102,50 €
113,89 €
-10% with code: EXTRA
Prompt Engineering for Llms
Prompt Engineering for Llms
102,50
113,89 €
  • We will send in 10–14 business days.
Large language models (LLMs) promise unprecedented benefits. Well versed in common topics of human discourse, LLMs can make useful contributions to a large variety of tasks, especially now that the barrier for interacting with them has been greatly reduced. Potentially, any developer can harness the power of LLMs to tackle large classes of problems previously beyond the reach of automation. This book provides a solid foundation of LLM principles and explains how to apply them in practice. When…
113.89
  • Publisher:
  • ISBN-10: 1098156153
  • ISBN-13: 9781098156152
  • Format: 17.8 x 23.3 x 1.5 cm, minkšti viršeliai
  • Language: English
  • SAVE -10% with code: EXTRA

Prompt Engineering for Llms (e-book) (used book) | bookbook.eu

Reviews

(4.00 Goodreads rating)

Description

Large language models (LLMs) promise unprecedented benefits. Well versed in common topics of human discourse, LLMs can make useful contributions to a large variety of tasks, especially now that the barrier for interacting with them has been greatly reduced. Potentially, any developer can harness the power of LLMs to tackle large classes of problems previously beyond the reach of automation.

This book provides a solid foundation of LLM principles and explains how to apply them in practice. When first integrating LLMs into workflows, most developers struggle to coax useful insights from them. That's because communicating with AI is different from communicating with humans. This guide shows you how to present your problem in the model-friendly way called prompt engineering.

With this book, you'll:

  • Examine the user-program-AI-user model interaction loop
  • Understand the influence of LLM architecture and learn how to best interact with it
  • Design a complete prompt crafting strategy for an application that fits into the application context
  • Gather and triage context elements to make an efficient prompt
  • Formulate those elements so that the model processes them in the way that's desired
  • Master specific prompt crafting techniques including few-shot learning, and chain-of-thought prompting

EXTRA 10 % discount with code: EXTRA

102,50
113,89 €
We will send in 10–14 business days.

The promotion ends in 23d.20:59:58

The discount code is valid when purchasing from 10 €. Discounts do not stack.

Log in and for this item
you will receive 1,14 Book Euros!?
  • Author: John Berryman
  • Publisher:
  • ISBN-10: 1098156153
  • ISBN-13: 9781098156152
  • Format: 17.8 x 23.3 x 1.5 cm, minkšti viršeliai
  • Language: English English

Large language models (LLMs) promise unprecedented benefits. Well versed in common topics of human discourse, LLMs can make useful contributions to a large variety of tasks, especially now that the barrier for interacting with them has been greatly reduced. Potentially, any developer can harness the power of LLMs to tackle large classes of problems previously beyond the reach of automation.

This book provides a solid foundation of LLM principles and explains how to apply them in practice. When first integrating LLMs into workflows, most developers struggle to coax useful insights from them. That's because communicating with AI is different from communicating with humans. This guide shows you how to present your problem in the model-friendly way called prompt engineering.

With this book, you'll:

  • Examine the user-program-AI-user model interaction loop
  • Understand the influence of LLM architecture and learn how to best interact with it
  • Design a complete prompt crafting strategy for an application that fits into the application context
  • Gather and triage context elements to make an efficient prompt
  • Formulate those elements so that the model processes them in the way that's desired
  • Master specific prompt crafting techniques including few-shot learning, and chain-of-thought prompting

Reviews

  • No reviews
0 customers have rated this item.
5
0%
4
0%
3
0%
2
0%
1
0%
(will not be displayed)