Graph Autoencoders for Business Process Anomaly Detection
siyu huo, Hagen Völzer, et al.
BPM 2021
Forecasting is a key AI component that drives various supply chain use cases such as inventory management, markdown optimization, etc. In general, supply chain use cases deal with large-scale data that needs sophisticated distributed forecasting techniques. These techniques involve a lot of complex steps such as pipeline construction, set-up/execution across multiple distributed environments (ray, spark), HPO, right model selection, backtesting, evaluation, etc. Manually coding and orchestrating these tasks is highly time-consuming and error-prone. To tackle this, we propose our in-house built YAML-driven orchestration engine that automates and eases various complex distributed forecasting tasks for faster supply chain decisions.
siyu huo, Hagen Völzer, et al.
BPM 2021
Amadou Ba, Christopher Lohse, et al.
INFORMS 2022
Neil Thompson, Martin Fleming, et al.
IAAI 2024
Owen Cornec, Rahul Nair, et al.
NeurIPS 2021