Aktiviere Job-Benachrichtigungen per E-Mail!

Master Thesis / Project Opportunity - Development of Autonomous Multi-Agent Performance Predicti...

Helmholtz Association of German Research Centres

Deutschland

Vor Ort

EUR 40.000 - 60.000

Vollzeit

Heute
Sei unter den ersten Bewerbenden

Erhöhe deine Chancen auf ein Interview

Erstelle einen auf die Position zugeschnittenen Lebenslauf, um deine Erfolgsquote zu erhöhen.

Zusammenfassung

Join a leading research center in Germany as an MSc student to develop an Autonomous Multi-Agent Performance Prediction Framework for PEM water electrolysis. You will design AI agents to analyze sensor data, forecast efficiency, and contribute to sustainable hydrogen production in a collaborative research environment.

Leistungen

Access to modern HPC infrastructure
Professional development opportunities
Flexible MSc Thesis Structure
Support from experienced researchers

Qualifikationen

  • Enrollment in a Master’s Program in relevant fields.
  • Proficient in Python; eager to learn ML libraries.
  • Familiarity with time-series analysis and forecasting methods.

Aufgaben

  • Collect and clean historical and live PEM electrolyzer sensor streams.
  • Develop regression/control-chart methods for trend analysis.
  • Implement LSTM/Transformer networks for performance forecasting.

Kenntnisse

Python
Machine Learning
Time-series analysis
Creative problem solving
Interdisciplinary research
Collaboration

Ausbildung

Master’s Program in Data Science, Computer Science, Materials Science, Engineering, Physics

Tools

PyTorch
TensorFlow
scikit-learn

Jobbeschreibung

Area of research:

Diploma & Master Thesis


Job description:

Your Job:

Join AMI, the Artificial Materials Intelligence division at the IET-3 at Forschungszentrum Jülich to develop an Autonomous Multi-Agent Performance Prediction Framework for PEM water electrolysis. As an MSc student, you will design and implement a suite of AI “agents” (autoencoders, statistical models, LSTMs and LLM-based rule engines) that process historical and live sensor data (voltage, current, temperature, pressure, flow) to forecast electrolyzer efficiency, degradation and stability. You will build data pipelines, refine predictive rules through a review-and-correction loop, and integrate an Aggregator Agent to fuse all outputs into one robust performance prediction-advancing explainable, self-improving AI for sustainable hydrogen production.

Your tasks in detail:
1. Data Preparation & Preprocessing

  • Collect and clean historical and live PEM electrolyzer sensor streams (voltage, current, temperature, pressure, flow) from our partners.
  • Segment data into fixed‐length windows, normalize values, and engineer features (e.g., rolling means, deltas).


2. Agent Implementation

  • Statistical Agent: Develop regression/control‐chart methods to capture trends and threshold breaches.
  • Forecasting Agent: Implement LSTM/Transformer networks for time‐series performance forecasting.


3. Rule-Based Agent: Encode expert‐driven and LLM-generated prediction rules into a modular, executable library.

  • Rule Management & Refinement
  • Rule Generation Agent: Use templates or LLM prompts to propose new performance‐prediction rules when agents disagree or fall below accuracy targets.
  • Review Agent: Monitor inter-agent conflicts, false positives/negatives, and flag poor predictions for rule updates.
  • Correction Agent: Validate, debug, and sanitize new or modified rules (syntax, logic, coverage) before deployment.


4. Collaboration & Documentation

  • Work closely with project supervisors and partner labs to share progress, datasets, and interim results.
  • Maintain clear, up-to-date documentation of data pipelines, model code, rules library, and evaluation results.
  • Present findings in regular meetings and contribute to thesis chapters or conference papers as needed.

Your Profile:

  • Enrollment in a Master’s Program; Fields such as Data Science, Computer Science, Materials Science, Engineering, Physics, or a related domain.
  • Proficient in Python; experience or eagerness to learn ML libraries (PyTorch, TensorFlow, scikit-learn),
  • Familiarity with time-series analysis and forecasting methods (LSTM/Transformer).
  • Experience with rule-based and LLM-driven systems is a plus.
  • Passion for sustainable energy solutions, with an emphasis on hydrogen materials.
  • Creative problem solver who enjoys interdisciplinary research and collaborative teamwork.
  • Proficient in English (written and spoken).
  • Comfortable engaging with international and cross-functional teams.

Our Offer:

Hands-On multi-Agent AI Project

  • Play a central role in developing a novel, high-impact performance prediction system for PEM water electrolyzers.

Cutting-Edge Research Environment

  • Access to modern HPC infrastructure, AI toolkits, and an internationally recognized research community.

Professional Development

  • Build critical skills in time-series data workflows, multi-agent architectures, and rule-based/LLM-driven model development—highly sought after in both academia and industry.

Flexible MSc Thesis Structure

  • Typical duration of 6–12 months aligned with Master’s project requirements.
  • Potential to co-author research papers or present findings at conferences, depending on project progress.

Support & Guidance

  • Supervision from experienced researchers in a highly collaborative setting.
  • Opportunity to network with experts at FZJülich, and other Helmholtz centers


In addition to exciting tasks and a collaborative working atmosphere at Jülich, we have a lot more to offer: go.fzj.de/benefits

We welcome applications from people with diverse backgrounds, e.g. in terms of age, gender, disability, sexual orientation / identity, and social, ethnic and religious origin. A diverse and inclusive working environment with equal opportunities in which everyone can realize their potential is important to us.

Further information on diversity and equal opportunities: go.fzj.de/equality

This research center is part of the Helmholtz Association of German Research Centers. With more than 42,000 employees and an annual budget of over € 5 billion, the Helmholtz Association is Germany's largest scientific organisation.

Hol dir deinen kostenlosen, vertraulichen Lebenslauf-Check.
eine PDF-, DOC-, DOCX-, ODT- oder PAGES-Datei bis zu 5 MB per Drag & Drop ablegen.