Application Ticket Classification
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A high frequency of issues can generate an overwhelming number of application tickets and incorrect delegation to teams to handle them. This leads to a spike in MTTR (mean time taken to resolve) and a dip in FCR (First Call Resolution). The solution mitigates these issues by training a multi-factor ML model that considers factors like ticket impact, urgency, priority, issue description and other features to predict the most relevant group to resolve a ticket. A pool of models is run through data to select the most generalizable model for the ticket classification task
Developer
Mphasis
HQ Location
Reston, VA
Year Founded
2007
Number of Employees
34

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