Calculating Supplier Lead-Time Variability: Not as Easy as It Seems
Knowing Lead-time Variability Helps set the Right Safety Stock Level; Tracking and Calculating the Lead-time Variability is not Always Easy
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Dan Gilmore, in his quest to better understand Out-of-Stocks (OOS), recently discussed how lead-time variability can drive extra inventory. Or, if you don’t protect against lead-time variability, you will end up with more OOS situations. In fact, whenever you have any supply chain variability, you have to buffer it with either more inventory, more capacity (like air freight), or time (making your customers wait or higher OOS).
To help understand the concepts, he has also released a web-basedinventory calculator that shows the impact of lowering lead-time. The math behind the calculation is a bit tough, but the intuition behind it is clear: If your shipment is late, you better have enough inventory on hand to meet all your expected demand until the shipment arrives. This is why reducing lead-time variability have a large impact on inventory or OOS.
Gilmore points out that despite the importance of lead-time variability, almost no companies track it.
Part of the problem is that it is not always straightforward to track lead-time and lead-time variability. And, existing systems are not set up to track it. There are three general buckets you should measure to calculate lead-time and lead-time variability. Each bucket should be measured separately because they have fundamentally different characteristics. The three buckets are:
Of course, these buckets are just a guide. In your business, you may have other buckets or you may be able to combine these buckets.
Once you set up your IT systems to track the raw data in the above buckets, you still have work to do to analyze the data and determine how you will use to determine the average and standard deviation of lead-time. You also have to realize that your decisions will impact the amount of safety stock you need. For example, if you decide to calculate the transit time variability with just the ocean freight data, you will hold more inventory than if you included air freight in the calculations. But, this should then drive down future air freight bills.
Final Thoughts:
In today’s data rich world and with all the tools you have available, you should start to measure and track lead-time variability. It is too important to ignore.
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Tuesday, December 2, 2014
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