Panggil Amazon Titan Image di Amazon Bedrock untuk menghasilkan gambar - AWS SDKContoh Kode

Ada lebih banyak AWS SDK contoh yang tersedia di GitHub repo SDKContoh AWS Dokumen.

Terjemahan disediakan oleh mesin penerjemah. Jika konten terjemahan yang diberikan bertentangan dengan versi bahasa Inggris aslinya, utamakan versi bahasa Inggris.

Panggil Amazon Titan Image di Amazon Bedrock untuk menghasilkan gambar

Contoh kode berikut menunjukkan cara memanggil Amazon Titan Image di Amazon Bedrock untuk menghasilkan gambar.

Go
SDKuntuk Go V2
catatan

Ada lebih banyak tentang GitHub. Temukan contoh lengkapnya dan pelajari cara pengaturan dan menjalankannya di Repositori Contoh Kode AWS.

Buat gambar dengan Amazon Titan Image Generator.

import ( "context" "encoding/json" "log" "strings" "github.com/aws/aws-sdk-go-v2/aws" "github.com/aws/aws-sdk-go-v2/service/bedrockruntime" ) // InvokeModelWrapper encapsulates Amazon Bedrock actions used in the examples. // It contains a Bedrock Runtime client that is used to invoke foundation models. type InvokeModelWrapper struct { BedrockRuntimeClient *bedrockruntime.Client } type TitanImageRequest struct { TaskType string `json:"taskType"` TextToImageParams TextToImageParams `json:"textToImageParams"` ImageGenerationConfig ImageGenerationConfig `json:"imageGenerationConfig"` } type TextToImageParams struct { Text string `json:"text"` } type ImageGenerationConfig struct { NumberOfImages int `json:"numberOfImages"` Quality string `json:"quality"` CfgScale float64 `json:"cfgScale"` Height int `json:"height"` Width int `json:"width"` Seed int64 `json:"seed"` } type TitanImageResponse struct { Images []string `json:"images"` } // Invokes the Titan Image model to create an image using the input provided // in the request body. func (wrapper InvokeModelWrapper) InvokeTitanImage(ctx context.Context, prompt string, seed int64) (string, error) { modelId := "amazon.titan-image-generator-v1" body, err := json.Marshal(TitanImageRequest{ TaskType: "TEXT_IMAGE", TextToImageParams: TextToImageParams{ Text: prompt, }, ImageGenerationConfig: ImageGenerationConfig{ NumberOfImages: 1, Quality: "standard", CfgScale: 8.0, Height: 512, Width: 512, Seed: seed, }, }) if err != nil { log.Fatal("failed to marshal", err) } output, err := wrapper.BedrockRuntimeClient.InvokeModel(ctx, &bedrockruntime.InvokeModelInput{ ModelId: aws.String(modelId), ContentType: aws.String("application/json"), Body: body, }) if err != nil { ProcessError(err, modelId) } var response TitanImageResponse if err := json.Unmarshal(output.Body, &response); err != nil { log.Fatal("failed to unmarshal", err) } base64ImageData := response.Images[0] return base64ImageData, nil }
  • Untuk API detailnya, lihat InvokeModeldi AWS SDK for Go APIReferensi.

Java
SDKuntuk Java 2.x
catatan

Ada lebih banyak tentang GitHub. Temukan contoh lengkapnya dan pelajari cara pengaturan dan menjalankannya di Repositori Contoh Kode AWS.

Buat gambar dengan Amazon Titan Image Generator.

// Create an image with the Amazon Titan Image Generator. 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; import java.math.BigInteger; import java.security.SecureRandom; import static com.example.bedrockruntime.libs.ImageTools.displayImage; 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., Titan Image G1. var modelId = "amazon.titan-image-generator-v1"; // 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-titan-image.html var nativeRequestTemplate = """ { "taskType": "TEXT_IMAGE", "textToImageParams": { "text": "{{prompt}}" }, "imageGenerationConfig": { "seed": {{seed}} } }"""; // Define the prompt for the image generation. var prompt = "A stylized picture of a cute old steampunk robot"; // Get a random 31-bit seed for the image generation (max. 2,147,483,647). var seed = new BigInteger(31, new SecureRandom()); // Embed the prompt and seed in the model's native request payload. var nativeRequest = nativeRequestTemplate .replace("{{prompt}}", prompt) .replace("{{seed}}", seed.toString()); 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 image data from the model's response. var base64ImageData = new JSONPointer("/images/0").queryFrom(responseBody).toString(); return base64ImageData; } 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) { System.out.println("Generating image. This may take a few seconds..."); String base64ImageData = invokeModel(); displayImage(base64ImageData); } }
  • Untuk API detailnya, lihat InvokeModeldi AWS SDK for Java 2.x APIReferensi.

PHP
SDKuntuk PHP
catatan

Ada lebih banyak tentang GitHub. Temukan contoh lengkapnya dan pelajari cara pengaturan dan menjalankannya di Repositori Contoh Kode AWS.

Buat gambar dengan Amazon Titan Image Generator.

public function invokeTitanImage(string $prompt, int $seed) { // The different model providers have individual request and response formats. // For the format, ranges, and default values for Titan Image models refer to: // https://docs.aws.amazon.com/bedrock/latest/userguide/model-parameters-titan-image.html $base64_image_data = ""; try { $modelId = 'amazon.titan-image-generator-v1'; $request = json_encode([ 'taskType' => 'TEXT_IMAGE', 'textToImageParams' => [ 'text' => $prompt ], 'imageGenerationConfig' => [ 'numberOfImages' => 1, 'quality' => 'standard', 'cfgScale' => 8.0, 'height' => 512, 'width' => 512, 'seed' => $seed ] ]); $result = $this->bedrockRuntimeClient->invokeModel([ 'contentType' => 'application/json', 'body' => $request, 'modelId' => $modelId, ]); $response_body = json_decode($result['body']); $base64_image_data = $response_body->images[0]; } catch (Exception $e) { echo "Error: ({$e->getCode()}) - {$e->getMessage()}\n"; } return $base64_image_data; }
  • Untuk API detailnya, lihat InvokeModeldi AWS SDK for PHP APIReferensi.

Python
SDKuntuk Python (Boto3)
catatan

Ada lebih banyak tentang GitHub. Temukan contoh lengkapnya dan pelajari cara pengaturan dan menjalankannya di Repositori Contoh Kode AWS.

Buat gambar dengan Amazon Titan Image Generator.

# Use the native inference API to create an image with Amazon Titan Image Generator import base64 import boto3 import json import os import random # 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., Titan Image Generator G1. model_id = "amazon.titan-image-generator-v1" # Define the image generation prompt for the model. prompt = "A stylized picture of a cute old steampunk robot." # Generate a random seed. seed = random.randint(0, 2147483647) # Format the request payload using the model's native structure. native_request = { "taskType": "TEXT_IMAGE", "textToImageParams": {"text": prompt}, "imageGenerationConfig": { "numberOfImages": 1, "quality": "standard", "cfgScale": 8.0, "height": 512, "width": 512, "seed": seed, }, } # Convert the native request to JSON. request = json.dumps(native_request) # Invoke the model with the request. response = client.invoke_model(modelId=model_id, body=request) # Decode the response body. model_response = json.loads(response["body"].read()) # Extract the image data. base64_image_data = model_response["images"][0] # Save the generated image to a local folder. i, output_dir = 1, "output" if not os.path.exists(output_dir): os.makedirs(output_dir) while os.path.exists(os.path.join(output_dir, f"titan_{i}.png")): i += 1 image_data = base64.b64decode(base64_image_data) image_path = os.path.join(output_dir, f"titan_{i}.png") with open(image_path, "wb") as file: file.write(image_data) print(f"The generated image has been saved to {image_path}")
  • Untuk API detailnya, lihat InvokeModel AWSSDKReferensi Python (Boto3). API