Let's find the motivation to use reliability statistics and find the resources to learn the statistical tools necessary to succeed.

Once we have made something really reliable (or really available) then comes the part where we have to work out how many of them we need (if they make up a fleet) or how many spare parts we need to keep them running. That is where discrete distributions are really helpful. They assign probabilities to discrete' random variables. These are random variables that can only have certain specified values. Like whole numbers. For example the number of failures you expect to see in a mission. Or the number of available systems out of a given fleet size. If this sounds like something that could help you out see you for this webinar!
This Accendo Reliability webinar originally broadcast on 26 October 2021.
Discrete Data vs. Continuous Data episode
Understanding the Geometric Distribution article
Understanding the Binomial Distribution article
When it's Not Normal: How to Choose from a Library of Distributions episode
How to Calculate Reliability Given 3 Different Distributions article
Let's find the motivation to use reliability statistics and find the resources to learn the statistical tools necessary to succeed.
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Let's explore an array of distributions and the problems they can help solve in our day-to-day relaibility engineering work.
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