A single worker instance. This tier is suitable for learning how to use
Cloud ML, and for experimenting with new models using small datasets.
BASIC = 1;
BASIC_GPU
A single worker instance with a K80 GPU.
BASIC_GPU = 4;
BASIC_GPU_VALUE
A single worker instance with a K80 GPU.
BASIC_GPU = 4;
BASIC_TPU
A single worker instance with a Cloud TPU.
BASIC_TPU = 5;
BASIC_TPU_VALUE
A single worker instance with a Cloud TPU.
BASIC_TPU = 5;
BASIC_VALUE
A single worker instance. This tier is suitable for learning how to use
Cloud ML, and for experimenting with new models using small datasets.
BASIC = 1;
CUSTOM
The CUSTOM tier is not a set tier, but rather enables you to use your
own cluster specification. When you use this tier, set values to
configure your processing cluster according to these guidelines:
You must set TrainingInput.masterType to specify the type
of machine to use for your master node. This is the only required
setting.
You may set TrainingInput.workerCount to specify the number of
workers to use. If you specify one or more workers, you must also
set TrainingInput.workerType to specify the type of machine to use
for your worker nodes.
You may set TrainingInput.parameterServerCount to specify the
number of parameter servers to use. If you specify one or more
parameter servers, you must also set
TrainingInput.parameterServerType to specify the type of machine to
use for your parameter servers.
Note that all of your workers must use the same machine type, which can
be different from your parameter server type and master type. Your
parameter servers must likewise use the same machine type, which can be
different from your worker type and master type.
CUSTOM = 6;
CUSTOM_VALUE
The CUSTOM tier is not a set tier, but rather enables you to use your
own cluster specification. When you use this tier, set values to
configure your processing cluster according to these guidelines:
You must set TrainingInput.masterType to specify the type
of machine to use for your master node. This is the only required
setting.
You may set TrainingInput.workerCount to specify the number of
workers to use. If you specify one or more workers, you must also
set TrainingInput.workerType to specify the type of machine to use
for your worker nodes.
You may set TrainingInput.parameterServerCount to specify the
number of parameter servers to use. If you specify one or more
parameter servers, you must also set
TrainingInput.parameterServerType to specify the type of machine to
use for your parameter servers.
Note that all of your workers must use the same machine type, which can
be different from your parameter server type and master type. Your
parameter servers must likewise use the same machine type, which can be
different from your worker type and master type.
CUSTOM = 6;
PREMIUM_1
A large number of workers with many parameter servers.
PREMIUM_1 = 3;
PREMIUM_1_VALUE
A large number of workers with many parameter servers.
[[["Easy to understand","easyToUnderstand","thumb-up"],["Solved my problem","solvedMyProblem","thumb-up"],["Other","otherUp","thumb-up"]],[["Hard to understand","hardToUnderstand","thumb-down"],["Incorrect information or sample code","incorrectInformationOrSampleCode","thumb-down"],["Missing the information/samples I need","missingTheInformationSamplesINeed","thumb-down"],["Other","otherDown","thumb-down"]],["Last updated 2024-12-16 UTC."],[],[]]