Product
- IBM Bluemix
- SoftLayer
Tech Stack
- Cloud-based development
- Graphics Processing Unit (GPU) capabilities
Impact Metrics
- Cost Savings
- Productivity Improvements
Technology Category
- Platform as a Service (PaaS) - Application Development Platforms
Applicable Industries
- Healthcare & Hospitals
Applicable Functions
- Product Research & Development
Use Cases
- Remote Patient Monitoring
- Predictive Quality Analytics
Services
- Cloud Planning, Design & Implementation Services
- Software Design & Engineering Services
About The Customer
Uvionics Tech is a startup company that specializes in the development of innovative applications. The company was in the process of launching its product portfolio and required a high-performance cloud development solution. The company initially attempted to use Amazon Web Services in combination with third-party open source software, but faced integration issues between the two platforms. This led to the need for a more seamless and efficient solution for their development efforts.
The Challenge
Uvionics Tech, a startup company, was in need of a high-performance cloud development solution to launch its product portfolio. The company initially attempted to combine Amazon Web Services capabilities with third-party open source software. However, integration issues between the two platforms hindered its development efforts. The company was in search of a flexible, integrated development platform with powerful graphics processing unit (GPU) capabilities that could easily scale as demands change.
The Solution
Uvionics Tech adopted the IBM Bluemix offering, which provided them with a flexible, integrated development platform and powerful graphics processing unit (GPU) capabilities. This solution allowed Uvionics Tech to easily select the resources it required for each development project, with the ability to easily scale as demands changed. Using the seamless development capabilities of the IBM Bluemix solution, Uvionics Tech was able to quickly and cost-effectively launch demos for an application that analyzes electrocardiogram data and an innovative monitoring tool for elderly patients.
Operational Impact
Quantitative Benefit
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