Thursday, 7 May 2026
Subscribe
logo
  • AI Compute
  • Infrastructure
  • Power & Cooling
  • Security
  • Colocation
  • Cloud Computing
  • More
    • Sustainability
    • Industry News
    • About Data Center News
    • Terms & Conditions
Font ResizerAa
Data Center NewsData Center News
Search
  • AI Compute
  • Infrastructure
  • Power & Cooling
  • Security
  • Colocation
  • Cloud Computing
  • More
    • Sustainability
    • Industry News
    • About Data Center News
    • Terms & Conditions
Have an existing account? Sign In
Follow US
© 2022 Foxiz News Network. Ruby Design Company. All Rights Reserved.
Data Center News > Blog > AI & Compute > Cutting cloud waste at scale: Akamai saves 70% using AI agents orchestrated by kubernetes
AI & Compute

Cutting cloud waste at scale: Akamai saves 70% using AI agents orchestrated by kubernetes

Last updated: June 17, 2025 7:29 am
Published June 17, 2025
Share
Cutting cloud waste at scale: Akamai saves 70% using AI agents orchestrated by kubernetes
SHARE

Be a part of the occasion trusted by enterprise leaders for almost twenty years. VB Remodel brings collectively the individuals constructing actual enterprise AI technique. Learn more


Significantly on this dawning period of generative AI, cloud prices are at an all-time excessive. However that’s not merely as a result of enterprises are utilizing extra compute — they’re not utilizing it effectively. Actually, simply this 12 months, enterprises are anticipated to waste $44.5 billion on pointless cloud spending. 

That is an amplified drawback for Akamai Technologies: The corporate has a big and complicated cloud infrastructure on a number of clouds, to not point out quite a few strict safety necessities.

To resolve this, the cybersecurity and content material supply supplier turned to the Kubernetes automation platform Cast AI, whose AI brokers assist optimize value, safety and pace throughout cloud environments. 

Finally, the platform helped Akamai reduce between 40% to 70% of cloud prices, relying on workload. 

“We wanted a steady solution to optimize our infrastructure and cut back our cloud prices with out sacrificing efficiency,” Dekel Shavit, senior director of cloud engineering at Akamai, instructed VentureBeat. “We’re those processing safety occasions. Delay will not be an choice. If we’re not in a position to reply to a safety assault in actual time, we now have failed.”

Specialised brokers that monitor, analyze and act

Kubernetes manages the infrastructure that runs functions, making it simpler to deploy, scale and handle them, significantly in cloud-native and microservices architectures.

Solid AI has built-in into the Kubernetes ecosystem to assist clients scale their clusters and workloads, choose the perfect infrastructure and handle compute lifecycles, defined founder and CEO Laurent Gil. Its core platform is Utility Efficiency Automation (APA), which operates by way of a crew of specialised brokers that constantly monitor, analyze and take motion to enhance utility efficiency, safety, effectivity and price. Corporations provision solely the compute they want from AWS, Microsoft, Google or others.

See also  Black Hat 2025: ChatGPT, Copilot, DeepSeek now create malware

APA is powered by a number of machine studying (ML) fashions with reinforcement studying (RL) primarily based on historic knowledge and discovered patterns, enhanced by an observability stack and heuristics. It’s coupled with infrastructure-as-code (IaC) instruments on a number of clouds, making it a totally automated platform.

Gil defined that APA was constructed on the tenet that observability is simply a place to begin; as he referred to as it, observability is “the inspiration, not the aim.” Solid AI additionally helps incremental adoption, so clients don’t have to tear out and change; they will combine into present instruments and workflows. Additional, nothing ever leaves buyer infrastructure; all evaluation and actions happen inside their devoted Kubernetes clusters, offering extra safety and management.

Gil additionally emphasised the significance of human-centricity. “Automation enhances human decision-making,” he stated, with APA sustaining human-in-the-middle workflows.

Akamai’s distinctive challenges

Shavit defined that Akamai’s giant and complicated cloud infrastructure powers content material supply community (CDN) and cybersecurity companies delivered to “a few of the world’s most demanding clients and industries” whereas complying with strict service degree agreements (SLAs) and efficiency necessities.

He famous that for a few of the companies they eat, they’re most likely the most important clients for his or her vendor, including that they’ve achieved “tons of core engineering and reengineering” with their hyperscaler to help their wants. 

Additional, Akamai serves clients of assorted sizes and industries, together with giant monetary establishments and bank card firms. The corporate’s companies are straight associated to its clients’ safety posture. 

Finally, Akamai wanted to stability all this complexity with value. Shavit famous that real-life assaults on clients might drive capability 100X or 1,000X on particular elements of its infrastructure. However “scaling our cloud capability by 1,000X upfront simply isn’t financially possible,” he stated. 

See also  Google just made CNAPP the fastest Formula 1 in cloud security

His crew thought-about optimizing on the code aspect, however the inherent complexity of their enterprise mannequin required specializing in the core infrastructure itself. 

Routinely optimizing your entire Kubernetes infrastructure

What Akamai actually wanted was a Kubernetes automation platform that might optimize the prices of working its complete core infrastructure in actual time on a number of clouds, Shavit defined, and scale functions up and down primarily based on consistently altering demand. However all this needed to be achieved with out sacrificing utility efficiency.

Earlier than implementing Solid, Shavit famous that Akamai’s DevOps crew manually tuned all its Kubernetes workloads only a few occasions a month. Given the size and complexity of its infrastructure, it was difficult and expensive. By solely analyzing workloads sporadically, they clearly missed any real-time optimization potential. 

“Now, tons of of Solid brokers do the identical tuning, besides they do it each second of every single day,” stated Shavit. 

The core APA options Akamai makes use of are autoscaling, in-depth Kubernetes automation with bin packing (minimizing the variety of bins used), computerized collection of essentially the most cost-efficient compute cases, workload rightsizing, Spot occasion automation all through your entire occasion lifecycle and price analytics capabilities.

“We bought perception into value analytics two minutes into the combination, which is one thing we’d by no means seen earlier than,” stated Shavit. “As soon as energetic brokers had been deployed, the optimization kicked in routinely, and the financial savings began to come back in.”

Spot cases — the place enterprises can entry unused cloud capability at discounted costs — clearly made enterprise sense, however they turned out to be difficult as a result of Akamai’s complicated workloads, significantly Apache Spark, Shavit famous. This meant they wanted to both overengineer workloads or put extra working palms on them, which turned out to be financially counterintuitive. 

See also  Trade tensions prompt European firms to rethink cloud strategies

With Solid AI, they had been in a position to make use of spot cases on Spark with “zero funding” from the engineering crew or operations. The worth of spot cases was “tremendous clear”; they simply wanted to seek out the precise software to have the ability to use them. This was one of many causes they moved ahead with Solid, Shavit famous. 

Whereas saving 2X or 3X on their cloud invoice is nice, Shavit identified that automation with out guide intervention is “priceless.” It has resulted in “large” time financial savings.

Earlier than implementing Solid AI, his crew was “consistently transferring round knobs and switches” to make sure that their manufacturing environments and clients had been as much as par with the service they wanted to spend money on. 

“Arms down the most important profit has been the truth that we don’t have to handle our infrastructure anymore,” stated Shavit. “The crew of Solid’s brokers is now doing this for us. That has freed our crew as much as concentrate on what issues most: Releasing options sooner to our clients.”

Editor’s notice: At this month’s VB Transform, Google Cloud CTO Will Grannis and Highmark Well being SVP and Chief Analytics Officer Richard Clarke will focus on the brand new AI stack in healthcare and the real-world challenges of deploying multi-model AI techniques in a posh, regulated surroundings. Register today.


Source link
TAGGED: agents, Akamai, cloud, cutting, kubernetes, orchestrated, saves, scale, Waste
Share This Article
Twitter Email Copy Link Print
Previous Article Meta buys stake in Scale AI, raising antitrust concerns Meta buys stake in Scale AI, raising antitrust concerns
Next Article Hugging Face partners with Groq for ultra-fast AI model inference Hugging Face partners with Groq for ultra-fast AI model inference
Leave a comment

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

Your Trusted Source for Accurate and Timely Updates!

Our commitment to accuracy, impartiality, and delivering breaking news as it happens has earned us the trust of a vast audience. Stay ahead with real-time updates on the latest events, trends.
FacebookLike
TwitterFollow
InstagramFollow
YoutubeSubscribe
LinkedInFollow
MediumFollow
- Advertisement -
Ad image

Popular Posts

OVHcloud expands its European footprint with new data region in Berlin

OVHcloud, a outstanding identify within the European cloud business, has bolstered its operations in Germany…

November 21, 2025

5 Reasons Why Data Centers May Not Be a Great Investment in 2025

By many measures, there has by no means been a greater time to spend money…

April 16, 2025

NVIDIA and Google infrastructure cuts AI inference costs

On the Google Cloud Subsequent convention, Google and NVIDIA outlined their {hardware} roadmap designed to…

April 23, 2026

Tech Giants to Invest $500B in AI Data Center Infrastructure

A consortium of tech giants plans to make investments $500 billion over the subsequent 4…

January 22, 2025

OpenAI counter-sues Elon Musk for attempts to ‘take down’ AI rival

OpenAI has launched a authorized counteroffensive in opposition to considered one of its co-founders, Elon…

April 10, 2025

You Might Also Like

STL launches Neuralis data centre connectivity suite in the U.S.
AI & Compute

STL launches Neuralis data centre connectivity suite in the U.S.

By saad
What is optical interconnect and why Lightelligence's $10B debut says it matters for AI
AI & Compute

What is optical interconnect and why Lightelligence’s $10B debut says it matters for AI

By saad
IBM launches AI platform Bob to regulate SDLC costs
AI & Compute

IBM launches AI platform Bob to regulate SDLC costs

By saad
The evolution of encoders: From simple models to multimodal AI
AI & Compute

The evolution of encoders: From simple models to multimodal AI

By saad

About Us

Data Center News is your dedicated source for data center infrastructure, AI compute, cloud, and industry news.

Top Categories

  • AI & Compute
  • Cloud Computing
  • Power & Cooling
  • Colocation
  • Security
  • Infrastructure
  • Sustainability
  • Industry News

Useful Links

  • Home
  • Contact
  • Privacy Policy
  • Terms & Conditions

Find Us on Socials

© 2026 Data Center News. All Rights Reserved.

© 2026 Data Center News. All Rights Reserved.
Welcome Back!

Sign in to your account

Lost your password?
We use cookies to ensure that we give you the best experience on our website. If you continue to use this site we will assume that you are happy with it.
You can revoke your consent any time using the Revoke consent button.