T2A family · General Purposearm64 · Ampere

t2a-standard-4

The t2a-standard-4 machine type has 4 vCPUs and 16 GB of memory. Pricing for this instance starts at $0.15 per hour and $112.42 monthly in the us-central1 region.

Updated May 26, 2026
vCPUs
4
Memory
16 GB
Network
Up to 10 Gbps
Storage
Persistent Disk

Save up to $80/mo on every t2a-standard-4

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All pricing options

us-central1 · USD · monthly = 730 hrs
Prices exclude local taxes
TermHourlyMonthlySavings
On-Demand
$0.1540$112.42 Baseline
1-Year Committed Use Discount (CUD)
$0.1540$112.42 Baseline
3-Year Committed Use Discount (CUD)
$0.1540$112.42 Baseline
Preemptible / Spot
$0.0447$32.66 -71%
You could save $79.76/mo on this instance with the right pricing model.
Find my savings

Monthly cost estimator

Estimate your spend based on actual usage.
730 h
1h365h730h (24/7)
1
Estimated monthly
$112.42
730 hrs × $0.1540/hr × 1

Compute

arm64 · Ampere
vCPUs i4
Memory i16 GB
Physical processorAmpere Altra
Nested VirtualizationNot supported
Sole TenantNot supported
GPUNone
Within T2A family
t2a-standard-1
1 vCPU
t2a-standard-2
2 vCPU
t2a-standard-4
4 vCPU
t2a-standard-8
8 vCPU
t2a-standard-16
16 vCPU
t2a-standard-32
32 vCPU
t2a-standard-48
48 vCPU

Lock in this rate across your fleet — typically save 30–40%

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Networking

Max egress bandwidth10 Gbps
Tier 1 bandwidthN/A
Enhanced networking iYes (gvnic/virtio)
IPv6 supportYes (Dual-stack VPC)

Storage

Max persistent disks128
Max disk size257 TB
Local SSDsNo local SSD

Compare with another instance

vs.
Spect2a-standard-4t2a-standard-1Δ
vCPUs41-75%
Memory16 GB4 GB-75%
Hourly Price$0.1540$0.0385-75%
Monthly Price$112.42$28.11-75%
Cost optimization

GCP recommender alerts can cut this bill ~30-40%.

Connect your GCP account. We'll identify every underutilized t2a.* instance and show exactly where downsizing, cleaning up orphaned disks, or shifting to CUDs saves money — with zero code changes.