
Hyperion Research HYP_Link HPE Private Cloud AI June 2024
$1,500.00
Authors: Mark Nossokoff and Earl Joseph
Publication Date: June 202024
Length: 1 pages
At their annual HPE Discover conference, HPE introduced the HPE Private Cloud AI family of turnkey solutions as part of its NVIDIA AI Computing by HPE portfolio. The HPE Private Cloud AI solutions integrate NVIDIA AI computing, networking, and software with HPE’s AI storage and HPE Greenlake Cloud, with complete on-premises solutions fully tested with all the software preloaded. Beyond the infrastructure elements HPE is bringing to this partnership, they are also contributing business leadership in areas such as sales teams and channel partners, training, and a global network of system integrators to the joint go-to-market (GTM) efforts that aim to help enterprises expedite time-to-value from their investments in AI inferencing.
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