Senior Data Analyst

AllPoints Fibre
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5 days ago
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The Senior Data Analyst at AllPoints Fibre Networks plays a pivotal role in shaping how we use data to power decisions, drive operational efficiency, and unlock meaningful insights across the business. You’ll lead complex analytics projects, support APFN’s transformation into a data‑first organisation, and help elevate how data is produced, interpreted, and actioned across the company.


AllPoints Fibre is transforming connectivity across the UK.

We’re a next‑generation full fibre network wholesaler, simplifying access to high-speed broadband through an intelligent, API‑driven platform that brings together major networks such as Openreach, BT Wholesale, and CityFibre.


Through aquila, our intelligent orchestration platform, we empower service providers with automation, real‑time insights, and seamless scalability — creating a dynamic environment for data professionals who enjoy solving complex problems and driving value through analytics.


What you will be doing

In this role, you will:



  • Lead complex analytics projects and guide deliverables for junior analysts and external contributors


  • Mentor junior data team members and support skill development


  • Shape and deliver improvements in BI processes, data quality, and analytics tooling


  • Work closely with business stakeholders to understand requirements and translate them into robust analytical solutions


  • Extract, validate and analyse large datasets across APFN and third‑party systems


  • Develop dashboards, data models and visualisations that bring clarity to decision‑makers


  • Conduct data investigations to understand trends, patterns, anomalies, and commercial opportunities


  • Support data governance, GDPR compliance and security best practice


  • Produce high‑quality documentation including data dictionaries, metadata and source information


  • Stay current with evolving analytical tools and best practice



About you

You’ll succeed here if you:



  • Have strong problem‑solving instincts and enjoy navigating complex data landscapes


  • Communicate clearly with both technical and non‑technical audiences


  • Are proactive, collaborative, and naturally curious


  • Are comfortable balancing multiple projects, deadlines and stakeholder needs


  • Want to contribute to a growing data function where your work will have high visibility and impact



Your Skills

Essential:



  • Strong analytical skills and experience working with large datasets


  • Advanced SQL and expertise in data visualisation and dashboard design


  • Experience building MDM/data marts and optimising reporting performance


  • Experience applying software development practices in a data environment


  • Excellent Excel capability


  • Strong communication and presentation skills


  • Ability to lead complex data projects and mentor junior analysts


  • Awareness of GDPR and data privacy best practice



Desirable:



  • Telecoms industry data experience


  • R or Python


  • GIS knowledge (QGIS or similar)


  • Experience with Azure Synapse, SQL Server, Fabric or Purview


  • Experience applying ML models



Qualifications:



  • Undergraduate STEM or Computer Science degree


  • Vendor certifications in analytics/visualisation desirable



The benefits at APFN…

At APFN, we look after our people. Alongside Bupa private medical and dental cover, income protection, group life insurance and a comprehensive health plan, we also offer 30 days’ annual leave (pro rata) plus bank holidays, enhanced parental and sick leave, an employer‑contributory pension, and cashback and voucher schemes that support everyday spending — and yes, we even cover the cost of massages as part of our wellbeing commitment.


Our commitment to Diversity, Equity & Inclusion

We’re building a workplace where everyone feels valued and supported. We’re committed to fair pay, equal opportunities, structured development pathways, and initiatives such as our Women in Telecoms Network, apprenticeship programmes, and mandatory EDI training. If you’re excited by this role but don’t meet every requirement, we still encourage you to apply.


About us

At AllPoints Fibre Networks, we make access to the UK’s full fibre footprint seamless, scalable and stress‑free. Our culture is curious, ambitious and supportive — we collaborate openly, solve challenges together and celebrate our progress as a team.


Next steps

If this opportunity feels right for you, we’d love to see your application. If shortlisted, our Talent Acquisition Team will be in touch to arrange an initial conversation. If you require any reasonable adjustments, please include this in your application or contact us to discuss your needs.


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