Use AWS Bedrock to access various foundation models on AWS. Manage your access to models on the portal. See all the AWS Bedrock foundational models. Not all Bedrock models support all features. See the supported features for each model.Documentation Index
Fetch the complete documentation index at: https://agno-v2-shaloo-ai-support-link.mintlify.app/llms.txt
Use this file to discover all available pages before exploring further.
For async support with AWS Bedrock, you need to install
aioboto3:- For a Mistral model with generally good performance, look at
mistral.mistral-large-2402-v1:0. - You can play with Amazon Nova models. Use
amazon.nova-pro-v1:0for general purpose tasks. - For Claude models, see our Claude integration.
Authentication
AWS Bedrock supports three authentication methods:Method 1: Access Key and Secret Key (Recommended)
Set yourAWS_ACCESS_KEY_ID, AWS_SECRET_ACCESS_KEY, and AWS_REGION environment variables.
Get your keys from here.
Method 2: SSO Authentication
Use SSO authentication by leveraging your current AWS profile’s authentication:Method 3: Boto3 Session
Use a pre-configured boto3 Session for advanced authentication scenarios (including SSO, role assumption, etc.):The authentication methods are checked in this order: Session → API Key → Access Key/Secret Key. The first available method will be used.
Example
UseAwsBedrock with your Agent:
View more examples here.
Parameters
| Parameter | Type | Default | Description |
|---|---|---|---|
id | str | "mistral.mistral-small-2402-v1:0" | The specific model ID used for generating responses. |
name | str | "AwsBedrock" | The name identifier for the AWS Bedrock agent. |
provider | str | "AwsBedrock" | The provider of the model. |
aws_access_key_id | Optional[str] | None | The AWS access key ID for authentication. Can also be set via AWS_ACCESS_KEY_ID environment variable. |
aws_secret_access_key | Optional[str] | None | The AWS secret access key for authentication. Can also be set via AWS_SECRET_ACCESS_KEY environment variable. |
aws_region | Optional[str] | None | The AWS region to use for API requests. Can also be set via AWS_REGION environment variable. |
session | Optional[Session] | None | A boto3 Session object for advanced authentication scenarios (SSO, role assumption, etc.). |
aws_sso_auth | Optional[bool] | False | Removes the need for an access and secret access key by leveraging the current profile’s authentication. |
max_tokens | Optional[int] | None | The maximum number of tokens to generate in the response. |
temperature | Optional[float] | None | The sampling temperature to use, between 0 and 2. Higher values like 0.8 make the output more random, while lower values like 0.2 make it more focused and deterministic. |
top_p | Optional[float] | None | The nucleus sampling parameter. The model considers the results of the tokens with top_p probability mass. |
stop_sequences | Optional[List[str]] | None | A list of sequences where the API will stop generating further tokens. |
request_params | Optional[Dict[str, Any]] | None | Additional parameters for the request, provided as a dictionary. |
client_params | Optional[Dict[str, Any]] | None | Additional client parameters for initializing the AwsBedrock client, provided as a dictionary. |
client | Optional[AwsClient] | None | A pre-configured AWS client instance. |
AwsBedrock is a subclass of the Model class and has access to the same params.