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Reasoning, Robustness, and Human Feedback in AI - Max Bartolo (Cohere)

Machine Learning Street Talk (MLST)

CHAPTER

Navigating AI Quantization and Reasoning

This chapter explores the complexities and trade-offs of quantization in AI models, focusing on the challenge of maintaining performance while enhancing efficiency. It emphasizes the need for robust evaluation metrics to assess reasoning capabilities and the importance of adversarial testing to accurately gauge model performance. Additionally, the chapter highlights advancements in context management for language models and the implications for user interaction and trust.

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