DocumentCode :
1791739
Title :
An IoT/IoE enabled architecture framework for precision on shelf availability: Enhancing proactive shopper experience
Author :
Vargheese, Rajesh ; Dahir, Hazim
Author_Institution :
Cisco, Austin, TX, USA
fYear :
2014
fDate :
27-30 Oct. 2014
Firstpage :
21
Lastpage :
26
Abstract :
In today´s customer centric world, enabling shopper experience is a very important factor in maintaining customer loyalty. On shelf availability (OSA) of the product that the customer is looking for is a key metric in ensuring shopper experience. Current manual approaches to enabling OSA have gaps and might fall short of customer expectations and impact bottom line of retailers. We propose an automated Internet of Things/Internet of Everything (IoT/IoE) enabled model for ensuring OSA. The use of sensors and big data analytics helps process data from various information sources to generate information about out-of-stock products on the shelf and notifies the store associates to take actions to stock up the products on the shelves. The precision level of such approaches could vary and hence we look at multiple sensor configurations that can be used in the retail segment to address the OSA needs. In addition, we also propose an algorithm for enabling OSA and an integrated architecture to precisely identify and predict trends towards out-of-stock situations. The algorithm also emphasizes on multi stage cross verification to reduce false alarms. Such a model is capable of improving operational efficiencies, reducing operational cost and improving shopper experience.
Keywords :
Big Data; Internet; Internet of Things; customer services; IoT/IoE enabled architecture framework; OSA; automated Internet of Things/Internet of Everything enabled model; big data analytics; customer centric world; customer expectation; customer loyalty; information sources; multistage cross verification; on shelf availability; operational cost; operational efficiency; out-of-stock product; proactive shopper experience; Availability; Cameras; Internet of Things; Object recognition; Radiofrequency identification; Real-time systems; Big data; Internet of Everything; Internet of Things; IoE; IoT; Retail; Shopper Experience; on shelf Availability;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Big Data (Big Data), 2014 IEEE International Conference on
Conference_Location :
Washington, DC
Type :
conf
DOI :
10.1109/BigData.2014.7004418
Filename :
7004418
Link To Document :
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