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Bringing Deep Learning Models to the Edge Efficiently Using ONNX.Book DescriptionONNX has emerged as the de facto standard for deploying portable, framework-agnostic machine learning models across diverse hardware platforms.Ultimate ONNX for Deep Learning Optimization provides a structured, end-to-end guide to the ONNX ecosystem, starting with ONNX fundamentals, model representation, and framework integration. You will learn how to export models from PyTorch, TensorFlow, and Scikit-Learn, inspect and modify ONNX graphs, and leverage ONNX Runtime and ONNX Simplifier for inference optimization. Each chapter builds technical depth, equipping you with the tools required to move models beyond experimentation.The book focuses on performance-critical optimization techniques, including quantization, pruning, and knowledge distillation, followed by practical deployment on edge devices such as Raspberry Pi. Through complete, real-world case studies covering object detection, speech recognition, and compact language models, you can implement custom operators, follow deployment best practices, and understand production constraints. Thus, by the end of this book, you will be capable of designing, optimizing, and deploying efficient ONNX-based AI systems for edge environments.Table of Contents1. Introduction to ONNX and Edge Computing2. Getting Started with ONNX3. ONNX Integration with Deep Learning Frameworks4. Model Optimization Using ONNX Simplifier and ONNX Runtime5. Model Quantization Using ONNX Runtime6. Model Pruning in Pytorch and Exporting to ONNX7. Knowledge Distillation for Edge AI8. Deploying ONNX Models on Edge Devices9. End to End Execution of YOLOv1210. End to End Execution of Whisper Speech Recognition Model11. End to End Execution of SmolLM Model12. ONNX Model from Scratch and Custom Operators13. Real-World Applications, Best Practices, Security, and Future Trends in ONNX for Edge AIIndex