frequency: Daily

Output Locations

workspace/
├── research/
│   ├── peptides/
│   │   └── 2026-02-05.md
│   ├── biohacking/
│   │   └── 2026-02-05.md
│   ├── longevity/
│   │   └── 2026-02-05.md
│   └── trending/
│       └── 2026-02-05.md
└── notes/
    └── research-insights/
        └── breakthrough-findings.md

Tips for Maximizing Value

  • Run daily for trending topics - Capture zeitgeist shifts early
  • Run weekly for scientific topics - Avoid overwhelming with noise
  • Review findings during content planning - Best source of fresh angles
  • Cross-pollinate topics - Peptides + longevity = unique positioning
  • Archive breakthroughs - High-value findings go to permanent notes

Created: 2026-02-05
Last Updated: 2026-02-05

安全使用建议
This skill is internally consistent with its stated purpose, but it explicitly targets 'actionable protocols' and 'dosing' for peptides and biohacking — content that can be sensitive, regulated, or dangerous. Before installing or enabling scheduled runs: (1) decide whether you want automated collection of potentially hazardous biomedical protocols; (2) require a human review step before any content is used or published; (3) limit heartbeat frequency (or disable scheduled runs) while you evaluate outputs; (4) add filters or modify the SKILL.md to exclude step-by-step lab protocols or dosing instructions if you do not want them archived; and (5) ensure storage of outputs in a location you control and audit (the skill writes to workspace/research/... by default). If you need stronger assurances, ask the skill author for explicit safety/human-review safeguards and provenance tracing for sources.
功能分析
Type: OpenClaw Skill Name: research-automation Version: 1.0.0 The research-automation skill bundle consists of markdown instructions (SKILL.md) directing an AI agent to perform web research on health and longevity topics. It defines structured search queries, output formats, and integration with a heartbeat scheduling system without any executable code, data exfiltration attempts, or malicious prompt injections.
能力评估
Purpose & Capability
Name/description align with the SKILL.md: it describes web searching, curation, insight generation, and saving results. No unrelated binaries, env vars, or installs are requested.
Instruction Scope
Instructions are explicit about constructing queries, scraping diverse sources, prioritizing recent results, and auto-saving markdown files under workspace/research and content paths. This stays within the described research purpose, but the skill explicitly seeks 'actionable protocols' and 'dosing' information — which is a higher-risk category (bio/medical actionable content). The SKILL.md does not include any safety gating or human-review requirement before archiving/distributing such content.
Install Mechanism
Instruction-only skill with no install spec and no code files — minimal installation risk and nothing is written to disk by an installer. Risk comes from runtime actions (web queries and file writes) rather than installs.
Credentials
No environment variables, credentials, or config paths are requested. The declared requirements are proportionate to a research-only skill.
Persistence & Privilege
always is false (normal), and the skill can be invoked on-demand or via heartbeat as documented. It writes to workspace paths it defines for its own outputs; it does not request modification of other skills or system-wide configs.
如何使用
  1. 确保已安装 OpenClaw(本地或 Docker 部署)
  2. 在对话框中输入安装命令:/install research-automation
  3. 安装完成后,直接呼叫该 Skill 的名称或使用 /research-automation 触发
  4. 根据 Skill 的参数说明提供必要输入,即可获得结构化输出
版本历史
v1.0.0
- Initial release of the research-automation skill. - Automates web research for peptides, biohacking protocols, longevity science, and trending health topics. - Features scheduled (heartbeat) and on-demand research, pulling from diverse, recent sources. - Curates findings, extracts actionable insights, and generates content ideas, saving outputs in structured markdown files. - Designed for easy integration with content creation workflows and knowledge archiving.
元数据
Slug research-automation
版本 1.0.0
许可证
累计安装 2
当前安装数 2
历史版本数 1
常见问题

Research Automation 是什么?

Automated web research for peptides, biohacking protocols, longevity science, and trending health topics. Use when you need to discover new information, trac... 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 447 次。

如何安装 Research Automation?

在 OpenClaw 或 Claude Code 对话框中运行命令「/install research-automation」即可一键安装,无需额外配置。

Research Automation 是免费的吗?

是的,Research Automation 完全免费(开源免费),可自由下载、安装和使用。

Research Automation 支持哪些平台?

Research Automation 跨平台运行,可在任意部署了 OpenClaw / Claude Code 的环境中使用(cross-platform)。

谁开发了 Research Automation?

由 biohackerrrrrr(@biohackerrrrrr)开发并维护,当前版本 v1.0.0。

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