Generative AI models

Generative Artificial Intelligence: Just Hype or Reality?

Gartner’s 2024 Technology Hype Cycle—which outlines the dynamics of expectations surrounding technological innovations across five distinct phases—indicates that generative AI has surpassed the peak of inflated expectations. Nevertheless, the associated hype remains persistent (see figure below), and the technology continues to hold the potential to become truly

Main Types of Generative Models and Their Operating Principles: GANs, Diffusion Models, and Autoregressive Models

Generative models represent a fundamental paradigm in machine learning, enabling computers to create new data samples that closely mirror real-world examples. These models have become indispensable tools across diverse fields including image creation, natural language processing, and scientific research. Three principal architectures have emerged as dominant approaches: Generative Adversarial Networks

The Place of GenAI in the AI Hierarchy: From Neural Networks to Large Language Models

Generative AI relies on a specialised branch of machine learning (ML), namely deep learning (DL) algorithms, which employ neural networks to detect and exploit patterns embedded within data. By processing vast volumes of information, these algorithms are capable of synthesising existing knowledge and applying it creatively. As a result, generative