Latency can be a major problem for applications that depend upon real-time access to data. Edge computing, which places computing near the user's or data source's physical location, is a way to deliver services faster and more reliably while gaining flexibility from hybrid cloud computing. This speed is vital in industries such as healthcare, utilities, telecom, and manufacturing.
There are three categories of edge use cases:
- The first is called enterprise edge, and it allows customers to extend application services to remote locations. It has a core enterprise data store located in a datacenter or as a cloud resource.
- The second is operations edge, which focuses on analyzing inputs in real time (from Internet of Things sensors, for example) to provide immediate decisions that result in actions. For performance reasons, this generally happens onsite. This kind of edge is a place to gather, process, and act on data.
- The third category is provider edge, which manages a network for others, as in the case of telecommunications service providers. This type of edge focuses on creating a reliable, low-latency network with computing environments close to mobile and fixed users.
For the past few years, Red Hat's Portfolio Architecture team has been developing reference architectures based on customers' real-world use cases in various industries. We have multiple criteria for developing and vetting an architecture collection before we publish it, which you can read about in my intro article about Portfolio Architectures.
We're publishing these architectures for anyone's use on our Red Hat Portfolio Architecture Center and Portfolio Architecture Examples repository.
This article presents architectures centered around edge computing. There are currently five architectures in this collection. I'll provide a short overview of each and allow you to explore them in-depth on your own.
In each of these architectures' GitHub repository (linked in each architecture's description), you'll find a table of contents outlining the technologies used, several example schematic diagrams with descriptions, and a link to open the diagrams directly into the online tooling in your browser.
[ Learn why you should consider using cloud services for cloud-native development. ]
Cloud to edge architecture
The cloud to edge architecture covers the use case for providing a consistent infrastructure experience from cloud to edge and enabling modern containerized applications at the edge.
(Note: This project is a new architecture and is currently in progress. I'll share one of the schematic architecture diagrams, and you can monitor this project for updates as it progresses to completion.)
This architecture brings cloud-like capabilities to the edge locations.
Data center to edge architecture
The data center to edge architecture covers energy and utility infrastructure companies that operate across a vast geographical area that connects the upstream drilling operations with downstream fuel processing and delivery to customers. These companies need to monitor the pipeline's condition and other infrastructure for operational safety and optimization.
The architecture brings computing closer to the edge by monitoring for potential issues with gas pipelines.
Edge manufacturing efficiency architecture
The edge manufacturing efficiency architecture offers additional functionality to manufacturing. The manufacturing industry consistently uses technology to fuel innovation, production optimization, and operations. By combining edge computing, artificial intelligence, and machine learning (AI/ML), manufacturers can benefit from bringing processing power closer to data. This helps them take action faster on concerns like errors and predictive maintenance.
The architecture boosts manufacturing efficiency and product quality with AI and ML out to the edge.
[ Explore top considerations for building a production-ready AI/ML environment. ]
Edge medical diagnosis architecture
The edge medical diagnosis architecture services the healthcare industry. The use case accelerates medical diagnosis using condition detection in medical imagery with AI/ML at medical facilities.
SCADA interface modernization architecture
The supervisory control and data acquisition (SCADA) interface modernization architecture targets energy providers in North America seeking compliance with North American Electric Reliability Corporation (NERC) regulations by modernizing interfaces between their business applications and their SCADA systems. This modernization also provides better information consumption that can be combined with AI/ML and decision-management tools to address customer needs more effectively.
The architecture provides interfaces with SCADA systems that comply with NERC regulations, creating different layers of API gateways to protect business services based on the network zones.
Learn more
These are five of the many reference architectures Red Hat's Portfolio Architects have published, and we'll continue to publish them as we complete them. If you are interested in more architecture solutions like these, feel free to export the Portfolio Architecture Examples repository.
This article originally appeared on Eric D. Schabell's blog and is republished with permission.
저자 소개
유사한 검색 결과
Deterministic performance with Red Hat Enterprise Linux for industrial edge
Bridging the gap: Red Hat Academy shaping open source talent in APAC
What Can Video Games Teach Us About Edge Computing? | Compiler
The Sysadmin And The Script | Compiler: Re:Role
채널별 검색
오토메이션
기술, 팀, 인프라를 위한 IT 자동화 최신 동향
인공지능
고객이 어디서나 AI 워크로드를 실행할 수 있도록 지원하는 플랫폼 업데이트
오픈 하이브리드 클라우드
하이브리드 클라우드로 더욱 유연한 미래를 구축하는 방법을 알아보세요
보안
환경과 기술 전반에 걸쳐 리스크를 감소하는 방법에 대한 최신 정보
엣지 컴퓨팅
엣지에서의 운영을 단순화하는 플랫폼 업데이트
인프라
세계적으로 인정받은 기업용 Linux 플랫폼에 대한 최신 정보
애플리케이션
복잡한 애플리케이션에 대한 솔루션 더 보기
가상화
온프레미스와 클라우드 환경에서 워크로드를 유연하게 운영하기 위한 엔터프라이즈 가상화의 미래