article thumbnail

Cloud PC preps Grant Thornton for hybrid future

CIO Business Intelligence

Enterprises that pushed in early to the cloud fared far better than their competition, Grant Thornton chief among them. But the benefits of buying in early to cloud-based productivity services didn’t stop there for Grant Thornton. So, Swift signed on before the official launch of Microsoft’s Windows 365 Cloud PC roughly one year ago.

Cloud 91
article thumbnail

VMworld 2013 – VMware`s chance to stay relevant

Virtualized Greek

Microsoft, Citrix and open source hypervisors have quickly become good enough for basic virtualization use cases. Even the real value add of management is starting to be challenged by Openstack for Cloud based deployments. Right now it sounds very similar to the argument for VoIP in the early days.

Vmware 64
Insiders

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

Trending Sources

article thumbnail

Technology Short Take #44

Scott Lowe

To help resolve this issue, Cumulus Networks (and possibly Metacloud, I’m not sure of their involvement yet) has release an open source project called vxfld. Cloud Computing/Cloud Management. SDN Central has a nice write-up on the need for open efforts in the policy space, which includes the Congress project.

Linux 60
article thumbnail

Technology Short Take #61

Scott Lowe

Cloud Computing/Cloud Management. While containers solve some problems very elegantly, they don’t necessarily solve other problems quite as well, and this article dives into one such area (VoIP architectures). I’ve been watching Keybase, but this really makes me want to get selected to participate. on Azure VMs. Virtualization.

Vmware 60
article thumbnail

How ML Ops Can Help Scale Your AI and ML Models

CIO Business Intelligence

Coupled with the advent of the Internet and the development of new technologies such as IPv6, VOIP, IoT, and 5G, companies are suddenly awash in more data than ever before. That’s because companies didn’t have sufficient computing power, storage capabilities, or enough data to make an investment in developing ML and AI models worthwhile.