The New Stack Podcast

Why Kubernetes Cost Optimization Keeps Failing

8 snips
Apr 29, 2025
Ask episode
AI Snips
Chapters
Transcript
Episode notes
INSIGHT

Why Kubernetes Cost Optimization Fails

  • Kubernetes cost optimization is hard because applications are dynamic with changing loads requiring static resource allocation.
  • Thousands of applications with different needs and many stakeholders make manual optimization fail, leading to up to 80% resource waste.
INSIGHT

AI Workloads Increase Resource Strain

  • AI workloads increase resource demands, especially for GPUs, CPUs, and memory.
  • The fundamental problem remains static resource allocations that need manual adjustments.
ADVICE

Avoid Static Recommendations

  • Do not rely on static recommendations for Kubernetes optimization as workload dynamics make them quickly obsolete.
  • Avoid manual application of recommendations that often are not trusted by application owners prioritizing performance over cost.
Get the Snipd Podcast app to discover more snips from this episode
Get the app