Senior Data Analytics Consultant (London)

Abylon Ltd.
City of London
2 months ago
Applications closed

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Senior Data Analytics Consultant (London)About Us

Abylon Consulting is a rapidly growing and innovative IT solutions provider with a strong focus on delivering advanced BI solutions and consulting services. We specialize in Microsoft and Azure data analytics and BI products, which form the foundation of many of our solutions.

Our dynamic growth is recognized internationally: Abylon Consulting has been featured on the Financial Times’ annual list of Europe’s 1000 fastest-growing companies for three consecutive years (2024 ,2023 ,2022 ) and was also included in theDeloitte Technology Fast 50 ranking in 2022.

Building on our proven track record of success in Hungary, we expanded our expertise and solutions to the UK market, establishing a subsidiary and opening our London office in March 2024.

The Role

We are looking for a highly skilled and business-savvy Data Analytics Consultant based in London. This role is ideal for someone who thrives at the intersection of data visualization, user experience, and strategic consulting.

The successful candidate will not only be an expert Power BI developer but also a trusted advisor, someone who can guide clients, translate business needs into impactful solutions, and help shape the future of data-driven decision-making.

Key Responsibilities

  • Develop advanced Power BI dashboards and reports with strong business impact.
  • Translate business requirements into technical specifications and data models.
  • Deliver scalable reporting solutions using Power BI Embedded.
  • Collaborate with backend engineers on seamless data integration.
  • Present insights and solutions to stakeholders with clarity.
  • Support CI/CD, DevOps practices, and financial reporting initiatives.
  • Act as a consultant, advising on best practices, optimization, and business value.

Required Skills & Qualifications

  • Expert proficiency in Power BI (DAX, Power Query, advanced visualization).
  • Strong knowledge of Power BI Embedded, licensing, and integration.
  • Solid understanding of data pipelines and modern data architectures.
  • Excellent communication and client-facing presentation skills.
  • Proven ability to turn business needs into effective technical solutions.
  • SQL proficiency and experience with Azure/DevOps tools.
  • Background in business or financial data analysis is a plus.
  • Consulting mindset: proactive, strategic, and impact-oriented.

Nice to Have

  • Experience with Databricks, Azure Data Factory, or Python.
  • Previous experience in BI service delivery or engagement management.

Why Join Us?

  • Dedicated time for learning, paid certifications: We encourage continuous development by providing dedicated learning hours. Are you interested in the latest technologies or certifications? We cover the full cost.
  • Flexible working hours: We trust you to manage your time in a way that suits your productivity and personal life.
  • Hybrid work model: Work remotely with only one required office day per week, offering the best of both worlds.
  • Knowledge sharing & collaboration: Join regular skill-sharing sessions and knowledge circles to exchange ideas and grow together as a team.
  • Annual performance bonus: Your contributions are recognized and rewarded with a yearly bonus.

How to Apply?

If you feel like you would like to join us based on the description, all you have to do is send your CV to our email address:

If you would like to find out more about us, visit our About us page or our LinkedIn page .

For more information on Abylon and other open positions follow our social media channels!
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