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Research Associate (m/f/d) - Wissenschaftliche*r Mitarbeiter* at the Institute of Machine Learn[...]

Technische Universität Hamburg

Hamburg

Vor Ort

EUR 50.000 - 65.000

Vollzeit

Vor 13 Tagen

Zusammenfassung

A leading technological university in Hamburg is looking for a Research Associate to join the Cluster of Excellence 'BlueMat.' This role involves research on large language models, working within a dynamic interdisciplinary team to enhance materials discovery. Candidates should have a master's degree and strong skills in Python, machine learning, and data handling. The position offers full-time employment until January 2029, flexible working conditions, and opportunities for further education.

Leistungen

Opportunity to pursue a PhD
Access to training workshops
Participation in international conferences
Flexible working conditions
30 vacation days
Access to on-campus fitness facilities

Qualifikationen

  • Completed university degree (master's degree or equivalent) in related fields.
  • Solid background in large language models or machine learning.
  • Proficiency in Python and experience with AI frameworks.

Aufgaben

  • Design and refine LLM-based workflows for data interpretation and curation.
  • Develop modular tools for semantic parsing and metadata generation.
  • Investigate strategies for adapting foundation models to scientific domains.
  • Collaborate with BlueMat partners to integrate LLM insights with scientific data.
  • Publish research results and contribute to open software.

Kenntnisse

Large Language Models
Natural Language Processing
Machine Learning
Python
Data Handling
AI Frameworks (e.g., PyTorch, Hugging Face, LangChain)
English (B2/C1 Level)

Ausbildung

Master's Degree in Machine Learning, Computer Science, Data Science, or related fields
Jobbeschreibung

Join the Cluster of Excellence “BlueMat: Water-Driven Materials” and contribute to one of Europe’s most exciting research initiatives. Collaborate with a dynamic, interdisciplinary team that combines science, sustainability, and technology to create a better future. Help shape the next generation of sustainable materials inspired by nature’s most powerful resource: water. For the Institute of Machine Learning in Virtual Materials Design at Hamburg University of Technology, for 1 February 2026 we are looking for a Research Associate (m/f/d) – Wissenschaftliche Mitarbeiterin to conduct research within the CrossArea Data as part of the BlueMat Cluster of Excellence. The position is full time and fixed-term until 31 January 2029. The remuneration is in accordance with salary group 13 TV-L (collective agreement for the public service of the federal states).

You will explore large language model (LLM) methods for understanding, organizing, and enriching complex scientific data in BlueMat. Your work will focus on using LLMs to interpret diverse experimental and simulation records, extract key entities and parameters, and generate high-quality metadata and provenance information. The goal is to create adaptive, FAIR-aligned data pipelines that help researchers find patterns, test hypotheses, and accelerate materials discovery across BlueMat’s research areas.

Your Contributions
  • Design and refine LLM-based workflows for data interpretation, annotation, and curation across heterogeneous sources
  • Develop modular tools for semantic parsing, metadata generation, and provenance tracking
  • Investigate strategies for adapting foundation models to scientific domains (e.g., fine-tuning, prompt design, retrieval-augmented generation)
  • Collaborate with BlueMat partners to integrate LLM insights with experimental, modeling, and imaging data
  • Publish research results and contribute to open, reproducible software for data-driven materials science
Your Profile

Essential qualification

  • Completed university degree (master's degree or equivalent), in the subject machine learning, computer science, data science, computational engineering, or related fields
Required Knowledge And Personal Skills
  • Solid background in large language models, natural language processing, or machine learning
  • Proficiency in Python and experience with data handling or AI frameworks (e.g., PyTorch, Hugging Face, LangChain)
  • Very good English required (at least B2/C1 level according to CEFR) – German is not mandatory
  • Curiosity and teamwork skills for working in interdisciplinary teams
Desired knowledge and personal skills
  • Experience with multimodal scientific data or ontology-based data management
  • Interest in applying LLMs to scientific discovery, data infrastructure, or research automation
  • Knowledge of materials science and engineering is advantageous
Our Offer
  • Scientific qualification with the opportunity to pursue a PhD in a leading research cluster
  • Access to BlueMat Academy: offering training workshops, German language support, mentoring, and career development
  • Participation in international conferences, research stays (e.g. at our research partner institutions ETH Zurich and Columbia University), and collaborative networks
  • Flexible working conditions, 30 vacation days, family-friendly policies
  • Access to on-campus fitness facilities and health promotion programs

For further information please contact Prof. Dr. Roland Aydin at roland.aydin@tuhh.de – we are pleased to support you.

Inclusive excellence drives better science. We actively seek female & international researchers from all walks of life, valuing non-linear careers and diverse perspectives across cultures, disciplines, and identities. We explicitly welcome applications from persons with severe disabilities and those with equivalent status as defined in Section 2 of the German Social Code, Book IX (SGB IX).

The Hamburg University of Technology stands for equal opportunities as well as appreciative and respectful cooperation.

Please submit your complete application documents (cover letter, CV, degree certificates) via the online application system, quoting the vacancy ID 30225WBMMEXK5, by 12 November 2025.

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