....The research is in non-traditional areas and our client cooperate with universities all over Europe..

Machine Learning Researcher For Mobile Broadband Algorithms

Our clients office in Sweden is the leading overseas R&D office. Our client Wireless Network Algorithm Lab drives innovation for wireless Radio Access Networks (RAN) product. Our client work on physical layer signal processing and Radio Resource Management (RRM) algorithms. The research is in non-traditional areas and our client cooperate with universities all over Europe to find the next technological breakthroughs. If this sounds like an interesting challenge where your background will be appreciated, then you should consider the following positions.


To lead research and innovation in the area of machine learning in wireless networks. To follow and influence the research tracks in wireless Radio Access Networks. Some travelling is expected, both within Europe and to China.

Minimum Qualifications

Knowledge of Radio Access Networks algorithms. Up-to-date knowledge about new research trends in academia and industry. Design & implementation of PHY(L1) algorithms for RAN. Solid background in the application of machine learning techniques. Modelling & simulation experience. Practical experience in solving different problems using data. Programming Knowledge: C/C++/Python Preferred qualifications. A PhD degree in electrical engineering or computer science, or equivalent background. Knowledge of one or more machine learning libraries (scikit /TensorFlow/Keras/Torch, etc.)

​​​​​​​Details​​​​​​​ for the position



Employment conditions

Full-time consulting position. Employed by Co-Worker or sub-contractor.

Start date


Work permit/Resident card

Co-Worker assists for work permit if needed, only for employment, not applicable if sub-contracting for assignment.

​​​​​​​Contact person

Dimitris Lyris  
​​​​​​​+ 46 70 090 47 92    

Apply for position


Please update with detailed information of technical skills, competence and work experience together with responsibilities and achievements. Your educational background, patents and publications, if any. The more detailed CV, the better.


By sending your CV/Resumé you give Co-Worker Technology your consent to handle your CV/Resumé in accordance with Personal Data Act 1998: 204 (PuL). For more information, please read:    
Co-Worker privacy policy