Start Date
Immediate
Expiry Date
01 Jul, 25
Salary
0.0
Posted On
13 Jun, 25
Experience
0 year(s) or above
Remote Job
Yes
Telecommute
Yes
Sponsor Visa
No
Skills
German, Service Development
Industry
Information Technology/IT
Job announcement ref. #08-25012
For the Senckenberg Museum of Natural History in Görlitz, the Senckenberg Gesellschaft für Naturforschung headquartered in Frankfurt (Main) is seeking the to fill the following position
REMUNERATION: COLLECTIVE AGREEMENT OF THE GERMAN LÄNDER, TV-L E 13
Founded in 1817, the Senckenberg Gesellschaft für Naturforschung (SGN) is one of the world’s major research institutions in the field of biodiversity. At our twelve sites in Germany, scientists from over 40 nations conduct cutting-edge research at an international level. At the Görlitz site, the renowned Senckenberg Museum of Natural History is located in a historic town within a region known for its unspoilt natural beauty.
Are you interested in applying your machine learning and deep-learning expertise to develop cutting-edge ecological and environmental research? The Senckenberg Gesellschaft für Naturforschung invites you to become part of an exciting project at the Senckenberg Museum of Natural History Görlitz (Saxony, Germany). We are looking for a motivated environmental data modeler – data scientist (m/f/d) to support the project BoTiKI (funded through the BMUKN ANK, ‘KI-Leuchttürme für Umwelt, Klima, Natur und Ressourcen’), to start as soon as possible.
Soil is a large reservoir of greenhouse gases (GHG). It can sequestrate or release potent GHG (CO2, CH4 and N2O). Despite the fact that soil fauna is crucial to GHG fluxes, the specific impact of soil fauna on emissions has not been researched in depth and constitutes a missing factor in soil GHG flux models.
BoTiKI aims at filling this knowledge gap and establish improved GHG models accounting for soil fauna. To achieve this, we create a rich AI-training dataset for multimodal inferences, combining computer-vision, environmental parameter measures and DNA data.
Your role will be central in data acquisition and foremost machine-learning models creation. You will collaborate closely with a dedicated team of soil fauna experts, ecological data modelers, computer-vision system engineers.
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Senckenberg is committed to diversity. We benefit from the different expertise, perspectives and personalities of our staff and welcome every application from qualified candidates, irrespective of age, gender, ethnic or cultural origin, religion and ideology, sexual orientation and identity or disability. Women are particularly encouraged to apply as they are underrepresented in the field of this position; in the case of equal qualifications and suitability, they will be given preference. Applicants with a severe disability will be given special consideration in case of equal suitability. Senckenberg actively supports the compatibility of work and family and places great emphasis on an equal and inclusive work culture.
How to apply?