Artificial General Intelligence (AGI): Unraveling the Quest for Human-Like Intelligence

Priyanks kumae

Abstract


This abstract delves into the profound quest for Artificial General Intelligence (AGI) and the ambitious pursuit of replicating human-like intelligence in machines. AGI stands as an aspiration within the field of artificial intelligence, aiming to develop systems capable of performing tasks across diverse domains with cognitive abilities akin to human intelligence. The abstract navigates through the historical evolution of AI, scrutinizing the milestones and challenges on the path towards AGI realization. It explores the interdisciplinary nature of AGI research, encompassing neuroscience, cognitive science, computer science, and philosophy. The paper examines the technological, ethical, and societal implications of achieving AGI, emphasizing the need for a nuanced understanding of intelligence and consciousness in machines. Ultimately, it reflects on the implications, prospects, and ethical considerations associated with the quest for AGI, portraying both the remarkable advancements made and the intricate challenges lying ahead in the pursuit of human-like intelligence in artificial systems.

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