Webinar On-Demand
Thousands of data consumers have a better way to find and use high-quality data. Advanced analytics is central to the AutoZone customer experience — right down to ensuring that each store has exactly the right assortment of products based on customer wants and needs.
To fuel the models behind this kind of customization, AutoZone is leveraging Alation’s data catalog to make it easy for thousands of data consumers to find and leverage quality data — exactly when they need it.
Listen to Himali Kumar, director of data management at AutoZone, discuss how one of the most recognizable brands in the automotive industry is working to reduce the time data consumers spend searching for data by 65%, giving them more time to concentrate on leveraging data to improve customer experience.
In this on-demand webinar, find out how AutoZone leverages Alation data catalog to:
Reduce the need for data consumers to rely on IT support
Increase productivity and reduce duplication of effort across business units
Ensure that data consumers are using high-quality data
Bolster compliance and data security by masking PII
Watch this on-demand webinar to learn how AutoZone is leveraging Alation’s data catalog for advanced analytics.
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