Scalable Bayesian Modelling: An updated benchmark
For a detailed understanding of this work, its motivation and next steps, please refer to this blog post.
conda env create -f environment.yaml
conda activate sbm
In the folder notebooks
, you can find the file template.ipynb
where you can add the code to get your data and models to create a benchmark for your specific use case. Cells preceded by the message ✍🏽 User input required should be filled, the other cells can be optionally modified according to your needs.
The sampling results are saved by default in the path data/results
.
The folder also has the file example.ipynb
, with an example using the template.
The template can be executed in Google Colab. Before executing the code, follow these steps:
- Change runtime in
Runtime > Change runtime type
if you want to execute the notebook using GPU. - Uncomment the first cell which makes sure Colab has the correct versions and required files.
- Set the variable
output_path
todata/results
or to a folder you know exists in the environment.