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Data Analyst (Marketing)

Trade Nation
City of London
1 week ago
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Job Overview

Join us as a Data Analyst (Marketing) at Trade Nation. You will collect, analyse, and interpret marketing data to support decision‑making across campaigns, channels, and customer segments. Key responsibilities include building automated dashboards, maintaining marketing KPIs, and designing ETL pipelines using Python and SQL. You’ll collaborate with marketing, sales, product, and finance teams to align data insights with business objectives.


About Trade Nation

Trade Nation powers the global low‑cost trading market. We help customers trade through compelling insights, transparent costs, and fair pricing. With teams across the UK, Australia, South Africa, Seychelles, and the Bahamas, we innovate to minimise expenses while prioritising the lowest trading costs.


Key Responsibilities

  • Develop automated dashboards and recurring reports to track campaign performance, customer acquisition, and retention metrics.
  • Build and maintain marketing KPIs such as CAC, LTV, conversion rates, and ROI.
  • Extract, clean, and transform large datasets from multiple marketing platforms (Google Ads, email, web analytics).
  • Analyse channel performance and attribution data to provide insights to the wider Marketing Team.
  • Assist with A/B tests and analyse their statistical significance.
  • Identify trends and opportunities in customer and campaign data to inform strategy.
  • Design and maintain ETL pipelines using Python and SQL for marketing data.
  • Integrate data from APIs, S3, and Redshift Data Warehouse.
  • Ensure data quality, accuracy, and consistency across all marketing sources.
  • Apply Python for predictive modelling (e.g., churn prediction, customer segmentation).
  • Apply statistical methods and machine learning techniques to improve campaign targeting and personalization.
  • Partner with cross‑functional teams to align data insights with business objectives.
  • Communicate findings clearly through visualizations, reports, and presentations.

Qualifications & Experience

  • Bachelor’s degree in a STEM or Marketing‑related field or equivalent work experience.
  • 5+ years’ experience in Data Analytics with strong expertise in SQL and Python.
  • Advanced proficiency in SQL (complex queries, joins, aggregations, CTEs, window functions).
  • 2+ years of hands‑on Python experience (pandas, numpy, matplotlib).
  • Experience designing BI dashboards using Metabase, Tableau, PowerBI, or Looker.
  • Familiarity with marketing analytics platforms (Google Analytics, Meta Ads, HubSpot, Salesforce).
  • Knowledge of web analytics tools (Amplitude, Mixpanel, PostHog).
  • Understanding of A/B testing, attribution models, and digital marketing metrics.
  • Awareness of data governance and best practices for data quality.
  • Strong communication skills for conveying findings to technical and non‑technical stakeholders.
  • Proven ability to manage multiple projects and priorities in a fast‑paced environment.
  • Collaborative approach to transform reports and data into actionable insights.

Benefits

  • Competitive salary with discretionary annual bonus.
  • Private health care coverage.
  • Life insurance, critical illness, and income protection.
  • Active lifestyle allowance.
  • Annual leave above statutory minimum.
  • Up to three weeks of flexible working allowance.
  • Weekly fresh fruit.

Commitments To Each Other

We support one another, challenge each other, and thrive together through teamwork, learning, ownership, and mutual respect.


Seniority level: Mid‑Senior


Employment type: Full‑time


Job function: Analyst


Industries: IT Services and IT Consulting


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