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5G network rollout using DevOps: Myth or reality?

IBM Journey to AI blog

This requires a careful, segregated network deployment process into various “functional layers” of DevOps functionality that, when executed in the correct order, provides a complete automated deployment that aligns closely with the IT DevOps capabilities. appeared first on IBM Blog.

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MLOps Is an Extension of DevOps. Not a Fork — My Thoughts on THE MLOPS Paper as an MLOps Startup CEO

The MLOps Blog

Lived through the DevOps revolution. Founded neptune.ai , a modular MLOps component for ML metadata store , aka “experiment tracker + model registry”. If you’d like a TLDR, here it is: MLOps is an extension of DevOps. There will be only one type of ML metadata store (model-first), not three. Came to ML from software.

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Driving advanced analytics outcomes at scale using Amazon SageMaker powered PwC’s Machine Learning Ops Accelerator

AWS Machine Learning Blog

Machine learning operations (MLOps) applies DevOps principles to ML systems. Just like DevOps combines development and operations for software engineering, MLOps combines ML engineering and IT operations. Conclusion In summary, MLOps is critical for any organization that aims to deploy ML models in production systems at scale.

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The most valuable AI use cases for business

IBM Journey to AI blog

Deliver new insights Expert systems can be trained on a corpus—metadata used to train a machine learning model—to emulate the human decision-making process and apply this expertise to solve complex problems. Explore IBM® watsonx.ai™ The post The most valuable AI use cases for business appeared first on IBM Blog.

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Create SageMaker Pipelines for training, consuming and monitoring your batch use cases

AWS Machine Learning Blog

model.create() creates a model entity, which will be included in the custom metadata registered for this model version and later used in the second pipeline for batch inference and model monitoring. In Studio, you can choose any step to see its key metadata. large", accelerator_type="ml.eia1.medium", large", accelerator_type="ml.eia1.medium",

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Build a receipt and invoice processing pipeline with Amazon Textract

AWS Machine Learning Blog

You can visualize the indexed metadata using OpenSearch Dashboards. Intelligent index and search With the OpenSearchPushInvoke Lambda function, the extracted expense metadata is pushed to an OpenSearch Service index and is available for search. His interests and experience include containers, serverless technology, and DevOps.

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Build an end-to-end MLOps pipeline for visual quality inspection at the edge – Part 2

AWS Machine Learning Blog

The output of a SageMaker Ground Truth labeling job is a file in JSON-lines format containing the labels and additional metadata. With a passion for automation, Joerg has worked as a software developer, DevOps engineer, and Site Reliability Engineer in his pre-AWS life.