StableSims is an open-source project aimed at simulating MakerDAO's Dai stablecoin system

Overview

StableSims

StableSims is an open-source research project aimed at optimizing MakerDAO Liquidations 2.0 incentive parameters (chip and tip).

This project is conducted through Blockchain @ Berkeley, and TAKES NO CREDIT FOR THE MAKER PROTOCOL LOGIC THAT WAS COPIED VERBATIM FROM THE SOURCE CODE.

You can find the summary of our findings in our research paper.

Getting started

  1. Make sure you have Docker installed.
  2. Clone the repo
  3. Create a docker container to run the simulations in:
docker run -it -v PATH_TO_REPO:/stablesims python:3.9 bash
  1. Inside the docker shell, run:
cd stablesims
pip install -r requirements.txt
  1. To run the simulation, run:
python run.py
Owner
Blockchain at Berkeley
Berkeley's hub for blockchain innovation
Blockchain at Berkeley
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