Published September 25, 2024
| Version
Demonstrators for 1.1.0
Python Library
Restricted
Kernel Change-Point Detection
Owner
Description
This algorithm takes pre-processed (interpolated to a fixed time grid, normalized, etc.) and offline (not streaming) multidimensional time series data and runs linear kernel anomaly/change-point detection on it in order to output a list of likely anomaly/change-points in time. The method is based on results in Arlot et al. (2019).
Documentations
Methodological Guidelines
Scientific contribution
Demonstrator
A restricted demonstrator is available. It relies on a time-series use-case.
Support
Support for Kernel Change-Point Detection must be obtained by sending an email to support@confiance.ai
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Files
Files
Additional details
- Functional maturity
- Technological maturity
Trustworthy Attributes
Reliability
Robustness
Replicability
Engineering roles
Data Engineer
Engineering activities
Use cases
Time series
Functional Set
Data Life cycle