We, and third parties, use cookies on our website. We use cookies to ensure that our website functions properly, to store your preferences, to gain insight into visitor behavior, but also for marketing and social media purposes (showing personalized advertisements). By clicking 'Accept', you agree to the use of all cookies. In our Cookie Statement. you can read more about the cookies we use and save or change your preferences. By clicking 'Refuse' you only agree to the use of functional cookies.


We believe in an "AI-first" development approach. We are looking for an agile learner who leverages modern AI tools (like Gemini, Claude, etc.) alongside traditional engineering skills (GCP, dbt, Python) to accelerate development and solve complex problems creatively.
This position is for a Data Engineer to help implement and scale Hunkemöller's enterprise data warehouse and data mesh on Google Cloud. You will collaborate with a team of internal and external engineers, driving key data transformation initiatives. The right candidate will be excited by the prospect of building a scalable data platform to support next-generation analytics, and will actively seek out ways to make our data processes faster and more efficient.
Responsibilities:
Build Data Pipelines: Develop, test, and maintain robust, scalable data pipelines using SQL, dbt, and cloud technologies (GCP), ensuring high standards of data quality and reliability.
AI-Augmented Engineering: Actively leverage advanced AI coding assistants and LLMs to accelerate pipeline development, debug complex code, generate documentation, and automate repetitive tasks.
Collaborate on Data Modeling: Assist in the implementation of scalable data models (e.g., star schemas, data vaults) within our enterprise data warehouse (BigQuery).
Develop on GCP: Build and maintain our Google Cloud Platform (GCP) data infrastructure, focusing on automation, security, and performance improvements.
Collaborate and Learn: Partner with Product, Data, and Design teams to resolve technical data issues. Participate in code reviews and continuously learn and share new engineering best practices.
Build for Analytics & AI: Build and optimize data platforms that power our BI, Data Science, and AI solutions, ensuring data is accessible, reliable, and ready for analysis.
Requirements:
Solid Data Engineering Experience: 1 to 3 years of hands-on experience in data engineering, with a strong track record of building data pipelines and working with data warehouse solutions.
Adaptability & Continuous Learning: A strong desire to learn quickly and adapt to new technologies. You embrace modern development practices and are comfortable using AI tools as a force multiplier in your daily work.
Strong SQL Proficiency: Advanced skills in writing, optimizing, and debugging complex SQL queries for data manipulation and analysis.
Cloud & Data Warehousing: Solid knowledge of cloud data services, preferably on Google Cloud Platform (BigQuery, Dataflow, etc.).
Programming & Frameworks: Experience with Python and applying software engineering principles to data solutions. Hands-on experience with dbt is highly preferred.
Code Quality & Version Control: Proficient in writing clean, well-documented, and tested code, with strong experience using Git and CI/CD workflows.
English Proficiency: Excellent written and verbal English communication skills.
What we offer
25 days of annual leave, with the option to buy or sell up to 4 additional days
Hybrid work model, combining office and remote working
Possibility to work from abroad for up to 2 weeks per year
An international work environment, working with teams across different countries
Travel allowance to support commuting costs
Access to the Hunkemöller Academy for professional development
25% employee discount on all Hunkemöller products
At Hunkemöller, you will be part of a collaborative environment where business and IT work closely together to support our retail and omnichannel setup.
Please note: We take care of our recruitment directly at Hunkemöller. For this reason, we kindly ask agencies not to reach out, and applications sent by email cannot be considered. If you’re interested in this role, we’d love to receive your application via our official career channels.
We believe in an "AI-first" development approach. We are looking for an agile learner who leverages modern AI tools (like Gemini, Claude, etc.) alongside traditional engineering skills (GCP, dbt, Python) to accelerate development and solve complex problems creatively.
This position is for a Data Engineer to help implement and scale Hunkemöller's enterprise data warehouse and data mesh on Google Cloud. You will collaborate with a team of internal and external engineers, driving key data transformation initiatives. The right candidate will be excited by the prospect of building a scalable data platform to support next-generation analytics, and will actively seek out ways to make our data processes faster and more efficient.
Responsibilities:
Build Data Pipelines: Develop, test, and maintain robust, scalable data pipelines using SQL, dbt, and cloud technologies (GCP), ensuring high standards of data quality and reliability.
AI-Augmented Engineering: Actively leverage advanced AI coding assistants and LLMs to accelerate pipeline development, debug complex code, generate documentation, and automate repetitive tasks.
Collaborate on Data Modeling: Assist in the implementation of scalable data models (e.g., star schemas, data vaults) within our enterprise data warehouse (BigQuery).
Develop on GCP: Build and maintain our Google Cloud Platform (GCP) data infrastructure, focusing on automation, security, and performance improvements.
Collaborate and Learn: Partner with Product, Data, and Design teams to resolve technical data issues. Participate in code reviews and continuously learn and share new engineering best practices.
Build for Analytics & AI: Build and optimize data platforms that power our BI, Data Science, and AI solutions, ensuring data is accessible, reliable, and ready for analysis.
Requirements:
Solid Data Engineering Experience: 1 to 3 years of hands-on experience in data engineering, with a strong track record of building data pipelines and working with data warehouse solutions.
Adaptability & Continuous Learning: A strong desire to learn quickly and adapt to new technologies. You embrace modern development practices and are comfortable using AI tools as a force multiplier in your daily work.
Strong SQL Proficiency: Advanced skills in writing, optimizing, and debugging complex SQL queries for data manipulation and analysis.
Cloud & Data Warehousing: Solid knowledge of cloud data services, preferably on Google Cloud Platform (BigQuery, Dataflow, etc.).
Programming & Frameworks: Experience with Python and applying software engineering principles to data solutions. Hands-on experience with dbt is highly preferred.
Code Quality & Version Control: Proficient in writing clean, well-documented, and tested code, with strong experience using Git and CI/CD workflows.
English Proficiency: Excellent written and verbal English communication skills.
What we offer
25 days of annual leave, with the option to buy or sell up to 4 additional days
Hybrid work model, combining office and remote working
Possibility to work from abroad for up to 2 weeks per year
An international work environment, working with teams across different countries
Travel allowance to support commuting costs
Access to the Hunkemöller Academy for professional development
25% employee discount on all Hunkemöller products
At Hunkemöller, you will be part of a collaborative environment where business and IT work closely together to support our retail and omnichannel setup.
Please note: We take care of our recruitment directly at Hunkemöller. For this reason, we kindly ask agencies not to reach out, and applications sent by email cannot be considered. If you’re interested in this role, we’d love to receive your application via our official career channels.




