Answer:
a) For this case we have the following info:

And we select a sample size of 6. Assuming that the data can be approximated to a normal distribution the sample mean have the following parameters:


b) For this case assuming a nomal distribution then the sample mean have the following distribution:

c)

And we can use the z score formula given by:

And using the complement rule we have:

Explanation:
Part a
For this case we have the following info:

And we select a sample size of 6. Assuming that the data can be approximated to a normal distribution the sample mean have the following parameters:


Part b
For this case assuming a nomal distribution then the sample mean have the following distribution:

Part c
We want this probability:

And we can use the z score formula given by:

And using the complement rule we have:
