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Traditional database management systems need help efficiently represent and querying the complex, high-dimensional data prevalent in modern applications. Vector databases offer a solution by storing data as numerical vectors within a multi-dimensional space. This enables similarity-based search and analysis, such as image retrieval, recommendation engine generation, and natural language processing. This paper introduces Quantixar, a vector database project designed for efficiency in high-dimensional settings. Quantixar tackles the challenge of managing high-dimensional data by strategically combining advanced indexing and quantization techniques. It employs HNSW indexing for accelerated ANN search. Additionally, Quantixar incorporates binary and product quantization to compress high-dimensional vectors, reducing storage requirements and computational costs during search. The paper delves into Quantixar's architecture, specific implementation, and experimental methodology.
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Gulshan Yadav
Manipal Academy of Higher Education
RahulKumar Yadav
Mansi Viramgama
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Yadav et al. (Tue,) studied this question.
synapsesocial.com/papers/68e7362fb6db6435876b026a — DOI: https://doi.org/10.48550/arxiv.2403.12583
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