At Bobst Mex SA, our IoT Lab develops future generations of connected products and services for industry. We combine innovation, technology, and business expertise to create smart solutions for industrial performance.
What we offer:
A 6-month internship within our Agile team, where you will actively participate in concrete projects around industrial data analysis. You will be supervised by experts and contribute to the evolution of our analytics strategy.
Your missions:
- Explore and analyze data from our connected machines (industrial IoT).
- Identify trends, anomalies or opportunities for improvement via machine learning models.
- Participate in the creation of analytical prototypes for predictive maintenance and anomaly detection.
- Collaborate with technical teams to integrate your analyses into our solutions (Edge, Cloud, Front-end).
- Contribute to the quality and reliability of the data used.
Profile sought:
- Master's student in Data Science, Computer Science or equivalent field.
- Good foundation in Python and data science libraries (pandas, scikit-learn, etc.).
- Interest in cloud environments (AWS, Azure) and distributed analysis tools.
- Curiosity, team spirit, autonomy and desire to learn.
- Fluency in English, French is a plus.
- A sensitivity to industrial issues is appreciated.
What you will learn:
- Work on real data from the industry.
- Apply advanced analysis and machine learning methods.
- Collaborate in an Agile and multidisciplinary environment.
- Discover the challenges of industrial IoT and digital transformation.
Join us—and grow with us.
Join a company where engineering matters. At BOBST, we don’t just shape the future of packaging—we shape careers, too. You’ll join a global team that values curiosity, collaboration, and courage. Whether you’re developing cutting-edge technologies or supporting the systems that make them possible, your work will have a real-world impact. And because we remain a family business, we believe in shared growth—with trust, kindness, and a shared ambition.
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