Course material for the introduction to probabilistic programming for scientific discovery held at the Lviv Data Science Summer School
The course is structured into 4 lectures of 90 minutes presentation time each with 2 coding tutorials for self-paced consumption. Further reading material and references to relevant papers are provided in the respective lectures and tutorials.
This course is based on the Julia programming language. If you have not yet worked with Julia, I'd highly encourage you to take a quick look at a tutorial, such as this one or the ones offered by the JuliaAcademy.
- Example applications of probabilistic programming
- Why do we even need probabilistic programming?
- Underlying theoretical ideas
- Approaches to inference
- Probabilistic Programming Frameworks
- Practical introduction to a probabilistic programming framework
- Bayesian deep learning
- Marrying deep learning frameworks with probabilistic programming systems for type 2 machine learning
- What types of simulators would I want to link to in scientific applications?
- Areas of application: Robotics, Physics, Engineering, Machine-learning based design