If you want an exact sample, try doing
But note that this returns an Array and not an
As for why the
a.sample(false, 0.1) doesn't return the same sample size: that's because spark internally uses something called Bernoulli sampling for taking the sample. The
fraction argument doesn't represent the fraction of the actual size of the RDD. It represent the probability of each element in the population getting selected for the sample, and as wikipedia says:
Because each element of the population is considered separately for the sample, the sample size is not fixed but rather follows a binomial distribution.
And that essentially means that the number doesn't remain fixed.
If you set the first argument to
true, then it will use something called Poisson sampling, which also results in a non-deterministic resultant sample size.
If you want stick with the
sample method, you can probably specify a larger probability for the
fraction param and then call
take as in:
This should, most of the time, but not necessarily always, result in the sample size of 1000. This could work if you have a large enough population.