Description
Detect anomalies in software stacks prior to deployment
Technology & data
*** check categry and function
Linked Case Studies
Case Study
H&R Block
H&R Block improves filing acceptance rates by 10% by monitoring the performance of its online tax filing application and user experience using machine learning
Case Study
ReTest
ReTest automates testing of Java based software application GUI with 82% accuracy using artificial neural networks and machine learning
Case Study
Trek Bicycle
Trek Bicycle reduces error rates in its website and bike sharing app services from 8-14% to <1% using machine learning to monitor anomalies in real-time
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Editor: sdg