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Android and IOS Retail Merchandising Software Solution


Merchandising is one of the most complex operations units of any business involved with consumer goods, mostly because it involves a large number of people and data. Management can easily get lost among all the data that field reps, key account managers, and other mobile agents - in addition to customers - generate.

VisitBasis comes as a solution to merchandising businesses and departments alike, as it is  cloud-based enterprise data collection SaaS software for managing, scheduling, and monitoring field team activities in real-time. It allows field sales/marketing operations managers and supervisors to oversee all stages of the in-store activity process, from assigning territories, visits and tasks to retrieving up-to-the minute results through VisitBasis online dashboard and reports.

Meanwhile, field personnel will have all the data they need at their fingertips, including the best customer route for the day, and will be able to perform all merchandising activities on their cell phones or tablets - virtually eliminating paperwork and providing GPS and time-stamped data.


Automate your merchandising activities - sign up today at www.visitbasis.com! Free downloads on Google Play and App Store!



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