This podcast episode uncovers the intricate landscape of AI development, discussing the limitations of deep learning and emphasizing the necessity for new approaches like meta-learning and hybrid systems to reach the elusive goal of artificial general intelligence (AGI). Schmidhuber illustrates the importance of integrating symbolic AI with advanced learning methods and critiques the industry's focus on language models, advocating instead for systems capable of robust reasoning and planning. He also introduces concepts like the "Society of Mind" and the pivotal role of data compression in scientific discovery, while exploring the evolution of transformer technology and the advantages of LSTMs, ultimately portraying a future where AI systems not only learn but think, reason, and collaborate effectively.
Sign in to continue reading, translating and more.
Continue