Answer:
The significance level is
and
we want to find the decision rule. Since is a bilateral test the critical values are:

And for this case the decision rule would be reject the null hypothesis if the calculated value is:

And for this case the calculated value is higher than 2.326 so then we have enough evidence to reject the null hypothesis at the significance level given.
Explanation:
Information given
n=900 represent the random sample mean
estimated proportion of the chips fail in the first 1000 hours of their use
is the value to verify
represent the significance level
z would represent the statistic
System of hypothesis
We want to test if the actual percentage that fail is different from the stated percentage, the system of hypothesis are.:
Null hypothesis:
Alternative hypothesis:
The statistic is given by:
(1)
Replacing the info given we got:
The significance level is
and
we want to find the decision rule. Since is a bilateral test the critical values are:

And for this case the decision rule would be reject the null hypothesis if the calculated value is:

And for this case the calculated value is higher than 2.326 so then we have enough evidence to reject the null hypothesis at the significance level given.