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Revision as of 03:02, 16 October 2023

iN-RACS

ES/S-A Platform iN-RACS

Developer Netroda Technologies
Insitiute for Research in Technical Analytics (INRITA)
Type Software Interface
Products
  • ES/S-B ARITA
    • NT-INCORP
Initial Release 2022 (2017 as ADPP)
Platform Extensible Services / Server for Business

General

IN-RACS (INCORP-Risk Assesment on Customer Services) is a integrated module of NT-INCORP that enables heuristic recognition of suspected negative customers before order award.

Based on a limited set of information, IN-RACS can accurately predict a willingness to commit award fraud, or failure to accept received invoices. The Algorithm has been tuned with scientifically proven data of behavioural analysis in diverse social groups.

Theory of operation

Generally, the iN-RACS database contains options for a customer, these options are linked to specific factors, including general lawfullness, probabilities of committing of a crime, gender- and age specific behaviours, presumed overall intelligence, and more.

Fields

Name Purpose
Profession Describes the customers profession (Alma mater, Job Status and Position)
Gender Describes the customers prominent biological gender
Age The customers age in years