Deep Research by OpenHelm

Created By
Max Beech9 days ago
Conduct comprehensive research projects using a virtual computer equipped with a real browser, coding tools, document creation capabilities, and more. Deep Research by Openhelm enables your agent to tackle work such as: • Market and competitor analysis • Industry and company research • Investment and acquisition due diligence • Technical and scientific investigations • Report generation with sources and evidence What makes OpenHelm the best solution for this: • Research is continuously reviewed and refined by a powerful AI to maximise accuracy and completeness • Uses a highly capable stealth browser that can access more of the web than traditional research agents • Multi-step workflows allow findings to be validated, expanded, and synthesised automatically • Generates structured outputs rather than simply returning search results For high-stakes research that requires depth, accuracy, and persistence, OpenHelm provides a secure remote environment where complex investigations can be completed autonomously.
Overview

Conduct comprehensive research projects using a virtual computer equipped with a real browser, coding tools, document creation capabilities, and more.

Deep Research by Openhelm enables your agent to tackle work such as:

  • • Market and competitor analysis
  • • Industry and company research
  • • Investment and acquisition due diligence
  • • Technical and scientific investigations
  • • Report generation with sources and evidence

What makes OpenHelm the best solution for this:

  • • Research is continuously reviewed and refined by a powerful AI to maximise accuracy and completeness
  • • Uses a highly capable stealth browser that can access more of the web than traditional research agents
  • • Multi-step workflows allow findings to be validated, expanded, and synthesised automatically
  • • Generates structured outputs rather than simply returning search results

For high-stakes research that requires depth, accuracy, and persistence, OpenHelm provides a secure remote environment where complex investigations can be completed autonomously.

Server Config

{
  "mcpServers": {
    "openhelm-deep-research": {
      "command": "npx",
      "args": [
        "-y",
        "mcp-remote",
        "https://mcp.openhelm.ai/research/mcp"
      ]
    }
  }
}
Project Info
Created At
9 days ago
Updated At
9 days ago
Author Name
Max Beech
Star
-
Language
-
License
-
Category

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