Associate Data Analyst

Fitch Solutions
Glasgow
1 day ago
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Associate Data Analyst – CreditSights (Fitch Solutions)

CreditSights is currently seeking an Associate Data Analyst based out of our Glasgow office, a recognised hub for innovation and operational excellence. Our Glasgow team is at the forefront of developing and implementing data-driven solutions for the financial markets, collaborating across departments to deliver high-impact results.


Celebrating its 25th anniversary this year, CreditSights continues to offer award‑winning, unbiased research on global credit markets, empowering clients to make informed investment decisions.


As part of this vibrant and growing office, you’ll have the opportunity to work alongside talented professionals, contribute to pioneering projects, and help shape the future of data and legal operations within a dynamic financial services business.


Location: Glasgow, Scotland


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Responsibilities

  • Help build and maintain a central database of financial instruments, bringing together data from multiple sources.
  • Identify and fix data quality issues.
  • Create and update documentation to support business projects and data consolidation.
  • Analyze financial data sources to compare coverage, delivery speed, and reliability.
  • Prepare regular reports for internal teams, partners, and regulatory bodies.
  • Work closely with other teams to share knowledge and improve how data is managed.
  • Use SQL and Python to automate tasks and improve data processes.

Qualifications

  • Degree in Data Science, Finance, Economics, or a related field.
  • Internship or academic experience in data analysis or financial services is advantageous.
  • Strong organisational skills and attention to detail.
  • Interest in financial markets and data‑driven decision making.
  • Ability to interpret complex datasets and summarise findings succinctly.
  • Proficiency in Excel and familiarity with data visualisation tools (e.g., Power BI, Tableau).
  • Working knowledge of SQL and Python for data analysis, automation, and data quality checks.
  • Ability to produce high‑quality outputs with a high attention to detail.

What Makes You Stand Out

  • Experience working with large, complex financial datasets.
  • Demonstrated ability to resolve data quality issues such as duplicates, missing identifiers, or incorrect mappings.
  • Hands‑on experience with SQL and Python for data analysis, automation, or data cleansing.
  • Familiarity with data governance, regulatory requirements, or audit processes (e.g., DORA regulation in EU).
  • Exposure to financial instruments, bond data, or entity management in a financial services environment.
  • Ability to create clear documentation, data dictionaries, or process guides.
  • Experience collaborating with cross‑functional teams, including data, content, and compliance specialists.
  • Strong analytical skills and a proactive approach to problem‑solving and process improvement.

Benefits

  • Hybrid Work Environment: 2 to 3 days a week in office required based on your line of business and location.
  • A Culture of Learning & Mobility: Dedicated trainings, leadership development and mentorship programmes designed to ensure that your time at Fitch will be a continuous learning opportunity.
  • Investing in Your Future: Retirement planning and tuition reimbursement programmes that empower you to achieve your short and long‑term goals.
  • Promoting Health & Well‑being: Comprehensive healthcare offerings that enable physical, mental, financial, social, and occupational wellbeing.
  • Supportive Parenting Policies: Family‑friendly policies, including a generous global parental leave plan.
  • Inclusive Work Environment: A collaborative workplace where all voices are valued, with Employee Resource Groups that unite and empower our colleagues around the globe.
  • Dedication to Giving Back: Paid volunteer days, matched funding for donations and ample opportunities to volunteer in your community.

Equal Opportunity and Affidication Statement

Fitch is proud to be an Equal Opportunity and Affidication Action Employer. We evaluate qualified applicants without regard to race, colour, national origin, religion, sex, sexual orientation, gender identity, disability, protected veteran status and other states protected by law.


Fitch is committed to providing global securities markets with objective, timely, independent and forward‑looking credit opinions.


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