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

OK we have all been there. We have all sat in some statistical presentation or read a document containing mathematical symbols and statistical hieroglyphics we don't understand. And we pretend we do understand so that we don't embarrass ourselves. The people we don't want to embarrass ourselves in front of usually also pretend to understand those symbols and hieroglyphics. This webinar is a light (re)introduction to common mathematical symbols used in many engineering scenarios including reliability.
They can be really simple to understand if you only know how. So if you see all manners of Greek letters or have to talk to someone who always uses the term sigma' and you have no idea what they mean then this webinar is for you.
<!–more–>
This Accendo Reliability webinar was originally broadcast on 28 June 2022.
To view the recorded video/audio and PDF workbook of the event, visit the webinar page.
Reliability Management Terminology article
Dependability article
Future of Quality article
Starting with Mathematical Foundations with Fred Schenkelberg episode
Let's find the motivation to use reliability statistics and find the resources to learn the statistical tools necessary to succeed.
Let's explore R software's many capabilities concerning reliability statistics from field data analysis, to statistical process control.
Let's explore an array of distributions and the problems they can help solve in our day-to-day relaibility engineering work.
Perry discusses the basics of DOE (design of experiments) and fundamentals so you can get started with they useful product development tool.
Let's discuss the 6 basic considerations to estimate the necessary sample size to support decision making.
When we make a measurement, we inform a decision. It's important to have data that is true to the actual value.
One of the first things I learned about data analysis was to create a plot, another, and another. Let the data show you what needs attention.
If you want a really easy introduction or review of these functions that help inform a decision then check out this webinar.
Sometimes 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.
Let's explore the ways we use, or should use, statistics as engineers. From gathering data to presenting, from analyzing to comparing.
Let's explore what residuals are, where they come from, and how to evaluate them to detect if the fitted line (model) is adequate or not.
This webinar is a light (re)introduction into common mathematical symbols used in many engineering scenarios including reliability.
Reliability is a measure of your product or system. Confidence is a measure of you. But we often forget this.
How to calculate Gage discrimination - the more useful result for a design situation, and even how to use it for destructive tests.
For those who conduct reliability data analysis or turning a jumble of dots (data points) into meaningful information
It is not just a pretty shape' that seems to work, It comes from a really cool physical phenomena that we find everywhere.
Let's examine a handful of parametric and non-parametric comparison tools, including various hypothesis tests.
You need to have a good idea of the probability distribution of the TTF of your product when it comes to reliability engineering.
The post Basic Mathematical Symbols and Stuff appeared first on Accendo Reliability.