Generative Artificial Intelligence and Agents in Research and Teaching
Jussi S. Jauhiainen, Aurora Toppari

TL;DR
This paper critically analyzes the development, applications, and implications of generative AI and large language models in research and education, highlighting technical aspects, opportunities, risks, and future scenarios.
Contribution
It provides a comprehensive overview of GenAI's evolution, technical foundations, and its integration into scholarly and pedagogical practices, emphasizing ethical and societal considerations.
Findings
GenAI enhances research processes from ideation to dissemination.
Educational applications include course design, teaching, and assessment.
Identifies ethical, social, and environmental challenges of GenAI.
Abstract
This study provides a comprehensive analysis of the development, functioning, and application of generative artificial intelligence (GenAI) and large language models (LLMs), with an emphasis on their implications for research and education. It traces the conceptual evolution from artificial intelligence (AI) through machine learning (ML) and deep learning (DL) to transformer architectures, which constitute the foundation of contemporary generative systems. Technical aspects, including prompting strategies, word embeddings, and probabilistic sampling methods (temperature, top-k, and top-p), are examined alongside the emergence of autonomous agents. These elements are considered in relation to both the opportunities they create and the limitations and risks they entail. The work critically evaluates the integration of GenAI across the research process, from ideation and literature…
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