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Queuing Theory For Dummies. Jean-Yves Le Boudec. All You Need to Know About Queuing Theory. Queuing is essential to understand the behaviour of complex computer and communication systems In depth analysis of queuing systems is hard Fortunately, the most important results are easy
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Queuing TheoryFor Dummies Jean-Yves Le Boudec 1
All You Need to Know About Queuing Theory • Queuing is essential to understand the behaviour of complex computer and communication systems • In depth analysis of queuing systems is hard • Fortunately, the most important results are easy • We will study this topic in two modules • 1. simple concepts (this module) • 2. queuing networks (later) 2
1. Deterministic Queuing • Easy but powerful • Applies to deterministic and transient analysis • Example: playback buffer sizing 3
Solution of Playback Delay Pb bits A(t) A’(t) D(t) d(t) (D2): r (t - d(0) - D) (D1): r(t - d(0) + D) time d(0) - D d(0) d(0) + D A. 5
2. Operational Laws • Intuition: • Say every customer pays one Fr per minute present • Payoff per customer = R • Rate at which we receive money = N • In average λ customers per minute, N = λ R 6
Little Again • Consider a simulation where you measure R and N. You use two counters responseTimeCtr and queueLengthCtr. At end of simulation, estimate R =responseTimeCtr / NbCust N =queueLengthCtr / Twhere NbCust = number of customers served and T=simulation duration • Both responseTimeCtr=0 and queueLengthCtr=0 initially • Q: When an arrival or departure event occurs, how are both counters updated ?A: queueLengthCtr += (tnew - told) . q(told) where q(told) is the number of customers in queue just before the event.responseTimeCtr += (tnew - told) . q(told)thus responseTimeCtr == queueLengthCtr and thusN = R . NbCust/T ; now NbCust/T is our estimator of 7
Network Laws 10
Bottleneck Analysis • Example • Apply the following two bounds (1) (2) 17 11
Bottlenecks A 13
DASSA • Intuition: within one busy period: to every departure we can associate one arrival with same number of customers left behind 14
Optimal Sharing • Compare the two in terms of • Response time • Capacity 22
The Processor Sharing Queue • Models: processors, network links • Insensitivity: whatever the service requirements: • Egalitarian 23
PS versus FIFO • PS • FIFO 24
4. A Case Study • Impact of capacity increase ? • Optimal Capacity ? 25
Methodology 26
4.2 Single Queue Analysis Assume no feedback loop: 29
4.3 Operational Analysis • A refined model, with circulating users • Apply Bottleneck Analysis ( = Operational Analysis ) waiting time 1/c Z/(N-1) -Z 30
Conclusions • Queuing is essential in communication and information systems • M/M/1, M/GI/1, M/G/1/PS and variants have closed forms • Bottleneck analysis and worst case analysis are usually very simple and often give good insights • … it remains to see queuing networks 33