Title
Towards Interactive Curation & Automatic Tuning of ML Pipelines
Abstract
Democratizing Data Science requires a fundamental rethinking of the way data analytics and model discovery is done. Available tools for analyzing massive data sets and curating machine learning models are limited in a number of fundamental ways. First, existing tools require well-trained data scientists to select the appropriate techniques to build models and to evaluate their outcomes. Second, existing tools require heavy data preparation steps and are often too slow to give interactive feedback to domain experts in the model building process, severely limiting the possible interactions. Third, current tools do not provide adequate analysis of statistical risk factors in the model development. In this work, we present the first iteration of QuIC-M (pronounced quick-m), an interactive human-in-the-loop data exploration and model building suite. The goal is to enable domain experts to build the machine learning pipelines an order of magnitude faster than machine learning experts while having model qualities comparable to expert solutions.
Year
DOI
Venue
2018
10.1145/3209889.3209891
SIGMOD/PODS '18: International Conference on Management of Data Houston TX USA June, 2018
DocType
ISBN
Citations 
Conference
978-1-4503-5828-6
0
PageRank 
References 
Authors
0.34
0
9
Name
Order
Citations
PageRank
Carsten Binnig161961.38
Benedetto Buratti252.10
Yeounoh Chung3234.45
Cyrus Cousins405.41
Tim Kraska52226133.57
Zeyuan Shang6314.64
Eli Upfal74310743.13
Robert C. Zeleznik81561188.86
Emanuel Zgraggen914311.78