『Simplicity』のカバーアート

Simplicity

Simplicity

無料で聴く

ポッドキャストの詳細を見る

今ならプレミアムプランが3カ月 月額99円

2026年5月12日まで。4か月目以降は月額1,500円で自動更新します。

概要

Initiating AI workloads in the cloud is straightforward. GPUs can be provisioned quickly, experiments launched immediately, and early results demonstrated to leadership—without capital expenditure or procurement delays.

The challenge emerges at scale.

As systems move into production, costs escalate. Finance questions why cloud spend doubled last quarter. Security teams seek clarity on where sensitive training data resides. Machine learning engineers face compute bottlenecks despite significant allocated capacity.

When failures occur, accountability becomes fragmented. With multiple vendors involved, resolution is slow and responsibility diffuse.

What once took hours to deploy can take weeks to stabilize.

In this 37-minute discussion recorded at Cisco Studio Amsterdam, Raymond Drielinger (MDCS.AI) and Jara Osterfeld (Cisco) examine what happens when AI workloads outgrow the cloud sandbox and enter enterprise reality.

Key topics include:

  • Why GPUs remain underutilized in shared cloud environments while costs continue to accrue.
  • How “noisy neighbor” effects degrade model performance—and why identical workloads often run faster on-premises.
  • The difference between assembling hundreds of disconnected components and deploying an integrated, high-performance system engineered for immediate results.
  • How a single point of accountability replaces multi-vendor finger-pointing.

A practical perspective on what it truly takes to scale AI beyond experimentation.

adbl_web_anon_alc_button_suppression_c
まだレビューはありません