Skip to content

yuntianyi-chen/DoppelTest

 
 

Repository files navigation

DoppelTest

Introduction

DoppelTest is a Python framework implemented to evaluate a novel autonomous driving software (ADS) testing approach discussed in the paper titled Doppelganger Test Generation for Revealing Bugs in Autonomous Driving Software. This research artifact implements a framework that orchestrates multiple instances of the same ADS and generates virtual scenarios with those instances. Since all vehicles in the virtual scenario are controlled by different instances of the ADS under test, any actual violation that occurs by or among them inherently reveals ADS misbehavior, thus revealing ADS bugs.

The documentation of DoppelTest can be found under docs directory, you can build the it locally by running cd docs && make html.

The DOI for this repository is: DOI

Hardware and Software Requirements

  • Intel Core i9 12900K (16-core)

  • 64 GB memory and above

  • Ubuntu 18.04 and above

  • Docker-CE version 19.03 and above

  • Python 3.8.10 and above

  • NVIDIA RTX 3090 and above (Optional)

  • NVIDIA driver version 455.32.00 and above (Optional)

  • NVIDIA Container Toolkit (Optional)

Additional Information

Doppelganger Testing relies on simultaneously running multiple instances of the same ADS, therefore the requirement for running DoppelTest varies based on 1) the minimum requirement of the ADS and 2) number of instances you wish to run. Note the prerequisites listed above are mostly the same as the minimum requirements to run the ADS under test with the exception of better CPU and memory due to the need to concurrently run multiple instances. We have tested DoppelTest on personal workstations with the following configuration:

  • C1 - 5 instances on Intel Core i9 12900KF (16-core) with 32 GB DDR5 memory, equipped with NVIDIA GeForce 3090 Ti.

  • C2 - 10 instances on Intel Core i9 12900K (16-core) with 128 GB DDR4 memory, equipped with NVIDIA GeForce 3090.

Installing

In this section we will be discussing steps to replicate the results discussed in the paper

INSTALLING Baidu Apollo

  1. Download the DoppelTest version of Apollo 7.0 from https://doi.org/10.5281/zenodo.7622089

In this forked version, we made slight adjustments that are not related to the AD stack

  1. At the root directory of Baidu Apollo, create directories data, data/log, data/bag, data/core by running mkdir data data/log data/bag data/core

This step is necessary for DoppelTest running on the host machine to delete Apollo's log files. Our framework restarts modules being tested after every scenario, which creates a large number of unnecessary log files.

Since a lot of commands are executed as root inside of the Docker container, if those directories are created inside of the container, DoppelTest may not be able to remove those directories.

  1. At the root directory of Baidu Apollo, start up Apollo container via ./docker/scripts/dev_start.sh -l

  2. Find the name of the container via docker ps -a

  3. Enter the container in root mode via docker exec -it apollo_dev_your_name /bin/bash

Remember to replace apollo_dev_your_name with the container's actual name

  1. In the container, build Apollo via ./apollo.sh build

INSTALLING DoppelTest

  1. Install the required Python libraries via pip install -r requirements.txt

If you run into issues when installing Shapely library, please first run sudo apt-get install libgeos-dev to install its dependencies.

  1. Replace location of directories in config.py

    APOLLO_ROOT  = '/xxx/xxx/apollo'
    DT_ROOT      = '/xxx/xxx/DoppelTest'
  2. Verify the framework is runnable via python test_main.py

You should start seeing 3 Apollo instances being started and the scenario is visualizable via a browser. DoppelTest will provide the URL to visualize each instance in the terminal.

  1. Start the framework via python main_ga.py

After running DoppelTest for extended period of time, you should see record file of scenarios generated under data/records. This is also the step to replicate the results presented in the paper.

Citing

If you use the project in your work, please consider citing the following work:

@inproceedings{doppeltest,
	address = {Melbourne, Australia},
	title = {Doppelganger {Test} {Generation} for {Revealing} {Bugs} in {Autonomous} {Driving} {Software}},
	author = {Huai, Yuqi and Chen, Yuntianyi and Almanee, Sumaya and Ngo, Tuan and Liao, Xiang and Wan, Ziwen and Chen, Qi Alfred and Garcia, Joshua},
    booktitle = {{ACM}/{IEEE} 45th {International} {Conference} on {Software} {Engineering}},
	year = {2023},
}

About

No description, website, or topics provided.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 100.0%