Title
Developing ML/DL Models: A Design Framework
Abstract
ABSTRACTArtificial Intelligence is becoming increasingly popular with organizations due to the success of Machine Learning and Deep Learning techniques. Using these techniques, data scientists learn from vast amounts of data to enhance behaviour in software-intensive systems. Despite the attractiveness of these techniques, however, there is a lack of systematic and structured design process for developing ML/DL models. The study uses a multiple-case study approach to explore the different activities and challenges data scientists face when developing ML/DL models in software-intensive embedded systems. In addition, we have identified seven different phases in the proposed design process leading to effective model development based on the case study. Iterations identified between phases and events which trigger these iterations optimize the design process for ML/DL models. Lessons learned from this study allow data scientists and engineers to develop high-performance ML/DL models and also bridge the gap between high demand and low supply of data scientists.
Year
DOI
Venue
2020
10.1145/3379177.3388892
International Conference on Software Engineering
DocType
Citations 
PageRank 
Conference
1
0.36
References 
Authors
0
3
Name
Order
Citations
PageRank
Meenu Mary John110.36
Helena Holmström Olsson235737.09
Jan Bosch380788.13