Invoke Anthropic Claude on Amazon Bedrock using the Invoke Model API - Amazon Bedrock

Invoke Anthropic Claude on Amazon Bedrock using the Invoke Model API

The following code examples show how to send a text message to Anthropic Claude, using the Invoke Model API.

.NET
AWS SDK for .NET
Note

There's more on GitHub. Find the complete example and learn how to set up and run in the AWS Code Examples Repository.

Use the Invoke Model API to send a text message.

// Use the native inference API to send a text message to Anthropic Claude. using System; using System.IO; using System.Text.Json; using System.Text.Json.Nodes; using Amazon; using Amazon.BedrockRuntime; using Amazon.BedrockRuntime.Model; // Create a Bedrock Runtime client in the AWS Region you want to use. var client = new AmazonBedrockRuntimeClient(RegionEndpoint.USEast1); // Set the model ID, e.g., Claude 3 Haiku. var modelId = "anthropic.claude-3-haiku-20240307-v1:0"; // Define the user message. var userMessage = "Describe the purpose of a 'hello world' program in one line."; //Format the request payload using the model's native structure. var nativeRequest = JsonSerializer.Serialize(new { anthropic_version = "bedrock-2023-05-31", max_tokens = 512, temperature = 0.5, messages = new[] { new { role = "user", content = userMessage } } }); // Create a request with the model ID and the model's native request payload. var request = new InvokeModelRequest() { ModelId = modelId, Body = new MemoryStream(System.Text.Encoding.UTF8.GetBytes(nativeRequest)), ContentType = "application/json" }; try { // Send the request to the Bedrock Runtime and wait for the response. var response = await client.InvokeModelAsync(request); // Decode the response body. var modelResponse = await JsonNode.ParseAsync(response.Body); // Extract and print the response text. var responseText = modelResponse["content"]?[0]?["text"] ?? ""; Console.WriteLine(responseText); } catch (AmazonBedrockRuntimeException e) { Console.WriteLine($"ERROR: Can't invoke '{modelId}'. Reason: {e.Message}"); throw; }
  • For API details, see InvokeModel in AWS SDK for .NET API Reference.

Go
SDK for Go V2
Note

There's more on GitHub. Find the complete example and learn how to set up and run in the AWS Code Examples Repository.

Invoke the Anthropic Claude 2 foundation model to generate text.

// Each model provider has their own individual request and response formats. // For the format, ranges, and default values for Anthropic Claude, refer to: // https://docs.aws.amazon.com/bedrock/latest/userguide/model-parameters-claude.html type ClaudeRequest struct { Prompt string `json:"prompt"` MaxTokensToSample int `json:"max_tokens_to_sample"` Temperature float64 `json:"temperature,omitempty"` StopSequences []string `json:"stop_sequences,omitempty"` } type ClaudeResponse struct { Completion string `json:"completion"` } // Invokes Anthropic Claude on Amazon Bedrock to run an inference using the input // provided in the request body. func (wrapper InvokeModelWrapper) InvokeClaude(prompt string) (string, error) { modelId := "anthropic.claude-v2" // Anthropic Claude requires enclosing the prompt as follows: enclosedPrompt := "Human: " + prompt + "\n\nAssistant:" body, err := json.Marshal(ClaudeRequest{ Prompt: enclosedPrompt, MaxTokensToSample: 200, Temperature: 0.5, StopSequences: []string{"\n\nHuman:"}, }) if err != nil { log.Fatal("failed to marshal", err) } output, err := wrapper.BedrockRuntimeClient.InvokeModel(context.TODO(), &bedrockruntime.InvokeModelInput{ ModelId: aws.String(modelId), ContentType: aws.String("application/json"), Body: body, }) if err != nil { ProcessError(err, modelId) } var response ClaudeResponse if err := json.Unmarshal(output.Body, &response); err != nil { log.Fatal("failed to unmarshal", err) } return response.Completion, nil }
  • For API details, see InvokeModel in AWS SDK for Go API Reference.

Java
SDK for Java 2.x
Note

There's more on GitHub. Find the complete example and learn how to set up and run in the AWS Code Examples Repository.

Use the Invoke Model API to send a text message.

// Use the native inference API to send a text message to Anthropic Claude. import org.json.JSONObject; import org.json.JSONPointer; import software.amazon.awssdk.auth.credentials.DefaultCredentialsProvider; import software.amazon.awssdk.core.SdkBytes; import software.amazon.awssdk.core.exception.SdkClientException; import software.amazon.awssdk.regions.Region; import software.amazon.awssdk.services.bedrockruntime.BedrockRuntimeClient; public class InvokeModel { public static String invokeModel() { // Create a Bedrock Runtime client in the AWS Region you want to use. // Replace the DefaultCredentialsProvider with your preferred credentials provider. var client = BedrockRuntimeClient.builder() .credentialsProvider(DefaultCredentialsProvider.create()) .region(Region.US_EAST_1) .build(); // Set the model ID, e.g., Claude 3 Haiku. var modelId = "anthropic.claude-3-haiku-20240307-v1:0"; // The InvokeModel API uses the model's native payload. // Learn more about the available inference parameters and response fields at: // https://docs.aws.amazon.com/bedrock/latest/userguide/model-parameters-anthropic-claude-messages.html var nativeRequestTemplate = """ { "anthropic_version": "bedrock-2023-05-31", "max_tokens": 512, "temperature": 0.5, "messages": [{ "role": "user", "content": "{{prompt}}" }] }"""; // Define the prompt for the model. var prompt = "Describe the purpose of a 'hello world' program in one line."; // Embed the prompt in the model's native request payload. String nativeRequest = nativeRequestTemplate.replace("{{prompt}}", prompt); try { // Encode and send the request to the Bedrock Runtime. var response = client.invokeModel(request -> request .body(SdkBytes.fromUtf8String(nativeRequest)) .modelId(modelId) ); // Decode the response body. var responseBody = new JSONObject(response.body().asUtf8String()); // Retrieve the generated text from the model's response. var text = new JSONPointer("/content/0/text").queryFrom(responseBody).toString(); System.out.println(text); return text; } catch (SdkClientException e) { System.err.printf("ERROR: Can't invoke '%s'. Reason: %s", modelId, e.getMessage()); throw new RuntimeException(e); } } public static void main(String[] args) { invokeModel(); } }
  • For API details, see InvokeModel in AWS SDK for Java 2.x API Reference.

JavaScript
SDK for JavaScript (v3)
Note

There's more on GitHub. Find the complete example and learn how to set up and run in the AWS Code Examples Repository.

Use the Invoke Model API to send a text message.

// Copyright Amazon.com, Inc. or its affiliates. All Rights Reserved. // SPDX-License-Identifier: Apache-2.0 import { fileURLToPath } from "url"; import { FoundationModels } from "../../config/foundation_models.js"; import { BedrockRuntimeClient, InvokeModelCommand, InvokeModelWithResponseStreamCommand, } from "@aws-sdk/client-bedrock-runtime"; /** * @typedef {Object} ResponseContent * @property {string} text * * @typedef {Object} MessagesResponseBody * @property {ResponseContent[]} content * * @typedef {Object} Delta * @property {string} text * * @typedef {Object} Message * @property {string} role * * @typedef {Object} Chunk * @property {string} type * @property {Delta} delta * @property {Message} message */ /** * Invokes Anthropic Claude 3 using the Messages API. * * To learn more about the Anthropic Messages API, go to: * https://docs.aws.amazon.com/bedrock/latest/userguide/model-parameters-anthropic-claude-messages.html * * @param {string} prompt - The input text prompt for the model to complete. * @param {string} [modelId] - The ID of the model to use. Defaults to "anthropic.claude-3-haiku-20240307-v1:0". */ export const invokeModel = async ( prompt, modelId = "anthropic.claude-3-haiku-20240307-v1:0", ) => { // Create a new Bedrock Runtime client instance. const client = new BedrockRuntimeClient({ region: "us-east-1" }); // Prepare the payload for the model. const payload = { anthropic_version: "bedrock-2023-05-31", max_tokens: 1000, messages: [ { role: "user", content: [{ type: "text", text: prompt }], }, ], }; // Invoke Claude with the payload and wait for the response. const command = new InvokeModelCommand({ contentType: "application/json", body: JSON.stringify(payload), modelId, }); const apiResponse = await client.send(command); // Decode and return the response(s) const decodedResponseBody = new TextDecoder().decode(apiResponse.body); /** @type {MessagesResponseBody} */ const responseBody = JSON.parse(decodedResponseBody); return responseBody.content[0].text; }; /** * Invokes Anthropic Claude 3 and processes the response stream. * * To learn more about the Anthropic Messages API, go to: * https://docs.aws.amazon.com/bedrock/latest/userguide/model-parameters-anthropic-claude-messages.html * * @param {string} prompt - The input text prompt for the model to complete. * @param {string} [modelId] - The ID of the model to use. Defaults to "anthropic.claude-3-haiku-20240307-v1:0". */ export const invokeModelWithResponseStream = async ( prompt, modelId = "anthropic.claude-3-haiku-20240307-v1:0", ) => { // Create a new Bedrock Runtime client instance. const client = new BedrockRuntimeClient({ region: "us-east-1" }); // Prepare the payload for the model. const payload = { anthropic_version: "bedrock-2023-05-31", max_tokens: 1000, messages: [ { role: "user", content: [{ type: "text", text: prompt }], }, ], }; // Invoke Claude with the payload and wait for the API to respond. const command = new InvokeModelWithResponseStreamCommand({ contentType: "application/json", body: JSON.stringify(payload), modelId, }); const apiResponse = await client.send(command); let completeMessage = ""; // Decode and process the response stream for await (const item of apiResponse.body) { /** @type Chunk */ const chunk = JSON.parse(new TextDecoder().decode(item.chunk.bytes)); const chunk_type = chunk.type; if (chunk_type === "content_block_delta") { const text = chunk.delta.text; completeMessage = completeMessage + text; process.stdout.write(text); } } // Return the final response return completeMessage; }; // Invoke the function if this file was run directly. if (process.argv[1] === fileURLToPath(import.meta.url)) { const prompt = 'Write a paragraph starting with: "Once upon a time..."'; const modelId = FoundationModels.CLAUDE_3_HAIKU.modelId; console.log(`Prompt: ${prompt}`); console.log(`Model ID: ${modelId}`); try { console.log("-".repeat(53)); const response = await invokeModel(prompt, modelId); console.log("\n" + "-".repeat(53)); console.log("Final structured response:"); console.log(response); } catch (err) { console.log(`\n${err}`); } }
  • For API details, see InvokeModel in AWS SDK for JavaScript API Reference.

PHP
SDK for PHP
Note

There's more on GitHub. Find the complete example and learn how to set up and run in the AWS Code Examples Repository.

Invoke the Anthropic Claude 2 foundation model to generate text.

public function invokeClaude($prompt) { # The different model providers have individual request and response formats. # For the format, ranges, and default values for Anthropic Claude, refer to: # https://docs.aws.amazon.com/bedrock/latest/userguide/model-parameters-claude.html $completion = ""; try { $modelId = 'anthropic.claude-v2'; # Claude requires you to enclose the prompt as follows: $prompt = "\n\nHuman: {$prompt}\n\nAssistant:"; $body = [ 'prompt' => $prompt, 'max_tokens_to_sample' => 200, 'temperature' => 0.5, 'stop_sequences' => ["\n\nHuman:"], ]; $result = $this->bedrockRuntimeClient->invokeModel([ 'contentType' => 'application/json', 'body' => json_encode($body), 'modelId' => $modelId, ]); $response_body = json_decode($result['body']); $completion = $response_body->completion; } catch (Exception $e) { echo "Error: ({$e->getCode()}) - {$e->getMessage()}\n"; } return $completion; }
  • For API details, see InvokeModel in AWS SDK for PHP API Reference.

Python
SDK for Python (Boto3)
Note

There's more on GitHub. Find the complete example and learn how to set up and run in the AWS Code Examples Repository.

Use the Invoke Model API to send a text message.

# Use the native inference API to send a text message to Anthropic Claude. import boto3 import json from botocore.exceptions import ClientError # Create a Bedrock Runtime client in the AWS Region of your choice. client = boto3.client("bedrock-runtime", region_name="us-east-1") # Set the model ID, e.g., Claude 3 Haiku. model_id = "anthropic.claude-3-haiku-20240307-v1:0" # Define the prompt for the model. prompt = "Describe the purpose of a 'hello world' program in one line." # Format the request payload using the model's native structure. native_request = { "anthropic_version": "bedrock-2023-05-31", "max_tokens": 512, "temperature": 0.5, "messages": [ { "role": "user", "content": [{"type": "text", "text": prompt}], } ], } # Convert the native request to JSON. request = json.dumps(native_request) try: # Invoke the model with the request. response = client.invoke_model(modelId=model_id, body=request) except (ClientError, Exception) as e: print(f"ERROR: Can't invoke '{model_id}'. Reason: {e}") exit(1) # Decode the response body. model_response = json.loads(response["body"].read()) # Extract and print the response text. response_text = model_response["content"][0]["text"] print(response_text)
  • For API details, see InvokeModel in AWS SDK for Python (Boto3) API Reference.

SAP ABAP
SDK for SAP ABAP
Note

There's more on GitHub. Find the complete example and learn how to set up and run in the AWS Code Examples Repository.

Invoke the Anthropic Claude 2 foundation model to generate text. This example uses features of /US2/CL_JSON which might not be available on some NetWeaver versions.

"Claude V2 Input Parameters should be in a format like this: * { * "prompt":"\n\nHuman:\\nTell me a joke\n\nAssistant:\n", * "max_tokens_to_sample":2048, * "temperature":0.5, * "top_k":250, * "top_p":1.0, * "stop_sequences":[] * } DATA: BEGIN OF ls_input, prompt TYPE string, max_tokens_to_sample TYPE /aws1/rt_shape_integer, temperature TYPE /aws1/rt_shape_float, top_k TYPE /aws1/rt_shape_integer, top_p TYPE /aws1/rt_shape_float, stop_sequences TYPE /aws1/rt_stringtab, END OF ls_input. "Leave ls_input-stop_sequences empty. ls_input-prompt = |\n\nHuman:\\n{ iv_prompt }\n\nAssistant:\n|. ls_input-max_tokens_to_sample = 2048. ls_input-temperature = '0.5'. ls_input-top_k = 250. ls_input-top_p = 1. "Serialize into JSON with /ui2/cl_json -- this assumes SAP_UI is installed. DATA(lv_json) = /ui2/cl_json=>serialize( data = ls_input pretty_name = /ui2/cl_json=>pretty_mode-low_case ). TRY. DATA(lo_response) = lo_bdr->invokemodel( iv_body = /aws1/cl_rt_util=>string_to_xstring( lv_json ) iv_modelid = 'anthropic.claude-v2' iv_accept = 'application/json' iv_contenttype = 'application/json' ). "Claude V2 Response format will be: * { * "completion": "Knock Knock...", * "stop_reason": "stop_sequence" * } DATA: BEGIN OF ls_response, completion TYPE string, stop_reason TYPE string, END OF ls_response. /ui2/cl_json=>deserialize( EXPORTING jsonx = lo_response->get_body( ) pretty_name = /ui2/cl_json=>pretty_mode-camel_case CHANGING data = ls_response ). DATA(lv_answer) = ls_response-completion. CATCH /aws1/cx_bdraccessdeniedex INTO DATA(lo_ex). WRITE / lo_ex->get_text( ). WRITE / |Don't forget to enable model access at https://console.aws.amazon.com/bedrock/home?#/modelaccess|. ENDTRY.

Invoke the Anthropic Claude 2 foundation model to generate text using L2 high level client.

TRY. DATA(lo_bdr_l2_claude) = /aws1/cl_bdr_l2_factory=>create_claude_2( lo_bdr ). " iv_prompt can contain a prompt like 'tell me a joke about Java programmers'. DATA(lv_answer) = lo_bdr_l2_claude->prompt_for_text( iv_prompt ). CATCH /aws1/cx_bdraccessdeniedex INTO DATA(lo_ex). WRITE / lo_ex->get_text( ). WRITE / |Don't forget to enable model access at https://console.aws.amazon.com/bedrock/home?#/modelaccess|. ENDTRY.
  • For API details, see InvokeModel in AWS SDK for SAP ABAP API reference.

For a complete list of AWS SDK developer guides and code examples, see Using this service with an AWS SDK. This topic also includes information about getting started and details about previous SDK versions.