What prevents Finnish women from applying to software engineering roles?
A preliminary analysis of survey data
- URL: http://arxiv.org/abs/2002.01840v1
- Date: Wed, 5 Feb 2020 16:03:25 GMT
- Title: What prevents Finnish women from applying to software engineering roles?
A preliminary analysis of survey data
- Authors: Annika Wolff, Antti Knutas, Paula Savolainen
- Abstract summary: Finland is considered a country with a good track record in gender equality.
This paper focuses on the problems that some women face in obtaining software engineering roles.
- Score: 9.781973111840552
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Finland is considered a country with a good track record in gender equality.
Whilst statistics support the notion that Finland is performing well compared
to many other countries in terms of workplace equality, there are still many
areas for improvement. This paper focuses on the problems that some women face
in obtaining software engineering roles. We report a preliminary analysis of
survey data from 252 respondents. These are mainly women who have shown an
interest in gaining programming roles by joining the Mimmit koodaa initiative,
which aims to increase equality and diversity within the software industry. The
survey sought to understand what early experiences may influence later career
choices and feelings of efficacy and confidence needed to pursue
technology-related careers. These initial findings reveal that women's feelings
of computing self-efficacy and attitudes towards software engineering are
shaped by early experiences. More negative experiences decrease the likelihood
of working in software engineering roles in the future, despite expressing an
interest in the field.
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