Watson Studio environments compute usage
Compute usage is calculated by the number of capacity unit hours (CUH) consumed by an active environment runtime in Watson Studio. Watson Studio plans govern how you are billed monthly for the resources you consume.
Feature | Lite | Professional | Standard (legacy) | Enterprise (legacy) |
---|---|---|---|---|
Processing usage | 10 CUH per month |
Unlimited CUH billed for usage per month |
10 CUH per month + pay for more |
5000 CUH per month + pay for more |
Capacity units per hour for notebooks
Capacity type | Language | Capacity units per hour |
---|---|---|
1 vCPU and 4 GB RAM | Python R |
0.5 |
2 vCPU and 8 GB RAM | Python R |
1 |
4 vCPU and 16 GB RAM | Python R |
2 |
8 vCPU and 32 GB RAM | Python R |
4 |
16 vCPU and 64 GB RAM | Python R |
8 |
Driver: 1 vCPU and 4 GB RAM; 1 Executor: 1 vCPU and 4 GB RAM | Spark with Python Spark with R |
1 CUH per additional executor is 0.5 |
Driver: 1 vCPU and 4 GB RAM; 1 Executor: 2 vCPU and 8 GB RAM | Spark with Python Spark with R |
1.5 CUH per additional executor is 1 |
Driver: 2 vCPU and 8 GB RAM; 1 Executor: 1 vCPU and 4 GB RAM; | Spark with Python Spark with R |
1.5 CUH per additional executor is 0.5 |
Driver: 2 vCPU and 8 GB RAM; 1 Executor: 2 vCPU and 8 GB RAM; | Spark with Python Spark with R |
2 CUH per additional executor is 1 |
Driver: 3 vCPU and 12 GB RAM; 1 Executor: 3 vCPU and 12 GB RAM; | Spark with Python Spark with R |
2 CUH per additional executor is 1 |
The rate of capacity units per hour consumed is determined for:
-
Default Python or R environments by the hardware size and the number of users in a project using one or more runtimes
For example: The
IBM Runtime 23.1 on Python 3.10 XS
with 2 vCPUs will consume 1 CUH if it runs for one hour. If you have a project with 7 users working on notebooks 8 hours a day, 5 days a week, all using theIBM Runtime 23.1 on Python 3.10 XS
environment, and everyone shuts down their runtimes when they leave in the evening, runtime consumption is5 x 7 x 8 = 280 CUH per week
.The CUH calculation becomes more complex when different environments are used to run notebooks in the same project and if users have multiple active runtimes, all consuming their own CUHs. Additionally, there might be notebooks, which are scheduled to run during off-hours, and long-running jobs, likewise consuming CUHs.
-
Default Spark environments by the hardware configuration size of the driver, and the number of executors and their size.
Capacity units per hour for notebooks with Decision Optimization
The rate of capacity units per hour consumed is determined by the hardware size and the price for Decision Optimization.
Capacity type | Language | Capacity units per hour |
---|---|---|
1 vCPU and 4 GB RAM | Python + Decision Optimization | 0.5 + 5 = 5.5 |
2 vCPU and 8 GB RAM | Python + Decision Optimization | 1 + 5 = 6 |
4 vCPU and 16 GB RAM | Python + Decision Optimization | 2 + 5 = 7 |
8 vCPU and 32 GB RAM | Python + Decision Optimization | 4 + 5 = 9 |
16 vCPU and 64 GB RAM | Python + Decision Optimization | 8 + 5 = 13 |
Capacity units per hour for notebooks with Watson Natural Language Processing
The rate of capacity units per hour consumed is determined by the hardware size and the price for Watson Natural Language Processing.
Capacity type | Language | Capacity units per hour |
---|---|---|
1 vCPU and 4 GB RAM | Python + Watson Natural Language Processing | 0.5 + 5 = 5.5 |
2 vCPU and 8 GB RAM | Python + Watson Natural Language Processing | 1 + 5 = 6 |
4 vCPU and 16 GB RAM | Python + Watson Natural Language Processing | 2 + 5 = 7 |
8 vCPU and 32 GB RAM | Python + Watson Natural Language Processing | 4 + 5 = 9 |
16 vCPU and 64 GB RAM | Python + Watson Natural Language Processing | 8 + 5 = 13 |
Capacity units per hour for SPSS Modeler flows
Name | Capacity type | Capacity units per hour |
---|---|---|
Default SPSS Modeler S |
2 vCPU and 8 GB RAM | 1 |
Default SPSS Modeler M |
4 vCPU and 16 GB RAM | 2 |
Default SPSS Modeler L |
6 vCPU and 24 GB RAM | 3 |
Capacity units per hour for Data Refinery and Data Refinery flows
Name | Capacity type | Capacity units per hour |
---|---|---|
Default Data Refinery XS runtime | 3 vCPU and 12 GB RAM | 1.5 |
Default Spark 3.4 & R 4.2 | 2 Executors each: 1 vCPU and 4 GB RAM; Driver: 1 vCPU and 4 GB RAM | 1.5 |
Capacity units per hour for RStudio
Name | Capacity type | Capacity units per hour |
---|---|---|
Default RStudio XS | 2 vCPU and 8 GB RAM | 1 |
Default RStudio M | 8 vCPU and 32 GB RAM | 4 |
Default RStudio L | 16 vCPU and 64 GB RAM | 8 |
Capacity units per hour for GPU environments
Capacity type | GPUs | Language | Capacity units per hour |
---|---|---|---|
1 x NVIDIA Tesla V100 | 1 | Python with GPU | 68 |
2 x NVIDIA Tesla V100 | 2 | Python with GPU | 136 |
Runtime capacity limit
You are notified when you're about to reach the monthly runtime capacity limit for your Watson Studio service plan. When this happens, you can:
- Stop active runtimes you don't need.
- Upgrade your service plan. For up-to-date information, see theServices catalog page for Watson Studio.
Track runtime usage for a project
You can view the environment runtimes that are currently active in a project, and monitor usage for the project from the project's Environments page.
Track runtime usage for an account
The CUH consumed by the active runtimes in a project are billed to the account that the project creator has selected in his or her profile settings at the time the project is created. This account can be the account of the project creator, or another account that the project creator has access to. If other users are added to the project and use runtimes, their usage is also billed against the account that the project creator chose at the time of project creation.
You can track the runtime usage for an account on the Environment Runtimes page if you are the IBM Cloud account owner or administrator.
To view the total runtime usage across all of the projects and see how much of your plan you have currently used, choose Administration > Environment runtimes.
A list of the active runtimes billed to your account is displayed. You can see who created the runtimes, when, and for which projects, as well as the capacity units that were consumed by the active runtimes at the time you view the list.
Learn more
Parent topic: Managing compute resources