Auf einen Blick
- Aufgaben: Conduct research on machine learning applications in chemical data for cancer prevention.
- Arbeitgeber: Join the German Cancer Research Center, dedicated to innovative cancer research and prevention strategies.
- Mitarbeitervorteile: Enjoy flexible hours, state-of-the-art equipment, and personal development opportunities.
- Warum dieser Job: Make a meaningful impact in cancer research while collaborating with top-tier professionals.
- Gewünschte Qualifikationen: Must be enrolled in a Master's program with strong skills in machine learning and Python.
- Andere Informationen: Position limited to 6 months; applications accepted until January 30, 2025.
„Research for a life without cancer“ is our mission at the German Cancer Research Center. We investigate how cancer develops, identify cancer risk factors, and look for new cancer prevention strategies. We develop new methods with which tumors can be diagnosed more precisely and cancer patients can be treated more successfully. Every contribution counts – whether in research, administration, or infrastructure. This is what makes our daily work so meaningful and exciting.
Together with university partners at seven renowned partner sites, we have established the German Cancer Consortium (DKTK).
For the Research Group „Machine Learning in Oncology“ (headed by Prof. Dr. Florian Buettner) at the DKTK partner site Frankfurt/Mainz and the Goethe University Frankfurt, we are seeking a motivated candidate for the next possible date.
The Buettner lab () works on the intersection of machine learning and oncology and is actively pursuing original research in both areas. Your MSc research at the intersection of machine learning and chemistry will explore how machine learning solutions can be used for uncertainty-aware predictive analysis of chemical data.
Your Tasks
Join us for an exciting collaborative project where we will investigate the interplay of different types of model uncertainty on active learning tasks in the context of chemical data. Your MSc thesis will focus on building and applying an active learning framework explicitly leveraging decompositions of model uncertainty into aleatoric and epistemic components. In collaboration with Bayer AG, you will apply these models to real-world chemical data.
Your Profile
- Current enrollment in a Master’s program in computer science, statistics, applied mathematics, or a related field at a German university.
- A good knowledge of machine learning methods and statistics is essential; familiarity with probabilistic modeling and uncertainty quantification is highly desirable.
- Very good knowledge of Python and best practices in software development as well as experience with Linux environments are required.
The candidate will closely interact with other researchers; therefore, good English communication skills are also required.
We Offer
- Excellent framework conditions: state-of-the-art equipment and opportunities for international networking at the highest level.
- Access to international research networks.
- Flexible working hours.
- Unleash your full potential: targeted offers for your personal development to further develop your talents.
- Our Corporate Health Management Program: a holistic approach to your well-being.
Are you interested?
Then become part of the DKFZ and join us in contributing to a life without cancer!
Contact:
Prof. Dr. Florian Büttner
Phone: +49 173 4613687
Duration:
The position is limited to 6 months.
Application Deadline:
30.01.2025
Applications by e-mail cannot be accepted.
We are convinced that an innovative research and working environment thrives on the diversity of its employees. Therefore, we welcome applications from talented people, regardless of gender, cultural background, nationality, ethnicity, sexual identity, physical ability, religion, and age. People with severe disabilities are given preference if they have the same aptitude.
Notice: We are subject to the regulations of the Infection Protection Act (IfSG). Therefore, all our employees must provide proof of immunity against measles.
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MSc Student (Thesis in Machine Learning for Chemical Data / max. 83 hours per month) Arbeitgeber: DKTK partner site Frankfurt/Mainz - Machine Learning in Oncology
Kontaktperson:
DKTK partner site Frankfurt/Mainz - Machine Learning in Oncology HR Team
StudySmarter Bewerbungstipps 🤫
So bekommst du den Job: MSc Student (Thesis in Machine Learning for Chemical Data / max. 83 hours per month)
✨Tip Number 1
Familiarize yourself with the latest research in machine learning and oncology. This will not only help you understand the current trends but also allow you to engage in meaningful discussions during your interview.
✨Tip Number 2
Connect with current or former students from the Buettner lab or related fields. They can provide insights into the lab's culture and expectations, which can be invaluable for your application process.
✨Tip Number 3
Showcase your Python skills by working on relevant projects or contributing to open-source initiatives. This practical experience can set you apart and demonstrate your commitment to software development best practices.
✨Tip Number 4
Prepare to discuss your understanding of uncertainty quantification and probabilistic modeling. Being able to articulate these concepts clearly will highlight your readiness for the challenges of the MSc thesis.
Diese Fähigkeiten machen dich zur top Bewerber*in für die Stelle: MSc Student (Thesis in Machine Learning for Chemical Data / max. 83 hours per month)
Tipps für deine Bewerbung 🫡
Understand the Research Focus: Familiarize yourself with the research conducted at the German Cancer Research Center, especially in the Machine Learning in Oncology group. This will help you tailor your application to align with their mission and ongoing projects.
Highlight Relevant Skills: Emphasize your knowledge of machine learning methods, statistics, and programming skills in Python. Mention any experience with probabilistic modeling and Linux environments, as these are crucial for the role.
Craft a Strong Motivation Letter: Write a compelling motivation letter that explains why you are interested in this specific MSc thesis project. Discuss how your background and skills make you a suitable candidate for the research on uncertainty-aware predictive analysis of chemical data.
Follow Application Guidelines: Ensure you submit your application through the specified channels and adhere to the application deadline of 30.01.2025. Double-check that all required documents are included and formatted correctly.
Wie du dich auf ein Vorstellungsgespräch bei DKTK partner site Frankfurt/Mainz - Machine Learning in Oncology vorbereitest
✨Understand the Research Focus
Make sure to familiarize yourself with the current research projects in the 'Machine Learning in Oncology' group. Being able to discuss specific projects or methodologies will show your genuine interest and understanding of their work.
✨Showcase Your Technical Skills
Prepare to discuss your experience with Python, machine learning methods, and software development best practices. Be ready to provide examples of past projects where you applied these skills, especially in a Linux environment.
✨Communicate Clearly in English
Since good English communication skills are required, practice explaining complex concepts in a clear and concise manner. This will help you convey your ideas effectively during the interview.
✨Express Your Passion for Cancer Research
Demonstrate your motivation for contributing to cancer research. Share any relevant experiences or personal connections that drive your interest in this field, as it aligns with the mission of the German Cancer Research Center.