AcademicJobs.com Jobs

AcademicJobs.com

Applications Close:

University of Bern

5 Star Employer Ranking

"Postdoc Position in Scientific Machine Learning"

Academic Connect
Applications Close

Postdoc Position in Scientific Machine Learning

Postdoc Position in Scientific Machine Learning

80-100%

The Space Research and Planetary Sciences Division of the University of Bern is seeking candidates for a PostDoc to work on Rosetta legacy mass spectrometer data obtained at comet 67P/Churyumov-Gerasimenko (67P). The position, funded by the Swiss National Science Foundation (SNSF), is nominally for 1 year with the possibility of an extension.

The intended start date falls within the May-July 2026 timeframe.

The Bern-led high-resolution Double Focusing Mass Spectrometer (DFMS) aboard ESA's Rosetta mission to comet 67P revealed an unexpected chemical diversity and complexity in cometary matter. The research project uses DFMS legacy data as unique testbed to investigate cometary abiotic organic complexity and establish references for ongoing and future space missions – particularly those employing mass spectrometers in the search for signs of life.

Tasks

The work combines physical and chemical knowledge with machine learning (ML) algorithms to reduce and interpret the full mission DFMS legacy data. A central focus lies on the exploration of unsupervised ML methods to support the investigation and characterization of complex organic molecules.
The PostDoc will be working in a multidisciplinary environment at one of the leading houses for space mission instrumentation in Europe and have the opportunity to present their research at international conferences and workshops.

Requirements

The position formally requires a PhD degree in physics, (astro)chemistry, or related fields, obtained no more than one year ago. We are looking for candidates with extensive scientific machine learning expertise and strong programming skills. Experience in organic chemistry, mass spectrometry, primitive solar system bodies is a plus.

We offer

The salary will be determined according to SNSF regulations. Rules according to the University of Bern and Canton of Bern apply. Childcare allowance is available.
The Canton of Bern offers 25 days of vacation per year. Public holidays (e.g., Christmas, New Year, Easter, 1 August, etc.) come in addition.

The University of Bern is an equal opportunity employer committed to diversity in its workplace, and applications from under-represented groups are encouraged.

Application

Interested applicants are invited to submit a curriculum vitae (including details of professional experience and skills), a one-page motivation letter, contact information for two referees, and a transcript of their PhD diploma to Dr. Nora Hänni: nora.haenni@unibe.ch

Apply

10

Whoops! This job is not yet sponsored…

I own this job - Please upgrade it to a full listing

Or, view more options below

View full job details

See the complete job description, requirements, and application process

Stay on their radar

Join the talent pool for AcademicJobs.com

Join Talent Pool

Express interest in this position

Let AcademicJobs.com know you're interested in Postdoc Position in Scientific Machine Learning

Add this Job Post to FavoritesExpress Interest

Get similar job alerts

Receive notifications when similar positions become available

Share this opportunity

Send this job to colleagues or friends who might be interested

No Job Listings Found

There are currently no jobs available.

Express interest in working

Let know you're interested in opportunities

Express Interest

Receive university job alerts

Get alerts from AcademicJobs.com as soon as new jobs are posted

Post a job vacancy

Are you a Recruiter or Employer? Post a new job opportunity today!

Post a Job
View More