# ap stats need help

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Continuous Random Variable, I Let X be a random number between 0 and 1 produced by the idealized uniform random number generator described. Find the following probabilities:
a.P(0¡ÜX¡Ü0.4)

b.P(0.4¡ÜX¡Ü1)

c.P(0.3¡ÜX0.5)

d.P(0.3(<X<0.5)

e.P(0.226¡ÜX¡Ü0.713)

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