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Improving the health and welfare of children around the world
Technology Category
- Analytics & Modeling - Real Time Analytics
Applicable Industries
- Education
- Healthcare & Hospitals
Applicable Functions
- Business Operation
- Logistics & Transportation
Use Cases
- Real-Time Location System (RTLS)
- Remote Collaboration
Services
- Data Science Services
The Challenge
Save the Children, a global humanitarian organization, wanted to better leverage data to further advance its goal of driving progress for children globally. They needed a solution that could provide quicker insights into the populations they serve and enable them to be more efficient in how they allocate limited resources. The organization also wanted to communicate essential information and metrics globally in real-time.
About The Customer
Save the Children is a global humanitarian organization that believes every child deserves a future. The organization focuses on giving children a healthy start in life, the opportunity to learn, and protection from harm. Since its founding 100 years ago, Save the Children has changed the lives of more than 1 billion children. Today, the organization serves 155 million children in the United States and in 120 countries around the world.
The Solution
Domo, working with Save the Children's Global Sponsorship Program, provided a solution to leverage data for better insights. With data in the Domo platform, Save the Children was able to globally communicate essential information and metrics throughout the world in real-time. For instance, the Global Sponsorship team could receive daily updates on the number of children available for assistance and empower country managers to allocate resources to areas of the world that have the most immediate needs.
Operational Impact
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