Enable job alerts via email!

Postdoctoral Researcher in Uncertainty Quantification and Mitigation for Inverse Problems, Rese[...]

6G Flagship

Oulu

On-site

EUR 40 000 - 60 000

Full time

11 days ago

Job summary

A leading research university in Finland seeks a Postdoctoral Researcher to advance methods for uncertainty quantification in inverse problems. The successful candidate will collaborate with experts, contribute to innovative projects, and engage with international researchers. The role offers a starting salary of approx. 3800-4000 € per month, with benefits promoting work-life balance and educational opportunities.

Benefits

Wellness benefit ePassi
Buddy Programme and Spouse Network
Development and career options
HR Excellence in Research quality label

Qualifications

  • Strong background in inverse problems and computational solutions.
  • Experience with uncertainty quantification is highly desirable.
  • Ability to work independently and collaboratively in a research team.

Responsibilities

  • Develop advanced methods for uncertainty quantification in inverse problems.
  • Contribute to the theoretical foundations of inverse problems.
  • Apply techniques to real-world problems in wave-based imaging and medical applications.

Skills

Inverse problems
Uncertainty quantification
Python programming
C++ familiarity
Mathematical modeling

Education

Doctoral degree in applied mathematics or related fields
Job description
Overview

Faculty of Science, Mathematical Sciences. The University of Oulu is a multidisciplinary, international research university, with about 4000 employees who produce new knowledge based on high-standards research and provide research based education to build a more sustainable, smarter, and more humane world. The University of Oulu community has about 17,000 people in total. Our northern scientific community operates globally and creates conditions for the emergence of innovations.

We are now looking for a Postdoctoral Researcher to join us in the Research Unit of Mathematical Sciences at the Faculty of Science, which holds an internationally strong position at the forefront of research in its focus areas. The Inverse Problems Group within the Research Unit is a member of the Finnish Center of Excellence in Inverse Problems Research, funded by the Research Council of Finland for the period 2018–2025, and FAME – Flagship of Advanced Mathematics for Sensing, Imaging and Modelling (2024–2031). The group is also supported by a Research Council of Finland Fellowship under the project SPARSe (2025–2029), further strengthening its research profile in inverse problems and computational mathematics.

About the job

This project focuses on developing advanced methods for uncertainty quantification in inverse problems, i.e., mathematical problems where we aim to determine unknown causes based on indirect or incomplete measurements. Such problems are inherently challenging because small errors in data can lead to large uncertainties in the solution. Accurately quantifying and managing these uncertainties is a key frontier in applied mathematics.

A central goal of the project is to not only understand these uncertainties but also to reduce them. This is done through goal-oriented approaches that identify and prioritize the most informative measurements, i.e., those that provide the most insight into the specific aspects of the unknowns that are of practical interest.

The postdoctoral researcher will contribute to the theoretical foundations of inverse problems involving wave phenomena, develop cutting-edge computational algorithms, and apply these techniques to real-world problems, particularly in wave-based imaging and medical applications.

This position is part of the Finnish Inverse Problems Society and the FAME Flagship initiative, offering excellent opportunities to collaborate with leading mathematicians and physicists in Finland and worldwide. In addition, the position is linked to the DREAM doctoral pilot program, which provides the candidate with valuable experience in the supervision of doctoral students. Teaching responsibilities will be limited, with a maximum of 20% of total working time.

FAME Flagship and DREAM pilot: https://fameflagship.fi/

FIPS: https://fips.fi/

The project will be carried out within the Inverse Problems Group, a multidisciplinary research team in the Research Unit of Mathematical Sciences. The group brings together expertise in applied mathematics, computational methods, and imaging sciences, and actively collaborates with leading international researchers. The position will be supervised by Assistant Professor Babak Maboudi Afkham and Associate Professor Andreas Hauptmann.

What we offer
  • The support of an experienced and enthusiastic team of people where you can share your expertise and grow as an expert.
  • Wellness benefit ePassi covering sport, culture and well-being. Read more about other staff benefits here.
  • Our Buddy Programme and Spouse Network support you and close ones in settling into Oulu.
  • Development and career options of the big organization.
  • We have an HR Excellence in Research -quality label which is a recognition awarded by the European Commission for the development of researchers’ working conditions and careers.
  • Work that matters and a workplace that promotes flexibility and work-life balance. Read more about working with us.
  • Finland is one of the most livable countries in the world, with a high quality of life, safety, an excellent education system, and a competitive economy. Read more about living in Oulu.
Who are you?

To succeed and enjoy the position, you have:

  • A strong background in inverse problems and their computational solution.
  • Experience with uncertainty quantification is highly desirable.
  • Excellent programming skills in Python are essential; familiarity with C++ is considered an asset.
  • Solid understanding of mathematical modeling, with partial differential equations (PDEs) and their numerical solution.
  • Ability to work both independently and as part of a collaborative, international research team.

Further requirements are:

  • Doctoral degree in applied mathematics, or related fields. The degree must have been obtained no more than 10 years ago.
  • Teaching skills
Salary

The position is fixed-term for 2 years as of 1.12.2025 or as soon as possible thereafter.

The salary will be based on level 5 of the demand level chart for teaching and research staff of Finnish universities. In addition, a salary component based on personal work performance will be paid (a maximum of 50 % of the job-specific component). The starting gross salary will be approx. 3800-4000 € per month (before taxes).

A trial period of 6 months is applied to the position.

How to apply

Interested? If yes, please apply by 6.10.2025 (23:59 Finnish local time) through our recruitment system. The application should be written in English and include the following:

  • CV, following the guidelines of the Finnish Advisory Board on Research Integrity
  • Cover letter
  • List of publications, following the guidelines of the Academy of Finland
  • Certificates/Diplomas
  • Contact information of 2 persons available for recommendation

The eligible applicants fitting best in the profile expected for the position will be invited to an on-site or remote interview. All applicants will be notified during the selection process.

We welcome applicants from all backgrounds, such as people of different ages, different genders, and members of different languages, cultural or minority groups.

Contact Information

For further information, please contact Assistant Professor Babak Maboudi Afkham (Research Unit of Mathematical Sciences, Faculty of Science) by email at babak.maboudi@oulu.fi.

Type of employment: Temporary position over 6 months | Contract type: Full time | Number of positions: 1 | Full-time equivalent: 100% | City: Oulu | Country: Finland | Reference number: 2025/454 | Published: 15.Sep.2025 | Last application date: 06.Oct.2025

Get your free, confidential resume review.
or drag and drop a PDF, DOC, DOCX, ODT, or PAGES file up to 5MB.