Remove Accountability Remove APIs Remove Personalization Remove Transportation
article thumbnail

Develop generative AI applications to improve teaching and learning experiences

AWS Machine Learning

Generative AI and natural language programming (NLP) models have great potential to enhance teaching and learning by generating personalized learning content and providing engaging learning experiences for students. For our example, a teacher inputs the Kids and Bicycle Safety guidelines from the United States Department of Transportation.

APIs 105
article thumbnail

Build well-architected IDP solutions with a custom lens – Part 2: Security

AWS Machine Learning

All of the AWS AI services (for example, Amazon Textract , Amazon Comprehend , or Amazon Comprehend Medical ) used in IDP solutions are fully managed AI services where AWS secures their physical infrastructure, API endpoints, OS, and application code, and handles service resilience and failover within a given region.

APIs 84
Insiders

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

article thumbnail

Best practices for building secure applications with Amazon Transcribe

AWS Machine Learning

Examples of such information are personally identifiable information (PII), personal health information (PHI), and payment card industry (PCI) data. Both HTTP/2 and WebSockets streaming connections are established over Transport Layer Security (TLS), which is a widely accepted cryptographic protocol. We recommend using TLS 1.2

article thumbnail

Automate caption creation and search for images at enterprise scale using generative AI and Amazon Kendra

AWS Machine Learning

We demonstrate CDE using simple examples and provide a step-by-step guide for you to experience CDE in an Amazon Kendra index in your own AWS account. After ingestion, images can be searched via the Amazon Kendra search console, API, or SDK. However, we can use CDE for a wider range of use cases.

article thumbnail

Advanced RAG patterns on Amazon SageMaker

AWS Machine Learning

medium instance to demonstrate deploying LLMs via SageMaker JumpStart, which can be accessed through a SageMaker-generated API endpoint. Before you get started with the solution, create an AWS account. This identity is called the AWS account root user. We use an ml.t3.medium

article thumbnail

Gemma is now available in Amazon SageMaker JumpStart 

AWS Machine Learning

If you also account for the antenna, it brings up the total height to 443 meters, or 1,454 feet', 'role': 'assistant'}, {'content': 'Some people need to pilot an aircraft above it and need to know.nSo what is the answer in feet?' Set personal goals: Set achievable targets, such as learning five new words per week.

Benchmark 108
article thumbnail

11 Best AI Chatbots for Sales and Support in 2021

JivoChat

And 40% of consumers don’t care whether it’s a chatbot or a person providing customer service. Personalized experiences. Because chatbot software collects data on site visitors and records transcripts of chats, you have access to a wealth of information that can help you personalize your marketing and messaging. Integrations.