HTTP Request node
Code node

AI-Powered Research with Jina AI Deep Search

Published 18 days ago

Created by

leonardvanhemert
Leonard

Categories

Template description

Unlock AI-Driven Research with Jina AI (No API Key Needed!)

Following the success of Open Deep Research 1.0, we are excited to introduce an improved and fully free version: AI-Powered Research with Jina AI Deep Search.

This workflow leverages Jina AI’s Deep Search API, a free and powerful AI research tool that requires no API key. It automates querying, analyzing, and formatting research reports, making AI-driven research accessible to everyone.


Key Features

  • No API Keys Required - Start researching instantly without setup hassle.
  • Automated Deep Search - Uses Jina AI to fetch relevant and high-quality information.
  • Structured AI Reports - Generates clear, well-formatted research documents in markdown.
  • Flexible and Customizable - Modify the workflow to fit your specific research needs.
  • Ideal for Researchers, Writers & Students - Speed up your research workflow.

Use Cases

This workflow is particularly useful for:

  • Researchers - Quickly gather and summarize academic papers, online sources, and deep web content.
  • Writers & Journalists - Automate background research for articles, essays, and investigative reports.
  • Students & Educators - Generate structured reports for assignments, literature reviews, or presentations.
  • Content Creators - Find reliable sources for blog posts, videos, or social media content.
  • Data Analysts - Retrieve contextual insights from various online sources for reports and analysis.

How It Works

  1. The user submits a research query via chat.
  2. The workflow sends the query to Jina AI’s Deep Search API.
  3. The AI processes and generates a well-structured research report.
  4. A code node formats the response into clean markdown.
  5. The final output is a structured, easy-to-read AI-generated report.

Pre-Conditions & Requirements

  • An n8n instance (self-hosted or cloud).
  • No API keys needed – Jina AI Deep Search is completely free.
  • Basic knowledge of n8n workflow automation is recommended for customization.

Customization Options

This workflow is fully modular, allowing users to:

  • Modify the query prompt to refine the research focus.
  • Adjust the report formatting to match personal or professional needs.
  • Expand the workflow by adding additional AI tools or data sources.
  • Integrate it with other workflows in n8n to enhance automation.

Users are free to connect it with other workflows, add custom nodes, or tweak existing configurations.


Getting Started

Setup Time: Less than 5 minutes

  1. Import the workflow into n8n.
  2. Run the workflow and input a research topic.
  3. Receive a fully formatted AI-generated research report.

Try It Now!

Start your AI-powered research with Jina AI Deep Search today!
Get the workflow on n8n.io

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