Free
$0Free plan available.
Xiaoqiu Search is a meta-search engine that integrates AI-chatGPT to provide AI-powered aggregated search results. It aims to overcome the limitations of single search engines by offering various types of aggregated searches, enabling users to find resources more accurately and save time. It supports aggregated searches for images, videos, resources, news, academic papers, and code. It also features a customizable start page with multiple desktops and quick access menus.
To use Xiaoqiu Search, simply enter your search query into the search bar. For faster results, you can use the 'website + search term' format to target specific platforms. Additionally, you can personalize your start page by configuring multiple desktops and quick access menus.
Xiaoqiu Search supports aggregated searches for images, videos, resources, news, academic papers, and code.
You can perform quick searches on specific websites by using the 'website + search term' format.
The extension requires permission to modify your new tab page and access your browsing history to facilitate adding sites.
Free plan available.
Use these comparison pages to understand the trade-offs between the models most relevant to Xiaoqiu Search - Chrome Extension.
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Compare Gemini 1.0 Pro Deprecated and Gemini 1.5 Flash Deprecated across pricing, context window, capabilities, benchmarks, and API access to choose the better fit for long-context workloads versus general-purpose AI workloads.