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Augmentation of Experimental Design Using Statistical Power

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Figure

Figure 1: Graphical explanation of statistical power.
Figure 5: Figure showing the relationship of power and effect size for simulation experiment.
Figure 7: Graph between sample size and LSV for CPU variable.
Figure 8.
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