Postdoctoral Position in Computational Biology: Ludwig-Maximilians-Universität (LMU) München is seeking qualified candidates for a postdoctoral position in the field of Immunology, Biochemistry, and Computational Biology, jointly guided by Professors Rotem Sorek and Veit Hornung. The successful candidate will engage in innovative research aimed at understanding how the innate immune system distinguishes self from non-self.
Postdoctoral Position in Immunology / Biochemistry / Computational Biology
Designation
Postdoctoral Researcher (F/M/X)
Location
Gene Center, Ludwig-Maximilians-Universität, Munich, Germany
Research Area
- Innate Immunity
- Comparative Genomics
- Computational Structural Biology
- Biochemical Analyses
Eligibility/Qualification
- PhD in Immunology, Biochemistry, Biology, Computational Biology, or a related field
- Documented background in immunology, molecular biology, biochemistry, or computational biology
- Ability to work independently and collaboratively in multidisciplinary teams
- Proactive attitude and enthusiasm for research
- Fluent in written and spoken English
Job Description
As a postdoctoral researcher, you will:
- Conceptualize, plan, and execute a research project in innate immunity aligning with the group’s broader interests.
- Assist in supervising students, providing guidance and support to foster their academic and professional growth.
- Undertake smaller teaching assignments to enhance the educational environment and promote knowledge sharing within the academic community.
Offer
- Access to state-of-the-art instrumentation and a stimulating working environment.
- Initial contract for two years with the possibility of extension for an additional two years.
- Salary based on the German public sector pay scale (TV-L), determined by experience.
How to Apply
Interested candidates should submit a cover letter and resume via email to:
- hornung.office@genzentrum.lmu.de
- sorek@genzentrum.lmu.de
Last Date for Application
November 30, 2024
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