dalex: Responsible Machine Learning with Interactive Explainability and Fairness in Python
Baniecki, Hubert, Kretowicz, Wojciech, Piatyszek, Piotr, Wisniewski, Jakub, Biecek, Przemyslaw
Their black-box nature leads to opaqueness debt phenomenon inflicting increased risks of discrimination, lack of reproducibility, and deflated performance due to data drift. To manage these risks, good MLOps practices ask for better validation of model performance and fairness, higher explainability, and continuous monitoring. The necessity of deeper model transparency appears not only from scientific and social domains, but also emerging laws and regulations on artificial intelligence. To facilitate the development of responsible machine learning models, we showcase dalex, a Python package which implements the model-agnostic interface for interactive model exploration. It adopts the design crafted through the development of various tools for responsible machine learning; thus, it aims at the unification of the existing solutions. This library's source code and documentation are available under open license at https://python.drwhy.ai/.
Dec-28-2020
- Country:
- Europe > Poland
- Masovia Province > Warsaw (0.05)
- North America > United States
- New York > New York County > New York City (0.05)
- Europe > Poland
- Genre:
- Research Report (0.51)
- Technology: