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Data Engineer

Christopher Ali
Bristol
2 months ago
Applications closed

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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

*Data Engineer-Python-Django-AWS-JavaScript frameworks-Amazon Ads API-Remote £50,000-£60,000 p/a*


Christopher Ali have partnered up with an Retail media+agency who due to due to a period of rapid growth are looking for a Data Engineer to grow the team.


The Role:


As a Data Engineer reporting directly to the Chief Technology Officer you will have the opportunity to lead the development of tools and technology used in house and released on marketplace platforms.


Responsibilities:


  • How data is accessed and used, including internal tools, dashboards, and analytics interfaces
  • Updating and developing the BASE Wordpress site
  • Respond to internal and external requests for ad-hoc data analysis
  • Design, build, and launch collections of sophisticated data models and visualisations that support multiple use cases across different products or domains
  • Excited to grow into the role and help define it as it evolves
  • Develop and maintain user-friendly, high-quality data pipelines, ensuring accessibility and usability
  • Ensure alignment with architectural, security, and privacy standards while enabling data-driven decision-making
  • Create and maintain data models that drive key performance indicators (KPIs) for clients


Skills and experience required:


  • 2+ Years of experience in data engineering, including creating reliable, efficient, and scalable data pipelines and experiences
  • Experience working with commerce, DV360 or Amazon Advertising datasets
  • Python - Django, REST Frameworks, SQL/NoSQL and JavaScript frameworks
  • Experience with the Amazon Ads API, SP-API
  • Knowledge of cloud-based data platforms (e.g. AWS)
  • Knowledge of Clean Rooms (e.g. LiveRamp, Amazon Marketing Cloud, Snowflake)
  • Proficiency with core AWS services (API Gateway, Lambda, DynamoDB, SNS, SQS)
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