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LightAutoML: AutoML Solution for a Large Financial Services Ecosystem

Unite.AI

It was in 2014 when ICML organized the first AutoML workshop that AutoML gained the attention of ML developers. Another method commonly implemented by AutoML models is to estimate the probability of a particular hyperparameter being the optimal hyperparameter for a given machine learning model.

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Machine Learning with MATLAB and Amazon SageMaker

Flipboard

MATLAB   is a popular programming tool for a wide range of applications, such as data processing, parallel computing, automation, simulation, machine learning, and artificial intelligence. Our objective is to demonstrate the combined power of MATLAB and Amazon SageMaker using this fault classification example.

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sktime?—?Python Toolbox for Machine Learning with Time Series

ODSC - Open Data Science

sktime — Python Toolbox for Machine Learning with Time Series Editor’s note: Franz Kiraly is a speaker for ODSC Europe this June. Be sure to check out his talk, “ sktime — Python Toolbox for Machine Learning with Time Series ,” there! Classification? Annotation? Something else?

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TinyML: Applications, Limitations, and It’s Use in IoT & Edge Devices

Unite.AI

In the past few years, Artificial Intelligence (AI) and Machine Learning (ML) have witnessed a meteoric rise in popularity and applications, not only in the industry but also in academia. It’s the major reason why its difficult to build a standard ML architecture for IoT networks.

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Harmonize data using AWS Glue and AWS Lake Formation FindMatches ML to build a customer 360 view

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These techniques utilize various machine learning (ML) based approaches. Overview of solution In this post, we go through the various steps to apply ML-based fuzzy matching to harmonize customer data across two different datasets for auto and property insurance. Run the AWS Glue ML transform job.

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Build ML features at scale with Amazon SageMaker Feature Store using data from Amazon Redshift

Flipboard

Many practitioners are extending these Redshift datasets at scale for machine learning (ML) using Amazon SageMaker , a fully managed ML service, with requirements to develop features offline in a code way or low-code/no-code way, store featured data from Amazon Redshift, and make this happen at scale in a production environment.

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Accelerating sustainable modernization with Green IT Analyzer on AWS

IBM Journey to AI blog

Businesses are increasingly embracing data-intensive workloads, including high-performance computing, artificial intelligence (AI) and machine learning (ML). This situation triggered an auto-scaling rule set to activate at 80% CPU utilization. Due to the auto-scaling of the new EC2 instances, an additional t2.large