A Complex Algorithms and Artificial Intelligence

Abstract

Complex algorithms are algorithms that are characterized by intricate or sophisticated designs, involving advanced mathematical concepts, intricate logic, or a high level of computational complexity. These algorithms are often employed to solve complex computational problems or to address challenges that require intricate solutions. The complex algorithm having a high multitasking and functionality operations with depends on complexity support called time and space. These algorithms often involve intricate mathematical analyses to ensure their correctness and efficiency. The study of complex algorithms is a significant part of computer science, and researchers continually work on developing more efficient and sophisticated algorithms to tackle various computational challenges. The complex algorithms are often used to enable machines to learn from data, make decisions, and perform tasks that traditionally required human intelligence. The complex algorithms in AI often involve sophisticated mathematical models and computations to enable machines to learn from data, understand patterns, and make intelligent decisions. The choice of algorithm depends on the specific task or problem at hand within the field of artificial intelligence. 

Country : India

1 Prashanth Kumar HM2 Dr. Subramanya Bhat

  1. Research Scholar, College of Computer Science, Srinivas University, Mangalore, India
  2. Professor, College of Computer Science, Srinivas University, Mangalore, India

IRJIET, Volume 8, Issue 11, November 2024 pp. 167-172

doi.org/10.47001/IRJIET/2024.811018

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