Pyod - A Python Toolkit for Scalable Outlier Detection (Anomaly Detection)

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Important Notes: PyOD contains some neural network based models, e.g., AutoEncoders, which are implemented in keras. However, PyOD would NOT install keras and tensorflow automatically. This would reduce the risk of damaging your local installations. You are responsible for installing keras and tensorflow if you want to use neural net based models. An instruction is provided here. Anomaly detection resources, e.g., courses, books, papers and videos.

http://pyod.readthedocs.io
https://github.com/yzhao062/Pyod

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