Awesome
ProbAI 2019
Recorded lectures and tutorials, slides and program code from the very first Nordic Probabilistic AI School (ProbAI 2019).
Lectures and Tutorials
- Day 1 (June 3):
- Day 2 (June 4):
- Day 3 (June 5):
- Day 4 (June 6):
- Day 5 (June 7):
Google Colab
If your local computer doesn't have all the software packages and you are not able to finish the installation, you can try Google Colab.
Start the Google Colab notebook with the following line to install the necessary packages !pip install -q --upgrade pyro-ppl torch
.
- Day 1 -
students_PPLs_Intro.ipynb
- Day 1 -
students_Bayesian_regression.ipynb
- Day 2 -
students_simple_model.ipynb
- Day 2 -
students_lin_reg.ipynb
- Day 3 -
student_simple_model.ipynb
- Day 3 -
student_BBVI.ipynb
- Day 3 -
Bayesian_linear_regression.ipynb
- Day 3 -
VAE.ipynb
- Day 3 -
FA.ipynb
Talks
- Day 2:
- Evolving Deep Neural Networks by Keith L. Downing
- Day 3:
- Value of Information by Jo Eidsvik
- Bayesian Methods for Rank and Preference Data: From Recommender Systems to Cancer Genomics by Valeria Vitelli
- Day 4:
- Combining Model and Parameter Uncertainty in BNNs by Aliaksandr Hubin