Age, Biography and Wiki
Sven Apel was born on 1977, is a German computer scientist. Discover Sven Apel's Biography, Age, Height, Physical Stats, Dating/Affairs, Family and career updates. Learn How rich is he in this year and how he spends money? Also learn how he earned most of networth at the age of 47 years old?
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Professor of computer science |
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47 years old |
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He is a member of famous Computer with the age 47 years old group.
Sven Apel Height, Weight & Measurements
At 47 years old, Sven Apel height not available right now. We will update Sven Apel's Height, weight, Body Measurements, Eye Color, Hair Color, Shoe & Dress size soon as possible.
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Dating & Relationship status
He is currently single. He is not dating anyone. We don't have much information about He's past relationship and any previous engaged. According to our Database, He has no children.
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Sven Apel Net Worth
His net worth has been growing significantly in 2023-2024. So, how much is Sven Apel worth at the age of 47 years old? Sven Apel’s income source is mostly from being a successful Computer. He is from . We have estimated Sven Apel's net worth, money, salary, income, and assets.
Net Worth in 2024 |
$1 Million - $5 Million |
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Computer |
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Timeline
Sven Apel (born 1977) is a German computer scientist and professor of software engineering at Saarland University.
His research focuses on software product lines and configurable systems, domain-specific generation and optimization, software analytics and intelligence, as well as empirical methods and the human factor in software development.
Sven Apel studied computer science at the University of Magdeburg from 1996 to 2002.
At the same university, he also received his doctorate in computer science in 2007 with a thesis on the “Role of Features and Aspects in Software Development.”
After his doctorate, Apel was a postdoctoral researcher at the University of Passau until 2010.
From 2010 to 2013, he led the Emmy Noether Junior Research Group “Secure and Efficient Software Product Lines” there before he was appointed professor in Passau in 2013 as part of the DFG's Heisenberg Program.
Since 2019, Sven Apel has been a professor of software engineering at Saarland University.
In 2019, Apel, together with Christian Kästner and Martin Kuhlemann, received the “Most Influential Paper Award” at the Systems and Software Products Line Conference (SPLC) for the paper “Granularity in Software Product Lines”.
In the article, the three researchers demonstrate how programs can be extended by fine-grained import from other software.
In 2022, together with Janet Feigenspan, Christian Kästner, Jörg Liebig and Stefan Hanenberg, he was awarded the “Most Influential Paper Award” at the International Conference on Program Comprehension (ICPC) for the paper “Measuring programming experience”.
In the article, the researchers present a questionnaire and an experiment to assess and measure a programmer's level of experience.
According to Google Scholar, he has an h-index of 69.
Sven Apel's research focuses in particular on methods, tools, and theories for the construction of manageable, reliable, efficient, configurable, and evolvable software systems.
In addition to the technical aspects, the human and social factors in software development also play an important role for him.
For example, he investigates program comprehension with the help of neurophysiological measurements, such as functional magnetic resonance imaging (fMRI).