THE ROLE OF COMPUTER PROGRAMS AND THEIR INFORMATION IN THE PROCESSING PROCESS.

Authors

  • Toshboyeva Mahliyo Tashkent Hygrometeorogical Techical school special science teacher, 45 Str.Takhtapul, 100019 Tashkent, Uzbekistan

Keywords:

Computer programs , processing, digital environments, artificial intelligence, machine learning, automation, data management, decision-making, actionable insights, complex datasets, workflow optimization, productivity, innovation, data-driven world.

Abstract

The role of computer programs in information processing is pivotal in modern-day digital environments, where the efficiency and accuracy of processing vast amounts of data are paramount. This abstract explores how computer programs have revolutionized the processing of information by introducing advanced functionalities such as artificial intelligence, machine learning, and automation. These technologies have not only streamlined data management processes but have also significantly enhanced decision-making capabilities, enabling users to derive actionable insights from complex datasets with unprecedented speed and precision. By delving into the transformative potential of computer programs in information processing, this abstract sheds light on the critical role they play in optimizing workflows, increasing productivity, and driving innovation in today's data-driven world.

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Published

2024-03-27

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Section

Articles