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Generative AI Foundations in Python

Generative AI Foundations in Python

By : Carlos Rodriguez
4.8 (5)
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Generative AI Foundations in Python

Generative AI Foundations in Python

4.8 (5)
By: Carlos Rodriguez

Overview of this book

The intricacies and breadth of generative AI (GenAI) and large language models can sometimes eclipse their practical application. It is pivotal to understand the foundational concepts needed to implement generative AI. This guide explains the core concepts behind -of-the-art generative models by combining theory and hands-on application. Generative AI Foundations in Python begins by laying a foundational understanding, presenting the fundamentals of generative LLMs and their historical evolution, while also setting the stage for deeper exploration. You’ll also understand how to apply generative LLMs in real-world applications. The book cuts through the complexity and offers actionable guidance on deploying and fine-tuning pre-trained language models with Python. Later, you’ll delve into topics such as task-specific fine-tuning, domain adaptation, prompt engineering, quantitative evaluation, and responsible AI, focusing on how to effectively and responsibly use generative LLMs. By the end of this book, you’ll be well-versed in applying generative AI capabilities to real-world problems, confidently navigating its enormous potential ethically and responsibly.
Table of Contents (13 chapters)
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Part 1: Foundations of Generative AI and the Evolution of Large Language Models
6
Part 2: Practical Applications of Generative AI

In-context learning

In-context learning is a technique where the model generates responses based on a few examples provided in the input prompt. This method leverages the model’s pre-trained knowledge and the specific context or examples included in the prompt to perform tasks without the need for parameter updates or retraining. The general approach, detailed in Language Models are Few-Shot Learners by Brown et al. (2020), describes how the extensive pre-training of these models enables them to perform tasks and generate responses based on a limited set of examples paired with instructions embedded within prompts. Unlike traditional methods that require fine-tuning for each specific task, in-context learning allows the model to adapt and respond based on the additional context provided at inference.

Central to in-context learning is the concept of few-shot prompting, which is critical for enabling models to adapt to and perform tasks without additional training data, relying...

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