IoT fusion is a streaming data fusion system that can create machine-learning-ready feature vectors out of various heterogeneous sensor streams (i.e. sensor data, weather forecasts and static data). The system consists of the following components:
- fusion (stream fusion component with integrated incremental learning models)
- modeling (separate modeling component based on Python's
scikit-learn
models,LightGBM
andxgboost
) - server (administrative server for communication with distributed fusion components)
- client (GUI for interaction with server nad further with fusion components)
Documentation is available here.
In case you use any of the components for your research, please refer to (and cite) the paper: