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AWS DeepRacer - the fastest way to get rolling with machine learning

 2 years ago
source link: https://aws.amazon.com/deepracer/?nc2=h_ql_prod_ml_dr
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In pole position to learn reinforcement learning

AWS DeepRacer gives you an interesting and fun way to get started with reinforcement learning (RL). RL is an advanced machine learning (ML) technique that takes a very different approach to training models than other machine learning methods. Its super power is that it learns very complex behaviors without requiring any labeled training data, and can make short term decisions while optimizing for a longer term goal.

Simulator

Build models in Amazon SageMaker and train, test, and iterate quickly and easily on the track in the AWS DeepRacer 3D racing simulator.
Learn more »

Experience the thrill of the race in the real-world when you deploy your reinforcement learning model onto AWS DeepRacer.
Learn more »

League

Compete in the world’s first global, autonomous racing league, to race for prizes and glory and a chance to advance to the Championship Cup.
Learn more »

A fun way to learn machine learning

Get started with machine learning quickly with hands-on tutorials that help you learn the basics of machine learning, start training reinforcement learning models and test them in an exciting, autonomous car racing experience.

Take the E-Learning Course »

Experiment and grow

Test these new found skills in the AWS DeepRacer 3D racing simulator.  Experiment with multiple sensor inputs, the latest reinforcement learning algorithms, neural network configurations and simulation to-real domain transfer methods.

Start Racing »

Community and competition

The AWS DeepRacer League provides an opportunity for you to compete for prizes and meet fellow machine learning enthusiasts, online and in person. Share ideas and insights on how to succeed and create your own private virtual race.

Learn more »

AWS Virtual Circuit
Race online

Join the global AWS DeepRacer League. Compete in time trial races and take on new challenges such as head-to-head racing.

Start racing for free »

Virtual Community Races
Race in a league of your own

With community races you can host your own races to challenge your colleagues; or share publicly with ML enthusiasts around the globe. 

Create your own race now »

Enterprise Events
Race with your colleagues

AWS DeepRacer Enterprise events are the fastest way to get your company rolling on their machine learning journey.

Get started with an AWS DeepRacer Event »

Introducing the AWS DeepRacer Evo

AWS DeepRacer Evo is the next generation in autonomous racing. It comes fully equipped with stereo cameras and LiDAR sensor to enable object avoidance and head-to-head racing, giving developers everything they need to take their racing to the next level. In object avoidance races, developers use the sensors to detect and avoid obstacles placed on the track. In head-to-head, developers race against another DeepRacer on the same track and try to avoid it while still turning in the best lap time. Forward facing left and right cameras make up the stereo cameras, which helps the car learn depth information in images. This information can then be used to sense and avoid objects being approached on the track. The LiDAR sensor is backward facing and detects objects behind and beside the car.

Under the hood

The AWS DeepRacer Evo car includes the original AWS DeepRacer car, an additional 4 megapixel camera module that forms stereo vision with the original one, a scanning LiDAR, a shell that can fit both the stereo camera and LiDAR, and a few accessories and easy-to-use tools for a quick installation.

CAR 18th scale 4WD with monster truck chassis
CPU Intel Atom™ Processor
MEMORY 4GB RAM
STORAGE 32GB (expandable)
WI-FI 802.11ac
CAMERA Stereo 4 MP cameras with MJPEG
LIDAR Sensor 360 Degree 12 Meters Scanning Radius LIDAR Sensor
SOFTWARE Ubuntu OS 16.04.3 LTS, Intel® OpenVINO™ toolkit, ROS Kinetic
DRIVE BATTERY 7.4V/1100mAh lithium polymer
COMPUTE BATTERY 13600mAh USB-C PD
PORTS 4x USB-A, 1x USB-C, 1x Micro-USB, 1x HDMI
SENSORS Integrated accelerometer and gyroscope

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