Machine learning and scientific computing have previously lived in separate worlds, with one focusing on training neural networks for applications like image processing and the other solving partial differential equations defined in climate models. However, a recently emerging discipline, called scientific machine learning or physics-informed learning, has been bucking the trend by integrating elements of machine learning into scientific computing workflows. These recent advances enhance both the toolboxes of scientific computing and machine learning practitioners by accelerating previous workflows and resulting in data-efficient learning techniques ("machine learning with small data").
This course will be a project-based dive into scientific machine learning, directly going to the computational tools to learn how the practical aspects of "doing" scientific machine learning. Students will get hands-on experience building programs which:
- Train data-efficient physics-informed neural networks
- Accelerate scientific models using surrogate methods like neural networks
- Solve hundred dimensional partial differential equations using recurrent neural networks
- Solve classical machine learning problems like image classification with neural ordinary differential equations
- Use machine learning and data-driven techniques to automatically discover physical models from data
The class will culminate with a project where students apply these techniques to a scientific problem of their choosing. This project may be tied to one's on-going research interest (this is recommended!).
Note that the difference from the recent 18.337: Parallel Computing and Scientific Machine Learning is that 18.337 focuses on the mathematical and computational underpinning of how software frameworks train scientific machine learning algorithms. In contrast, this course will focus on the applications of scientific machine learning, looking at the current set of methodologies from the literature and learning how to train these against scientific data using existing software frameworks. Consult 18.337 Lecture 15 as a sneak preview of the problems one will get experience solving.
Lectures: Monday, Tuesday, Wednesday, and Thursday 1-3pm (2-139). Jan 6 - 31. Note that there will be no lectures between 13-16.
Office Hours: There will be no formal office hours, however help can be found at the Julia Lab 32-G785 during most working hours.
Prerequisites: While this course will be mixing ideas from machine learning and numerical analysis, no one in the course is expected to have covered all of these topics before. Understanding of calculus, linear algebra, and programming is essential. While Julia will be used throughout the course, prior knowledge of Julia is not necessary, but the ability to program is.
Textbook & Other Reading: There is no textbook for this course or the field of scientific machine learning, so most of the materials will come from primary literature. For a more detailed mathematical treatment of the ideas presented in this course, consult the 18.337 course notes
Grading: The course is based around the individual projects. 33% of the grade is based on the writeup due on January 14th, 34% of the grade is based on the project writeup, and 33% is based on the project presentation.
Collaboration policy: Make an effort to solve the problem on your own before discussing with any classmates. When collaborating, write up the solution on your own and acknowledge your collaborators.
The goal of this course is to help the student get familiar with scientific machine learning in a way that could help their future research activities. Thus this course is based around the development of an individual project in the area of scientific machine learning.
Potential projects along these lines could be:
- Recreation of a parameter sensitivity study in a field like biology, pharmacology, or climate science
- Augmented Neural Ordinary Differential Equations
- Neural Jump Stochastic Differential Equations
- Acceleration methods for adjoints of differential equations
- Improved methods for Physics-Informed Neural Networks
- New applications of neural differential equations, such as optimal control
- Parallelized implicit ODE solvers for large ODE systems
- GPU-parallelized ODE/SDE solvers for small systems
or anything else appropriate. High performance implementations of library code related to scientific machine learning is also an appropriate topic, so new differential equation solvers or GPU kernels for accelerated mapreduce is a viable topic.
The project is split into 3 concrete steps.
The project proposal is a 2 page introduction to a potential project. The proposal should go over the background of the topic and the proposed methodology to investigate the subject. It should include at least 3 references and discuss alternative methods that could be used, and what the pros and cons would be.
You should be discuss the potential project with the instructor before submission!
Depending on the size of the course, everyone will be expected to give a 20 minute presentation on their project, introducing the class to their topic and their results. This will take place during the last week of the course.
The final project is a 8-20 page paper using the style template from the SIAM Journal on Numerical Analysis (or similar). The final project must include the code for the analysis as a reproducible Julia project with an appropriate Manifest. Model your paper on academic review articles (e.g. read SIAM Review and similar journals for examples).
By default these projects will be shared on the course website. You may choose to opt out if necessary. Additionally, projects focusing on novel research may consider submission to Arxiv.
A brief overview of the topics is as follows:
- Introduction to Scientific Machine Learning
- Machine Learning for SciML: how to think about, choose, and train universal approximators
- Introduction to Julia: package/project development and writing efficient code
- Applied numerical differential equations for scientific modeling
- Estimating model parameters from data
- Training neural networks to solve differential equations
- Event handling and complex phenomena in neural-embedded models
- Physics-Informed Neural Networks (PINNs)
- Neural differential equations and universal differential equations
- Acceleration of partial differential equations with neural network approaches
- Choosing neural networks, optimizers, learning rates, and diagnosing fitting issues
- Turn neural networks back into equations with SInDy
- Tweaking differential equation solvers to accelerate fitting
- Choices for gradient calculations: differences and understanding the appropriate methods to use
- Writing good code for GPU acceleration
- The Essential Tools of Scientific Machine Learning
- Workshop videos on Scientific Machine Learning
- SciML Scientific Machine Learning Software Organization
We will start off by setting the stage for the course. The field of scientific machine learning and its span across computational science to applications in climate modeling and aerospace will be introduced. The methodologies that will be studied, in their various names, will be introduced, and the general formula that is arising in the discipline will be laid out: a mixture of scientific simulation tools like differential equations with machine learning primitives like neural networks, tied together through differentiable programming to achieve results that were previously not possible.
Don't be worried if this introduction is fast: we'll be going back through each of these examples in detail, learning how to implement and use these methods. Today is mostly to introduce the motivation behind learning these methodologies.
It may be a good idea to learn how to write efficient code. Here's a few materials along those lines:
- Optimizing Serial Code
- Optimizing Your DiffEq Code
- Type-Dispatch Design: Post Object-Oriented Programming for Julia
- Performance Matters
- You're doing it wrong (B-heaps vs Binary Heaps and Big O)
In this lecture we start digging into the Julia programming language for scientific computing and machine learning. Using the Flux.jl deep learning and DifferentialEquations.jl differential equation solver libraries, we look at how to do basic tasks like define and train neural networks, along with fitting parameters in a differential equation.
- DiffEqFlux.jl README
- DiffEqFlux Blog Post
- Essential Tools of Scientific Machine Learning
- Universal Differential Equations for Scientific Machine Learning
In this lecture we start using the available tools to "do" scientific machine learning. This includes tasks like solving ordinary differential equations with neural networks, training neural ordinary differential equations, and training universal differential equations. We also look into the connection between convolutional neural networks and partial differential equations in order to establish an equivalence between the stencil operations in the two disciplines, and use this as a way to interpret trained equations.
- Optimizing Your DiffEq Code
- Solving Stiff Equations
- The Method of Lines (MOL) PDE Benchmarks from DiffEqBenchmarks.jl
Last time we ended with the relation between convolutional neural networks and PDEs. Given this relationship, and the general importance of PDEs in scientific models, we look into how to numerically solve partial differential equations. In these lectures we show how to discretize PDEs to turn them into ODEs, and then write code that gives optimized fast PDE solves. We end by noticing that the ODE solver choice can have a large effect on PDE performance, something that we will investigate in the following lecture.
Here we take a deep dive into the phenomena of stiffness. In the previous lecture we saw that changing our numerical solver gave a 20x performance increase, and stiffness explains why. We dig into the eigenvalue decomposition of the Jacobian and see how the condition number effects some numerical methods more than others, leading to a change in what methods will be good depending on this mysterious property. We then start to look practically about what to do in the case of stiffness. The analysis says we should use implicit methods, but those methods require a costly Newton step. However, by using things like sparsity detection and matrix coloring we can dramatically decrease the computational cost of implicit methods and rein in even large PDE solves.
Now we explore an interesting offshoot in scientific machine learning, stochastic differential equations and their utility in seemingly disconnected areas. The first thing to do is the neural stochastic differential equation, which is like the neural ordinary differential equation but allows for fitting random quanitites as well. While this is a clear win, a more subtle approach makes use of deep knowledge of partial differential equations. We explore the connection between (stochastic) optimal control and the Hamilton-Jacobi-Bellman equation and showcase that neural networks embedded within stochastic differential equations give a practical way of representing the forward-backward stochastic differential equation and solve the general control problem, which gives rise to a provably optimal neural network method for controlling drones, financial markets, etc. given some underlying model.
Automatic differentiation is a huge subject. This quick lecture dives into the main points:
- What is automatic differentiation?
- When is it useful?
- How do you choose between forward and reverse?
and describes AD in a fashion that should help a package user understand why they might have errors and how to handle using AD in a differentiable programming context.