SenseNet is a sensorimotor and touch simulator to teach AIs how to interact with their environments via sensorimotor systems and touch neurons. SenseNet is meant as a research framework for machine learning researchers and theoretical computational neuroscientists.
SenseNet can be used in reinforcement learning environments. The original code used OpenAI's gym as the base and so any code written for gym can be used with little to no tweaking of your code. Oftentimes you can just replace gym with sensenet and everything will work. Additionally, SenseNet can be used
We currently support Mac OS X and Linux (ubuntu 14.04), Windows mostly works, but we don't have a windows developer. We also have docker and vagrant/virtualbox images for you to run an any platform that supports them.
git clone http://github.com/jtoy/sensenet you can run "pip install -r requirements.txt" to install all the python software dependencies pip install -e '.[all]'
pip install sensenet
python examples/agents/reinforce.py -e TouchWandEnv-v0
I have made and collected thousands of different objects to manipulate in the simulator. You can use the SenseNet dataset or your own dataset. Download the full dataset at https://sensenet.ai
we use pytest to run tests, to tun the tests just type "cd tests && pytest" from the root directory
Included with SenseNet are several examples for competing on the benchmark "blind object classification" There is a pytorch example and a tensorflow example. to run them: cd agents && python reinforce.py
to see the graphs: tensorboard --logdir runs then go to your browser at http://localhost:6000/ python setup.py register sdist upload