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Randomness / Cryptography / Stochastic simulation / Information theory / Random number generation / Pseudorandomness / Pseudorandom number generator / Monte Carlo method / Sampling / Random variable / Random seed / Probability distribution
Date: 2012-10-31 21:30:08
Randomness
Cryptography
Stochastic simulation
Information theory
Random number generation
Pseudorandomness
Pseudorandom number generator
Monte Carlo method
Sampling
Random variable
Random seed
Probability distribution

Random NumbersUsing PRG .......

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