Download PDF
Drivy Trusts Redis Enterprise as the Database for Real-Time Analytics & Fraud Detection
Technology Category
- Analytics & Modeling - Real Time Analytics
- Platform as a Service (PaaS) - Data Management Platforms
- Application Infrastructure & Middleware - Data Exchange & Integration
Applicable Industries
- Automotive
- Transportation
Applicable Functions
- Business Operation
- Sales & Marketing
Use Cases
- Fraud Detection
- Real-Time Location System (RTLS)
Services
- Cloud Planning, Design & Implementation Services
- System Integration
The Challenge
Drivy is a small but quickly-growing business. Drivy plans on expanding to other European countries, starting with the U.K. Drivy has had over 1.4 million Rental days logged and nearly 1 million users ever since the platform was created on 2010. With this uptick in growth and a relatively small operational team, Drivy needed to scale its mobile and web app seamlessly without sacrificing performance. Here are a few other challenges that led Drivy to evaluate and ultimately select Redis Enterprise: Values Redis Enterprise’s ability to provide: High availability persistence, auto-failover, cross-zone / multi-region / multi-datacenter in-memory replication Seamless scaling & clustering Stable, high performance
About The Customer
Drivy provides peer-to-peer car rental services in Europe through an online platform. Based out of Paris, it connects individuals or legal entities who would like access to a vehicle for a short rental period with available cars (no driver included). Drivy is seeing an increasing user count and chose Redis Enterprise to tackle its scaling needs.
The Solution
Drivy uses several application components featured in Redis for its mobile and web apps. Drivy now holds information for 36,000 cars in its platform and this number is steadily increasing. As their user base and list of rentals grow, so does the need for a scalable database management tool that wouldn’t lose out on performance; customers expect quick turnaround on available rental cars and accurate profile information. The key features and functionalities of Redis Enterprise that Drivy uses: Uses Redis Enterprise for the following: User session store Job & queue management Scalability tier / content caching Throttling, Feature Flipper, Autocomplete, Locking, Short-Term Analytics Logging, light KV store Is using Redis Enterprise in the following solutions: E-commerce Fraud detection Analytics
Operational Impact
Quantitative Benefit
Related Case Studies.
Case Study
Integral Plant Maintenance
Mercedes-Benz and his partner GAZ chose Siemens to be its maintenance partner at a new engine plant in Yaroslavl, Russia. The new plant offers a capacity to manufacture diesel engines for the Russian market, for locally produced Sprinter Classic. In addition to engines for the local market, the Yaroslavl plant will also produce spare parts. Mercedes-Benz Russia and his partner needed a service partner in order to ensure the operation of these lines in a maintenance partnership arrangement. The challenges included coordinating the entire maintenance management operation, in particular inspections, corrective and predictive maintenance activities, and the optimizing spare parts management. Siemens developed a customized maintenance solution that includes all electronic and mechanical maintenance activities (Integral Plant Maintenance).
Case Study
Airport SCADA Systems Improve Service Levels
Modern airports are one of the busiest environments on Earth and rely on process automation equipment to ensure service operators achieve their KPIs. Increasingly airport SCADA systems are being used to control all aspects of the operation and associated facilities. This is because unplanned system downtime can cost dearly, both in terms of reduced revenues and the associated loss of customer satisfaction due to inevitable travel inconvenience and disruption.
Case Study
IoT-based Fleet Intelligence Innovation
Speed to market is precious for DRVR, a rapidly growing start-up company. With a business model dependent on reliable mobile data, managers were spending their lives trying to negotiate data roaming deals with mobile network operators in different countries. And, even then, service quality was a constant concern.
Case Study
Digitize Railway with Deutsche Bahn
To reduce maintenance costs and delay-causing failures for Deutsche Bahn. They need manual measurements by a position measurement system based on custom-made MEMS sensor clusters, which allow autonomous and continuous monitoring with wireless data transmission and long battery. They were looking for data pre-processing solution in the sensor and machine learning algorithms in the cloud so as to detect critical wear.