We help your website visitors find what they are looking for. AddSearch is a lightning fast, accurate and customizable site search engine with a Search API. AddSearch works on all devices and is easy to install, customize and tweak. | An open-source, high-performance, distributed SQL database built for resilience and scale. Re-uses the upper half of PostgreSQL to offer advanced RDBMS features, architected to be fully distributed like Google Spanner. |
Manage Search Results - Guide website visitors to the pages that matter most;
Analyze Search Intent - Your website is your main asset. Uncover what your visitors are searching for;
AddSearch for All Platforms - We support any platform from legacy systems to state of the art Single Page Applications;
Federated Search - Bring together all your existing content under one search index;
Search in Many Languages - When your users search, the only results displayed are those with the same language as the page they are on;
PDF Support - Don't miss out on installation manuals, technical support documents or product specifications!;
Highly Customizable Search Design - With simple CSS tweaks, you can customize the look-and-feel of the search box and search results page to align with your brand.;
Search API - Create unique result pages, queries for related content, search functionality for mobile apps and more. | Resilience; High Performance; Scalability; Enterprise Grade; Cloud-native; Kubernetes; PostgreSQL-compatible; Geo-Distributed; Hybrid Cloud |
Statistics | |
GitHub Stars - | GitHub Stars 9.9K |
GitHub Forks - | GitHub Forks 1.2K |
Stacks 8 | Stacks 50 |
Followers 17 | Followers 114 |
Votes 0 | Votes 1 |
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