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Research Cog

作者 CellCog · GitHub ↗ · v1.0.14 · MIT-0
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6048
总下载
7
收藏
35
当前安装
15
版本数
在 OpenClaw 中安装
/install research-cog
功能描述
AI deep research powered by CellCog. Market research, competitive analysis, investment research, academic research, due diligence, literature reviews with ci...
安全使用建议
Install this only if you trust CellCog and are comfortable sending research prompts to its service. Use a dedicated revocable API key, monitor credit usage for long-running or high-depth research modes, and avoid submitting confidential, regulated, or secret material unless CellCog's data handling terms are acceptable to you.
功能分析
Type: OpenClaw Skill Name: research-cog Version: 1.0.14 The research-cog skill bundle consists of metadata and documentation (SKILL.md) for an AI research assistant powered by the 'cellcog' library. The documentation provides legitimate usage examples, configuration requirements (CELLCOG_API_KEY), and research categories such as market analysis and academic reviews. No executable code or malicious instructions were found; the content is entirely focused on guiding the AI agent to perform its stated research functions.
能力评估
Purpose & Capability
The stated purpose is deep research, market analysis, investment research, academic review, and due diligence; the documented CellCog SDK calls and research modes fit that purpose.
Instruction Scope
Instructions are user-directed examples, but they encourage remote CellCog research modes, including asynchronous fire-and-forget use and high-credit modes, so users should choose scope deliberately.
Install Mechanism
The bundle contains only SKILL.md, but it declares a dependency on the external cellcog package and refers users to the separate CellCog setup path.
Credentials
Requiring python3 and CELLCOG_API_KEY is proportionate for a CellCog-backed research integration, but the API key may authorize account usage and credits.
Persistence & Privilege
No local persistence, privilege escalation, file mutation, or background worker is present in the artifact; the only persistence-like behavior is the disclosed remote asynchronous research task pattern.
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-cog
  3. 安装完成后,直接呼叫该 Skill 的名称或使用 /research-cog 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
v1.0.14
- Added explicit requirements for Python 3 and the CELLCOG_API_KEY environment variable in SKILL metadata. - No code or logic changes; documentation/metadata update only.
v1.0.13
- Expanded description to highlight support for financial analysis, crypto research, and news intelligence. - Clarified agent usage instructions: separated examples for OpenClaw and other agents. - Minor documentation improvements for accuracy and clarity.
v1.0.12
- Documentation updated for clarity and completeness, especially on usage instructions and integrations. - Installation and example usage for Cursor and other agents improved, including code imports. - Skill description refined for conciseness and accuracy. - Minor formatting and organizational enhancements throughout the documentation.
v1.0.11
**This update improves clarity, usage instructions, and research focus.** - Simplified and clarified skill description and instructions for faster onboarding. - Separated and streamlined SDK usage examples for OpenClaw and other agents. - Moved detailed SDK and setup references to the start, making first steps clearer. - Improved examples and tips for specifying research prompts and output formats. - Reduced redundancy and removed extraneous information for easier reading. - Retained all use case, feature, and prompt examples while making them more accessible.
v1.0.10
- Major documentation update with detailed research use cases and example prompts. - Added sections covering competitive analysis, market research, investment analysis, academic research, and due diligence examples. - Explained output formats (interactive HTML, PDF, markdown, plain text) with recommendations. - Expanded guidance on chat modes: agent, agent team, and agent team max. - Provided advanced tips for citation handling, structuring analysis, and improving research quality. - Included leaderboard recognition: #1 on DeepResearch Bench (Apr 2026).
v1.0.9
Version 1.0.9 - Major rewrite of documentation for clarity and brevity - Expanded description to highlight more research and output types - Added clear lists of supported research areas and output formats - Presented core multi-source and citation features more prominently - Clarified citation policy and chat mode usage - Added references to related skills for finance, crypto, data, and news analysis
v1.0.8
- Added OpenClaw agent usage instructions and example to the SDK setup section. - Clarified differences between "OpenClaw agents" (fire-and-forget) and other agent invocation methods. - Updated SDK example code blocks for more precise usage guidance. - Minor editorial updates and formatting for improved clarity.
v1.0.7
- Updated the Quick Pattern section to a simplified "Quick start" example, providing a basic usage pattern. - Added clear guidance to refer to the `cellcog` skill for full SDK/API details, including delivery modes and advanced usage. - Removed detailed asynchronous usage instructions to streamline documentation and avoid redundancy with the main CellCog skill. - Clarified separation of research-cog capabilities from the core SDK/API setup.
v1.0.6
- Updated DeepResearch Bench achievement date to April 2026 in all mentions. - No functional or instructional changes; documentation remains consistent except for the updated benchmark recognition.
v1.0.5
- Refined the skill description for clarity and added additional use cases and output formats. - Added a homepage link and specified supported operating systems in metadata. - Updated the description to emphasize multi-source synthesis and broader research capabilities (including due diligence and literature reviews). - No behavioral or functional changes to the skill code; documentation update only.
v1.0.4
Expanded guidance on research chat modes - Added a detailed table describing when to use `"agent"`, `"agent team"`, and the new `"agent team max"` chat modes for different research scenarios. - Provided recommendations for scenarios requiring the highest accuracy, such as high-stakes due diligence or cutting-edge academic research. - Clarified that `"agent team"` remains the default for most research, but `"agent team max"` is available for institutional-grade analysis (requires ≥2,000 credits). - No code or interface changes—documentation update only.
v1.0.3
- Added author information and explicit dependency listing for `cellcog` in the skill metadata. - Minor improvements to the prerequisites section, clarifying that `cellcog` is required for SDK setup. - No functionality changes; documentation and metadata only.
v1.0.2
- Added "#1 on DeepResearch Bench (Feb 2026)" accolade to the description and introduction. - Included leaderboard link for transparency: https://huggingface.co/spaces/muset-ai/DeepResearch-Bench-Leaderboard. - No functionality or API changes; documentation update highlighting recent research benchmark performance.
v1.0.1
- Added OpenClaw metadata with an emoji identifier. - Updated SDK usage instructions for v1.0+, introducing a new fire-and-forget research pattern with notification-based completion (no polling required). - Clarified that citations are not provided automatically and must be explicitly requested in the prompt, detailing how to format/position them. - Improved documentation for data accuracy, output formats, and example prompts. - Minor simplifications to setup instructions and SDK references.
v1.0.0
- Initial release of the research-cog skill: your AI-powered research analyst for market research, competitive analysis, stock analysis, investment research, and academic research, all with citations. - Supports deep, citation-backed research on companies, markets, investments, technology, and more. - Offers multiple structured output formats including interactive HTML reports, PDFs, markdown, and plain responses. - Requires the CellCog mothership skill; follows the agent team mode for comprehensive multi-source research and citations. - Includes examples, best practices, and tips for crafting effective research queries.
元数据
Slug research-cog
版本 1.0.14
许可证 MIT-0
累计安装 228
当前安装数 35
历史版本数 15
常见问题

Research Cog 是什么?

AI deep research powered by CellCog. Market research, competitive analysis, investment research, academic research, due diligence, literature reviews with ci... 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 6048 次。

如何安装 Research Cog?

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

Research Cog 是免费的吗?

是的,Research Cog 完全免费,采用 MIT-0 许可证,可自由下载、安装和使用。

Research Cog 支持哪些平台?

Research Cog 跨平台运行,可在任意部署了 OpenClaw / Claude Code 的环境中使用(darwin, linux, windows)。

谁开发了 Research Cog?

由 CellCog(@nitishgargiitd)开发并维护,当前版本 v1.0.14。

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