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    SciML Workshop logo
    SciML Workshop
    • SciMLWorkshop: Workshop Materials for Training in Scientific Computing and Scientific Machine Learning (SciML)
    • Exercises
      • ModelingToolkit Simple Chemical Reaction ODE (B)
      • Investigating Sources of Randomness and Uncertainty in a Stiff Biological System (B)
      • Fitting Hybrid Delay Pharmacokinetic Models with Automated Responses (B)
      • Differential-Algebraic Equation Modeling of a Double Pendulum (B)
      • RLC Circuit Acausal Model (I)
      • Performance Optimizing and Parallelizing Semilinear PDE Solvers (I)
      • Global Parameter Sensitivity and Optimality with GPU and Distributed Ensembles (B)
      • Training Neural Stochastic Differential Equations with GPU acceleration (I)
      • Controlling a DC Motor (E)
    • Selected Solutions
      • ModelingToolkit Simple Chemical Reaction ODE (B)
      • Investigating Sources of Randomness and Uncertainty in a Stiff Biological System (B)
      • Fitting Hybrid Delay Pharmacokinetic Models with Automated Responses (B)
      • Differential-Algebraic Equation Modeling of a Double Pendulum (B)
      • RLC Circuit Acausal Model (I)
      • Performance Optimizing and Parallelizing Semilinear PDE Solvers (I)
      • Global Parameter Sensitivity and Optimality with GPU and Distributed Ensembles (B)
      • Training Neural Stochastic Differential Equations with GPU acceleration (I)
        • Part 1: Constructing and Training a Basic Neural ODE
        • Part 2: GPU-accelerating the Neural ODE Process
        • Part 3: Defining and Training a Mixed Neural ODE
        • Part 4: Constructing a Basic Neural SDE
        • Part 5: Optimizing the training behavior with minibatching (E)
      • Controlling a DC Motor (E)
    Version
    • Selected Solutions
    • Training Neural Stochastic Differential Equations with GPU acceleration (I)
    • Training Neural Stochastic Differential Equations with GPU acceleration (I)
    Edit on GitHub

    Training Neural Stochastic Differential Equations with GPU acceleration (I)

    Part 1: Constructing and Training a Basic Neural ODE

    Part 2: GPU-accelerating the Neural ODE Process

    Part 3: Defining and Training a Mixed Neural ODE

    Part 4: Constructing a Basic Neural SDE

    Part 5: Optimizing the training behavior with minibatching (E)

    « Global Parameter Sensitivity and Optimality with GPU and Distributed Ensembles (B)Controlling a DC Motor (E) »

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