Lunds universitet, Institutionen för naturgeografi och ekosystemvetenskap

Lund University was founded in 1666 and is repeatedly ranked among the world’s top universities. The University has around 47 000 students and more than 8 800 staff based in Lund, Helsingborg and Malmö. We are united in our efforts to understand, explain and improve our world and the human condition.

Lund University welcomes applicants with diverse backgrounds and experiences. We regard gender equality and diversity as a strength and an asset.

Work duties
The staff member will be expected to lead/contribute to research coupling machine learning algorithms into the LPJ-GUESS dynamic global vegetation model. Tasks will include the planning of model developments, training of appropriate algorithms and their coupling into LPJ-GUESS, designing experimental protocols, carrying out the related simulations and analysis, and leading writing of peer-reviewed papers based on the results. Exact topics and work plans will be agreed in discussion with their supervisor, but there is likely to be a focus on either tree mortality or soil dynamics and the staff member is expected to contribute substantially to the intellectual development of the work. The staff member will also be expected to contribute to or lead applications for external funding as necessary. Participation in national and international meetings and workshops related to the above is expected, as is carrying out related administration and communication activities.

 Qualifications

  • Education: PhD in Environmental Science with a specialism in ecosystem modelling.
  • Very good oral and written proficiency in English.
  • Substantial prior experience developing and applying the LPJ-GUESS dynamic global vegetation model.
  • Advanced skills in C++ and Python programming.
  • Documented success in leading and contributing to high-quality scientific publications.

Other merits

  • Specialist knowledge in plant ecophysiology and ecological theory.
  • Experience in working with high performance computing clusters.
  • Strong organisational skills, including ability and willingness to contribute to community activities.
  • Emphasis will be placed on academic achievements as evidence of emerging independence as a researcher and the ability to communicate in scientific and outreach contexts.

We will place great emphasis on personal suitability. Consideration will also be given to the potential to develop an independent research career in the future, collaboration skills, how the applicant’s experience and skills complement and strengthen the administrative work within the unit/department, as well as contribute to its future development.

Terms of employment
Fixed-term employment at 100% of full time for a period of 1 year. Preferred starting date, 1st February 2023.

For further details contact thomas.pugh@nateko.lu.se

Instructions on how to apply
Applications shall be written in English and be compiled into a PDF-file containing:

  • an application letter detailing your motivation for this position, a general description of past research work and future research interests (no more than one page),
  • résumé/CV, including a list of publications,
  • contact information of at least two references,
  • copy of certificates/grades that you wish to be considered.
Type of employment Special fixed-term employment
Contract type Full time
First day of employment 2023-02-01, duration one year
Salary Monthely salary
Number of positions 1
Full-time equivalent 100
City Lund
County Skåne län
Country Sweden
Reference number PA2022/4195
Contact
  • Thomas Pugh, senior university lecturer, thomas.pugh@nateko.lu.se,+46462228697
Union representative
  • OFR/ST:Fackförbundet ST:s kansli, 046-2229362
  • SACO:Saco-s-rådet vid Lunds universitet, kansli@saco-s.lu.se
  • SEKO: Seko Civil, 046-2229366
Published 20.Dec.2022
Last application date 03.Jan.2023 11:59 PM CET

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