Inventory Performance 2014
Since 2005, I have been doing reporting and analysis on
company and sector inventory levels based on the annual Working Capital
scorecard that is compiled by REL,
a division of the The Hackett Group.
It is always one of our most popular columns of the year.
Once
again this year, REL has been kind enough to send me the data set for some
further analysis. The just released 2014 data is based on year-end 2013
financials from some 1000 US public companies.
The full report and data set looks at the full spectrum of
working capital: Days Sales Outstanding (DSO), Days Inventory Outstanding
(DIO), and Days Payables Outstanding (DPO). Here, we are going to focus on
just the inventory component.
DIO means how many days of sales a company is holding in
inventory, and which REL defines as:
End of Year Inventory Level/[total revenue/365]
So, you calculate the average revenue for one day, and
then see how many of those sales days you keep in inventory (based on
year end balance sheet numbers).
As always, I want to make clear this is the definition that
REL uses in its data set. Every year, someone writes in telling me DIO
should be calculated differently, and my response is that this is the way
REL calculates DIO, so that is what I must therefore use (and I think it is
fine anyway). Also, REL must use DIO, not inventory turns, so it is
compatible with the other two components of working capitol, Days
Sales Outstanding (receivables) and Days Payables Outstanding. The main
formula wouldn't work with a turns number.
As such, DIO is sort of the reverse of inventory turns, in
that a higher DIO, all things being equal, means poorer inventory
management performance, while a lower number signals improvement. You are
being more efficient with inventory versus a given level of sales.
So, let's take an example. Food maker Kellogg had about $14.79
billion in sales in 2013. Divided by 365 days in a year, that means the
company sold about $40.52 million worth of cereal, Pop Tarts and other
stuff per day. It also ended the year with $1.284 billion in inventory. So
dividing that inventory number by the $40.52 million in sales per day means
Kellogg held on average inventory equal to about 30.7 days of its sales.
Technology product company HP, by contrast, manages to hold just about 20
sales days worth of inventory. Nike held about 50 day's worth in 2013.
In case you were curious, Kellogg's 30.7 days of DIO could be
compared to its inventory turns level of 6.96 days (cost of goods sold
divided by inventory levels). But by no means can we say that every company
with DIO of 30.7 has an inventory turn of 6.96. The margins/cost of goods
sold vary by company, making that linkage impossible, unfortunately.
In the overall US economy, inventory levels have remain
relatively flat since about 2005, when compared to sales. As seen in the
chart below, the "inventory to sales" ratio did spike in late
2008/early 2009 as the recession caught companies with way more inventory
than needed versus suddenly shrinking demand, but they then chopped away at
that inventory ruthlessly, so that it was back on the longer term trend
line by early 2010. However, according to this government data,
inventory levels have actually been trending slightly up in recent
periods, probably as top line growth becomes more and more the priority
(note: this is a monthly measure, which is why it is greater than 1 -
inventory/monthly sales).
Across all 1000 companies, REL finds DIO is up .3% year over
year, .8% over the last three years, and 8.3% over five
years. Interesting.
Now, back to the REL data. It is great, but the big value-add
SCDigest performs here is to re-sort individual companies into new
categories, so the categories and comparisons in our view are more usable
for supply chain thinking. For example, home builders like Toll Brothers
are mixed in the household durables category with companies like Whirlpool.
That may have been the most "apples and oranges" combination, but
there were a number of others that didn't jive, at least from a supply
chain perspective. Metal producers such as US Steel were in the same
category as miners.
So, we do the (really) hard work of first eliminating sectors
that aren't useful for the supply chain (e.g., bankers, etc.), and then
redefining and populating the categories in a way that makes more sense for
the supply chain. As another example, rather than having one giant category
of all specialty retail, we broke that down into apparel, office products,
etc. It really does take a lot of time.
It is far from perfect. Should Johnson & Johnson be placed
in the pharma group, the medical device category, or consumer packaged
goods, as it does all of that? Is Honeywell in the aerospace or automotive
sector, or one of the few "industrial conglomerates" like GE or
3M? That's where we put it again this year. There are many such examples.
In the end, we simply made choices, including looking up more
details on a number of companies with which we were not familiar.
One thing that is really striking in doing this work is seeing
in the resulting tables how concentrated so many US business sectors
have become. Office products retailers? We're now down to two, after Office
Depot swallowed OfficeMax. We have to put beer maker Molson Coors in with
soft drink companies in a "beverage" category, even though
the dynamics are very different, because there are no other public brewers
to make even a two-company category. Alas.
So all that doesn't leave me much room here. You will find
here a complete table of the almost 60 categories we created, ranked from
lowest DIO to highest, and the change from 2012 to 2013: DIO By
Sector 2013. I will also note these are unweighted averages,
so a big change even in a smaller company in a category with
relatively few members can have a big influence, as what happened in the
"auto/truck OEMs" category after Tesla went from a DIO of 235 in
2012 to 62 in 2013, helping drive the whole sector down 46%.
Top 5 lowest DIO sectors: (1) Restaurants:
7.07; (2) Retail Convenience Stores: 8.02; (3) Airlines: 9.50; (4) Life
Sciences Tools/Services (this is not pharma): 14.63; (5) Office Furniture:
16.34
Top 5 highest: (1)
Spirits:187.8; (2) Retail Auto Parts: 109.03; (3) Retail: Other Specialty -
88.12; (4) Aerospace/Defense Components: 81.52; (5) Retail - Dept. Stores
Only: 74.78 (we also lump dept. stores in with mass merchants in another
category)
Three best performing sectors (biggest percentage drop in
DIO from 2012 to 2013: (1) Auto/Trucks
OEMS -46.7% (due to Tesla and Thor Industries); (2) Food Ingredients:
-10.3%; (3) Electric Utilities: -9.7%
Three worst performing sectors (largest rise in DIO): (1)
Retail Office Products: +30.1% (driven by Office Depot - inventories must
have soared after OfficeMax acquisition; (2) Toys: +15.7% (Mattel and
Hasbro both up big); (3) Electronics Distributors: +21.9% (big jump in
company called PCM)
In our On-Target newsletter next week, we will provide even
more detail on this data, and also look at which individual companies made
big progress, such as apparel maker Columbia Sportswear, which managed to
drop DIO from 79 to 71 days last year, an improvement of 10%. Nice job.
We'll also detail which companies are in which sectors. Look
for that next week.
Finally, I took a look at three specific sectors, using the
same exact companies, for select years from 2006 through 2013.
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