Markus Borg

Software Engineering Researcher

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Tag: machine learning

Machine Learning (ML) deals with how computer programs can learn and improve at performing a specific task when trained on historical data. ML is divided into unsupervised learning (such as clustering and topic modeling) and supervised learning (training a system on annotated examples). ML has been a central part of my research since my PhD studies, and even ended up in my thesis title.

April 4, 2019December 28, 2020mrksbrg

Towards Structured Evaluation of Deep Neural Network Supervisors

January 31, 2019August 18, 2019mrksbrg

Safely Entering the Deep: A Review of Verification and Validation for Machine Learning and a Challenge Elicitation in the Automotive Industry

May 29, 2018July 13, 2018mrksbrg

Adaptive Runtime Response Time Control in PLC-based Real-Time Systems using Reinforcement Learning

May 28, 2018July 13, 2018mrksbrg

Learning-based Response Time Analysis in Real-Time Embedded Systems: A Simulation-based Approach

May 28, 2018July 13, 2018mrksbrg

Automotive Safety and Machine Learning: Initial Results from a Study on How to Adapt the ISO 26262 Safety Standard

April 9, 2018July 15, 2018mrksbrg

Learning-Based Self-Adaptive Assurance of Timing Properties in a Real-Time Embedded System

June 16, 2017July 12, 2018mrksbrg

On Using Active Learning and Self-Training when Mining Performance Discussions on Stack Overflow

August 1, 2016July 12, 2018mrksbrg

Using Text Clustering to Predict Defect Resolution Time: A Conceptual Replication and an Evaluation of Prediction Accuracy

May 3, 2016July 12, 2018mrksbrg

TuneR: A Framework for Tuning Software Engineering Tools with Hands-on Instructions in R

March 11, 2016July 22, 2016mrksbrg

Do Take it Personal: It’s Not What You Say, It’s Who (and Where) You Are!

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Recent Publications

  • Sentiment Analysis for the Masses – How LLMs Changed the Game December 18, 2024
  • The Magazine at 40: Viewing Requirements Engineering Through a Ruby Lens October 10, 2024
  • Requirements for Organizational Resilience: Engineering Developer Happiness June 12, 2024
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My @icseconf.bsky.social 2025 trip starts now! It's a long one, and despite heading west, I'm relieved I don’t have to set foot in the US this time. Looking forward to meeting the community! #icse25

— Markus Borg (@mrksbrg.bsky.social) 2025-04-25T06:26:38.643Z
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