amazon-bedrock-agent-samples and sample-document-processing-with-amazon-bedrock-data-automation

Tool A provides example notebooks and scripts for using Amazon Bedrock Agents, while Tool B offers samples specifically for document processing with Amazon Bedrock Data Automation, making them complements for different aspects of Bedrock application development.

Maintenance 13/25
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Stars: 789
Forks: 266
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Commits (30d): 1
Language: Python
License: Apache-2.0
Stars: 28
Forks: 21
Downloads:
Commits (30d): 0
Language: Jupyter Notebook
License: MIT-0
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No Package No Dependents

About amazon-bedrock-agent-samples

awslabs/amazon-bedrock-agent-samples

Example Jupyter notebooks 📓 and code scripts 💻 for using Amazon Bedrock Agents 🤖 and its functionalities

This project provides practical examples for building AI-powered assistants that can automate complex tasks and interact with various services. It takes your high-level goals or customer inquiries and processes them through an AI agent (or team of agents) to deliver a completed workflow or a relevant response. This is for AI solution architects, machine learning engineers, and developers looking to implement advanced AI agents using Amazon Bedrock.

AI Automation Workflow Orchestration Intelligent Agents Customer Service Automation DevOps Automation

About sample-document-processing-with-amazon-bedrock-data-automation

aws-samples/sample-document-processing-with-amazon-bedrock-data-automation

This repository contains examples for customers to get started using Amazon Bedrock Data Automation. The samples focus mainly on document processing use cases

This project helps operations managers, data analysts, or business intelligence teams automatically extract specific information from various documents like mortgage applications or medical claims. You input unstructured documents, images, video, or audio, and it outputs structured data like summaries, extracted fields, or transcriptions. This allows for faster data processing and integration into existing business systems.

document-processing data-extraction mortgage-lending medical-claims business-process-automation

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