Non-fictie
"WASI-NN for Machine Learning Interfaces"
"WASI-NN for Machine Learning Interfaces" offers an authoritative guide to leveraging the WebAssembly System Interface (WASI) for portable machine learning (ML) inference in modern computing environments. Beginning with a comprehensive deep dive into WebAssembly fundamentals and the evolution of WASI, the book lays a strong theoretical foundation and addresses both the infrastructure and security models required for deploying WebAssembly applications beyond web browsers. Readers are introduced to the motivations and design principles behind WASI-NN—the emerging API standard for ML inference—which emphasizes usability, portability, and robust host-guest separation for scalable, multi-platform ML solutions.
The core of the book thoroughly explores the WASI-NN architecture, covering the full pipeline of model loading, tensor memory management, inference graph construction, and advanced resource management strategies. Dedicated sections walk through integration with popular ML runtimes like ONNX and TensorFlow Lite, and examine support for custom hardware accelerators across heterogeneous edge and cloud deployments. With practical guidance on performance profiling, quantization, memory optimization, and energy efficiency, the text delivers actionable knowledge for maximizing inference throughput and reliability in real-world applications.
Beyond technical execution, the book gives special attention to security, privacy, and compliance, detailing effective threat modeling, sandboxing, key management, and regulatory considerations such as GDPR and HIPAA. It further explores best practices for application testing, continuous integration, and lifecycle management, ensuring readers are equipped to deliver secure and maintainable ML systems. The concluding chapters delve into the WASI-NN community ecosystem, standardization efforts, and emerging research directions, making this volume an essential resource for developers, architects, and researchers shaping the future of portable machine learning.
© 2025 NobleTrex Press (Ebook): 6610000975310
Verschijnt op:
Ebook: 24 juli 2025
Kies het aantal uur en accounts dat bij jou past
Kids Mode - een veilige omgeving voor kinderen
Download verhalen voor offline toegang
Al 2,5 miljoen abonnees wereldwijd
★★★★★ 4,7 in de App Store
Voor wie onbeperkt wil luisteren en lezen.
€13.99 /30 dagen
Meer dan 1 miljoen luisterboeken en ebooks
Altijd opzegbaar
Voor wie zo nu en dan wil luisteren en lezen.
€9.99 /30 dagen
Meer dan 1 miljoen luisterboeken en ebooks
Altijd opzegbaar
Voor wie Storytel wil proberen.
€7.99 /30 dagen
Spaar ongebruikte uren op tot 50 uur
Meer dan 1 miljoen luisterboeken en ebooks
Altijd opzegbaar
Voor wie verhalen met familie en vrienden wil delen.
Vanaf €18.99 /maand
Meer dan 1 miljoen luisterboeken en ebooks
Altijd opzegbaar
€18.99 /30 dagen