处理使用案例 - Amazon Bedrock

本文属于机器翻译版本。若本译文内容与英语原文存在差异,则一律以英文原文为准。

处理使用案例

利用 Amazon Bedrock 数据自动化功能,您可以通过命令行界面(CLI)处理文档、图像、音频和视频。对于每种模态,工作流都包括创建项目、调用分析和检索结果。

选择与您的首选方法对应的选项卡,然后按照以下步骤操作:

Documents

从 W2 中提取数据

带有标准字段的样本 W2 表单,展示布局和要提取的数据字段。

包含个人身份信息的护照样本

处理 W2 表单时,示例架构如下所示:

{ "class": "W2TaxForm", "description": "Simple schema for extracting key information from W2 tax forms", "properties": { "employerName": { "type": "string", "inferenceType": "explicit", "instruction": "The employer's company name" }, "employeeSSN": { "type": "string", "inferenceType": "explicit", "instruction": "The employee's Social Security Number (SSN)" }, "employeeName": { "type": "string", "inferenceType": "explicit", "instruction": "The employee's full name" }, "wagesAndTips": { "type": "number", "inferenceType": "explicit", "instruction": "Wages, tips, other compensation (Box 1)" }, "federalIncomeTaxWithheld": { "type": "number", "inferenceType": "explicit", "instruction": "Federal income tax withheld (Box 2)" }, "taxYear": { "type": "string", "inferenceType": "explicit", "instruction": "The tax year for this W2 form" } } }

为处理 W2 所调用的命令如下所示:

aws bedrock-data-automation-runtime invoke-data-automation-async \ --input-configuration '{ "s3Uri": "s3://w2-processing-bucket-301678011486/input/W2.png" }' \ --output-configuration '{ "s3Uri": "s3://w2-processing-bucket-301678011486/output/" }' \ --data-automation-configuration '{ "dataAutomationProjectArn": "Amazon Resource Name (ARN)", "stage": "LIVE" }' \ --data-automation-profile-arn "Amazon Resource Name (ARN):data-automation-profile/default"

预期的输出示例是:

{ "documentType": "W2TaxForm", "extractedData": { "employerName": "The Big Company", "employeeSSN": "123-45-6789", "employeeName": "Jane Doe", "wagesAndTips": 48500.00, "federalIncomeTaxWithheld": 6835.00, "taxYear": "2014" }, "confidence": { "employerName": 0.99, "employeeSSN": 0.97, "employeeName": 0.99, "wagesAndTips": 0.98, "federalIncomeTaxWithheld": 0.97, "taxYear": 0.99 }, "metadata": { "processingTimestamp": "2025-07-23T23:15:30Z", "documentId": "w2-12345", "modelId": "amazon.titan-document-v1", "pageCount": 1 } }
Images

旅游广告样本

样本图片,展示用户如何从广告中提取信息。

用于旅游广告的示例架构如下所示:

{ "class": "TravelAdvertisement", "description": "Schema for extracting information from travel advertisement images", "properties": { "destination": { "type": "string", "inferenceType": "explicit", "instruction": "The name of the travel destination being advertised" }, "tagline": { "type": "string", "inferenceType": "explicit", "instruction": "The main promotional text or tagline in the advertisement" }, "landscapeType": { "type": "string", "inferenceType": "explicit", "instruction": "The type of landscape shown (e.g., mountains, beach, forest, etc.)" }, "waterFeatures": { "type": "string", "inferenceType": "explicit", "instruction": "Description of any water features visible in the image (ocean, lake, river, etc.)" }, "dominantColors": { "type": "string", "inferenceType": "explicit", "instruction": "The dominant colors present in the image" }, "advertisementType": { "type": "string", "inferenceType": "explicit", "instruction": "The type of travel advertisement (e.g., destination promotion, tour package, etc.)" } } }

为处理旅游广告所调用的命令如下所示:

aws bedrock-data-automation-runtime invoke-data-automation-async \ --input-configuration '{ "s3Uri": "s3://travel-ads-bucket-301678011486/input/TravelAdvertisement.jpg" }' \ --output-configuration '{ "s3Uri": "s3://travel-ads-bucket-301678011486/output/" }' \ --data-automation-configuration '{ "dataAutomationProjectArn": "Amazon Resource Name (ARN)", "stage": "LIVE" }' \ --data-automation-profile-arn "Amazon Resource Name (ARN):data-automation-profile/default"

预期的输出示例是:

{ "documentType": "TravelAdvertisement", "extractedData": { "destination": "Kauai", "tagline": "Travel to KAUAI", "landscapeType": "Coastal mountains with steep cliffs and valleys", "waterFeatures": "Turquoise ocean with white surf along the coastline", "dominantColors": "Green, blue, turquoise, brown, white", "advertisementType": "Destination promotion" }, "confidence": { "destination": 0.98, "tagline": 0.99, "landscapeType": 0.95, "waterFeatures": 0.97, "dominantColors": 0.96, "advertisementType": 0.92 }, "metadata": { "processingTimestamp": "2025-07-23T23:45:30Z", "documentId": "travel-ad-12345", "modelId": "amazon.titan-image-v1", "imageWidth": 1920, "imageHeight": 1080 } }
Audio

转录电话通话

用于电话呼叫的示例架构如下所示:

{ "class": "AudioRecording", "description": "Schema for extracting information from AWS customer call recordings", "properties": { "callType": { "type": "string", "inferenceType": "explicit", "instruction": "The type of call (e.g., technical support, account management, consultation)" }, "participants": { "type": "string", "inferenceType": "explicit", "instruction": "The number and roles of participants in the call" }, "mainTopics": { "type": "string", "inferenceType": "explicit", "instruction": "The main topics or AWS services discussed during the call" }, "customerIssues": { "type": "string", "inferenceType": "explicit", "instruction": "Any customer issues or pain points mentioned during the call" }, "actionItems": { "type": "string", "inferenceType": "explicit", "instruction": "Action items or next steps agreed upon during the call" }, "callDuration": { "type": "string", "inferenceType": "explicit", "instruction": "The duration of the call" }, "callSummary": { "type": "string", "inferenceType": "explicit", "instruction": "A brief summary of the entire call" } } }

为处理电话通话所调用的命令如下所示:

aws bedrock-data-automation-runtime invoke-data-automation-async \ --input-configuration '{ "s3Uri": "s3://audio-analysis-bucket-301678011486/input/AWS_TCA-Call-Recording-2.wav" }' \ --output-configuration '{ "s3Uri": "s3://audio-analysis-bucket-301678011486/output/" }' \ --data-automation-configuration '{ "dataAutomationProjectArn": "Amazon Resource Name (ARN)", "stage": "LIVE" }' \ --data-automation-profile-arn "Amazon Resource Name (ARN):data-automation-profile/default"

预期的输出示例是:

{ "documentType": "AudioRecording", "extractedData": { "callType": "Technical consultation", "participants": "3 participants: AWS Solutions Architect, AWS Technical Account Manager, and Customer IT Director", "mainTopics": "AWS Bedrock implementation, data processing pipelines, model fine-tuning, and cost optimization", "customerIssues": "Integration challenges with existing ML infrastructure, concerns about latency for real-time processing, questions about data security compliance", "actionItems": [ "AWS team to provide documentation on Bedrock data processing best practices", "Customer to share their current ML architecture diagrams", "Schedule follow-up meeting to review implementation plan", "AWS to provide cost estimation for proposed solution" ], "callDuration": "45 minutes and 23 seconds", "callSummary": "Technical consultation call between AWS team and customer regarding implementation of AWS Bedrock for their machine learning workloads. Discussion covered integration approaches, performance optimization, security considerations, and next steps for implementation planning." }, "confidence": { "callType": 0.94, "participants": 0.89, "mainTopics": 0.92, "customerIssues": 0.87, "actionItems": 0.85, "callDuration": 0.99, "callSummary": 0.93 }, "metadata": { "processingTimestamp": "2025-07-24T00:30:45Z", "documentId": "audio-12345", "modelId": "amazon.titan-audio-v1", "audioDuration": "00:45:23", "audioFormat": "WAV", "sampleRate": "44.1 kHz" }, "transcript": { "segments": [ { "startTime": "00:00:03", "endTime": "00:00:10", "speaker": "Speaker 1", "text": "Hello everyone, thank you for joining today's call about implementing AWS Bedrock for your machine learning workloads." }, { "startTime": "00:00:12", "endTime": "00:00:20", "speaker": "Speaker 2", "text": "Thanks for having us. We're really interested in understanding how Bedrock can help us streamline our document processing pipeline." }, { "startTime": "00:00:22", "endTime": "00:00:35", "speaker": "Speaker 3", "text": "Yes, and specifically we'd like to discuss integration with our existing systems and any potential latency concerns for real-time processing requirements." } // Additional transcript segments would continue here ] } }
Video

处理视频

用于视频的示例架构如下所示:

{ "class": "VideoContent", "description": "Schema for extracting information from video content", "properties": { "title": { "type": "string", "inferenceType": "explicit", "instruction": "The title or name of the video content" }, "contentType": { "type": "string", "inferenceType": "explicit", "instruction": "The type of content (e.g., tutorial, competition, documentary, advertisement)" }, "mainSubject": { "type": "string", "inferenceType": "explicit", "instruction": "The main subject or focus of the video" }, "keyPersons": { "type": "string", "inferenceType": "explicit", "instruction": "Key people appearing in the video (hosts, participants, etc.)" }, "keyScenes": { "type": "string", "inferenceType": "explicit", "instruction": "Description of important scenes or segments in the video" }, "audioElements": { "type": "string", "inferenceType": "explicit", "instruction": "Description of notable audio elements (music, narration, dialogue)" }, "summary": { "type": "string", "inferenceType": "explicit", "instruction": "A brief summary of the video content" } } }

为处理视频所调用的命令如下所示:

aws bedrock-data-automation-runtime invoke-data-automation-async \ --input-configuration '{ "s3Uri": "s3://video-analysis-bucket-301678011486/input/MakingTheCut.mp4", "assetProcessingConfiguration": { "video": { "segmentConfiguration": { "timestampSegment": { "startTimeMillis": 0, "endTimeMillis": 300000 } } } } }' \ --output-configuration '{ "s3Uri": "s3://video-analysis-bucket-301678011486/output/" }' \ --data-automation-configuration '{ "dataAutomationProjectArn": "Amazon Resource Name (ARN)", "stage": "LIVE" }' \ --data-automation-profile-arn "Amazon Resource Name (ARN):data-automation-profile/default"

预期的输出示例是:

{ "documentType": "VideoContent", "extractedData": { "title": "Making the Cut", "contentType": "Fashion design competition", "mainSubject": "Fashion designers competing to create the best clothing designs", "keyPersons": "Heidi Klum, Tim Gunn, and various fashion designer contestants", "keyScenes": [ "Introduction of the competition and contestants", "Design challenge announcement", "Designers working in their studios", "Runway presentation of designs", "Judges' critique and elimination decision" ], "audioElements": "Background music, host narration, contestant interviews, and design feedback discussions", "summary": "An episode of 'Making the Cut' fashion competition where designers compete in a challenge to create innovative designs. The episode includes the challenge announcement, design process, runway presentation, and judging." }, "confidence": { "title": 0.99, "contentType": 0.95, "mainSubject": 0.92, "keyPersons": 0.88, "keyScenes": 0.90, "audioElements": 0.87, "summary": 0.94 }, "metadata": { "processingTimestamp": "2025-07-24T00:15:30Z", "documentId": "video-12345", "modelId": "amazon.titan-video-v1", "videoDuration": "00:45:23", "analyzedSegment": "00:00:00 - 00:05:00", "resolution": "1920x1080" }, "transcript": { "segments": [ { "startTime": "00:00:05", "endTime": "00:00:12", "speaker": "Heidi Klum", "text": "Welcome to Making the Cut, where we're searching for the next great global fashion brand." }, { "startTime": "00:00:15", "endTime": "00:00:25", "speaker": "Tim Gunn", "text": "Designers, for your first challenge, you'll need to create a look that represents your brand and can be sold worldwide." } // Additional transcript segments would continue here ] } }