Data Analyst

Gravitas Recruitment
London
6 days ago
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Role: Analytics Engineer/Data Analyst

Duration: 3 Months Rolling

Rate: £350-400/Day (Outside IR35)

Location: Remote (Occasional London Office visits)


We are seeking a highly skilled Analytic Engineer/Data Analyst for a 3-month contract position within the wellness industry. This is a fully remote role with occasional office visits to London as required. The successful candidate will play a key role in a major data migration project focused on redesigning and optimising a Looker instance. This position offers a competitive daily rate of £350-£400 and operates outside IR35.


The ideal candidate will possess a strong background in data analytics, with particular expertise in business intelligence tools and data modelling. You will work closely with other data professionals to ensure a smooth migration and to maximise the performance and usability of the Looker platform. This is an exciting opportunity to impact a meaningful product in the wellness space and contribute to a high-visibility project aimed at elevating the organisation’s data capabilities.


You will be responsible for collaborating with stakeholders to understand reporting requirements, rebuilding dashboards in Looker, and ensuring optimal data model performance. The project requires deep experience in gathering data insights and translating business needs into scalable data solutions. You should be confident working independently in a fast-paced environment and ready to take ownership of the BI migration lifecycle.


Project Description

This role will be specifically involved in a migration project where the key objective is to redesign an existing Looker instance to meet evolving business needs. Working within a collaborative team, the focus will be on the restructuring of data models and dashboards using LookML and DBT, ensuring that all data pipelines support clean, reliable insights. As part of the wellness industry, this organisation is committed to using data to improve customer outcomes, and your work will directly support these strategic goals.


Skills & Experience Required

  • Strong SQL skills with experience in data transformation and query performance optimisation
  • Proficiency in Python for data analysis and automation tasks
  • Extensive experience with Looker and LookML, including dashboard development and data modelling
  • Knowledge and hands-on experience with DBT (Data Build Tool)
  • Previous experience working on business intelligence (BI) migration or redesign projects
  • Ability to communicate complex data findings to non-technical stakeholders
  • Experience working with modern data stacks in cloud-based environments
  • Strong problem-solving skills and an analytical mindset
  • Comfortable working independently and managing priorities in a contract-based role

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