Skip to content

Open source hardware and software platform to build a small scale self driving car.

License

Notifications You must be signed in to change notification settings

aidonchuk/donkeycar

 
 

Repository files navigation

donkeycar: a python self driving library

Build Status CodeCov PyPI version Py versions

Donkeycar is minimalist and modular self driving library for Python. It is developed for hobbyists and students with a focus on allowing fast experimentation and easy community contributions.

Quick Links

donkeycar

Use Donkey if you want to:

  • Make an RC car drive its self.
  • Compete in self driving races like DIY Robocars
  • Experiment with autopilots, mapping computer vision and neural networks.
  • Log sensor data. (images, user inputs, sensor readings)
  • Drive your car via a web or game controller.
  • Leverage community contributed driving data.
  • Use existing CAD models for design upgrades.

Get driving.

After building a Donkey2 you can turn on your car and go to http://localhost:8887 to drive.

Modify your cars behavior.

The donkey car is controlled by running a sequence of events

#Define a vehicle to take and record pictures 10 times per second.

import time
from donkeycar import Vehicle
from donkeycar.parts.cv import CvCam
from donkeycar.parts.datastore import TubWriter
V = Vehicle()

IMAGE_W = 160
IMAGE_H = 120
IMAGE_DEPTH = 3

#Add a camera part
cam = CvCam(image_w=IMAGE_W, image_h=IMAGE_H, image_d=IMAGE_DEPTH)
V.add(cam, outputs=['image'], threaded=True)

#warmup camera
while cam.run() is None:
    time.sleep(1)

#add tub part to record images
tub = TubWriter(path='./dat',
          inputs=['image'],
          types=['image_array'])
V.add(tub, inputs=['image'], outputs=['num_records'])

#start the drive loop at 10 Hz
V.start(rate_hz=10)

See home page, docs or join the Slack channel to learn more.

About

Open source hardware and software platform to build a small scale self driving car.

Resources

License

Stars

Watchers

Forks

Packages

No packages published

Languages

  • Python 80.4%
  • JavaScript 14.4%
  • HTML 4.2%
  • CSS 0.5%
  • Shell 0.4%
  • Dockerfile 0.1%