Senior Data Engineer

Camden Area
7 months ago
Applications closed

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Senior Data Engineer – Up to £90,000 + Bonus – London (Hybrid) – Gaming
 
Overview:
A market leading Digital Marketing agency specializing within the online gaming sector are searching for a Senior Data Engineer to join one of their growing teams in London on a hybrid basis.
 
Role & Responsibilities:

Design, implement, and maintain robust ETL pipelines to integrate data from diverse sources, including APIs like Facebook, Google Analytics, and payment providers.
Develop and optimize data models for batch processing and real-time streaming using tools like AWS Redshift, S3, and Kafka.
Lead efforts in acquiring, storing, processing, and provisioning data to meet evolving business requirements.
Perform customer behavior analysis, gaming analytics, and create actionable insights to enhance customer experiences and revenue streams.
Collaborate with stakeholders to deliver visually compelling reports and dashboards using tools like Tableau.
Oversee the administration, monitoring, and maintenance of data infrastructure and services.
Ensure compliance with data security and governance best practicesTechnical Requirements:

5+ years of experience in data engineering roles, with a proven ability to lead and mentor a team.
Expertise in SQL, Python, and R.
Strong proficiency in AWS technologies such as Redshift, S3, EC2, and Lambda.
Experience with Kafka and real-time data streaming technologies.
Advanced skills in building ETL pipelines and integrating data from APIs.
Familiarity with data visualization and reporting tools like Tableau.
Exceptional analytical skills and a strategic mindset.
Strong knowledge of data security, governance, and compliance standards.
Problem- solving mindset: Ability to analyse complex data issues and devise scalable solutionsPackage:

Up to £90,000 Basic Salary
Annual Bonus (Up to 20%)
Hybrid Working (London)Senior Data Engineer – Up to £90,000 + Bonus – London (Hybrid) – Gaming

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