Amazon Bedrock Custom Model Import now generally available

Favorite Today, we’re pleased to announce the general availability (GA) of Amazon Bedrock Custom Model Import. This feature empowers customers to import and use their customized models alongside existing foundation models (FMs) through a single, unified API. Whether leveraging fine-tuned models like Meta Llama, Mistral Mixtral, and IBM Granite, or

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Shared by AWS Machine Learning October 26, 2024

Implement Amazon SageMaker domain cross-Region disaster recovery using custom Amazon EFS instances

Favorite Amazon SageMaker is a cloud-based machine learning (ML) platform within the AWS ecosystem that offers developers a seamless and convenient way to build, train, and deploy ML models. Extensively used by data scientists and ML engineers across various industries, this robust tool provides high availability and uninterrupted access for

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Shared by AWS Machine Learning October 26, 2024

Automate fine-tuning of Llama 3.x models with the new visual designer for Amazon SageMaker Pipelines

Favorite You can now create an end-to-end workflow to train, fine tune, evaluate, register, and deploy generative AI models with the visual designer for Amazon SageMaker Pipelines. SageMaker Pipelines is a serverless workflow orchestration service purpose-built for foundation model operations (FMOps). It accelerates your generative AI journey from prototype to

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Shared by AWS Machine Learning October 26, 2024

Generative AI foundation model training on Amazon SageMaker

Favorite To stay competitive, businesses across industries use foundation models (FMs) to transform their applications. Although FMs offer impressive out-of-the-box capabilities, achieving a true competitive edge often requires deep model customization through pre-training or fine-tuning. However, these approaches demand advanced AI expertise, high performance compute, fast storage access and can

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Shared by AWS Machine Learning October 26, 2024

Boost post-call analytics with Amazon Q in QuickSight

Favorite In today’s customer-centric business world, providing exceptional customer service is crucial for success. Contact centers play a vital role in shaping customer experiences, and analyzing post-call interactions can provide valuable insights to improve agent performance, identify areas for improvement, and enhance overall customer satisfaction. Amazon Web Services (AWS) has

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Shared by AWS Machine Learning October 26, 2024

Next-generation learning experience using Amazon Bedrock and Anthropic’s Claude: Innovation from Classworks

Favorite This post is co-written with Jerry Henley, Hans Buchheim and Roy Gunter from Classworks. Classworks is an online teacher and student platform that includes academic screening, progress monitoring, and specially designed instruction for reading and math for grades K–12. Classworks’s unique ability to ingest student assessment data from various

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Shared by AWS Machine Learning October 26, 2024

Unlocking generative AI for enterprises: How SnapLogic powers their low-code Agent Creator using Amazon Bedrock

Favorite This post is cowritten with Greg Benson, Aaron Kesler and David Dellsperger from SnapLogic. The landscape of enterprise application development is undergoing a seismic shift with the advent of generative AI. SnapLogic, a leader in generative integration and automation, has introduced the industry’s first low-code generative AI development platform,

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Shared by AWS Machine Learning October 26, 2024