distributions/claude/skills/gcp-resource-optimizer/SKILL.md
Optimize Google Cloud Platform resource allocation and manage cloud credits efficiently. Use when planning GCP deployments, analyzing cloud spend, maximizing value from expiring credits, right-sizing instances, or designing cost-effective architectures. Triggers on GCP cost optimization, credit management, resource allocation planning, or cloud budget concerns.
npx skillsauth add a-organvm/a-i--skills gcp-resource-optimizerInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
3 of 9 scanners reported clean
Some scanners were skipped, did not run, or reported a non-clean status. Review each row below.
Maximize value from GCP resources and credits through strategic allocation.
When managing expiring credits:
gcloud billing accounts describe ACCOUNT_IDLasting value (prioritize):
Ephemeral (use strategically):
Right-sizing instances:
# Check recommendations
gcloud recommender recommendations list \
--project=PROJECT_ID \
--location=ZONE \
--recommender=google.compute.instance.MachineTypeRecommender
Cost-effective machine types: | Need | Recommended | Why | |------|-------------|-----| | General workload | e2-medium | Best price/performance | | Memory-intensive | n2-highmem | Better RAM ratio | | CPU burst | e2-micro/small | Burstable, cheap | | ML training | n1 + GPU | Required for accelerators | | Spot-tolerant | Spot VMs | 60-91% discount |
Preemptible/Spot VMs:
Optimizing Cloud Run:
# Minimize cold starts and costs
spec:
template:
spec:
containerConcurrency: 80 # Maximize requests per instance
timeoutSeconds: 300
metadata:
annotations:
autoscaling.knative.dev/minScale: '0' # Scale to zero
autoscaling.knative.dev/maxScale: '10' # Cap costs
run.googleapis.com/cpu-throttling: 'true' # CPU only when processing
Storage class optimization: | Class | Use Case | Cost/GB/mo | |-------|----------|------------| | Standard | Frequent access | ~$0.020 | | Nearline | Monthly access | ~$0.010 | | Coldline | Quarterly access | ~$0.004 | | Archive | Yearly access | ~$0.0012 |
Lifecycle rules:
{
"lifecycle": {
"rule": [
{
"action": {"type": "SetStorageClass", "storageClass": "NEARLINE"},
"condition": {"age": 30}
},
{
"action": {"type": "SetStorageClass", "storageClass": "COLDLINE"},
"condition": {"age": 90}
},
{
"action": {"type": "Delete"},
"condition": {"age": 365}
}
]
}
}
Cost control:
-- Set maximum bytes billed
#standardSQL
-- @maximumBytesBilled 10000000000
SELECT * FROM dataset.table
Partitioning for cost reduction:
CREATE TABLE dataset.table
PARTITION BY DATE(timestamp_column)
CLUSTER BY user_id
AS SELECT * FROM source_table
Set up budget alerts:
gcloud billing budgets create \
--billing-account=BILLING_ACCOUNT_ID \
--display-name="Monthly Budget" \
--budget-amount=100USD \
--threshold-rule=percent=50 \
--threshold-rule=percent=90 \
--threshold-rule=percent=100
# Unused disks
gcloud compute disks list --filter="NOT users:*"
# Unused IPs
gcloud compute addresses list --filter="status=RESERVED"
# Idle VMs (by CPU)
gcloud monitoring time-series list \
--filter='metric.type="compute.googleapis.com/instance/cpu/utilization"' \
--interval="start=2024-01-01T00:00:00Z"
#!/bin/bash
# cleanup_unused.sh - Review before running!
# List (don't delete) unused resources
echo "=== Unused Disks ==="
gcloud compute disks list --filter="NOT users:*" --format="table(name,zone,sizeGb)"
echo "=== Reserved IPs ==="
gcloud compute addresses list --filter="status=RESERVED" --format="table(name,region,address)"
echo "=== Snapshots older than 30 days ==="
gcloud compute snapshots list --filter="creationTimestamp<$(date -d '30 days ago' -Iseconds)" --format="table(name,diskSizeGb,creationTimestamp)"
Request → Cloud Run → Firestore → Done
(scales to zero) (pay per op)
vs.
Request → GKE → Cloud SQL → Done
(always running) (always running)
Pub/Sub → Cloud Functions → BigQuery (batch load)
(cheaper than streaming)
Dev environment:
Prod environment:
# Enable billing export to BigQuery
gcloud beta billing accounts describe ACCOUNT_ID
# Query costs
#standardSQL
SELECT
service.description,
SUM(cost) as total_cost
FROM `project.dataset.gcp_billing_export_v1_*`
WHERE _PARTITIONTIME >= TIMESTAMP_SUB(CURRENT_TIMESTAMP(), INTERVAL 30 DAY)
GROUP BY 1
ORDER BY 2 DESC
references/pricing-cheatsheet.md - Quick pricing referencereferences/cost-queries.md - BigQuery cost analysis queriesdevelopment
Create algorithmic and generative art using mathematical patterns, noise functions, particle systems, and procedural generation. Covers flow fields, L-systems, fractals, and creative coding foundations. Triggers on generative art, algorithmic art, creative coding, procedural generation, or mathematical visualization requests.
development
Audits web applications and architectures for compliance with GDPR, CCPA, and other privacy regulations, focusing on consent, data minimization, and user rights.
development
Optimize Google Cloud Platform resource allocation and manage cloud credits efficiently. Use when planning GCP deployments, analyzing cloud spend, maximizing value from expiring credits, right-sizing instances, or designing cost-effective architectures. Triggers on GCP cost optimization, credit management, resource allocation planning, or cloud budget concerns.
testing
Designs engaging gameplay loops, economies, and progression systems, balancing challenge and reward for interactive experiences.