Automation for Cloud Optimization

Automation for Cloud Optimization

During the pandemic, many organizations sped up their move to the cloud — without fully understanding the costs, both human and financial, they would pay for the convenience and scalability of a digital transformation.

“They really didn’t have a baseline,” said Mekka Williams, principal engineer, at Spot by NetApp, in this episode of The New Stack Makers podcast. “And so the those first cloud bills, I'm sure were shocking, because you don't get a cloud bill, when you run on your on-premises environment, or even your private cloud, where you've already paid the cost for the infrastructure that you're using.

What’s especially worrisome is that many of those costs are simply wasted, Williams said. “Most of the containerized applications running in Kubernetes clusters are running underutilized,” she said. “And anything that's underutilized in the cloud equates to waste. And if we want to be really lean and clean and use resources in a very efficient manner, we have to have really good cloud strategy in order to do that.”

This episode of The New Stack Makers, hosted by Heather Joslyn, TNS features editor, focused on CloudOps, which in this case stands for “cloud operations.” (It can also stand for “cloud optimization,” but more about that later.)

The conversation was sponsored by Spot by NetApp.

Automation for Cloud Optimization

Many organizations that moved quickly to the cloud during the dog days of the pandemic have begun to revisit the decisions they made and update their strategies, Williams said.

“We see some organizations that are trying to modernize their applications further, to make better use of the services that are available in the cloud,” she said. “The cloud is getting more complex as they grow and mature in their journey.

“And so they're looking for ways to simplify their operations. And as always keep their costs down. Keep things simple for their DevOps and SRE, to is not incur additional technical debt, but still make the most make the best use out of their cloud, wherever they are.”

Automation holds the key to CloudOps — both definitions — according to Williams. For starters, it makes teams more efficient.

“The less tasks that your workforce have to perform manually, the more time they have to spend focused on business logic and being innovative,” Williams said. “Automation also helps you with repeatability. And it's less error-prone, and it helps you standardize. Really good automation simplifies your environment greatly.”

Automating repetitive tasks can also help prevent your site reliability engineers (SREs) from burnout, she said.

Practicing “good data hygiene,” Williams said, also helps contain costs and reduce toil: “Making sure you're using the right tier of data, making sure you're not over-provisioned. And the type of storage you need, you don't need to pay top dollar for high-performing storage, if it's just backup data that doesn't get accessed that often.”

Such practices are “good to know on-premises, but these are imperative to know when you're in the cloud,” she said, in order to reduce waste.

During this episode, Williams pointed to solutions in the Spot by Netapp portfolio that use automation to help make the most of cloud infrastructure, such as its flagship product, Elastigroup, which takes advantage of excess capacity to scale workloads.

In June, Spot by NetApp acquired Instaclustr, a solution for managing open source database and streaming technologies. The company recognizes the growing importance of open source for enterprises. “We're paying attention to trends for cloud applications,” Williams said, “and we're growing the portfolio to address the needs that are top of mind for those customers.”

Check out the entire episode to learn more about CloudOps.

Tämä jakso on lisätty Podme-palveluun avoimen RSS-syötteen kautta eikä se ole Podmen omaa tuotantoa. Siksi jakso saattaa sisältää mainontaa.

Jaksot(300)

JetBrains is selling independence as the rest of AI coding picks sides

JetBrains is selling independence as the rest of AI coding picks sides

JetBrains is positioning itself as the last major independent AI coding-tool vendor in a market increasingly tied to hyperscalers and foundation model labs. Speaking at Google Cloud Next, JetBrains VP...

21 Touko 26min

Why Block handed Goose to the Linux Foundation

Why Block handed Goose to the Linux Foundation

What began as an internal developer tool atBlockhas evolved into a broader open-source initiative with industry backing. Goose, Block’s AI coding agent, followed a path similar to Amazon’s transformat...

15 Touko 19min

Fivetran's CPO: closed data stacks won't survive the agent era

Fivetran's CPO: closed data stacks won't survive the agent era

At Google Cloud Next 2026, Fivetran Chief Product Officer Anjan Kundavaram argued that enterprise data systems are unprepared for the scale of AI-driven analytics. Unlike humans, AI agents can generat...

13 Touko 22min

The new FinOps problem isn't cloud bills

The new FinOps problem isn't cloud bills

At Google Cloud Next 2026, Finout co-founder and CEO Roi Ravhon and Google Cloud FinOps lead Pathik Sharma discussed how FinOps is rapidly evolving for the AI era. Ravhon argued that while cloud FinOp...

12 Touko 28min

How Microsoft is governing thousands of Kubernetes clusters without manual intervention

How Microsoft is governing thousands of Kubernetes clusters without manual intervention

Managing Kubernetes at fleet scale introduces significant complexity, especially as organizations expand from a few clusters to hundreds or thousands across cloud, on-premises, and edge environments. ...

7 Touko 25min

Why long-running AI agents break on HTTP and how Ably is fixing it

Why long-running AI agents break on HTTP and how Ably is fixing it

In this episode ofThe New Stack Makers, Matthew O’Riordan, CEO of Ably, explains how infrastructure originally built for human collaboration is now well-suited for long-running AI agents. While Ably i...

6 Touko 31min

Why the Linux Foundation adopted MCP, with Jim Zemlin and Mazin Gilbert

Why the Linux Foundation adopted MCP, with Jim Zemlin and Mazin Gilbert

Agentic AI is advancing rapidly, with open-source projects racing to keep pace with real-world deployment. To accelerate progress, the Linux Foundation consolidated key technologies—Model Context Prot...

6 Touko 32min

Fresh data has us asking, does AI demand Kubernetes?

Fresh data has us asking, does AI demand Kubernetes?

Kubernetes is rapidly emerging as the de facto operating system for AI, with two-thirds of organizations using it for generative AI inference and 82% adopting it in production. Its ecosystem — includi...

1 Touko 23min

Suosittua kategoriassa Politiikka ja uutiset

uutiscast
aikalisa
politiikan-puskaradio
rss-ootsa-kuullut-tasta
ootsa-kuullut-tasta-2
rss-vaalirankkurit-podcast
tervo-halme
otetaan-yhdet
rss-podme-livebox
viisupodi
et-sa-noin-voi-sanoo-esittaa
rss-pinnalla
rss-asiastudio
rss-girls-finish-f1rst
linda-maria
rss-raha-talous-ja-politiikka
rss-ulkopoditiikkaa
rikosmyytit
the-ulkopolitist
rss-polikulaari-pitka-kiekko-ja-muut-ts-podcastit