AI Technologies for Solving Ordinary Differential Equations
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Section 1 : Introduction
lecture 1: Introduction
lecture 2: Installing Anaconda
lecture 3: Install PyTorch CUDA
Section 2: Pytorch Basics
lecture 4: Deep Learning Theory
lecture 5: PyTorch Tensors Basics
lecture 6: Tensors to NumPy arrays
lecture 7: Backpropagation Theory
lecture 8: Backpropagation using PyTorch
Section 3: Solving ODE Using PINNs
Lecture 9: How PINNs Works
Lecture 10: Damped Harmonic Oscillator Exact Solution
Lecture 11: Coding the Exact Solution
Lecture 12: Define ODEs Deep Neural Network
Lecture 13: Set the Training Process
Lecture 14: Define the DNN Loss
Lecture 15: Results Evaluation
Lecture 16: Change the Loss Function
Lecture 17: Change the Network Size
Lecture 18: Full Code Summary
CODE
Section 4: Inverse Physics Informed Neural Networks (I-PINNs)
Lecture 19: Lets start with Inverse PINNs ODE
Lecture 20: Data Creation For the Inverse PINNs
Lecture 21: Define the IPINNS Network
Lecture 22: Set The Training Process
Lecture 23: Run the Training
Lecture 24: Results Review
Code
Section 5: Solving ODE Using Deep Neural Operator (DNO)
Lecture 25: Integration Data Creation
Lecture 26: Data Preprocessing Part 1
Lecture 27: Data Preprocessing Part 2
Lecture 28: Model Build Up
Lecture 29: Set The Training Process
Lecture 30: Results Review
CODE
Products
Course
AI Technologies for Solving Ordinary Differential Equations
AI Technologies for Solving Ordinary Differential Equations
AI Technologies for Solving Ordinary Differential Equations
Buy now
Learn more
Discussions
Section 1 : Introduction
lecture 1: Introduction
lecture 2: Installing Anaconda
lecture 3: Install PyTorch CUDA
Section 2: Pytorch Basics
lecture 4: Deep Learning Theory
lecture 5: PyTorch Tensors Basics
lecture 6: Tensors to NumPy arrays
lecture 7: Backpropagation Theory
lecture 8: Backpropagation using PyTorch
Section 3: Solving ODE Using PINNs
Lecture 9: How PINNs Works
Lecture 10: Damped Harmonic Oscillator Exact Solution
Lecture 11: Coding the Exact Solution
Lecture 12: Define ODEs Deep Neural Network
Lecture 13: Set the Training Process
Lecture 14: Define the DNN Loss
Lecture 15: Results Evaluation
Lecture 16: Change the Loss Function
Lecture 17: Change the Network Size
Lecture 18: Full Code Summary
CODE
Section 4: Inverse Physics Informed Neural Networks (I-PINNs)
Lecture 19: Lets start with Inverse PINNs ODE
Lecture 20: Data Creation For the Inverse PINNs
Lecture 21: Define the IPINNS Network
Lecture 22: Set The Training Process
Lecture 23: Run the Training
Lecture 24: Results Review
Code
Section 5: Solving ODE Using Deep Neural Operator (DNO)
Lecture 25: Integration Data Creation
Lecture 26: Data Preprocessing Part 1
Lecture 27: Data Preprocessing Part 2
Lecture 28: Model Build Up
Lecture 29: Set The Training Process
Lecture 30: Results Review
CODE
Learn more
Buy now
Section 1 : Introduction
3 Lessons
lecture 1: Introduction
lecture 2: Installing Anaconda
lecture 3: Install PyTorch CUDA
Section 2: Pytorch Basics
5 Lessons
lecture 4: Deep Learning Theory
lecture 5: PyTorch Tensors Basics
lecture 6: Tensors to NumPy arrays
lecture 7: Backpropagation Theory
lecture 8: Backpropagation using PyTorch
Section 3: Solving ODE Using PINNs
11 Lessons
Lecture 9: How PINNs Works
Lecture 10: Damped Harmonic Oscillator Exact Solution
Lecture 11: Coding the Exact Solution
Lecture 12: Define ODEs Deep Neural Network
Lecture 13: Set the Training Process
Lecture 14: Define the DNN Loss
Lecture 15: Results Evaluation
Lecture 16: Change the Loss Function
Lecture 17: Change the Network Size
Lecture 18: Full Code Summary
CODE
Section 4: Inverse Physics Informed Neural Networks (I-PINNs)
7 Lessons
Lecture 19: Lets start with Inverse PINNs ODE
Lecture 20: Data Creation For the Inverse PINNs
Lecture 21: Define the IPINNS Network
Lecture 22: Set The Training Process
Lecture 23: Run the Training
Lecture 24: Results Review
Code
Section 5: Solving ODE Using Deep Neural Operator (DNO)
7 Lessons
Lecture 25: Integration Data Creation
Lecture 26: Data Preprocessing Part 1
Lecture 27: Data Preprocessing Part 2
Lecture 28: Model Build Up
Lecture 29: Set The Training Process
Lecture 30: Results Review
CODE