I'm looking for a way to quickly obtain an accurate average inventory for reporting purposes.
I'm looking for a way to determine Gross Margin Return On Investment (GMROI) for inventory items where the inventory levels are not Constantin with time (ie some items maybe out of stock then over stocked, whilst others will be constant and never out of stock)
GMROI = GrossProfit/AverageInvenotry
say over 1 year
These need to be obtained on the fly, batch processing is not an option.
Given the relational database used only has current stock levels. I can calculate back to a historic stock say:
But I really want an average invertory not just a single point in time.
I could calculate back a series of points then average them but I'm worried about the calculation overhead (to a lesser extent the accuracy), given I want to do this on the fly. I could create a data warehouse and bank the data but I'm concerned about blowing out the database size (ie StockHolding Per Barcode Per Location Per Day for say 2 years)
From memory the integral of the inventory/time graph divided by the time interval would give the average inventory but how do you integrate real world data without a formula Or lots of small time strips?
Any Ideas or References would be appreciate