Nutanix Acropolis Hypervisor (AHV) Administration Training Course
Acropolis Hypervisor (AHV) is Nutanix's native hypervisor, designed to be a robust and scalable alternative to traditional hypervisors like VMware ESXi and Microsoft Hyper-V.
This instructor-led, live training (online or onsite) is aimed at beginner-level system administrators who wish to learn essential concepts and practical skills required for effective management and optimization of Nutanix environments.
By the end of this training, participants will be able to:
- Understand Nutanix Enterprise Cloud Platform and its components.
- Install, configure, and manage Nutanix Clusters.
- Gain proficiency in administering the Acropolis Hypervisor (AHV).
- Perform advanced management tasks and troubleshooting.
- Implement best practices for high availability, disaster recovery, and security.
Format of the Course
- Interactive lecture and discussion.
- Lots of exercises and practice.
- Hands-on implementation in a live-lab environment.
Course Customization Options
- To request a customized training for this course, please contact us to arrange.
Course Outline
Introduction to Nutanix and Acropolis Hypervisor
- Overview of Nutanix Enterprise Cloud
- Understanding the Nutanix architecture
- Introduction to AHV
- Key features of AHV
- AHV vs. other hypervisors
Setting up Nutanix Environment
- Hardware requirements
- Initial configuration and setup
- Navigating Prism Element
Installing Nutanix Clusters
- Nutanix Foundation tool
- Cluster initialization
Configuring Nutanix Clusters
- Network configuration
- Storage configuration
- Cluster expansion and shrinkage
Managing Virtual Machines (VMs)
- Creating and managing VMs in AHV
- VM templates and cloning
- Snapshots and VM protection
Prism Central Overview
- Setting up Prism Central
- Managing multiple clusters
- Performance monitoring and reporting
Data Protection and Disaster Recovery
- Data protection strategies
- Implementing Nutanix snapshots
- Disaster recovery with Nutanix
High Availability and Fault Tolerance
- Configuring high availability
- Understanding fault tolerance in Nutanix
- Load balancing and failover
Performance Tuning Best Practices
- Storage optimization techniques
- Network optimization
- VM optimization
Troubleshooting Nutanix Clusters
- Common issues and solutions
- Using Nutanix support tools
- Log analysis and diagnostics
Security Best Practices
- Nutanix security features
- Implementing security policies
- Monitoring and auditing
Summary and Next Steps
Requirements
- Basic understanding of virtualization concepts
- Familiarity with networking and storage fundamentals
Audience
- System administrators
- Data center managers
- IT professionals
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Testimonials (2)
The part of the LAB. Trying failing redo success ... Is needed for courage that is needed to work with Nutanix.
Cretu Adrian
Course - Nutanix Acropolis Hypervisor (AHV) Administration
in depth examples
Nicolae Stanca
Course - Nutanix Acropolis Hypervisor (AHV) Administration
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