TY - GEN
T1 - Autods
T2 - 2021 CHI Conference on Human Factors in Computing Systems: Making Waves, Combining Strengths, CHI 2021
AU - Wang, Dakuo
AU - Andres, Josh
AU - Weisz, Justin
N1 - Publisher Copyright:
© 2021 ACM.
PY - 2021/5/6
Y1 - 2021/5/6
N2 - Data science (DS) projects often follow a lifecycle that consists of laborious tasks for data scientists and domain experts (e.g., data exploration, model training, etc.). Only till recently, machine learning(ML) researchers have developed promising automation techniques to aid data workers in these tasks. This paper introduces AutoDS, an automated machine learning (AutoML) system that aims to leverage the latest ML automation techniques to support data science projects. Data workers only need to upload their dataset, then the system can automatically suggest ML confgurations, preprocess data, select algorithm, and train the model. These suggestions are presented to the user via a web-based graphical user interface and a notebook-based programming user interface. Our goal is to offer a systematic investigation of user interaction and perceptions of using an AutoDS system in solving a data science task. We studied AutoDS with 30 professional data scientists, where one group used AutoDS, and the other did not, to complete a data science project. As expected, AutoDS improves productivity; Yet surprisingly, we fnd that the models produced by the AutoDS group have higher quality and less errors, but lower human confdence scores. We refect on the fndings by presenting design implications for incorporating automation techniques into human work in the data science lifecycle.
AB - Data science (DS) projects often follow a lifecycle that consists of laborious tasks for data scientists and domain experts (e.g., data exploration, model training, etc.). Only till recently, machine learning(ML) researchers have developed promising automation techniques to aid data workers in these tasks. This paper introduces AutoDS, an automated machine learning (AutoML) system that aims to leverage the latest ML automation techniques to support data science projects. Data workers only need to upload their dataset, then the system can automatically suggest ML confgurations, preprocess data, select algorithm, and train the model. These suggestions are presented to the user via a web-based graphical user interface and a notebook-based programming user interface. Our goal is to offer a systematic investigation of user interaction and perceptions of using an AutoDS system in solving a data science task. We studied AutoDS with 30 professional data scientists, where one group used AutoDS, and the other did not, to complete a data science project. As expected, AutoDS improves productivity; Yet surprisingly, we fnd that the models produced by the AutoDS group have higher quality and less errors, but lower human confdence scores. We refect on the fndings by presenting design implications for incorporating automation techniques into human work in the data science lifecycle.
KW - Ai
KW - Autods
KW - Automated data science
KW - Automated machine learning
KW - Automl
KW - Collaborative ai
KW - Data science
KW - Human-ai collaboration
KW - Human-in-the-loop
KW - Model building
KW - Xai
UR - http://www.scopus.com/inward/record.url?scp=85106731948&partnerID=8YFLogxK
U2 - 10.1145/3411764.3445526
DO - 10.1145/3411764.3445526
M3 - Conference contribution
T3 - Conference on Human Factors in Computing Systems - Proceedings
BT - CHI 2021 - Proceedings of the 2021 CHI Conference on Human Factors in Computing Systems
PB - Association for Computing Machinery
Y2 - 8 May 2021 through 13 May 2021
ER -