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Senior Data Management Professional - Data Quality - Loans

Bloomberg
City of London
2 days ago
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Senior Data Management Professional - Data Quality - Loans

Join to apply for the Senior Data Management Professional - Data Quality - Loans role at Bloomberg.

Location: London

Business Area: Data

Description & Requirements

Bloomberg runs on data. Our products are fueled by powerful information. We combine data and context to paint the whole picture for our clients, around the clock – from around the world. In Data, we are responsible for delivering this data, news and analytics through innovative technology — quickly and accurately. We apply problem-solving skills to identify innovative workflow efficiencies, and we implement technology solutions to enhance our systems, products and processes.

The Team

Our Loans Data team is responsible for acquiring and maintaining the full lifecycle of data relating to the Broadly Syndicated and Institutional Loans Market. Timely and accurate acquisition, interpretation, capture and maintenance of loan data are key to meet client needs. The loans market has seen increasing historic volumes over the past years and more complex deal structures, underscoring the need for electronification and automation and lending opportunities for technical innovation.

As a technical leader, you will work with different Securities teams solving problems and devising solutions for data quality challenges. You should be comfortable navigating unknowns and ambiguity while driving decisions and solutions.

What’s the role?

We are looking for a Data Quality professional to understand data requirements, specify the modeling needs of datasets and use existing tech stack solutions for efficient data ingestion workflows and data pipelining. You will implement technical solutions using programming, machine learning, AI, and human-in-the-loop approaches to ensure our data is fit-for-purpose for clients. You will work closely with Engineering, the Data Product Owner, and Product teams, coordinating with multi-disciplinary and regional teams and drawing on project management and stakeholder engagement experience. You will be comfortable working with large datasets and have strong experience in data engineering.

That Means

  • Transforming how we manage the quality of our datasets by applying industry best practices to devise quality checks and quality metrics in ETL processes that create, transform and store data, and measuring data against client-defined standards
  • Identifying and advocating opportunities to improve data quality through process improvements or workflow infrastructure enhancements
  • Providing guidance on implementing processes to measure, monitor and report on data quality to internal partners in Product or Sales
  • Defining and driving the Data Quality strategy and Quality Assurance practices for the Securities group

We’ll Trust You To

  • Develop, refine, and deliver the strategy for best-in-class data quality and champion organizational change around data quality as a domain of data management
  • Educate and empower colleagues in industry principles of data quality to elevate awareness and application
  • Collaborate with Securities teams and their Product and Engineering partners to craft data quality strategy, execution roadmap, ROI, and technical solutions
  • Perform data profiling and apply statistical methods to support data quality measurements
  • Engage with partners and senior management proactively
  • Keep up with industry trends, standards, and innovation in the Data Quality domain

You’ll Need To Have

  • 4+ years of professional experience in Data Quality Management, Quality Assurance Consulting or establishing Data Governance on metrics design within Finance or Technology
  • Experience in crafting and developing data quality metrics and reporting as part of a broader data architecture framework
  • Understanding of ETL processes and data workflow engineering concepts
  • Up-to-date knowledge of events in financial markets
  • Demonstrable experience in Data Profiling/Analysis using Python, R, or SQL
  • Ability to lead multiple projects with global scope in parallel, with strong communication and stakeholder management skills

We’d Love To See

  • DAMA CDMP or DCAM certifications
  • Familiarity with Corporate Actions, Loans, Corporate Bonds
  • Project Management experience in a matrixed, cross-regional environment

Does this sound like you? Apply if you think we’re a good match. We’ll get in touch with next steps. Discover what makes Bloomberg unique and get an inside look at our culture, values, and the people behind our success.

Seniority level: Mid-Senior level

Employment type: Full-time

Job function: Information Technology

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