SKU/Artículo: AMZ-B0G4CVV1ZV

Next-Generation Scientific Computing with Python and AI: Surrogate Modeling, PINNs, RL Control, and Hybrid Solvers for Modern Engineering

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Paperback

Detalles del producto
Disponibilidad:
En stock
Peso con empaque:
1.36 kg
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Condición
Nuevo
Producto de:
Amazon
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USA

Sobre este producto
  • About the Book Next-Generation Scientific Computing with Python and AI is a breakthrough guide for engineers, researchers, and technical professionals who are ready to go beyond traditional numerical simulation and step into the new era of intelligent computational modeling. This book bridges classical scientific computing with the rapidly expanding world of machine learning–powered solvers, showing you how to accelerate simulations, build predictive models, and deploy hybrid systems that learn from data while respecting physical laws. Modern engineering challenges demand more than conventional solvers alone. Whether modeling material deformation, designing renewable energy systems, optimizing industrial processes, or running thousands of simulation scenarios, traditional methods can be slow, costly, and limited by computational constraints. This book shows you how to overcome those limitations using surrogate modeling, Physics-Informed Neural Networks (PINNs), reinforcement learning for control systems, and real-time AI-driven simulation frameworks. From foundational scientific computing skills to high-performance hybrid AI workflows, you’ll learn how to:Build classical solvers and numerical models using Python tools such as NumPy, SciPy, and Matplotlib.Train machine learning surrogates that predict outcomes thousands of times faster than full simulations.Use neural networks—including RNNs, LSTMs, CNNs, and PINNs—to approximate ODEs, PDEs, and time-varying physical systems.Apply reinforcement learning to control engineered systems such as pumps, turbines, and energy assets.Deploy real-time anomaly detection models using sensor data and integrate them with control logic.Scale your workflows using parallel computing, GPUs, cloud services, and high-performance computing strategies.To make learning hands-on and practical, this book includes fully runnable code examples—built in Jupyter Notebook format—covering real-world domains such as material deformation, renewable energy forecasting, pump system safety automation, and digital-twin simulation architectures. Whether you are an engineer optimizing equipment performance, a researcher modeling complex dynamics, or a student entering the world of computational science, every chapter builds toward real, applicable mastery. At its core, this book isn’t just about Python and AI—it’s about the future of scientific computation: faster, intelligent models that combine physical equations with machine learning to unlock new possibilities in engineering, sustainability, and innovation. Who This Book Is ForGraduate and postgraduate students in physics, chemistry, engineering, and applied mathematics.Researchers and computational scientists who want to apply AI to accelerate their simulations.Engineers in oil & gas, energy, and manufacturing industries exploring AI-enabled process automation.Professionals and educators looking for real-world AI projects rooted in scientific principles.Why This Book Matters Scientific computing has long relied on deterministic models. But as systems grow complex and data-rich, AI becomes the new computational partner—not replacing equations, but empowering them to think, adapt, and learn. This book captures that transformation: the moment when the laws of physics meet the logic of machine learning, and together, they shape the future of discovery, innovation, and design.
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AR$417.361
49% OFF
AR$214.032

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