Uppsala University, Department of Information Technology

The Department of Information Technology provides education and research of the highest international quality. The department educates roughly 4,000 students each year, and houses about 30 research teams. The strong research focus impacts and provides an excellent foundation for undergraduate education in the department. The department is building on activities in IT that have been carried on at Uppsala University since the mid 1960s. More info: http://www.it.uu.se/.

At the Division of Scientific Computing, we conduct research in the entire chain of what is needed to perform simulations; to mathematically describe the phenomenon under investigation, to formulate a solution method to the mathematical problem, and finally to construct computer programs that efficiently implement the developed solution method to enable the simulation.

http://www.it.uu.se/research/scientific_computing

You will conduct your research as part of the Distributed computing Applications research group (http://www.it.uu.se/research/group/dca) mentored by Hellander, Toor and Spjuth. You will be expected to actively participate in DCA activities and contribute positively to the general research environment. The DCA research group is an interdisciplinary arena for researchers interested in large-scale distributed and data-intensive computing, data science and computational science and engineering software. The DCA group participates in the eSSENCE strategic collaboration on eScience

Research Project: Machine learning is a subtopic of artificial intelligence that enables researchers and data scientists to construct algorithms that can learn from and make predictions based on data. In most machine learning workflows today, data is pooled into a centralized dataset that is used to train a predictive model. However, there are many situations in which it is not possible to pool data, such as for regulatory reasons, because the datasets are too large, or because the data is sensitive. In those situations, federated privacy-preserving machine learning allows participating parties to train a joint global model without moving or disclosing any local private data. The project aims at developing new methodology and a technology platform for federated machine learning. Areas of interest include but are not limited to distributed, privacy-preserving optimization, secure multiparty computation, differential privacy and adversarial machine learning. An important part of the project is to push the boundaries for practical use of federated learning, and performance, scalability, and robustness of the developed methods will be important aspects of the research.

Duties: The position is focused on research in the above described research project but may include a limited amount of teaching and departmental duties, but not more than 20%. The work involves traveling to conferences to present result of papers, as well as shorter extended visits to project partners.

Qualifications: A doctor's degree or equivalent foreign degree in Scientific computing or Computer science, or a for the project relevant area.

The successful candidate must have documented experience in applied machine learning, optimization and programming. Personal qualities such as dedication, motivation, initiative and independence are valuable. Fluency in spoken and written English is required.

Meritorious: Documented experience of research on privacy-preserving machine learning or a closely related area. Cloud computing, data engineering, large-scale distributed machine learning using frameworks such as Apache Spark, Tensorflow, and software engineering.

How to apply: The application should include a research statement (no longer than 5 pages) where the applicant presents a biography (summarizing the doctoral work) and outlines the research proposed to be conducted during the postdoc period in the group. The application should also contain a list of credentials (CV), copies of relevant certificates and grades, a list of publications and contact information to at least three reference persons.

Uppsala University aims for gender balance and diversity in all activities in order to achieve a higher quality at all levels of the organization. We therefore welcome applicants of any gender and with different birth background, functionality and life experience.

Salary: Individual salary.

Appointment period: The position is for two years, starting as soon as possible but no later than October 2019.

Type of employment: Temporary position ending in two years.

Scope of employment: 100 %

For further information about the position, please contact Associate Professor Andreas Hellander, Andreas.Hellander@it.uu.se.

You are welcome to submit your application no later than first of August, 2019, UFV-PA 2019/1767.

Are you considering moving to Sweden to work at Uppsala University? If so, you will find much information about working and living in Sweden at http://www.uu.se/joinus. You are also welcome to contact the International Faculty and Staff Services at ifss@uadm.uu.se.

Type of employment Temporary position
Contract type Full time
First day of employment as soon as possible
Salary Individual salary
Number of positions 1
Full-time equivalent 100%
City Uppsala
County Uppsala län
Country Sweden
Reference number UFV-PA 2019/1767
Union representative
  • Seko Universitetsklubben, seko@uadm.uu.se
  • ST/TCO, tco@fackorg.uu.se
  • Saco-rådet, saco@uadm.uu.se
Published 23.May.2019
Last application date 01.Aug.2019 11:59 PM CEST

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