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Sunbility’s Successful Journey of Covering More Clients With Upper
Applicable Industries
- Consumer Goods
- Renewable Energy
Use Cases
- Time Sensitive Networking
- Vehicle Telematics
Services
- System Integration
The Challenge
Sunbility, a Florida-based solar installation company, was grappling with several operational challenges that were hampering their business. The COVID-19 pandemic had a negative impact on their labor force, necessitating a restructuring to cope with staff shortages and maintain service levels. The company was also dealing with an increase in unattended client calls, which was leading to potential revenue loss and compromised customer loyalty. Their service route planning, which was done using Google Maps, was time-consuming and prone to errors. The owner, Jason, was finding it difficult to keep track of the drivers in his service team, resulting in inefficient scheduling and dispatching of service tasks. These challenges prompted Jason to seek a solution that could streamline his daily operations.
About The Customer
Sunbility is a solar energy company based in Florida, USA. The company provides residential solar installation services in more than 20 counties. Committed to reducing carbon footprints, Sunbility offers energy-saving solutions to its customers. However, the company was facing several operational challenges, including staff shortages due to the COVID-19 pandemic, an increase in unattended client calls, and inefficient route planning and task scheduling. These challenges were affecting their business and customer loyalty, prompting them to seek a solution to streamline their operations.
The Solution
Sunbility adopted Upper to address its operational challenges. The 'excel import' feature of Upper allowed the company to streamline and optimize its service routes. Jason Dudney, the owner of Sunbility, found that he could input a list of addresses and find the best routes for his service team, enhancing scheduling and dispatching efficiency. Sunbility also used Upper to prioritize urgent service orders, ensuring that these were dealt with on time, which increased customer loyalty and improved overall efficiency. The instant customer support provided by Upper also helped the company receive timely assistance for any queries or challenges, contributing to a seamless user experience.
Operational Impact
Quantitative Benefit
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