Machine Learning Street Talk (MLST) cover image

Jonas Hübotter (ETH) - Test Time Inference

Machine Learning Street Talk (MLST)

CHAPTER

Redefining Search with Intuitive Frameworks

This chapter examines how intuition and abstract representations can enhance search processes, contrasting traditional computational models with innovative approaches that leverage controllers and memory. It discusses the potential future of adaptive intelligent systems capable of constant learning and efficient memory utilization, especially in the context of large language models and their limitations. Additionally, the chapter highlights the significance of memory management and predictive capabilities, addressing the complexities of computational efficiency and data representation.

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