If each shoe is a document, with a `date_in`

and `date_out`

, then your reduce function will +1 if the `date_out`

is null, and +0 (no change) if `date_out`

is not null. That will give you the total count of shoes in the warehouse.

To compute the average time, for each shoe, you know the time in the warehouse. So the reduce function simply accumulates the average. Since reduce functions must be commutative and associative, you use a different average algorithm. The easiest way is to reduce to a `[sum, count]`

array, where `sum`

is an accumulator of all time for all shoes, and `count`

is a counter for the number of shoes counted. Then the client simply divides `sum / count`

to compute the final average.

I think you could combine both of these into one big reduce if you want, perhaps building up a `{"shoes in warehouse": 1, "average time in warehouse": [253, 15]}`

kind of object.

However, if you can accept two different views for this data, then there is a shortcut for the average. In the map, `emit(null, time)`

where `time`

is the time spent in the warehouse. In the reduce, set the entire reduce value to `_stats`

(see Built-in reduce functions). The view output will be an object with the `sum`

and `count`

already computed.