THE ROLE OF BIG DATA ANALYSIS IN BIOINFORMATICS AND GENOMICS.
Keywords:
Bioinformatika, genomika, katta ma’lumotlar, genetik tahlil, sun’iy intellekt, mashinaviy o‘rganish, shaxsiy tibbiyot, sekvenlash texnologiyalari, farmakogenomika, bulutli hisoblash.Abstract
This article discusses the role of big data analysis in bioinformatics and genomics, as well as its scientific and practical significance. The rapid accumulation and complex structure of genomic data require advanced technologies for their efficient storage, management, and in-depth analysis. The article analyzes the use of big data for genomic research, the application of artificial intelligence and machine learning methods, as well as real-world applications in areas such as personalized medicine, agriculture, and pharmacogenomics. The integration of bioinformatics and big data is opening up new opportunities for early detection and treatment of diseases.
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