CITRIX Virtual Apps and Desktops 7 Administration On-Premises And In CITRIX Cloud Training Course
If you are new to Citrix or planning to transition to Citrix Cloud, this course is essential for equipping you with the necessary training and skills to manage and deploy Citrix Workspace effectively. This foundational administration course delves into the installation, configuration, and management of a Citrix Virtual Apps and Desktops 7 environment. It also covers how to manage an on-premises Citrix solution and migrate from an on-premises setup to the cloud using the Citrix Cloud management platform.
This five-day course will guide you through deploying, installing, configuring, setting up profile management, configuring policies, printing, and basic security features for building an on-premises Virtual Apps and Desktops solution, followed by the process of migrating to Citrix Cloud.
This course is available as onsite live training in Taiwan or online live training.Course Outline
- Module 1: Architecture Overview
- Introduction to Citrix Virtual Apps and Desktops
- Architecture Overview
- Features
- Hosting Platform Considerations
- Citrix Virtual Apps and Desktops Service
- Connection Flow Process Introduction
- Module 2: Deploy the Site
- Pre-Deployment Considerations
- Citrix Licensing Setup
- Delivery Controller Setup
- Site Setup And Management
- Redundancy Considerations
- Module 3: The Apps and Desktops Images
- Consider Master Image Creation Methods
- Master Image Requirements
- Module 4: Provision and Deliver App and Desktop Resources
- Machine Catalogs and Delivery Groups
- Provisioning Methods and Considerations
- Machine Creation Services (MCS) Deep Dive
- MCS Environment Considerations
- Resource Locations
- Module 5: Provide Access to App and Desktop Resources
- Consider Workspace Experience versus StoreFront
- Workspace Experience User Authentication
- Workspace App
- Communication Flow
Open Training Courses require 5+ participants.
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Testimonials (2)
All good, nothing to improve
Ievgen Vinchyk - GE Medical Systems Polska Sp. Z O.O.
Course - AWS Lambda for Developers
IOT applications
Palaniswamy Suresh Kumar - Makers' Academy
Course - Industrial Training IoT (Internet of Things) with Raspberry PI and AWS IoT Core 「4 Hours Remote」
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