BOOKS - Building Applications with Large Language Models Techniques, Implementation, ...
Building Applications with Large Language Models Techniques, Implementation, and Applications - Bhawna Singh 2024 PDF Apress BOOKS
ECO~14 kg CO²

1 TON

Views
8636

Telegram
 
Building Applications with Large Language Models Techniques, Implementation, and Applications
Author: Bhawna Singh
Year: 2024
Pages: 289
Format: PDF
File size: 16.5 MB
Language: ENG



Pay with Telegram STARS
Book Description: Building Applications with Large Language Models: Techniques Implementation and Applications explores the use of large language models in software development, providing practical guidance on how to leverage these powerful tools to build better applications. The book covers the latest techniques and best practices for implementing large language models in various domains, including natural language processing, machine learning, and data science. It also discusses the challenges and limitations of using these models, as well as their potential impact on society and the future of work. The book begins by introducing the concept of large language models and their importance in software development, before delving into the technical details of implementation. It covers topics such as model selection, training, and fine-tuning, as well as the use of pre-trained models and transfer learning. The authors also provide practical advice on how to evaluate and optimize large language models for specific tasks, and how to integrate them into existing software systems. As technology continues to evolve at an unprecedented pace, it is more important than ever to understand the process of technological evolution and its impact on humanity.
Создание приложений с большими языковыми моделями: методы внедрения и приложения исследуют использование больших языковых моделей в разработке программного обеспечения, предоставляя практическое руководство о том, как использовать эти мощные инструменты для создания более качественных приложений. Книга охватывает новейшие методы и лучшие практики для реализации больших языковых моделей в различных областях, включая обработку естественного языка, машинное обучение и науку о данных. В нем также обсуждаются проблемы и ограничения использования этих моделей, а также их потенциальное влияние на общество и будущее работы. Книга начинается с введения понятия больших языковых моделей и их важности в разработке программного обеспечения, прежде чем вникнуть в технические детали реализации. Он охватывает такие темы, как выбор модели, обучение и тонкая настройка, а также использование предварительно обученных моделей и трансфертное обучение. Авторы также дают практические советы о том, как оценивать и оптимизировать большие языковые модели под конкретные задачи, и как интегрировать их в существующие программные системы. Поскольку технологии продолжают развиваться беспрецедентными темпами, как никогда важно понять процесс технологической эволюции и ее влияние на человечество.
Créer des applications avec de grands modèles linguistiques : les méthodes de mise en œuvre et les applications explorent l'utilisation de grands modèles linguistiques dans le développement de logiciels, fournissant des conseils pratiques sur la façon d'utiliser ces puissants outils pour créer de meilleures applications. livre couvre les méthodes les plus récentes et les meilleures pratiques pour mettre en œuvre de grands modèles linguistiques dans divers domaines, y compris le traitement du langage naturel, l'apprentissage automatique et la science des données. Il examine également les défis et les limites de l'utilisation de ces modèles, ainsi que leur impact potentiel sur la société et l'avenir du travail. livre commence par l'introduction de la notion de grands modèles linguistiques et de leur importance dans le développement de logiciels, avant d'entrer dans les détails techniques de la mise en œuvre. Il couvre des sujets tels que le choix du modèle, la formation et la personnalisation fine, ainsi que l'utilisation de modèles pré-formés et la formation de transfert. s auteurs donnent également des conseils pratiques sur la façon d'évaluer et d'optimiser les grands modèles linguistiques pour des tâches spécifiques, et comment les intégrer dans les systèmes logiciels existants. Alors que la technologie continue d'évoluer à un rythme sans précédent, il est plus important que jamais de comprendre le processus d'évolution technologique et son impact sur l'humanité.
Creación de aplicaciones con grandes modelos lingüísticos: las técnicas de implementación y las aplicaciones exploran el uso de grandes modelos lingüísticos en el desarrollo de software, proporcionando una guía práctica sobre cómo utilizar estas potentes herramientas para crear aplicaciones de mejor calidad. libro cubre las últimas técnicas y mejores prácticas para implementar grandes modelos lingüísticos en una variedad de campos, incluyendo el procesamiento de lenguaje natural, el aprendizaje automático y la ciencia de datos. También analiza los retos y limitaciones del uso de estos modelos, así como su posible impacto en la sociedad y el futuro del trabajo. libro comienza introduciendo la noción de grandes modelos de lenguaje y su importancia en el desarrollo de software antes de ahondar en los detalles técnicos de la implementación. Abarca temas como la elección del modelo, el aprendizaje y el ajuste fino, así como el uso de modelos pre-entrenados y el aprendizaje de transferencia. autores también ofrecen consejos prácticos sobre cómo evaluar y optimizar los grandes modelos de lenguaje para tareas específicas, y cómo integrarlos en los sistemas de software existentes. A medida que la tecnología continúa evolucionando a un ritmo sin precedentes, es más importante que nunca comprender el proceso de evolución tecnológica y su impacto en la humanidad.
Creazione di applicazioni con modelli linguistici di grandi dimensioni: i metodi di implementazione e le applicazioni esplorano l'utilizzo di modelli di lingua di grandi dimensioni nello sviluppo di software, fornendo una guida pratica su come utilizzare questi potenti strumenti per creare applicazioni di migliore qualità. Il libro comprende le più recenti tecniche e le migliori pratiche per implementare modelli linguistici di grandi dimensioni in diversi ambiti, tra cui l'elaborazione del linguaggio naturale, l'apprendimento automatico e la scienza dei dati. discute anche dei problemi e dei limiti di utilizzo di questi modelli e dei loro potenziali effetti sulla società e sul futuro del lavoro. Il libro inizia introducendo il concetto di grandi modelli linguistici e la loro importanza nello sviluppo del software prima di entrare nei dettagli tecnici di implementazione. Include argomenti quali la scelta del modello, l'apprendimento e la configurazione sottile, l'utilizzo di modelli pre-addestrati e l'apprendimento in trasferimento. Gli autori forniscono anche consigli pratici su come valutare e ottimizzare i modelli linguistici di grandi dimensioni per obiettivi specifici e come integrarli nei sistemi software esistenti. Poiché la tecnologia continua a crescere a un ritmo senza precedenti, è più importante che mai comprendere l'evoluzione tecnologica e il suo impatto sull'umanità.
Erstellen von Anwendungen mit größeren Sprachmodellen: Implementierungsmethoden und Anwendungen untersuchen die Verwendung von großen Sprachmodellen in der Softwareentwicklung und bieten eine praktische Anleitung, wie diese leistungsstarken Tools verwendet werden können, um bessere Anwendungen zu erstellen. Das Buch behandelt die neuesten Techniken und Best Practices zur Implementierung großer Sprachmodelle in verschiedenen Bereichen, einschließlich natürlicher Sprachverarbeitung, maschinellem rnen und Datenwissenschaft. Es diskutiert auch die Herausforderungen und Grenzen der Verwendung dieser Modelle sowie ihre möglichen Auswirkungen auf die Gesellschaft und die Zukunft der Arbeit. Das Buch beginnt mit einer Einführung in das Konzept der großen Sprachmodelle und deren Bedeutung in der Softwareentwicklung, bevor es in die technischen Details der Umsetzung eintaucht. Es umfasst Themen wie Modellauswahl, Training und Feinabstimmung sowie den Einsatz vortrainierter Modelle und Transferschulungen. Die Autoren geben auch praktische Tipps, wie man große Sprachmodelle für bestimmte Aufgaben bewerten und optimieren und in bestehende Softwaresysteme integrieren kann. Da sich die Technologie in einem beispiellosen Tempo weiterentwickelt, ist es wichtiger denn je, den Prozess der technologischen Evolution und ihre Auswirkungen auf die Menschheit zu verstehen.
''
Büyük Dil Modelleriyle Yapı Uygulamaları: Uygulama teknikleri ve uygulamaları, yazılım geliştirmede büyük dil modellerinin kullanımını araştırır ve daha iyi uygulamalar oluşturmak için bu güçlü araçların nasıl kullanılacağına dair pratik bir rehber sunar. Kitap, doğal dil işleme, makine öğrenimi ve veri bilimi gibi çeşitli alanlarda büyük dil modellerini uygulamak için en son teknikleri ve en iyi uygulamaları kapsamaktadır. Ayrıca, bu modelleri kullanmanın zorluklarını ve sınırlamalarını ve bunların toplum ve işin geleceği üzerindeki potansiyel etkilerini tartışmaktadır. Kitap, uygulamanın teknik ayrıntılarına girmeden önce büyük dil modelleri kavramını ve yazılım geliştirmedeki önemini tanıtarak başlar. Model seçimi, eğitim ve ince ayar, önceden eğitilmiş modellerin kullanımı ve transfer eğitimi gibi konuları kapsar. Yazarlar ayrıca, belirli görevler için büyük dil modellerinin nasıl değerlendirileceği ve optimize edileceği ve bunların mevcut yazılım sistemlerine nasıl entegre edileceği konusunda pratik tavsiyeler sunmaktadır. Teknoloji benzeri görülmemiş bir hızda ilerlemeye devam ettikçe, teknolojik evrim sürecini ve insanlık üzerindeki etkisini anlamak her zamankinden daha önemlidir.
使用大型語言模型創建應用程序:實施方法和應用程序探索在軟件開發中使用大型語言模型,提供如何使用這些功能強大的工具來創建更高質量的應用程序的實用指南。該書涵蓋了在自然語言處理,機器學習和數據科學等各個領域實現大型語言模型的最新方法和最佳實踐。它還討論了使用這些模型的問題和局限性,以及它們對社會和工作未來的潛在影響。本書首先介紹了大型語言模型的概念及其在軟件開發中的重要性,然後深入研究了實現的技術細節。它涵蓋了諸如模型選擇,培訓和微調以及使用預先培訓的模型和轉移培訓等主題。作者還提供有關如何評估和優化特定任務的大型語言模型以及如何將其集成到現有軟件系統中的實用建議。隨著技術以前所未有的速度繼續發展,了解技術發展的過程及其對人類的影響比以往任何時候都更加重要。

You may also be interested in:

Advancing Software Engineering Through AI, Federated Learning, and Large Language Models
Artificial Intelligence and Large Language Models An Introduction to the Technological Future
Advancing Software Engineering Through AI, Federated Learning, and Large Language Models
Artificial Intelligence and Large Language Models: An Introduction to the Technological Future
Understanding Large Language Models Learning Their Underlying Concepts and Technologies
Artificial Intelligence and Large Language Models An Introduction to the Technological Future
Large Language Models: A Deep Dive: Bridging Theory and Practice
Understanding Large Language Models Learning Their Underlying Concepts and Technologies
LLMOps Managing Large Language Models in Production (Early Release)
Understanding Large Language Models: Learning Their Underlying Concepts and Technologies
Large Language Models A Deep Dive Bridging Theory and Practice
Large Language Models A Deep Dive Bridging Theory and Practice
LLM Essentials A Busy Professional|s Guide to Large Language Models
Learn Python Generative AI Journey from autoencoders to transformers to large language models
LLM Essentials A Busy Professional|s Guide to Large Language Models
Learn Python Generative AI Journey from autoencoders to transformers to large language models
Artificial Intelligence Machine Learning, Convolutional Neural Networks and Large Language Models
Quick Start Guide to Large Language Models: Strategies and Best Practices for using ChatGPT and Other LLMs
Mastering Spring AI The Java Developer|s Guide for Large Language Models and Generative AI
Artificial Intelligence Machine Learning, Convolutional Neural Networks and Large Language Models
Natural Language Processing with Transformers Building Language Applications with Hugging Face
Quick Start Guide to Large Language Models Strategies and Best Practices for Using ChatGPT and Other LLMs (Final)
Deep Reinforcement Learning with Python RLHF for Chatbots and Large Language Models, 2nd Edition
Deep Reinforcement Learning with Python RLHF for Chatbots and Large Language Models, 2nd Edition
Quick Start Guide to Large Language Models Strategies and Best Practices for Using ChatGPT and Other LLMs (Final)
Quick Start Guide to Large Language Models Strategies and Best Practices for Using ChatGPT and Other LLMs, Second Edition (Early Release)
Quick Start Guide to Large Language Models Strategies and Best Practices for using ChatGPT and Other LLMs (4th Rough Cuts)
Quick Start Guide to Large Language Models Strategies and Best Practices for Using ChatGPT and Other LLMs, Second Edition (Early Release)
Quick Start Guide to Large Language Models: Strategies and Best Practices for Using ChatGPT and Other LLMs (Addison-Wesley Data and Analytics Series)
AI Engineering Building Applications with Foundation Models
Large Language Model via Rust The State of the Art Open Foundational Models in Rust
Transforming Conversational AI Exploring the Power of Large Language Models in Interactive Conversational Agents
Transforming Conversational AI Exploring the Power of Large Language Models in Interactive Conversational Agents
Transforming Conversational AI: Exploring the Power of Large Language Models in Interactive Conversational Agents
Large Language Model-Based Solutions How to Deliver Value with Cost-Effective Generative AI Applications
Large Language Model-Based Solutions How to Deliver Value with Cost-Effective Generative AI Applications
Programming Large Language Models With Azure Open AI Conversational Programming and Prompt Engineering With LLMs
Programming Large Language Models With Azure Open AI Conversational Programming and Prompt Engineering With LLMs
Privacy and Security for Large Language Models Hands-On Privacy-Preserving Techniques for Personalized AI (Early Release)
Programming Large Language Models with Azure Open AI: Conversational programming and prompt engineering with LLMs (Developer Reference)