The chapter covers the importance of N-gram language models in understanding traditional methods, their potential use in speculative decoding, and the shift towards benchmarking due to the capabilities of GPT models. It delves into creating realistic tasks on the web with benchmarks like WebArena and Sultopia, improving state-of-the-art models with advancements in technology, and exploring strategies like prompt engineering and self-refinement. Additionally, it discusses challenges in adding long context to models, analyzing websites effectively, simulating social conversations with language models, and using performance-improving code edits to enhance program efficiency.

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