Main Points: ERRATUM - At :18, the computation for utilisation factor would be (1car/6mins) / (1car/10mins) = 5/3 or 1.6667. Hi my name is liz thompson and this is a quick video on an introduction to
Queueing Theory M M 1 Queue Worked Example - Meaning and Use
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Hi my name is liz thompson and this is a quick video on an introduction to ERRATUM - At :18, the computation for utilisation factor would be (1car/6mins) / (1car/10mins) = 5/3 or 1.6667.
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- ERRATUM - At :18, the computation for utilisation factor would be (1car/6mins) / (1car/10mins) = 5/3 or 1.6667.
- Hi my name is liz thompson and this is a quick video on an introduction to
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