PPL Bench is a new benchmark framework for evaluating probabilistic programming languages (PPLs).
- Enter a virtual (or conda) environment
- Install PPL Bench core via pip:
pip install pplbench
- Install PPLs that you wish to benchmark. For PPL-specific instructions, see Installing PPLs. You could also run the following command to install all PPLs that are currently supported by PPL Bench (except for Jags):
pip install pplbench[ppls]
Alternatively, you could also install PPL Bench from source. Please refer to Installing PPLs for instructions.
Let's dive right in with a benchmark run of Bayesian Logistic Regression. To run this, you'll need to install PyStan (if you haven't already):
pip install pystan==2.19.1.1
Then, run PPL Bench with example config:
pplbench examples/example.json
This will create a benchmark run with two trials of Stan on the Bayesian Logistic Regression model. The results of the run are saved in the outputs/
directory.
This is what the Predictive Log Likelihood (PLL) plot should look like:
Please see the examples/example.json file to understand the schema for specifying benchmark runs. The schema is documented in pplbench/main.py and can be printed by running the help command:
pplbench -h
A number of models is available in the pplbench/models
directory and the PPL implementations are available in the pplbench/ppls
directory.
Please feel free to submit pull requests to modify an existing PPL implementation or to add a new PPL or model.
For more information about PPL Bench, refer to
See the CONTRIBUTING.md file for how to help out.
This source code is licensed under the MIT license found in the LICENSE file in the root directory of this source tree.