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Automated machine learning is the process of automating some or all of the phases in a machine learning pipeline, such as data pre-processing, feature selection, algorithm selection, and hyper-parameter optimization. One advantage of these techniques is the empowerment of users, users that may or may not have data science expertise, allowing them to identify machine learning pipelines for their problems so that they achieve a high level of accuracy while at the same time minimizing the time spent on these problems. During this presentation, Vlad Iliescu will offer a high-level look of some of the available tools for automating machine learning, their advantages , and disadvantages, before going into more depth on Microsoſt’s Automated Machine Learning library. You will learn how to automatically train predictive models, which features are deemed important and which features are excluded, and also how you can take a peek under the hood of the auto-trained model. The model’s performance will be evaluated in an almost-real-world scenario, by competing in a live machine learning competition - Kaggle’s classic Titanic competition. Bio: Partner and Head of AI at Strongbytes, a razor-sharp company with a strong focus on building soſtware products around VLAD ILIESCU TRAINING BETTER MODELS USING AUTOMATED MACHINE LEARNING

VLAD ILIESCU - Cognizant Softvision · During this presentation, Vlad Iliescu will offer a high-level look of some of the available tools for automating machine learning, their advantages

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Page 1: VLAD ILIESCU - Cognizant Softvision · During this presentation, Vlad Iliescu will offer a high-level look of some of the available tools for automating machine learning, their advantages

Automated machine learning is the process of automating some or all of the phases in a machine learning pipeline, such as data pre-processing, feature selection, algorithm selection, and hyper-parameter optimization. One advantage of these techniques is the empowerment of users, users that may or may not have data science expertise, allowing them to identify machine learning pipelines for their problems so that they achieve a high level of accuracy while at the same time minimizing the time spent on these problems.During this presentation, Vlad Iliescu will offer a high-level look of some of the available tools for automating machine learning, their advantages , and disadvantages, before going into more depth on Microsoft’s Automated Machine Learning library. You will learn how to automatically train predictive models, which features are deemed important and which features are excluded, and also how you can take a peek under the hood of the auto-trained model. The model’s performance will be evaluated in an almost-real-world scenario, by competing in a live machine learning competition - Kaggle’s classic Titanic competition.

Bio:Partner and Head of AI at Strongbytes, a razor-sharp company with a strong focus on building software products around

VLAD ILIESCU

TRAINING BETTER MODELS USINGAUTOMATED MACHINE LEARNING

Page 2: VLAD ILIESCU - Cognizant Softvision · During this presentation, Vlad Iliescu will offer a high-level look of some of the available tools for automating machine learning, their advantages

well-operationalized machine learning models. I’m driving its machine learning initiative. Co-founder of NDR, that Artificial Intelligence conference in Romania. Last but not least, Microsoft Most Valuable Professional on AI, public speaker and storyteller, music lover and uke player, all-around good guy.