Neural Ordinary Differential Equations: 33 Comprehensively Commented Python Implementations of Neural Ordinary Differential Equations(Neural ODEs)

Author:   Jamie Flux
Publisher:   Independently Published
ISBN:  

9798307616451


Pages:   264
Publication Date:   20 January 2025
Format:   Paperback
Availability:   Available To Order   Availability explained
We have confirmation that this item is in stock with the supplier. It will be ordered in for you and dispatched immediately.

Our Price $79.17 Quantity:  
Add to Cart

Share |

Neural Ordinary Differential Equations: 33 Comprehensively Commented Python Implementations of Neural Ordinary Differential Equations(Neural ODEs)


Overview

Experience the Cutting Edge of Continuous-Depth Machine LearningNeural Ordinary Differential Equations (ODEs) have emerged as a transformative technology, seamlessly blending the power of differential equations with the flexibility of deep learning. By treating neural network layers as continuous transformations, Neural ODEs open new frontiers for handling complex time-series data, modeling physical phenomena, and building generative systems with unprecedented smoothness and depth. This essential resource unravels the theory and practice behind these innovations, guiding you through 33 meticulously crafted algorithmic implementations in Python. Key Highlights Comprehensive Neural ODE Understanding Gain clear, in-depth knowledge of how Neural ODEs unify continuous mathematical formulations with state-of-the-art neural architectures. Master the differential equation viewpoint that treats layer depth as a continuous parameter rather than a discrete stack of layers. Time-Series Forecasting & Data Imputation Dive into chapters demonstrating how continuous-time models excel at dealing with irregularly sampled data, missing values, and challenging future prediction tasks. Advanced Flow-Based Methods Explore novel approaches such as Continuous Normalizing Flows to tackle density estimation with a smooth parametric trajectory from simple distributions to complex ones. Hamiltonian & Stochastic Neural ODEs Learn methods for long-term simulation stability, incorporating physics-based mechanics and handling intrinsic uncertainty in real-world dynamical systems. Surrogate Modeling for Complex Simulations See how Neural ODEs serve as powerful stand-ins for expensive physical or environmental simulations, drastically cutting compute time while retaining accuracy. Graph & Multiscale Methods Extend Neural ODEs to graph-structured data and multi-timescale processes, capturing both local interactions and broader temporal behavior. From fundamental time-series forecasting to meta-learning and active learning strategies, every algorithmic chapter is framed by its practical use cases. Each section is accompanied by step-by-step instructions to build, train, and deploy Neural ODE solutions, illustrating their far-reaching potential in science, finance, engineering, and beyond.

Full Product Details

Author:   Jamie Flux
Publisher:   Independently Published
Imprint:   Independently Published
Dimensions:   Width: 15.20cm , Height: 1.40cm , Length: 22.90cm
Weight:   0.358kg
ISBN:  

9798307616451


Pages:   264
Publication Date:   20 January 2025
Audience:   General/trade ,  General
Format:   Paperback
Publisher's Status:   Active
Availability:   Available To Order   Availability explained
We have confirmation that this item is in stock with the supplier. It will be ordered in for you and dispatched immediately.

Table of Contents

Reviews

Author Information

Tab Content 6

Author Website:  

Countries Available

All regions
Latest Reading Guide

NOV RG 20252

 

Shopping Cart
Your cart is empty
Shopping cart
Mailing List