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Information about a single training query run for the model.
The start time of this training run.
The evaluation metrics over training/eval data that were computed at the end of training.
Inheritance
builtins.object > google.protobuf.pyext._message.CMessage > builtins.object > google.protobuf.message.Message > TrainingRunClasses
IterationResult
Information about a single iteration of the training run.
Time taken to run the iteration in milliseconds.
Loss computed on the eval data at the end of iteration.
Information about top clusters for clustering models.
TrainingOptions
Protocol buffer.
Type of loss function used during training run.
L1 regularization coefficient.
When early_stop is true, stops training when accuracy improvement is less than ‘min_relative_progress’. Used only for iterative training algorithms.
Whether to stop early when the loss doesn’t improve significantly any more (compared to min_relative_progress). Used only for iterative training algorithms.
The data split type for training and evaluation, e.g. RANDOM.
The column to split data with. This column won’t be used as a feature. 1. When data_split_method is CUSTOM, the corresponding column should be boolean. The rows with true value tag are eval data, and the false are training data. 2. When data_split_method is SEQ, the first DATA_SPLIT_EVAL_FRACTION rows (from smallest to largest) in the corresponding column are used as training data, and the rest are eval data. It respects the order in Orderable data types: https://cloud.google.com/bigquery/docs/reference/standard- sql/data-types#data-type-properties
Specifies the initial learning rate for the line search learn rate strategy.
Distance type for clustering models.
[Beta] Google Cloud Storage URI from which the model was imported. Only applicable for imported models.
The method used to initialize the centroids for kmeans algorithm.
Methods
ByteSize
Returns the size of the message in bytes.
Clear
Clears the message.
ClearExtension
Clears a message field.
ClearField
Clears a message field.
CopyFrom
Copies a protocol message into the current message.
DiscardUnknownFields
Discards the unknown fields.
FindInitializationErrors
Finds unset required fields.
FromString
Creates new method instance from given serialized data.
HasExtension
Checks if a message field is set.
HasField
Checks if a message field is set.
IsInitialized
Checks if all required fields of a protocol message are set.
ListFields
Lists all set fields of a message.
MergeFrom
Merges a protocol message into the current message.
MergeFromString
Merges a serialized message into the current message.
ParseFromString
Parses a serialized message into the current message.
RegisterExtension
Registers an extension with the current message.
SerializePartialToString
Serializes the message to a string, even if it isn't initialized.
SerializeToString
Serializes the message to a string, only for initialized messages.
SetInParent
Sets the has bit of the given field in its parent message.
UnknownFields
Parse unknown field set
WhichOneof
Returns the name of the field set inside a oneof, or None if no field is set.
__getstate__
__getstate__()
Support the pickle protocol.
__setstate__
__setstate__(state)
Support the pickle protocol.