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Internship Position: Grant Intelligence Pipeline & Research Opportunity Modeling

Constructor Knowledge Labs · Bremen, Germany

onsiteinternshipmid level

About this role

Location: Bremen, Germany

Constructor Knowledge Labs (CKL), Bremen, Germany

In collaboration with Constructor University and Constructor Technology

Duration: Flexible; starting date as soon as possible

About the Position

Constructor Knowledge Labs (CKL) invites applications for a research-oriented internship. This project focuses on building an internal, scalable system that continuously discovers funding opportunities, structures and evaluates them, and supports strategic decision-making through data-driven insights.

The internship will contribute to the development of a multi-stage pipeline that integrates data collection, information extraction, profile matching, and analytical modeling. A key research direction includes exploring predictive approaches to estimate the probability of success (“Probability of Win”) for grant applications.

The role provides hands-on exposure to real-world challenges in information retrieval, data structuring, decision-support systems, and applied machine learning within a research-driven environment.

Main Responsibilities

  • Assist in the development of automated pipelines for discovering grant opportunities from multiple sources.
  • Support parsing, cleaning, and structuring of unstructured grant texts into standardized formats.
  • Contribute to building and maintaining institutional and researcher profile datasets.
  • Help design and implement scoring mechanisms (e.g., Fit Score).
  • Participate in exploratory data analysis and prototyping of analytical components.
  • Support development of dashboards, reporting tools, or notification systems.
  • Conduct literature reviews on relevant topics.
  • Assist in exploration of predictive models for estimating grant success probability.
  • Document workflows and experimental findings.

Requirements

  • Currently enrolled in a Bachelor’s or Master’s programme in a relevant field in Constructor University.
  • Basic programming skills (e.g., Python).
  • Understanding of data analysis, statistics, or machine learning concepts.
  • Interest in data-driven systems and automation.
  • Strong analytical thinking.
  • Good written and spoken English.

We Offer

  • Research internship with flexible duration in an international, interdisciplinary research environment.
  • Participation in active research projects at the intersection of AI, knowledge systems, and applied research, with a clearly scoped internship-level contribution.
  • Close supervision and mentoring by leading PIs and senior researchers, whose work shapes current research agendas and attracts significant scholarly attention and citations.
  • Opportunity to contribute to academic publications, embedded in established research groups with consistent presence at top-tier conferences and journals.
  • Flexible working arrangements, including hybrid or remote options.

Application Details

Please submit:

  • CV
  • Motivation letter (max. 1 page)
  • Transcript of records (GPA obligatory)

Deadline: 30 April 2026, 23:59 CET

About Constructor Knowledge Labs

At the Constructor Knowledge Labs (CKL) , we are committed to advancing applied research in Computer Science, Software Engineering, Machine Learning, and Artificial Intelligence. Based in Bremen, Germany, our mission is to drive innovation by applying cutting-edge methodologies and models to interdisciplinary domains such as Robotics, the Metaverse, Neurosciences, Neuropsychology, Education, and Life Sciences. Through a close partnership with Constructor University, CKL fosters collaborative research, offering a vibrant and innovative environment for researchers and joint PhD students. Together, we aim to make a meaningful impact by addressing real-world challenges through applied research and technological advancements.

Jobb.ai is an independent skill benchmarking platform. Applications are submitted on the employer's official website.