Citations & Achievements ======================== ---- Citing PyOD ----------- `PyOD paper `_ is published in `JMLR `_ (machine learning open-source software track). If you use PyOD in a scientific publication, we would appreciate citations to the following paper:: @article{zhao2019pyod, author = {Zhao, Yue and Nasrullah, Zain and Li, Zheng}, title = {PyOD: A Python Toolbox for Scalable Outlier Detection}, journal = {Journal of Machine Learning Research}, year = {2019}, volume = {20}, number = {96}, pages = {1-7}, url = {http://jmlr.org/papers/v20/19-011.html} } or:: Zhao, Y., Nasrullah, Z. and Li, Z., 2019. PyOD: A Python Toolbox for Scalable Outlier Detection. Journal of machine learning research (JMLR), 20(96), pp.1-7. ---- Scientific Work Using or Referencing PyOD ----------------------------------------- We are appreciated that PyOD has been increasingly referred and cited in scientific works. Since its release, PyOD has been used in hundred of academic projects. See `an incomplete list here `_. ---- Featured Posts & Achievements ----------------------------- PyOD has been well acknowledged by the machine learning community with a few featured posts and tutorials. **Analytics Vidhya**: `An Awesome Tutorial to Learn Outlier Detection in Python using PyOD Library `_ **KDnuggets**: `Intuitive Visualization of Outlier Detection Methods `_ **KDnuggets**: `An Overview of Outlier Detection Methods from PyOD `_ **Towards Data Science**: `Anomaly Detection for Dummies `_ **Computer Vision News (March 2019)**: `Python Open Source Toolbox for Outlier Detection `_ **FLOYDHUB**: `Introduction to Anomaly Detection in Python `_ **awesome-machine-learning**: `General-Purpose Machine Learning `_ **Lecture on anomaly detection with PyOD by Dr.Hadi Fanaee**: `Anomaly Detection Lecture `_ **Workshop/Showcase using PyOD**: - `Detecting the Unexpected: An Introduction to Anomaly Detection Methods `_, *KISS Technosignatures Workshop* by Dr. Kiri Wagstaff @ Jet Propulsion Laboratory, California Institute of Technology. [`Workshop Video `_] [`PDF `_] **GitHub Python Trending**: - 2019: Jul 8th-9th, Apr 5th-6th, Feb 10th-11th, Jan 23th-24th, Jan 10th-14th - 2018: Jun 15, Dec 8th-9th **Miscellaneous**: - `PythonAwesome `_ - `awesome-python `_ - `PapersWithCode `_