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Inside the release: Tableau 2022.1 for analysts and business users

Tableau

introduces a wide range of capabilities designed to improve every stage of data analysis—from data preparation to dashboard consumption. With the enhancements to View Data, you can remove and add fields as well as adjust the number of rows to cover the breadth and depth that your analysis needs. Bronwen Boyd. Performance.

Tableau 98
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Inside the release: Tableau 2022.1 for analysts and business users

Tableau

introduces a wide range of capabilities designed to improve every stage of data analysis—from data preparation to dashboard consumption. With the enhancements to View Data, you can remove and add fields as well as adjust the number of rows to cover the breadth and depth that your analysis needs. Bronwen Boyd. Performance.

Tableau 98
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Transition your Amazon Forecast usage to Amazon SageMaker Canvas

AWS Machine Learning Blog

SageMaker Canvas also provides excellent model transparency by offering direct access to trained models, which you can deploy at your chosen location, along with numerous model insight reports, including access to validation data, model- and item-level performance metrics, and hyperparameters employed during training.

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Implementing Knowledge Bases for Amazon Bedrock in support of GDPR (right to be forgotten) requests

AWS Machine Learning Blog

Data preparation Before creating a knowledge base using Knowledge Bases for Amazon Bedrock, it’s essential to prepare the data to augment the FM in a RAG implementation. This begins the process of converting the data stored in the S3 bucket into vector embeddings in your OpenSearch Serverless vector collection.

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Implement a custom AutoML job using pre-selected algorithms in Amazon SageMaker Automatic Model Tuning

AWS Machine Learning Blog

It installs and imports all the required dependencies, instantiates a SageMaker session and client, and sets the default Region and S3 bucket for storing data. Data preparation Download the California Housing dataset and prepare it by running the Download Data section of the notebook.

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A Step-by-Step Guide: Efficiently Managing TensorFlow/Keras Model Development with Comet

Heartbeat

MLOps is a set of principles and practices that combine software engineering, data science, and DevOps to ensure that ML models are deployed and managed effectively in production. MLOps encompasses the entire ML lifecycle, from data preparation to model deployment and monitoring. Why Is MLOps Important?

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MLOps Landscape in 2023: Top Tools and Platforms

The MLOps Blog

See also Thoughtworks’s guide to Evaluating MLOps Platforms End-to-end MLOps platforms End-to-end MLOps platforms provide a unified ecosystem that streamlines the entire ML workflow, from data preparation and model development to deployment and monitoring. Is it fast and reliable enough for your workflow?