1929502_9383_131

PurdueX: Introduction to Scientific Machine Learning

2.079,00 

Learn the basics of machine learning with hands-on practical examples on engineering applications.

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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.

At a glance

  • Institution: PurdueX
  • Subject: Engineering
  • Level: Advanced
  • Prerequisites:
    • Working knowledge of multivariate calculus and basic linear algebra
    • Basic Python knowledge
    • Knowledge of probability and numerical methods for engineering would be helpful, but not required
  • Language: English
  • Video Transcript: English
  • Associated skills:Bayesian Inference, K-Means Clustering, Teaching, State Space, Markov Chain Monte Carlo, Principal Component Analysis, Data Analysis, Deep Learning, Physics, Artificial Neural Networks, Sampling (Statistics), Data Science, Linear Regression, Machine Learning, Unsupervised Learning, Convolutional Neural Networks, Gaussian Process, Probability Theories, Propagation Of Uncertainty, Logistic Regression

What you’ll learn

After completing this course, you will be able to:

  • Represent uncertainty in parameters in engineering or scientific models using probability theory
  • Propagate uncertainty through physical models to quantify the induced uncertainty in quantities of interest
  • Solve basic supervised learning tasks, such as: regression, classification, and filtering
  • Solve basic unsupervised learning tasks, such as: clustering, dimensionality reduction, and density estimation
  • Create new models that encode physical information and other causal assumptions
  • Calibrate arbitrary models using data
  • Apply various Python coding skills
  • Load and visualize data sets in Jupyter notebooks
  • Visualize uncertainty in Jupyter notebooks
  • Recognize basic Python software (e.g., Pandas, numpy, scipy, scikit-learn) and advanced Python software (e.g., pymc3, pytorch, pyrho, Tensorflow) commonly used in data analytics

Additional information

Weeks

16

Language

English

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