SEMANTIC SEARCH THROUGH VECTOR STORES: SIGNIFICANCE IN ARTIFICIAL INTELLIGENCE AND APPLICATIONS OF NLP MODELS

Authors

  • Shukhrat Kamalov Tashkent State University of Economics, Tashkent, Uzbekiston
  • Diyora Absalamova Tashkent State University of Economics, Tashkent, Uzbekiston
  • Go‘zal Absalamova Jizzakh Branch of the National University of Uzbekistan Named After Mirzo Ulugbek, Jizzakh, Uzbekiston
  • Jamila Kamalova Tashkent State University of Economics, Tashkent, Uzbekiston
  • Farangiz Tengelova Tashkent State University of Economics, Tashkent, Uzbekiston
  • Munisahon Makhamedova Tashkent State University of Economics, Tashkent, Uzbekiston

Keywords:

Semantic Search, Vector Store, Natural Language Processing (NLP), FAISS, BERT, BM25, Embedding models.

Abstract

Semantic search has emerged as a pivotal technology in artificial intelligence (AI), enabling systems to understand and retrieve information based on meaning rather than mere keyword matching. This paper explores the significance of vector stores in enhancing semantic search capabilities within AI systems, with a particular focus on Natural Language Processing (NLP) models. We discuss how vector representations of text, powered by advanced NLP techniques such as transformer-based architectures, facilitate efficient and accurate information retrieval. The integration of vector stores with AI not only improves search precision but also opens new avenues for applications in knowledge management, question-answering systems, and beyond. This study aims to elucidate the critical role of these technologies in modern AI frameworks.

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Published

2025-03-25

How to Cite

Shukhrat Kamalov, Diyora Absalamova, Go‘zal Absalamova, Jamila Kamalova, Farangiz Tengelova, & Munisahon Makhamedova. (2025). SEMANTIC SEARCH THROUGH VECTOR STORES: SIGNIFICANCE IN ARTIFICIAL INTELLIGENCE AND APPLICATIONS OF NLP MODELS. Web of Technology: Multidimensional Research Journal, 3(3), 31–39. Retrieved from https://webofjournals.com/index.php/4/article/view/3653

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Articles