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OverviewMachine Learning Deployment Made Simple: FastAPI, ONNX, and Python for Modern AI Systems Are you curious about artificial intelligence but feel overwhelmed by jargon, code, and complicated tools? Do you want to see your own machine learning models come to life-deployed and working in real-world applications-even if you've never written a line of Python before? This book is your friendly invitation into the world of modern AI deployment, designed especially for complete beginners and those who think ""I'm not technical enough."" Take the Fear Out of AI and Coding You don't need a PhD or a programming background to master machine learning deployment. With warmth, encouragement, and clear explanations, this book guides you step by step, from your very first install to running your own machine learning models online. You'll learn with real examples and build practical skills at your own pace. Every chapter is crafted to empower, reassure, and nurture your progress, no matter how much (or how little) experience you start with. What Makes This Book Different? Beginner-Friendly and Non-Intimidating Every concept-whether it's FastAPI, ONNX, or Python basics-is broken down into small, digestible steps, with plain English explanations and hands-on examples that anyone can follow. Mistakes Are Welcome The book normalizes the learning curve. You'll see how errors, bugs, and detours are not failures-they're stepping stones. Each chapter celebrates your small wins and encourages you to keep going, making learning to code and deploy AI a joyful, pressure-free experience. Real-World, Practical Skills Move beyond theory. You'll create and deploy actual machine learning models, connect them to web APIs, and see how they can solve real problems-from image recognition to simple data predictions. By the end, you'll have projects you can share and be proud of. Step-by-Step Confidence Building You'll set up your development environment, understand essential Python and machine learning foundations, and use FastAPI and ONNX to turn your models into deployable applications. Each chapter builds your skills naturally, giving you a sense of accomplishment at every stage. Supportive and Encouraging Tone Written as a supportive companion, the book reassures you: ""You can do this!"" Practical checkpoints, troubleshooting tips, and gentle explanations are there whenever you feel stuck. Key Takeaways and Benefits: Set up Python and all necessary tools, even if you're a total beginner. Train, convert, and deploy machine learning models using industry-standard frameworks (FastAPI, ONNX, Python). Learn best practices for API development, security, and performance-demystified for beginners. Gain confidence with coding and problem-solving by seeing mistakes as part of the learning journey. Discover how AI can solve real-world problems and how you can be part of this exciting field, no matter your background. Your Invitation to a New Skillset If you've ever doubted your ability to enter the tech world, this book is written for you. With ""Machine Learning Deployment Made Simple,"" you'll unlock the tools, guidance, and motivation you need to start coding, deploying, and creating with AI-no experience required. Don't let uncertainty hold you back. Pick up this book and let's take the first step together toward a future where you turn ideas into reality, one line of code at a time. Start your empowering AI journey today-your future as a confident creator begins here. Full Product DetailsAuthor: Bryan C DiegoPublisher: Independently Published Imprint: Independently Published Dimensions: Width: 17.80cm , Height: 1.80cm , Length: 25.40cm Weight: 0.572kg ISBN: 9798276942254Pages: 330 Publication Date: 01 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 |
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