ITEA is the Eureka Cluster on software innovation
ITEA is the Eureka Cluster on software innovation
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Anomaly Detector

Project
18022 IVVES
Description
  • Unsupervised algorithm, no need for labeled data
  • Algorithm is trained on normal state data, then used in unseen data to detect deviations
  • Applicable to streaming and offline datasets
Contact
Ekkono Solutions
Email
Rikard@ekkono.ai
Technical features

Input(s):

  • Regression datasets

Main feature(s):

  • Multi-variate algorithm that detects sudden or instantaneous deviations from a normal state
  • Monitors the health or performance of a device

Output(s):

  • Anomaly score between 0 and 1, indicating how likely (1) or unlikely (0) the observed data point is an anomaly
Integration constraints

The anomaly detector is part of the Ekkono SDK:

  • Modeling: .NET 2.0+ or Python 3.7+ (Windows, macOS, or Linux)
  • Deployment: C++17 (or C++14 with included MPark.Variant), delivered as source to be compiled by the customer
  • Integration will be done through Ekkono’s C++ API of the compiled library
Targeted customer(s)

Data Scientists, machine learning engineers, and software developers that want to run machine learning and anomaly detection on any type of device.

Conditions for reuse

Commercial license

Confidentiality
Public
Publication date
28-11-2022
Involved partners
Ekkono Solutions (SWE)