From castai-pack
Optimizes CAST AI for faster Kubernetes node provisioning, responsive autoscaling, and efficient multi-cluster API usage via headroom, evictor, and caching configs.
How this skill is triggered — by the user, by Claude, or both
Slash command
/castai-pack:castai-performance-tuningThis skill is limited to the following tools:
The summary Claude sees in its skill listing — used to decide when to auto-load this skill
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.
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.
# 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.
# 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"]
}
}
# 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
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));
}
# 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
| 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 |
| 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 |
For cost optimization strategies, see castai-cost-tuning.
npx claudepluginhub jeremylongshore/claude-code-plugins-plus-skills --plugin castai-packConfigures CAST AI autoscaler policies, spot instances, downscalers, evictors, and node templates for Kubernetes cluster cost optimization.
Reviews OVHcloud Managed Kubernetes cluster lifecycle, node pool sizing, autoscaling, version upgrades, workload placement, network policies, RBAC, and Terraform IaC for ovh_cloud_project_kube resources.
Configures auto-scaling policies for AWS ASG, GCP MIG, Azure VMSS, and Kubernetes HPA. Generates Terraform, YAML, or CLI configs with metric thresholds and cooldowns.