METHODS FOR BUILDING A KNOWLEDGE BASE USING ARTIFICIAL INTELLIGENCE

##article.authors##

  • Ochilov Giyos Davron ugli ##default.groups.name.author##

##semicolon##

Artificial Intelligence, knowledge base, machine learning, natural language processing, knowledge representation, semantic web, data extraction, automated reasoning, intelligent systems.

##article.abstract##

Artificial Intelligence (AI) has made significant strides in various fields, one of the most promising applications being the creation and management of knowledge bases. Knowledge bases are crucial for managing large amounts of data, facilitating quick access to relevant information, and supporting decision-making processes across various domains. This article explores the methods for building and enhancing knowledge bases using AI, focusing on techniques such as machine learning, natural language processing (NLP), and semantic web technologies. By examining AI’s role in automating data extraction, knowledge representation, and reasoning processes, we highlight how AI can make knowledge bases more efficient, accurate, and adaptable. Additionally, the article discusses challenges in AI-driven knowledge base development and the future prospects of intelligent knowledge management systems.

##submission.authorBiography##

  • Ochilov Giyos Davron ugli

    Qarshi State Technical University,

    Student of the Department of Telecommunication Technologies

##submissions.published##

2025-03-27