Artificial Intelligence Impact On The Labour Force -- Searching For The
Analytical Skills Of The Future Software Engineers
- URL: http://arxiv.org/abs/2302.13229v1
- Date: Sun, 26 Feb 2023 03:49:53 GMT
- Title: Artificial Intelligence Impact On The Labour Force -- Searching For The
Analytical Skills Of The Future Software Engineers
- Authors: Sabina-Cristiana Necula
- Abstract summary: This systematic literature review aims to investigate the impact of artificial intelligence on the labour force in software engineering.
It focuses on the skills needed for future software engineers, the impact of AI on the demand for software engineering skills, and the future of work for software engineers.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This systematic literature review aims to investigate the impact of
artificial intelligence (AI) on the labour force in software engineering, with
a particular focus on the skills needed for future software engineers, the
impact of AI on the demand for software engineering skills, and the future of
work for software engineers. The review identified 42 relevant publications
through a comprehensive search strategy and analysed their findings. The
results indicate that future software engineers will need to be competent in
programming and have soft skills such as problem-solving and interpersonal
communication. AI will have a significant impact on the software engineering
workforce, with the potential to automate many jobs currently done by software
engineers. The role of a software engineer is changing and will continue to
change in the future, with AI-assisted software development posing challenges
for the software engineering profession. The review suggests that the software
engineering profession must adapt to the changing landscape to remain relevant
and effective in the future.
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