Data Engineer - Remote UK

Oliver Bernard
Leigh
9 months ago
Applications closed

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Data Engineer - Remote UK


Salary:£80,000 – £120,000 + Equity


About Them

We have partnered with a UK-based remote startup is building an AI-first platform to transform workforce management from the ground up. They're moving quickly to solve meaningful problems in the future of work, with early technical hires playing a pivotal role alongside leadership in shaping the core product.


Responsibilities

  • Embed with their customers, identifying high-impact opportunities.
  • Build robust pipelines to ingest data from various clients.
  • Define and store all the raw data in their warehouse.
  • Implement the mechanisms for our application and AI models to query this data efficiently.
  • Emphasise data quality.
  • Work closely with a Forward-Deployed Engineer to understand data needs for new features.


About you

  • Fluency in SQL and experience building ETL / ELT pipelines that have handled substantial data.
  • Knowledge of Python, Airbyte/Fivetran, or Kafka, to move and transform data reliably.
  • Experience with modern data warehouses (Snowflake, BigQuery, Redshift, or even Postgres).
  • Comfortable writing code for data tasks.
  • Enjoy liaising with the product team to understand how data powers features and insights.
  • Excellent communication skills, interfacing with clients and wider stakeholders.


Why Join Them

  • Work with top engineers and AI researchers from leading tech firms and academic institutions.
  • Backed by leading investors and operating in a high-growth market with tangible business impact.


£80-120k base salary + Equity.


If this is of interest, please apply or email at

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