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Inovonics Leverages Redis Enterprise on Google Cloud Platform to Launch Its New IoT Data Analytics Products
技术
- 平台即服务 (PaaS) - 数据管理平台
- 分析与建模 - 预测分析
- 分析与建模 - 机器学习
- 基础设施即服务 (IaaS) - 虚拟私有云
适用行业
- 医疗保健和医院
- 教育
适用功能
- 设施管理
- 维护
- 质量保证
用例
- 预测性维护
- 入侵检测系统
- 机器状态监测
- 实时定位系统 (RTLS)
服务
- 云规划/设计/实施服务
- 数据科学服务
- 系统集成
挑战
Inovonics, a leader in wireless sensor networks for life safety applications, faced the challenge of harnessing the vast amounts of data collected by its devices. The data was previously siloed, limiting its potential for actionable insights. The company needed a robust data platform to centralize this data, reduce operational overhead, and provide high performance and resiliency. Additionally, Inovonics sought to leverage this data for new product offerings, such as predictive maintenance analytics and insights into security risks, while minimizing the operational footprint and costs.
关于客户
Inovonics is a prominent provider of high-performance wireless sensor networks, specializing in life safety applications across various sectors including healthcare, education, government, banking, multifamily housing, and senior living. With over 10 million devices deployed globally, Inovonics has access to a unique and extensive dataset. The company has a 30-year history of delivering wireless technology solutions and has recently shifted focus to harnessing big data for advanced analytics. This transition aims to provide customers with valuable insights and enhance the company's product offerings.
解决方案
To address its challenges, Inovonics adopted Redis Enterprise VPC from Redis Labs, hosted on Google Cloud Platform (GCP). This solution allowed Inovonics to centralize its data, enabling advanced analytics and reducing operational overhead. Redis Enterprise's compatibility with GCP and its fully managed operations allowed Inovonics' IT team to focus on analytics rather than infrastructure maintenance. The NoSQL structure of Redis Enterprise provided simplicity and control over hierarchical data, while its high performance and elastic scalability were crucial for handling large volumes of data from millions of sensors. Additionally, Redis on Flash enabled cost-effective data storage and processing, and native Kubernetes support on GCP facilitated a container-centric cloud environment, further simplifying infrastructure management.
运营影响
数量效益
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