All pricing options
us-central1 · USD · monthly = 730 hrs
Prices exclude local taxes
| Term | Hourly | Monthly | Savings |
|---|---|---|---|
On-Demand | $2.2672 | $1655.02 | Baseline |
1-Year Committed Use Discount (CUD) | $1.4283 | $1042.65 | -37% |
3-Year Committed Use Discount (CUD) | $1.0202 | $744.78 | -55% |
Preemptible / Spot | $0.8409 | $613.85 | -63% |
You could save $1041.17/mo on this instance with the right pricing model.
Find my savings Monthly cost estimator
Estimate your spend based on actual usage.
730 h
1
Estimated monthly
$1655.02
730 hrs × $2.2672/hr × 1
Compute
vCPUs i64
Memory i57.6 GB
Physical processorIntel Broadwell, Intel Haswell, Intel Ivy Bridge, Intel Sandy Bridge, Intel Skylake
Nested VirtualizationNot supported
Sole TenantNot supported
GPUNone
Within N1 family
f1-microshared vCPU
g1-smallshared vCPU
n1-standard-11 vCPU
n1-highcpu-22 vCPU
n1-standard-22 vCPU
n1-highmem-22 vCPU
n1-highcpu-44 vCPU
n1-standard-44 vCPU
n1-highmem-44 vCPU
n1-highcpu-88 vCPU
n1-standard-88 vCPU
n1-highmem-88 vCPU
n1-highcpu-1616 vCPU
n1-standard-1616 vCPU
n1-highmem-1616 vCPU
n1-highcpu-3232 vCPU
n1-standard-3232 vCPU
n1-highmem-3232 vCPU
n1-highcpu-6464 vCPU
n1-standard-6464 vCPU
n1-highcpu-9696 vCPU
n1-highmem-6464 vCPU
n1-standard-9696 vCPU
n1-highmem-9696 vCPU
Lock in this rate across your fleet — typically save 30–40%
Connect your Google Cloud account to apply this pricing logic to every running instance automatically.
Networking
Max egress bandwidth32 Gbps
Tier 1 bandwidthN/A
Enhanced networking iYes (gvnic/virtio)
IPv6 supportYes (Dual-stack VPC)
Storage
Max persistent disks128
Max disk size512 TB
Local SSDsSupported (Scratch Disk)
Compare with another instance
vs.
Specn1-highcpu-64f1-microΔ
vCPUs64shared—
Memory57.6 GB0.6 GB-99%
Hourly Price$2.2672$0.0076-100%
Monthly Price$1655.02$5.55-100%
Cost optimization
GCP recommender alerts can cut this bill ~30-40%.
Connect your GCP account. We'll identify every underutilized n1.* instance and show exactly where downsizing, cleaning up orphaned disks, or shifting to CUDs saves money — with zero code changes.