AI Assistants: A Framework for Semi-Automated Data Wrangling
Tomas Petricek, Gerrit J. J. van den Burg, Alfredo Naz\'abal, Taha, Ceritli, Ernesto Jim\'enez-Ruiz, Christopher K. I. Williams

TL;DR
This paper introduces AI assistants as semi-automatic interactive tools to simplify complex data wrangling tasks, making data preparation more efficient and accessible for data analysts.
Contribution
It formally defines AI assistants for data wrangling, implements them for four tasks, and demonstrates their effectiveness through evaluation in an open-source environment.
Findings
AI assistants facilitate complex data transformations
They improve efficiency over manual methods
They are accessible via open-source notebooks
Abstract
Data wrangling tasks such as obtaining and linking data from various sources, transforming data formats, and correcting erroneous records, can constitute up to 80% of typical data engineering work. Despite the rise of machine learning and artificial intelligence, data wrangling remains a tedious and manual task. We introduce AI assistants, a class of semi-automatic interactive tools to streamline data wrangling. An AI assistant guides the analyst through a specific data wrangling task by recommending a suitable data transformation that respects the constraints obtained through interaction with the analyst. We formally define the structure of AI assistants and describe how existing tools that treat data cleaning as an optimization problem fit the definition. We implement AI assistants for four common data wrangling tasks and make AI assistants easily accessible to data analysts in an…
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Taxonomy
TopicsData Quality and Management · Big Data and Business Intelligence
