Top SitesBlazar | AI-Powered Research Agent for Structured Web Intelligence

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robots.txt

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# https://www.robotstxt.org/robotstxt.html
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llms.txt

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# Blazar

> Blazar is an autonomous AI research tool that takes natural language queries and returns structured, cited data tables. Users describe what they want to find — companies, people, topics, or any entities — and Blazar's AI agents search the web, extract the relevant data, and organize it into clean tables where every data point links back to a verifiable source.

Blazar is designed for anyone who needs to gather structured information from the web at scale — researchers, analysts, founders, sales teams, recruiters, investors, and operators — without manual data entry or complex query syntax.

## Getting Started

- [Welcome to Blazar](https://docs.tryblazar.com/): Overview of what Blazar is and how it works
- [Quickstart](https://docs.tryblazar.com/quickstart): Create your first research table in minutes

## Core Concepts

- [Tables](https://docs.tryblazar.com/concepts/tables): A table is the core unit of research in Blazar. Each table represents a single research question and contains structured data as rows (discovered entities), columns (requested data fields), and cells (values paired with source citations). Tables can be created from the workspace or via keyboard shortcuts (Cmd/Ctrl + ;).
- [Queries](https://docs.tryblazar.com/concepts/queries): Blazar interprets natural language queries with three components — entity specification (quantity and type), constraints (geographic, temporal, size filters), and field extraction (explicit list of desired columns). Queries should be specific, quantified, and focused on one topic. Entity names are extracted automatically — do not request them as a field.
- [Citations & Sources](https://docs.tryblazar.com/concepts/citations): Every cell in a Blazar table includes citations linking to original web sources. Each citation contains the data value, source URL, and the exact quoted passage supporting it. When multiple authoritative sources exist, Blazar includes all of them for cross-referencing. Click any cell or press Cmd/Ctrl + 0 to inspect citations.

## Features

- [Sidebar](https://docs.tryblazar.com/features/sidebar): Navigation and workspace features
- [History](https://docs.tryblazar.com/features/history): Accessing and reusing past research queries and tables

## Legal

- [Terms of Service](https://tryblazar.com/terms)
- [Privacy Policy](https://tryblazar.com/privacy)

## Contact

- Email: founders@tryblazar.com

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