Crypto Flexs
  • DIRECTORY
  • CRYPTO
    • ETHEREUM
    • BITCOIN
    • ALTCOIN
  • BLOCKCHAIN
  • EXCHANGE
  • TRADING
  • SUBMIT
Crypto Flexs
  • DIRECTORY
  • CRYPTO
    • ETHEREUM
    • BITCOIN
    • ALTCOIN
  • BLOCKCHAIN
  • EXCHANGE
  • TRADING
  • SUBMIT
Crypto Flexs
Home»ADOPTION NEWS»Enhancing Kubernetes with NVIDIA’s NIM microservice autoscaling
ADOPTION NEWS

Enhancing Kubernetes with NVIDIA’s NIM microservice autoscaling

By Crypto FlexsJanuary 24, 20252 Mins Read
Facebook Twitter Pinterest LinkedIn Tumblr Email
Enhancing Kubernetes with NVIDIA’s NIM microservice autoscaling
Share
Facebook Twitter LinkedIn Pinterest Email

Terrill Dickey
January 24, 2025 14:36

Explore NVIDIA’s approach to horizontal autoscaling of NIM microservices on Kubernetes using custom metrics for efficient resource management.





NVIDIA has introduced a comprehensive approach to horizontally auto-scaling NIM microservices on Kubernetes, as detailed by Juana Nakfour on the NVIDIA Developer Blog. This method leverages Kubernetes Horizontal Pod Autoscaling (HPA) to dynamically scale resources and optimize compute and memory usage based on custom metrics.

Understanding NVIDIA NIM Microservices

The NVIDIA NIM microservice serves as a deployable model inference container on Kubernetes that is critical for managing large-scale machine learning models. These microservices require a clear understanding of their compute and memory profiles in production environments to ensure efficient autoscaling.

Autoscale settings

The process begins with setting up a Kubernetes cluster equipped with the necessary components: Kubernetes Metrics Server, Prometheus, Prometheus Adapter, and Grafana. These tools are essential for scraping and displaying the metrics needed for HPA services.

The Kubernetes Metrics Server collects resource metrics from Kubelets and exposes them through the Kubernetes API Server. Prometheus and Grafana are used to scrape metrics from pods and create dashboards, and the Prometheus Adapter allows HPA to leverage custom metrics for scaling strategies.

NIM Microservice Deployment

NVIDIA provides detailed guidance on deploying NIM microservices, specifically using the NIM Model for LLM. This includes setting up the necessary infrastructure and ensuring that NIM for LLM Microservices is ready to scale based on GPU cache usage metrics.

Grafana dashboards visualize these custom metrics, making it easy to monitor and adjust resource allocation based on traffic and workload demands. The deployment process involves generating traffic using tools such as genai-perf, which helps evaluate the impact of different concurrency levels on resource utilization.

Implementing Horizontal Pod Autoscaling

To implement HPA, NVIDIA demonstrates the creation of HPA resources focusing on: gpu_cache_usage_perc Metric system. HPA runs load tests at different concurrency levels to automatically adjust the number of pods to maintain optimal performance and demonstrate efficiency in handling fluctuating workloads.

future prospects

NVIDIA’s approach paves the way for further exploration, such as scaling based on multiple metrics such as request latency or GPU compute utilization. You can also enhance autoscaling capabilities by leveraging Prometheus Query Language (PromQL) to create new metrics.

Visit the NVIDIA Developer Blog to learn more.

Image source: Shutterstock


Share. Facebook Twitter Pinterest LinkedIn Tumblr Email

Related Posts

MoneyGram became a Solana validator and staked SOL to strengthen its blockchain role.

June 23, 2026

ETH Triple Top Rejects $2.4K as Analysts Show Weakness Against BTC

June 15, 2026

Google unveils Gemini Omni and Gemini 3.5 Flash AI models

May 30, 2026
Add A Comment

Comments are closed.

Recent Posts

Sui News: Cumberland, Fluid and SwissBorg join Hashi institution alliance ahead of global testnet in July

June 27, 2026

Crypto Inheritance: A Guide for Lawyers

June 26, 2026

Singapore adds Hyperliquid to investor warning list regarding licensing

June 26, 2026

Toss Brings 30 Million Users Into The AI Data Economy In Partnership With Poseidon

June 26, 2026

The DATA Foundation Launches To Tackle AI’s Multi-Billion Dollar Training Data Bottleneck

June 25, 2026

Solstice And Tensorx To Buy $1 Billion In AI Infrastructure To Support EU Sovereign AI Demand

June 25, 2026

AFX Shares Up To 50% Of Protocol Revenue With Traders As Cumulative Volume Approaches $1 Billion

June 25, 2026

How are cryptocurrency exchange habits reshaping digital entertainment?

June 25, 2026

ORBS) Reports Total Holdings Of Approximately $436 Million, Includes OpenAI, Beast Industries, More Than 16,000 ETH And Over 283 Million WLD Tokens

June 25, 2026

Request Network Introduces One-Click Cross-Chain Mass Payouts And Expands Wallet Screening With Merkle Science

June 25, 2026

bitcoin core – How does a block explorer efficiently index and query plain text strings in OP_RETURN?

June 24, 2026

Crypto Flexs is a Professional Cryptocurrency News Platform. Here we will provide you only interesting content, which you will like very much. We’re dedicated to providing you the best of Cryptocurrency. We hope you enjoy our Cryptocurrency News as much as we enjoy offering them to you.

Contact Us : Partner(@)Cryptoflexs.com

Top Insights

Sui News: Cumberland, Fluid and SwissBorg join Hashi institution alliance ahead of global testnet in July

June 27, 2026

Crypto Inheritance: A Guide for Lawyers

June 26, 2026

Singapore adds Hyperliquid to investor warning list regarding licensing

June 26, 2026
Most Popular

Remission Fund Opens To Compensate Victims Of The AirBit Club Fraud

May 13, 2026

Memory Management Revolution: Sensay Unveils AI-Powered Digital Replica for Dementia Support and Beyond

March 11, 2024

Arthur Hayes joins Covalent as an advisor and is compensated in CQT tokens.

June 11, 2024
  • Home
  • About Us
  • Contact Us
  • Disclaimer
  • Privacy Policy
  • Terms and Conditions
© 2026 Crypto Flexs

Type above and press Enter to search. Press Esc to cancel.