Business Intelligence Analyst 12 month FTC

SmartestEnergy UK
Ipswich
1 week ago
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Business Intelligence Analyst (12 month FTC)

In this role, you will lead the delivery of data analytics across multiple business areas, focusing on identifying key opportunities and risks across regulatory, financial, and customer experience processes. You will apply a range of analytical techniques to interpret data, identify anomalies and root causes, assess data quality, and recommend improvements that drive meaningful change.


As a Business Intelligence Analyst, you will turn complex data into clear, actionable insights that support senior stakeholders and guide strategic decisions. You will collaborate closely with teams across the business, present your findings confidently, and help shape improvements to systems, processes, and reporting. This is an exciting opportunity to influence operational performance, contribute to a high‑performing BI function, and enhance the experience of our end customers.


What skills/experience do I need to be successful?

  • Experienced in applying analytical techniques to business scenarios to uncover insights, opportunities, and risks.
  • Skilled at translating analysis into clear, actionable business insights that support decision‑making.
  • Proficient in presenting findings and recommendations to stakeholders.
  • Knowledge of technology that supports the application of data analysis.
  • Knowledge of data analysis techniques and how to apply them to provide business intelligence.

What sets us apart?

  • Global Impact: With offices in the UK, US, and Australia, and plans for further expansion, you’ll be part of a dynamic, globally‑minded team, with opportunities to explore new markets and make a difference on a global scale.
  • Flexible Working: Embrace the freedom to work from anywhere in the world for up to 30 days a year. We prioritize work‑life balance, recognizing that your well‑being matters.
  • Commitment to Diversity and Inclusion: We celebrate our diverse culture and value individuals irrespective of background, disability, religion, gender identity, sexuality, or ethnicity. Join a team where diversity is not just welcomed but celebrated as a key driver of growth and innovation.

Hybrid working

Hybrid working typically means 2 days in the office location listed on this advert and 3 days working at home each week. Some occasional travel to our other offices may be required.


Next steps

Once we receive your application, it will be reviewed by a human – no bots here! The average process typically takes around 2‑3 weeks, with 2 stages of video interviews using Teams. However, this can vary depending on the role. We may invite you for a face‑to‑face meeting or require only 1 video interview. If you have any questions or need support, our Recruitment Team is here to assist you.


Ready to join us?

Ready to join us on our journey to digitise, decarbonise, and localise the future of energy? Apply now.


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