This paper explores the skills needed to be a data scientist. Specifically, we report on a mixed method study of a project-based data science class, where we evaluated student effectiveness with respect to dividing a project into appropriately sized modular tasks, which we termed task modularity. Our results suggest that while data science students can appreciate the value of task modularity, they struggle to achieve effective task modularity. As a first step, based our study, we identified six task decomposition best practices. However, these best practices do not fully address this gap of how to enable data science students to effectively use task modularity. We note that while computer science/information system programs typically teach ...
The purpose of this study was to define a methodology to identify any disconnect between students an...
This paper describes the initial results from the Data Information Literacy (DIL) project designed t...
This paper reports on a curriculum mapping study that examined job descriptions and advertisements f...
This paper explores the skills needed to be a data scientist. Specifically, we report on a mixed met...
Data science projects have become commonplace over the last decade. During this time, the practices ...
While coursework provides undergraduate data science students with some relevant analytic skills, ma...
This study reports on the findings from Part 2 of a small-scale analysis of requirements for real-wo...
Processes and practices used in data science projects have been reshaping especially over the last d...
Data science is an interdisciplinary field that generates insights in data to aid decision-making. R...
An experimental case study on how task characteristics affect student performance was conducted with...
Data Science is currently a popular field of science attracting expertise from very diverse backgrou...
In this talk we will discuss the 3-year, NSF funded Data Science for All seminar series; including t...
Data science encompasses the most prominent collection of methods for creating scientific knowledge ...
At the August 2017 ACM Education Council meeting, a task force was formed to explore a process to ad...
The purpose of this study was to define a methodology to identify any disconnect between students an...
This paper describes the initial results from the Data Information Literacy (DIL) project designed t...
This paper reports on a curriculum mapping study that examined job descriptions and advertisements f...
This paper explores the skills needed to be a data scientist. Specifically, we report on a mixed met...
Data science projects have become commonplace over the last decade. During this time, the practices ...
While coursework provides undergraduate data science students with some relevant analytic skills, ma...
This study reports on the findings from Part 2 of a small-scale analysis of requirements for real-wo...
Processes and practices used in data science projects have been reshaping especially over the last d...
Data science is an interdisciplinary field that generates insights in data to aid decision-making. R...
An experimental case study on how task characteristics affect student performance was conducted with...
Data Science is currently a popular field of science attracting expertise from very diverse backgrou...
In this talk we will discuss the 3-year, NSF funded Data Science for All seminar series; including t...
Data science encompasses the most prominent collection of methods for creating scientific knowledge ...
At the August 2017 ACM Education Council meeting, a task force was formed to explore a process to ad...
The purpose of this study was to define a methodology to identify any disconnect between students an...
This paper describes the initial results from the Data Information Literacy (DIL) project designed t...
This paper reports on a curriculum mapping study that examined job descriptions and advertisements f...