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Data Engineer

Better Placed Ltd - A Sunday Times Top 10 Employer!
Manchester
1 week ago
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AI Talent Partner for Startups & Scaleups | Co-Founder @ Better Placed Tech + UK AI Meetup | Helping Companies Hire Top Generative AI & ML Talent |…
Overview

My client is a well-established direct-to-consumer brand embarking on a data-led transformation to improve business performance and decision-making. They’re looking for an experienced, hands-on Data Engineer to design and optimise data architecture, build robust pipelines, and deliver actionable insights across the business.


Key Responsibilities

  • Own and develop the data architecture, ensuring performance and scalability.
  • Design, develop, and optimise SQL queries, stored procedures, and ETL pipelines.
  • Work with AWS S3 data lakes and ERP systems to extract, transform, and load data.
  • Ensure data accuracy and integrity across multiple sources.
  • Integrate services via RESTful APIs and manage structured/unstructured data formats.
  • Build interactive dashboards in BI tools such as Power BI or Apache Superset.
  • Automate KPI tracking and reporting to streamline workflows.
  • Partner with teams to identify opportunities for process optimisation.
  • Apply best visualisation principles for clarity and impact.
  • Ensure dashboard performance and real-time accessibility for business users.

Business Reporting & Data Insights

  • Collaborate with stakeholders to define KPIs and reporting needs.
  • Develop self-service reporting tools for non-technical teams.
  • Conduct data validation and quality assurance to ensure reliable insights.
  • Support forecasting and predictive analytics to guide strategic decisions.
  • Translate complex data into clear, actionable recommendations.

Required Skills & Experience

  • Strong SQL expertise, including optimisation and performance tuning.
  • Experience in ETL development, data modelling, and large datasets.
  • Proficiency with BI tools such as Power BI, Superset, or Tableau.
  • Experience with AWS data tools and governance.
  • Strong analytical mindset with a focus on business outcomes.

Nice-to-Have

  • Python or Airflow experience for automation.
  • Knowledge of data warehouse best practices (Snowflake, BigQuery, Redshift).
  • Experience with MS Business Central or similar ERP systems.
  • eCommerce or omni-channel retail background.
  • Exposure to machine learning and predictive analytics.

This is a great opportunity to join a fast growing, stable D2C brand that values flexibility for all their staff and a chance to take ownership of their data suite.


Seniority level

Mid-Senior level


Employment type

Full-time


Job function

Information Technology


Industries

IT System Data Services, IT System Custom Software Development, and Software Development


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