Agentic AI for Digital Twin
Alexander Timms, Abigail Langbridge, et al.
AAAI 2025
This demo paper presents a design and implementation of a system AnomalyKiTS for detecting anomalies from time series data for the purpose of offering a broad range of algorithms to the end user, with special focus on unsupervised/semi-supervised learning. Given an input time series, AnomalyKiTS provides four categories of model building capabilities followed by an enrichment module that helps to label anomaly. AnomalyKiTS also supports a wide range of execution engines to meet the diverse need of anomaly workloads such as Serveless for CPU intensive work, GPU for deep-learning model training, etc.
Alexander Timms, Abigail Langbridge, et al.
AAAI 2025
Dzung Phan, Lam Nguyen, et al.
SDM 2024
Amadou Ba, Christopher Lohse, et al.
INFORMS 2022
Yannis Katsis, Maeda Hanafi, et al.
AAAI 2022