Senior Scientist Postdoc /Research Group Lead (m/f/d)Institute:Smart Reactors**Remuneration: **EG 14 TV-LID: 25525WV4Start of employment: 1 December 2025Application deadline: 8 October 2025Scope: Full time, fixed-term for three years (after successful assessment extension for another three yearspossible)The Collaborative Research Center (CRC) 1615 "SMART Reactors for Future Process Engineering" aims to develop reactors that autonomously and sustainably convert renewable feedstocks into a wide variety of products. To contribute to this vision, we are establishing a Junior Research Group dedicated to machine learning (ML), automation, and multiscale modeling, focussing on material and process development. This group will aid the CRC 1615 with state-of-the-art ML tools tailored to the diverse needs of experimental and simulation-based subprojects. Anchored at the Institute of Process Systems Engineering, the group will collaborate closely with application-driven PIs from across the CRC. By identifying structurally similar problems and cross-cutting use cases, the group will transfer developed methods and insights throughout the center.YOUR TASKSDevelopment and adaptation of cutting-edge machine learning methods tailored to CRC 1615 use casesCoordination of collaborative research activities and scientific integration across CRC subprojectsScientific guidance of PhD students within the groupDevelopment of teaching materials and establishment of a new course in Scientific Computing and Machine Learning in Chemical EngineeringPreparation of high-quality scientific publications and presentationsYOUR PROFILERequirementsUniversity degree in the subject of Computational Engineering, Computer Science, Data Science, Chemical Engineering, or a closely related field, doctorateRequired knowledge and personal skillsStrong publication record and proven research experience in applying machine learning techniques to chemical engineering challengesIn-depth expertise in model identification, including approaches such as symbolic regression and neural networksExperience in data-driven process optimization, including Bayesian Optimization and active learningExcellent communication and collaboration skills; demonstrated ability to work independently and lead research activities or teamsOUR OFFERThe opportunity to pursue further academic qualification (e.g., habilitation)Close integration with a DFG-funded research center working and connection to the research initiative Machine Learning in Engineering (MLE)Participation in national and international conferences, including options for research stays abroadA job in an interesting, friendly, supportive and appreciative working environmentIntensive induction and onboarding30 day vacation per yearAt the heart of TU Hamburg's research, teaching and transfer of technology is the guiding principle of developing technology for people. The TU Hamburg sees itself in this context as a family-friendly and sustainable university with high performance and quality standards that strives for excellence in all its research fields. Interdisciplinarity, innovation, regionality and internationality are binding principles in our actions. With currently around 8.000 students, 110 professors and 1.650 employees, the TU Hamburg is characterised by short decision-making processes and close cooperation between the board, the institutes, the deans of studies, the research areas and the administration. We identify ourselves with a modern leadership culture and cultivate appreciative interaction.For further information please contact Prof. Mirko Skiborowski, Tel.-Nr, email:.The position is advertised as part of the TUHH women's promotion initiative. We look forward to receiving applications from qualified women.We value diversity, therefore all applications are welcome, regardless of gender, gender identity, ethnic origin, nationality, age, religion and belief, disability, sexual orientation and identity or social background.The TUHH stands for equal opportunitiesas well as appreciative and respectful cooperation.Please send your complete application documents (cover letter, curriculum vitae in table form, proof of completed training and/or university degree, job references or certificates of employment) via the online application system.Notice for severely disabled persons and people with equal status.Notice for graduates of foreign educational qualifications:Please submit proof of all obtained university degrees and, if available, the recognition of your educational qualifications in Germany (e.g. anabin excerpts and/or acknowledgement of previous employers).