技术
- 应用基础设施与中间件 - 数据库管理和存储
- 基础设施即服务 (IaaS) - 云计算
- 平台即服务 (PaaS) - 数据管理平台
适用功能
- 商业运营
用例
- 网络安全
- 边缘计算与边缘智能
服务
- 云规划/设计/实施服务
- 网络安全服务
客户
北京互联网港公司
关于客户
北京互联网港湾科技有限公司(BIH)是一家高科技混合云服务提供商。我们提供混合云服务、托管服务、IP 传输服务和其他 IT 相关服务。
采用SDN全冗余平台的IP传输网络可以提供稳定、弹性、高性价比的网络服务。
多样化的 ICT 解决方案帮助终端用户和企业客户在中国大陆以及香港、硅谷、法兰克福等其他全球 POP 地区任意优化其网络/云环境。
挑战
面对激烈的市场竞争,新系统需要提高客户满意度,确保系统持续运行并控制成本。
解决方案
日立统一计算平台支持计算、网络和存储资源的统一管理和供应。
运营影响
数量效益
Case Study missing?
Start adding your own!
Register with your work email and create a new case study profile for your business.
相关案例.
Case Study
VIPER Aid to Acoustic Positioning
Applied Acoustics Easytrak Portable acoustic navigation system can undertake a wide range of tracking and positioning tasks for seabed mapping, towfish tracking and controlling robotic vehicles. It is also used to locate subsea divers, so is critical to the safety of personnel. To deal with difficult operating environment, a robust single board computer is required.
Case Study
Enel Secures Italian Power Generation Network
Electric energy operators around the world are working to increase the reliability and cyber resiliency of their systems. This includes Enel, a global power company that manages and monitors the Italian power grid. This grid:• Serves 31 million customers• Has a net installed energy capacity exceeding 31 gigawatts• Includes more than 500 power generation plants,including hydroelectric, thermoelectric, and wind• Is managed and monitored by Enel 24/7/365• Is operated by Terna, the Italian Transmission System Operator (TSO)Enel is responsible for the availability of the grid’s underlying ICS and industrial network. It also manages Regional Control Centers and Interconnection Centers which connect with the TSO. The TSO manages the flow of energy to the grid plus controls and remotely regulates the power generation of power plants, increasing and decreasing power production as required. The complex system of interaction and cooperation between Enel and the TSO has strong security implications as well as operational and business challenges.
Case Study
A repeatable model for industrial data intelligence
Exara’s oil and gas client required a reliable way to gather, store, and process data from sophisticated machine assets in remote oil field sites. These harsh, real world environments present significant challenges for high performance computing devices.
Case Study
A Smarter Brain for Your Train…
Have you ever felt overloaded by too much sensory input? The results can be problematic, even risky if you’re driving at the time. The same holds true for trains, ships, oil rigs, and many other industrial assets. The data processing challenges on these complex machines are growing rapidly as the number of sensors increases; yet so are the opportunities to transform operations by using all the available data effectively. A modern locomotive, for example, has as many as 200 sensors generating more than a billion data points per second.
Case Study
Securing the Connected Car Ecosystem
In-vehicle communications and entertainment system hosts high-value or sensitive applications. API libraries facilitate communication and sharing of vehicle data. These API libraries are vulnerable to reverse engineering and tampering attacks and may even result in loss of passenger safety. Attackers can inject malware that may be able to migrate to other in-car networks such as the controller-area-network (CAN) bus which links to the vehicle’s critical systems. Software provided for dealers to interface with cars through the OBD2 port is vulnerable to reverse engineering and tampering attacks. Hackers may be able to abuse these tools to inject malicious code into the ECUs and CAN bus. Attackers can lift the cryptographic keys used, and use that to build their own rogue apps/software. Their cloned version of the original app/software may have altered functionality, and may intend to gain access to other in-car networks.
Case Study
IIC - Edge Intelligence Testbed
A test environment is needed for algorithms and architectures that meets a common set of requirements for many testbeds (see "Testbed in Depth")GOAL:A test facility that can be configured into complex edge compute environments, in order to further the state-of-the-art in edge analytics and algorithms