AgenticOps automation · Cost

Automate cloud cost reduction with Cloud Commitment Calculator on AgenticOps

Cloud Commitment Calculator turns cloud cost analysis into safe, closed-loop action. AgenticOps is the discipline of running production cloud operations through autonomous AI agents — under team policy, with brokered credentials, sandboxed execution, deterministic data tokenization, and tamper-evident audit — so a rightsizing or waste-elimination finding from Cloud Commitment Calculator becomes a reviewed, reversible change instead of a spreadsheet nobody actions.

Grounded in your stack
Controlled by your policy
Verified after every action

The operational work this removes

  • Rightsizing and idle-resource reports pile up but nobody has time to safely action them across hundreds of accounts
  • Savings Plans and Reserved Instance coverage drifts, leaving on-demand spend on the table month after month
  • Idle EBS volumes, unattached EIPs, orphaned snapshots, and stopped-but-billed resources quietly accrue waste
  • Cost anomalies are caught days late in the monthly bill instead of the hour they start
  • Engineers fear that automated cleanup will delete something still in use, so nothing gets automated
  • Kubernetes and shared-cluster spend is invisible per team, blocking chargeback and accountability

From signal to verified action

CloudThinker investigates the signal, proposes or executes the safe action your policy allows, then verifies the outcome.

01 · Detect

Detect the Cloud Commitment Calculator signal

Cloud Commitment Calculator continuously watches Cost Explorer, CUR/billing exports, and utilization metrics to surface concrete savings signals — underutilized EC2/RDS instances, idle and unattached resources, expiring or under-covered commitments, and spend anomalies — each tied to a specific resource ARN and a dollar/month estimate rather than a vague trend.
02 · Analyze

Analyze the root cause

Each finding is enriched with context before any action: real utilization percentiles over a lookback window, tags and owner, environment (prod vs non-prod), workload criticality, and dependency/attachment checks. The agent computes the expected monthly savings, the rollback path, and a confidence score, and drops low-signal or in-use resources so only credible, reversible changes advance.
03 · Remediate

Remediate under policy

Approved changes are executed through brokered, scoped credentials in a sandboxed session — resize an instance, purchase or rebalance a Savings Plan to a target coverage, delete a confirmed-orphaned volume after snapshot, or schedule non-prod shutdown. Graduated autonomy (L1 Notify, L2 Suggest, L3 Approve, L4 Auto) lets teams keep engineers on the loop: a snapshot-then-delete of an untagged idle disk may run at L4, while a prod rightsize or a multi-year commitment stays gated at L3 approval.
04 · Verify

Verify and record

After every change the agent confirms the outcome — the resource is healthy at its new size, the commitment coverage hit target, the deleted resource had a restorable snapshot — and re-measures realized spend against the estimate. Every step (who connected, what was reached, what changed, who approved) lands in a tamper-evident audit trail, and any regression triggers an automatic rollback or re-open of the finding.

Evidence and proposed action

$ agenticops plan --skill "Cloud Commitment Calculator" --scope prod-account-4021

FIX PLAN  (3 findings · est. savings $4,180/mo)  autonomy: on-the-loop

[1] Rightsize  i-0a9f...c31 (m5.4xlarge → m5.xlarge)
    p95 CPU 9% / mem 22% over 30d · est. -$412/mo
    rollback: resize back to m5.4xlarge (snapshot-free)   → L3 APPROVE

[2] Delete idle EBS  vol-07be...  (unattached 41d, gp3 500GB)
    no attachment · owner tag missing · est. -$40/mo
    guardrail: snapshot before delete, 7d retention        → L4 AUTO

[3] Increase Savings Plans coverage  compute  68% → 90%
    on-demand baseline stable 45d · 1yr no-upfront · -$3,728/mo
    rollback: n/a (commitment) — requires human sign-off    → L3 APPROVE

Apply [1] [2]? auto-applying [2] under policy. verifying...
  ✓ vol-07be snapshot snap-0c2 created, volume deleted, $40/mo confirmed
  ⧗ awaiting approval on [1] [3]  (audit: run 7f3a-c domain-brokered)

What the agent understands

Calculates the optimal mix of reserved instances, savings plans, and committed use discounts based on historical usage data. Produces a purchase plan that maximizes savings while maintaining flexibili

Related automations

More automations in the same category.

Cloud Cost Optimization ReportGenerate a comprehensive cloud cost optimization report by analyzing spending patterns, identifying waste, and recommending savings opportunities across AWS, GCP, or Azure. Covers idle resource detection, rightsizing, reserved instance analysis, spot opportunities, and prioritized action plan.AWSMANDATORY parallel execution patterns (30x speedup), CloudWatch statistics syntax, Cost Explorer aggregation, output token limits, and common pitfallsAWS BillingAnalyze, break down, and report AWS costs and bills. Covers cost breakdown by service, account, or usage type; monthly/daily billing trends; cost anomaly detection; RI/SP utilization; cost forecasting; credit/discount analysis; and multi-account cost comparison. Uses anti-hallucination rules, mandatory currency/credit detection workflow, and reusable Cost Explorer functions.AWS Idle ResourcesDetect unused and idle AWS resources that incur cost without providing value. Covers detached EBS volumes, idle load balancers, unused Elastic IPs, stopped EC2 instances, idle NAT Gateways, old snapshots, and unused ENIs. Includes estimated monthly waste per resource and anti-hallucination rules for safe detection.AWS PricingAWS pricing helper for cost queries. ALWAYS use get_aws_cost script for pricing questions.AWS RightsizingAnalyze EC2, RDS, EBS, and Lambda resource utilization to identify right-sizing opportunities. Uses CloudWatch metrics with anti-hallucination rules for burstable instances, memory metrics, peak vs average analysis, and estimated monthly savings calculations.

See what AgenticOps can run safely in your stack.

Connect CloudThinker to map the signals, tools, and runbooks already in your environment. You choose the approval level; every action stays attributable and auditable.