Data Analysts

Harnham
London
10 months ago
Applications closed

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This range is provided by Harnham. Your actual pay will be based on your skills and experience — talk with your recruiter to learn more.

Base pay range

Direct message the job poster from Harnham

Senior Recruitment Consultant - Marketing and Digital (Analytics, Product, Research, Insights and CRM) at Harnham - London, UK

We're working with a fast-moving, customer-focused telco brand looking to bring intwo Data Analysts- one more junior, one more mid-level - to help drive insight across their commercial and customer landscape.

This is a great opportunity for someone with solidSQL skillswho wants hands-on experience, meaningful projects, and genuine growth opportunities (with a clear path to promotion over the next 12-24 months). You'll be working closely with a hands-on Head of Analytics, senior stakeholders, and cross-functional teams across the business.

The Role

  1. Handle ad-hoc data pulls and reporting requests
  2. Take ownership of dashboarding (Power BI), and improve visualisation/reporting processes
  3. Deep dive into customer data - churn analysis, CLV projects, marketing campaign performance
  4. Collaborate with commercial, marketing, and country teams on strategic projects (e.g. handset launches, global campaign success)
  5. Help improve data quality across the business and support wider insight efforts
  6. Present findings to senior stakeholders, including finance and country managers

What They're Looking For

  • SQL is essential- window functions, joins, aggregations for the mid-level role
  • Strongbusiness acumen and commercial thinking
  • Experience in customer/marketing analytics or a real desire to develop in that space
  • Bonus: Power BI, Python, exposure to presenting insights to non-technical audiences
  • Personality and mindset matter - curiosity, drive, and a collaborative approach are key

Mid-Level Analyst:Up to £55,000

Interview Process

  1. Stage 1: Informal 30-min Teams chat with the Head of Analytics
  2. Stage 2: Presentation round + Q&A with the team
  3. Optional sign-off with a senior stakeholder

This is an exciting chance to step into a role with visibility, variety, and loads of room to grow. Let us know if you'd like to hear more.

Seniority level

  • Entry level

Employment type

  • Full-time

Job function

  • Analyst

Industries

  • Telecommunications

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