Senior Data Analyst

Obsidian
City of London
1 month ago
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Overview

Superb Senior Data Analyst, billion plus Scale Up. PostgreSQL / SQL Data Analyst, Metabase


If you are a Senior Data Analyst with extensive Postgres and BI tools such as Metabase who thrives working with the Senior team to shape the future of the companies journey then this is for you!


Our client is an exciting, fast growing, social commerce house that is looking for a data driven problem solver who absolutely loves turning numbers into clarity.


Industry background experience, ONE OF THE FOLLOWING IS REQUIRED - social commerce, consumer marketplace, affiliate technology, creator economy, mobile first consumer apps or similar.


If you enjoy digging into SQL, BI tools such as metabase, spotting patterns others miss, and shaping how a business understands its customers, products, and performance, then this is for you.


As a PostgreSQL / SQL Data Analyst, youll work at the centre of the business, supporting Finance, Commercial, Product, and our development team with clear, reliable insight.


Youll be the person people turn to when they need answers and when they need to understand what the data really means.


What youll be doing

  • Writing and optimising SQL queries (PostgreSQL) that feed our key reports and dashboards.
  • Building clear visualisations in Metabase to help teams make informed decisions so experience with metabase or equivalent tool is a MUST!
  • Breaking down complex findings into simple, practical explanations.
  • Keeping a close eye on data reliability and consistency.
  • Spotting unusual trends, interesting patterns, and areas that need attention.
  • Working with different teams to understand what they need and translating that into meaningful analysis.
  • Managing your workload confidently in a fast-moving environment.

Who we're looking for

  • Someone highly confident in SQL, especially PostgreSQL.
  • Hands on experience building dashboards in Metabase.
  • Strong numeracy and a solid grasp of basic statistical thinking.
  • Comfortable presenting insights to people at all levels.
  • Detail obsessed - you care about accuracy.
  • Naturally curious: you want to understand why things look the way they do.
  • Able to take a business question and turn it into a clear, structured piece of analysis.
  • Organised, adaptable, and calm when priorities shift.

Advantageous

  • Experience working with large or messy datasets
  • Exposure to social commerce, creator platforms, or e-commerce/affiliate data flows

As the Lead Senior Data Analyst in return

You will be joining an exciting rapidly growing environment that will look to you as the expert in this field, your input will count , influence and help decide the company direction as part of a world class senior team


There is extensive career progress and opportunity to build a future team as the company continues to scale


The company has multiple offices globally, this team will be based in London and generally work hybrid / 2-3 days together in the office per week


Package is flexible depending on experience and includes shares, to give an idea on base 90k-100k however that is negotiable. Plus exceptional shares and package


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