Senior Data Analyst

Barclays
Glasgow
1 week ago
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Overview

Senior Data Analyst at Barclays within the Investment Bank Client Data team, helping implement data quality processes and procedures to ensure data is reliable and trustworthy. You will extract actionable insights to help the organisation improve operations and optimise resources. You will shape the data quality strategy and support data governance and operational efficiency across multiple systems, contributing to smarter, data-driven decision-making at the strategic level.


We are looking for a highly motivated data professional with a deep passion for data quality, proven experience in financial analytics, and a track record of delivering actionable insights that make a tangible impact. If you are results-driven, thrive in a fast-paced environment, and have a strong desire to elevate data-driven decision-making in investment banking, we want to hear from you.


Location & Working Model

This role is based in Glasgow with a hybrid working model of a minimum of 2 days per week in the office.


Purpose of the role

To enable data-driven strategic and operational decision making through extracting actionable insights from large datasets, performing statistical and advanced analytics to uncover trends and patterns, and presenting findings through clear visualisations and reports.


Accountabilities

  • Investigation and analysis of data issues related to quality, lineage, controls, and authoritative source identification, documenting data sources, methodologies, and quality findings with recommendations for improvement.
  • Designing and building data pipelines to automate data movement and processing.
  • Apply advanced analytical techniques to large datasets to uncover trends and correlations, develop validated logical data models, and translate insights into actionable business recommendations that drive operational and process improvements, leveraging machine learning/AI.
  • Through data-driven analysis, translate analytical findings into actionable business recommendations, identifying opportunities for operational and process improvements.
  • Design and create interactive dashboards and visual reports using applicable tools and automate reporting processes for regular and ad-hoc stakeholder needs.

To be successful as a Senior Data Analyst

  • Demonstrates the ability to interpret key performance metrics and provide well-informed, actionable recommendations.
  • Skilled in conducting comprehensive root cause analysis to identify and resolve data quality issues effectively.
  • Proficiency in SQL and Excel for extracting, analysing, and presenting data-driven insights.
  • Experienced in gathering, documenting, and validating business and data requirements through structured workshops and stakeholder discussions.
  • Possesses strong analytical and problem-solving capabilities, with the ability to interpret and synthesise complex datasets.

Other Highly Valued Skills Include

  • Advanced Data Analysis & Visualisation - Proficiency in Python, R, and tools like Tableau, Power BI for dashboards and reporting.
  • Statistical & Predictive Analytics - Knowledge of statistical modelling, machine learning, and predictive analytics for trend forecasting.
  • Financial Domain Expertise - Understanding of financial instruments, regulatory frameworks, and risk management principles.
  • Cloud & Big Data Platforms - Exposure to AWS, Snowflake, or similar technologies for scalable data solutions.

Role Expectations

You may be assessed on the key critical skills relevant for success in the role, such as risk and controls, change and transformation, business acumen, strategic thinking and digital and technology, as well as job-specific technical skills.


Leadership & Collaboration

  • All colleagues will be expected to demonstrate the Barclays Values of Respect, Integrity, Service, Excellence and Stewardship and the Barclays Mindset to empower, challenge and drive.
  • Vice President or individual contributor expectations cover strategy, leadership behaviours, risk management, stakeholder engagement, and driving continuous improvements in line with corporate requirements.
  • Adopt and integrate outcomes of extensive research in problem solving, build trusting relationships with internal and external stakeholders, and influence outcomes.

Compliance & Culture

All colleagues will be expected to demonstrate Barclays Values and Mindset, helping us do what we believe is right.


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