AWS Global Infrastructure (Regions, AZs, Edge Locations)
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AWS Global Infrastructure (Regions, AZs, Edge Locations)
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AWS Global Infrastructure is designed to deliver high availability, scalability, and performance worldwide. At the core are Regions, which are physical geographic locations such as Mumbai, Singapore, or Virginia. Each region contains multiple Availability Zones (AZs)—isolated data centers with independent power, cooling, and networking. AZs are connected with low-latency links, so applications can be architected for fault tolerance and disaster recovery by deploying across multiple AZs within the same region. For example, if one AZ fails, workloads can still run in another AZ without downtime. Beyond Regions and AZs, AWS also uses Edge Locations as part of its Amazon CloudFront Content Delivery Network (CDN). These are smaller data centers located in major cities across the globe, designed to cache and deliver content like websites, videos, or APIs with the lowest latency to end-users. AWS also offers Local Zones and Wavelength Zones for ultra-low latency applications closer to end-users. Together, this global infrastructure allows businesses to build highly available, secure, and fast applications that can scale globally. Understanding Regions, AZs, and Edge Locations is critical for designing resilient architectures in AWS DevOps.
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