How Using Forecasting Model Drives Supply Chain Innovation.
Founded
in 1962, Walmart now has 8,500 stores around the world. According to one study
in 2006, 90% of the US population live within 15 minutes of a Walmart[i].
Moreover it is hard to talk about supply chain management without mentioning
Walmart. In its relentless pursuit of low consumer prices, Walmart embraced
technology to become an innovator in the way stores track inventory and restock
their shelves, cutting costs and passing the savings along to customers.[ii]
Walmart process of operation became synonymous with the concept of successful
supply chain management.
A
key factor that Walmart can save money and sell product with low prices, it is
because Walmart is only a retailer, not a manufacturer. Thus, as a retailer,
Walmart uses the Logistic methods of cross-docking. It is similar with Zara.
Those two companies which are Zara and Walmart aim to have items in inventory
for a minimal amount of time, going from manufacturer to the shelves rapidly.
By having items go almost directly from inbound to a warehouse to outbound to a
store, it reduces unnecessary transportation costs and wasted time of items
going through inventory.[iii] However
as author Bill Sporito descripted Walmart has the trouble lurking on Walmart’s
Empty Shelve.
Thus,
Walmart created forecasting model to fill up empty shelves to keep their customers.
Within the eight months, Walmart made a $50 million swings in profitability by
using this forecasting model.[iv] The legendary story of how
Walmart profited from data sharing and how it improved logistics through better
forecasting and inventory management is well understood; however, it has not
been replicated to the same level by any other retailer to date. This can be
attributed to the genius of Sam Walton, a Big Data analytics pioneer.[v]
There is an example how it works. For
example, Supplier X might argue that Walmart should dedicate more shelf space
to its products because of its high sales volume and high profit margin.
Supplier Y would then crunch the numbers and argue that reducing shelf space of
its brand might not seem so negative on its face, but that shoppers of its
product also often buy additional products that carry high margins for Walmart.
While Supplier X and Supplier Y jockeyed back and forth, providing greater
insight with each analysis, Walmart gained a wealth of understanding about what
was going on in the business. Each brought an alternative approach to
forecasting, estimated their own and cross-price elasticity and shelf out-of-stock
rates, calculated store and DC fill rates, analyzed assortment decisions,
estimated inventory investment and cost analyses, derived return on investment
for the shelf space, and illuminated category trends and its drivers.[vi]
How
does forecasting model work?
Last year, my project group created
forecasting model. This showed 86% of accuracy to forecast next 6 months. This
process how to use forecasting model.
- Load Historical Data and
Create Master Data
Identify the key data elements that need to be considered and load them. - Clean the Historical Data
There are almost always problems with the quality and completeness of the data loaded into the system. E.g. "demand" may not be true demand, because it is taken from "sales" data, and will not include "stock-outs". - Generate a Statistical
Forecast for Existing Products
Use demand planning software with built in statistical models to find a "best fit" that will give you a starting forecast. - Prepare Forecasts for New
Product Introductions (NPI)
Use the demand planning software to identify products with similar sales trajectories which will be used as the starting forecasts for the NPIs. - Override Statistical
Forecasts with Judgmental Input
Use data from sales channels, knowledge about changes in market conditions, and expert insight to smooth the forecasts into the most realistic forecasts possible. - Adjust the Baseline
Forecasts for Promotions
In certain industries, like consumer goods, promotions can have a huge impact on sales volume and need to be factored into the baseline forecasts. - Manage Vendor Managed
Inventory (VMI) and Collaborative Planning, Forecasting and Replenishment
(CPFR) Processes
Be sure to communicate data to both customers and internal managers responsible for these programs. - Generate a "One
Number" Forecast
Integrate forecasting into a Sales and Operations Planning (S&OP) that brings together executives from key areas of the company to ultimately agree on a single forecast number and execution plan that will drive both the demand and supply sides of the enterprise.[vii]
Basically we used statistical regression
equation and input some factors that influence sales. This factors is from big
data. However, every factors cannot be used. It must test by regression model
to see whether it has accuracy or not. It is true that my team’s forecasting
model provided us a successful result. However I was still concerning about
future uncertainty. There are many factors that we cannot expect. Because of
this reason, my team could not increase it to 100%. I think Walmart will same
problem with our group. Of course, it increased its profit up to a $50 million
but to increase more profit, I think Walmart require to solve the factors that
have uncertainty. Otherwise, Walmart can not grow more than this.
[i] http://mi021.wordpress.com/2013/03/24/walmart-master-of-the-supply-chain/
[ii] http://www.arkansasbusiness.com/article/85508/wal-mart-used-technology-to-become-supply-chain-leader?page=all
[iii] http://mi021.wordpress.com/2013/03/24/walmart-master-of-the-supply-chain/
[iv] http://www.industryweek.com/supplier-relationships/how-sharing-data-drives-supply-chain-innovation
[v] http://www.industryweek.com/supplier-relationships/how-sharing-data-drives-supply-chain-innovation
[vii] http://blog.sourcinginnovation.com/2008/08/26/supply-chain-digests-eight-step-forecasting-process-using-demand-planning-software.aspx
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