Code generation of a trained reinforcement learning agent
21 次查看(过去 30 天)
显示 更早的评论
Hi,
i want to integrate a trained reinforcement learning agent to a microcontroller.
The training takes place in simulink.
For the codegeneration I am using this workaround: https://de.mathworks.com/matlabcentral/answers/757154-how-to-implement-reinforcement-learning-using-code-generation.
The microcontroller only has a single precision FPU.
How do I setup the agent, that the agent uses single precision and not double presicion, especially if the observations are also of the single data type?
0 个评论
采纳的回答
Sayan Saha
2022-3-7
Hi Allmo,
Since you are targeting a micro-controller to deploy code you can generate plain C/C++ code from the trained RL agent following the approaches in https://www.mathworks.com/help/reinforcement-learning/ug/deploy-trained-reinforcement-learning-agents.html. You'll have to use the library-free deep learning configuration object to generate plain C/C++ code as mentioned in https://www.mathworks.com/help/coder/ug/generate-generic-cc-code-for-deep-learning-networks.html :
dlconfig = coder.DeepLearningConfig(TargetLibrary='none');
While the input data to the entry-point function can be of non-single type, the data will always be casted to single precision before invoking the inference method on the network. You can specify the input data to be of single precision so that generated code will only have single precision data without any typecasting.
https://www.mathworks.com/support/search.html/videos/generate-generic-c-c-code-for-deep-learning-networks-in-simulink-1622706081351.html?fq[]=asset_type_name:video&fq[]=category:simulink/index&page=1 will be helpful if you are planning to deploy from Simulink directly.
~Sayan
3 个评论
Sayan Saha
2022-3-8
Great that it worked for you.
Single precision is the one common datatype across all different deep learning libraries like CuDNN/TensorRT/MKLDNN/... Many embedded targets also comes with only single precision FPUs. Even in MATLAB all the deep learning processing happens only in single precision.
We do support generating code for quantized deep learning networks as well where the datatype is INT8. You can find examples for both CPU and GPU target in https://www.mathworks.com/help/deeplearning/quantization.html however this is not yet supported for generic C/C++ codegen with TargetLibrary='none'.
~Sayan
更多回答(0 个)
另请参阅
类别
在 Help Center 和 File Exchange 中查找有关 Deep Learning Toolbox 的更多信息
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!