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Low Latency is Mission Critical to Advent Health Partners
Technology Category
- Platform as a Service (PaaS) - Data Management Platforms
- Analytics & Modeling - Real Time Analytics
- Application Infrastructure & Middleware - Data Exchange & Integration
Applicable Industries
- Healthcare & Hospitals
Applicable Functions
- Business Operation
Services
- Cloud Planning, Design & Implementation Services
- System Integration
The Challenge
Advent Health Partners faced significant challenges with high latency and slow response times from other databases, which led to data loss and downtime. Additionally, they encountered difficulties in operating, scaling, and administering these databases. These issues were critical as they impacted the company's ability to deliver maximum financial returns and operational insights to its clients.
About The Customer
Advent Health Partners is a company that provides data and image aggregation solutions to the healthcare industry. They offer a Software-as-a-Service (SaaS) application called CAVO, which aids in the decision-making process by gathering relevant data surrounding a claim to correct inefficiencies pre- or post-billing. The company is focused on reducing downtime to deliver maximum financial returns and operational insights to its clients. Advent Health Partners is a small business operating in the healthcare sector.
The Solution
Advent Health Partners selected Redis Enterprise to address their challenges. Redis Enterprise provided high-speed transactions, user session store, and messaging capabilities. The company utilized Redis Enterprise for its high availability, stability, and high performance. Redis Enterprise's features such as persistence, auto-failover, cross-zone/multiregion/multi-datacenter in-memory replication, and seamless scaling were crucial. Additionally, Redis Enterprise offered monitoring, automation, alerting, and dashboards, along with 24×7 support for mission-critical Redis layers. These capabilities allowed Advent Health Partners to avoid cloud vendor lock-in and ensure continuous operation.
Operational Impact
Quantitative Benefit
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