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📰 AWS Machine Learning

18 articles · Updated every 3 hours · View all reads

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AWS Machine Learning 📐 ML Fundamentals ⚡ AI Lesson 2w ago
Build a custom portal with embedded Amazon SageMaker AI MLflow Apps
In this post, you learn how to build a custom portal with embedded SageMaker AI MLflow Apps UI. You walk through the architecture pattern behind a React front e
AWS Machine Learning 📐 ML Fundamentals ⚡ AI Lesson 2w ago
Streamline external access to Amazon SageMaker MLflow using a REST API proxy
In this post, we demonstrate how to build a secure Flask-based MLflow proxy service that provides HTTPS access to Amazon SageMaker MLflow without requiring the
AWS Machine Learning 📐 ML Fundamentals ⚡ AI Lesson 2w ago
Process financial documents using Amazon Bedrock Data Automation
In this post, we explore how Amazon Bedrock Data Automation can accurately extract information from four common types of financial documents: bank statements, W
AWS Machine Learning 📐 ML Fundamentals ⚡ AI Lesson 1mo ago
How Miro uses Amazon Bedrock to boost software bug routing accuracy and improve time-to-resolution from days to hours
In this post, we dive deep into the architecture and techniques we used to improve Miro’s bug routing, achieving six times fewer team reassignments and five tim
AWS Machine Learning 📐 ML Fundamentals ⚡ AI Lesson 1mo ago
Secure short-term GPU capacity for ML workloads with EC2 Capacity Blocks for ML and SageMaker training plans
In this post, you will learn how to secure reserved GPU capacity for short-term workloads using Amazon Elastic Compute Cloud (Amazon EC2) Capacity Blocks for ML
AWS Machine Learning 📐 ML Fundamentals ⚡ AI Lesson 1mo ago
Build and deploy an automatic sync solution for Amazon Bedrock Knowledge Bases
In this post, we explore an automated solution that detects S3 events and triggers ingestion jobs while respecting service quotas and providing comprehensive mo
Cost-effective multilingual audio transcription at scale with Parakeet-TDT and AWS Batch
AWS Machine Learning 📐 ML Fundamentals ⚡ AI Lesson 1mo ago
Cost-effective multilingual audio transcription at scale with Parakeet-TDT and AWS Batch
In this post, we walk through building a scalable, event-driven transcription pipeline that automatically processes audio files uploaded to Amazon Simple Storag
AWS Machine Learning 📐 ML Fundamentals ⚡ AI Lesson 1mo ago
End-to-end lineage with DVC and Amazon SageMaker AI MLflow apps
In this post, we show how to combine DVC (Data Version Control), Amazon SageMaker AI, and Amazon SageMaker AI MLflow Apps to build end-to-end ML model lineage.
AWS Machine Learning 📐 ML Fundamentals ⚡ AI Lesson 1mo ago
Introducing granular cost attribution for Amazon Bedrock
In this post, we share how Amazon Bedrock's granular cost attribution works and walk through example cost tracking scenarios.
AWS Machine Learning 📐 ML Fundamentals ⚡ AI Lesson 2mo ago
Use-case based deployments on SageMaker JumpStart
We're excited to announce the launch of Amazon SageMaker JumpStart optimized deployments. SageMaker JumpStart improved deployments address the need for rich and
AWS Machine Learning 📐 ML Fundamentals ⚡ AI Lesson 2mo ago
Best practices to run inference on Amazon SageMaker HyperPod
This post explores how Amazon SageMaker HyperPod provides a comprehensive solution for inference workloads. We walk you through the platform’s key capabilities
AWS Machine Learning 📐 ML Fundamentals ⚡ AI Lesson 2mo ago
How Guidesly built AI-generated trip reports for outdoor guides on AWS
In this post, we walk through how Guidesly built Jack AI on AWS using AWS Lambda, AWS Step Functions, Amazon Simple Storage Service (Amazon S3), Amazon Relation
AWS Machine Learning 📐 ML Fundamentals ⚡ AI Lesson 2mo ago
Reinforcement fine-tuning on Amazon Bedrock: Best practices
In this post, we explore where RFT is most effective, using the GSM8K mathematical reasoning dataset as a concrete example. We then walk through best practices
AWS Machine Learning 📐 ML Fundamentals ⚡ AI Lesson 2mo ago
Scaling seismic foundation models on AWS: Distributed training with Amazon SageMaker HyperPod and expanding context windows
This post describes how TGS achieved near-linear scaling for distributed training and expanded context windows for their Vision Transformer-based SFM using Amaz