-
Book Overview & Buying
-
Table Of Contents
Mastering NLP From Foundations to Agents - Second Edition
By :
Over the last few years, we have watched a quiet but profound shift in how software is conceived and built. Many teams have already integrated LLMs into their products. Yet, a recurring pattern appears in practice. The model works, but the product does not feel coherent. Latency is unpredictable, and retrieval quality varies. Costs escalate under real traffic, and safety reviews slow deployment. Even ownership between engineering and product becomes blurred. This friction rarely comes from the model alone. It comes from architecture and product design decisions that were not made with AI at the center.
Organizations often begin by adding an LLM to an existing workflow. A chatbot is layered onto a dashboard. A summarization endpoint is appended to a document system. A code assistant is embedded into an IDE. These additions demonstrate capability, but they frequently expose structural gaps:
Change the font size
Change margin width
Change background colour