Using AutoML to automate selection of machine learning models and hyperparameters

"Automated machine learning (AutoML) enables both data scientists and domain experts (with limited machine learning training) to be productive and efficient. In recent years, AutoML has fostered a fundamental shift in how organizations approach machine learning, making it more accessible to bot...

Full description

Bibliographic Details
Corporate Author: O'Reilly Artificial Intelligence Conference (-)
Other Authors: Lazzeri, Francesca, on-screen presenter (onscreen presenter), Tok, Wee-Hyong, on-screen presenter
Format: Online Video
Language:Inglés
Published: [Place of publication not identified] : O'Reilly 2019.
Subjects:
See on Biblioteca Universitat Ramon Llull:https://discovery.url.edu/permalink/34CSUC_URL/1im36ta/alma991009822813806719
Description
Summary:"Automated machine learning (AutoML) enables both data scientists and domain experts (with limited machine learning training) to be productive and efficient. In recent years, AutoML has fostered a fundamental shift in how organizations approach machine learning, making it more accessible to both experts and nonexperts. Most real-world data science projects are time-consuming, resource intensive, and challenging. Besides data preparation, data cleaning, and feature engineering, data scientists often spend a significant amount of time on model selection and tuning of hyperparameters. Automated machine learning changes that, making it easier to build and use machine learning models in the real world. Francesca Lazzeri and Wee Hyong Tok (Microsoft) lead a gentle introduction to how AutoML works and the state-of-art AutoML capabilities that are available. You'll learn how to use AutoML to automate selection of machine learning models and automate tuning of hyperparameters."--Resource description page.
Item Description:Title from title screen (viewed November 14, 2019).
Physical Description:1 online resource (1 streaming video file (42 min., 33 sec.)) : digital, sound, color