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Eureka team counts on Postman Pro to stay in sync
Technology Category
- Application Infrastructure & Middleware - API Integration & Management
- Platform as a Service (PaaS) - Application Development Platforms
Applicable Industries
- Education
- Healthcare & Hospitals
Applicable Functions
- Product Research & Development
Use Cases
- Remote Collaboration
Services
- Software Design & Engineering Services
The Challenge
The Eureka Research Platform, a non-profit resource built by researchers at the University of California San Francisco, enables researchers to launch mobile and web-based studies easily and quickly. The platform allows anyone to contribute to their favorite health cause as a citizen-scientist. However, the development team faced a challenge in sharing collections as they were uploading them as JSON files. This method led to confusion among team members as they were uncertain if they were working off the correct version.
About The Customer
The Eureka Research Platform is a non-profit resource built by researchers at the University of California San Francisco. It is supported by the National Institutes of Health. The platform provides researchers with the tools to mobilize their studies and engage participants in ground-breaking discoveries, pushing the boundaries of traditional research. The development team consists of nine developers and QA. The broader Eureka team includes data analysts, research coordinators, and management who perform database queries using Postman.
The Solution
The Eureka development team turned to Postman Pro to address their challenge. Postman Pro offered a team collaboration feature that allowed the team to stay in sync with the latest versions of their Postman collections. The team was able to set the Postman environments so that everyone shared the credentials, which proved to be a significant advantage. In addition to team collaboration, the Eureka team also used Postman Pro for API design, documentation, and testing. They created a new collection to generate documentation on the web to share with their partners whenever they developed new APIs.
Operational Impact
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