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Data Engineer, AWS (Early Career)
Location
Finland
Posted
70 days ago
Salary
0
Seniority
Mid Level
Job Description
Data Engineer, AWS (Early Career)
Advian
Are you ready to take the next step in your Data Engineering career and build modern data solutions with an experienced team? At Advian, you’ll work on AWS-based data platforms, pipelines and analytics solutions as part of a skilled customer team — gaining hands-on experience with modern technologies while growing into a versatile data professional. ADVIAN Advian turns data into real value by tackling tough challenges with expertise and methods you won’t find elsewhere. Our core strengths are Edge AI, GeoAI, and the intelligent use of data. We work across industries with technically demanding and innovative projects, often solving problems where standard solutions don’t exist. Our flat and self-directed organizational culture gives you the autonomy to drive impact while benefiting from support among highly skilled colleagues. THE ROLE As a data engineer, you will work as part of a larger customer team. You will get to design and implement data platforms, databases and pipelines in the AWS environment. Depending on your skills, you can also participate in the implementation of reporting and analytics solutions. WHAT WE ARE LOOKING FOR We would be a great match if you have: - At least 1–2 years of practical experience implementing data solutions in AWS - Finnish and English (both at a professional working level) It is considered a plus if you have: - Experience with Snowflake - Understanding of Data Vault modeling - Experience with Agile Data Engine - Knowledge of Tableau WHY ADVIAN Who better to tell than the co-Advians themselves? Many describe Advian as a place where freedom, trust and self-direction enable meaningful work. In this role, you’ll have the opportunity to grow your expertise while contributing to real customer projects together with experienced colleagues. - Flexible working hours and location - A low-hierarchy and self-directed culture - A supportive team of highly skilled professionals - Opportunities to grow your expertise in modern data technologies - Challenging and meaningful customer projects Read more about Advian and our people on our website. PRACTICAL DETAILS - Permanent and full-time position (part-time work also possible) - Location: Espoo or remotely from anywhere in Finland ARE YOU INTERESTED? Share your goals in your application and send it through our career portal no later than 14.4.2026. Apply quickly, as we review applications continuously and may fill the position before the deadline! If you have any questions, feel free to contact our HR Specialist Anniina Tuomela (anniina.tuomela@advian.fi) Only goals and dreams as limits!
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