Keeping stores stocked using exceptional demand planning
The right products stocked at the right times and at the right locations.
15% improvement in demand sensing forecast accuracy
Yildiz Holding relies on demand planning from SAS to improve forecasts for manufacturing, inventory and sales planning processes
From food and beverages to everyday household items, even the smallest products need packaging. That is where the Turkish company Yildiz Holding shines. It is one of the largest consumer packaged goods companies in the world and primarily focuses on everyday products. Because many of its products are single-use, store shelves need to be frequently replenished to meet consumer demands. Doing so requires complex, accurate demand planning to avoid unnecessary stock outages and negative impacts on the already disrupted global supply chain. By better predicting demand, the organization can improve revenue and margins, as well as accurately estimate pricing and promotional efforts to get a higher yield on new product launches.
Yildiz Holding has plenty on its plate. Its products are purchased by nearly 4 billion customers – including its brands GODIVA, Ülker and McVitie’s – and the company employs 75,000 people with production facilities on five continents.
With so much inventory to fill, the demand sensing project plays a critical role, because even a slight deviation in forecasts can significantly affect manufacturing, inventory and sales planning processes. Yildiz Holding needed a solution that would deliver the most accurate forecasting possible while delivering support to the sales activity planning process to harness all potential business opportunities.
The forecasting accuracy rate of demand sensing across the group increased by 15%, while overstocks and understocks were significantly decreased. We eliminated several disjointed processes for demand sensing and replaced them with much faster, integrated ones. Gül Erol CIO, Yildiz Holding CEO, Yildiz Tech
Great forecasting is built on top-notch data
Utkan Menteş, Director of Advanced Analytics Solutions at Yildiz Holding, says the toughest challenges Yildiz Holding faces include consolidating and interpreting data from various sources to model demand forecasting in an environment with complex business logic and rules.
“Thanks to CRISP-DM [cross-industry standard process for data mining] methodology, we addressed the challenges iteratively and systematically,” he says. “SAS models also assisted a great deal in enabling us to understand, model and evaluate our data and make the necessary steps in deployment.”
Finding a demand sensing solution that balances inventory
Working with advanced analytics from SAS, Yildiz Holding gained insights into the daily business flow to create an integrated and practical demand sensing solution.
“Analyzing data, developing scientific models and enhancing the metrics are important stages that excite our team of data scientists,” Menteş says. “With SAS helping to increase our forecast accuracy, category managers, supply chain executives and demand planners have been able to improve the planning process.”
Inventory levels and sellouts can now be dramatically decreased. Marketing executives can also simulate the effects of their activities on customer demand and select the best sales activity mix for a more efficient marketing investment process.
SAS Demand Planning focuses on capturing demand signals about where, how and when demand is generated. By understanding customer demand across channels and comparing it with inventory levels, the models make accurate forecasts. This means high product availability, balanced inventory levels and reduced sellouts. An accurate demand plan ensures the right products are stocked at the right times and at the right locations.
The SAS implementation proved so successful that Yildiz Holding also wants to enhance its data and visual analysis with the SAS Viya platform to yield an even faster process for understanding data.
Yildiz Holding – Facts & Figures
Having the right tools to forecast accurately
For other organizations looking to benefit from demand sensing, Menteş advises following the correct methodology, using the right tools and building a motivated team that consists of analytical professionals with complementary skills. It’s important to define the right business metrics and then focus on achieving the end goal.
According to Gül Erol, CIO of Yildiz Holding and CEO of Yildiz Tech, the company is excited by the work done in partnership with SAS and is pleased with its improved forecasting through advanced analytics.
“The forecasting accuracy rate of demand sensing across the group increased by 15%, while overstocks and understocks were significantly decreased,” says Erol. “We eliminated several disjointed processes for demand sensing and replaced them with much faster, integrated ones.”
The results illustrated in this article are specific to the particular situations, business models, data input, and computing environments described herein. Each SAS customer’s experience is unique based on business and technical variables and all statements must be considered non-typical. Actual savings, results, and performance characteristics will vary depending on individual customer configurations and conditions. SAS does not guarantee or represent that every customer will achieve similar results. The only warranties for SAS products and services are those that are set forth in the express warranty statements in the written agreement for such products and services. Nothing herein should be construed as constituting an additional warranty. Customers have shared their successes with SAS as part of an agreed-upon contractual exchange or project success summarization following a successful implementation of SAS software. Brand and product names are trademarks of their respective companies.