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Prompt Engineering for AI Systems. Shivendra Srivastava, Naresh Vurukonda

  • Артикул: BC-082767
  • Наявність: Є в наявності

1800.00 грн.

Tested techniques for writing excellent AI prompts!

Each LLM seems to have a mind of its own, and it can be challenging to get the exact results you want. Prompt Engineering for AI Systems teaches you to write prompts that generate the text and code you want, regardless of the LLM you choose. In it, you’ll discover structured and reusable prompt patterns that reduce hallucinations, customize LLMs to specific tasks, and improve the quality of your code generation.

Prompt Engineering for AI Systems teaches you practical prompt engineering skills including:
 
  • Designing context-aware prompts tailored for specific tasks
  • Understanding and minimizing hallucinations
  • When to use prompt patterns such as Persona, Recipe, Template, and Game-Play
  • Utilizing templates to ensure consistent and reusable outputs
  • Integrating external knowledge bases with Retrieval-Augmented Generation (RAG)
  • Building and deploying practical LLM-based apps using LangChain

Prompt Engineering for AI Systems presents patterns, templates, and techniques that help you get consistent, valuable responses from LLMs. You’ll learn how to design precise and context-aware prompts, discover metrics you can use to assess prompt quality, learn methods to scale and collaborate on prompts, and build advanced and agentic AI apps using LangChain.

about the book

 Prompt Engineering for AI Systems teaches universal prompting principles, each illustrated with concise examples of a prompt in action. You’ll find more than just simple prompt-and-response methods. It goes beyond the basics of prompting to explore reusability, scaling for prompts, and managing stochastic responses. Dive into prompt patterns such as Persona, Game-Play, and Recipe patterns, and into emerging techniques such as Retrieval-Augmented Generation (RAG) and dynamic agents. You’ll soon be building solutions that are efficient, accurate, and highly adaptable for real-world applications.

about the reader

 For readers familiar with the basics of working with LLMs. No specialist knowledge required.

about the authors

 Naresh Vurukonda is a Principal Architect at Amgen, where he focuses on building deep learning models and LLM solutions to enhance engineers’ productivity and serve patients on drug accessibility. He holds a master’s degree in computer science from Southern Arkansas University.

Shivendra Srivastava is an Engineering Manager at AWS, where he focuses on building highly available, low-latency, and scalable serverless solutions that power AWS Lambda, Athena, Glue, and Bedrock. He holds a Master’s degree in computer science from Georgia Institute of Technology.
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Інформація про книгу
Обкладинка М'яка
Мова видання Англійська
Ілюстрації Чорно-білі
Видавництво Manning
Рік видання 2024
ISBN 9781633435919
Автори Shivendra Srivastava, Naresh Vurukonda
Кількість сторінок 300

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