NEW ALGORITHMIC SOLUTIONS AND THEIR MATHEMATICAL FOUNDATIONS

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Abstrak:

This article examines new algorithmic solutions and their underlying mathematical foundations. It analyzes complex mathematical principles necessary for understanding and developing advanced algorithms in areas such as machine learning, quantum computing, blockchain technology, optimization, and graph theory. The article highlights the role of linear algebra, calculus, probability theory, and information theory in modern algorithms. It also discusses mathematical approaches to pressing issues such as algorithmic fairness and interpretability. By synthesizing existing research and conceptual ideas, the article demonstrates the inseparable connection between abstract mathematical theory and practical algorithmic innovations, and outlines future research and application directions.

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