Integrate QnABot on AWS with ServiceNow

Favorite Do your employees wait for hours on the telephone to open an IT ticket? Do they wait for an agent to triage an issue, which sometimes only requires restarting the computer? Providing excellent IT support is crucial for any organization, but legacy systems have relied heavily on human agents

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Shared by AWS Machine Learning February 6, 2024

How HSR.health is limiting risks of disease spillover from animals to humans using Amazon SageMaker geospatial capabilities

Favorite This is a guest post co-authored by Ajay K Gupta, Jean Felipe Teotonio and Paul A Churchyard from HSR.health. HSR.health is a geospatial health risk analytics firm whose vision is that global health challenges are solvable through human ingenuity and the focused and accurate application of data analytics. In

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Shared by AWS Machine Learning February 5, 2024

Announcing support for Llama 2 and Mistral models and streaming responses in Amazon SageMaker Canvas

Favorite Launched in 2021, Amazon SageMaker Canvas is a visual, point-and-click service for building and deploying machine learning (ML) models without the need to write any code. Ready-to-use Foundation Models (FMs) available in SageMaker Canvas enable customers to use generative AI for tasks such as content generation and summarization. We

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Shared by AWS Machine Learning February 5, 2024

Getting started with Amazon Titan Text Embeddings

Favorite Embeddings play a key role in natural language processing (NLP) and machine learning (ML). Text embedding refers to the process of transforming text into numerical representations that reside in a high-dimensional vector space. This technique is achieved through the use of ML algorithms that enable the understanding of the

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Shared by AWS Machine Learning February 1, 2024

Designing generative AI workloads for resilience

Favorite Resilience plays a pivotal role in the development of any workload, and generative AI workloads are no different. There are unique considerations when engineering generative AI workloads through a resilience lens. Understanding and prioritizing resilience is crucial for generative AI workloads to meet organizational availability and business continuity requirements.

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Shared by AWS Machine Learning February 1, 2024