create_data_source_from_redshift
(**kwargs)¶Creates a DataSource
from a database hosted on an Amazon Redshift cluster. A DataSource
references data that can be used to perform either CreateMLModel
, CreateEvaluation
, or CreateBatchPrediction
operations.
CreateDataSourceFromRedshift
is an asynchronous operation. In response toCreateDataSourceFromRedshift
, Amazon Machine Learning (Amazon ML) immediately returns and sets theDataSource
status toPENDING
. After theDataSource
is created and ready for use, Amazon ML sets theStatus
parameter toCOMPLETED
.DataSource
inCOMPLETED
orPENDING
states can be used to perform onlyCreateMLModel
,CreateEvaluation
, orCreateBatchPrediction
operations.
If Amazon ML can't accept the input source, it sets the Status
parameter to FAILED
and includes an error message in the Message
attribute of the GetDataSource
operation response.
The observations should be contained in the database hosted on an Amazon Redshift cluster and should be specified by a SelectSqlQuery
query. Amazon ML executes an Unload
command in Amazon Redshift to transfer the result set of the SelectSqlQuery
query to S3StagingLocation
.
After the DataSource
has been created, it's ready for use in evaluations and batch predictions. If you plan to use the DataSource
to train an MLModel
, the DataSource
also requires a recipe. A recipe describes how each input variable will be used in training an MLModel
. Will the variable be included or excluded from training? Will the variable be manipulated; for example, will it be combined with another variable or will it be split apart into word combinations? The recipe provides answers to these questions.
You can't change an existing datasource, but you can copy and modify the settings from an existing Amazon Redshift datasource to create a new datasource. To do so, call GetDataSource
for an existing datasource and copy the values to a CreateDataSource
call. Change the settings that you want to change and make sure that all required fields have the appropriate values.
See also: AWS API Documentation
Request Syntax
response = client.create_data_source_from_redshift(
DataSourceId='string',
DataSourceName='string',
DataSpec={
'DatabaseInformation': {
'DatabaseName': 'string',
'ClusterIdentifier': 'string'
},
'SelectSqlQuery': 'string',
'DatabaseCredentials': {
'Username': 'string',
'Password': 'string'
},
'S3StagingLocation': 'string',
'DataRearrangement': 'string',
'DataSchema': 'string',
'DataSchemaUri': 'string'
},
RoleARN='string',
ComputeStatistics=True|False
)
[REQUIRED]
A user-supplied ID that uniquely identifies the DataSource
.
DataSource
.[REQUIRED]
The data specification of an Amazon Redshift DataSource
:
DatabaseName
- The name of the Amazon Redshift database.ClusterIdentifier
- The unique ID for the Amazon Redshift cluster.Datasource
.SelectSqlQuery
query is stored in this location.DataSchema
.DataSchemaUri
is specified.DataSource
. Sample - "{\"splitting\":{\"percentBegin\":10,\"percentEnd\":60}}"
Describes the DatabaseName
and ClusterIdentifier
for an Amazon Redshift DataSource
.
The name of a database hosted on an Amazon Redshift cluster.
The ID of an Amazon Redshift cluster.
Describes the SQL Query to execute on an Amazon Redshift database for an Amazon Redshift DataSource
.
Describes AWS Identity and Access Management (IAM) credentials that are used connect to the Amazon Redshift database.
A username to be used by Amazon Machine Learning (Amazon ML)to connect to a database on an Amazon Redshift cluster. The username should have sufficient permissions to execute the RedshiftSelectSqlQuery
query. The username should be valid for an Amazon Redshift USER.
A password to be used by Amazon ML to connect to a database on an Amazon Redshift cluster. The password should have sufficient permissions to execute a RedshiftSelectSqlQuery
query. The password should be valid for an Amazon Redshift USER.
Describes an Amazon S3 location to store the result set of the SelectSqlQuery
query.
A JSON string that represents the splitting and rearrangement processing to be applied to a DataSource
. If the DataRearrangement
parameter is not provided, all of the input data is used to create the Datasource
.
There are multiple parameters that control what data is used to create a datasource:
percentBegin
Use percentBegin
to indicate the beginning of the range of the data used to create the Datasource. If you do not include percentBegin
and percentEnd
, Amazon ML includes all of the data when creating the datasource.percentEnd
Use percentEnd
to indicate the end of the range of the data used to create the Datasource. If you do not include percentBegin
and percentEnd
, Amazon ML includes all of the data when creating the datasource.complement
The complement
parameter instructs Amazon ML to use the data that is not included in the range of percentBegin
to percentEnd
to create a datasource. The complement
parameter is useful if you need to create complementary datasources for training and evaluation. To create a complementary datasource, use the same values for percentBegin
and percentEnd
, along with the complement
parameter. For example, the following two datasources do not share any data, and can be used to train and evaluate a model. The first datasource has 25 percent of the data, and the second one has 75 percent of the data. Datasource for evaluation: {"splitting":{"percentBegin":0, "percentEnd":25}}
Datasource for training: {"splitting":{"percentBegin":0, "percentEnd":25, "complement":"true"}}
strategy
To change how Amazon ML splits the data for a datasource, use the strategy
parameter. The default value for the strategy
parameter is sequential
, meaning that Amazon ML takes all of the data records between the percentBegin
and percentEnd
parameters for the datasource, in the order that the records appear in the input data. The following two DataRearrangement
lines are examples of sequentially ordered training and evaluation datasources: Datasource for evaluation: {"splitting":{"percentBegin":70, "percentEnd":100, "strategy":"sequential"}}
Datasource for training: {"splitting":{"percentBegin":70, "percentEnd":100, "strategy":"sequential", "complement":"true"}}
To randomly split the input data into the proportions indicated by the percentBegin and percentEnd parameters, set the strategy
parameter to random
and provide a string that is used as the seed value for the random data splitting (for example, you can use the S3 path to your data as the random seed string). If you choose the random split strategy, Amazon ML assigns each row of data a pseudo-random number between 0 and 100, and then selects the rows that have an assigned number between percentBegin
and percentEnd
. Pseudo-random numbers are assigned using both the input seed string value and the byte offset as a seed, so changing the data results in a different split. Any existing ordering is preserved. The random splitting strategy ensures that variables in the training and evaluation data are distributed similarly. It is useful in the cases where the input data may have an implicit sort order, which would otherwise result in training and evaluation datasources containing non-similar data records. The following two DataRearrangement
lines are examples of non-sequentially ordered training and evaluation datasources: Datasource for evaluation: {"splitting":{"percentBegin":70, "percentEnd":100, "strategy":"random", "randomSeed"="s3://my_s3_path/bucket/file.csv"}}
Datasource for training: {"splitting":{"percentBegin":70, "percentEnd":100, "strategy":"random", "randomSeed"="s3://my_s3_path/bucket/file.csv", "complement":"true"}}
A JSON string that represents the schema for an Amazon Redshift DataSource
. The DataSchema
defines the structure of the observation data in the data file(s) referenced in the DataSource
.
A DataSchema
is not required if you specify a DataSchemaUri
.
Define your DataSchema
as a series of key-value pairs. attributes
and excludedVariableNames
have an array of key-value pairs for their value. Use the following format to define your DataSchema
.
{ "version": "1.0",
"recordAnnotationFieldName": "F1",
"recordWeightFieldName": "F2",
"targetFieldName": "F3",
"dataFormat": "CSV",
"dataFileContainsHeader": true,
"attributes": [
{ "fieldName": "F1", "fieldType": "TEXT" }, { "fieldName": "F2", "fieldType": "NUMERIC" }, { "fieldName": "F3", "fieldType": "CATEGORICAL" }, { "fieldName": "F4", "fieldType": "NUMERIC" }, { "fieldName": "F5", "fieldType": "CATEGORICAL" }, { "fieldName": "F6", "fieldType": "TEXT" }, { "fieldName": "F7", "fieldType": "WEIGHTED_INT_SEQUENCE" }, { "fieldName": "F8", "fieldType": "WEIGHTED_STRING_SEQUENCE" } ],
"excludedVariableNames": [ "F6" ] }
Describes the schema location for an Amazon Redshift DataSource
.
[REQUIRED]
A fully specified role Amazon Resource Name (ARN). Amazon ML assumes the role on behalf of the user to create the following:
SelectSqlQuery
query on an Amazon Redshift clusterS3StagingLocation
DataSource
. The statistics are generated from the observation data referenced by a DataSource
. Amazon ML uses the statistics internally during MLModel
training. This parameter must be set to true
if the DataSource
needs to be used for MLModel
training.dict
Response Syntax
{
'DataSourceId': 'string'
}
Response Structure
(dict) --
Represents the output of a CreateDataSourceFromRedshift
operation, and is an acknowledgement that Amazon ML received the request.
The CreateDataSourceFromRedshift
operation is asynchronous. You can poll for updates by using the GetBatchPrediction
operation and checking the Status
parameter.
DataSourceId (string) --
A user-supplied ID that uniquely identifies the datasource. This value should be identical to the value of the DataSourceID
in the request.
Exceptions
MachineLearning.Client.exceptions.InvalidInputException
MachineLearning.Client.exceptions.InternalServerException
MachineLearning.Client.exceptions.IdempotentParameterMismatchException