PWPAE-Concept-Drift-Detection-and-Adaptation and OASW-Concept-Drift-Detection-and-Adaptation

These are ecosystem siblings—both implement complementary concept drift detection approaches (PWPAE uses an ensemble framework while OASW uses a lightweight adaptation framework) for the same problem domain of streaming data, allowing practitioners to choose the method best suited to their computational constraints and use case.

Maintenance 0/25
Adoption 10/25
Maturity 16/25
Community 22/25
Maintenance 0/25
Adoption 8/25
Maturity 16/25
Community 19/25
Stars: 219
Forks: 46
Downloads:
Commits (30d): 0
Language: Jupyter Notebook
License: MIT
Stars: 55
Forks: 19
Downloads:
Commits (30d): 0
Language: Jupyter Notebook
License: MIT
Stale 6m No Package No Dependents
Stale 6m No Package No Dependents

About PWPAE-Concept-Drift-Detection-and-Adaptation

Western-OC2-Lab/PWPAE-Concept-Drift-Detection-and-Adaptation

Data stream analytics: Implement online learning methods to address concept drift and model drift in data streams using the River library. Code for the paper entitled "PWPAE: An Ensemble Framework for Concept Drift Adaptation in IoT Data Streams" published in IEEE GlobeCom 2021.

About OASW-Concept-Drift-Detection-and-Adaptation

Western-OC2-Lab/OASW-Concept-Drift-Detection-and-Adaptation

An online learning method used to address concept drift and model drift. Code for the paper entitled "A Lightweight Concept Drift Detection and Adaptation Framework for IoT Data Streams" published in IEEE Internet of Things Magazine.

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