Challenges, Strengths, and Strategies of Software Engineers with ADHD: A
Case Study
- URL: http://arxiv.org/abs/2312.05029v1
- Date: Fri, 8 Dec 2023 13:16:29 GMT
- Title: Challenges, Strengths, and Strategies of Software Engineers with ADHD: A
Case Study
- Authors: Grischa Liebel, Noah Langlois, Kiev Gama
- Abstract summary: An estimated 5.0% to 7.1% of the world population have ADHD.
People with ADHD struggle with several important SE-related activities.
They experience issues with physical and mental health.
In terms of strengths, they exhibit, e.g., increased creative skills, perform well when solving puzzles, and have the capability to think ahead.
- Score: 5.284373090958734
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Neurodiversity describes brain function variation in individuals, including
Attention deficit hyperactivity disorder (ADHD) and Autism spectrum disorder.
Neurodivergent individuals both experience challenges and exhibit strengths in
the workplace. As an important disorder included under the neurodiversity term,
an estimated 5.0% to 7.1% of the world population have ADHD. However, existing
studies involving ADHD in the workplace are of general nature and do not focus
on software engineering (SE) activities. To address this gap, we performed an
exploratory qualitative case study on the experiences of people with ADHD
working in SE. We find that people with ADHD struggle with several important
SE-related activities, e.g., task organisation and estimation, attention to
work, relation to others. Furthermore, they experience issues with physical and
mental health. In terms of strengths, they exhibit, e.g., increased creative
skills, perform well when solving puzzles, and have the capability to think
ahead. Our findings align well with existing clinical ADHD research, and have
important implications to SE practice.
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