Super-charging HealthStream applications with Redis Labs Enterprise Cluster
Customer Company Size
Large Corporate
Region
- America
Country
- United States
Product
- Redis Labs Enterprise Cluster (RLEC)
Tech Stack
- Redis
Implementation Scale
- Enterprise-wide Deployment
Impact Metrics
- Customer Satisfaction
- Productivity Improvements
- Digital Expertise
Technology Category
- Application Infrastructure & Middleware - Database Management & Storage
- Platform as a Service (PaaS) - Data Management Platforms
Applicable Industries
- Healthcare & Hospitals
Applicable Functions
- Business Operation
Use Cases
- Remote Collaboration
- Remote Control
- Remote Patient Monitoring
Services
- Software Design & Engineering Services
- System Integration
About The Customer
HealthStream is a leading provider of workforce development solutions for healthcare professionals in the United States. The company offers a suite of software-as-a-service (SaaS) solutions that include training and learning management, talent management, performance assessment, credentialing, and simulation-based training programs. HealthStream's mission is to improve patient outcomes by developing healthcare professionals, and its platform serves over 4.5 million users. The company is dedicated to providing high-quality, reliable, and efficient solutions to meet the needs of healthcare organizations and professionals.
The Challenge
HealthStream needed a high-performance datastore to enhance user responsiveness with low operational overhead. The company required a system that was blazing fast, highly available, and reliable. HealthStream's workforce development platform, used by approximately 4.5 million healthcare professionals in the U.S., demanded low latency and high performance caching. Additionally, operational simplicity, high availability, and high reliability were critical requirements for their applications.
The Solution
HealthStream selected Redis Labs Enterprise Cluster (RLEC) after an extensive evaluation of caching technologies. RLEC demonstrated superb performance, high availability, and operational simplicity, making it the caching system of choice for HealthStream. The deployment of RLEC as a cache to all distributed systems across HealthStream significantly enhanced application performance. Redis Labs' expertise and enterprise capabilities saved HealthStream months of effort in implementing Redis. The high performance and high availability of RLEC, coupled with its operational simplicity, provided a cost-effective database solution for HealthStream's enterprise applications.
Operational Impact
Quantitative Benefit
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