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OverviewArtificial Intelligence is transforming the world, but building AI that actually performs at scale is where the real challenge begins. Have you ever deployed a machine learning model that worked perfectly in development... only to slow down or fail in production? Have you wondered why some AI systems handle millions of requests effortlessly while others collapse under pressure? Or questioned how top tech companies engineer AI systems that are fast, reliable, and scalable? The truth is, creating powerful AI models is only half the battle. Performance engineering is what turns promising models into real-world solutions. In AI Systems Performance Engineering, you'll step inside the world of high-performance AI infrastructure and discover how leading engineers design, optimize, and scale AI systems that can handle real production workloads. Through practical insights, real-world scenarios, and clear explanations, this book bridges the gap between machine learning theory and high-performance system design. Imagine a young ML engineer who built a brilliant model, accurate, innovative, and promising. But when deployed, it struggled with latency, inefficient resource usage, and unstable performance. What changed everything wasn't a new algorithm, it was understanding performance engineering. This book gives you the same advantage. Whether you're an AI engineer, data scientist, DevOps professional, or tech enthusiast, this guide will help you build AI systems that truly perform. Inside this book, you'll learn how to: - Design AI systems built for speed, scalability, and reliability - Optimize machine learning workloads for maximum efficiency - Benchmark and evaluate AI performance like industry experts - Reduce latency and improve inference performance - Understand GPU utilization, distributed training, and system bottlenecks - Deploy AI systems confidently in real production environments But here's a small spoiler... One of the most powerful insights in this book reveals why many AI systems fail not because of the model, but because of poor system architecture. Once you understand the hidden performance layers behind AI pipelines, you'll start seeing optimization opportunities everywhere. And don't worry, this isn't a dense academic textbook filled with intimidating formulas. The concepts are explained in a clear, practical way, making them accessible whether you're expanding your expertise or entering the field of AI systems engineering. This book also makes a perfect gift for AI engineers, machine learning practitioners, computer science students, DevOps professionals, and tech innovators who want to stay ahead in the rapidly evolving AI industry. If you're ready to move beyond building models and start engineering AI systems that perform at world-class levels, this book is your guide. Get your copy today and start building AI systems that are not just intelligent, but powerful, scalable, and unstoppable. Full Product DetailsAuthor: Jeffery M AndersonPublisher: Independently Published Imprint: Independently Published Dimensions: Width: 21.60cm , Height: 0.90cm , Length: 27.90cm Weight: 0.408kg ISBN: 9798252023618Pages: 170 Publication Date: 14 March 2026 Audience: General/trade , General Format: Paperback Publisher's Status: Active Availability: Available To Order We have confirmation that this item is in stock with the supplier. It will be ordered in for you and dispatched immediately. Table of ContentsReviewsAuthor InformationTab Content 6Author Website:Countries AvailableAll regions |
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