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Data Analyst (Fabric)

OSCAR ASSOCIATES (UK) LIMITED
City of London
23 hours ago
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Job Title

BI Analyst (Fabric)


Location

City of London (Hybrid 2 days a week)


Salary

£60,000 - £70,000 DOE


Purpose

Reporting to the Head of Data Insight & Analytics, this role will support the development and progression of business intelligence and insight capability. Sitting within the Data & Analytics team, the role will directly support the Private Wealth brands by building dashboards, insight tools, and supporting key stakeholders, including the Private Wealth business heads, with data‑driven decision making. The role suits an experienced and driven individual who is looking for an opportunity to advance their understanding of data, working closely with business leaders to generate meaningful insight.


Responsibilities

  • Act as the subject matter expert (SME) for data analytics and visualisation for the Private Wealth brands (Partners Wealth Management, Amicus Wealth, Johnston Carmichael Wealth and their Private Client).
  • Work closely with senior leadership, key stakeholders & data champions to draw together requirements, collaborate on data requests and gather feedback for improvement to support business goals.
  • Draft, build, maintain and drive adoption of Power BI dashboards and other similar data products to a high standard.
  • Collaborate with existing business SMEs, analyse and interpret data to support senior leadership with understanding trends, defining strategy, and making business decisions.
  • Own the rollout, training and continuous improvement of new and existing dashboards or data products – delivering training sessions when required.
  • Track and enforce robust data quality standards, collaborating with the Data Governance and Infrastructure teams where necessary.
  • Regularly communicate key updates on progress and future plans to stakeholders, joining relevant team meetings or producing ad‑hoc email communications to support this.
  • Work collaboratively and effectively within a Data Analytics team to create, inform, and champion data and analytics best practices.

About You

  • 3‑5 years’ experience applying relational data modelling and data warehousing techniques, including the Kimball Methodology or other similar dimensional modelling standards.
  • Technical experience building and deploying models and reports utilizing PySpark, Microsoft Fabric or Databricks, Power BI, Git, and CI/CD pipelines (Azure DevOps experience preferred).
  • Knowledge of the structure and purpose of the Financial Advice and Wealth Management markets within the UK Financial Services sector is highly advantageous.
  • Knowledge of the Agile methodology would be beneficial.

Skills / Other Relevant Information

  • Excellent numerical skills are essential, enabling easy interpretation and analysis of large volumes of data.
  • Experience with Python is highly beneficial and you may be expected to leverage Python to pull data from APIs into reports.
  • Ability to analyse data – with an eye for attention to detail – and communicate your understanding to stakeholders to support decision‑making processes.
  • Ability to write concisely, cherry‑picking key insights to deliver valuable intelligence.
  • Confidence to work independently and efficiently on projects with business stakeholders.
  • Strong written and verbal communication skills.
  • Confidence in the use of Excel for basic data manipulation and transformation.

Seniority Level

Mid‑Senior level


Employment Type

Full‑time


Job Function

Marketing


Industries

Marketing Services


Oscar Associates (UK) Limited is acting as an Employment Agency in relation to this vacancy.


To understand more about what we do with your data, please review our privacy policy in the privacy section of the Oscar website.


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