Remove 2012 Remove AI Remove Cloud Computing
article thumbnail

Integrate generative AI capabilities into Microsoft Office using Amazon Bedrock

AWS Machine Learning Blog

Generative AI is rapidly transforming the modern workplace, offering unprecedented capabilities that augment how we interact with text and data. By harnessing the latest advancements in generative AI, we empower employees to unlock new levels of efficiency and creativity within the tools they already use every day.

AWS 115
article thumbnail

Combine keyword and semantic search for text and images using Amazon Bedrock and Amazon OpenSearch Service

Flipboard

OpenSearch Service can help you deploy and operate your search infrastructure with native vector database capabilities delivering as low as single-digit millisecond latencies for searches across billions of vectors, making it ideal for real-time AI applications. His area of focus includes DevOps, machine learning, MLOps, and generative AI.

AWS 149
professionals

Sign Up for our Newsletter

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

article thumbnail

Transforming financial analysis with CreditAI on Amazon Bedrock: Octus’s journey with AWS

AWS Machine Learning Blog

The intersection of AI and financial analysis presents a compelling opportunity to transform how investment professionals access and use credit intelligence, leading to more efficient decision-making processes and better risk management outcomes. The use of multiple external cloud providers complicated DevOps, support, and budgeting.

AWS 113
article thumbnail

Linux Foundation quietly became open source’s sprawling kingmaker

Dataconomy

This collective investment is crucial as businesses face a growing array of regulations, including the EU AI Act and Cyber Resilience Act. OpenStack, an open source cloud computing platform, transitioned to the OpenInfra Foundation in 2012 before rebranding.

article thumbnail

Structural Evolutions in Data

O'Reilly Media

Cloud computing? It progressed from “raw compute and storage” to “reimplementing key services in push-button fashion” to “becoming the backbone of AI work”—all under the umbrella of “renting time and storage on someone else’s computers.”

Hadoop 137
article thumbnail

Configure cross-account access of Amazon Redshift clusters in Amazon SageMaker Studio using VPC peering

AWS Machine Learning Blog

With cloud computing, as compute power and data became more available, machine learning (ML) is now making an impact across every industry and is a core part of every business and industry. She helps key customer accounts on their AI and ML journey. On the Select trusted entity page, select Custom trust policy.

article thumbnail

Securing MLflow in AWS: Fine-grained access control with AWS native services

AWS Machine Learning Blog

A common approach involves separate accounts dedicated to different phases of the AI/ML workflow (experimentation, development, and production). Chris Fregly is a Principal Specialist Solution Architect for AI and machine learning at Amazon Web Services (AWS) based in San Francisco, California.

AWS 98