Editorial photograph of a FinOps lead reviewing a GCP commit ladder spreadsheet on a daylight workstation
Pillar · GCP · Committed Use Discount

GCP CUD pillar, the buyer side view.

Google Cloud Committed Use Discounts are the workhorse savings instrument across GCP. Compute, memory, GPU, BigQuery, and Spanner each carry distinct commit math. The buyer side view reads the math, the leverage, and the exit posture.

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GCP CUDs sit at the center of the Google Cloud commercial estate. A buyer side read of the CUD landscape changes what an enterprise pays across the three year horizon.

Key takeaways

  • Public CUD rates run 20 to 70 percent off list. Custom negotiated CUDs run deeper.
  • One year and three year terms dominate. Five year terms appear in custom deals.
  • Resource based CUDs cover compute and memory. SUD layers on top.
  • Spend based CUDs cover databases. Spanner and Bigtable carry separate commits.
  • BigQuery flex slots are a separate animal. Slot reservation math is different.
  • Exit posture exists but is contractual. Step down and resale rights vary.
  • Custom CUDs unlock 5 to 12 points more. Beyond the public commit ladder.

Read this pillar alongside the GCP CUD 2026 guide, the CUD negotiation tactics, the FinOps CUD playbook, and the Google Cloud practice page.

The CUD framework matters because the commit posture decides the bill across three years. A buyer that signs the standard public CUD without negotiating the custom layer leaves discount on the table.

What are the Google Cloud CUD types?

Google sells two CUD families. Resource based and spend based. Each family carries its own math, its own term structure, and its own override posture.

Resource based CUDs

Resource based CUDs apply to compute and memory. The commit buys a specific quantity of vCPU and memory. The discount applies to that quantity across the term.

  • Compute Engine vCPU. Per region commit.
  • Compute Engine memory. Per region commit.
  • Local SSD. Per region commit for SSD attached to compute.

Spend based CUDs

Spend based CUDs apply to specific services. The commit buys a dollar spend per month. The discount applies to that service spend across the term.

  • Cloud SQL. Spend based commit available.
  • Spanner. Spend based commit available.
  • Memorystore. Spend based commit available.

Flexible CUDs

Flex CUDs are spend based commits that apply across multiple compute families and across regions. The flex layer trades depth for flexibility.

  • Compute flexible CUD. Cross family and cross region.
  • Lower discount than resource CUD. Trade off for flexibility.
  • Useful for variable workloads. Less useful for fixed estates.

Compute CUDs

Compute CUDs are the workhorse. Most GCP estates anchor the commit posture on Compute Engine vCPU and memory. The discount math is well documented but the negotiation layer is often missed.

Public discount ladder

Public CUDs run 37 percent off list at one year and 55 percent off list at three years for general purpose compute. Memory commits run at similar tiers.

  • 1 year compute CUD. 37 percent off list.
  • 3 year compute CUD. 55 percent off list.
  • Sustained use discount layered. Adds 30 percent on top of on demand for uncommitted use.

Custom layer

Custom CUDs unlock additional discount through bespoke negotiation. The custom layer typically lands 5 to 12 points deeper than the public ladder.

  • Custom rate negotiation. 5 to 12 points deeper than public.
  • Multi region pooling. Single contract across regions.
  • Family blending. N2, N2D, C2 covered under one commit.

GCP CUD discount ladder by family

CUD family 1 year discount 3 year discount Custom layer above
General purpose compute37 percent55 percent+5 to +12 points
Memory optimized37 percent55 percent+5 to +10 points
GPU A10030 percent55 percent+8 to +15 points
GPU H10025 percent52 percent+10 to +18 points
TPU v530 percent50 percent+5 to +12 points
BigQuery annual slots20 percent40 percent+4 to +10 points

Memory CUDs

Memory commits run separately from vCPU. The two commits work as a pair. Buying one without the other leaves on demand exposure on the unbalanced side.

Balanced commit posture

The vCPU commit and the memory commit must align with the actual deployed ratio. A 1 to 4 vCPU to memory ratio on the deployed estate maps to the same ratio on the commit.

  • Standard ratio. 1 vCPU to 4 GB memory typical.
  • High memory workloads. 1 vCPU to 8 GB or higher.
  • Compute optimized workloads. 1 vCPU to 2 GB.

GPU CUDs

GPU commits are a distinct category. AI and ML workloads drive demand. The 2024 and 2025 cycles saw GPU CUDs become a major line item across the customer base.

GPU commit types

GPU CUDs cover specific GPU families. A100, H100, L4, and TPU each carry separate commit math. Mixing GPU types in one commit is not supported.

  • A100 commit. 1 and 3 year terms.
  • H100 commit. 1 and 3 year terms.
  • L4 commit. 1 and 3 year terms.
  • TPU commit. Separate commit framework for Cloud TPU.

Capacity reservation overlay

GPU commits include capacity reservation. The commit guarantees the GPU is available when needed. The capacity layer matters as much as the discount layer for AI workloads.

  • Capacity reservation. Guaranteed availability for the commit window.
  • Spot GPU exposure. Avoid for production AI workloads.
  • Region constraints. Capacity not equal across regions.

Where the common advice on CUD term length is wrong

The standard Google Cloud account team pitch is that a five year custom CUD captures the deepest discount tier and signals strategic commitment. We disagree. In roughly five out of seven GCP estates we have advised, the five year CUD locked in compute generations that aged out before the term, leaving stranded commit on retired SKUs while AWS and Azure competed for the same workload class. The buyer side move is to default to three years on resource based CUDs, refresh the CUD mix every 12 to 18 months as the SKU map shifts, and reserve five year terms for highly visible workloads where the technology roadmap is settled.

Editorial photograph of a cloud architecture team reviewing Google Cloud CUD coverage across compute generations and BigQuery slot reservations
Three year resource CUDs sized on trailing twelve month draw plus quarterly refresh is the only CUD posture that ages well across the compute generation curve.
25
GCP CUD negotiations benchmarked
26%
Median BigQuery slot over-commit recovered
8.5pp
Median custom CUD discount above published ladder

Source: Redress Compliance advisory engagement file, 2024 to 2025.

“The public CUD page is the floor. The custom layer is where the negotiated reality sits. A buyer that only reads the public page is reading the marketing brochure.”

How do BigQuery flex slots work?

BigQuery commit posture sits outside the CUD framework. Flex slots are reserved capacity for BigQuery. The reservation math is slot based not vCPU based.

Slot reservation math

Flex slots reserve query capacity. The reservation is measured in slots. One slot equals one unit of query processing capacity per second.

  • On demand pricing. Per terabyte scanned.
  • Flex slot reservation. Per slot per second.
  • Annual slot commit. Discount step on top of flex slot price.

Break even math

The break even between on demand BigQuery and flex slot reservation depends on the query volume and the slot utilization. Most enterprise BigQuery estates cross break even at 500 to 2000 slot equivalent demand.

  • Below 500 slot demand. On demand often cheaper.
  • 500 to 2000 slot demand. Flex slot break even zone.
  • Above 2000 slot demand. Annual slot commit dominates.

Negotiation posture

The negotiation posture decides whether the buyer captures the custom layer above the public CUD ladder. Posture matters more than tactical moves in the room.

Where the leverage sits

Leverage sits in three places. The total spend commitment. The competitive alternative. The term length. A buyer that brings all three to the table captures the deepest custom rates.

  • Total spend commitment. Larger spend unlocks deeper custom layer.
  • Competitive alternative. AWS or Azure parallel quote.
  • Term length. Five year custom commits exist.

Clause posture

Step down clauses, custom rate freezes, and the no worse than language sit at the contract layer. A buyer that negotiates only the price misses the contract protection.

  • Step down right. Reduced commit in years 2 and 3.
  • Custom rate freeze. Rates locked for the full term.
  • No worse than. Buyer protection against tier degradation.

Exit posture

Exit options exist but are contractual. Step down rights, partial termination, and change of control protection vary by deal. Default Google paper does not include strong buyer side exit.

Step down options

Step down rights let the buyer reduce the commit at defined milestones. The right is negotiated, not standard. Most custom deals carry some step down.

  • Year 2 step down. 20 to 30 percent reduction possible.
  • Year 3 step down. Larger reduction with notice period.
  • Change of control. Acquirer protection language.

Suggested reading

What should a buyer do next?

  1. Map deployed Compute Engine vCPU and memory by region.
  2. Quantify GPU demand by family across the next twelve months.
  3. Model BigQuery slot demand against on demand spend.
  4. Compare custom layer benchmarks against your current rates.
  5. Identify a competitive AWS or Azure alternative for leverage.
  6. Negotiate step down rights and custom rate freeze clauses.
  7. Build the FinOps governance for ongoing CUD coverage tracking.
  8. Contact Redress Compliance to scope the CUD posture.

Frequently asked questions

What is a GCP CUD?

A Google Cloud Committed Use Discount is a contractual commitment to use a specific quantity of a Google Cloud resource for one or three years in exchange for a discount on the public price. CUDs apply to Compute Engine, memory, GPU, TPU, and select database services.

What is the difference between a resource based and a spend based CUD?

A resource based CUD commits to a specific quantity of vCPU, memory, or GPU. A spend based CUD commits to a dollar spend per month on a specific service such as Cloud SQL or Spanner. The two families carry different math and different override rules.

How deep is the custom CUD layer?

The custom layer typically sits 5 to 12 points deeper than the public CUD ladder for general purpose compute. GPU custom layers can sit 8 to 18 points deeper depending on family and term. The custom layer requires direct negotiation with Google.

Are step down rights standard in a CUD contract?

No. Step down rights are negotiated. Default Google paper does not include step down. A buyer side negotiation typically secures 20 to 30 percent step down at year 2 and a larger step down at year 3 with notice.

How do BigQuery slots compare to on demand pricing?

BigQuery on demand prices per terabyte scanned. Flex slots reserve query capacity per slot per second. Break even sits between 500 and 2000 slot equivalent demand. Above 2000 slots, the annual slot commit dominates.

Can we exit a CUD early?

Standard CUDs cannot be exited early without forfeiting the discount. Negotiated step down clauses allow planned reductions. Change of control language can protect the buyer in acquisition scenarios.

What does Redress recommend as the first move on this topic?

Open with an inventory and entitlement baseline before any vendor conversation. Pull trailing twelve months of usage data, score it against contracted scope, and document the gap. The single most common reason buyers leave money on the table is opening the negotiation without a defensible baseline. The buyer side calendar starts at 270 days out, not at 60.

How is Redress different from a typical reseller or partner advisor?

Redress is 100 percent buyer side. We hold no publisher partnerships, take no publisher commissions, and operate no referral revenue. The advisory practice is funded entirely by enterprise buyer subscriptions and engagement fees. That means the recommendations on this page reflect what we have measured in client engagements, not what a publisher or partner wants the market to believe.

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“CUDs are not a finance instrument. They are a contract instrument. The buyer that treats commit as math alone misses the negotiated lever above the public CUD rate.”

Morten Andersen
Co Founder · Redress Compliance
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