Senior Data Engineer - Snowflake - £100,000

Tenth Revolution Group
London
1 day ago
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A large Financial Services company are looking for a Data Engineer with Snowflake experience to join their growing Data Engineering team in London - this is a permanent role with hybrid working arrangements, with 2 days per week in the office in average.In this role you will be working within a new, greenfield division of the business, using a brand-new technology stack including Snowflake, dbt, Airflow and AWS.This function provide data for Machine Learning and Artificial Intelligence capabilities, helping them to provide the best possible service offering to their customers. You'll work on delivering end-to-end solutions and, as a more Senior member of the team, you will mentor Junior colleagues, take ownership of projects, and drive best-practice.This is a unique opportunity for an experienced Data Engineer to join a brand-new function of a well-established business - combining a start-up mentality with a strong financial backing, and the chance to make a real impact!We're looking for the following experience: Extensive hands-on experience with SnowflakeExtensive experience with dbt, Airflow, AWS and TerraformExellent scripting skills in SQLExperience developing solutions entirely from scratchGreat communication skills, with the ability to understand and translate complex requirements into technical solutionsYou will be rewarded with: Salary up to £100,000 depending on experienceBonus up to 10%...

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