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hey everyone andy robertson here with cqe academy and in todays video i want to share an important topic called acceptance sampling all right lets head over to the computer and get started all right lets quickly review the agenda for todays lecture so im going to start with a brief intro to accept and sampling what is the history the background sort of the approach here and then were going to go through a few different examples so the most popular standard for acceptance sampling is ansi z 1.4 which is the standard for attribute data except in sampling were going to go through one two three different examples so that i can walk you through some of the nuances of the standard and then im going to talk about double and multiple sampling plans so the very first example we do is actually going to be sample size code letter l with an aql of 1.0 were going to look at that same example that same scenario but for double sampling and multiple sampling and so you can see how the sample