Introduction to Scientific Machine Learning
About this Course
This course provides an introduction to data analytics for individuals with no prior knowledge of data science or machine learning. The course starts with an extensive review of probability theory as the language of uncertainty, discusses Monte Carlo sampling for uncertainty propagation, covers the basics of supervised (Bayesian generalized linear regression, logistic regression, Gaussian processes, deep neural networks, convolutional neural networks), unsupervised learning (k-means clustering, principal component analysis, Gaussian mixtures) and state space models (Kalman filters). The course also reviews the state-of-the-art in physics-informed deep learning and ends with a discussion of automated Bayesian inference using probabilistic programming (Markov chain Monte Carlo, sequential Monte Carlo, and variational inference). Throughout the course, the instructor follows a probabilistic perspective that highlights the first principles behind the presented methods with the ultimate goal of teaching the student how to create and fit their own models.Created by: Purdue University
Level: Advanced

Related Online Courses
In this first course in the program Solar Energy you will be introduced to the technology that converts solar energy into electricity. The role of solar energy in both the energy transition towards... more
According to the United Nations, urbanization and population growth could result in an increase of 2.5 billion people into urban populations by 2050, with associated impacts ranging from increased... more
This course will teach you how to digitalize the 'conventional' grid and which digital technologies you can use for this, including but not limited to, AI, machine learning, blockchain and computer... more
¿Sabes cuáles son los desafíos a los que se enfrentan las ciudades relativos al agua? ¿Sabes cuáles son las acciones que puedes realizar para la mejor gestión del agua en tu ciudad? Este curso... more
Engineers in the automotive industry are required to understand basic safety concepts. With increasing worldwide efforts to develop connected and self-driving vehicles, traffic safety is facing... more