|
|
|||
|
||||
OverviewDeploying Machine Learning Models with FastAPI and ONNX: A Practical Guide to Scalable AI Applications Are you ready to bring your machine learning models to life? If the idea of deploying AI feels daunting, you're not alone. Many beginners find the deployment phase of machine learning to be one of the most intimidating challenges. But don't worry this book will guide you, step by step, through the process in a way that's both approachable and empowering. Whether you're a developer eager to level up your skills or a beginner with no prior technical experience, Deploying Machine Learning Models with FastAPI and ONNX is the perfect companion for your journey into scalable AI applications. This practical, hands-on guide is designed to take you from the basics to production-ready deployment, even if you're starting from scratch. What's Inside This Book? No Technical Jargon, Just Practical Steps: You don't need a background in AI or complex coding languages to get started. Every concept is explained in simple, easy-to-follow steps that build your confidence and skills as you go. Real-World Applications: You'll learn how to deploy machine learning models into production with FastAPI and ONNX. By the end of this book, you'll be equipped to serve real-time predictions in a scalable, reliable way-skills you can apply immediately to real-world projects. Step-by-Step Guidance: This book is structured to take you through each stage of the deployment pipeline-from preparing and training your model to integrating it into a fast, efficient API. No more overwhelming theory-only practical, actionable advice. Celebrate Small Wins: Mistakes are a part of the learning process, and in this book, we embrace them! You'll see how to troubleshoot common challenges and celebrate your progress as you deploy your first models. Comprehensive, Yet Accessible: Designed for both beginners and developers looking to expand their knowledge, this guide breaks down every step and provides you with the tools and support needed to succeed. Key Benefits You'll Gain: Master the fundamentals of deploying AI models using FastAPI and ONNX. Build production-ready APIs for real-time model serving and scalable AI applications. Learn how to handle real-world challenges like model performance, optimization, and inference speed. Get comfortable with model versioning, error handling, and continuous integration. Gain practical experience with deployment on cloud platforms and edge devices. Learn to debug, test, and scale your AI applications with confidence. Why This Book is Different: Beginner-Friendly: No need to be an expert in machine learning or coding to follow along. The friendly tone and approachable style make complex concepts easier to grasp. Hands-On Learning: Focused on practical, real-world applications, this book will teach you skills that are immediately useful and in-demand in the tech industry. Scalable Solutions: You'll learn to deploy models not just for testing, but in real production environments where they can scale to meet user needs. Start Your Journey TodayWhether you're exploring AI for the first time or seeking a structured way to level up your deployment skills, this book is your ultimate guide to fast, efficient, and scalable machine learning deployments. Ready to transform your knowledge into real-world applications? Grab your copy today, and let's get your machine learning models deployed and serving real-time predictions in no time! Full Product DetailsAuthor: Maurice H ConnorPublisher: Independently Published Imprint: Independently Published Dimensions: Width: 17.80cm , Height: 2.00cm , Length: 25.40cm Weight: 0.649kg ISBN: 9798278991991Pages: 376 Publication Date: 16 December 2025 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 |
||||