2 research outputs found
Massively Parallel Construction of Radix Tree Forests for the Efficient Sampling of Discrete Probability Distributions
We compare different methods for sampling from discrete probability
distributions and introduce a new algorithm which is especially efficient on
massively parallel processors, such as GPUs. The scheme preserves the
distribution properties of the input sequence, exposes constant time complexity
on the average, and significantly lowers the average number of operations for
certain distributions when sampling is performed in a parallel algorithm that
requires synchronization afterwards. Avoiding load balancing issues of na\"ive
approaches, a very efficient massively parallel construction algorithm for the
required auxiliary data structure is complemented