AWS Storage Data Protection Services Getting Started

Coursera Courses ↗ · Coursera

Open Course on Coursera

Free to audit · Opens on Coursera

AWS Storage Data Protection Services Getting Started

Coursera · Beginner ·🔍 RAG & Vector Search ·1mo ago
Amazon Web Services (AWS) storage provides you with the services you need to build the storage solution that’s right for your organization. Backup and disaster recovery services provide you those additional tools to develop your complete storage solutions. You will discover backup and service-native snapshot services to meet your organization’s backup requirements. You also discover an AWS service that can replicate your on-premises application servers for disaster recovery protection. In addition, you will learn about service-native replication you can use to protect your data or enhance service availability across AWS Regions. You can select from these different service offerings and apply them to your organization’s needs to discover the best storage solution. Before choosing an AWS storage solution, we recommend you first assess what storage characteristics are appropriate for your applications and business. After familiarizing yourself with AWS storage, you can then compare your requirements to the available services and select the solution that meets your needs. This course introduces customers to the benefits, features, use cases, and considerations for storage data protection services. These include AWS Backup and AWS Elastic Disaster Recovery. In addition, you are introduced to other storage protection services that are native features included with the core block, file, and object services. These include snapshots and replication features.
Watch on Coursera ↗ (saves to browser)
Sign in to unlock AI tutor explanation · ⚡30

Related AI Lessons

When Should You Use Text2Cypher in a GraphRAG Pipeline
Learn when to use Text2Cypher in a GraphRAG pipeline to retrieve precise graph results from natural language questions
Dev.to AI
How to build a production RAG pipeline in Python (without a vector database)
Learn to build a production-ready RAG pipeline in Python without relying on a vector database, and understand the key considerations for a scalable and efficient implementation
Dev.to · Ayi NEDJIMI
Architecting Sub-150ms Hybrid RAG for Voice Agents: Combining pgvector, BM25, and Async FastAPI…
Learn how to architect a sub-150ms hybrid RAG for voice agents using pgvector, BM25, and Async FastAPI to serve large industrial catalogs
Medium · Python
Security Controls in Enterprise RAG: Keys, Audit Logs, and the Hierarchy That Prevents Role Elevation
Implement security controls in Enterprise RAG to prevent role elevation and ensure data integrity
Dev.to · Manjunath
Up next
Watch this before applying for jobs as a developer.
Tech With Tim
Watch →