Big Data Reveals Weather-Related Shopping Patterns
Google BigQuery and Tableau Software's visualization tools show how weather affects shoppers' behavior, help retailers prepare for spikes in demand.
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If you're a retailer, how do you plan for the unplanned? A sudden winter snowstorm, for instance, can cause a spike in demand for batteries, canned foods and snow shovels. If you don't have enough of those items in stock, customers may grow irate and shop elsewhere -- and perhaps never come back.
Interactions Marketing, a consumer engagement marketing firm, has conducted a big data test case using point-of-sale transactional data and regional weather information data from multiple sources to gain fast insights into shopper behaviors, the company said.
The test case used Google BigQuery, a Web service for interactive analysis of very large datasets, and visual analytics tools from Tableau Software to quickly examine massive quantities of information. This combination of tools allowed Interactions to slash data-analysis times from about week to just hours or even minutes, says Giovanni DeMeo, VP of global marketing and analytics for Interactions.
"We analyzed the data to find out what patterns existed, and identify what those patterns were," DeMeo told InformationWeek in a phone interview. "We were looking for a query that would demonstrate not just the existence of patterns, but also (how) to monetize ... them for retailers and manufacturers that we work with."
The Interactions study identified repetitive weather events (e.g., snowstorms), classified them by severity, and measured their effects on sales before, during and after the events. It also tracked new sales patterns and shopper activity that potentially could help retailers and makers of consumer product goods (CPGs) plan in-store promotions before these events occur.
By using BigQuery and Tableau's visualization software to analyze "hundreds of millions" of rows of data in a very short time, Interactions found it could quickly share significant findings with its retailing and manufacturing customers.
"What we identify as significant is somewhat arbitrary, but it's based on our history of knowing how we can impact sales," said DeMeo.
Interactions' analysts uncovered which products had the most significant sales increases and decreases during specific weather events, and how shoppers' behaviors changed. They factored in a wide variety of data sources, including geographic location, time of day, day of the week and a retailer's proximity to competitors' locations.
Here's what the data analysis found: A day prior to statistically similar weather events, sales in 28 product categories jumped from 20% to 261% over the same day a year earlier.
"Anything with more than 20% or greater increase in sales, over sale-day [the] previous year, gives us the opportunity to identify those categories, and have enough time to communicate with retailers and manufacturers," DeMeo said.
This allows businesses enough time to create promotional campaigns "to educate shoppers ... even before the shoppers know they're going to need those particular items," he added.
On the flip side, the Interactions study also showed a drop in sales during the event's peak (few of us venture out during a blizzard or hurricane) and for four days after. Interestingly, these behaviors took place not only in regions that experienced the weather event, but also in areas where the event was forecast but didn't occur.
Interactions sees its weather test case as just one example of how marketers can use big data to boost sales.
Other companies are analyzing large amounts of weather-related big data for other purposes. EarthRisk Technologies, for instance, is a San Diego-based startup that makes long-term weather forecasts by taking more than 60 years of historical weather data and crunching it with 82 billion calculations.
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