Stellendetails zu: Working Student - Recommendation Engine (Product Personalization) (m/f/d)
Working Student - Recommendation Engine (Product Personalization) (m/f/d)
Kopfbereich
Besondere Merkmale
Arbeitsort
Ingolstadt, DonauAnstellungsart
Teilzeit (Nachmittag)Beginn
ab sofortBerufsbezeichnung
- Data Scientist
Stellenbeschreibung
Job Description:
For us**„Let’s Go!“**is not just a slogan, it is an attitude. We love technology and we want to excite. We have fun and want to inspire. Our customers and our teams. That’s why we are looking for people who share this spirit. People who are passionate about creating the shopping experience of the future together with 50.000 colleagues across Europe.
Your tasks
Support in the development and optimization of recommendation use cases (e.g., product recommendations, personalization)
Analysis of customer behavior and interaction data for insight generation
Assistance in the definition and testing of recommendation strategies and logic
Data extraction and preparation for use cases using BigQuery datasets
Support of A/B testing and performance analysis of recommendations
Collaboration with:
Data Engineers (data availability and pipelines)- Data Scientists (models and algorithms)
Product Managers (use case definition)
Data Scientists (models and algorithms)
Product Managers (use case definition)
Monitoring and improvement of:- Recommendation performance (CTR, conversion, engagement)
Recommendation performance (CTR, conversion, engagement)
Contribution to documentation and use case design
Your profile
Enrolled in aMaster’s program(e.g., Data Science, Computer Science, Business Analytics, Information Systems)
StrongSQL skills(data extraction, joins, aggregations)
Good knowledge ofPython(data analysis with pandas)
Hands-on experience withBigQuery(or similar data warehouse)
Basic understanding of:- Recommendation systems / personalization concepts
Customer data and behavioral analytics
Recommendation systems / personalization concepts
Customer data and behavioral analytics
Strong analytical thinking and interest indata-driven decision making
Fluent inEnglish(German is a plus)
Exposure toAI/ML concepts- Classification, ranking, or recommendation basics
Classification, ranking, or recommendation basics
Familiarity with:- A/B testing or experimentation frameworks
Tools likedbt, Airflow, or analytics platforms
A/B testing or experimentation frameworks
Tools likedbt, Airflow, or analytics platforms
Understanding of:- Customer journey / marketing funnels
Event-based data (e.g., tracking, clickstream)
Customer journey / marketing funnels
Event-based data (e.g., tracking, clickstream)
Exposure toretail / e-commerce / marketplaceuse cases
Curiosity aboutcustomer behavior and personalization
Ability to connectdata with business impact
Structured and hypothesis-driven thinking
Proactive attitude and willingness to learn
Good collaboration and communication skills
What's in it for you?
- International teams & versatile tasks
- 30 days vacation & subsidized company pension plan
- Employees discount & Fitness Collaborations
- Training & Education
- Open corporate culture & Teamwork
- Mobile work
About us
We are looking for a Working Student (m/f/d) in our Product team to drive our strategic data projects forward with your (m/f/d) innovative approach and fresh ideas. Our interdisciplinary team is characterized by agility, openness and respect. Have the opportunity to contribute new impulses, actively shape processes and shape the retail media world of MediaMarktSaturn in a forward-looking way with us.The best solutions come from bringing together diverse perspectives. Embracing diversity is key to achieving our vision of becoming the Experience Champion. We value inclusion, foster equal opportunity, and welcome you to be part of our team.Your HR contactLaura SchröderLet's Go!Ready? We are looking forward to receiving your application!Apply now
Arbeitsorte
Unternehmensdarstellung: Media-Saturn Deutschland GmbH
Media-Saturn Deutschland GmbH
In diesem Dokument befinden sich aus Sicherheitsgründen keine Kontaktdaten des Arbeitgebers. Wenn Sie diese sehen möchten, lösen Sie bitte die Sicherheitsfrage und laden Sie das PDF erneut.