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Building LLM Powered  Applications

Building LLM Powered Applications

By : Valentina Alto
4.2 (22)
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Building LLM Powered  Applications

Building LLM Powered Applications

4.2 (22)
By: Valentina Alto

Overview of this book

Building LLM Powered Applications delves into the fundamental concepts, cutting-edge technologies, and practical applications that LLMs offer, ultimately paving the way for the emergence of large foundation models (LFMs) that extend the boundaries of AI capabilities. The book begins with an in-depth introduction to LLMs. We then explore various mainstream architectural frameworks, including both proprietary models (GPT 3.5/4) and open-source models (Falcon LLM), and analyze their unique strengths and differences. Moving ahead, with a focus on the Python-based, lightweight framework called LangChain, we guide you through the process of creating intelligent agents capable of retrieving information from unstructured data and engaging with structured data using LLMs and powerful toolkits. Furthermore, the book ventures into the realm of LFMs, which transcend language modeling to encompass various AI tasks and modalities, such as vision and audio. Whether you are a seasoned AI expert or a newcomer to the field, this book is your roadmap to unlock the full potential of LLMs and forge a new era of intelligent machines.
Table of Contents (16 chapters)
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14
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Index

What is fine-tuning?

Fine-tuning is a technique of transfer learning in which the weights of a pretrained neural network are used as the initial values for training a new neural network on a different task. This can improve the performance of the new network by leveraging the knowledge learned from the previous task, especially when the new task has limited data.

Definition

Transfer learning is a technique in machine learning that involves using the knowledge learned from one task to improve the performance on a related but different task. For example, if you have a model that can recognize cars, you can use some of its features to help you recognize trucks. Transfer learning can save you time and resources by reusing existing models instead of training new ones from scratch.

To better understand the concepts of transfer learning and fine-tuning, let’s consider the following example.

Imagine you want to train a computer vision neural network to...

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