PhD Candidate in Molecular and Computational Plant Biology
20.12.2024, Wissenschaftliches Personal
The ERC project “RESIST” (https://www.mls.ls.tum.de/en/cpb/research/projects/) at the Professorship for Computational Plant Biology at the TUM School of Life Sciences is seeking a PhD candidate for an interdisciplinary project investigating phenomics and transcriptomics related to drought stress in oats. This exciting role combines molecular biology approaches, computational analyses, and cutting-edge phenotyping technologies in collaboration with Helmholtz Munich (Environmental Simulation Unit, Prof. Jörg Peter Schnitzler).
Requirements
The ideal candidate will have:
- A Master’s degree in molecular and/or computational plant sciences or a related field. • Experience with molecular biology techniques (wet lab skills).
- Strong interest in interdisciplinary and collaborative research.
- Willingness to work at multiple sites (Weihenstephan and Neuherberg).
- Proficiency in programming languages (e.g., Python, R, bash) and experience with high-performance computing (HPC).
- Expertise or interest in processing large datasets and applying statistical methods.
- Fluency in English, both written and spoken.
Responsibilities
As part of a collaborative effort between the Computational Plant Biology group at TUM, a dynamic team focused on plant genomics and agricultural crops, and the Environmental Simulation Unit at Helmholtz Munich led by Prof. Jörg Peter Schnitzler, you will contribute to research on drought stress resistance in oats. Key responsibilities include:
- Investigating drought stress tolerance in oats using phenomics and transcriptomics approaches.
- Conducting greenhouse experiments utilizing cutting-edge phenotyping platforms (e.g., HTP shoot/root platform with 3D multispectral scanning).
- Performing field and greenhouse phenotyping, including measuring traits such as shoot length, root mass, and water-use efficiency (WUE).
- Processing and analyzing RNA sequencing (RNA-Seq) data, from RNA extraction to computational analyses (e.g., gene expression profiling, co-expression networks, and pathway enrichment).
- Employing genetic mapping (e.g., GWAS, SV-GWAS) to identify loci associated with drought stress tolerance.
- Supervising and teaching students in a collaborative academic environment.
Our Offer
- Salary: E13 TV-L (65%).
- The position is initially limited to three years.
- Access to state-of-the-art facilities and resources at the TUM School of Life Sciences and Helmholtz Munich.
- The opportunity to participate in cutting-edge research in plant genomics and drought stress tolerance.
- Integration into a vibrant and international research community at TUM and Helmholtz Munich.
- The position is suitable for individuals with disabilities. Severely disabled candidates will be given preference if their qualifications are otherwise equivalent.
- TUM privacy policy on collecting and processing personal data: https://portal.mytum.de/kompass/datenschutz/Bewerbung/. By submitting your application, you confirm that you have read and understood the data protection guidelines of TUM.
- TUM aims to increase the proportion of women in its workforce and explicitly encourages women to apply.
How to Apply
- Please send your application, including at least one reference, a CV, and all other relevant documents by email to Prof. Nadia Kamal: n.kamal@tum.de.
- Combine all documents into a single PDF file named lastname_phd_resist.pdf. Applications that do not adhere to this format will not be considered.
- Application deadline: January 31, 2025
Contact Information
- Technical University of Munich
- Computational Plant Biology
- Prof. Dr. rer. nat. Nadia Kamal
- Am Staudengarten 2, 85354 Freising
- Tel.: +49 8161 71 5301
- sekretariat.cpb@ls.tum.deå
- www.mls.ls.tum.de/en/cpb
- www.tum.de
Die Stelle ist für die Besetzung mit schwerbehinderten Menschen geeignet. Schwerbehinderte Bewerberinnen und Bewerber werden bei ansonsten im wesentlichen gleicher Eignung, Befähigung und fachlicher Leistung bevorzugt eingestellt.
Hinweis zum Datenschutz:
Im Rahmen Ihrer Bewerbung um eine Stelle an der Technischen Universität München (TUM) übermitteln Sie personenbezogene Daten. Beachten Sie bitte hierzu unsere Datenschutzhinweise gemäß Art. 13 Datenschutz-Grundverordnung (DSGVO) zur Erhebung und Verarbeitung von personenbezogenen Daten im Rahmen Ihrer Bewerbung. Durch die Übermittlung Ihrer Bewerbung bestätigen Sie, dass Sie die Datenschutzhinweise der TUM zur Kenntnis genommen haben.
Kontakt: n.kamal@tum.de
Mehr Information
https://www.mls.ls.tum.de/en/cpb/home/