CSE 221: Probabilistic Analysis of Computer Systems Topics covered: Stochastic processes Bernoulli and Poisson processes (Sec. 6.1,6.3.,6.4)
Introduction Example: Count the number of cars in a service station, each time a car departs: In between, two departures, some cars may arrive: Family of random variables:
Introduction (contd..) State space of the process: Parameter index:
Classification of processes Discrete vs. continuous state-space: Discrete vs. continuous parameter space: : Four types of processes:
Discrete-state, discrete-parameter process Example: Number of cars in a service station, at the departure of each car.
Discrete-state, continuous-parameter process Example: Number of cars in a service station at time t.
Continuous-state, discrete-parameter process Example: Average waiting time for service, at the departure of each car.
Continuous-state, continuous-parameter process Example: Total service time of all the cars in the system, at time t.
Bernoulli process Sequence or a family of Bernoulli random variables: Type: Parameters:
Bernoulli process (contd..) Random variable Yn – Number of successes in n trials: Random variable Ti – Number of trials until the first success:
Poisson process Count the number of event arrivals in an interval: Successive occurrence of events:
Poisson process (contd..) Superposition of Poisson processes:
Poisson process (contd..) Decomposition of a Poisson process: