Big Data and The Retail Industry
So many factors affect retail sales
and store performance from day-to-day. Sudden shift in product trends, a
competitors successful sales strategy, the weather (if it is raining, or if it is
too hot or too cold, customers do not venture outside to shop), and peer
opinion can all affect the sales in each store in your chain.
There is now an imperative need to
access rich and varied sources of external data. You need to gather data about
your competitors sales and strategies, the sales strategies of online giants,
data about the products offered, the promotional strategies used by local
competitors and so on. You also need a way to collect and use customer
generated data from various external sources.
However, these cannot be collected and
processed by traditional database and analytical tools. This is where Big Data
comes in.
Big Data provides the methodologies
required to collect and organize disparate information from widely differing
sources, and the tools to analyze them. These data processing and advanced data
analytics tools provide broader and deeper insights into various factors. These
help retailers make more precise decisions about the different aspects of their
business, including product assortment planning.
However, most retailers haven't been
quick enough to take advantage of these sources. Around 92% of retailers,
according to a recent survey, do not have a comprehensive understanding of
their customer base.
Every business is now becoming more
customer-centric and this is especially important in retail. One of the big
advantages Big Data provides is its ability collect and organise customer
related information from diverse sources. This customer generated data helps
retailers stay alert and nimble. Now they can respond quickly to customer views
and preferences.
They can make better decisions about
assortments for various stores, tailoring the stock to local preferences and
the strategies of competitors in the neighborhood. This will help them provide
what the customer wants and eliminate products that are not in demand in that
locality. So, they can free up space and make better use of it, stocking high
demand stock keeping unit(SKUs).
Using data provided by the analytical
tools, individual stores can design product placing and even Adjacencies.
Adjacencies refer to product placement in relation to one another. With a
deeper perception of customer preferences, stores can decide if one product
will do better when placed next to another.
Analyzing customer buying patterns in
a locality could also help determine the type of products to stock. For
instance, if the majority of shoppers at a particular store are
price-sensitive, that store could focus on making available good products that
are available at economical prices. For the segment of their customers who
prefer exclusivity and are not bothered about the price, the store can create
small sections that display goods like gourmet foods, expensive cosmetics etc.
There are other ways to utilize
information gathered through Big Data tools. It can also help the retailers
design an inventory and sales strategy that ensures a uniform experience across
multiple channels. In the end, if the customer is happy it translates into more
sales for the stores, and Big Data technologies can make this happen.
(article source: ezinearticles) Kazuyoshi Miwa 丸山修 三和一善
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