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  • Book Overview & Buying Building Business-Ready Generative AI Systems
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Building Business-Ready Generative AI Systems

Building Business-Ready Generative AI Systems

By : Denis Rothman
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Building Business-Ready Generative AI Systems

Building Business-Ready Generative AI Systems

By: Denis Rothman

Overview of this book

Standalone LLMs no longer deliver sufficient business value on their own. This guide moves beyond basic chatbots, showing you how to build agentic, ChatGPT-grade systems capable of sophisticated semantic and sentiment analysis, powered by context engineering. You'll design AI controller architectures with multi-user memory retention to dynamically adapt your system to diverse user and system inputs. You'll architect a Retrieval-Augmented Generation system with Pinecone to combine instruction-driven scenarios. Through context engineering, you’ll minimize token usage, maximize response quality, and create systems that reason across complex tasks with precision. You'll enhance your system’s intelligence with multimodal capabilities—image generation, voice interactions, and machine-driven reasoning—leveraging Chain-of-Thought and context chaining to address cross-domain automation challenges. You'll also integrate OpenAI’s suite and DeepSeek-R1 without disrupting your existing GenAISys ecosystem. With context engineering as the backbone, every step becomes a deliberate act of shaping model behavior. Your GenAISys will apply neuroscience-inspired insights to marketing strategies, predict human mobility, integrate smoothly into human workflows, and connect to live external data, all wrapped in a polished, investor-ready interface.
Table of Contents (14 chapters)
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12
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Chapter 6

  1. True. Emotional memory creates a bond between a person and a promotional message.
  2. True. OpenAI’s o3 can reason and perform chain-of-thought tasks.
  3. False. Humans can remember emotions many years after an event and as far back as childhood.
  4. False. A generative AI model such as o3 can understand complex prompts and memory structures.
  5. True. Generative AI models can now process numerical values to some extent, as well as natural language.
  6. True. A Pinecone index can contain vectorized instructions that can be retrieved with a similarity query.
  7. True. The early generative AI models could only process relatively simple prompts. Now, they can understand complex steps of tasks and perform them well.
  8. True. A simple user input can trigger a complex thread-of-reasoning scenario.
  9. True. A reasoning model analyzes a prompt and has the ability to go through several steps to perform a complex set of tasks to process reviews.
  10. ...
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Building Business-Ready Generative AI Systems
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