Hyper-V shared VHDX vs VHDX

With the introduction of Windows 2k12 R2, shared VHDX has been added along with VHDX (Virtual Hard disk Extended). VHDX supports higher LUN storage (64 TB) and has better optimization in comparison to VHD.

What are the benefits of shared VHDX?

Shared VHDX on one of the vms is accessible to multiple virtual machines on the same host (Can not map OS on it).

A simple use case can be to setup two exactly similar VMs with shared VHDX shared between the two. Start the copy on one of the VMs and shut it down during the copy operation, the copy will pause for sometime and resume again as if nothing happened.  This happens because all the file meta data is tracked continually in VHDX unlike VHD.

Under VHDX all Vms are sending the I/O to the coordinator node. This includes meta data as well as I/O. Coordinator node sends the I/O to the VHDX.

So if there is a VM which is hosted on the coordinator node, it will still send it to the NTFS stack on the same node. Here is how it should look like.

To know more email: marketing@calsoftinc.com

Contributed by: Himanshu Sonkar | CalsoftInc.

 
Share:

Related Posts

Fine-Tuning GenAI - From Cool Demo to Reliable Enterprise Asset

Fine-Tuning GenAI: From Cool Demo to Reliable Enterprise Asset

Generative AI (GenAI) is quickly moving from experimentation to enterprise adoption. It can generate text, visuals, even code, but the real value emerges when these models are…

Share:
VMware to AWS Migration - 3 Technical Approaches

VMware to AWS Migration: 3 Technical Approaches That Work

Picture this: your IT team is staring at a renewal notice from VMware. Costs are higher than expected, bundles force you into features you don’t use, and…

Share:
Gen AI in Digital Product Engineering

How Gen AI is Transforming Digital Product Engineering Companies

Explore how Generative AI is reshaping digital product engineering companies by driving innovation, accelerating development, and improving customer experiences. Learn its role in modernizing workflows and building competitive advantage.

Share:
From Bottlenecks to Breakthroughs - Building Synthetic Data Pipelines with LLM Agents - Blog banner

From Bottlenecks to Breakthroughs: Building Synthetic Data Pipelines with LLM Agents

Recently, we collaborated with a team preparing to fine-tune a domain-specific Large Language Model (LLM) for their product. While the base model architecture was in place, they…

Share:
From Reactive to Proactive AI Predictive Testing in Software Development - Blog Banner

From Reactive to Proactive: AI Predictive Testing in Software Development

The old rhythm of software testing—write code, run tests, fix bugs—doesn’t hold up anymore. Continuous releases, sprawling microservices, and unpredictable user behavior are stretching QA teams beyond…

Share:
Applications of Large Language Models in Business - Blog Banner

Applications of Large Language Models in Business 

Enterprises today are buried under unstructured data, repetitive workflows, and rising pressure to move faster with fewer resources. Large Language Models (LLMs) are emerging as a practical…

Share: