Senior Data Engineer

e-Frontiers
London
1 year ago
Applications closed

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Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

Senior Data EngineerLocation: London, England, United KingdomRate: £(Apply online only)pdWe are currently seeking talented Analytics Engineers to join a dynamic and innovative Data team. This role offers the opportunity to transform data into valuable insights, enhancing user experiences and empowering analyst communities. Using a cutting-edge tech stack, including dbt and Databricks, you’ll build powerful data pipelines that drive meaningful impact across the business.Key Responsibilities:Collaborate with cross-functional teams to design and develop data products that support millions of users in making informed financial decisions.Leverage data expertise to empower analysts and business users to extract maximum value from data assets.Work within an engineering team to develop high-quality, scalable, and reliable data pipelines following best practices.Exhibit curiosity about data applications and drive innovation in data utilization for business and user impact.Take a proactive approach to problem-solving, automating processes, and optimizing data workflows.Communicate effectively with non-technical stakeholders, enabling them to leverage datasets and self-serve insights.Skills & Experience:Proficiency in SQL, with experience in handling and transforming large datasets.5 years plus of experience in a data-driven role within a business setting.Hands-on experience with cloud-based data warehouses (e.g., Databricks).Ability to optimize queries and data pipelines for performance and reliability.Bonus: Experience with DBT, data orchestration tools (e.g., Airflow), and visualization tools (e.g., Tableau).A creative mindset for problem-solving and automating data processes.Strong communication skills to translate complex technical concepts into simple insights for non-technical stakeholders.Ability to write clear and effective documentation tailored to diverse audiences

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