I have a data sheet which lots of data, all spread out over several columns. The data extracted below will show the problem I am facing:

This table represents changes in an inventory system. Positive amount changes mean new items were added to the inventory and the **item price** for these are known. The item price equals the import purchasing price.

When an order was made, the corresponding amount change is negative, and the price is unknown. The algorithm should fill in these unknown prices.

The items that have been the longest in stock should be sold first, at the same price they were bought. Once such a batch is depleted, the next batch should be used to determine the price of a sale.

For example, in row 3, 3 items were sold, and we are left with 9 items in the inventory. We know by looking at the data, that the single item price for these 3 products is 49.55. But of course, it starts to get more complicated as items have been added and subtracted:

Take the last row. At that moment, the first batch (at 49.55) has already been sold completely. The next batch (at 48.25) only has 2 items -- not enough for the 7 that are ordered. The batch after that (at 47.23) has enough to provide for the remaining 5 items. The price per item should thus be a weighted average of these two prices.

So now, I am looking for a function or algorithm to determine the item price that should be used when an order was placed.

algorithm to determine the item price that should be used when an order was placed" but you don't specify any constraints that should be met by the calculated price. So why can't you just use`0`

for each row? Or the first buy price? Or the price of the most recent buy? I suspect that all those choices are not what you want because there are some additional implicit constraints in your head. Unfortunately we can't read them from there. So put the constraints explicitly in the question! – SergGr Jan 13 at 17:35