
Sign up to save your podcasts
Or


AWS’s approach to Elastic Kubernetes Service has evolved significantly since its 2018 launch. According to Mike Stefanik, Senior Manager of Product Management for EKS and ECR, today’s users increasingly represent the late majority—teams that want Kubernetes without managing every component themselves. In a conversation onThe New Stack Makers, Stefanik described how AI workloads are reshaping Kubernetes operations and why AWS open-sourced an MCP server for EKS. Early feedback showed that meaningful, task-oriented tool names—not simple API mirrors—made MCP servers more effective for LLMs, prompting AWS to design tools focused on troubleshooting, runbooks, and full application workflows. AWS also introduced a hosted knowledge base built from years of support cases to power more capable agents.
While “agentic AI” gets plenty of buzz, most customers still rely on human-in-the-loop workflows. Stefanik expects that to shift, predicting 2026 as the year agentic workloads move into production. For experimentation, he recommends the open-source Strands SDK. Internally, he has already seen major productivity gains from BI agents that automate complex data analysis tasks.
Learn more from The New Stack about Amazon Web Services’ approach to Elastic Kubernetes Service
How Amazon EKS Auto Mode Simplifies Kubernetes Cluster Management (Part 1)
A Deep Dive Into Amazon EKS Auto (Part 2)
Join our community of newsletter subscribers to stay on top of the news and at the top of your game.
Hosted by Simplecast, an AdsWizz company. See pcm.adswizz.com for information about our collection and use of personal data for advertising.
By The New Stack4.3
3131 ratings
AWS’s approach to Elastic Kubernetes Service has evolved significantly since its 2018 launch. According to Mike Stefanik, Senior Manager of Product Management for EKS and ECR, today’s users increasingly represent the late majority—teams that want Kubernetes without managing every component themselves. In a conversation onThe New Stack Makers, Stefanik described how AI workloads are reshaping Kubernetes operations and why AWS open-sourced an MCP server for EKS. Early feedback showed that meaningful, task-oriented tool names—not simple API mirrors—made MCP servers more effective for LLMs, prompting AWS to design tools focused on troubleshooting, runbooks, and full application workflows. AWS also introduced a hosted knowledge base built from years of support cases to power more capable agents.
While “agentic AI” gets plenty of buzz, most customers still rely on human-in-the-loop workflows. Stefanik expects that to shift, predicting 2026 as the year agentic workloads move into production. For experimentation, he recommends the open-source Strands SDK. Internally, he has already seen major productivity gains from BI agents that automate complex data analysis tasks.
Learn more from The New Stack about Amazon Web Services’ approach to Elastic Kubernetes Service
How Amazon EKS Auto Mode Simplifies Kubernetes Cluster Management (Part 1)
A Deep Dive Into Amazon EKS Auto (Part 2)
Join our community of newsletter subscribers to stay on top of the news and at the top of your game.
Hosted by Simplecast, an AdsWizz company. See pcm.adswizz.com for information about our collection and use of personal data for advertising.

9 Listeners

3 Listeners

289 Listeners

1,084 Listeners

626 Listeners

43 Listeners

4 Listeners

226 Listeners

987 Listeners

190 Listeners

209 Listeners

203 Listeners

64 Listeners

503 Listeners

493 Listeners

33 Listeners

470 Listeners

35 Listeners