..

Jornal Global de Tecnologia e Otimização

Volume 14, Emitir 6 (2023)

Mini revisão

Dynamic Surrogate Models are Reshaping Modeling and Simulation Landscapes

Larose Abbasi

The field of modeling and simulation has witnessed a transformative shift with the emergence and proliferation of dynamic surrogate models. These sophisticated models have revolutionized traditional approaches by offering real-time adaptability, enhanced accuracy and increased efficiency. This article explores the impact of dynamic surrogate models on the modeling and simulation landscape, highlighting their key features, applications and the paradigm shift they bring to various industries. Modeling and simulation have long been integral components in diverse industries, facilitating the analysis and understanding of complex systems. Traditional static models, however, have limitations in capturing the dynamic and evolving nature of many real-world phenomena. Dynamic surrogate models have emerged as a game-changer, offering a new dimension to modeling and simulation.

Mini revisão

Quantum-inspired Algorithms and Their Applications in Real-world Problems

Thiele Takako

Quantum computing has emerged as a groundbreaking field, promising unprecedented computational power by harnessing the principles of quantum mechanics. While true quantum computers are still in the experimental stage, researchers have developed quantum-inspired algorithms that mimic certain quantum properties. These algorithms have shown great promise in solving complex real-world problems more efficiently than classical algorithms. This article explores the concept of quantum-inspired algorithms and delves into their applications across various domains, highlighting their potential to revolutionize problem-solving in fields such as optimization, machine learning, cryptography and finance.

Mini revisão

Decoding the Algorithms: A Deep Dive into Explainable Optimization Techniques for Improved Model Interpretability

Samozino Bazzucchi

In the rapidly evolving landscape of artificial intelligence and machine learning, the black-box nature of complex algorithms poses a significant challenge to understanding and interpreting model decisions. As the deployment of these models becomes more pervasive, the demand for transparency and interpretability has surged. This article explores the intricate realm of explainable optimization techniques aimed at unraveling the mysteries of algorithms. We delve into various approaches that enhance model interpretability, empowering stakeholders to make informed decisions and build trust in the increasingly sophisticated AI systems.

Mini revisão

The Evolutionary Revolution in Computational Intelligence

Farboodi Hidayanto

Computational intelligence has undergone a revolutionary transformation, marked by the integration of evolutionary algorithms into its framework. This paradigm shift, often referred to as the Evolutionary Revolution, has significantly enhanced the capabilities of artificial intelligence systems. This article explores the key aspects of this revolution, highlighting the principles of evolutionary algorithms, their applications across diverse domains and the impact on the field of computational intelligence. We delve into the synergy between evolutionary computation and traditional machine learning methods, examining how this fusion has unlocked new possibilities and paved the way for more robust and adaptable intelligent systems. The Evolutionary Revolution is not only reshaping the landscape of artificial intelligence but also offering novel solutions to complex problems in areas such as optimization, pattern recognition and decision-making.

arrow_upward arrow_upward