SENIOR DATA ENGINEER – MIDLANCER
Leiden, South Holland / €80000 - €100000
INFO
€80000 - €100000
LOCATION
Leiden, South Holland
Permanent
Senior Data Engineer - Midlance
Up to €100,000
Leiden
The Company
I am working with an exciting consultancy based in Leiden, looking for a midlancer to join their growing team. Growth as a data professional are at the core of this company and they aim to help and support all employees who join. You will work on exciting projects and have a dedicated team of specialists constantly on the look out for the best assignments. As a midlancer, you would get the benefits and security of a permanent position, with the freelancing salary and projects.
Your Skills and Experience
The ideal fit for this role is someone who:
- Is experienced with a cloud technology (Azure, AWS, GCP)
- Experience with data bricks spark and pyspark
- Has used Python and other coding languages.
- Dutch speaking is a requirement for this role.
The Role
As a data engineer, you will be responsible for designing, building, and maintaining the company's data infrastructure.
- You will work closely with data analysts and data scientists to ensure that data is collected, stored, and processed in an efficient and secure manner.
- You will maintain pipelines.
- You will also be working on the cloud and building platforms across the business and for different clients.
- The role will also involve communicating work to stakeholders.
Benefits
- Stability of a permanent employee with the salary benefits of a freelancer.
- Indefinite contract
- WFH flexibility
- Laptop
- 40/36/32-hour contracts
How to Apply
Please register your interest by sending your CV to Rosie Morgan via the Apply link on this page.
KEYWORDS
Data Engineer - Senior Data Engineer - Consulting- Python - Azure - AWS - GCP - SQL - Midlancer

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JOB RESULTS

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