Data Engineer - Databricks

Tenth Revolution Group
Dunfermline
9 months ago
Applications closed

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Databricks Data Engineer: £60,000 I am looking for a data engineer who has experience in Databricks, Azure, SQL, Python and Spark to join a well-established organisation who are currently expanding their data team.Our client is partnered with both Databricks and Microsoft and they deliver data solutions for a diverse range of clients.They operate with a hybrid working model, where employees are expected to go to the client site when required on a basis of 2-3 times a month.Our client has been growing massively, meaning this is a great opportunity to develop professionally and work with top level data engineers.You will be working directly with clients and work on a variety of different projects in an array of industries.Requirements:-Strong Databricks experience as well as Python and SQL-Azure or AWS experienceBenefits:-Bonus-Flexible working-Annual salary review-25 days annual leave and bank holidays-And more!Contact

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