Vertex AI pricing
Prices are listed in US Dollars (USD). If you pay in a currency other than USD, the prices listed in your currency on Cloud Platform SKUs apply.
Vertex AI pricing compared to legacy product pricing
The costs for Vertex AI remain the same as they are for the legacy AI Platform and AutoML products that Vertex AI supersedes, with the following exceptions:
-
Legacy AI Platform Prediction and AutoML Tables predictions supported lower-cost, lower-performance machine types that aren't supported for Vertex AI Inference and AutoML tabular.
-
Legacy AI Platform Prediction supported scale-to-zero , which isn't supported for Vertex AI Inference.
Vertex AI also offers more ways to optimize costs, such as the following:
-
Support for co-hosting models .
-
No minimum usage duration for Training and Prediction. Instead, usage is charged in 30 second increments.
Pricing for Generative AI on Vertex AI
For Generative AI on Vertex AI pricing information, see Pricing for Generative AI on Vertex AI .
Pricing for AutoML models
For Vertex AI AutoML models, you pay for three main activities:
- Training the model
- Deploying the model to an endpoint
- Using the model to make predictions
Vertex AI uses predefined machine configurations for Vertex AutoML models, and the hourly rate for these activities reflects the resource usage.
The time required to train your model depends on the size and complexity of your training data. Models must be deployed before they can provide online predictions or online explanations.
You pay for each model deployed to an endpoint, even if no prediction is made. You must undeploy your model to stop incurring further charges. Models that are not deployed or have failed to deploy are not charged.
You pay only for compute hours used; if training fails for any reason other than a user-initiated cancellation, you are not billed for the time. You are charged for training time if you cancel the operation.
Select a model type below for pricing information.
Image data
Operation | Price per node hour (classification) | Price per node hour (object detection) |
---|---|---|
Training
|
$3.465 | $3.465 |
Training (Edge on-device model)
|
$18.00 | $18.00 |
Deployment and online prediction
|
$1.375 | $2.002 |
Batch prediction
|
$2.222 | $2.222 |
Video data
Operation | Price per node hour (classification, object tracking) | Price per node hour (action recognition) |
---|---|---|
Training
|
$3.234 | $3.300 |
Training (Edge on-device model)
|
$10.78 | $11.00 |
Predictions
|
$0.462 | $0.550 |
Tabular data
Operation | Price per node hour for classification/regression | Price for forecasting |
---|---|---|
Training
|
$21.252 | Refer to Vertex AI Forecast |
Prediction
|
Same price as predictions for custom-trained models.
Vertex AI performs batch prediction using 40 n1-highmem-8
machines. |
Refer to Vertex AI Forecast |
Text data
Operation | Price |
---|---|
Legacy data upload (PDF only) | First 1,000 pages free each month $1.50 per 1,000 pages $0.60 per 1,000 pages over 5,000,000 |
Training | $3.30 per hour |
Deployment | $0.05 per hour |
Prediction | $5.00 per 1,000 text records $25.00 per 1,000 document pages, such as PDF files (legacy only) |
Prices for Vertex AutoML text prediction requests are computed based on the number of text records you send for analysis. A text record is plain text of up to 1,000 Unicode characters (including whitespace and any markup such as HTML or XML tags).
If the text provided in a prediction request contains more than 1,000 characters, it counts as one text record for each 1,000 characters. For example, if you send three requests that contain 800, 1,500, and 600 characters respectively, you would be charged for four text records: one for the first request (800), two for the second request (1,500), and one for the third request (600).
Prediction charges for Vertex Explainable AI
Compute associated with Vertex Explainable AI is charged at same rate as prediction. However, explanations take longer to process than normal predictions, so heavy usage of Vertex Explainable AI along with auto-scaling could result in more nodes being started, which would increase prediction charges.
Vertex AI Forecast
AutoML
Stage | Pricing |
---|---|
Prediction | $0.2 per 1K data points* (0-1M points) $0.1 per 1K data points* (1M-50M points) $0.02 per 1K data points* (>50M points) |
Training | $21.25/hr in all regions |
|
Explainability using Shapley values. Refer to Vertex AI Inference and Explanation pricing page. |
* A prediction data point is one time point in the forecast horizon. For example, with daily granularity a 7-day horizon is 7 points per each time series.
- Up to 5 prediction quantiles can be included at no additional cost.
- The number of data points consumed per tier is refreshed monthly.
ARIMA+
Stage | Pricing |
---|---|
Prediction | $5.00 per TB |
Training | $250.00 per TB x Number of Candidate Models x Number of Backtesting Windows* |
|
Explainability with time series decomposition does not add any additional cost. Explainability using Shapley values is not supported. |
Refer to the BigQuery ML pricing page for additional details. Each training and prediction job incurs the cost of 1 managed pipeline run, as described in Vertex AI pricing .
* A backtesting window is created for each period in the test set. The AUTO_ARIMA_MAX_ORDER used determines the number of candidate models. It ranges from 6-42 for models with multiple time series.
Custom-trained models
Training
The tables below provide the approximate price per hour of various training configurations. You can choose a custom configuration of selected machine types . To calculate pricing, sum the costs of the virtual machines you use.
If you use Compute Engine machine types and attach accelerators, the cost of the accelerators is separate. To calculate this cost, multiply the prices in the table of accelerators below by how many machine hours of each type of accelerator you use.
Machine types
You can use Spot VMs with Vertex AI custom training. Spot VMs are billed according to Compute Engine Spot VMs pricing . There are Vertex AI custom training management fees in addition to your infrastructure usage, captured in the following tables.
You can use Compute Engine reservations with Vertex AI custom training. When using Compute Engine reservations, you're billed according to Compute Engine Pricing , including any applicable committed use discounts (CUDs). There are Vertex AI custom training management fees in addition to your infrastructure usage, captured in the following tables.
* This amount includes GPU price, since this instance type always requires a fixed number of GPU accelerators.If you pay in a currency other than USD, the prices listed in your currency on Cloud Platform SKUs apply.
Accelerators
If you pay in a currency other than USD, the prices listed in your currency on Cloud Platform SKUs apply.* The price for training using a Cloud TPU Pod is based on the number of cores in the Pod. The number of cores in a pod is always a multiple of 32. To determine the price of training on a Pod that has more than 32 cores, take the price for a 32-core Pod, and multiply it by the number of cores, divided by 32. For example, for a 128-core Pod, the price is
(32-core Pod price) * (128/32)
. For information about which Cloud TPU
Pods are available for a specific region, see System Architecture
in the Cloud TPU documentation.
Disks
If you pay in a currency other than USD, the prices listed in your currency on Cloud Platform SKUs apply.- All use is subject to the Vertex AI quota policy.
- You are required to store your data and program files in Google Cloud Storage buckets during the Vertex AI lifecycle. See more about Cloud Storage usage .
You are charged for training your models from the moment when resources are provisioned for a job until the job finishes.
Scale tiers for predefined configurations (AI Platform Training)
You can control the type of processing cluster to use when training your model. The simplest way is to choose from one of the predefined configurations called scale tiers . Read more about scale tiers .
Machine types for custom configurations
If you use Vertex AI or select CUSTOM
as your scale tier for
AI Platform Training, you have control over the number and
type of virtual machines to use for the cluster's master, worker and parameter
servers. Read more about machine types for Vertex AI
and machine types for AI Platform Training
.
The cost of training with a custom processing cluster is the sum of all the machines you specify. You are charged for the total time of the job, not for the active processing time of individual machines.
Gen AI Evaluation Service
For model-based metrics, charges are applied only for the prediction costs associated with the underlying autorater model. They are billed based on the input tokens that you provide in your evaluation dataset and the autorater output.
Gen AI Evaluation Service is generally available (GA). Pricing change took effect on April 14, 2025.
Metric | Pricing |
---|---|
Pointwise | Default autorater model Gemini 2.0 Flash |
Pairwise | Default autorater model Gemini 2.0 Flash |
Computation-based metrics are charged at $0.00003 per 1k characters for input and $0.00009 per 1k characters for output. They are referred to as Automatic Metric in SKU.
Metric Name | Type |
---|---|
Exact Match | Computation-based |
Bleu | Computation-based |
Rouge | Computation-based |
Tool Call Valid | Computation-based |
Tool Name Match | Computation-based |
Tool Parameter Key Match | Computation-based |
Tool Parameter KV Match | Computation-based |
Prices are listed in US Dollars (USD). If you pay in a currency other than USD, the prices listed in your currency on Cloud Platform SKUs apply.
Legacy model-based metrics are charged at $0.005 per 1k characters for input and $0.015 per 1k characters for output.
Metric Name | Type |
---|---|
Coherence | Pointwise |
Fluency | Pointwise |
Fulfillment | Pointwise |
Safety | Pointwise |
Groundedness | Pointwise |
Summarization Quality | Pointwise |
Summarization Helpfulness | Pointwise |
Summarization Verbosity | Pointwise |
Question Answering Quality | Pointwise |
Question Answering Relevance | Pointwise |
Question Answering Helpfulness | Pointwise |
Question Answering Correctness | Pointwise |
Pairwise Summarization Quality | Pairwise |
Pairwise Question Answering Quality | Pairwise |
Vertex AI Agent Engine
Pricing is based on compute (vCPU hours) and memory (GiB hours) resources used by the agents that are deployed to the Agent Engine managed runtime.
Ray on Vertex AI
Training
The tables below provide the approximate price per hour of various training configurations. You can choose a custom configuration of selected machine types . To calculate pricing, sum the costs of the virtual machines you use.
If you use Compute Engine machine types and attach accelerators, the cost of the accelerators is separate. To calculate this cost, multiply the prices in the table of accelerators below by how many machine hours of each type of accelerator you use.
Machine types
If you pay in a currency other than USD, the prices listed in your currency on Cloud Platform SKUs apply.Accelerators
If you pay in a currency other than USD, the prices listed in your currency on Cloud Platform SKUs apply.* The price for training using a Cloud TPU Pod is based on the
number of cores in the Pod. The number of cores in a pod is always a multiple
of 32. To determine the price of training on a Pod that has more than 32 cores,
take the price for a 32-core Pod, and multiply it by the number of cores,
divided by 32. For example, for a 128-core Pod, the price is (32-core Pod price) * (128/32)
. For information about which Cloud TPU
Pods are available for a specific region, see System Architecture
in the Cloud TPU documentation.
Disks
If you pay in a currency other than USD, the prices listed in your currency on Cloud Platform SKUs apply.- All use is subject to the Vertex AI quota policy.
- You are required to store your data and program files in Google Cloud Storage buckets during the Vertex AI lifecycle. See more about Cloud Storage usage .
You are charged for training your models from the moment when resources are provisioned for a job until the job finishes.
Prediction and explanation
The following tables provide the prices of batch prediction, online prediction, and online explanation per node hour . A node hour represents the time a virtual machine spends running your prediction job or waiting in an active state (an endpoint with one or more models deployed) to handle prediction or explanation requests.
You can use Spot VMs with Vertex AI Inference. Spot VMs are billed according to Compute Engine Spot VMs pricing . There are Vertex AI Inference management fees in addition to your infrastructure usage, captured in the following tables.
You can use Compute Engine reservations with Vertex AI Inference. When using Compute Engine reservations, you're billed according to Compute Engine Pricing , including any applicable committed use discounts (CUDs). There are Vertex AI Inference management fees in addition to your infrastructure usage, captured in the following tables.
Choose a region to view its pricing table:
Pricing for the Americas
The following tables provide the price per node hour for each machine type.
E2 Series
e2-standard-2
|
Approximations: |
---|---|
us-west2
|
$0.0926 |
us-west4
|
$0.0868 |
us-east4
|
$0.0868 |
northamerica-northeast1
|
$0.0848 |
northamerica-northeast2
|
$0.0848 |
southamerica-east1
|
$0.1223 |
Other Americas regions | $0.0771 |
e2-standard-4
|
Approximations: |
---|---|
us-west2
|
$0.1851 |
us-west4
|
$0.1736 |
us-east4
|
$0.1736 |
northamerica-northeast1
|
$0.1697 |
northamerica-northeast2
|
$0.1697 |
southamerica-east1
|
$0.2446 |
Other Americas regions | $0.1541 |
e2-standard-8
|
Approximations: |
---|---|
us-west2
|
$0.3702 |
us-west4
|
$0.3471 |
us-east4
|
$0.3471 |
northamerica-northeast1
|
$0.3393 |
northamerica-northeast2
|
$0.3393 |
southamerica-east1
|
$0.4893 |
Other Americas regions | $0.3082 |
e2-standard-16
|
Approximations: |
---|---|
us-west2
|
$0.7405 |
us-west4
|
$0.6942 |
us-east4
|
$0.6942 |
northamerica-northeast1
|
$0.6787 |
northamerica-northeast2
|
$0.6787 |
southamerica-east1
|
$0.9786 |
Other Americas regions | $0.6165 |
e2-standard-32
|
Approximations: |
---|---|
us-west2
|
$1.4809 |
us-west4
|
$1.3885 |
us-east4
|
$1.3885 |
northamerica-northeast1
|
$1.3574 |
northamerica-northeast2
|
$1.3574 |
southamerica-east1
|
$1.9572 |
Other Americas regions | $1.2329 |
e2-highmem-2
|
Approximations: |
---|---|
us-west2
|
$0.1249 |
us-west4
|
$0.1171 |
us-east4
|
$0.1171 |
northamerica-northeast1
|
$0.1144 |
northamerica-northeast2
|
$0.1144 |
southamerica-east1
|
$0.165 |
Other Americas regions | $0.1039 |
e2-highmem-4
|
Approximations: |
---|---|
us-west2
|
$0.2497 |
us-west4
|
$0.2341 |
us-east4
|
$0.2341 |
northamerica-northeast1
|
$0.2289 |
northamerica-northeast2
|
$0.2289 |
southamerica-east1
|
$0.33 |
Other Americas regions | $0.2079 |
e2-highmem-8
|
Approximations: |
---|---|
us-west2
|
$0.4994 |
us-west4
|
$0.4682 |
us-east4
|
$0.4682 |
northamerica-northeast1
|
$0.4578 |
northamerica-northeast2
|
$0.4578 |
southamerica-east1
|
$0.66 |
Other Americas regions | $0.4158 |
e2-highmem-16
|
Approximations: |
---|---|
us-west2
|
$0.9989 |
us-west4
|
$0.9365 |
us-east4
|
$0.9365 |
northamerica-northeast1
|
$0.9155 |
northamerica-northeast2
|
$0.9155 |
southamerica-east1
|
$1.3201 |
Other Americas regions | $0.8316 |
e2-highcpu-2
|
Approximations: |
---|---|
us-west2
|
$0.0683 |
us-west4
|
$0.0641 |
us-east4
|
$0.0641 |
northamerica-northeast1
|
$0.0626 |
northamerica-northeast2
|
$0.0626 |
southamerica-east1
|
$0.0903 |
Other Americas regions | $0.0569 |
e2-highcpu-4
|
Approximations: |
---|---|
us-west2
|
$0.1367 |
us-west4
|
$0.1281 |
us-east4
|
$0.1281 |
northamerica-northeast1
|
$0.1253 |
northamerica-northeast2
|
$0.1253 |
southamerica-east1
|
$0.1806 |
Other Americas regions | $0.1138 |
e2-highcpu-8
|
Approximations: |
---|---|
us-west2
|
$0.2733 |
us-west4
|
$0.2563 |
us-east4
|
$0.2563 |
northamerica-northeast1
|
$0.2505 |
northamerica-northeast2
|
$0.2505 |
southamerica-east1
|
$0.3612 |
Other Americas regions | $0.2276 |
e2-highcpu-16
|
Approximations: |
---|---|
us-west2
|
$0.5467 |
us-west4
|
$0.5126 |
us-east4
|
$0.5126 |
northamerica-northeast1
|
$0.501 |
northamerica-northeast2
|
$0.501 |
southamerica-east1
|
$0.7225 |
Other Americas regions | $0.4551 |
e2-highcpu-32
|
Approximations: |
---|---|
us-west2
|
$1.0933 |
us-west4
|
$1.0252 |
us-east4
|
$1.0252 |
northamerica-northeast1
|
$1.0021 |
northamerica-northeast2
|
$1.0021 |
southamerica-east1
|
$1.4449 |
Other Americas regions | $0.9102 |
N1 Series
n1-standard-2
|
Approximations: |
---|---|
us-east4
|
$0.123 |
northamerica-northeast1
|
$0.1203 |
Other Americas regions | $0.1093 |
n1-standard-4
|
Approximations: |
---|---|
us-east4
|
$0.2461 |
northamerica-northeast1
|
$0.2405 |
Other Americas regions | $0.2186 |
n1-standard-8
|
Approximations: |
---|---|
us-east4
|
$0.4922 |
northamerica-northeast1
|
$0.4811 |
Other Americas regions | $0.4372 |
n1-standard-16
|
Approximations: |
---|---|
us-east4
|
$0.9843 |
northamerica-northeast1
|
$0.9622 |
Other Americas regions | $0.8744 |
n1-standard-32
|
Approximations: |
---|---|
us-east4
|
$1.9687 |
northamerica-northeast1
|
$1.9243 |
Other Americas regions | $1.7488 |
n1-highmem-2
|
Approximations: |
---|---|
us-east4
|
$0.1532 |
northamerica-northeast1
|
$0.1498 |
Other Americas regions | $0.1361 |
n1-highmem-4
|
Approximations: |
---|---|
us-east4
|
$0.3064 |
northamerica-northeast1
|
$0.2995 |
Other Americas regions | $0.2723 |
n1-highmem-8
|
Approximations: |
---|---|
us-east4
|
$0.6129 |
northamerica-northeast1
|
$0.5991 |
Other Americas regions | $0.5445 |
n1-highmem-16
|
Approximations: |
---|---|
us-east4
|
$1.2257 |
northamerica-northeast1
|
$1.1982 |
Other Americas regions | $1.089 |
n1-highcpu-2
|
Approximations: |
---|---|
us-east4
|
$0.0918 |
northamerica-northeast1
|
$0.0897 |
Other Americas regions | $0.0815 |
n1-highcpu-4
|
Approximations: |
---|---|
us-east4
|
$0.1835 |
northamerica-northeast1
|
$0.1794 |
Other Americas regions | $0.163 |
n1-highcpu-8
|
Approximations: |
---|---|
us-east4
|
$0.3671 |
northamerica-northeast1
|
$0.3588 |
Other Americas regions | $0.326 |
n1-highcpu-16
|
Approximations: |
---|---|
us-east4
|
$0.7341 |
northamerica-northeast1
|
$0.7176 |
Other Americas regions | $0.6519 |
n1-highcpu-32
|
Approximations: |
---|---|
us-east4
|
$1.4683 |
northamerica-northeast1
|
$1.4352 |
Other Americas regions | $1.3039 |
N2 Series
n2-standard-2
|
Approximations: |
---|---|
northamerica_northeast1
|
$0.123 |
northamerica_northeast2
|
$0.123 |
southamerica_east1
|
$0.1773 |
us_central1
|
$0.1117 |
us_east1
|
$0.1117 |
us_east4
|
$0.1258 |
us_south1
|
$0.1318 |
us_west1
|
$0.1117 |
us_west2
|
$0.1341 |
us_west3
|
$0.1341 |
us_west4
|
$0.1258 |
n2-standard-4
|
Approximations: |
---|---|
northamerica_northeast1
|
$0.2459 |
northamerica_northeast2
|
$0.2459 |
southamerica_east1
|
$0.3546 |
us_central1
|
$0.2234 |
us_east1
|
$0.2234 |
us_east4
|
$0.2516 |
us_south1
|
$0.2636 |
us_west1
|
$0.2234 |
us_west2
|
$0.2683 |
us_west3
|
$0.2683 |
us_west4
|
$0.2516 |
n2-standard-8
|
Approximations: |
---|---|
northamerica_northeast1
|
$0.4918 |
northamerica_northeast2
|
$0.4918 |
southamerica_east1
|
$0.7091 |
us_central1
|
$0.4467 |
us_east1
|
$0.4467 |
us_east4
|
$0.5031 |
us_south1
|
$0.5272 |
us_west1
|
$0.4467 |
us_west2
|
$0.5366 |
us_west3
|
$0.5366 |
us_west4
|
$0.5031 |
n2-standard-16
|
Approximations: |
---|---|
northamerica_northeast1
|
$0.9836 |
northamerica_northeast2
|
$0.9836 |
southamerica_east1
|
$1.4183 |
us_central1
|
$0.8935 |
us_east1
|
$0.8935 |
us_east4
|
$1.0063 |
us_south1
|
$1.0543 |
us_west1
|
$0.8935 |
us_west2
|
$1.0732 |
us_west3
|
$1.0732 |
us_west4
|
$1.0062 |
n2-standard-32
|
Approximations: |
---|---|
northamerica_northeast1
|
$1.9673 |
northamerica_northeast2
|
$1.9673 |
southamerica_east1
|
$2.8365 |
us_central1
|
$1.787 |
us_east1
|
$1.787 |
us_east4
|
$2.0126 |
us_south1
|
$2.1087 |
us_west1
|
$1.787 |
us_west2
|
$2.1464 |
us_west3
|
$2.1464 |
us_west4
|
$2.0125 |
n2-highmem-2
|
Approximations: |
---|---|
northamerica_northeast1
|
$0.1659 |
northamerica_northeast2
|
$0.1659 |
southamerica_east1
|
$0.2392 |
us_central1
|
$0.1507 |
us_east1
|
$0.1507 |
us_east4
|
$0.1697 |
us_south1
|
$0.1778 |
us_west1
|
$0.1507 |
us_west2
|
$0.181 |
us_west3
|
$0.181 |
us_west4
|
$0.1697 |
n2-highmem-4
|
Approximations: |
---|---|
northamerica_northeast1
|
$0.3317 |
northamerica_northeast2
|
$0.3317 |
southamerica_east1
|
$0.4783 |
us_central1
|
$0.3013 |
us_east1
|
$0.3013 |
us_east4
|
$0.3394 |
us_south1
|
$0.3556 |
us_west1
|
$0.3013 |
us_west2
|
$0.3619 |
us_west3
|
$0.3619 |
us_west4
|
$0.3393 |
n2-highmem-8
|
Approximations: |
---|---|
northamerica_northeast1
|
$0.6634 |
northamerica_northeast2
|
$0.6634 |
southamerica_east1
|
$0.9566 |
us_central1
|
$0.6027 |
us_east1
|
$0.6027 |
us_east4
|
$0.6787 |
us_south1
|
$0.7112 |
us_west1
|
$0.6027 |
us_west2
|
$0.7239 |
us_west3
|
$0.7239 |
us_west4
|
$0.6787 |
n2-highmem-16
|
Approximations: |
---|---|
northamerica_northeast1
|
$1.3269 |
northamerica_northeast2
|
$1.3269 |
southamerica_east1
|
$1.9132 |
us_central1
|
$1.2053 |
us_east1
|
$1.2053 |
us_east4
|
$1.3574 |
us_south1
|
$1.4223 |
us_west1
|
$1.2053 |
us_west2
|
$1.4477 |
us_west3
|
$1.4477 |
us_west4
|
$1.3574 |
n2-highcpu-2
|
Approximations: |
---|---|
northamerica_northeast1
|
$0.0908 |
northamerica_northeast2
|
$0.0908 |
southamerica_east1
|
$0.1309 |
us_central1
|
$0.0825 |
us_east1
|
$0.0825 |
us_east4
|
$0.0929 |
us_south1
|
$0.0973 |
us_west1
|
$0.0825 |
us_west2
|
$0.099 |
us_west3
|
$0.099 |
us_west4
|
$0.0929 |
n2-highcpu-4
|
Approximations: |
---|---|
northamerica_northeast1
|
$0.1815 |
northamerica_northeast2
|
$0.1815 |
southamerica_east1
|
$0.2618 |
us_central1
|
$0.1649 |
us_east1
|
$0.1649 |
us_east4
|
$0.1857 |
us_south1
|
$0.1946 |
us_west1
|
$0.1649 |
us_west2
|
$0.1981 |
us_west3
|
$0.1981 |
us_west4
|
$0.1857 |
n2-highcpu-8
|
Approximations: |
---|---|
northamerica_northeast1
|
$0.3631 |
northamerica_northeast2
|
$0.3631 |
southamerica_east1
|
$0.5235 |
us_central1
|
$0.3298 |
us_east1
|
$0.3298 |
us_east4
|
$0.3715 |
us_south1
|
$0.3892 |
us_west1
|
$0.3298 |
us_west2
|
$0.3961 |
us_west3
|
$0.3961 |
us_west4
|
$0.3714 |
n2-highcpu-16
|
Approximations: |
---|---|
northamerica_northeast1
|
$0.7262 |
northamerica_northeast2
|
$0.7262 |
southamerica_east1
|
$1.0471 |
us_central1
|
$0.6596 |
us_east1
|
$0.6596 |
us_east4
|
$0.7429 |
us_south1
|
$0.7783 |
us_west1
|
$0.6596 |
us_west2
|
$0.7923 |
us_west3
|
$0.7923 |
us_west4
|
$0.7429 |
n2-highcpu-32
|
Approximations: |
---|---|
northamerica_northeast1
|
$1.4523 |
northamerica_northeast2
|
$1.4523 |
southamerica_east1
|
$2.0941 |
us_central1
|
$1.3192 |
us_east1
|
$1.3192 |
us_east4
|
$1.4858 |
us_south1
|
$1.5567 |
us_west1
|
$1.3192 |
us_west2
|
$1.5846 |
us_west3
|
$1.5846 |
us_west4
|
$1.4858 |
N2D Series
n2d-standard-2
|
Approximations: |
---|---|
northamerica_northeast1
|
$0.107 |
southamerica_east1
|
$0.1542 |
us_central1
|
$0.0972 |
us_east1
|
$0.0972 |
us_east4
|
$0.1094 |
us_west1
|
$0.0972 |
us_west2
|
$0.1167 |
us_west4
|
$0.1094 |
n2d-standard-4
|
Approximations: |
---|---|
northamerica_northeast1
|
$0.2139 |
southamerica_east1
|
$0.3085 |
us_central1
|
$0.1943 |
us_east1
|
$0.1943 |
us_east4
|
$0.2189 |
us_west1
|
$0.1943 |
us_west2
|
$0.2334 |
us_west4
|
$0.2189 |
n2d-standard-8
|
Approximations: |
---|---|
northamerica_northeast1
|
$0.4279 |
southamerica_east1
|
$0.617 |
us_central1
|
$0.3887 |
us_east1
|
$0.3887 |
us_east4
|
$0.4377 |
us_west1
|
$0.3887 |
us_west2
|
$0.4668 |
us_west4
|
$0.4377 |
n2d-standard-16
|
Approximations: |
---|---|
northamerica_northeast1
|
$0.8558 |
southamerica_east1
|
$1.2339 |
us_central1
|
$0.7773 |
us_east1
|
$0.7773 |
us_east4
|
$0.8755 |
us_west1
|
$0.7773 |
us_west2
|
$0.9336 |
us_west4
|
$0.8755 |
n2d-standard-32
|
Approximations: |
---|---|
northamerica_northeast1
|
$1.7116 |
southamerica_east1
|
$2.4678 |
us_central1
|
$1.5547 |
us_east1
|
$1.5547 |
us_east4
|
$1.7509 |
us_west1
|
$1.5547 |
us_west2
|
$1.8673 |
us_west4
|
$1.7509 |
n2d-highmem-2
|
Approximations: |
---|---|
northamerica_northeast1
|
$0.1443 |
southamerica_east1
|
$0.2081 |
us_central1
|
$0.1311 |
us_east1
|
$0.1311 |
us_east4
|
$0.1476 |
us_west1
|
$0.1311 |
us_west2
|
$0.1574 |
us_west4
|
$0.1476 |
n2d-highmem-4
|
Approximations: |
---|---|
northamerica_northeast1
|
$0.2886 |
southamerica_east1
|
$0.4161 |
us_central1
|
$0.2622 |
us_east1
|
$0.2622 |
us_east4
|
$0.2952 |
us_west1
|
$0.2622 |
us_west2
|
$0.3149 |
us_west4
|
$0.2952 |
n2d-highmem-8
|
Approximations: |
---|---|
northamerica_northeast1
|
$0.5772 |
southamerica_east1
|
$0.8323 |
us_central1
|
$0.5243 |
us_east1
|
$0.5243 |
us_east4
|
$0.5905 |
us_west1
|
$0.5243 |
us_west2
|
$0.6297 |
us_west4
|
$0.5905 |
n2d-highmem-16
|
Approximations: |
---|---|
northamerica_northeast1
|
$1.1545 |
southamerica_east1
|
$1.6646 |
us_central1
|
$1.0486 |
us_east1
|
$1.0486 |
us_east4
|
$1.181 |
us_west1
|
$1.0486 |
us_west2
|
$1.2595 |
us_west4
|
$1.181 |
n2d-highcpu-2
|
Approximations: |
---|---|
northamerica_northeast1
|
$0.079 |
southamerica_east1
|
$0.1139 |
us_central1
|
$0.0717 |
us_east1
|
$0.0717 |
us_east4
|
$0.0808 |
us_west1
|
$0.0717 |
us_west2
|
$0.0862 |
us_west4
|
$0.0808 |
n2d-highcpu-4
|
Approximations: |
---|---|
northamerica_northeast1
|
$0.1579 |
southamerica_east1
|
$0.2277 |
us_central1
|
$0.1435 |
us_east1
|
$0.1435 |
us_east4
|
$0.1616 |
us_west1
|
$0.1435 |
us_west2
|
$0.1723 |
us_west4
|
$0.1616 |
n2d-highcpu-8
|
Approximations: |
---|---|
northamerica_northeast1
|
$0.3159 |
southamerica_east1
|
$0.4555 |
us_central1
|
$0.2869 |
us_east1
|
$0.2869 |
us_east4
|
$0.3232 |
us_west1
|
$0.2869 |
us_west2
|
$0.3446 |
us_west4
|
$0.3232 |
n2d-highcpu-16
|
Approximations: |
---|---|
northamerica_northeast1
|
$0.6318 |
southamerica_east1
|
$0.9109 |
us_central1
|
$0.5739 |
us_east1
|
$0.5739 |
us_east4
|
$0.6463 |
us_west1
|
$0.5739 |
us_west2
|
$0.6893 |
us_west4
|
$0.6463 |
n2d-highcpu-32
|
Approximations: |
---|---|
northamerica_northeast1
|
$1.2636 |
southamerica_east1
|
$1.8219 |
us_central1
|
$1.1477 |
us_east1
|
$1.1477 |
us_east4
|
$1.2927 |
us_west1
|
$1.1477 |
us_west2
|
$1.3786 |
us_west4
|
$1.2927 |
C2 Series
c2-standard-4
|
Approximations: |
---|---|
northamerica_northeast1
|
$0.264 |
southamerica_east1
|
$0.3812 |
us_central1
|
$0.24 |
us_east1
|
$0.24 |
us_east4
|
$0.2702 |
us_west1
|
$0.24 |
us_west2
|
$0.2884 |
us_west3
|
$0.2889 |
us_west4
|
$0.2702 |
c2-standard-8
|
Approximations: |
---|---|
northamerica_northeast1
|
$0.5281 |
southamerica_east1
|
$0.7623 |
us_central1
|
$0.4801 |
us_east1
|
$0.4801 |
us_east4
|
$0.5405 |
us_west1
|
$0.4801 |
us_west2
|
$0.5768 |
us_west3
|
$0.5778 |
us_west4
|
$0.5405 |
c2-standard-16
|
Approximations: |
---|---|
northamerica_northeast1
|
$1.0562 |
southamerica_east1
|
$1.5246 |
us_central1
|
$0.9601 |
us_east1
|
$0.9601 |
us_east4
|
$1.081 |
us_west1
|
$0.9601 |
us_west2
|
$1.1537 |
us_west3
|
$1.1555 |
us_west4
|
$1.081 |
c2-standard-30
|
Approximations: |
---|---|
northamerica_northeast1
|
$1.9803 |
southamerica_east1
|
$2.8587 |
us_central1
|
$1.8002 |
us_east1
|
$1.8002 |
us_east4
|
$2.0269 |
us_west1
|
$1.8002 |
us_west2
|
$2.1631 |
us_west3
|
$2.1666 |
us_west4
|
$2.0269 |
c2-standard-60
|
Approximations: |
---|---|
northamerica_northeast1
|
$3.9606 |
southamerica_east1
|
$5.7173 |
us_central1
|
$3.6004 |
us_east1
|
$3.6004 |
us_east4
|
$4.0537 |
us_west1
|
$3.6004 |
us_west2
|
$4.3263 |
us_west3
|
$4.3332 |
us_west4
|
$4.0537 |
C2D Series
c2d-standard-2
|
Approximations: |
---|---|
us_central1
|
$0.1044 |
us_east1
|
$0.1044 |
us_east4
|
$0.1176 |
us_west1
|
$0.1044 |
us_west4
|
$0.1176 |
c2d-standard-4
|
Approximations: |
---|---|
us_central1
|
$0.2088 |
us_east1
|
$0.2088 |
us_east4
|
$0.2352 |
us_west1
|
$0.2088 |
us_west4
|
$0.2352 |
c2d-standard-8
|
Approximations: |
---|---|
us_central1
|
$0.4177 |
us_east1
|
$0.4177 |
us_east4
|
$0.4704 |
us_west1
|
$0.4177 |
us_west4
|
$0.4704 |
c2d-standard-16
|
Approximations: |
---|---|
us_central1
|
$0.8353 |
us_east1
|
$0.8353 |
us_east4
|
$0.9408 |
us_west1
|
$0.8353 |
us_west4
|
$0.9408 |
c2d-standard-32
|
Approximations: |
---|---|
us_central1
|
$1.6707 |
us_east1
|
$1.6707 |
us_east4
|
$1.8815 |
us_west1
|
$1.6707 |
us_west4
|
$1.8815 |
c2d-standard-56
|
Approximations: |
---|---|
us_central1
|
$2.9237 |
us_east1
|
$2.9237 |
us_east4
|
$3.2926 |
us_west1
|
$2.9237 |
us_west4
|
$3.2926 |
c2d-standard-112
|
Approximations: |
---|---|
us_central1
|
$5.8474 |
us_east1
|
$5.8474 |
us_east4
|
$6.5853 |
us_west1
|
$5.8474 |
us_west4
|
$6.5853 |
c2d-highmem-2
|
Approximations: |
---|---|
us_central1
|
$0.1408 |
us_east1
|
$0.1408 |
us_east4
|
$0.1586 |
us_west1
|
$0.1408 |
us_west4
|
$0.1586 |
c2d-highmem-4
|
Approximations: |
---|---|
us_central1
|
$0.2817 |
us_east1
|
$0.2817 |
us_east4
|
$0.3172 |
us_west1
|
$0.2817 |
us_west4
|
$0.3172 |
c2d-highmem-8
|
Approximations: |
---|---|
us_central1
|
$0.5634 |
us_east1
|
$0.5634 |
us_east4
|
$0.6344 |
us_west1
|
$0.5634 |
us_west4
|
$0.6344 |
c2d-highmem-16
|
Approximations: |
---|---|
us_central1
|
$1.1267 |
us_east1
|
$1.1267 |
us_east4
|
$1.2689 |
us_west1
|
$1.1267 |
us_west4
|
$1.2689 |
c2d-highmem-32
|
Approximations: |
---|---|
us_central1
|
$2.2534 |
us_east1
|
$2.2534 |
us_east4
|
$2.5377 |
us_west1
|
$2.2534 |
us_west4
|
$2.5377 |
c2d-highmem-56
|
Approximations: |
---|---|
us_central1
|
$3.9435 |
us_east1
|
$3.9435 |
us_east4
|
$4.441 |
us_west1
|
$3.9435 |
us_west4
|
$4.441 |
c2d-highmem-112
|
Approximations: |
---|---|
us_central1
|
$7.887 |
us_east1
|
$7.887 |
us_east4
|
$8.882 |
us_west1
|
$7.887 |
us_west4
|
$8.882 |
c2d-highcpu-2
|
Approximations: |
---|---|
us_central1
|
$0.0862 |
us_east1
|
$0.0862 |
us_east4
|
$0.0971 |
us_west1
|
$0.0862 |
us_west4
|
$0.0971 |
c2d-highcpu-4
|
Approximations: |
---|---|
us_central1
|
$0.1724 |
us_east1
|
$0.1724 |
us_east4
|
$0.1942 |
us_west1
|
$0.1724 |
us_west4
|
$0.1942 |
c2d-highcpu-8
|
Approximations: |
---|---|
us_central1
|
$0.3448 |
us_east1
|
$0.3448 |
us_east4
|
$0.3884 |
us_west1
|
$0.3448 |
us_west4
|
$0.3884 |
c2d-highcpu-16
|
Approximations: |
---|---|
us_central1
|
$0.6896 |
us_east1
|
$0.6896 |
us_east4
|
$0.7767 |
us_west1
|
$0.6896 |
us_west4
|
$0.7767 |
c2d-highcpu-32
|
Approximations: |
---|---|
us_central1
|
$1.3793 |
us_east1
|
$1.3793 |
us_east4
|
$1.5534 |
us_west1
|
$1.3793 |
us_west4
|
$1.5534 |
c2d-highcpu-56
|
Approximations: |
---|---|
us_central1
|
$2.4138 |
us_east1
|
$2.4138 |
us_east4
|
$2.7185 |
us_west1
|
$2.4138 |
us_west4
|
$2.7185 |
c2d-highcpu-112
|
Approximations: |
---|---|
us_central1
|
$4.8275 |
us_east1
|
$4.8275 |
us_east4
|
$5.4369 |
us_west1
|
$4.8275 |
us_west4
|
$5.4369 |
C3 Series
c3-highcpu-4
|
Approximations: |
---|---|
us_central1
|
$0.1982 |
us_east1
|
$0.1982 |
us_east4
|
$0.2232 |
c3-highcpu-8
|
Approximations: |
---|---|
us_central1
|
$0.3965 |
us_east1
|
$0.3965 |
us_east4
|
$0.4465 |
c3-highcpu-22
|
Approximations: |
---|---|
us_central1
|
$1.0903 |
us_east1
|
$1.0903 |
us_east4
|
$1.2278 |
c3-highcpu-44
|
Approximations: |
---|---|
us_central1
|
$2.1806 |
us_east1
|
$2.1806 |
us_east4
|
$2.4556 |
c3-highcpu-88
|
Approximations: |
---|---|
us_central1
|
$4.3613 |
us_east1
|
$4.3613 |
us_east4
|
$4.9113 |
c3-highcpu-176
|
Approximations: |
---|---|
us_central1
|
$8.7226 |
us_east1
|
$8.7226 |
us_east4
|
$9.8226 |
A2 Series*
a2-highgpu-1g
|
Approximations: |
---|---|
us-central1
|
$4.2245 |
a2-highgpu-2g
|
Approximations: |
---|---|
us-central1
|
$8.449 |
a2-highgpu-4g
|
Approximations: |
---|---|
us-central1
|
$16.898 |
a2-highgpu-8g
|
Approximations: |
---|---|
us-central1
|
$33.796 |
a2-megagpu-16g
|
Approximations: |
---|---|
us-central1
|
$64.1021 |
a2-ultragpu-1g
|
Approximations: |
---|---|
us-central1
|
$5.7818 |
us-east4
|
$6.3524 |
a2-ultragpu-2g
|
Approximations: |
---|---|
us-central1
|
$11.5637 |
us-east4
|
$12.7048 |
a2-ultragpu-4g
|
Approximations: |
---|---|
us-central1
|
$23.1274 |
us-east4
|
$25.4095 |
a2-ultragpu-8g
|
Approximations: |
---|---|
us-central1
|
$46.2548 |
us-east4
|
$50.8191 |
A3 Series*
a3-highgpu-2g
|
Approximations: |
---|---|
us-west1
|
$25.2518 |
a3-highgpu-4g
|
Approximations: |
---|---|
us-west1
|
$50.5037 |
a3-highgpu-8g
|
Approximations: |
---|---|
us-central1
|
$101.0074 |
us-east4
|
$101.0074 |
us-west1
|
$101.0074 |
a3-ultragpu-8g
|
Approximations: |
---|---|
us-east4
|
$96.0156 |
a3-edgegpu-8g
|
Approximations: |
---|---|
northamerica-northeast2
|
$111.2192 |
a3-megagpu-8g
|
Approximations: |
---|---|
us-central1
|
$106.6547 |
us-east4
|
$106.6547 |
us-east5
|
$106.6547 |
us-west1
|
$106.6547 |
us-west4
|
$120.1252 |
A4 Series*
a4-highgpu-8g
|
Approximations: |
---|---|
us-central1
|
$148.212 |
A4X Series**
a4x-highgpu-4g
|
Approximations: |
---|---|
us-central1
|
$74.75 |
G2 Series*
g2-standard-4
|
Approximations: |
---|---|
northamerica-northeast2
|
$0.8951 |
us-central1
|
$0.8129 |
g2-standard-8
|
Approximations: |
---|---|
northamerica-northeast2
|
$1.0811 |
us-central1
|
$0.9818 |
g2-standard-12
|
Approximations: |
---|---|
northamerica-northeast2
|
$1.267 |
us-central1
|
$1.1507 |
g2-standard-16
|
Approximations: |
---|---|
northamerica-northeast2
|
$1.453 |
us-central1
|
$1.3196 |
g2-standard-24
|
Approximations: |
---|---|
northamerica-northeast2
|
$2.5341 |
us-central1
|
$2.3014 |
g2-standard-32
|
Approximations: |
---|---|
northamerica-northeast2
|
$2.1968 |
us-central1
|
$1.9951 |
g2-standard-48
|
Approximations: |
---|---|
northamerica-northeast2
|
$5.0681 |
us-central1
|
$4.6028 |
g2-standard-96
|
Approximations: |
---|---|
northamerica-northeast2
|
$10.1362 |
us-central1
|
$9.2055 |
*When consuming from a reservation or spot capacity, billing is spread
across two SKUs: the GCE
SKU with the label
'vertex-ai-online-prediction' and the Vertex AI Management Fee SKU.
This enables you to use your Committed Use Discounts (CUDs) in
Vertex AI.
** a4x-highgpu-4grequires at least 18 VMs.
TPU v5e pricing for Americas | |
---|---|
ct5lp-hightpu-1t | Approximations: |
us-central1 | $1.38 |
us-south1 | $1.6284 |
us-west1 | $1.38 |
us-west4 | $1.38 |
ct5lp-hightpu-4t | Approximations: |
us-central1 | $5.52 |
us-south1 | $6.5136 |
us-west1 | $5.52 |
us-west4 | $5.52 |
ct5lp-hightpu-8t | Approximations: |
us-central1 | $11.04 |
us-south1 | $13.0272 |
us-west1 | $11.04 |
us-west4 | $11.04 |
Pricing for Europe
The following tables provide the price per node hour for each machine type.
E2 Series
e2-standard-2
|
Approximations: |
---|---|
europe-west1
|
$0.0848 |
europe-west2
|
$0.0993 |
europe-west3
|
$0.0993 |
europe-west4
|
$0.0848 |
europe-west6
|
$0.1078 |
europe-west9
|
$0.1079 |
e2-standard-4
|
Approximations: |
---|---|
europe-west1
|
$0.1695 |
europe-west2
|
$0.1986 |
europe-west3
|
$0.1986 |
europe-west4
|
$0.1697 |
europe-west6
|
$0.2156 |
europe-west9
|
$0.2158 |
e2-standard-8
|
Approximations: |
---|---|
europe-west1
|
$0.3391 |
europe-west2
|
$0.3971 |
europe-west3
|
$0.3971 |
europe-west4
|
$0.3393 |
europe-west6
|
$0.4313 |
europe-west9
|
$0.4316 |
e2-standard-16
|
Approximations: |
---|---|
europe-west1
|
$0.6782 |
europe-west2
|
$0.7943 |
europe-west3
|
$0.7943 |
europe-west4
|
$0.6787 |
europe-west6
|
$0.8626 |
europe-west9
|
$0.8631 |
e2-standard-32
|
Approximations: |
---|---|
europe-west1
|
$1.3563 |
europe-west2
|
$1.5885 |
europe-west3
|
$1.5885 |
europe-west4
|
$1.3574 |
europe-west6
|
$1.7251 |
europe-west9
|
$1.7262 |
e2-highmem-2
|
Approximations: |
---|---|
europe-west1
|
$0.1144 |
europe-west2
|
$0.1339 |
europe-west3
|
$0.1339 |
europe-west4
|
$0.1144 |
europe-west6
|
$0.1454 |
europe-west9
|
$0.1455 |
e2-highmem-4
|
Approximations: |
---|---|
europe-west1
|
$0.2287 |
europe-west2
|
$0.2679 |
europe-west3
|
$0.2679 |
europe-west4
|
$0.2289 |
europe-west6
|
$0.2909 |
europe-west9
|
$0.2911 |
e2-highmem-8
|
Approximations: |
---|---|
europe-west1
|
$0.4574 |
europe-west2
|
$0.5357 |
europe-west3
|
$0.5357 |
europe-west4
|
$0.4578 |
europe-west6
|
$0.5818 |
europe-west9
|
$0.5822 |
e2-highmem-16
|
Approximations: |
---|---|
europe-west1
|
$0.9149 |
europe-west2
|
$1.0714 |
europe-west3
|
$1.0714 |
europe-west4
|
$0.9155 |
europe-west6
|
$1.1636 |
europe-west9
|
$1.1643 |
e2-highcpu-2
|
Approximations: |
---|---|
europe-west1
|
$0.0626 |
europe-west2
|
$0.0733 |
europe-west3
|
$0.0733 |
europe-west4
|
$0.0626 |
europe-west6
|
$0.0796 |
europe-west9
|
$0.0796 |
e2-highcpu-4
|
Approximations: |
---|---|
europe-west1
|
$0.1252 |
europe-west2
|
$0.1466 |
europe-west3
|
$0.1466 |
europe-west4
|
$0.1253 |
europe-west6
|
$0.1592 |
europe-west9
|
$0.1593 |
e2-highcpu-8
|
Approximations: |
---|---|
europe-west1
|
$0.2503 |
europe-west2
|
$0.2932 |
europe-west3
|
$0.2932 |
europe-west4
|
$0.2505 |
europe-west6
|
$0.3184 |
europe-west9
|
$0.3186 |
e2-highcpu-16
|
Approximations: |
---|---|
europe-west1
|
$0.5006 |
europe-west2
|
$0.5864 |
europe-west3
|
$0.5864 |
europe-west4
|
$0.501 |
europe-west6
|
$0.6368 |
europe-west9
|
$0.6372 |
e2-highcpu-32
|
Approximations: |
---|---|
europe-west1
|
$1.0013 |
europe-west2
|
$1.1728 |
europe-west3
|
$1.1728 |
europe-west4
|
$1.0021 |
europe-west6
|
$1.2736 |
europe-west9
|
$1.2743 |
N1 Series
n1-standard-2
|
Approximations: |
---|---|
europe-west2
|
$0.1408 |
Other Europe regions | $0.1265 |
n1-standard-4
|
Approximations: |
---|---|
europe-west2
|
$0.2815 |
Other Europe regions | $0.2531 |
n1-standard-8
|
Approximations: |
---|---|
europe-west2
|
$0.563 |
Other Europe regions | $0.5061 |
n1-standard-16
|
Approximations: |
---|---|
europe-west2
|
$1.126 |
Other Europe regions | $1.0123 |
n1-standard-32
|
Approximations: |
---|---|
europe-west2
|
$2.2521 |
Other Europe regions | $2.0245 |
n1-highmem-2
|
Approximations: |
---|---|
europe-west2
|
$0.1753 |
Other Europe regions | $0.1575 |
n1-highmem-4
|
Approximations: |
---|---|
europe-west2
|
$0.3506 |
Other Europe regions | $0.3151 |
n1-highmem-8
|
Approximations: |
---|---|
europe-west2
|
$0.7011 |
Other Europe regions | $0.6302 |
n1-highmem-16
|
Approximations: |
---|---|
europe-west2
|
$1.4022 |
Other Europe regions | $1.2603 |
n1-highcpu-2
|
Approximations: |
---|---|
europe-west2
|
$0.105 |
Other Europe regions | $0.0944 |
n1-highcpu-4
|
Approximations: |
---|---|
europe-west2
|
$0.21 |
Other Europe regions | $0.1888 |
n1-highcpu-8
|
Approximations: |
---|---|
europe-west2
|
$0.4199 |
Other Europe regions | $0.3776 |
n1-highcpu-16
|
Approximations: |
---|---|
europe-west2
|
$0.8398 |
Other Europe regions | $0.7552 |
n1-highcpu-32
|
Approximations: |
---|---|
europe-west2
|
$1.6796 |
Other Europe regions | $1.5104 |
N2 Series
n2-standard-2
|
Approximations: |
---|---|
europe_central2
|
$0.1439 |
europe_west1
|
$0.1229 |
europe_west2
|
$0.1439 |
europe_west3
|
$0.1439 |
europe_west4
|
$0.1229 |
europe_west6
|
$0.1564 |
europe_west9
|
$0.1296 |
n2-standard-4
|
Approximations: |
---|---|
europe_central2
|
$0.2878 |
europe_west1
|
$0.2457 |
europe_west2
|
$0.2878 |
europe_west3
|
$0.2878 |
europe_west4
|
$0.2457 |
europe_west6
|
$0.3127 |
europe_west9
|
$0.2591 |
n2-standard-8
|
Approximations: |
---|---|
europe_central2
|
$0.5756 |
europe_west1
|
$0.4914 |
europe_west2
|
$0.5756 |
europe_west3
|
$0.5756 |
europe_west4
|
$0.4914 |
europe_west6
|
$0.6254 |
europe_west9
|
$0.5182 |
n2-standard-16
|
Approximations: |
---|---|
europe_central2
|
$1.1511 |
europe_west1
|
$0.9829 |
europe_west2
|
$1.1511 |
europe_west3
|
$1.1511 |
europe_west4
|
$0.9828 |
europe_west6
|
$1.2508 |
europe_west9
|
$1.0364 |
n2-standard-32
|
Approximations: |
---|---|
europe_central2
|
$2.3023 |
europe_west1
|
$1.9658 |
europe_west2
|
$2.3023 |
europe_west3
|
$2.3023 |
europe_west4
|
$1.9657 |
europe_west6
|
$2.5017 |
europe_west9
|
$2.0729 |
n2-highmem-2
|
Approximations: |
---|---|
europe_central2
|
$0.1941 |
europe_west1
|
$0.1657 |
europe_west2
|
$0.1941 |
europe_west3
|
$0.1941 |
europe_west4
|
$0.1657 |
europe_west6
|
$0.2109 |
europe_west9
|
$0.1748 |
n2-highmem-4
|
Approximations: |
---|---|
europe_central2
|
$0.3882 |
europe_west1
|
$0.3315 |
europe_west2
|
$0.3882 |
europe_west3
|
$0.3882 |
europe_west4
|
$0.3315 |
europe_west6
|
$0.4218 |
europe_west9
|
$0.3495 |
n2-highmem-8
|
Approximations: |
---|---|
europe_central2
|
$0.7764 |
europe_west1
|
$0.663 |
europe_west2
|
$0.7764 |
europe_west3
|
$0.7764 |
europe_west4
|
$0.6629 |
europe_west6
|
$0.8436 |
europe_west9
|
$0.6991 |
n2-highmem-16
|
Approximations: |
---|---|
europe_central2
|
$1.5528 |
europe_west1
|
$1.3259 |
europe_west2
|
$1.5528 |
europe_west3
|
$1.5528 |
europe_west4
|
$1.3259 |
europe_west6
|
$1.6873 |
europe_west9
|
$1.3982 |
n2-highcpu-2
|
Approximations: |
---|---|
europe_central2
|
$0.1062 |
europe_west1
|
$0.0907 |
europe_west2
|
$0.1062 |
europe_west3
|
$0.1062 |
europe_west4
|
$0.0907 |
europe_west6
|
$0.1154 |
europe_west9
|
$0.0956 |
n2-highcpu-4
|
Approximations: |
---|---|
europe_central2
|
$0.2125 |
europe_west1
|
$0.1814 |
europe_west2
|
$0.2125 |
europe_west3
|
$0.2125 |
europe_west4
|
$0.1814 |
europe_west6
|
$0.2309 |
europe_west9
|
$0.1913 |
n2-highcpu-8
|
Approximations: |
---|---|
europe_central2
|
$0.4249 |
europe_west1
|
$0.3628 |
europe_west2
|
$0.4249 |
europe_west3
|
$0.4249 |
europe_west4
|
$0.3628 |
europe_west6
|
$0.4617 |
europe_west9
|
$0.3826 |
n2-highcpu-16
|
Approximations: |
---|---|
europe_central2
|
$0.8499 |
europe_west1
|
$0.7256 |
europe_west2
|
$0.8499 |
europe_west3
|
$0.8499 |
europe_west4
|
$0.7256 |
europe_west6
|
$0.9235 |
europe_west9
|
$0.7651 |
n2-highcpu-32
|
Approximations: |
---|---|
europe_central2
|
$1.6997 |
europe_west1
|
$1.4512 |
europe_west2
|
$1.6997 |
europe_west3
|
$1.6997 |
europe_west4
|
$1.4511 |
europe_west6
|
$1.847 |
europe_west9
|
$1.5303 |
N2D Series
n2d-standard-2
|
Approximations: |
---|---|
europe_west1
|
$0.1069 |
europe_west2
|
$0.1252 |
europe_west3
|
$0.1252 |
europe_west4
|
$0.107 |
europe_west9
|
$0.1127 |
n2d-standard-4
|
Approximations: |
---|---|
europe_west1
|
$0.2138 |
europe_west2
|
$0.2504 |
europe_west3
|
$0.2504 |
europe_west4
|
$0.2139 |
europe_west9
|
$0.2254 |
n2d-standard-8
|
Approximations: |
---|---|
europe_west1
|
$0.4275 |
europe_west2
|
$0.5007 |
europe_west3
|
$0.5007 |
europe_west4
|
$0.4279 |
europe_west9
|
$0.4509 |
n2d-standard-16
|
Approximations: |
---|---|
europe_west1
|
$0.8551 |
europe_west2
|
$1.0015 |
europe_west3
|
$1.0015 |
europe_west4
|
$0.8558 |
europe_west9
|
$0.9017 |
n2d-standard-32
|
Approximations: |
---|---|
europe_west1
|
$1.7102 |
europe_west2
|
$2.0029 |
europe_west3
|
$2.0029 |
europe_west4
|
$1.7116 |
europe_west9
|
$1.8034 |
n2d-highmem-2
|
Approximations: |
---|---|
europe_west1
|
$0.1442 |
europe_west2
|
$0.1689 |
europe_west3
|
$0.1689 |
europe_west4
|
$0.1443 |
europe_west9
|
$0.1521 |
n2d-highmem-4
|
Approximations: |
---|---|
europe_west1
|
$0.2884 |
europe_west2
|
$0.3377 |
europe_west3
|
$0.3377 |
europe_west4
|
$0.2886 |
europe_west9
|
$0.3041 |
n2d-highmem-8
|
Approximations: |
---|---|
europe_west1
|
$0.5768 |
europe_west2
|
$0.6755 |
europe_west3
|
$0.6755 |
europe_west4
|
$0.5772 |
europe_west9
|
$0.6082 |
n2d-highmem-16
|
Approximations: |
---|---|
europe_west1
|
$1.1535 |
europe_west2
|
$1.3509 |
europe_west3
|
$1.3509 |
europe_west4
|
$1.1545 |
europe_west9
|
$1.2164 |
n2d-highcpu-2
|
Approximations: |
---|---|
europe_west1
|
$0.0789 |
europe_west2
|
$0.0924 |
europe_west3
|
$0.0924 |
europe_west4
|
$0.079 |
europe_west9
|
$0.0832 |
n2d-highcpu-4
|
Approximations: |
---|---|
europe_west1
|
$0.1578 |
europe_west2
|
$0.1848 |
europe_west3
|
$0.1848 |
europe_west4
|
$0.1579 |
europe_west9
|
$0.1664 |
n2d-highcpu-8
|
Approximations: |
---|---|
europe_west1
|
$0.3156 |
europe_west2
|
$0.3697 |
europe_west3
|
$0.3697 |
europe_west4
|
$0.3159 |
europe_west9
|
$0.3328 |
n2d-highcpu-16
|
Approximations: |
---|---|
europe_west1
|
$0.6313 |
europe_west2
|
$0.7394 |
europe_west3
|
$0.7394 |
europe_west4
|
$0.6318 |
europe_west9
|
$0.6657 |
n2d-highcpu-32
|
Approximations: |
---|---|
europe_west1
|
$1.2625 |
europe_west2
|
$1.4787 |
europe_west3
|
$1.4787 |
europe_west4
|
$1.2636 |
europe_west9
|
$1.3314 |
C2 Series
c2-standard-4
|
Approximations: |
---|---|
europe_west1
|
$0.2641 |
europe_west2
|
$0.3094 |
europe_west3
|
$0.3092 |
europe_west4
|
$0.2643 |
europe_west6
|
$0.3362 |
c2-standard-8
|
Approximations: |
---|---|
europe_west1
|
$0.5283 |
europe_west2
|
$0.6187 |
europe_west3
|
$0.6184 |
europe_west4
|
$0.5285 |
europe_west6
|
$0.6724 |
c2-standard-16
|
Approximations: |
---|---|
europe_west1
|
$1.0565 |
europe_west2
|
$1.2375 |
europe_west3
|
$1.2368 |
europe_west4
|
$1.0571 |
europe_west6
|
$1.3449 |
c2-standard-30
|
Approximations: |
---|---|
europe_west1
|
$1.981 |
europe_west2
|
$2.3202 |
europe_west3
|
$2.3191 |
europe_west4
|
$1.982 |
europe_west6
|
$2.5216 |
c2-standard-60
|
Approximations: |
---|---|
europe_west1
|
$3.962 |
europe_west2
|
$4.6404 |
europe_west3
|
$4.6382 |
europe_west4
|
$3.964 |
europe_west6
|
$5.0432 |
C2D Series
c2d-standard-2
|
Approximations: |
---|---|
europe_west1
|
$0.115 |
europe_west2
|
$0.1345 |
europe_west3
|
$0.1345 |
europe_west4
|
$0.115 |
c2d-standard-4
|
Approximations: |
---|---|
europe_west1
|
$0.2299 |
europe_west2
|
$0.269 |
europe_west3
|
$0.269 |
europe_west4
|
$0.2299 |
c2d-standard-8
|
Approximations: |
---|---|
europe_west1
|
$0.4599 |
europe_west2
|
$0.5381 |
europe_west3
|
$0.5381 |
europe_west4
|
$0.4599 |
c2d-standard-16
|
Approximations: |
---|---|
europe_west1
|
$0.9198 |
europe_west2
|
$1.0762 |
europe_west3
|
$1.0762 |
europe_west4
|
$0.9198 |
c2d-standard-32
|
Approximations: |
---|---|
europe_west1
|
$1.8395 |
europe_west2
|
$2.1524 |
europe_west3
|
$2.1524 |
europe_west4
|
$1.8395 |
c2d-standard-56
|
Approximations: |
---|---|
europe_west1
|
$3.2191 |
europe_west2
|
$3.7666 |
europe_west3
|
$3.7666 |
europe_west4
|
$3.2191 |
c2d-standard-112
|
Approximations: |
---|---|
europe_west1
|
$6.4383 |
europe_west2
|
$7.5333 |
europe_west3
|
$7.5333 |
europe_west4
|
$6.4383 |
c2d-highmem-2
|
Approximations: |
---|---|
europe_west1
|
$0.1551 |
europe_west2
|
$0.1814 |
europe_west3
|
$0.1814 |
europe_west4
|
$0.1551 |
c2d-highmem-4
|
Approximations: |
---|---|
europe_west1
|
$0.3101 |
europe_west2
|
$0.3629 |
europe_west3
|
$0.3629 |
europe_west4
|
$0.3101 |
c2d-highmem-8
|
Approximations: |
---|---|
europe_west1
|
$0.6203 |
europe_west2
|
$0.7258 |
europe_west3
|
$0.7258 |
europe_west4
|
$0.6203 |
c2d-highmem-16
|
Approximations: |
---|---|
europe_west1
|
$1.2406 |
europe_west2
|
$1.4515 |
europe_west3
|
$1.4515 |
europe_west4
|
$1.2406 |
c2d-highmem-32
|
Approximations: |
---|---|
europe_west1
|
$2.4812 |
europe_west2
|
$2.9031 |
europe_west3
|
$2.9031 |
europe_west4
|
$2.4812 |
c2d-highmem-56
|
Approximations: |
---|---|
europe_west1
|
$4.342 |
europe_west2
|
$5.0804 |
europe_west3
|
$5.0804 |
europe_west4
|
$4.342 |
c2d-highmem-112
|
Approximations: |
---|---|
europe_west1
|
$8.684 |
europe_west2
|
$10.1608 |
europe_west3
|
$10.1608 |
europe_west4
|
$8.684 |
c2d-highcpu-2
|
Approximations: |
---|---|
europe_west1
|
$0.0949 |
europe_west2
|
$0.1111 |
europe_west3
|
$0.1111 |
europe_west4
|
$0.0949 |
c2d-highcpu-4
|
Approximations: |
---|---|
europe_west1
|
$0.1898 |
europe_west2
|
$0.2221 |
europe_west3
|
$0.2221 |
europe_west4
|
$0.1898 |
c2d-highcpu-8
|
Approximations: |
---|---|
europe_west1
|
$0.3797 |
europe_west2
|
$0.4442 |
europe_west3
|
$0.4442 |
europe_west4
|
$0.3797 |
c2d-highcpu-16
|
Approximations: |
---|---|
europe_west1
|
$0.7593 |
europe_west2
|
$0.8885 |
europe_west3
|
$0.8885 |
europe_west4
|
$0.7593 |
c2d-highcpu-32
|
Approximations: |
---|---|
europe_west1
|
$1.5187 |
europe_west2
|
$1.777 |
europe_west3
|
$1.777 |
europe_west4
|
$1.5187 |
c2d-highcpu-56
|
Approximations: |
---|---|
europe_west1
|
$2.6577 |
europe_west2
|
$3.1097 |
europe_west3
|
$3.1097 |
europe_west4
|
$2.6577 |
c2d-highcpu-112
|
Approximations: |
---|---|
europe_west1
|
$5.3154 |
europe_west2
|
$6.2195 |
europe_west3
|
$6.2195 |
europe_west4
|
$5.3154 |
C3 Series
c3-highcpu-4
|
Approximations: |
---|---|
europe_west1
|
$0.218 |
europe_west4
|
$0.2182 |
c3-highcpu-8
|
Approximations: |
---|---|
europe_west1
|
$0.4361 |
europe_west4
|
$0.4365 |
c3-highcpu-22
|
Approximations: |
---|---|
europe_west1
|
$1.1992 |
europe_west4
|
$1.2003 |
c3-highcpu-44
|
Approximations: |
---|---|
europe_west1
|
$2.3984 |
europe_west4
|
$2.4006 |
c3-highcpu-88
|
Approximations: |
---|---|
europe_west1
|
$4.7969 |
europe_west4
|
$4.8013 |
c3-highcpu-176
|
Approximations: |
---|---|
europe_west1
|
$9.5938 |
europe_west4
|
$9.6026 |
A2 Series*
a2-highgpu-1g
|
Approximations: |
---|---|
europe-west4
|
$4.3103 |
a2-highgpu-2g
|
Approximations: |
---|---|
europe-west4
|
$8.6205 |
a2-highgpu-4g
|
Approximations: |
---|---|
europe-west4
|
$17.2411 |
a2-highgpu-8g
|
Approximations: |
---|---|
europe-west4
|
$34.4822 |
a2-megagpu-16g
|
Approximations: |
---|---|
europe-west4
|
$65.1222 |
a2-ultragpu-1g
|
Approximations: |
---|---|
europe-west4
|
$6.3661 |
a2-ultragpu-2g
|
Approximations: |
---|---|
europe-west4
|
$12.7321 |
a2-ultragpu-4g
|
Approximations: |
---|---|
europe-west4
|
$25.4643 |
a2-ultragpu-8g
|
Approximations: |
---|---|
europe-west4
|
$50.9286 |
A3 Series*
a3-highgpu-2g
|
Approximations: |
---|---|
europe-west4
|
$32.147 |
a3-highgpu-4g
|
Approximations: |
---|---|
europe-west4
|
$64.294 |
a3-highgpu-8g
|
Approximations: |
---|---|
europe-west4
|
$128.588 |
a3-edgegpu-8g
|
Approximations: |
---|---|
europe-west2
|
$115.1484 |
europe-west3
|
$119.1887 |
a3-megagpu-8g
|
Approximations: |
---|---|
europe-west1
|
$117.4376 |
europe-west4
|
$111.9875 |
G2 Series*
g2-standard-4
|
Approximations: |
---|---|
europe-west3
|
$0.9592 |
europe-west4
|
$0.8951 |
g2-standard-8
|
Approximations: |
---|---|
europe-west3
|
$1.1585 |
europe-west4
|
$1.081 |
g2-standard-12
|
Approximations: |
---|---|
europe-west3
|
$1.3578 |
europe-west4
|
$1.2669 |
g2-standard-16
|
Approximations: |
---|---|
europe-west3
|
$1.5571 |
europe-west4
|
$1.4528 |
g2-standard-24
|
Approximations: |
---|---|
europe-west3
|
$2.7156 |
europe-west4
|
$2.5338 |
g2-standard-32
|
Approximations: |
---|---|
europe-west3
|
$2.3541 |
europe-west4
|
$2.1965 |
g2-standard-48
|
Approximations: |
---|---|
europe-west3
|
$5.4311 |
europe-west4
|
$5.0677 |
g2-standard-96
|
Approximations: |
---|---|
europe-west3
|
$10.8623 |
europe-west4
|
$10.1354 |
*When consuming from a reservation or spot capacity, billing is spread
across two SKUs: the GCE
SKU with the label
'vertex-ai-online-prediction' and the Vertex AI Management Fee SKU.
This enables you to use your Committed Use Discounts (CUDs) in
Vertex AI.
TPU v5e pricing for Europe | |
---|---|
ct5lp-hightpu-1t | Approximations: |
europe-west4 | $1.794 |
ct5lp-hightpu-4t | Approximations: |
europe-west4 | $7.176 |
ct5lp-hightpu-8t | Approximations: |
europe-west4 | $14.352 |
Pricing for Asia Pacific
The following tables provide the price per node hour for each machine type.
E2 Series
e2-standard-2
|
Approximations: |
---|---|
asia-east1
|
$0.0892 |
asia-east2
|
$0.1078 |
asia-northeast1
|
$0.0989 |
asia-northeast3
|
$0.0989 |
asia-south1
|
$0.0926 |
asia-southeast1
|
$0.0951 |
australia-southeast1
|
$0.1093 |
e2-standard-4
|
Approximations: |
---|---|
asia-east1
|
$0.1785 |
asia-east2
|
$0.2156 |
asia-northeast1
|
$0.1977 |
asia-northeast3
|
$0.1977 |
asia-south1
|
$0.1851 |
asia-southeast1
|
$0.1901 |
australia-southeast1
|
$0.2187 |
e2-standard-8
|
Approximations: |
---|---|
asia-east1
|
$0.3569 |
asia-east2
|
$0.4313 |
asia-northeast1
|
$0.3954 |
asia-northeast3
|
$0.3954 |
asia-south1
|
$0.3702 |
asia-southeast1
|
$0.3802 |
australia-southeast1
|
$0.4373 |
e2-standard-16
|
Approximations: |
---|---|
asia-east1
|
$0.7138 |
asia-east2
|
$0.8626 |
asia-northeast1
|
$0.7909 |
asia-northeast3
|
$0.7909 |
asia-south1
|
$0.7405 |
asia-southeast1
|
$0.7605 |
australia-southeast1
|
$0.8747 |
e2-standard-32
|
Approximations: |
---|---|
asia-east1
|
$1.4276 |
asia-east2
|
$1.7251 |
asia-northeast1
|
$1.5817 |
asia-northeast3
|
$1.5817 |
asia-south1
|
$1.4809 |
asia-southeast1
|
$1.5209 |
australia-southeast1
|
$1.7494 |
e2-highmem-2
|
Approximations: |
---|---|
asia-east1
|
$0.1204 |
asia-east2
|
$0.1454 |
asia-northeast1
|
$0.1333 |
asia-northeast3
|
$0.1333 |
asia-south1
|
$0.1249 |
asia-southeast1
|
$0.1282 |
australia-southeast1
|
$0.1475 |
e2-highmem-4
|
Approximations: |
---|---|
asia-east1
|
$0.2407 |
asia-east2
|
$0.2909 |
asia-northeast1
|
$0.2665 |
asia-northeast3
|
$0.2665 |
asia-south1
|
$0.2497 |
asia-southeast1
|
$0.2564 |
australia-southeast1
|
$0.295 |
e2-highmem-8
|
Approximations: |
---|---|
asia-east1
|
$0.4815 |
asia-east2
|
$0.5818 |
asia-northeast1
|
$0.533 |
asia-northeast3
|
$0.533 |
asia-south1
|
$0.4994 |
asia-southeast1
|
$0.5129 |
australia-southeast1
|
$0.59 |
e2-highmem-16
|
Approximations: |
---|---|
asia-east1
|
$0.963 |
asia-east2
|
$1.1636 |
asia-northeast1
|
$1.0661 |
asia-northeast3
|
$1.0661 |
asia-south1
|
$0.9989 |
asia-southeast1
|
$1.0258 |
australia-southeast1
|
$1.1799 |
e2-highcpu-2
|
Approximations: |
---|---|
asia-east1
|
$0.0659 |
asia-east2
|
$0.0796 |
asia-northeast1
|
$0.0731 |
asia-northeast3
|
$0.0731 |
asia-south1
|
$0.0683 |
asia-southeast1
|
$0.0702 |
australia-southeast1
|
$0.0807 |
e2-highcpu-4
|
Approximations: |
---|---|
asia-east1
|
$0.1317 |
asia-east2
|
$0.1592 |
asia-northeast1
|
$0.1461 |
asia-northeast3
|
$0.1461 |
asia-south1
|
$0.1367 |
asia-southeast1
|
$0.1404 |
australia-southeast1
|
$0.1614 |
e2-highcpu-8
|
Approximations: |
---|---|
asia-east1
|
$0.2635 |
asia-east2
|
$0.3184 |
asia-northeast1
|
$0.2922 |
asia-northeast3
|
$0.2922 |
asia-south1
|
$0.2733 |
asia-southeast1
|
$0.2807 |
australia-southeast1
|
$0.3229 |
e2-highcpu-16
|
Approximations: |
---|---|
asia-east1
|
$0.527 |
asia-east2
|
$0.6368 |
asia-northeast1
|
$0.5845 |
asia-northeast3
|
$0.5845 |
asia-south1
|
$0.5467 |
asia-southeast1
|
$0.5615 |
australia-southeast1
|
$0.6458 |
e2-highcpu-32
|
Approximations: |
---|---|
asia-east1
|
$1.0539 |
asia-east2
|
$1.2736 |
asia-northeast1
|
$1.169 |
asia-northeast3
|
$1.169 |
asia-south1
|
$1.0933 |
asia-southeast1
|
$1.1229 |
australia-southeast1
|
$1.2916 |
N1 Series
n1-standard-2
|
Approximations: |
---|---|
asia-northeast1
|
$0.1402 |
asia-southeast1
|
$0.1348 |
australia-southeast1
|
$0.155 |
Other Asia Pacific regions | $0.1265 |
n1-standard-4
|
Approximations: |
---|---|
asia-northeast1
|
$0.2803 |
asia-southeast1
|
$0.2695 |
australia-southeast1
|
$0.31 |
Other Asia Pacific regions | $0.2531 |
n1-standard-8
|
Approximations: |
---|---|
asia-northeast1
|
$0.5606 |
asia-southeast1
|
$0.5391 |
australia-southeast1
|
$0.6201 |
Other Asia Pacific regions | $0.5061 |
n1-standard-16
|
Approximations: |
---|---|
asia-northeast1
|
$1.1213 |
asia-southeast1
|
$1.0782 |
australia-southeast1
|
$1.2401 |
Other Asia Pacific regions | $1.0123 |
n1-standard-32
|
Approximations: |
---|---|
asia-northeast1
|
$2.2426 |
asia-southeast1
|
$2.1564 |
australia-southeast1
|
$2.4802 |
Other Asia Pacific regions | $2.0245 |
n1-highmem-2
|
Approximations: |
---|---|
asia-northeast1
|
$0.1744 |
asia-southeast1
|
$0.1678 |
australia-southeast1
|
$0.193 |
Other Asia Pacific regions | $0.1575 |
n1-highmem-4
|
Approximations: |
---|---|
asia-northeast1
|
$0.3489 |
asia-southeast1
|
$0.3357 |
australia-southeast1
|
$0.3861 |
Other Asia Pacific regions | $0.3151 |
n1-highmem-8
|
Approximations: |
---|---|
asia-northeast1
|
$0.6977 |
asia-southeast1
|
$0.6713 |
australia-southeast1
|
$0.7721 |
Other Asia Pacific regions | $0.6302 |
n1-highmem-16
|
Approximations: |
---|---|
asia-northeast1
|
$1.3955 |
asia-southeast1
|
$1.3426 |
australia-southeast1
|
$1.5443 |
Other Asia Pacific regions | $1.2603 |
n1-highcpu-2
|
Approximations: |
---|---|
asia-northeast1
|
$0.1046 |
asia-southeast1
|
$0.1005 |
australia-southeast1
|
$0.1156 |
Other Asia Pacific regions | $0.0944 |
n1-highcpu-4
|
Approximations: |
---|---|
asia-northeast1
|
$0.2093 |
asia-southeast1
|
$0.201 |
australia-southeast1
|
$0.2312 |
Other Asia Pacific regions | $0.1888 |
n1-highcpu-8
|
Approximations: |
---|---|
asia-northeast1
|
$0.4186 |
asia-southeast1
|
$0.4021 |
australia-southeast1
|
$0.4624 |
Other Asia Pacific regions | $0.3776 |
n1-highcpu-16
|
Approximations: |
---|---|
asia-northeast1
|
$0.8371 |
asia-southeast1
|
$0.8041 |
australia-southeast1
|
$0.9249 |
Other Asia Pacific regions | $0.7552 |
n1-highcpu-32
|
Approximations: |
---|---|
asia-northeast1
|
$1.6742 |
asia-southeast1
|
$1.6082 |
australia-southeast1
|
$1.8498 |
Other Asia Pacific regions | $1.5104 |
N2 Series
n2-standard-2
|
Approximations: |
---|---|
asia_east1
|
$0.1293 |
asia_east2
|
$0.1563 |
asia_northeast1
|
$0.1433 |
asia_northeast3
|
$0.1433 |
asia_south1
|
$0.1341 |
asia_southeast1
|
$0.1378 |
asia_southeast2
|
$0.1502 |
australia_southeast1
|
$0.1585 |
n2-standard-4
|
Approximations: |
---|---|
asia_east1
|
$0.2586 |
asia_east2
|
$0.3125 |
asia_northeast1
|
$0.2866 |
asia_northeast3
|
$0.2866 |
asia_south1
|
$0.2683 |
asia_southeast1
|
$0.2756 |
asia_southeast2
|
$0.3003 |
australia_southeast1
|
$0.3169 |
n2-standard-8
|
Approximations: |
---|---|
asia_east1
|
$0.5173 |
asia_east2
|
$0.6251 |
asia_northeast1
|
$0.5731 |
asia_northeast3
|
$0.5731 |
asia_south1
|
$0.5366 |
asia_southeast1
|
$0.5511 |
asia_southeast2
|
$0.6007 |
australia_southeast1
|
$0.6339 |
n2-standard-16
|
Approximations: |
---|---|
asia_east1
|
$1.0346 |
asia_east2
|
$1.2502 |
asia_northeast1
|
$1.1462 |
asia_northeast3
|
$1.1462 |
asia_south1
|
$1.0731 |
asia_southeast1
|
$1.1022 |
asia_southeast2
|
$1.2014 |
australia_southeast1
|
$1.2678 |
n2-standard-32
|
Approximations: |
---|---|
asia_east1
|
$2.0691 |
asia_east2
|
$2.5003 |
asia_northeast1
|
$2.2924 |
asia_northeast3
|
$2.2924 |
asia_south1
|
$2.1462 |
asia_southeast1
|
$2.2044 |
asia_southeast2
|
$2.4028 |
australia_southeast1
|
$2.5355 |
n2-highmem-2
|
Approximations: |
---|---|
asia_east1
|
$0.1745 |
asia_east2
|
$0.2108 |
asia_northeast1
|
$0.1931 |
asia_northeast3
|
$0.1931 |
asia_south1
|
$0.181 |
asia_southeast1
|
$0.1859 |
asia_southeast2
|
$0.2026 |
australia_southeast1
|
$0.2138 |
n2-highmem-4
|
Approximations: |
---|---|
asia_east1
|
$0.3489 |
asia_east2
|
$0.4216 |
asia_northeast1
|
$0.3863 |
asia_northeast3
|
$0.3863 |
asia_south1
|
$0.3619 |
asia_southeast1
|
$0.3717 |
asia_southeast2
|
$0.4052 |
australia_southeast1
|
$0.4275 |
n2-highmem-8
|
Approximations: |
---|---|
asia_east1
|
$0.6978 |
asia_east2
|
$0.8432 |
asia_northeast1
|
$0.7725 |
asia_northeast3
|
$0.7725 |
asia_south1
|
$0.7238 |
asia_southeast1
|
$0.7434 |
asia_southeast2
|
$0.8103 |
australia_southeast1
|
$0.8551 |
n2-highmem-16
|
Approximations: |
---|---|
asia_east1
|
$1.3956 |
asia_east2
|
$1.6865 |
asia_northeast1
|
$1.545 |
asia_northeast3
|
$1.545 |
asia_south1
|
$1.4476 |
asia_southeast1
|
$1.4868 |
asia_southeast2
|
$1.6206 |
australia_southeast1
|
$1.7102 |
n2-highcpu-2
|
Approximations: |
---|---|
asia_east1
|
$0.0955 |
asia_east2
|
$0.1154 |
asia_northeast1
|
$0.1059 |
asia_northeast3
|
$0.1059 |
asia_south1
|
$0.099 |
asia_southeast1
|
$0.1017 |
asia_southeast2
|
$0.1109 |
australia_southeast1
|
$0.117 |
n2-highcpu-4
|
Approximations: |
---|---|
asia_east1
|
$0.1909 |
asia_east2
|
$0.2307 |
asia_northeast1
|
$0.2118 |
asia_northeast3
|
$0.2118 |
asia_south1
|
$0.1981 |
asia_southeast1
|
$0.2034 |
asia_southeast2
|
$0.2217 |
australia_southeast1
|
$0.234 |
n2-highcpu-8
|
Approximations: |
---|---|
asia_east1
|
$0.3819 |
asia_east2
|
$0.4615 |
asia_northeast1
|
$0.4235 |
asia_northeast3
|
$0.4235 |
asia_south1
|
$0.3961 |
asia_southeast1
|
$0.4069 |
asia_southeast2
|
$0.4435 |
australia_southeast1
|
$0.468 |
n2-highcpu-16
|
Approximations: |
---|---|
asia_east1
|
$0.7637 |
asia_east2
|
$0.9229 |
asia_northeast1
|
$0.8471 |
asia_northeast3
|
$0.8471 |
asia_south1
|
$0.7923 |
asia_southeast1
|
$0.8137 |
asia_southeast2
|
$0.887 |
australia_southeast1
|
$0.936 |
n2-highcpu-32
|
Approximations: |
---|---|
asia_east1
|
$1.5275 |
asia_east2
|
$1.8458 |
asia_northeast1
|
$1.6942 |
asia_northeast3
|
$1.6942 |
asia_south1
|
$1.5845 |
asia_southeast1
|
$1.6275 |
asia_southeast2
|
$1.7739 |
australia_southeast1
|
$1.8719 |
N2D Series
n2d-standard-2
|
Approximations: |
---|---|
asia_east1
|
$0.1125 |
asia_east2
|
$0.136 |
asia_northeast1
|
$0.1247 |
asia_south1
|
$0.0641 |
asia_southeast1
|
$0.1199 |
australia_southeast1
|
$0.1379 |
n2d-standard-4
|
Approximations: |
---|---|
asia_east1
|
$0.225 |
asia_east2
|
$0.2719 |
asia_northeast1
|
$0.2493 |
asia_south1
|
$0.1283 |
asia_southeast1
|
$0.2397 |
australia_southeast1
|
$0.2757 |
n2d-standard-8
|
Approximations: |
---|---|
asia_east1
|
$0.45 |
asia_east2
|
$0.5438 |
asia_northeast1
|
$0.4986 |
asia_south1
|
$0.2565 |
asia_southeast1
|
$0.4795 |
australia_southeast1
|
$0.5515 |
n2d-standard-16
|
Approximations: |
---|---|
asia_east1
|
$0.9001 |
asia_east2
|
$1.0876 |
asia_northeast1
|
$0.9972 |
asia_south1
|
$0.513 |
asia_southeast1
|
$0.959 |
australia_southeast1
|
$1.103 |
n2d-standard-32
|
Approximations: |
---|---|
asia_east1
|
$1.8001 |
asia_east2
|
$2.1752 |
asia_northeast1
|
$1.9945 |
asia_south1
|
$1.0261 |
asia_southeast1
|
$1.9179 |
australia_southeast1
|
$2.206 |
n2d-highmem-2
|
Approximations: |
---|---|
asia_east1
|
$0.1518 |
asia_east2
|
$0.1834 |
asia_northeast1
|
$0.168 |
asia_south1
|
$0.0865 |
asia_southeast1
|
$0.1617 |
australia_southeast1
|
$0.186 |
n2d-highmem-4
|
Approximations: |
---|---|
asia_east1
|
$0.3035 |
asia_east2
|
$0.3668 |
asia_northeast1
|
$0.3361 |
asia_south1
|
$0.173 |
asia_southeast1
|
$0.3234 |
australia_southeast1
|
$0.372 |
n2d-highmem-8
|
Approximations: |
---|---|
asia_east1
|
$0.6071 |
asia_east2
|
$0.7336 |
asia_northeast1
|
$0.6721 |
asia_south1
|
$0.346 |
asia_southeast1
|
$0.6468 |
australia_southeast1
|
$0.744 |
n2d-highmem-16
|
Approximations: |
---|---|
asia_east1
|
$1.2142 |
asia_east2
|
$1.4672 |
asia_northeast1
|
$1.3443 |
asia_south1
|
$0.6921 |
asia_southeast1
|
$1.2936 |
australia_southeast1
|
$1.4879 |
n2d-highcpu-2
|
Approximations: |
---|---|
asia_east1
|
$0.0831 |
asia_east2
|
$0.1004 |
asia_northeast1
|
$0.0921 |
asia_south1
|
$0.0473 |
asia_southeast1
|
$0.0885 |
australia_southeast1
|
$0.1018 |
n2d-highcpu-4
|
Approximations: |
---|---|
asia_east1
|
$0.1661 |
asia_east2
|
$0.2007 |
asia_northeast1
|
$0.1842 |
asia_south1
|
$0.0947 |
asia_southeast1
|
$0.177 |
australia_southeast1
|
$0.2036 |
n2d-highcpu-8
|
Approximations: |
---|---|
asia_east1
|
$0.3322 |
asia_east2
|
$0.4015 |
asia_northeast1
|
$0.3685 |
asia_south1
|
$0.1894 |
asia_southeast1
|
$0.354 |
australia_southeast1
|
$0.4071 |
n2d-highcpu-16
|
Approximations: |
---|---|
asia_east1
|
$0.6645 |
asia_east2
|
$0.8029 |
asia_northeast1
|
$0.737 |
asia_south1
|
$0.3787 |
asia_southeast1
|
$0.708 |
australia_southeast1
|
$0.8143 |
n2d-highcpu-32
|
Approximations: |
---|---|
asia_east1
|
$1.3289 |
asia_east2
|
$1.6059 |
asia_northeast1
|
$1.4739 |
asia_south1
|
$0.7575 |
asia_southeast1
|
$1.4159 |
australia_southeast1
|
$1.6286 |
C2 Series
c2-standard-4
|
Approximations: |
---|---|
asia_east1
|
$0.278 |
asia_east2
|
$0.336 |
asia_northeast1
|
$0.308 |
asia_northeast3
|
$0.308 |
asia_south1
|
$0.2884 |
asia_southeast1
|
$0.2962 |
australia_southeast1
|
$0.3407 |
c2-standard-8
|
Approximations: |
---|---|
asia_east1
|
$0.5561 |
asia_east2
|
$0.672 |
asia_northeast1
|
$0.6161 |
asia_northeast3
|
$0.6161 |
asia_south1
|
$0.5768 |
asia_southeast1
|
$0.5924 |
australia_southeast1
|
$0.6814 |
c2-standard-16
|
Approximations: |
---|---|
asia_east1
|
$1.1122 |
asia_east2
|
$1.3439 |
asia_northeast1
|
$1.2321 |
asia_northeast3
|
$1.2321 |
asia_south1
|
$1.1536 |
asia_southeast1
|
$1.1849 |
australia_southeast1
|
$1.3629 |
c2-standard-30
|
Approximations: |
---|---|
asia_east1
|
$2.0853 |
asia_east2
|
$2.5199 |
asia_northeast1
|
$2.3103 |
asia_northeast3
|
$2.3103 |
asia_south1
|
$2.1631 |
asia_southeast1
|
$2.2217 |
australia_southeast1
|
$2.5553 |
c2-standard-60
|
Approximations: |
---|---|
asia_east1
|
$4.1706 |
asia_east2
|
$5.0397 |
asia_northeast1
|
$4.6205 |
asia_northeast3
|
$4.6205 |
asia_south1
|
$4.3262 |
asia_southeast1
|
$4.4433 |
australia_southeast1
|
$5.1107 |
C2D Series
c2d-standard-2
|
Approximations: |
---|---|
asia_east1
|
$0.1209 |
asia_south1
|
$0.0689 |
asia_southeast1
|
$0.1288 |
c2d-standard-4
|
Approximations: |
---|---|
asia_east1
|
$0.2418 |
asia_south1
|
$0.1378 |
asia_southeast1
|
$0.2576 |
c2d-standard-8
|
Approximations: |
---|---|
asia_east1
|
$0.4836 |
asia_south1
|
$0.2757 |
asia_southeast1
|
$0.5153 |
c2d-standard-16
|
Approximations: |
---|---|
asia_east1
|
$0.9672 |
asia_south1
|
$0.5513 |
asia_southeast1
|
$1.0305 |
c2d-standard-32
|
Approximations: |
---|---|
asia_east1
|
$1.9345 |
asia_south1
|
$1.1027 |
asia_southeast1
|
$2.0611 |
c2d-standard-56
|
Approximations: |
---|---|
asia_east1
|
$3.3853 |
asia_south1
|
$1.9297 |
asia_southeast1
|
$3.6069 |
c2d-standard-112
|
Approximations: |
---|---|
asia_east1
|
$6.7706 |
asia_south1
|
$3.8593 |
asia_southeast1
|
$7.2137 |
c2d-highmem-2
|
Approximations: |
---|---|
asia_east1
|
$0.1631 |
asia_south1
|
$0.093 |
asia_southeast1
|
$0.1737 |
c2d-highmem-4
|
Approximations: |
---|---|
asia_east1
|
$0.3262 |
asia_south1
|
$0.1859 |
asia_southeast1
|
$0.3475 |
c2d-highmem-8
|
Approximations: |
---|---|
asia_east1
|
$0.6523 |
asia_south1
|
$0.3718 |
asia_southeast1
|
$0.695 |
c2d-highmem-16
|
Approximations: |
---|---|
asia_east1
|
$1.3046 |
asia_south1
|
$0.7436 |
asia_southeast1
|
$1.39 |
c2d-highmem-32
|
Approximations: |
---|---|
asia_east1
|
$2.6092 |
asia_south1
|
$1.4873 |
asia_southeast1
|
$2.78 |
c2d-highmem-56
|
Approximations: |
---|---|
asia_east1
|
$4.5662 |
asia_south1
|
$2.6028 |
asia_southeast1
|
$4.865 |
c2d-highmem-112
|
Approximations: |
---|---|
asia_east1
|
$9.1323 |
asia_south1
|
$5.2055 |
asia_southeast1
|
$9.7299 |
c2d-highcpu-2
|
Approximations: |
---|---|
asia_east1
|
$0.0998 |
asia_south1
|
$0.0569 |
asia_southeast1
|
$0.1063 |
c2d-highcpu-4
|
Approximations: |
---|---|
asia_east1
|
$0.1996 |
asia_south1
|
$0.1138 |
asia_southeast1
|
$0.2127 |
c2d-highcpu-8
|
Approximations: |
---|---|
asia_east1
|
$0.3993 |
asia_south1
|
$0.2276 |
asia_southeast1
|
$0.4254 |
c2d-highcpu-16
|
Approximations: |
---|---|
asia_east1
|
$0.7985 |
asia_south1
|
$0.4552 |
asia_southeast1
|
$0.8508 |
c2d-highcpu-32
|
Approximations: |
---|---|
asia_east1
|
$1.5971 |
asia_south1
|
$0.9104 |
asia_southeast1
|
$1.7016 |
c2d-highcpu-56
|
Approximations: |
---|---|
asia_east1
|
$2.7949 |
asia_south1
|
$1.5931 |
asia_southeast1
|
$2.9778 |
c2d-highcpu-112
|
Approximations: |
---|---|
asia_east1
|
$5.5898 |
asia_south1
|
$3.1862 |
asia_southeast1
|
$5.9556 |
C3 Series
c3-highcpu-4
|
Approximations: |
---|---|
asia_southeast1
|
$0.2445 |
c3-highcpu-8
|
Approximations: |
---|---|
asia_southeast1
|
$0.489 |
c3-highcpu-22
|
Approximations: |
---|---|
asia_southeast1
|
$1.3449 |
c3-highcpu-44
|
Approximations: |
---|---|
asia_southeast1
|
$2.6897 |
c3-highcpu-88
|
Approximations: |
---|---|
asia_southeast1
|
$5.3794 |
c3-highcpu-176
|
Approximations: |
---|---|
asia_southeast1
|
$10.7589 |
A2 Series*
a2-highgpu-1g
|
Approximations: |
---|---|
asia-northeast1
|
$4.6575 |
asia-northeast3
|
$4.6575 |
asia-southeast1
|
$4.6163 |
a2-highgpu-2g
|
Approximations: |
---|---|
asia-northeast1
|
$9.3151 |
asia-northeast3
|
$9.3151 |
asia-southeast1
|
$9.2327 |
a2-highgpu-4g
|
Approximations: |
---|---|
asia-northeast1
|
$18.6301 |
asia-northeast3
|
$18.6301 |
asia-southeast1
|
$18.4653 |
a2-highgpu-8g
|
Approximations: |
---|---|
asia-northeast1
|
$37.2603 |
asia-northeast3
|
$37.2603 |
asia-southeast1
|
$36.9306 |
a2-megagpu-16g
|
Approximations: |
---|---|
asia-northeast1
|
$70.0363 |
asia-northeast3
|
$70.0363 |
asia-southeast1
|
$69.5557 |
a2-ultragpu-1g
|
Approximations: |
---|---|
asia-southeast1
|
$7.1328 |
a2-ultragpu-2g
|
Approximations: |
---|---|
asia-southeast1
|
$14.2657 |
a2-ultragpu-4g
|
Approximations: |
---|---|
asia-southeast1
|
$28.5314 |
a2-ultragpu-8g
|
Approximations: |
---|---|
asia-southeast1
|
$57.0628 |
A3 Series*
a3-highgpu-2g
|
Approximations: |
---|---|
asia-southeast1
|
$32.6472 |
a3-highgpu-4g
|
Approximations: |
---|---|
asia-southeast1
|
$65.2945 |
a3-highgpu-8g
|
Approximations: |
---|---|
asia-southeast1
|
$130.589 |
a3-edgegpu-8g
|
Approximations: |
---|---|
asia-northeast1
|
$144.6594 |
asia-northeast3
|
$129.7136 |
asia-south1
|
$105.0476 |
a3-megagpu-8g
|
Approximations: |
---|---|
asia-northeast1
|
$136.9661 |
asia-southeast1
|
$131.5799 |
australia-southeast1
|
$133.3185 |
*When consuming from a reservation or spot capacity, billing is spread
across two SKUs: the GCE
SKU with the label
'vertex-ai-online-prediction' and the Vertex AI Management Fee SKU.
This enables you to use your Committed Use Discounts (CUDs) in
Vertex AI.
Pricing for the Middle East
N2 Series
n2-standard-2
|
Approximations: |
---|---|
me_west1
|
$0.1229 |
n2-standard-4
|
Approximations: |
---|---|
me_west1
|
$0.2457 |
n2-standard-8
|
Approximations: |
---|---|
me_west1
|
$0.4914 |
n2-standard-16
|
Approximations: |
---|---|
me_west1
|
$0.9828 |
n2-standard-32
|
Approximations: |
---|---|
me_west1
|
$1.9657 |
n2-highmem-2
|
Approximations: |
---|---|
me_west1
|
$0.1657 |
n2-highmem-4
|
Approximations: |
---|---|
me_west1
|
$0.3315 |
n2-highmem-8
|
Approximations: |
---|---|
me_west1
|
$0.6629 |
n2-highmem-16
|
Approximations: |
---|---|
me_west1
|
$1.3259 |
n2-highcpu-2
|
Approximations: |
---|---|
me_west1
|
$0.0907 |
n2-highcpu-4
|
Approximations: |
---|---|
me_west1
|
$0.1814 |
n2-highcpu-8
|
Approximations: |
---|---|
me_west1
|
$0.3628 |
n2-highcpu-16
|
Approximations: |
---|---|
me_west1
|
$0.7256 |
n2-highcpu-32
|
Approximations: |
---|---|
me_west1
|
$1.4511 |
N2D Series
n2d-standard-2
|
Approximations: |
---|---|
me_west1
|
$0.1069 |
n2d-standard-4
|
Approximations: |
---|---|
me_west1
|
$0.2138 |
n2d-standard-8
|
Approximations: |
---|---|
me_west1
|
$0.4275 |
n2d-standard-16
|
Approximations: |
---|---|
me_west1
|
$0.8551 |
n2d-standard-32
|
Approximations: |
---|---|
me_west1
|
$1.7101 |
n2d-highmem-2
|
Approximations: |
---|---|
me_west1
|
$0.1442 |
n2d-highmem-4
|
Approximations: |
---|---|
me_west1
|
$0.2884 |
n2d-highmem-8
|
Approximations: |
---|---|
me_west1
|
$0.5767 |
n2d-highmem-16
|
Approximations: |
---|---|
me_west1
|
$1.1535 |
n2d-highcpu-2
|
Approximations: |
---|---|
me_west1
|
$0.0789 |
n2d-highcpu-4
|
Approximations: |
---|---|
me_west1
|
$0.1578 |
n2d-highcpu-8
|
Approximations: |
---|---|
me_west1
|
$0.3156 |
n2d-highcpu-16
|
Approximations: |
---|---|
me_west1
|
$0.6312 |
n2d-highcpu-32
|
Approximations: |
---|---|
me_west1
|
$1.2625 |
A2 Series
a2-ultragpu-1g
|
Approximations: |
---|---|
me-west1
|
$6.3601 |
a2-ultragpu-2g
|
Approximations: |
---|---|
me-west1
|
$12.7202 |
a2-ultragpu-4g
|
Approximations: |
---|---|
me-west1
|
$25.4404 |
a2-ultragpu-8g
|
Approximations: |
---|---|
me-west1
|
$50.8808 |
G2 Series
g2-standard-4
|
Approximations: |
---|---|
me_central2
|
$1.3007 |
g2-standard-8
|
Approximations: |
---|---|
me_central2
|
$1.5709 |
g2-standard-12
|
Approximations: |
---|---|
me_central2
|
$1.8411 |
g2-standard-16
|
Approximations: |
---|---|
me_central2
|
$2.1113 |
g2-standard-24
|
Approximations: |
---|---|
me_central2
|
$3.6822 |
g2-standard-32
|
Approximations: |
---|---|
me_central2
|
$3.1921 |
g2-standard-48
|
Approximations: |
---|---|
me_central2
|
$7.3644 |
g2-standard-96
|
Approximations: |
---|---|
me_central2
|
$14.7288 |
Each machine type is charged as the following SKUs on your Google Cloud bill:
- vCPU cost:measured in vCPU hours
- RAM cost:measured in GB hours
- GPU cost:if either built into the machine or optionally configured, measured in GPU hours
The prices for machine types are used to approximate the total hourly cost for each prediction node of a model version using that machine type.
For example, a machine type of n1-highcpu-32
includes 32 vCPUs and 32 GB of RAM.
Therefore, the hourly pricing equals 32 vCPU hours + 32 GB hours
.
The SKU pricing table is available by region. Each table shows the vCPU, RAM, and built-in GPU pricing for prediction machine types, which more precisely reflect the SKUs charged.
To view the SKU pricing per region, choose a region to view its pricing table:
SKU pricing for the Americas
E2 Series
vCPU
Location | Price per hour |
---|---|
Los Angeles ( us-west2
) |
$0.0301288
per vCPU hour |
Las Vegas ( us-west4
) |
$0.028252
per vCPU hour |
N. Virginia ( us-east4
) |
$0.028252
per vCPU hour |
Montréal ( northamerica-northeast1
) |
$0.0276149
per vCPU hour |
Toronto ( northamerica-northeast2
) |
$0.0276149
per vCPU hour |
Sao Paulo ( southamerica-east1
) |
$0.0398176
per vCPU hour |
Other Americas regions | $0.0250826
per vCPU hour |
RAM
Location | Price per hour |
---|---|
Los Angeles ( us-west2
) |
$0.0040376
per GB hour |
Las Vegas ( us-west4</code>
) |
$0.0037846
per GB hour |
N. Virginia ( us-east4
) |
$0.0037846
per GB hour |
Montréal ( northamerica-northeast1
) |
$0.0037007
per GB hour |
Toronto ( northamerica-northeast2
) |
$0.0037007
per GB hour |
Sao Paulo ( southamerica-east1
) |
$0.005336
per GB hour |
Other Americas regions | $0.0033614
per GB hour |
N1 Series
vCPU
Location | Price per hour |
---|---|
N. Virginia ( us-east4
) |
$0.04094575
per vCPU hour |
Montréal ( northamerica-northeast1
) |
$0.0400223
per vCPU hour |
Other Americas regions | $0.03635495
per vCPU hour |
RAM
Location | Price per hour |
---|---|
N. Virginia ( us-east4
) |
$0.00548665
per GB hour |
Montréal ( northamerica-northeast1
) |
$0.0053636
per GB hour |
Other Americas regions | $0.0048783
per GB hour |
N2 Series
vCPU
Location | Price per hour |
---|---|
Montréal ( northamerica_northeast1
) |
$0.0400223
per vCPU hour |
Toronto ( northamerica_northeast2
) |
$0.0400223
per vCPU hour |
São Paulo ( southamerica_east1
) |
$0.057707
per vCPU hour |
Iowa ( us_central1
) |
$0.0363527
per vCPU hour |
South Carolina ( us_east1
) |
$0.0363527
per vCPU hour |
N. Virginia ( us_east4
) |
$0.0409457
per vCPU hour |
Dallas ( us_south1
) |
$0.0428962
per vCPU hour |
Oregon ( us_west1
) |
$0.0363527
per vCPU hour |
Los Angeles ( us_west2
) |
$0.0436655
per vCPU hour |
Salt Lake City ( us_west3
) |
$0.0436655
per vCPU hour |
Las Vegas ( us_west4
) |
$0.0409434
per vCPU hour |
RAM
Location | Price per hour |
---|---|
Montréal ( northamerica_northeast1
) |
$0.0053636
per GB hour |
Toronto ( northamerica_northeast2
) |
$0.0053636
per GB hour |
São Paulo ( southamerica_east1
) |
$0.0077337
per GB hour |
Iowa ( us_central1
) |
$0.0048725
per GB hour |
South Carolina ( us_east1
) |
$0.0048725
per GB hour |
N. Virginia ( us_east4
) |
$0.0054867
per GB hour |
Dallas ( us_south1
) |
$0.00575
per GB hour |
Oregon ( us_west1
) |
$0.0048725
per GB hour |
Los Angeles ( us_west2
) |
$0.0058523
per GB hour |
Salt Lake City ( us_west3
) |
$0.0058523
per GB hour |
Las Vegas ( us_west4
) |
$0.0054867
per GB hour |
N2D Series
vCPU
Location | Price per hour |
---|---|
Montréal ( northamerica_northeast1
) |
$0.0348197
per vCPU hour |
São Paulo ( southamerica_east1
) |
$0.0502055
per vCPU hour |
Iowa ( us_central1
) |
$0.0316273
per vCPU hour |
South Carolina ( us_east1
) |
$0.0316273
per vCPU hour |
N. Virginia ( us_east4
) |
$0.0356224
per vCPU hour |
Oregon ( us_west1
) |
$0.0316273
per vCPU hour |
Los Angeles ( us_west2
) |
$0.0379891
per vCPU hour |
Las Vegas ( us_west4
) |
$0.0356224
per vCPU hour |
RAM
Location | Price per hour |
---|---|
Montréal ( northamerica_northeast1
) |
$0.0046667
per GB hour |
São Paulo ( southamerica_east1
) |
$0.0067287
per GB hour |
Iowa ( us_central1
) |
$0.0042389
per GB hour |
South Carolina ( us_east1
) |
$0.0042389
per GB hour |
N. Virginia ( us_east4
) |
$0.0047736
per GB hour |
Oregon ( us_west1
) |
$0.0042389
per GB hour |
Los Angeles ( us_west2
) |
$0.005091
per GB hour |
Las Vegas ( us_west4
) |
$0.0047736
per GB hour |
C2 Series
vCPU
Location | Price per hour |
---|---|
Montréal ( northamerica_northeast1
) |
$0.04301
per vCPU hour |
São Paulo ( southamerica_east1
) |
$0.0620356
per vCPU hour |
Iowa ( us_central1
) |
$0.039077
per vCPU hour |
South Carolina ( us_east1
) |
$0.039077
per vCPU hour |
N. Virginia ( us_east4
) |
$0.0440105
per vCPU hour |
Oregon ( us_west1
) |
$0.039077
per vCPU hour |
Los Angeles ( us_west2
) |
$0.046943
per vCPU hour |
Salt Lake City ( us_west3
) |
$0.04692
per vCPU hour |
Las Vegas ( us_west4
) |
$0.0440105
per vCPU hour |
RAM
Location | Price per hour |
---|---|
Montréal ( northamerica_northeast1
) |
$0.00575
per GB hour |
São Paulo ( southamerica_east1
) |
$0.0083133
per GB hour |
Iowa ( us_central1
) |
$0.0052325
per GB hour |
South Carolina ( us_east1
) |
$0.0052325
per GB hour |
N. Virginia ( us_east4
) |
$0.005888
per GB hour |
Oregon ( us_west1
) |
$0.0052325
per GB hour |
Los Angeles ( us_west2
) |
$0.0062905
per GB hour |
Salt Lake City ( us_west3
) |
$0.006325
per GB hour |
Las Vegas ( us_west4
) |
$0.005888
per GB hour |
C2D Series
vCPU
Location | Price per hour |
---|---|
Iowa ( us_central1
) |
$0.0339974
per vCPU hour |
South Carolina ( us_east1
) |
$0.0339974
per vCPU hour |
N. Virginia ( us_east4
) |
$0.0382904
per vCPU hour |
RAM
Location | Price per hour |
---|---|
Iowa ( us_central1
) |
$0.0045528
per GB hour |
South Carolina ( us_east1
) |
$0.0045528
per GB hour |
N. Virginia ( us_east4
) |
$0.0051267
per GB hour |
C3 Series
vCPU
Location | Price per hour |
---|---|
Iowa ( us_central1
) |
$0.03908
per vCPU hour |
South Carolina ( us_east1
) |
$0.03908
per vCPU hour |
N. Virginia ( us_east4
) |
$0.04401
per vCPU hour |
RAM
Location | Price per hour |
---|---|
Iowa ( us_central1
) |
$0.00524
per GB hour |
South Carolina ( us_east1
) |
$0.00524
per GB hour |
N. Virginia ( us_east4
) |
$0.0059
per GB hour |
A2 Series*
vCPU
Location | Price per hour |
---|---|
Iowa ( us-central1
) |
$0.0363527
per vCPU hour |
N. Virginia ( us-east4
) |
$0.0363527
per vCPU hour |
Las Vegas ( us-west4
) |
$0.0409457
per vCPU hour |
Other Americas regions | $0.0363527
per vCPU hour |
RAM
Location | Price per hour |
---|---|
Iowa ( us-central1
) |
$0.0048725
per GB hour |
N. Virginia ( us-east4
) |
$0.0048725
per GB hour |
Las Vegas ( us-west4
) |
$0.0054867
per GB hour |
Other Americas regions | $0.0048725
per GB hour |
GPU
Location | Price per hour |
---|---|
Iowa ( us-central1
) |
$4.51729
per GPU hour (A100 80GB) |
N. Virginia ( us-east4
) |
$5.08783
per GPU hour (A100 80GB) |
Las Vegas ( us-west4
) |
$3.5673
per GPU hour (A100 40GB) |
Other Americas regions | $3.3741
per GPU hour (A100 40GB) |
A3 Series*
vCPU
Location | Price per hour |
---|---|
Iowa ( us-central1
) |
$0.0293227
per vCPU hour |
N. Virginia ( us-east4
) |
$0.0293227
per vCPU hour |
RAM
Location | Price per hour |
---|---|
Iowa ( us-central1
) |
$0.0025534
per GB hour |
N. Virginia ( us-east4
) |
$0.0025534
per GB hour |
GPU
Location | Price per hour |
---|---|
Iowa ( us-central1
) |
$11.2660332
per GPU hour (H100 80GB) |
N. Virginia ( us-east4
) |
$11.2660336
per GPU hour (H100 80GB) |
G2 Series*
vCPU
Location | Price per hour |
---|---|
Iowa ( us-central1
) |
$0.02874
per vCPU hour |
Toronto ( northamerica-northeast2
) |
$0.031646
per vCPU hour |
RAM
Location | Price per hour |
---|---|
Iowa ( us-central1
) |
$0.00337
per GB hour |
Toronto ( northamerica-northeast2
) |
$0.0037107
per GB hour |
GPU
Location | Price per hour |
---|---|
Iowa ( us-central1
) |
$0.64405
per GPU hour |
Toronto ( northamerica-northeast2
) |
$0.70916
per GPU hour |
*When consuming from a reservation or spot capacity, billing is spread
across two SKUs: the GCE
SKU with the label
'vertex-ai-online-prediction' and the Vertex AI Management Fee SKU.
This enables you to use your Committed Use Discounts (CUDs) in
Vertex AI.
SKU pricing for Europe
E2 Series
vCPU
Location | Price per hour |
---|---|
Belgium ( europe-west1
) |
$0.0275919
per vCPU hour |
London ( europe-west2
) |
$0.0323184
per vCPU hour |
Frankfurt ( europe-west3
) |
$0.0323184
per vCPU hour |
Netherlands ( europe-west4
) |
$0.0276149
per vCPU hour |
Zurich ( europe-west6
) |
$0.0350968
per vCPU hour |
Paris ( europe-west9
) |
$0.0351164
per vCPU hour |
RAM
Location | Price per hour |
---|---|
Belgium ( europe-west1
) |
$0.0036984
per GB hour |
London ( europe-west2
) |
$0.0043309
per GB hour |
Frankfurt ( europe-west3
) |
$0.0043309
per GB hour |
Netherlands ( europe-west4
) |
$0.0037007
per GB hour |
Zurich ( europe-west6
) |
$0.0047035
per GB hour |
Paris ( europe-west9
) |
$0.0047069
per GB hour |
N1 Series
vCPU
Location | Price per hour |
---|---|
London ( europe-west2
) |
$0.0468395
per vCPU hour |
Other Europe regions | $0.0421268
per vCPU hour |
RAM
Location | Price per hour |
---|---|
London ( europe-west2
) |
$0.0062767
per GB hour |
Other Europe regions | $0.0056373
per GB hour |
N2 Series
vCPU
Location | Price per hour |
---|---|
Warsaw ( europe_central2
) |
$0.0468395
per vCPU hour |
Belgium ( europe_west1
) |
$0.0399889
per vCPU hour |
London ( europe_west2
) |
$0.0468395
per vCPU hour |
Frankfurt ( europe_west3
) |
$0.0468395
per vCPU hour |
Netherlands ( europe_west4
) |
$0.0399879
per vCPU hour |
Zurich ( europe_west6
) |
$0.050899
per vCPU hour |
Paris ( europe_west9
) |
$0.0421693
per vCPU hour |
RAM
Location | Price per hour |
---|---|
Warsaw ( europe_central2
) |
$0.0062767
per GB hour |
Belgium ( europe_west1
) |
$0.0053602
per GB hour |
London ( europe_west2
) |
$0.0062767
per GB hour |
Frankfurt ( europe_west3
) |
$0.0062767
per GB hour |
Netherlands ( europe_west4
) |
$0.0053598
per GB hour |
Zurich ( europe_west6
) |
$0.0068195
per GB hour |
Paris ( europe_west9
) |
$0.0056522
per GB hour |
N2D Series
vCPU
Location | Price per hour |
---|---|
Belgium ( europe_west1
) |
$0.0347909
per vCPU hour |
London ( europe_west2
) |
$0.0407502
per vCPU hour |
Frankfurt ( europe_west3
) |
$0.0407502
per vCPU hour |
Netherlands ( europe_west4
) |
$0.0348197
per vCPU hour |
Paris ( europe_west9
) |
$0.0366873
per vCPU hour |
RAM
Location | Price per hour |
---|---|
Belgium ( europe_west1
) |
$0.0046632
per GB hour |
London ( europe_west2
) |
$0.0054602
per GB hour |
Frankfurt ( europe_west3
) |
$0.0054602
per GB hour |
Netherlands ( europe_west4
) |
$0.0046667
per GB hour |
Paris ( europe_west9
) |
$0.0049174
per GB hour |
C2 Series
vCPU
Location | Price per hour |
---|---|
Belgium ( europe_west1
) |
$0.042987
per vCPU hour |
London ( europe_west2
) |
$0.0503527
per vCPU hour |
Frankfurt ( europe_west3
) |
$0.050347
per vCPU hour |
Netherlands ( europe_west4
) |
$0.0430215
per vCPU hour |
Zurich ( europe_west6
) |
$0.0547055
per vCPU hour |
RAM
Location | Price per hour |
---|---|
Belgium ( europe_west1
) |
$0.0057615
per GB hour |
London ( europe_west2
) |
$0.006747
per GB hour |
Frankfurt ( europe_west3
) |
$0.006739
per GB hour |
Netherlands ( europe_west4
) |
$0.0057615
per GB hour |
Zurich ( europe_west6
) |
$0.007337
per GB hour |
C2D Series
vCPU
Location | Price per hour |
---|---|
London ( europe_west2
) |
$0.0438012
per vCPU hour |
Netherlands ( europe_west4
) |
$0.0374336
per vCPU hour |
RAM
Location | Price per hour |
---|---|
London ( europe_west2
) |
$0.005865
per GB hour |
Netherlands ( europe_west4
) |
$0.0050128
per GB hour |
C3 Series
vCPU
Location | Price per hour |
---|---|
London ( europe_west1
) |
$0.04299
per vCPU hour |
Netherlands ( europe_west4
) |
$0.04302
per vCPU hour |
RAM
Location | Price per hour |
---|---|
London ( europe_west1
) |
$0.00576
per GB hour |
Netherlands ( europe_west4
) |
$0.00577
per GB hour |
A2 Series*
vCPU
Location | Price per hour |
---|---|
Netherlands ( europe-west4
) |
$0.0400223
per vCPU hour |
RAM
Location | Price per hour |
---|---|
Netherlands ( europe-west4
) |
$0.0053636
per GB hour |
GPU
Location | Price per hour |
---|---|
Netherlands ( europe-west4
) |
$3.3741
per GPU hour (A100 40GB) |
Netherlands ( europe-west4
) |
$4.97399
per GPU hour (A100 80GB) |
G2 Series*
vCPU
Location | Price per hour |
---|---|
Netherlands ( europe-west4
) |
$0.03164
per vCPU hour |
Frankfurt ( europe-west3
) |
$0.033913
per vCPU hour |
RAM
Location | Price per hour |
---|---|
Netherlands ( europe-west4
) |
$0.00371
per GB hour |
Frankfurt ( europe-west3
) |
$0.003976
per GB hour |
GPU
Location | Price per hour |
---|---|
Netherlands ( europe-west4
) |
$0.70916
per GPU hour |
Frankfurt ( europe-west3
) |
$0.75998
per GPU hour |
*When consuming from a reservation or spot capacity, billing is spread
across two SKUs: the GCE
SKU with the label
'vertex-ai-online-prediction' and the Vertex AI Management Fee SKU.
This enables you to use your Committed Use Discounts (CUDs) in
Vertex AI.
SKU pricing for Asia Pacific
E2 Series
E2 prediction machine type SKUs
vCPU
Location | Price per hour |
---|---|
Taiwan ( asia-east1
) |
$0.0290432
per vCPU hour |
Hong Kong ( asia-east2
) |
$0.0350968
per vCPU hour |
Tokyo ( asia-northeast1
) |
$0.0322299
per vCPU hour |
Seoul ( asia-northeast3
) |
$0.0322299
per vCPU hour |
Mumbai ( asia-south1
) |
$0.0301288
per vCPU hour |
Singapore ( asia-southeast1
) |
$0.0309453
per vCPU hour |
Sydney ( australia-southeast1
) |
$0.0355925
per vCPU hour |
RAM
Location | Price per hour |
---|---|
Taiwan ( asia-east1
) |
$0.0038927
per GB hour |
Hong Kong ( asia-east2
) |
$0.0047035
per GB hour |
Tokyo ( asia-northeast1
) |
$0.0042999
per GB hour |
Seoul ( asia-northeast3
) |
$0.0042999
per GB hour |
Mumbai ( asia-south1
) |
$0.0040376
per GB hour |
Singapore ( asia-southeast1
) |
$0.0041458
per GB hour |
Sydney ( australia-southeast1
) |
$0.004769
per GB hour |
N1 Series
N1 Prediction machine type SKUs
vCPU
Location | Price per hour |
---|---|
Tokyo ( asia-northeast1
) |
$0.0467107
per vCPU hour |
Singapore ( asia-southeast1
) |
$0.04484885
per vCPU hour |
Sydney ( australia-southeast1
) |
$0.0515844
per vCPU hour |
Other Asia Pacific regions | $0.0421268
per vCPU hour |
RAM
Location | Price per hour |
---|---|
Tokyo ( asia-northeast1
) |
$0.00623185
per GB hour |
Singapore ( asia-southeast1
) |
$0.0060099
per GB hour |
Sydney ( australia-southeast1
) |
$0.00691265
per GB hour |
Other Asia Pacific regions | $0.0056373
per GB hour |
N2 Series
vCPU
Location | Price per hour |
---|---|
Taiwan ( asia_east1
) |
$0.0420923
per vCPU hour |
Hong Kong ( asia_east2
) |
$0.0508656
per vCPU hour |
Tokyo ( asia_northeast1
) |
$0.0467107
per vCPU hour |
Seoul ( asia_northeast3
) |
$0.0467107
per vCPU hour |
Mumbai ( asia_south1
) |
$0.0436655
per vCPU hour |
Singapore ( asia_southeast1
) |
$0.0448488
per vCPU hour |
Jakarta ( asia_southeast2
) |
$0.0488853
per vCPU hour |
Sydney ( australia_southeast1
) |
$0.0515844
per vCPU hour |
RAM
Location | Price per hour |
---|---|
Taiwan ( asia_east1
) |
$0.0056419
per GB hour |
Hong Kong ( asia_east2
) |
$0.0068172
per GB hour |
Tokyo ( asia_northeast1
) |
$0.0062318
per GB hour |
Seoul ( asia_northeast3
) |
$0.0062318
per GB hour |
Mumbai ( asia_south1
) |
$0.0058512
per GB hour |
Singapore ( asia_southeast1
) |
$0.0060099
per GB hour |
Jakarta ( asia_southeast2
) |
$0.0065504
per GB hour |
Sydney ( australia_southeast1
) |
$0.0069126
per GB hour |
N2D Series
vCPU
Location | Price per hour |
---|---|
Taiwan ( asia_east1
) |
$0.0366206
per vCPU hour |
Hong Kong ( asia_east2
) |
$0.0442531
per vCPU hour |
Tokyo ( asia_northeast1
) |
$0.0406387
per vCPU hour |
Mumbai ( asia_south1
) |
$0.0208725
per vCPU hour |
Singapore ( asia_southeast1
) |
$0.0390184
per vCPU hour |
Sydney ( australia_southeast1
) |
$0.0448787
per vCPU hour |
RAM
Location | Price per hour |
---|---|
Taiwan ( asia_east1
) |
$0.0049082
per GB hour |
Hong Kong ( asia_east2
) |
$0.0059305
per GB hour |
Tokyo ( asia_northeast1
) |
$0.0054222
per GB hour |
Mumbai ( asia_south1
) |
$0.0027979
per GB hour |
Singapore ( asia_southeast1
) |
$0.005229
per GB hour |
Sydney ( australia_southeast1
) |
$0.0060145
per GB hour |
C2 Series
vCPU
Location | Price per hour |
---|---|
Taiwan ( asia_east1
) |
$0.045249
per vCPU hour |
Hong Kong ( asia_east2
) |
$0.0546802
per vCPU hour |
Tokyo ( asia_northeast1
) |
$0.0502136
per vCPU hour |
Seoul ( asia_northeast3
) |
$0.0502136
per vCPU hour |
Mumbai ( asia_south1
) |
$0.0469407
per vCPU hour |
Singapore ( asia_southeast1
) |
$0.0482126
per vCPU hour |
Sydney ( australia_southeast1
) |
$0.055453
per vCPU hour |
RAM
Location | Price per hour |
---|---|
Taiwan ( asia_east1
) |
$0.0060651
per GB hour |
Hong Kong ( asia_east2
) |
$0.0073289
per GB hour |
Tokyo ( asia_northeast1
) |
$0.0066987
per GB hour |
Seoul ( asia_northeast3
) |
$0.0066987
per GB hour |
Mumbai ( asia_south1
) |
$0.0062905
per GB hour |
Singapore ( asia_southeast1
) |
$0.0064607
per GB hour |
Sydney ( australia_southeast1
) |
$0.0074313
per GB hour |
C2D Series
vCPU
Location | Price per hour |
---|---|
Taiwan ( asia_east1
) |
$0.0393656
per vCPU hour |
Singapore ( asia_southeast1
) |
$0.0419417
per vCPU hour |
RAM
Location | Price per hour |
---|---|
Taiwan ( asia_east1
) |
$0.0052716
per GB hour |
Singapore ( asia_southeast1
) |
$0.0056166
per GB hour |
C3 Series
vCPU
Location | Price per hour |
---|---|
Singapore ( asia_southeast1
) |
$0.04821
per vCPU hour |
RAM
Location | Price per hour |
---|---|
Singapore ( asia_southeast1
) |
$0.00646
per GB hour |
A2 Series*
A2 Prediction machine type SKUs
vCPU
Location | Price per hour |
---|---|
Tokyo ( asia-northeast1
) |
$0.0467107
per vCPU hour |
Seoul ( asia-northeast3
) |
$0.0467107
per vCPU hour |
Singapore ( asia-southeast1
) |
$0.0448488
per vCPU hour |
RAM
Location | Price per hour |
---|---|
Tokyo ( asia-northeast1
) |
$0.00623185
per GB hour |
Seoul ( asia-northeast3
) |
$0.0062318
per GB hour |
Singapore ( asia-southeast1
) |
$0.0060099
per GB hour |
GPU
Location | Price per hour |
---|---|
Tokyo ( asia-northeast1
) |
$3.5673
per GPU hour (A100 40GB) |
Seoul ( asia-northeast3
) |
$3.5673
per GPU hour (A100 40GB) |
Singapore ( asia-southeast1
) |
$3.5673
per GPU hour (A100 40GB) |
Singapore ( asia-southeast1
) |
$5.57298
per GPU hour (A100 80GB) |
*When consuming from a reservation or spot capacity, billing is spread
across two SKUs: the GCE
SKU with the label
'vertex-ai-online-prediction' and the Vertex AI Management Fee SKU.
This enables you to use your Committed Use Discounts (CUDs) in
Vertex AI.
SKU pricing for Middle East
N2 Series
vCPU
Location | Price per hour |
---|---|
Tel Aviv ( me_west1
) |
$0.0399879
per vCPU hour |
RAM
Location | Price per hour |
---|---|
Tel Aviv ( me_west1
) |
$0.0053598
per GB hour |
N2D Series
vCPU
Location | Price per hour |
---|---|
Tel Aviv ( me_west1
) |
$0.03479
per vCPU hour |
RAM
Location | Price per hour |
---|---|
Tel Aviv ( me_west1
) |
$0.0046628
per GB hour |
A2 Series
vCPU
Location | Price per hour |
---|---|
Tel Aviv ( me_west1
) |
$0.03999
per vCPU hour |
RAM
Location | Price per hour |
---|---|
Tel Aviv ( me_west1
) |
$0.00536
per GB hour |
G2 Series
vCPU
Location | Price per hour |
---|---|
Dammam ( me-central2
) |
$0.045984
per vCPU hour |
RAM
Location | Price per hour |
---|---|
Dammam ( me-central2
) |
$0.005392
per GB hour |
GPU
Location | Price per hour |
---|---|
Dammam ( me-central2
) |
$1.03048
per GPU hour |
Some machine types allow you to add optional GPU accelerators for prediction . Optional GPUs incur an additional charge, separate from those described in the previous table. View each pricing table, which describes the pricing for each type of optional GPU.
The Americas
Accelerators - price per hour
NVIDIA_TESLA_P4
|
|
---|---|
Iowa ( us-central1
) |
$0.6900 |
N. Virginia ( us-east4
) |
$0.6900 |
Montréal ( northamerica-northeast1
) |
$0.7475 |
NVIDIA_TESLA_P100
|
|
---|---|
Oregon ( us-west1
) |
$1.6790 |
Iowa ( us-central1
) |
$1.6790 |
South Carolina ( us-east1
) |
$1.6790 |
NVIDIA_TESLA_T4
|
|
---|---|
Oregon ( us-west1
) |
$0.4025 |
Iowa ( us-central1
) |
$0.4025 |
South Carolina ( us-east1
) |
$0.4025 |
NVIDIA_TESLA_V100
|
|
---|---|
Oregon ( us-west1
) |
$2.8520 |
Iowa ( us-central1
) |
$2.8520 |
Europe
Accelerators - price per hour
NVIDIA_TESLA_P4
|
|
---|---|
Netherlands ( europe-west4
) |
$0.7475 |
NVIDIA_TESLA_P100
|
|
---|---|
Belgium ( europe-west1
) |
$1.8400 |
NVIDIA_TESLA_T4
|
|
---|---|
London ( europe-west2
) |
$0.4715 |
Netherlands ( europe-west4
) |
$0.4370 |
NVIDIA_TESLA_V100
|
|
---|---|
Netherlands ( europe-west4
) |
$2.9325 |
Asia Pacific
Accelerators - price per hour
NVIDIA_TESLA_P4
|
|
---|---|
Singapore ( asia-southeast1
) |
$0.7475 |
Sydney ( australia-southeast1
) |
$0.7475 |
NVIDIA_TESLA_P100
|
|
---|---|
Taiwan ( asia-east1
) |
$1.8400 |
NVIDIA_TESLA_T4
|
|
---|---|
Tokyo ( asia-northeast1
) |
$0.4255 |
Singapore ( asia-southeast1
) |
$0.4255 |
Seoul ( asia-northeast3
) |
$0.4485 |
NVIDIA_TESLA_V100
|
|
---|---|
Taiwan ( asia-east1
) |
$2.932 |
Pricing is per GPU. If you use multiple GPUs per prediction node (or if your version scales to use multiple nodes),the costs scale accordingly.
AI Platform Prediction serves predictions from your model by running a number of virtual machines ("nodes"). By default, Vertex AI automatically scales the number of nodes running at any time. For online prediction, the number of nodes scales to meet demand. Each node can respond to multiple prediction requests. For batch prediction, the number of nodes scales to reduce the total time it takes to run a job. You can customize how prediction nodes scale.
You are charged for the time that each node runs for your model, including:
- When the node is processing a batch prediction job.
- When the node is processing an online prediction request.
- When the node is in a ready state for serving online predictions.
The cost of one node running for one hour is a node hour . The table of prediction prices describes the price of a node hour, which varies across regions and between online prediction and batch prediction.
You can consume node hours in fractional increments. For example, one node running for 30 minutes costs 0.5 node hours.
Cost calculations for Compute Engine (N1) machine types
- The running time of a node is billed in 30-second increments. This means that every 30 seconds, your project is billed for 30 seconds worth of whatever vCPU, RAM, and GPU resources that your node is using at that moment.
More about automatic scaling of prediction nodes
You can choose to let the service scale in response to traffic (automatic scaling) or you can specify a number of nodes to run constantly to avoid latency (manual scaling) .
- If you choose automatic scaling, the number of nodes scales automatically. For AI Platform Prediction legacy (MLS1) machine type deployments, the number of nodes can scale down to zero for no-traffic durations. Vertex AI deployments and other types of AI Platform Prediction deployments cannot scale down to zero nodes.
- If you choose manual scaling, you specify a number of nodes to keep running all the time. You are charged for all of the time that these nodes are running, starting at the time of deployment and persisting until you delete the model version.
Batch prediction jobs are charged after job completion
Batch prediction jobs are charged after job completion, not incrementally during the job. Any Cloud Billing budget alerts that you have configured aren't triggered while a job is running. Before starting a large job, consider running some cost benchmark jobs with small input data first.
Example of a prediction calculation
A real-estate company in an Americas region runs a weekly prediction of
housing values in areas it serves. In one month, it runs predictions for
four weeks in batches of 3920
, 4277
, 3849
, and 3961
. Jobs are
limited to one node and each instance takes an average of 0.72
seconds of processing.
First calculate the length of time that each job ran:
3920 instances * (0.72 seconds / 1 instance) * (1 minute / 60 seconds) = 47.04 minutes 4277 instances * (0.72 seconds / 1 instance) * (1 minute / 60 seconds) = 51.324 minutes 3849 instances * (0.72 seconds / 1 instance) * (1 minute / 60 seconds) = 46.188 minutes 3961 instances * (0.72 seconds / 1 instance) * (1 minute / 60 seconds) = 47.532 minutes
Each job ran for more than ten minutes, so it is charged for each minute of processing:
($0.0909886 / 1 node hour) * (1 hour / 60 minutes) * 48 minutes * 1 node = $0.0632964 ($0.0909886 / 1 node hour) * (1 hour / 60 minutes) * 52 minutes * 1 node = $0.0685711 ($0.0909886 / 1 node hour) * (1 hour / 60 minutes) * 47 minutes * 1 node = $0.061977725 ($0.0909886 / 1 node hour) * (1 hour / 60 minutes) * 48 minutes * 1 node = $0.0632964
The total charge for the month is $0.26.
This example assumed jobs ran on a single node and took a consistent amount of time per input instance. In real usage, make sure to account for multiple nodes and use the actual amount of time each node spends running for your calculations.
Charges for Vertex Explainable AI
Feature-based explanations
Feature-based explanations come at no extra charge to prediction prices. However, explanations take longer to process than normal predictions, so heavy usage of Vertex Explainable AI along with auto-scaling could result in more nodes being started, which would increase prediction charges.
Example-based explanations
Pricing for example-based explanations consists of the following:
-
When you upload a model or update a model's dataset, you are billed:
- per node hour for the batch prediction job that is used to generate the latent space representations of examples. This is billed at the same rate as prediction .
- a cost for building or updating indexes. This cost is the same as the indexing costs for Vector Search , which is number of examples * number of dimensions * 4 bytes per float * $3.00 per GB. For example, if you have 1 million examples and 1,000 dimension latent space, the cost is $12 (1,000,000 * 1,000 * 4 * 3.00 / 1,000,000,000).
-
When you deploy to an endpoint, you are billed per node hour for each node in your endpoint. All compute associated with the endpoint is charged at same rate as prediction . However, because Example-based explanations require additional compute resources to serve the Vector Search index, this results in more nodes being started which increases prediction charges.
Vertex AI Neural Architecture Search
The following tables summarize the pricing in each region where Neural Architecture Search is available.
Prices
The following tables provide the price per hour of various configurations.
You can choose a predefined scale tier or a custom configuration of selected machine types. If you choose a custom configuration, sum the costs of the virtual machines you use.
Accelerator-enabled legacy machine types include the cost of the accelerators in their pricing. If you use Compute Engine machine types and attach accelerators, the cost of the accelerators is separate. To calculate this cost, multiply the prices in the following table of accelerators by the number of each type of accelerator you use.
Machine types
Americas
Europe
Asia Pacific
Prices for a2-highgpu
instances include the charges for the attached NVIDIA_TESLA_A100
Accelerators.
Accelerators
Americas
Europe
Asia Pacific
Disks
Americas
Europe
Asia Pacific
Notes:
- All use is subject to the Neural Architecture Search quota policy.
- You are required to store your data and program files in Cloud Storage buckets during the Neural Architecture Search lifecycle. See more about Cloud Storage usage .
- For volume-based discounts, contact the Sales team .
- The disk price is only charged when you configure the disk size of each VM to be larger than 100 GB. There is no charge for the first 100 GB (the default disk size) of disk for each VM. For example, if you configure each VM to have 105 GB of disk, then you are charged for 5 GB of disk for each VM.
Required use of Cloud Storage
In addition to the costs described in this document, you are required to store data and program files in Cloud Storage buckets during the Neural Architecture Search lifecycle. This storage is subject to the Cloud Storage pricing policy .
Required use of Cloud Storage includes:
-
Staging your training application package.
-
Storing your training input data.
-
Storing the output of your jobs. Neural Architecture Search doesn't require long-term storage of these items. You can remove the files as soon as the operation is complete.
Free operations for managing your resources
The resource management operations provided by Neural Architecture Search are available free of charge. The Neural Architecture Search quota policy does limit some of these operations.
Resource | Free operations |
---|---|
jobs | get, list, cancel |
operations | get, list, cancel, delete |
Vertex AI Pipelines
Vertex AI Pipelines charges a run execution fee of $0.03 per Pipeline Run. You are not charged the execution fee during the Preview release. You also pay for Google Cloud resources you use with Vertex AI Pipelines, such as Compute Engine resources consumed by pipeline components (charged at the same rate as for Vertex AI training ). Finally, you are responsible for the cost of any services (such as Dataflow) called by your pipeline.
Vertex AI Feature Store
Vertex AI Feature Store is Generally Available (GA) since November 2023. For information on the previous version of the product go to Vertex AI Feature Store (Legacy) .
New Vertex AI Feature Store
The new Vertex AI Feature Store supports functionality across 2 types of operations:
- Offline operationsare operations to transfer, store, retrieve and transform data in the offline store (BigQuery)
- Online operationsare operations to transfer data into the online store(s) and operations on data while it is in the online store(s).
Offline Operations Pricing
Since BigQuery is used for offline operations, please refer to BigQuery pricing for functionality such as ingestion to the offline store, querying the offline store, and offline storage.
Online Operations Pricing
For online operations, Vertex AI Feature Store charges for any GA features to transfer data into the online store, serve data or store data. A node-hour represents the time a virtual machine spends to complete an operation, charged to the minute.
Optimized online serving and Bigtable online serving use different architectures, so their nodes are not comparable.
If you pay in a currency other than USD, the prices listed in your currency on Cloud Platform SKUs
apply.
Online Operations Workload Estimates
Consider the following guidelines when estimating your workloads. The number of nodes required for a given workload may differ across each serving approach.
- Data processing:
- Ingestion - One node can ingest approximately a minimum of 100 MB of data per hour into a Bigtable Online Store or an Optimized Online Store if no analytical functions are used.
- Bigtable online serving: Each node can support approximately 15,000 QPS and up to 5TB of storage.
- Optimized online serving: Performance is based on the machine type and replicas, which are automatically configured to minimize costs subject to the workload. Each node can have
a minimum of 2 and a maximum of 6 replicas for high availability and autoscaling. You're charged for the number of replicas accordingly. For more details, see the example monthly scenarios
.
- For non embeddings-related workloads, each node can support approximately 500 QPS and up to 200GB of storage.
- For embeddings-related workloads, each node can support approximately 500 QPS and up to 4 GB of storage of 512 dimensional data.
You can view the number of nodes (with replicas) in the Metric Explorer:
Example Monthly Scenarios (assuming us-central1)
Data streaming workload - Bigtable online serving with 2.5TB of data (1GB refreshed daily) and 1200QPS
Operations | Monthly Usage | Monthly Cost |
---|---|---|
Data processing node
|
(1 GB/day) * (30 days/month) * (1,000 MB/GB) * (1 node-hr / 100MB) = 300 node-hr | 300 node-hr * ($0.08 per node-hr) = $24 |
Optimized online serving node
|
N/A | N/A |
Bigtable online serving node
|
(1 node) * (24 hr/day) * (30 days/month) = 720 node-hr | 720 node-hr * ($0.94 per node-hr) = $677 |
Bigtable online serving storage
|
(2.5 TB-month) * (1000 GB/TB) = 2500 GB-month | 2500 GB-month * ($0.25 per GB-month) = $625 |
Total
|
$1,326 |
High QPS workload - Optimized online serving with 10GB of non-embedding data (5GB refreshed daily) and 2000QPS
Operations | Monthly Usage | Monthly Cost |
---|---|---|
Data processing node
|
(5 GB/day) * (30 days/month) * (1,000 MB/GB) * (1 node-hr / 100MB) = 1500 node-hr | 1500 node-hr * ($0.08 per node-hr) = $120 |
Optimized online serving node
|
Roundup(10GB * (1 node / 200 GB)) = 1 * max(2 default replicas, 2000 QPS * (1 replica / 500 QPS)) = 4 total nodes * (24 hr/day) * (30days/month) =2880 node-hr | 2880 node-hr * (0.30 per node-hr) = $864 |
Bigtable online serving node
|
N/A | N/A |
Bigtable online serving storage
|
N/A | N/A |
Total
|
$984 |
Embeddings serving workload - Optimized online serving with 20GB of embeddings data (2GB refreshed daily) and 800QPS
Operations | Monthly Usage | Monthly Cost |
---|---|---|
Data processing node
|
(2 GB/day) * (30 days/month) * (1,000 MB/GB) * (1 node-hr / 100MB) = 600 node-hr | 600 node-hr * ($0.08 per node-hr) = $48 |
Optimized online serving node
|
Roundup(20GB* (1 node / 4GB) = 5 * max(2 default replicas, 800 QPS * (1 replica / 500 QPS)) = 10 total nodes * (24 hr/day) * (30days/month) = 7200 node-hr | 7200 node-hr * (0.30 per node-hr) = $2160 |
Bigtable online serving node
|
N/A | N/A |
Bigtable online serving storage
|
N/A | N/A |
Total
|
$2,208 |
Vertex AI Feature Store (Legacy)
Prices for Vertex AI Feature Store (Legacy) are based on the amount of feature data in online and offline storage as well as the availability of online serving. A node per hour represents the time a virtual machine spends serving feature data or waiting in a ready state to handle feature data requests.
If you pay in a currency other than USD, the prices listed in your currency on Cloud Platform SKUs
apply.
When you enable feature value monitoring, billing includes applicable charges above in addition to applicable charges that follow:
- $3.50 per GB for all data analyzed. With snapshot analysis enabled, snapshots taken for data in Vertex AI Feature Store (Legacy) are included. With import feature analysis enabled, batches of ingested data are included.
- Additional charges for other Vertex AI Feature Store (Legacy) operations used with feature value monitoring include the following:
- The snapshot analysis feature periodically takes a snapshot of the feature values based on your configuration for the monitoring interval.
- The charge for a snapshot export is the same as a regular batch export operation.
Snapshot Analysis Example
A data scientist enables feature value monitoring for their Vertex AI Feature Store (Legacy) and turns on monitoring for a daily snapshot analysis. A pipeline runs daily for the entity types monitoring. The pipeline scans 2GB of data in Vertex AI Feature Store (Legacy) and exports a snapshot containing 0.1GB of data. The total charge for one day's analysis is:
(0.1 GB * $3.50) + (2 GB * $0.005) = $0.36
Ingestion Analysis Example
A data scientist enables feature value monitoring for their Vertex AI Feature Store (Legacy) and turns on monitoring for ingestion operations. An ingestion operation imports 1GB of data into Vertex AI Feature Store (Legacy). The total charge for feature value monitoring is:
(1 GB * $3.50) = $3.50
Vertex ML Metadata
Metadata storage is measured in binary gigabytes (GiB), where 1 GiB is
1,073,741,824 bytes. This unit of measurement is also known as a gibibyte
.
Vertex ML Metadata charges $10 per gibibyte (GiB) per month for metadata storage. Prices are pro-rated per megabyte (MB). For example, if you store 10 MB of metadata, you are charged $0.10 per month for that 10 MB of metadata.
Prices are the same in all regions where Vertex ML Metadata is supported.
Vertex AI TensorBoard
To use Vertex AI TensorBoard, request that the IAM administrator of the project assign you to the role "Vertex AI TensorBoard Web App User" . The Vertex AI Administrator role also has access.
Beginning in August 2023, Vertex AI TensorBoard pricing changed from a per-user monthly license of $300/month to $10 GiB/month for data storage of logs and metrics. This means no more subscription fees. You will only pay for the storage you’ve used. See the Vertex AI TensorBoard: Delete Outdated TensorBoard Experiments tutorial for how to manage storage.
Vertex AI Vizier
Vertex AI Vizier is a black-box optimization service inside Vertex AI. The Vertex AI Vizier pricing model consists of the following:
- There is no charge for trials that use
RANDOM_SEARCH
andGRID_SEARCH
. Learn more about the search algorithms . - The first 100 Vertex AI Vizier trials per calendar month are available at no charge (trials using
RANDOM_SEARCH
andGRID_SEARCH
do not count against this total). - After 100 Vertex AI Vizier trials, subsequent trials during the same calendar month are charged at $1 per trial (trials that use
RANDOM_SEARCH
orGRID_SEARCH
incur no charges).
Vector Search
Pricing for Vector Search Approximate Nearest Neighbor service consists of:
- Per node hour pricing for each VM used to host a deployed index.
- A cost for building new indexes, updating existing indexes, and using streaming index updates.
Data processed during building and updating indexes is measured in binary
gigabytes (GiB), where 1 GiB is 1,073,741,824 bytes. This unit of measurement
is also known as a gibibyte
.
Vector Search charges $3.00 per gibibyte (GiB) of data processed in all regions. Vector Search charges $0.45/GiB ingested for Streaming Update inserts.
The following tables summarize the pricing of an index serving in each region where the Vector Search is available. The price corresponds to the machine type, by region, and is charged per node hour.
The Americas
Region | e2-standard-2 | e2-standard-16 | e2-highmem-16 | n2d-standard-32 | n1-standard-16 | n1-standard-32 |
---|---|---|---|---|---|---|
us_central1
|
0.094 | 0.75 | 1.012 | 1.893 | 1.064 | 2.128 |
us_east1
|
0.094 | 0.75 | 1.012 | 1.893 | 1.064 | 2.128 |
us_east4
|
0.10 | 0.845 | 1.14 | 2.132 | 1.198 | 2.397 |
us_west1
|
0.094 | 0.75 | 1.012 | 1.893 | 1.064 | 2.128 |
us_west2
|
0.113 | 0.901 | 1.216 | 2.273 | 1.279 | 2.558 |
us_west3
|
0.113 | 0.901 | 1.216 | N/A | 1.279 | 2.558 |
us_west4
|
0.106 | 0.845 | 1.14 | 2.132 | 1.198 | 2.397 |
us_south1
|
0.111 | 0.886 | 1.195 | N/A | N/A | N/A |
northamerica_northeast1
|
0.103 | 0.826 | 1.115 | 2.084 | 1.172 | 2.343 |
northamerica_northeast2
|
0.103 | 0.826 | 1.115 | N/A | N/A | N/A |
southamerica_east1
|
0.149 | 1.191 | 1.607 | 3.004 | 1.69 | 3.38 |
Europe
Region | e2-standard-2 | e2-standard-16 | e2-highmem-16 | n2d-standard-32 | n1-standard-16 | n1-standard-32 |
---|---|---|---|---|---|---|
europe_central2
|
0.121 | 0.967 | 1.304 | N/A | N/A | N/A |
europe_north1
|
0.103 | 0.826 | 1.115 | 2.084 | 1.172 | 2.343 |
europe_west1
|
0.103 | 0.826 | 1.114 | 2.082 | 1.171 | 2.343 |
europe_west2
|
0.121 | 0.967 | 1.304 | 2.438 | 1.371 | 2.742 |
europe_west3
|
0.121 | 0.967 | 1.304 | 2.438 | 1.371 | 2.742 |
europe_west4
|
0.103 | 0.826 | 1.115 | 2.084 | 1.172 | 2.343 |
europe_west6
|
0.131 | 1.050 | 1.417 | N/A | 1.489 | 2.978 |
europe_west9
|
0.131 | 1.051 | 1.417 | 2.195 | N/A | N/A |
Asia Pacific
Region | e2-standard-2 | e2-standard-16 | e2-highmem-16 | n2d-standard-32 | n1-standard-16 | n1-standard-32 |
---|---|---|---|---|---|---|
asia_east1
|
0.109 | 0.869 | 1.172 | 2.191 | 1.232 | 2.464 |
asia_east2
|
0.131 | 1.050 | 1.417 | 2.648 | 1.489 | 2.978 |
asia_south1
|
0.113 | 0.901 | 1.216 | 1.249 | 1.278 | 2.556 |
asia_southeast1
|
0.116 | 0.926 | 1.249 | 2.335 | 1.313 | 2.625 |
asia_southeast2
|
0.126 | 1.009 | 1.361 | N/A | N/A | N/A |
asia_northeast1
|
0.12 | 0.963 | 1.298 | 2.428 | 1.366 | 2.733 |
asia_northeast2
|
0.12 | 0.963 | 1.298 | 2.428 | 1.366 | 2.733 |
asia_northeast3
|
0.12 | 0.963 | 1.298 | N/A | 1.367 | 2.733 |
australia_southeast1
|
0.133 | 1.065 | 1.436 | 2.686 | 1.51 | 3.02 |
Middle East
Region | e2-standard-2 | e2-standard-16 | e2-highmem-16 | n2d-standard-32 | n1-standard-16 | n1-standard-32 |
---|---|---|---|---|---|---|
me_west1
|
0.103 | 0.826 | 1.114 | 2.082 | N/A | N/A |
Vector Search pricing examples
Vector Search pricing is determined by the size of your data, the amount of queries per second (QPS) you want to run, and the number of nodes you use. To get your estimated serving cost, you need to calculate your total data size. Your data size is the number of your embeddings/vectors* the number of dimensions you have* 4 bytes per dimension. After you have the size of your data you can calculate the serving cost and the building cost. The serving cost plus the building cost equals your monthly total cost.
- Serving cost: # replicas/shard * # shards (~data size/shard size) * hourly cost * 730 hours
- Building cost: data size(in GiB) * $3/GiB * # of updates/month
Streaming update: Vector Search uses heuristics-based metrics to determine when to trigger compaction. If the oldest uncompacted data is five days old, compaction is always triggered. You are billed for the cost of rebuilding the index at the same rate of a batch update, in addition to the streaming update costs.
Number of embeddings/vectors | Number of dimensions | Queries per second (QPS) | Machine Type | Nodes | Estimated monthly serving cost |
---|---|---|---|---|---|
2 million
|
128 | 100 | e2-standard-2 | 1 | $68 |
20 million
|
256 | 1,000 | e2-standard-16 | 1 | $547 |
20 million
|
256 | 3,000 | e2-standard-16 | 3 | $1,642 |
100 million
|
256 | 500 | e2-highmem-16 | 2 | $1,477 |
1 billion
|
100 | 500 | e2-highmem-16 | 8 | $5,910 |
All examples are based on machine types in us-central1
.
The cost you incur will vary with recall rate and latency requirements. The estimated monthly
serving cost is directly related to the number of nodes used in the console.
To learn more about configuration parameters that affect cost, see Configuration parameters which affect recall and latency.
If you have high queries per second (QPS), batching these queries can reduce total costs up to 30%-40%.
Vertex AI Model Registry
The Vertex AI Model Registry is a central repository which tracks and lists your models and model versions. You can import models into Vertex AI and they appear in the Vertex AI Model Registry. There is no cost associated with having your models in the Model Registry. Cost is only incurred when you deploy the model to an endpoint or perform a batch prediction on the model. This cost is determined by the type of model you are deploying.
To learn more about pricing for deploying custom models from the Vertex AI Model Registry, see Custom-trained models . To learn more about pricing for deploying AutoML models, see Pricing for AutoML models .
Vertex AI Model Monitoring
Vertex AI enables you to monitor the continued effectiveness of your model after you deploy it to production. For more information, see Introduction to Vertex AI Model Monitoring .
When you use Vertex AI Model Monitoring, you are billed for the following:
- $3.50 per GB for all data analyzed, including the training data provided and prediction data logged in a BigQuery table.
- Charges for other Google Cloud products that you use with Model Monitoring, such as BigQuery storage or Batch Explain when attribution monitoring is enabled.
Vertex AI Model Monitoring is supported in the following regions: us-central1
, europe-west4
, asia-east1
, and asia-southeast1
. Prices are the same for all
regions.
Data sizes are measured after they are converted to TfRecord format.
Training datasets incur a one-time charge when you set up a Vertex AI Model Monitoring job.
Prediction Datasets consist of logs collected from the Online Prediction service. As prediction requests arrive during different time windows, the data for each time window is collected and the sum of the data analyzed for each prediction window is used to calculate the charge.
Example: A data scientist runs model monitoring on the prediction traffic belonging to their model.
- The model is trained from a BigQuery dataset. The data size after converting to TfRecord is 1.5GB.
- Prediction data logged between 1:00 - 2:00 p.m. is 0.1 GB, between 3:00 - 4:00 p.m. is 0.2 GB.
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The total price for setting up the model monitoring job is:
(1.5 GB * $3.50) + ((0.1 GB + 0.2 GB) * $3.50) = $6.30
Vertex AI Workbench
Select instances, managed notebooks, or user-managed notebooks for pricing information.
Instances
The tables below provide the approximate price per hour of various VM configurations. You can choose a custom configuration of selected machine types. To calculate pricing, sum the costs of the virtual machines you use.
If you use Compute Engine machine types and attach accelerators, the cost of the accelerators is separate. To calculate this cost, multiply the prices in the table of accelerators below by how many machine hours of each type of accelerator you use.
CPUs
Memory
Accelerators
Disks
Your Vertex AI Workbench instance incurs charges as follows:
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For CPU and accelerator usage, you're charged when the instance is in the following states:
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STARTING
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PROVISIONING
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ACTIVE
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UPGRADING
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ROLLBACKING
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RESTORING
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STOPPING
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SUSPENDING
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For disk storage, you're charged when the instance is in the following states:
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STARTING
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PROVISIONING
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ACTIVE
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UPGRADING
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ROLLBACKING
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RESTORING
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STOPPING
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STOPPED
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SUSPENDING
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SUSPENDED
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Managed notebooks
User-managed notebooks
Additional Google Cloud resources
In addition to the costs mentioned previously, you also pay for any Google Cloud resources that you use. For example:
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Data analysis services: You incur BigQuery costs when you issue SQL queries within a notebook (see BigQuery pricing ).
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Customer-managed encryption keys: You incur costs when you use customer-managed encryption keys. Each time your managed notebooks or user-managed notebooks instance uses a Cloud Key Management Service key, that operation is billed at the rate of Cloud KMS key operations (see Cloud Key Management Service pricing ).
Colab Enterprise
For Colab Enterprise pricing information, see Colab Enterprise pricing .
Deep Learning Containers, Deep Learning VM, and AI Platform Pipelines
For Deep Learning Containers, Deep Learning VM Images, and AI Platform Pipelines, pricing is calculated based on the compute and storage resources that you use. These resources are charged at the same rate you currently pay for Compute Engine and Cloud Storage .
In addition to the compute and storage costs, you also pay for any Google Cloud resources that you use. For example:
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Data analysis services: You incur BigQuery costs when you issue SQL queries within a notebook (see BigQuery pricing ).
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Customer-managed encryption keys: You incur costs when you use customer-managed encryption keys. Each time your managed notebooks or user-managed notebooks instance uses a Cloud Key Management Service key, that operation is billed at the rate of Cloud KMS key operations (see Cloud Key Management Service pricing ).
Data labeling
Vertex AI enables you to request human labeling for a collection of data that you plan to use to train a custom machine learning model. Prices for the service are computed based on the type of labeling task.
- For regular labeling tasks, the prices are determined by the number of
annotation units.
- For an image classification task, units are determined the number of images and the number of human labelers. For example, an image with 3 human labelers counts for 1 * 3 = 3 units. The price for single-label and multi-label classification are the same.
- For an image bounding box task, units are determined by the number of bounding boxes identified in the images and the number of human labelers. For example, if an image with 2 bounding boxes and 3 human labelers counts for 2 * 3 = 6 units. Images without bounding boxes will not be charged.
- For an image segmentation/rotated box/polyline/polygon task, units are determined in the same way as a image bounding box task.
- For a video classification task, units are determined by the video length (every 5 seconds is a price unit) and the number of human labelers. For example, a 25 seconds video with 3 human labelers counts for 25 / 5 * 3 = 15 units. The price for single-label and multi-label classification are the same.
- For a video object tracking task, unit are determined by the number of objects identified in the video and the number of human labelers. For example, for a video with 2 objects and 3 human labelers, it counts for 2 * 3 = 6 units. Video without objects will not be charged.
- For a video action recognition task, units are determined in the same way as a video object tracking task.
- For a text classification task, units are determined by text length (every 50 words is a price unit) and the number of human labelers. For example, one piece of text with 100 words and 3 human labelers counts for 100 / 50 * 3 = 6 units. The price for single-label and multi-label classification is the same.
- For a text sentiment task, units are determined in the same way as a text classification task.
- For a text entity extraction task, units are determined by text length (every 50 words is a price unit), the number of entities identified, and the number of human labelers. For example, a piece of text with 100 words, 2 entities identified, and 3 human labelers counts for 100 / 50 * 2 * 3 = 12 units. Text without entities will not be charged.
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For image/video/text classification and text sentiment tasks, human labelers may lose track of classes if the label set size is too large. As a result, we send at most 20 classes to the human labelers at a time. For example, if the label set size of a labeling task is 40, each data item will be sent for human review 40 / 20 = 2 times, and we will charge 2 times of the price (calculated above) accordingly.
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For a labeling task that enables the custom labeler feature, each data item is counted as 1 custom labeler unit.
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For an active learning labeling task for data items with annotations that are generated by models (without a human labeler's help), each data item is counted as 1 active learning unit.
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For an active learning labeling task for data items with annotations that are generated by human labelers, each data item is counted as a regular labeling task as described above.
The table below provides the price per 1,000 units per human labeler, based on the unit listed for each objective. Tier 1 pricing applies to the first 50,000 units per month in each Google Cloud project; Tier 2 pricing applies to the next 950,000 units per month in the project, up to 1,000,000 units. Contact us for pricing above 1,000,000 units per month.
Data type | Objective | Unit | Tier 1 | Tier 2 |
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Image
|
Classification | Image | $35 | $25 |
|
Bounding box | Bounding box | $63 | $49 |
|
Segmentation | Segment | $870 | $850 |
|
Rotated box | Bounding box | $86 | $60 |
|
Polygon/polyline | Polygon/Polyline | $257 | $180 |
Video
|
Classification | 5sec video | $86 | $60 |
|
Object tracking | Bounding box | $86 | $60 |
|
Action recognition | Event in 30sec video | $214 | $150 |
Text
|
Classification | 50 words | $129 | $90 |
|
Sentiment | 50 words | $200 | $140 |
|
Entity extraction | Entity | $86 | $60 |
Active Learning
|
All | Data item | $80 | $56 |
Custom Labeler
|
All | Data item | $80 | $56 |
Required use of Cloud Storage
In addition to the costs described in this document, you are required to store data and program files in Cloud Storage buckets during the Vertex AI lifecycle. This storage is subject to the Cloud Storage pricing policy .
Required use of Cloud Storage includes:
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Staging your training application package for custom-trained models.
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Storing your training input data.
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Storing the output of your training jobs. Vertex AI does not require long-term storage of these items. You can remove the files as soon as the operation is complete.
Free operations for managing your resources
The resource management operations provided by AI Platform are available free of charge. The AI Platform quota policy does limit some of these operations.
Resource | Free operations |
---|---|
models | create, get, list, delete |
versions | create, get, list, delete, setDefault |
jobs | get, list, cancel |
operations | get, list, cancel, delete |
Google Cloud costs
If you store images to be analyzed in Cloud Storage or use other Google Cloud resources in tandem with Vertex AI, then you will also be billed for the use of those services.
To view your current billing status in the Google Cloud console, including usage and your current bill, see the Billing page . For more details about managing your account, see the Cloud Billing Documentation or Billing and Payments Support .
What's next
- Read the Vertex AI documentation .
- Learn about Vertex AI solutions and use cases
.
Request a custom quote
With Google Cloud's pay-as-you-go pricing, you only pay for the services you use. Connect with our sales team to get a custom quote for your organization.Contact sales