What are common AWS storage options for data?

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AWS (Amazon Web Services) supports DevOps and Continuous Integration/Continuous Deployment (CI/CD) through a wide range of tools and services designed to automate software development, testing, and deployment.

Amazon Web Services (AWS) offers a wide variety of storage options designed for different use cases. Here are the common AWS storage options:


1. Amazon S3 (Simple Storage Service)

  • Type: Object storage

  • Use Cases: Backup, static website hosting, big data analytics, media storage

  • Key Features:

    • Scalable, durable (99.999999999% durability)

    • Storage classes: S3 Standard, S3 Intelligent-Tiering, S3 Glacier, etc.

    • Lifecycle policies, versioning, encryption


2. Amazon EBS (Elastic Block Store)

  • Type: Block storage

  • Use Cases: Storage for EC2 instances, databases, file systems

  • Key Features:

    • Persistent storage for EC2

    • SSD (gp3, io2) and HDD (st1, sc1) options

    • Snapshots for backup


3. Amazon EFS (Elastic File System)

  • Type: File storage (NFS)

  • Use Cases: Shared file storage for Linux workloads

  • Key Features:

    • Fully managed, scalable

    • Ideal for containerized apps (ECS, EKS), analytics

    • Bursting throughput


4. Amazon FSx

  • Type: File storage (Windows/Linux-specific)

  • Variants:

    • FSx for Windows File Server: SMB protocol, Active Directory support

    • FSx for Lustre: High-performance workloads (HPC, ML, media)

    • FSx for NetApp ONTAP: Advanced enterprise features

  • Use Cases: Enterprise apps, data lakes, backups


5. AWS Glacier & S3 Glacier Deep Archive

  • Type: Cold storage (object-based)

  • Use Cases: Long-term archive, compliance, backups

  • Key Features:

    • Low cost, high durability

    • Retrieval options: Expedited, Standard, Bulk


6. AWS Storage Gateway

  • Type: Hybrid cloud storage

  • Use Cases: On-prem to cloud backup, archive, and disaster recovery

  • Types:

    • File Gateway (NFS/SMB)

    • Volume Gateway (iSCSI)

    • Tape Gateway (VTL replacement)


7. AWS Backup

  • Type: Centralized backup service

  • Use Cases: Backup across AWS services (EBS, RDS, DynamoDB, etc.)

  • Key Features:

    • Policy-based automation

    • Compliance and retention


8. AWS DataSync

  • Type: Data transfer service

  • Use Cases: Moving data between on-prem and AWS storage

  • Key Features:

    • Fast, secure transfer

    • Supports NFS, SMB, HDFS

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