Skills Engineering Optimize CAST AI Performance and Efficiency

Optimize CAST AI Performance and Efficiency

v20260423
castai-performance-tuning
A comprehensive guide to optimizing CAST AI's core performance metrics, including node provisioning speed, autoscaler responsiveness, and API call efficiency. This skill covers techniques like configuring headroom, selecting optimal instance families, tuning evictors, and implementing caching for multi-cluster dashboards to ensure high availability and cost efficiency in cloud environments.
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Overview

CAST AI Performance Tuning

Overview

Tune CAST AI for faster node provisioning, more responsive autoscaling, and efficient API usage. Covers headroom configuration, instance family selection, and API caching for multi-cluster dashboards.

Prerequisites

  • CAST AI Phase 2 (full automation) enabled
  • Understanding of workload scheduling patterns
  • Access to autoscaler policy configuration

Instructions

Step 1: Optimize Node Provisioning Speed

# Configure headroom for proactive scaling (avoids waiting for pending pods)
curl -X PUT -H "X-API-Key: ${CASTAI_API_KEY}" \
  -H "Content-Type: application/json" \
  "https://api.cast.ai/v1/kubernetes/clusters/${CASTAI_CLUSTER_ID}/policies" \
  -d '{
    "enabled": true,
    "unschedulablePods": {
      "enabled": true,
      "headroom": {
        "enabled": true,
        "cpuPercentage": 15,
        "memoryPercentage": 15
      }
    }
  }'

Headroom pre-provisions spare capacity so pods schedule immediately instead of waiting 2-5 minutes for new nodes.

Step 2: Instance Family Optimization

# Terraform: Prefer instance families with fast launch times
resource "castai_node_template" "fast_launch" {
  cluster_id = castai_eks_cluster.this.id
  name       = "fast-launch-workers"

  constraints {
    spot                  = true
    use_spot_fallbacks    = true
    fallback_restore_rate_seconds = 300

    # Newer instance types launch faster and have better availability
    instance_families {
      include = ["m6i", "m7i", "c6i", "c7i", "r6i", "r7i"]
    }

    # Enable spot diversity for faster provisioning
    spot_diversity_price_increase_limit_percent = 25

    architectures = ["amd64"]
  }
}

Step 3: Evictor Tuning for Faster Consolidation

# Reduce empty node delay for dev/staging (faster downscale)
helm upgrade castai-evictor castai-helm/castai-evictor \
  -n castai-agent \
  --reuse-values \
  --set evictor.aggressiveMode=true \
  --set evictor.cycleInterval=120

# For production, use non-aggressive with longer intervals
# --set evictor.aggressiveMode=false
# --set evictor.cycleInterval=600

Step 4: API Performance for Multi-Cluster Dashboards

import { LRUCache } from "lru-cache";

const cache = new LRUCache<string, unknown>({ max: 100, ttl: 60_000 });

interface ClusterSummary {
  id: string;
  name: string;
  savings: number;
  savingsPercent: number;
  nodeCount: number;
  spotPercent: number;
}

async function getClusterSummary(clusterId: string): Promise<ClusterSummary> {
  const cacheKey = `summary:${clusterId}`;
  const cached = cache.get(cacheKey) as ClusterSummary | undefined;
  if (cached) return cached;

  const [cluster, savings, nodes] = await Promise.all([
    castaiGet(`/v1/kubernetes/external-clusters/${clusterId}`),
    castaiGet(`/v1/kubernetes/clusters/${clusterId}/savings`),
    castaiGet(`/v1/kubernetes/external-clusters/${clusterId}/nodes`),
  ]);

  const spotNodes = nodes.items.filter(
    (n: { lifecycle: string }) => n.lifecycle === "spot"
  ).length;

  const summary: ClusterSummary = {
    id: clusterId,
    name: cluster.name,
    savings: savings.monthlySavings,
    savingsPercent: savings.savingsPercentage,
    nodeCount: nodes.items.length,
    spotPercent: nodes.items.length > 0
      ? (spotNodes / nodes.items.length) * 100
      : 0,
  };

  cache.set(cacheKey, summary);
  return summary;
}

// Aggregate across all clusters
async function getDashboardData(
  clusterIds: string[]
): Promise<ClusterSummary[]> {
  return Promise.all(clusterIds.map(getClusterSummary));
}

Step 5: Workload Autoscaler Tuning

# Faster resource adjustment with shorter cooldown
# (use with caution in production)
metadata:
  annotations:
    autoscaling.cast.ai/cpu-headroom: "10"     # Lower headroom = tighter fit
    autoscaling.cast.ai/memory-headroom: "15"
    autoscaling.cast.ai/apply-type: "immediate" # Apply without waiting

Performance Benchmarks

Metric Default Tuned
Node provision time 3-5 min 1-3 min (with headroom)
Empty node removal 5 min 2 min (aggressive evictor)
Workload resize 5 min cooldown Immediate
API response (cached) 200ms <5ms

Error Handling

Issue Cause Solution
Headroom over-provisioning Percentage too high Reduce to 5-10%
Aggressive evictor causing disruptions PDB not set Add PodDisruptionBudgets
Cache stale data TTL too long Reduce cache TTL to 30s
Instance type unavailable Too narrow constraints Add more instance families

Resources

Next Steps

For cost optimization strategies, see castai-cost-tuning.

Info
Category Engineering
Name castai-performance-tuning
Version v20260423
Size 5.48KB
Updated At 2026-04-26
Language