I'm trying to add a calculation in `BIDS 2008R2`

: the average `DaysSinceLastOrder`

taking into account the unique users (and each of their average DaysSinceLastOrder times)

for example, if my orders table has these rows:

```
customerID daysSinceLastOrder
1 null
1 1
1 3
2 6
3 null
```

then I want `((1 + 3)/2 + 6) / 2 = 4`

avg days since last order

In words:

for each user, figure out the average of that user's `daysSinceLastOrder`

then take the average of those values

but ignore orders with a null `daysSinceLastOrder`

value

Obviously this basic calculation doesn't work since it ignores the uniqueness of customers in the numerator:

```
CREATE MEMBER CURRENTCUBE.[Measures].[Avg Days Since Last Order]
AS [Measures].[daysSinceLastOrder] / [Measures].[#UniqueCustomers]
```

in SQL it would be:

```
select AVG(t.avgDaysSinceLastOrder) as avgDaysSinceLastOrder
from (
select customerID, AVG(daysSinceLastOrder) as avgDaysSinceLastOrder
from orders
group by customerID
) t
```

So how can I make that work in `MDX`

?

Update:

Effectively I want something like this:

```
CREATE MEMBER CURRENTCUBE.[Measures].[Avg Days Since Last Order]
AS sum(avg_daysSinceLastOrder_per_customer) / [Measures].[#Unique Customers]
```

I tried the following which doesn't work, it just averages everything, not on a per-customer basis:

```
CREATE MEMBER CURRENTCUBE.[Measures].[Avg Days Since Last Order]
AS sum([Customers].[User Id],
sum([Customers].[User Id], [Measures].[Days Since Last Order]))
/ [Measures].[#Unique Customers]
```

**Notes**:

`daysSinceLastOrder`

measure is pre-calculated during`ETL`

(with`SUM`

as the aggregation type in the cube)- #UniqueCustomers obivously is a measure in the cube (and would have 3 in this case) which isn't quite what I want to use above
- a null
`daysSinceLastOrder`

value means it's that customer's first order