Working Student in Data Science (m/f/d)
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Our Company
WE ARE AGAIN AWARDED AS TOP ARBEITGEBER 2025!
At AP Sensing, we’re building on a success story that began in the garage of Bill Hewlett and Dave Packard. As an independent HP spin-off, we combine over 40 years of technological expertise with a passion for innovation.
Together we’ll continue to enhance infrastructure, protect people, and safeguard our planet. With a commitment to fiber optic sensing, we value every voice and empower growth. Join us in thinking ahead to create a smarter, safer world.
YOUR NEW CAREER
Your topic: Foundation Models for Distributed Acoustic Sensing (DAS)
DAS enables long-range and high-resolution measurements along optical fibers by converting them into arrays of thousands of virtual microphones. This technology is used in a wide range of applications, including critical infrastructure monitoring and environmental monitoring. However, DAS systems generate huge amounts of high-resolution data, creating significant challenges for real-time processing and analysis.
Your Responsibilities
- Define the model architecture and self-supervised learning methods for foundation models.
- Build and curate a diverse and multi-domain DAS dataset.
- Run an iterative train-evaluate-optimize loop to experiment with self-supervised algorithms, hyperparameters, and model sizes.
- Evaluated the benefits of self-supervised foundation models against existing models using the benchmark DAS dataset.
Your Profile
- You are a master's student (m/f/d) looking for a working student position and are capable of independent work without extensive hand holding.
- You are interested in the topic of Foundation models for Distributed Acoustic Sensing.
- Academic background in computer science, mathematics, physics, or electrical engineering.
- Very good knowledge of machine learning, artificial intelligence, and, optimally, the concepts of foundation models.
- Strong programming skills in Python and hands-on experience with machine learning frameworks such as PyTorch.
- Experience with deep learning and practical project experience is required.
- Interest in applied research and real-world data challenges.
- Duration: 6 months / 20 hours per week.
Our Offer
- meal subsidy for in-house canteen
- free drinks and fresh fruit
- flat hierarchies and very collegial relationship with managers
- very positive and appreciative working atmosphere
- international and intercultural team
- flexible working hours and home office options
- company laptop for everyone
- ideal work-life balance
- regular company and team events
- new and fully equipped kitchen with high-tech coffee machine
- kiosk in the building
- large, bright and air-conditioned offices
- modern office equipment with creative spaces
- height-adjustable desks for ergonomic working
- 2 minutes to the S-Bahn and motorway
- free parking spaces
- sports facilities: weekly fitness coach
- showers available (for cyclists or "lunch break joggers")
Are you ready to play a BIG role in a small team instead of a SMALL role in a big team?
Then you are spot-on with us…
Contact: Ingrid Licht
Reference: 688G
AP Sensing GmbH
71034 Böblingen
www.apsensing.com