Run Prompt management code samples
To try out some code samples for Prompt management, choose the tab for your preferred method, and then follow the steps: The following code samples assume that you've set up your credentials to use the AWS API. If you haven't, refer to Getting started with the AWS API.
- Python
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Run the following code snippet to load the AWS SDK for Python (Boto3), create a client, and create a prompt that creates a music playlist using two variables (
genre
andnumber
) by making a CreatePrompt Agents for Amazon Bedrock build-time endpoint:# Create a prompt in Prompt management import boto3 # Create an Amazon Bedrock Agents client client = boto3.client(service_name="bedrock-agent") # Create the prompt response = client.create_prompt( name="MakePlaylist", description="My first prompt.", variants=[ { "name": "Variant1", "modelId": "amazon.titan-text-express-v1", "templateType": "TEXT", "inferenceConfiguration": { "text": { "temperature": 0.8 } }, "templateConfiguration": { "text": { "text": "Make me a {{genre}} playlist consisting of the following number of songs: {{number}}." } } } ] ) prompt_id = response.get("id")
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Run the following code snippet to see the prompt that you just created (alongside any other prompts in your account) to make a ListPrompts Agents for Amazon Bedrock build-time endpoint:
# List prompts that you've created client.list_prompts()
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You should see the ID of the prompt you created in the
id
field in the object in thepromptSummaries
field. Run the following code snippet to show information for the prompt that you created by making a GetPrompt Agents for Amazon Bedrock build-time endpoint:# Get information about the prompt that you created client.get_prompt(promptIdentifier=prompt_id)
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Create a version of the prompt and get its ID by running the following code snippet to make a CreatePromptVersion Agents for Amazon Bedrock build-time endpoint:
# Create a version of the prompt that you created response = client.create_prompt_version(promptIdentifier=prompt_id) prompt_version = response.get("version") prompt_version_arn = response.get("arn")
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View information about the prompt version that you just created, alongside information about the draft version, by running the following code snippet to make a ListPrompts Agents for Amazon Bedrock build-time endpoint:
# List versions of the prompt that you just created client.list_prompts(promptIdentifier=prompt_id)
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View information for the prompt version that you just created by running the following code snippet to make a GetPrompt Agents for Amazon Bedrock build-time endpoint:
# Get information about the prompt version that you created client.get_prompt( promptIdentifier=prompt_id, promptVersion=prompt_version )
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Test the prompt by adding it to a flow by following the steps at Run Amazon Bedrock Flows code samples. In the first step when you create the flow, run the following code snippet instead to use the prompt that you created instead of defining an inline prompt in the flow (replace the ARN of the prompt version in the
promptARN
field with the ARN of the version of the prompt that you created):# Import Python SDK and create client import boto3 client = boto3.client(service_name='bedrock-agent') FLOWS_SERVICE_ROLE = "arn:aws:iam::123456789012:role/MyPromptFlowsRole" # Flows service role that you created. For more information, see https://docs.aws.amazon.com/bedrock/latest/userguide/flows-permissions.html PROMPT_ARN = prompt_version_arn # ARN of the prompt that you created, retrieved programatically during creation. # Define each node # The input node validates that the content of the InvokeFlow request is a JSON object. input_node = { "type": "Input", "name": "FlowInput", "outputs": [ { "name": "document", "type": "Object" } ] } # This prompt node contains a prompt that you defined in Prompt management. # It validates that the input is a JSON object that minimally contains the fields "genre" and "number", which it will map to the prompt variables. # The output must be named "modelCompletion" and be of the type "String". prompt_node = { "type": "Prompt", "name": "MakePlaylist", "configuration": { "prompt": { "sourceConfiguration": { "resource": { "promptArn": "" } } } }, "inputs": [ { "name": "genre", "type": "String", "expression": "$.data.genre" }, { "name": "number", "type": "Number", "expression": "$.data.number" } ], "outputs": [ { "name": "modelCompletion", "type": "String" } ] } # The output node validates that the output from the last node is a string and returns it as is. The name must be "document". output_node = { "type": "Output", "name": "FlowOutput", "inputs": [ { "name": "document", "type": "String", "expression": "$.data" } ] } # Create connections between the nodes connections = [] # First, create connections between the output of the flow input node and each input of the prompt node for input in prompt_node["inputs"]: connections.append( { "name": "_".join([input_node["name"], prompt_node["name"], input["name"]]), "source": input_node["name"], "target": prompt_node["name"], "type": "Data", "configuration": { "data": { "sourceOutput": input_node["outputs"][0]["name"], "targetInput": input["name"] } } } ) # Then, create a connection between the output of the prompt node and the input of the flow output node connections.append( { "name": "_".join([prompt_node["name"], output_node["name"]]), "source": prompt_node["name"], "target": output_node["name"], "type": "Data", "configuration": { "data": { "sourceOutput": prompt_node["outputs"][0]["name"], "targetInput": output_node["inputs"][0]["name"] } } } ) # Create the flow from the nodes and connections client.create_flow( name="FlowCreatePlaylist", description="A flow that creates a playlist given a genre and number of songs to include in the playlist.", executionRoleArn=FLOWS_SERVICE_ROLE, definition={ "nodes": [input_node, prompt_node, output_node], "connections": connections } )
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Delete the prompt version that you just created by running the following code snippet to make a DeletePrompt Agents for Amazon Bedrock build-time endpoint:
# Delete the prompt version that you created client.delete_prompt( promptIdentifier=prompt_id, promptVersion=prompt_version )
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Fully delete the prompt that you just created by running the following code snippet to make a DeletePrompt Agents for Amazon Bedrock build-time endpoint:
# Delete the prompt that you created client.delete_prompt( promptIdentifier=prompt_id )
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