Reactive Publishing
Memory-Safe Machine Learning: Rust Frameworks is a comprehensive guide to building fast, reliable, secure ML systems without the runtime pitfalls of traditional languages. At its core, this book shows how Rust’s ownership model, fearless concurrency, and zero-cost abstractions unlock a new generation of machine-learning architectures designed for safety, performance, and long-term scalability.
You will learn how to design end-to-end ML pipelines in Rust, integrate existing Rust ML ecosystems, build custom kernels, optimize inference engines, and leverage Rust’s type system to eliminate entire classes of memory bugs before they occur. From GPU acceleration to distributed training, this book walks through practical patterns and production-grade workflows used by engineers who are pushing ML workloads beyond Python’s limits.
Inside you’ll find:
• Foundations of memory-safe ML design
• Rust crates for tensors, autograd, and numerical computing
• Building training loops and custom layers in pure Rust
• Hybrid workflows that integrate Rust with Python and C++
• Performance tuning, SIMD, GPU kernels, and deployment strategies
• Architecting robust ML services using async Rust, axum, and WebAssembly
• Testing, benchmarking, and reproducibility in Rust-based ML systems
Whether you are an ML engineer seeking more predictable performance or a Rust developer exploring machine learning, this book provides the tools, frameworks, and design patterns to build next-generation AI systems that are both safe and blazing fast.
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Paperback. Zustand: new. Paperback. Reactive PublishingMemory-Safe Machine Learning: Rust Frameworks is a comprehensive guide to building fast, reliable, secure ML systems without the runtime pitfalls of traditional languages. At its core, this book shows how Rust's ownership model, fearless concurrency, and zero-cost abstractions unlock a new generation of machine-learning architectures designed for safety, performance, and long-term scalability.You will learn how to design end-to-end ML pipelines in Rust, integrate existing Rust ML ecosystems, build custom kernels, optimize inference engines, and leverage Rust's type system to eliminate entire classes of memory bugs before they occur. From GPU acceleration to distributed training, this book walks through practical patterns and production-grade workflows used by engineers who are pushing ML workloads beyond Python's limits.Inside you'll find: - Foundations of memory-safe ML design- Rust crates for tensors, autograd, and numerical computing- Building training loops and custom layers in pure Rust- Hybrid workflows that integrate Rust with Python and C++- Performance tuning, SIMD, GPU kernels, and deployment strategies- Architecting robust ML services using async Rust, axum, and WebAssembly- Testing, benchmarking, and reproducibility in Rust-based ML systemsWhether you are an ML engineer seeking more predictable performance or a Rust developer exploring machine learning, this book provides the tools, frameworks, and design patterns to build next-generation AI systems that are both safe and blazing fast. This item is printed on demand. Shipping may be from multiple locations in the US or from the UK, depending on stock availability. Bestandsnummer des Verkäufers 9798278255499
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PAP. Zustand: New. New Book. Shipped from UK. Established seller since 2000. Bestandsnummer des Verkäufers L2-9798278255499
Anzahl: Mehr als 20 verfügbar
Anbieter: CitiRetail, Stevenage, Vereinigtes Königreich
Paperback. Zustand: new. Paperback. Reactive PublishingMemory-Safe Machine Learning: Rust Frameworks is a comprehensive guide to building fast, reliable, secure ML systems without the runtime pitfalls of traditional languages. At its core, this book shows how Rust's ownership model, fearless concurrency, and zero-cost abstractions unlock a new generation of machine-learning architectures designed for safety, performance, and long-term scalability.You will learn how to design end-to-end ML pipelines in Rust, integrate existing Rust ML ecosystems, build custom kernels, optimize inference engines, and leverage Rust's type system to eliminate entire classes of memory bugs before they occur. From GPU acceleration to distributed training, this book walks through practical patterns and production-grade workflows used by engineers who are pushing ML workloads beyond Python's limits.Inside you'll find: - Foundations of memory-safe ML design- Rust crates for tensors, autograd, and numerical computing- Building training loops and custom layers in pure Rust- Hybrid workflows that integrate Rust with Python and C++- Performance tuning, SIMD, GPU kernels, and deployment strategies- Architecting robust ML services using async Rust, axum, and WebAssembly- Testing, benchmarking, and reproducibility in Rust-based ML systemsWhether you are an ML engineer seeking more predictable performance or a Rust developer exploring machine learning, this book provides the tools, frameworks, and design patterns to build next-generation AI systems that are both safe and blazing fast. This item is printed on demand. Shipping may be from our UK warehouse or from our Australian or US warehouses, depending on stock availability. Bestandsnummer des Verkäufers 9798278255499
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