AgentsforBedrock / Client / get_knowledge_base
get_knowledge_base#
- AgentsforBedrock.Client.get_knowledge_base(**kwargs)#
Gets information about a knoweldge base.
See also: AWS API Documentation
Request Syntax
response = client.get_knowledge_base( knowledgeBaseId='string' )
- Parameters:
knowledgeBaseId (string) –
[REQUIRED]
The unique identifier of the knowledge base for which to get information.
- Return type:
dict
- Returns:
Response Syntax
{ 'knowledgeBase': { 'createdAt': datetime(2015, 1, 1), 'description': 'string', 'failureReasons': [ 'string', ], 'knowledgeBaseArn': 'string', 'knowledgeBaseConfiguration': { 'type': 'VECTOR', 'vectorKnowledgeBaseConfiguration': { 'embeddingModelArn': 'string' } }, 'knowledgeBaseId': 'string', 'name': 'string', 'roleArn': 'string', 'status': 'CREATING'|'ACTIVE'|'DELETING'|'UPDATING'|'FAILED'|'DELETE_UNSUCCESSFUL', 'storageConfiguration': { 'opensearchServerlessConfiguration': { 'collectionArn': 'string', 'fieldMapping': { 'metadataField': 'string', 'textField': 'string', 'vectorField': 'string' }, 'vectorIndexName': 'string' }, 'pineconeConfiguration': { 'connectionString': 'string', 'credentialsSecretArn': 'string', 'fieldMapping': { 'metadataField': 'string', 'textField': 'string' }, 'namespace': 'string' }, 'rdsConfiguration': { 'credentialsSecretArn': 'string', 'databaseName': 'string', 'fieldMapping': { 'metadataField': 'string', 'primaryKeyField': 'string', 'textField': 'string', 'vectorField': 'string' }, 'resourceArn': 'string', 'tableName': 'string' }, 'redisEnterpriseCloudConfiguration': { 'credentialsSecretArn': 'string', 'endpoint': 'string', 'fieldMapping': { 'metadataField': 'string', 'textField': 'string', 'vectorField': 'string' }, 'vectorIndexName': 'string' }, 'type': 'OPENSEARCH_SERVERLESS'|'PINECONE'|'REDIS_ENTERPRISE_CLOUD'|'RDS' }, 'updatedAt': datetime(2015, 1, 1) } }
Response Structure
(dict) –
knowledgeBase (dict) –
Contains details about the knowledge base.
createdAt (datetime) –
The time at which the knowledge base was created.
description (string) –
The description of the knowledge base.
failureReasons (list) –
A list of reasons that the API operation on the knowledge base failed.
(string) –
knowledgeBaseArn (string) –
The Amazon Resource Name (ARN) of the knowledge base.
knowledgeBaseConfiguration (dict) –
Contains details about the embeddings configuration of the knowledge base.
type (string) –
The type of data that the data source is converted into for the knowledge base.
vectorKnowledgeBaseConfiguration (dict) –
Contains details about the embeddings model that’sused to convert the data source.
embeddingModelArn (string) –
The Amazon Resource Name (ARN) of the model used to create vector embeddings for the knowledge base.
knowledgeBaseId (string) –
The unique identifier of the knowledge base.
name (string) –
The name of the knowledge base.
roleArn (string) –
The Amazon Resource Name (ARN) of the IAM role with permissions to invoke API operations on the knowledge base.
status (string) –
The status of the knowledge base. The following statuses are possible:
CREATING – The knowledge base is being created.
ACTIVE – The knowledge base is ready to be queried.
DELETING – The knowledge base is being deleted.
UPDATING – The knowledge base is being updated.
FAILED – The knowledge base API operation failed.
storageConfiguration (dict) –
Contains details about the storage configuration of the knowledge base.
opensearchServerlessConfiguration (dict) –
Contains the storage configuration of the knowledge base in Amazon OpenSearch Service.
collectionArn (string) –
The Amazon Resource Name (ARN) of the OpenSearch Service vector store.
fieldMapping (dict) –
Contains the names of the fields to which to map information about the vector store.
metadataField (string) –
The name of the field in which Amazon Bedrock stores metadata about the vector store.
textField (string) –
The name of the field in which Amazon Bedrock stores the raw text from your data. The text is split according to the chunking strategy you choose.
vectorField (string) –
The name of the field in which Amazon Bedrock stores the vector embeddings for your data sources.
vectorIndexName (string) –
The name of the vector store.
pineconeConfiguration (dict) –
Contains the storage configuration of the knowledge base in Pinecone.
connectionString (string) –
The endpoint URL for your index management page.
credentialsSecretArn (string) –
The Amazon Resource Name (ARN) of the secret that you created in Secrets Manager that is linked to your Pinecone API key.
fieldMapping (dict) –
Contains the names of the fields to which to map information about the vector store.
metadataField (string) –
The name of the field in which Amazon Bedrock stores metadata about the vector store.
textField (string) –
The name of the field in which Amazon Bedrock stores the raw text from your data. The text is split according to the chunking strategy you choose.
namespace (string) –
The namespace to be used to write new data to your database.
rdsConfiguration (dict) –
Contains details about the storage configuration of the knowledge base in Amazon RDS. For more information, see Create a vector index in Amazon RDS.
credentialsSecretArn (string) –
The Amazon Resource Name (ARN) of the secret that you created in Secrets Manager that is linked to your Amazon RDS database.
databaseName (string) –
The name of your Amazon RDS database.
fieldMapping (dict) –
Contains the names of the fields to which to map information about the vector store.
metadataField (string) –
The name of the field in which Amazon Bedrock stores metadata about the vector store.
primaryKeyField (string) –
The name of the field in which Amazon Bedrock stores the ID for each entry.
textField (string) –
The name of the field in which Amazon Bedrock stores the raw text from your data. The text is split according to the chunking strategy you choose.
vectorField (string) –
The name of the field in which Amazon Bedrock stores the vector embeddings for your data sources.
resourceArn (string) –
The Amazon Resource Name (ARN) of the vector store.
tableName (string) –
The name of the table in the database.
redisEnterpriseCloudConfiguration (dict) –
Contains the storage configuration of the knowledge base in Redis Enterprise Cloud.
credentialsSecretArn (string) –
The Amazon Resource Name (ARN) of the secret that you created in Secrets Manager that is linked to your Redis Enterprise Cloud database.
endpoint (string) –
The endpoint URL of the Redis Enterprise Cloud database.
fieldMapping (dict) –
Contains the names of the fields to which to map information about the vector store.
metadataField (string) –
The name of the field in which Amazon Bedrock stores metadata about the vector store.
textField (string) –
The name of the field in which Amazon Bedrock stores the raw text from your data. The text is split according to the chunking strategy you choose.
vectorField (string) –
The name of the field in which Amazon Bedrock stores the vector embeddings for your data sources.
vectorIndexName (string) –
The name of the vector index.
type (string) –
The vector store service in which the knowledge base is stored.
updatedAt (datetime) –
The time at which the knowledge base was last updated.
Exceptions
AgentsforBedrock.Client.exceptions.ThrottlingException
AgentsforBedrock.Client.exceptions.AccessDeniedException
AgentsforBedrock.Client.exceptions.ValidationException
AgentsforBedrock.Client.exceptions.InternalServerException
AgentsforBedrock.Client.exceptions.ResourceNotFoundException