Agent Skillsgoogle/skills › gke-inference

gke-inference

GitHub

在GKE上部署和优化AI/ML推理工作负载,支持GPU和TPU。用于生成K8s清单、配置自动扩缩容及选择加速器,专用于LLM等服务,不用于批量任务。

skills/cloud/gke-inference/SKILL.md google/skills

Trigger Scenarios

部署AI模型到GKE 为推理配置GKE GPU资源 在GKE上部署LLM 生成优化的Kubernetes推理清单

Install

npx skills add google/skills --skill gke-inference -g -y
More Options

Non-standard path

npx skills add https://github.com/google/skills/tree/main/skills/cloud/gke-inference -g -y

Use without installing

npx skills use google/skills@gke-inference

指定 Agent (Claude Code)

npx skills add google/skills --skill gke-inference -a claude-code -g -y

安装 repo 全部 skill

npx skills add google/skills --all -g -y

预览 repo 内 skill

npx skills add google/skills --list

SKILL.md

Frontmatter
{
    "name": "gke-inference",
    "metadata": {
        "category": "Containers"
    },
    "description": "Deploys and optimizes AI\/ML inference workloads on GKE, using GPUs, TPUs, and model servers. Use when deploying GKE inference servers, configuring GKE GPU resources for inference, or deploying LLMs on GKE. Don't use for generic batch jobs or HPC task queues (use gke-batch-hpc instead)."
}

GKE AI/ML Inference

This reference covers deploying AI/ML inference workloads on GKE using Google's Inference Quickstart (GIQ) and best practices for LLM serving.

MCP Tools: apply_k8s_manifest, get_k8s_resource, get_k8s_logs, get_k8s_rollout_status, describe_k8s_resource, list_k8s_events. CLI-only: gcloud container ai profiles *

When to Use

  • Deploy an AI model (Llama, Gemma, Mistral, etc.) to GKE
  • Generate optimized Kubernetes manifests for inference
  • Select GPU/TPU accelerators for model serving
  • Configure autoscaling for LLM inference

Prerequisites

  • A golden path GKE Autopilot cluster (GPU workloads are supported via ComputeClasses and NAP)
  • gcloud CLI authenticated
  • Sufficient GPU/TPU quota in the target region

Workflow

1. Discovery: Find Models and Hardware

# List all supported models
gcloud container ai profiles models list --quiet

# Find valid accelerator/server combinations for a model
gcloud container ai profiles list --model=<MODEL_NAME> --quiet

# Example: what can run Gemma 2 9B?
gcloud container ai profiles list --model=gemma-2-9b-it --quiet

2. Generate Manifest

gcloud container ai profiles manifests create \
  --model=<MODEL_NAME> \
  --model-server=<SERVER> \
  --accelerator-type=<ACCELERATOR> \
  --target-ntpot-milliseconds=<NTPOT> --quiet > inference.yaml

Parameters:

  • --model: Model ID (e.g., gemma-2-9b-it, llama-3-8b)
  • --model-server: Inference server (vllm, tgi, triton, tensorrt-llm)
  • --accelerator-type: GPU/TPU type (nvidia-l4, nvidia-tesla-a100, nvidia-h100-80gb)
  • --target-ntpot-milliseconds: Target Normalized Time Per Output Token (optional, for latency optimization)

Example:

gcloud container ai profiles manifests create \
  --model=gemma-2-9b-it \
  --model-server=vllm \
  --accelerator-type=nvidia-l4 \
  --target-ntpot-milliseconds=50 --quiet > inference.yaml

3. Review and Deploy

# Review for placeholders (HF tokens, PVCs)
cat inference.yaml

# Deploy
kubectl apply -f inference.yaml

# Monitor
kubectl get pods -w
kubectl logs -f <POD_NAME>

Some models require Hugging Face tokens. Create a Kubernetes Secret and reference it in the manifest.

GPU ComputeClass for Inference

For Autopilot clusters, create a ComputeClass to target GPU nodes:

apiVersion: cloud.google.com/v1
kind: ComputeClass
metadata:
  name: l4-inference
spec:
  priorities:
  - machineFamily: g2
    gpu:
      type: nvidia-l4
      count: 1
    minCores: 4
    minMemoryGb: 16

Accelerator Selection Guide

Accelerator Best For Memory Relative Cost
NVIDIA T4 Budget inference, 16 GB Lowest
: : lightweight legacy : : :
: : models : : :
NVIDIA L4 (G2) Small-medium model 24 GB Low
: : inference, video, : : :
: : graphics : : :
NVIDIA RTX PRO 6000 Multimodal AI, 96 GB Medium
: (G4) : high-fidelity 3D, : : :
: : fine-tuning : : :
Cloud TPU v5e Cost-effective Varies Medium
: : transformer inference : : :
Cloud TPU v5p High-performance Varies High
: : training : : :
Cloud TPU v6e High-efficiency next-gen 32 GB/chip Medium-High
: (Trillium) : training & serving : : :
Cloud TPU v7x Ultra-scale inference & 192 GB/chip High
: (Ironwood) : agentic workflows : : :
NVIDIA A100 Large model inference, 40/80 GB High
: : enterprise ML : : :
NVIDIA H100 / H200 Frontier model training, 80/141 GB Highest
: : high throughput : : :
NVIDIA B200 (A4) Blackwell-scale 192 GB Highest
: : training, FP4 precision : : :
NVIDIA GB200 (A4X) Rack-scale AI (Grace Massive Highest
: : Blackwell Superchip) : : :

Autoscaling LLM Inference

GPU-based autoscaling

Use custom metrics for GPU utilization:

apiVersion: autoscaling/v2
kind: HorizontalPodAutoscaler
metadata:
  name: llm-hpa
spec:
  scaleTargetRef:
    apiVersion: apps/v1
    kind: Deployment
    name: llm-server
  minReplicas: 1
  maxReplicas: 10
  metrics:
  - type: Pods
    pods:
      metric:
        name: gpu_duty_cycle
      target:
        type: AverageValue
        averageValue: "80"

Best practices for inference autoscaling

  1. Use DCGM metrics: Golden path enables DCGM monitoring for GPU utilization metrics
  2. Set appropriate minReplicas: At least 1 for always-on serving; 0 for batch/on-demand
  3. Tune scale-down delay: LLM model loading is slow; use longer stabilization windows
  4. Consider queue depth: Scale on pending requests rather than pure GPU utilization for latency-sensitive workloads

Optimization Tips

  • Quantization: Use quantized models (GPTQ, AWQ) to reduce GPU memory and increase throughput
  • Batching: Configure model server batch size for throughput vs latency trade-off
  • Tensor parallelism: Split large models across multiple GPUs within a node
  • KV cache optimization: Tune --gpu-memory-utilization in vLLM for KV cache allocation

Troubleshooting

Issue Cause Fix
Invalid Unsupported tuple Re-run `gcloud container ai
: model/accelerator : : profiles list :
: combination : : --model=<MODEL>` :
GPU quota exceeded Regional quota limit Request quota increase or
: : : try a different region :
OOM on GPU Model too large for Use larger GPU, enable
: : accelerator : quantization, or use tensor :
: : : parallelism :
Slow cold start Large model loading from Use local SSD for model
: : registry : caching; pre-pull images :

Version History

  • aabe37a Current 2026-07-05 15:29

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