Abstract

Automated machine learning (AutoML) offers the promise of translating raw data into accurate predictions with just a few lines of code. Rather than relying on human time/effort and manual experimentation, models can be improved by simply letting the AutoML system run for more time. In this hands-on tutorial, we demonstrate fundamental techniques that enable powerful AutoML. We consider standard supervised learning tasks on various types of data including tables, text, images, as well as multi-modal data comprised of multiple types. Rather than technical descriptions of how individual ML models work, we emphasize how to best use models within an overall ML pipeline that takes in raw training data and outputs pre-dictions for test data. A major focus of our tutorial is on automating deep learning, a class of powerful techniques that are cumbersome to manage manually. Despite this, hardly any educational material describes their successful automation. Each topic covered in the tutorial is accompanied by a hands-on Jupyter notebook that implements best practices (which will be available on Github before and after the tutorial). Most of this code is adopted from AutoGluon (autogluon.mxnet.io), a recent AutoML toolkit for automated deep learning that is both state-of-the-art and easy-to-use.

Keywords:
Computer science Pipeline (software) Raw data Artificial intelligence Focus (optics) Automation Code (set theory) Deep learning Source lines of code Machine learning Class (philosophy) Data science Software engineering Programming language Software

Metrics

14
Cited By
1.03
FWCI (Field Weighted Citation Impact)
14
Refs
0.81
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Machine Learning and Data Classification
Physical Sciences →  Computer Science →  Artificial Intelligence
Data Stream Mining Techniques
Physical Sciences →  Computer Science →  Artificial Intelligence
Machine Learning and Algorithms
Physical Sciences →  Computer Science →  Artificial Intelligence

Related Documents

JOURNAL ARTICLE

Simpler, Faster, More Accurate Melanocytic Lesion Segmentation Through MEDS

Francesco PeruchFederica BogoMichele BonazzaVincenzo-Maria CappelleriEnoch Peserico

Journal:   IEEE Transactions on Biomedical Engineering Year: 2013 Vol: 61 (2)Pages: 557-565
JOURNAL ARTICLE

CommentFinder: a simpler, faster, more accurate code review comments recommendation

Yang HongChakkrit TantithamthavornPatanamon ThongtanunamAldeida Aleti

Journal:   Proceedings of the 30th ACM Joint European Software Engineering Conference and Symposium on the Foundations of Software Engineering Year: 2022 Pages: 507-519
JOURNAL ARTICLE

Simpler, faster, more reliable photosensor circuits

York A. Maksik

Journal:   Behavior Research Methods, Instruments, & Computers Year: 1991 Vol: 23 (2)Pages: 283-287
JOURNAL ARTICLE

The replication package for "AutoComment: A Simpler, Faster, More Accurate Code Review Comments Recommendation"

Anonymous

Journal:   Zenodo (CERN European Organization for Nuclear Research) Year: 2022
© 2026 ScienceGate Book Chapters — All rights reserved.