Niamh Broderick

Technology
18 May 2023
Sensitivity analysis
This blog explains sensitivity analysis, which is a useful data science technique for assessing the impact of different variables on an outcome metric.
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Data
Technology
4 February 2022
How we validated our handling time data
We make lots of decisions based on data from customer support. We need to make sure we can trust this data. In this post, Niamh explains how her team validated the data.