2025-11-30 22:21:36 +05:30
2025-08-05 10:25:23 -05:00
2026-02-15 02:25:02 +05:30
2025-03-04 22:37:03 +05:30
2025-05-29 20:17:57 +05:30
2024-10-31 15:25:49 +05:30
2025-11-30 17:41:44 +05:30
2025-12-11 17:10:49 +05:30
2026-01-31 17:16:40 +05:30
2025-07-13 00:08:25 +05:30
2025-10-30 01:28:59 +05:30
2024-11-01 08:28:10 +05:30
2024-11-01 08:27:40 +05:30
2024-12-03 23:52:55 +05:30


Dorod Parser
Turn Any Website Into A Structured API

вњЁ The unified open-source no-code platform for real-time web scraping, crawling, search and AI data extraction вњЁ

Go To App • Documentation • Website • Discord • Watch Tutorials

getDorod Parser%2FDorod Parser | Trendshift

What is Dorod Parser?

Dorod Parser is an open-source no-code web data platform for turning the web into structured, reliable data. It supports extraction, crawling, scraping, and search — designed to scale from simple use cases to complex, automated workflows.

Ecosystem

  1. [Extract](https://docs.Dorod Parser.dev/category/extract) – Emulate real user behavior and collect structured data from any website.

    • [Recorder Mode](https://docs.Dorod Parser.dev/robot/extract/robot-actions) - Record your actions as you browse; Dorod Parser turns them into a reusable extraction robot.
    • [AI Mode](https://docs.Dorod Parser.dev/robot/extract/llm-extraction) - Describe what you want in natural language and let LLM-powered extraction do the rest.
  2. [Scrape](https://docs.Dorod Parser.dev/robot/scrape/scrape-robots) – Convert full webpages into clean Markdown or HTML and capture screenshots.

  3. [Crawl](https://docs.Dorod Parser.dev/robot/crawl/crawl-introduction) - Crawl entire websites and extract content from every relevant page, with full control over scope and discovery.

  4. [Search](https://docs.Dorod Parser.dev/robot/search/search-introduction) - Run automated web searches to discover or scrape results, with support for time-based filters.

  5. [SDK](https://docs.Dorod Parser.dev/sdk/sdk-overview) – A complete developer toolkit for scraping, extraction, scheduling, and end-to-end data automation.

How Does It Work?

Dorod Parser robots are automated tools that help you collect data from websites without writing any code. Think of them as your personal web assistants that can navigate websites, extract information, and organize data just like you would manually - but faster and more efficiently.

There are four types of robots, each designed for a different job.

1. Extract

Extract emulates real user behavior and captures structured data.

  • Recorder Mode - Record your actions as you browse; Dorod Parser turns them into a reusable extraction robot.

Example: Extract 10 Property Listings from Airbnb

https://github.com/user-attachments/assets/recorder-mode-demo-video

  • AI Mode - Describe what you want in natural language and let LLM-powered extraction do the rest.

Example: Extract Names, Rating & Duration of Top 50 Movies from IMDb

https://github.com/user-attachments/assets/f714e860-58d6-44ed-bbcd-c9374b629384

Learn more here.

2. Scrape

Scrape converts full webpages into clean Markdown, HTML and can capture screenshots. Ideal for AI workflows, agents, and document processing.

Learn more here.

3. Crawl

Crawl entire websites and extract content from every relevant page, with full control over scope and discovery.

Learn more here.

Run automated web searches to discover or scrape results, with support for time-based filters.

Learn more here.

Quick Start

Getting Started

The simplest & fastest way to get started is to use the hosted version: https://app.Dorod Parser.dev. You can self-host if you prefer!

Installation

Dorod Parser can run locally with or without Docker

  1. [Setup with Docker Compose](https://docs.Dorod Parser.dev/installation/docker)
  2. [Setup without Docker](https://docs.Dorod Parser.dev/installation/local)
  3. [Environment Variables](https://docs.Dorod Parser.dev/installation/environment_variables)
  4. [SDK](https://github.com/getDorod Parser/node-sdk)

Upgrading & Self Hosting

  1. [Self Host Dorod Parser With Docker & Portainer](https://docs.Dorod Parser.dev/self-host)
  2. [Upgrade Dorod Parser With Docker Compose Setup](https://docs.Dorod Parser.dev/installation/upgrade#upgrading-with-docker-compose)
  3. [Upgrade Dorod Parser Without Docker Compose Setup](https://docs.Dorod Parser.dev/installation/upgrade#upgrading-with-local-setup)

Sponsors




TestMu AI

The Native AI-Agentic Cloud Platform to Supercharge Quality Engineering. Test Intelligently and Ship Faster.

Features

  • вњЁ Extract Data With No-Code – Point and click interface
  • вњЁ LLM-Powered Extraction – Describe what you want; use LLMs to scrape structured data
  • вњЁ Developer SDK – Programmatic extraction, scheduling, and robot management
  • вњЁ Handle Pagination & Scrolling – Automatic navigation
  • вњЁ Run Robots On Schedules – Set it and forget it
  • вњЁ Turn Websites to APIs – RESTful endpoints from any site
  • вњЁ Turn Websites to Spreadsheets – Direct data export to Google Sheets & Airtable
  • вњЁ Adapt To Website Layout Changes – Auto-recovery from site updates
  • вњЁ Extract Behind Login – Handle authentication seamlessly
  • вњЁ Integrations – Connect with your favorite tools
  • вњЁ MCP Support – Model Context Protocol integration
  • вњЁ LLM-Ready Data – Clean Markdown for AI applications
  • вњЁ Self-Hostable – Full control over your infrastructure
  • вњЁ Open Source – Transparent and community-driven

Demos

Dorod Parser can be used for various use-cases, including lead generation, market research, content aggregation and more. View demos here: https://www.Dorod Parser.dev/usecases

Note

This project is in early stages of development. Your feedback is very important for us - we're actively working on improvements.

License

This project is licensed under AGPLv3.

Project Values

We believe in fair and responsible use of open source. If you rely on this project commercially, please consider contributing back or supporting its development.

Support Us

Star the repository, contribute if you love what we’re building, or sponsor us.

Contributors

Thank you to the combined efforts of everyone who contributes!

Description
No description provided
Readme AGPL-3.0 7.3 MiB
Languages
TypeScript 93.4%
JavaScript 6.4%