In computational materials science, mechanical properties are typically extracted from simulations by means of analysis routines that seek to mimic their experimental counterparts. However, simulated data often exhibit uncertainties that can propagate into final predictions in unexpected ways.Thus, modelers require data analysis tools that (i) address the problems posed by simulated data, and (ii) facilitate uncertainty quantification. In this manuscript, we discuss three case studies in materials modeling where careful data analysis can be leveraged to address specific instances of these issues. As a unifying theme, we highlight the idea that attention to physical and mathematical constraints surrounding the generation of computational data can significantly enhance its analysis. I ncreasingly, the computational materials science community is embracing uncertainty quantification (UQ) as a necessary component of any modeling workflow that aims to provide actionable information for industry.1-4 In many instances, this change has been driven by the observation that computational predictions, while less expensive than their experimental counterparts, are affected by uncertainties not typically encountered in laboratory settings. As a result, there has been significant work focused on identifying and quantifying uncertainties associated with simulation tools per se. 5-7 Despite this, however, much less effort has been devoted to understanding the impact of these uncertainties on subsequent analyses and usage models. Critically, such issues must be addressed if the benefits of computational approaches are to be fully realized. Within this greater context, data analysis remains a fundamental and sometimes overlooked task that can contribute to uncertainties in ways that are difficult to quantify, if