Mode of Employment: Fixed Term
Are you ready to challenge the boundaries of AI and shape the future of time series forecasting? Join us in Munich or Erlangen as a Master Thesis student and dive deep into innovative foundation model architectures beyond LLMs—your research could redefine how we understand and predict complex systems.
What we offer you
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Exciting research and development projects that put your theoretical knowledge into practice
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Individual supervision and support from experienced experts in your field
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Access to the latest technologies, laboratories, and resources
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Diverse opportunities to contribute your ideas and actively shape the projects
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Excellent career opportunities through contact with potential employers
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You apply your academic knowledge to the systematic literature review of structural differences between language and time series data within Transformer-based architectures
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Building on this, you critically assess which Transformer components—such as tokenization, positional encoding, and attention mechanisms—can be successfully transferred from LLMs to time series modeling and which require adaptation
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Subsequently, you conduct a targeted practical investigation of a specific finding, for example by analyzing and redesigning components like embedding layers or positional encodings, or by exploring fine-tuning strategies for time series foundation models
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To validate your hypotheses, you design and execute experiments that evaluate the impact of the identified architectural modifications
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Where appropriate, you extend your research to the energy systems domain, using real-world datasets from ongoing projects to test the applicability of your results
This is how you'll win us over
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Education: You are currently enrolled in a Master's program in computer science, data science, electrical engineering, mathematics, or a related field with strong academic performance and are currently looking for an interesting thesis topic starting no earlier than the beginning of August
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Experience and Skills:
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You have a solid foundation in machine learning and deep learning
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You are familiar with Transformer architectures and their components
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You possess programming proficiency in Python and deep learning frameworks such as PyTorch
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Ways of Working: You demonstrate pro-activeness, independent thinking, and a willingness to engage with open research questions
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Languages: Very good English skills are required
You are much more than your qualifications, and we believe in the potential of every single candidate. We look forward to getting to know you!
At Siemens, we believe that feeling valued and included is the foundation for doing great work. That’s why we aim to create an inclusive workplace where everyone feels a sense of belonging, and where individual perspectives and experiences are celebrated. Our commitment to fairness and respect extends to every applicant.
As an equal opportunity employer, we welcome applications from individuals of all backgrounds and particularly encourage applications from persons with disabilities.
About Us
The world never stands still. And new challenges arise every day. With a passion for questioning things, for supplying ideas, and intelligently driving things forward we are helping society move towards a smarter tomorrow. Be it with technologies that reduce carbon emissions in cities or hyperintelligent robots. This is how we are able, to tackle the most important projects and push them forward together. Help us shape the future.
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