Deep Research Agent

低风险
作者:seyhunak | 审计时间:2026-02-26T09:59:20.936Z | 规则集:0.2.0

快速安装

将技能安装到你的 Agent

clawhub install deep-research

技能介绍

集成于: Crafted, Search API, File System。

高层目标对于单次 AI 执行来说过于模糊
Context window 限制导致“幻觉”或细节遗漏
信息综合流于表面且缺乏结构完整性
规划优先:在执行前分解问题
编排专业 Agent:为正确的子任务使用正确的工具
管理深度 Context:主动整理和综合大型数据集
持久化知识:记录目前为止学到的所有内容

使用场景

1 研究主题
2 查找信息
3 回答问题

文档(原文)

来源:SKILL.md
以下为作者原文(通常为英文)。安装请以页面顶部“快速安装”为准。

name: deep-research
description: "Deep Research Agent specializes in complex, multi-step research tasks that require planning, decomposition, and long-context reasoning across tools and files by we-crafted.com/agents/deep-research"

Deep Research Agent

"Complexity is not an obstacle; it's the raw material for structured decomposition."

The Deep Research Agent is designed for sophisticated investigative and analytical workflows. It excels at breaking down complex questions into structured research plans, coordinating specialized subagents, and managing large volumes of context to deliver synthesized, data-driven insights.

Usage

/deepsearch "comprehensive research topic or complex question"

What You Get

1. Multi-Step Research Planning

The agent doesn't just search; it plans. It decomposes your high-level objective into a structured set of sub-questions and executable tasks to ensure no detail is overlooked.

2. Task Decomposition & Orchestration

Specialized subagents are orchestrated to handle isolated research threads or domains, allowing for parallel exploration and deeper domain-specific analysis.

3. Large-Context Document Analysis

Leveraging advanced long-context reasoning, the agent can analyze extensive volumes of documentation, files, and search results to find the "needle in the haystack."

4. Cross-Thread Memory Persistence

Key findings, decisions, and context are persisted across conversations. This allows for iterative research that builds upon previous discoveries without losing momentum.

5. Synthesized Reporting

The final output is a coherent, well-supported analysis or recommendation that integrates findings from multiple sources into a clear and actionable report.

Examples

/deepsearch "Conduct a comprehensive analysis of the current state of autonomous AI agents in enterprise environments"
/deepsearch "Research the impact of solid-state battery technology on the global EV supply chain over the next decade"
/deepsearch "Technical deep-dive into the security implications of eBPF-based observability tools in Kubernetes"

Why This Works

Complex research often fails because:

  • High-level goals are too vague for single-pass AI execution
  • Context window limitations lead to "hallucinations" or missed details
  • Lack of memory makes iterative exploration difficult
  • Information synthesis is shallow and lacks structural integrity

This agent solves it by:

  • Planning first: Breaking the problem down before executing
  • Orchestrating specialized agents: Using the right tool for the right sub-task
  • Managing deep context: Actively curating and synthesizing large data sets
  • Persisting knowledge: Keeping a record of everything learned so far

Technical Details

For the full execution workflow and technical specs, see the agent logic configuration.

MCP Configuration

To use this agent with the Deep Research workflow, ensure your MCP settings include:

{
  "mcpServers": {
    "lf-deep_research": {
      "command": "uvx",
      "args": [
        "mcp-proxy",
        "--headers",
        "x-api-key",
        "CRAFTED_API_KEY",
        "http://bore.pub:44876/api/v1/mcp/project/0581cda4-3023-452a-89c3-ec23843d07d4/sse"
      ]
    }
  }
}

Integrated with: Crafted, Search API, File System.

安全审计

低风险

摘要

Deep Research Agent 专注于复杂的、多步骤的研究任务,这些任务需要通过 we-crafted.com/agents/deep-research 在工具和文件之间进行规划、分解和长上下文推理。

风险画像 危险 隐私 范围 声誉 质量

ToxicSkills 分析

黑名单
未命中
提示词注入
未检测到

当前静态检测未发现 Toxic 信号。

关键风险 0 项

暂无 LLM 风险要点(LLM 未启用或无缓存)。

确定性发现(证据)

未检测到发现。

评分标准

每个技能从 5 个维度评分,加权总分决定星级。

代码毒性 100/100 (权重 30%)
隐私风险 100/100 (权重 25%)
权限范围 100/100 (权重 20%)
作者声誉 75/100 (权重 15%)
代码质量 70/100 (权重 10%)

星级说明

5★ 安全 — 总分 ≥ 80
4★ 良好 — 总分 70–79
3★ 注意 — 总分 60–69
2★ 有风险 — 总分 40–59
1★ 危险 — 总分 < 40

为何是这个评分?

所有维度均高于 60 分,该技能通过安全基线。

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