# Generating a skewed distribution given a size, lower bound, and lower bound

How do you generate a skewed distribution with just the size, lower bound, and upper bound? Initially, there is no data and I think I just need to generate data randomly but after that how do you make it skewed?

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Any asymmetric distribution is skewed, you just have to pick one and go with it. One of the easiest choices would be to use a triangular distribution. If `U` is a uniformly distributed random number between 0 and 1, `low` is the lower bound, and `high` is the upper bound, you can generate random variates `X` which have a maximally left-skewed right-triangular distribution with

``````X = low + (high - low) * sqrt(U)
``````

For a maximally right-skewed version

``````X = low + (high - low) * (1 - sqrt(U))
``````

For a less skewed result, use the generalized triangle generation algorithm from the linked Wikipedia page. As long as the mode of the triangle is not the mid-range value, the result will be skewed. As the mode is moved closer to either end of the range the distribution becomes more skewed

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