Class: Google::Apis::MlV1::GoogleCloudMlV1TrainingInput
- Inherits:
-
Object
- Object
- Google::Apis::MlV1::GoogleCloudMlV1TrainingInput
- Includes:
- Core::Hashable, Core::JsonObjectSupport
- Defined in:
- generated/google/apis/ml_v1/classes.rb,
generated/google/apis/ml_v1/representations.rb,
generated/google/apis/ml_v1/representations.rb
Overview
Represents input parameters for a training job. When using the gcloud command to submit your training job, you can specify the input parameters as command-line arguments and/or in a YAML configuration file referenced from the --config command-line argument. For details, see the guide to submitting a training job.
Instance Attribute Summary collapse
-
#args ⇒ Array<String>
Optional.
-
#hyperparameters ⇒ Google::Apis::MlV1::GoogleCloudMlV1HyperparameterSpec
Represents a set of hyperparameters to optimize.
-
#job_dir ⇒ String
Optional.
-
#master_type ⇒ String
Optional.
-
#package_uris ⇒ Array<String>
Required.
-
#parameter_server_count ⇒ Fixnum
Optional.
-
#parameter_server_type ⇒ String
Optional.
-
#python_module ⇒ String
Required.
-
#python_version ⇒ String
Optional.
-
#region ⇒ String
Required.
-
#runtime_version ⇒ String
Optional.
-
#scale_tier ⇒ String
Required.
-
#worker_count ⇒ Fixnum
Optional.
-
#worker_type ⇒ String
Optional.
Instance Method Summary collapse
-
#initialize(**args) ⇒ GoogleCloudMlV1TrainingInput
constructor
A new instance of GoogleCloudMlV1TrainingInput.
-
#update!(**args) ⇒ Object
Update properties of this object.
Methods included from Core::JsonObjectSupport
Methods included from Core::Hashable
Constructor Details
#initialize(**args) ⇒ GoogleCloudMlV1TrainingInput
Returns a new instance of GoogleCloudMlV1TrainingInput
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# File 'generated/google/apis/ml_v1/classes.rb', line 1287 def initialize(**args) update!(**args) end |
Instance Attribute Details
#args ⇒ Array<String>
Optional. Command line arguments to pass to the program.
Corresponds to the JSON property args
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# File 'generated/google/apis/ml_v1/classes.rb', line 1102 def args @args end |
#hyperparameters ⇒ Google::Apis::MlV1::GoogleCloudMlV1HyperparameterSpec
Represents a set of hyperparameters to optimize.
Corresponds to the JSON property hyperparameters
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# File 'generated/google/apis/ml_v1/classes.rb', line 1107 def hyperparameters @hyperparameters end |
#job_dir ⇒ String
Optional. A Google Cloud Storage path in which to store training outputs
and other data needed for training. This path is passed to your TensorFlow
program as the '--job-dir' command-line argument. The benefit of specifying
this field is that Cloud ML validates the path for use in training.
Corresponds to the JSON property jobDir
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# File 'generated/google/apis/ml_v1/classes.rb', line 1115 def job_dir @job_dir end |
#master_type ⇒ String
Optional. Specifies the type of virtual machine to use for your training job's master worker. The following types are supported:
- standard
- A basic machine configuration suitable for training simple models with small to moderate datasets.
- large_model
- A machine with a lot of memory, specially suited for parameter servers when your model is large (having many hidden layers or layers with very large numbers of nodes).
- complex_model_s
- A machine suitable for the master and workers of the cluster when your model requires more computation than the standard machine can handle satisfactorily.
- complex_model_m
- A machine with roughly twice the number of cores and roughly double the memory of complex_model_s.
- complex_model_l
- A machine with roughly twice the number of cores and roughly double the memory of complex_model_m.
- standard_gpu
- A machine equivalent to standard that also includes a single NVIDIA Tesla K80 GPU. See more about using GPUs to train your model.
- complex_model_m_gpu
- A machine equivalent to complex_model_m that also includes four NVIDIA Tesla K80 GPUs.
- complex_model_l_gpu
- A machine equivalent to complex_model_l that also includes eight NVIDIA Tesla K80 GPUs.
- standard_p100
- A machine equivalent to standard that also includes a single NVIDIA Tesla P100 GPU.
- complex_model_m_p100
- A machine equivalent to complex_model_m that also includes four NVIDIA Tesla P100 GPUs.
- standard_v100
- A machine equivalent to standard that also includes a single NVIDIA Tesla V100 GPU. The availability of these GPUs is in the Beta launch stage.
- large_model_v100
- A machine equivalent to large_model that also includes a single NVIDIA Tesla V100 GPU. The availability of these GPUs is in the Beta launch stage.
- complex_model_m_v100
- A machine equivalent to complex_model_m that also includes four NVIDIA Tesla V100 GPUs. The availability of these GPUs is in the Beta launch stage.
- complex_model_l_v100
- A machine equivalent to complex_model_l that also includes eight NVIDIA Tesla V100 GPUs. The availability of these GPUs is in the Beta launch stage.
- cloud_tpu
- A TPU VM including one Cloud TPU. See more about using TPUs to train your model.
You must set this value when scaleTier
is set to CUSTOM
.
Corresponds to the JSON property masterType
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# File 'generated/google/apis/ml_v1/classes.rb', line 1209 def master_type @master_type end |
#package_uris ⇒ Array<String>
Required. The Google Cloud Storage location of the packages with
the training program and any additional dependencies.
The maximum number of package URIs is 100.
Corresponds to the JSON property packageUris
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# File 'generated/google/apis/ml_v1/classes.rb', line 1216 def package_uris @package_uris end |
#parameter_server_count ⇒ Fixnum
Optional. The number of parameter server replicas to use for the training
job. Each replica in the cluster will be of the type specified in
parameter_server_type
.
This value can only be used when scale_tier
is set to CUSTOM
.If you
set this value, you must also set parameter_server_type
.
Corresponds to the JSON property parameterServerCount
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# File 'generated/google/apis/ml_v1/classes.rb', line 1225 def parameter_server_count @parameter_server_count end |
#parameter_server_type ⇒ String
Optional. Specifies the type of virtual machine to use for your training
job's parameter server.
The supported values are the same as those described in the entry for
master_type
.
This value must be present when scaleTier
is set to CUSTOM
and
parameter_server_count
is greater than zero.
Corresponds to the JSON property parameterServerType
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# File 'generated/google/apis/ml_v1/classes.rb', line 1235 def parameter_server_type @parameter_server_type end |
#python_module ⇒ String
Required. The Python module name to run after installing the packages.
Corresponds to the JSON property pythonModule
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# File 'generated/google/apis/ml_v1/classes.rb', line 1240 def python_module @python_module end |
#python_version ⇒ String
Optional. The version of Python used in training. If not set, the default
version is '2.7'. Python '3.5' is available when runtime_version
is set
to '1.4' and above. Python '2.7' works with all supported runtime versions.
Corresponds to the JSON property pythonVersion
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# File 'generated/google/apis/ml_v1/classes.rb', line 1247 def python_version @python_version end |
#region ⇒ String
Required. The Google Compute Engine region to run the training job in.
See the available regions
for ML Engine services.
Corresponds to the JSON property region
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# File 'generated/google/apis/ml_v1/classes.rb', line 1254 def region @region end |
#runtime_version ⇒ String
Optional. The Google Cloud ML runtime version to use for training. If not
set, Google Cloud ML will choose a stable version, which is defined in the
documentation of runtime version list.
Corresponds to the JSON property runtimeVersion
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# File 'generated/google/apis/ml_v1/classes.rb', line 1261 def runtime_version @runtime_version end |
#scale_tier ⇒ String
Required. Specifies the machine types, the number of replicas for workers
and parameter servers.
Corresponds to the JSON property scaleTier
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# File 'generated/google/apis/ml_v1/classes.rb', line 1267 def scale_tier @scale_tier end |
#worker_count ⇒ Fixnum
Optional. The number of worker replicas to use for the training job. Each
replica in the cluster will be of the type specified in worker_type
.
This value can only be used when scale_tier
is set to CUSTOM
. If you
set this value, you must also set worker_type
.
Corresponds to the JSON property workerCount
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# File 'generated/google/apis/ml_v1/classes.rb', line 1275 def worker_count @worker_count end |
#worker_type ⇒ String
Optional. Specifies the type of virtual machine to use for your training
job's worker nodes.
The supported values are the same as those described in the entry for
masterType
.
This value must be present when scaleTier
is set to CUSTOM
and
workerCount
is greater than zero.
Corresponds to the JSON property workerType
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# File 'generated/google/apis/ml_v1/classes.rb', line 1285 def worker_type @worker_type end |
Instance Method Details
#update!(**args) ⇒ Object
Update properties of this object
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# File 'generated/google/apis/ml_v1/classes.rb', line 1292 def update!(**args) @args = args[:args] if args.key?(:args) @hyperparameters = args[:hyperparameters] if args.key?(:hyperparameters) @job_dir = args[:job_dir] if args.key?(:job_dir) @master_type = args[:master_type] if args.key?(:master_type) @package_uris = args[:package_uris] if args.key?(:package_uris) @parameter_server_count = args[:parameter_server_count] if args.key?(:parameter_server_count) @parameter_server_type = args[:parameter_server_type] if args.key?(:parameter_server_type) @python_module = args[:python_module] if args.key?(:python_module) @python_version = args[:python_version] if args.key?(:python_version) @region = args[:region] if args.key?(:region) @runtime_version = args[:runtime_version] if args.key?(:runtime_version) @scale_tier = args[:scale_tier] if args.key?(:scale_tier) @worker_count = args[:worker_count] if args.key?(:worker_count) @worker_type = args[:worker_type] if args.key?(:worker_type) end |