Artículo: AMZ-B0FY5T3DT8

MLIR in Action : A Practical Guide to Scalable Model Optimization and Hardware Acceleration With OpenXLA, IREE and Mojo

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Peso con empaque
0.84 kg
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No
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Nuevo
Producto de
Amazon
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USA

Sobre este producto
  • MLIR in Action: A Practical Guide to Scalable Model Optimization and Hardware Acceleration with OpenXLA, IREE, and Mojo Unlock the full power of machine learning optimization and next-generation compiler design with MLIR in Action — your complete, hands-on guide to mastering the Multi-Level Intermediate Representation (MLIR) ecosystem. Built for engineers, researchers, and AI practitioners, this book takes you on a step-by-step journey through the core concepts, workflows, and real-world applications of MLIR — the backbone of modern compiler infrastructures like OpenXLA, IREE, and Mojo. Learn how to optimize, transform, and deploy machine learning models efficiently across CPUs, GPUs, and custom accelerators using a unified and extensible compiler stack. Inside this practical guide, you will discover how to: • Understand the architecture and principles of MLIR in depth. • Build, extend, and debug custom MLIR dialects and passes. • Integrate MLIR with leading frameworks such as TensorFlow, PyTorch, and Mojo. • Leverage OpenXLA and IREE for portable, high-performance model deployment. •Automate builds, CI/CD pipelines, and cloud deployment for scalable production systems. •Visualize, profile, and debug IR flows for performance tuning and optimization. • Stay ahead of the curve with insights into emerging compiler standards, AI-driven optimization, and future MLIR trends. From theory to practice, every chapter blends clear explanations with real code examples, text-based flowcharts, and implementation checklists. Whether you are optimizing large-scale AI workloads or exploring compiler-based acceleration, MLIR in Action gives you the tools to move from concept to production with confidence. Perfect for: • Machine Learning Engineers • Compiler Developers • AI Infrastructure Architects • Systems Programmers • Researchers exploring hardware-aware AI optimization MLIR in Action bridges the gap between research and real-world deployment — helping you build the scalable, efficient, and future-ready AI systems that power the next wave of machine learning innovation.

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