Use the cumulative distribution function from Problem 20 to find the value of a that satisfies each equation.
(A)
(B)
20. Find and graph the cumulative distribution function associated with the function in Problem 10.
10.
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Calculus for Business, Economics, Life Sciences, and Social Sciences - Boston U.
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