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RAG-Driven Generative AI

RAG-Driven Generative AI

By : Denis Rothman
4.3 (18)
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RAG-Driven Generative AI

RAG-Driven Generative AI

4.3 (18)
By: Denis Rothman

Overview of this book

RAG-Driven Generative AI provides a roadmap for building effective LLM, computer vision, and generative AI systems that balance performance and costs. This book offers a detailed exploration of RAG and how to design, manage, and control multimodal AI pipelines. By connecting outputs to traceable source documents, RAG improves output accuracy and contextual relevance, offering a dynamic approach to managing large volumes of information. This AI book shows you how to build a RAG framework, providing practical knowledge on vector stores, chunking, indexing, and ranking. You’ll discover techniques to optimize your project’s performance and better understand your data, including using adaptive RAG and human feedback to refine retrieval accuracy, balancing RAG with fine-tuning, implementing dynamic RAG to enhance real-time decision-making, and visualizing complex data with knowledge graphs. You’ll be exposed to a hands-on blend of frameworks like LlamaIndex and Deep Lake, vector databases such as Pinecone and Chroma, and models from Hugging Face and OpenAI. By the end of this book, you will have acquired the skills to implement intelligent solutions, keeping you competitive in fields from production to customer service across any project.
Table of Contents (14 chapters)
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11
Other Books You May Enjoy
12
Index
Appendix

Total session time

The following code measures the time between the beginning of the session and immediately after the Installing the environment section:

end_time = time.time() - session_start_time  # Measure response time
print(f"Session preparation time: {response_time:.2f} seconds")  # Print response time

The output can have two meanings:

  • It can measure the time we worked on the preparation of the dynamic RAG scenario with the daily dataset for the Chroma collection, querying, and summarizing by Llama.
  • It can measure the time it took to run the whole notebook without intervening at all.

In this case, the session time is the result of a full run with no human intervention:

Session preparation time: 780.35 seconds

The whole process takes less than 15 minutes, which fits the constraints of the preparation time in a dynamic RAG scenario. It leaves room for a few runs to tweak the system before the meeting. With that, we have successfully...

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