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Prompt Engineering for Generative AI Future-Proof Inputs for Reliable AI Outputs at Scale (5th Early Release) - James Phoenix, Mike Taylor 2024-03-13 EPUB O’Reilly Media, Inc. BOOKS
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Prompt Engineering for Generative AI Future-Proof Inputs for Reliable AI Outputs at Scale (5th Early Release)
Author: James Phoenix, Mike Taylor
Year: 2024-03-13
Pages: 440
Format: EPUB
File size: 78.0 MB
Language: ENG



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Prompt Engineering for Generative AI FutureProof Inputs for Reliable AI Outputs at Scale 5th Early Release Introduction: In the rapidly evolving world of technology, it is essential to understand the process of technological advancements and its impact on humanity. The book "Prompt Engineering for Generative AI FutureProof Inputs for Reliable AI Outputs at Scale 5th Early Release" highlights the need for a personal paradigm to perceive the technological development of modern knowledge as the basis for the survival of humanity and the unification of people in a warring state. This book provides a comprehensive understanding of the potential of large language models (LLMs) and diffusion models like ChatGPT and Stable Diffusion, which have the ability to make useful contributions to a wide variety of tasks. With the barrier to entry greatly reduced, practically any developer can harness LLMs and diffusion models to tackle problems previously unsuitable for automation. However, most developers struggle to coax reliable enough results from them to use in automated systems. To overcome this challenge, the authors introduce the discipline of prompt engineering, which has arisen as a set of best practices for improving the reliability, efficiency, and accuracy of AI models by carefully designing inputs that elicit desired outputs from them.
Оперативное проектирование генерирующих ИИ FutureProof входных данных для надежных выходов ИИ в масштабе 5-го раннего выпуска Введение: В быстро развивающемся мире технологий важно понимать процесс технологических достижений и его влияние на человечество. В книге «Prompt Engineering for Generative AI FutureProof Inputs for Reliable AI Outputs at Scale 5th Early Release» подчеркивается необходимость личной парадигмы восприятия технологического развития современных знаний как основы выживания человечества и объединения людей в воюющем государстве. Эта книга дает исчерпывающее понимание потенциала больших языковых моделей (LLM) и диффузионных моделей, таких как ChatGPT и Stable Diffusion, которые способны внести полезный вклад в широкий спектр задач. При значительно уменьшенном барьере для входа практически любой разработчик может использовать LLM и диффузионные модели для решения проблем, ранее непригодных для автоматизации. Однако большинство разработчиков изо всех сил пытаются получить от них достаточно надежные результаты для использования в автоматизированных системах. Чтобы преодолеть эту проблему, авторы вводят дисциплину быстрого проектирования, которая возникла как набор лучших практик для повышения надежности, эффективности и точности моделей ИИ путем тщательного проектирования входных данных, которые вызывают желаемые результаты от них.
Conception opérationnelle des données d'entrée génératrices d'IA FutureProof pour des sorties d'IA fiables à l'échelle de la 5ème édition précoce Introduction : Dans un monde technologique en évolution rapide, il est important de comprendre le processus de progrès technologique et son impact sur l'humanité. livre « Prompt Engineering for Generative AI FutureProof Inputs for Reliable AI Outputs at Scale 5th Early Release » souligne la nécessité d'un paradigme personnel de perception du développement technologique des connaissances modernes comme base de la survie de l'humanité et de l'unification des gens dans un État en guerre. Ce livre fournit une compréhension exhaustive du potentiel des grands modèles linguistiques (LLM) et des modèles de diffusion tels que ChatGPT et Stable Diffusion, qui peuvent apporter une contribution utile à un large éventail de tâches. Avec une barrière d'entrée considérablement réduite, presque n'importe quel développeur peut utiliser des modèles LLM et de diffusion pour résoudre des problèmes auparavant inadaptés à l'automatisation. Cependant, la plupart des développeurs ont du mal à obtenir des résultats suffisamment fiables pour être utilisés dans des systèmes automatisés. Pour surmonter ce problème, les auteurs introduisent la discipline de la conception rapide, qui est apparue comme un ensemble de meilleures pratiques pour améliorer la fiabilité, l'efficacité et la précision des modèles d'IA en concevant soigneusement les données d'entrée qui produisent les résultats souhaités.
Diseño operativo de las entradas de IA generadoras de FutureProof para salidas de IA fiables a escala de la 5ª edición inicial Introducción: En un mundo de tecnología en rápida evolución, es importante comprender el proceso de avances tecnológicos y su impacto en la humanidad. libro Prompt Engineering for Generative AI FutureProof Inputs for Reliable AI Outputs at Scale 5th Early Release destaca la necesidad de un paradigma personal para percibir el desarrollo tecnológico del conocimiento moderno como base para la supervivencia de la humanidad y de la unificación de los hombres en un Estado en guerra. Este libro proporciona una comprensión exhaustiva del potencial de los modelos de lenguaje grande (LLM) y los modelos de difusión como ChatGPT y Stable Diffusion, que son capaces de hacer una contribución útil a una amplia gama de tareas. Con una barrera de entrada significativamente reducida, casi cualquier desarrollador puede usar LLM y modelos de difusión para resolver problemas que antes no eran aptos para la automatización. n embargo, la mayoría de los desarrolladores están luchando para obtener resultados suficientemente confiables de ellos para ser utilizados en sistemas automatizados. Para superar este problema, los autores introducen la disciplina del diseño rápido, que surgió como un conjunto de mejores prácticas para mejorar la fiabilidad, eficiencia y precisión de los modelos de IA mediante el diseño cuidadoso de los insumos que causan los resultados deseados de ellos.
Operational Design of AI Generating FutureProof Inputs for Trusted AI Outputs im Maßstab der 5. Early Release Einleitung: In der schnelllebigen Welt der Technologie ist es wichtig, den Prozess des technologischen Fortschritts und seine Auswirkungen auf die Menschheit zu verstehen. Das Buch „Prompt Engineering for Generative AI FutureProof Inputs for Reliable AI Outputs at Scale 5th Early Release“ betont die Notwendigkeit eines persönlichen Paradigmas für die Wahrnehmung der technologischen Entwicklung des modernen Wissens als Grundlage für das Überleben der Menschheit und die Vereinigung von Menschen in einem kriegsführenden Staat. Dieses Buch bietet einen umfassenden Einblick in das Potenzial großer Sprachmodelle (LLMs) und Diffusionsmodelle wie ChatGPT und Stable Diffusion, die in der Lage sind, einen nützlichen Beitrag zu einer Vielzahl von Aufgaben zu leisten. Mit einer stark reduzierten Eintrittsbarriere kann fast jeder Entwickler LLM- und Diffusionsmodelle verwenden, um Probleme zu lösen, die zuvor für die Automatisierung ungeeignet waren. Die meisten Entwickler haben jedoch Schwierigkeiten, ausreichend zuverlässige Ergebnisse für den Einsatz in automatisierten Systemen zu erhalten. Um dieses Problem zu überwinden, führen die Autoren die Disziplin des schnellen Designs ein, die als eine Reihe von Best Practices entstanden ist, um die Zuverlässigkeit, Effizienz und Genauigkeit von KI-Modellen durch sorgfältiges Design der Eingaben zu verbessern, die die gewünschten Ergebnisse aus ihnen hervorbringen.
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Geleceğin Operasyonel TasarımıProof AI, 5. Erken Sürüm Ölçeğinde Sağlam AI Çıktıları için Girdi Üretiyor Giriş: Hızla gelişen teknoloji dünyasında, teknolojik gelişmelerin sürecini ve insanlık üzerindeki etkisini anlamak önemlidir. "Prompt Engineering for Generative AI FutureProof Input for Reliable AI Outputs at Scale 5th Early Release" kitabı, modern bilginin teknolojik gelişiminin, insanlığın hayatta kalması ve insanların savaşan bir durumda birleşmesinin temeli olarak algılandığı kişisel bir paradigmaya olan ihtiyacı vurgulamaktadır. Bu kitap, geniş bir yelpazedeki görevlere yararlı katkılarda bulunabilen büyük dil modellerinin (LLM'ler) ve ChatGPT ve Stable Diffusion gibi difüzyon modellerinin potansiyelinin kapsamlı bir şekilde anlaşılmasını sağlar. Giriş için önemli ölçüde azaltılmış bir engelle, hemen hemen her geliştirici, daha önce otomasyon için uygun olmayan sorunları çözmek için LLM ve difüzyon modellerini kullanabilir. Bununla birlikte, çoğu geliştirici, otomatik sistemlerde kullanılmak üzere onlardan yeterince güvenilir sonuçlar almak için mücadele etmektedir. Bu zorluğun üstesinden gelmek için, yazarlar, AI modellerinin güvenilirliğini, verimliliğini ve doğruluğunu artırmak için, onlardan istenen sonuçları ortaya çıkaran girdileri dikkatlice tasarlayarak bir dizi en iyi uygulama olarak ortaya çıkan hızlı tasarım disiplinini tanıtmaktadır.
التصميم التشغيلي لمدخلات توليد الذكاء الاصطناعي من FutureProof لمخرجات الذكاء الاصطناعي القوية في مقدمة مقياس الإصدار المبكر الخامس: في عالم التكنولوجيا سريع التطور، من المهم فهم عملية التقدم التكنولوجي وتأثيره على البشرية. يؤكد كتاب «الهندسة السريعة للإدخالات المستقبلية المولدة للذكاء الاصطناعي لمخرجات الذكاء الاصطناعي الموثوقة على نطاق الإصدار المبكر الخامس» على الحاجة إلى نموذج شخصي للإدراك للتطور التكنولوجي للمعرفة الحديثة كأساس لبقاء البشرية وتوحيد الناس في دولة متحاربة. يقدم هذا الكتاب فهمًا شاملاً لإمكانات النماذج اللغوية الكبيرة (LLMs) ونماذج الانتشار مثل ChatGPT و Stable Diffusion، والتي يمكنها تقديم مساهمات مفيدة في مجموعة واسعة من المهام. مع وجود حاجز أقل بكثير للدخول، يمكن لأي مطور تقريبًا استخدام نماذج LLM والنشر لحل المشكلات غير المناسبة سابقًا للأتمتة. ومع ذلك، يكافح معظم المطورين للحصول على نتائج موثوقة بما يكفي منها لاستخدامها في الأنظمة الآلية. للتغلب على هذا التحدي، قدم المؤلفون انضباط التصميم السريع، والذي ظهر كمجموعة من أفضل الممارسات لتحسين موثوقية وكفاءة ودقة نماذج الذكاء الاصطناعي من خلال التصميم الدقيق للمدخلات التي تستخلص النتائج المرجوة منها.

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