Boost transcription accuracy of class lectures with custom language models for Amazon Transcribe

Favorite Many universities like transcribing their recorded class lectures and later creating captions out of these transcriptions. Amazon Transcribe is a fully-managed automatic speech recognition service (ASR) that makes it easy to add speech-to-text capabilities to voice-enabled applications. Transcribe assists in increasing accessibility and improving content engagement and learning outcomes

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Shared by AWS Machine Learning September 8, 2021

The Middle Management layer in KM – blockers? Or enablers?

Favorite Middle management can form an almost impenetrable layer to knowledge management in many organisations. Image from wikimedia commons The two main stakeholder groupings for KM are the senior managers and the knowledge workers. The value proposition for the senior managers is that KM will deliver greater efficiency, greater effectiveness, faster

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Shared by Nick Milton September 6, 2021

Define and run Machine Learning pipelines on Step Functions using Python, Workflow Studio, or States Language

Favorite You can use various tools to define and run machine learning (ML) pipelines or DAGs (Directed Acyclic Graphs). Some popular options include AWS Step Functions, Apache Airflow, KubeFlow Pipelines (KFP), TensorFlow Extended (TFX), Argo, Luigi, and Amazon SageMaker Pipelines. All these tools help you compose pipelines in various languages

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Shared by AWS Machine Learning September 4, 2021

How Intel Olympic Technology Group built a smart coaching SaaS application by deploying pose estimation models – Part 1

Favorite The Intel Olympic Technology Group (OTG), a division within Intel focused on bringing cutting-edge technology to Olympic athletes, collaborated with AWS Machine Learning Professional Services (MLPS) to build a smart coaching software as a service (SaaS) application using computer vision (CV)-based pose estimation models. Pose estimation is a class

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Shared by AWS Machine Learning September 3, 2021

Schedule an Amazon SageMaker Data Wrangler flow to process new data periodically using AWS Lambda functions

Favorite Data scientists can spend up to 80% of their time preparing data for machine learning (ML) projects. This preparation process is largely undifferentiated and tedious work, and can involve multiple programming APIs and custom libraries. Announced at AWS re:Invent 2020, Amazon SageMaker Data Wrangler reduces the time it takes

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Shared by AWS Machine Learning September 3, 2021

Build machine learning at the edge applications using Amazon SageMaker Edge Manager and AWS IoT Greengrass V2

Favorite Running machine learning (ML) models at the edge can be a powerful enhancement for Internet of Things (IoT) solutions that must perform inference without a constant connection back to the cloud. Although there are numerous ways to train ML models for countless applications, effectively optimizing and deploying these models

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Shared by AWS Machine Learning September 3, 2021