Senior Data Management Professional - Data Quality - Commodities Data

Senior Data Management Professional - Data Quality - Commodities Data

Full-Time 60000 - 80000 € / year (est.) No home office possible
Bloomberg

At a Glance

  • Tasks: Enhance data quality processes and automate solutions for commodities and energy data.
  • Company: Bloomberg, a leader in data-driven technology and analytics.
  • Benefits: Competitive salary, dynamic work environment, and opportunities for professional growth.
  • Other info: Collaborative culture with a focus on problem-solving and operational efficiency.
  • Why this job: Join a team that drives innovation and improves data reliability in a fast-paced industry.
  • Qualifications: 4+ years in data management, strong Python and SQL skills required.

The predicted salary is between 60000 - 80000 € per year.

Location: London

Business Area: Data

Ref #: 10051437

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.

What’s the role?

We’re seeking a hands-on data quality and automation professional to help improve the reliability, control environment, and operational efficiency of commodities and energy data. This role will focus on executing and enhancing data quality processes, supporting automation initiatives, and partnering closely with data operations, engineering, and business stakeholders to resolve issues and improve key data pipelines. This is a delivery-oriented role suited to someone who is strong in implementation and execution, with the ability to translate data quality requirements into practical controls, monitoring, and workflow improvements.

Responsibilities:

  • Support the implementation and ongoing enhancement of data quality controls across commodities datasets, including market data, reference data, and fundamentals.
  • Build, maintain, and optimize automated data quality checks for completeness, accuracy, timeliness, consistency, and schema validation.
  • Monitor data quality metrics and controls, investigate exceptions, and help drive timely resolution of issues.
  • Contribute to the maintenance of data quality standards, policies, and KPI reporting for critical data domains.
  • Work closely with data operations teams to identify recurring data issues and convert them into clear requirements for process improvements, automation, or engineering fixes.
  • Help improve day-to-day DataOps processes by reducing manual intervention, standardizing workflows, and strengthening controls.
  • Assist in implementing operational best practices across data workflows, including documentation, testing, change management, and escalation procedures.
  • Partner with engineering and platform teams to improve observability, alerting, and operational support for key data pipelines.
  • Develop and maintain automation solutions for data validation, exception handling, and workflow efficiency using SQL, Python, or similar tools.
  • Support the implementation of imputation controls and rules, including validation, flagging, and monitoring of imputed values.
  • Ensure automated processes are well governed, transparent, and aligned with defined business and control requirements.
  • Identify opportunities to improve scalability and reduce operational risk through targeted automation.
  • Manage and track data quality issues through logging, triage, root-cause analysis, remediation, and closure.
  • Support governance of the data lifecycle across ingestion, normalization, enrichment, and distribution processes.
  • Work with stakeholders across operations, engineering, and product teams to ensure clear ownership and follow-through on data issues.
  • Prepare regular reporting on issue trends, control effectiveness, and remediation progress.
  • Act as a key day-to-day partner for data operations, engineering, and business users on data quality and control topics.
  • Communicate clearly on data issues, priorities, risks, and progress to stakeholders.
  • Contribute practical input into broader data quality and automation initiatives by bringing an execution-focused perspective.
  • Support team members in delivering larger process, control, and tooling improvements.

Qualifications:

  • 4+ years experience in data management, data operations, or data controls.
  • Experience working with data quality checks, exception management, and operational data processes in a complex data environment.
  • Strong Python scripting skills and practical experience with SQL or similar languages for implementing validation rules, automation, or workflow improvements.
  • Experience working with modern data platforms, workflow tools, or data observability / quality tooling.
  • Proven ability to investigate data issues, perform root-cause analysis, and coordinate remediation across teams.
  • Strong organizational skills, with the ability to manage multiple priorities and drive work through to completion.
  • Effective communicator with the ability to work across technical and non-technical stakeholders.

Preferred Qualifications:

  • Experience with commodities, energy, market data, or trading-related datasets.
  • STEM background or experience working with technical, quantitative, or data-intensive disciplines.
  • Familiarity with DataOps concepts and how data operations and engineering teams work together to improve reliability and delivery.
  • Experience in a regulated or controlled data environment.
  • Exposure to cloud-based data platforms and pipeline monitoring tools.
  • Experience supporting implementation of automation, controls, or AI/ML-based data solutions within a defined validation framework.

Please note we use years of experience as a guide but we certainly will consider applications from all candidates who are able to demonstrate the skills necessary for the role.

Senior Data Management Professional - Data Quality - Commodities Data employer: Bloomberg

Bloomberg is an exceptional employer, offering a dynamic work environment in the heart of London where innovation and collaboration thrive. Employees benefit from a strong focus on professional growth, with opportunities to enhance their skills in data management and automation while working alongside industry experts. The company fosters a culture of inclusivity and support, ensuring that every team member can contribute meaningfully to impactful projects that shape the future of data-driven decision-making.

Bloomberg

Contact Detail:

Bloomberg Recruiting Team

StudySmarter Expert Advice🤫

We think this is how you could land Senior Data Management Professional - Data Quality - Commodities Data

Tip Number 1

Network like a pro! Reach out to folks in the industry, attend meetups, and connect with people on LinkedIn. You never know who might have the inside scoop on job openings or can put in a good word for you.

Tip Number 2

Prepare for interviews by practising common questions and scenarios related to data quality and automation. We recommend doing mock interviews with friends or using online platforms to get comfortable with your responses.

Tip Number 3

Showcase your skills! Create a portfolio or GitHub repository with examples of your work in data management, Python scripts, or SQL queries. This gives potential employers a tangible look at what you can do.

Tip Number 4

Don’t forget to apply through our website! It’s the best way to ensure your application gets seen by the right people. Plus, it shows you’re genuinely interested in joining our team.

We think you need these skills to ace Senior Data Management Professional - Data Quality - Commodities Data

Data Quality Management
Automation Solutions
SQL
Python
Data Operations
Root Cause Analysis
Data Validation

Some tips for your application 🫡

Tailor Your CV:Make sure your CV speaks directly to the role. Highlight your experience with data quality checks and automation, and don’t forget to mention any relevant tools like SQL or Python that you’ve used. We want to see how your skills align with what we’re looking for!

Craft a Compelling Cover Letter:Your cover letter is your chance to shine! Use it to explain why you’re passionate about data management and how your background makes you a perfect fit for our team. Be sure to mention specific projects or achievements that showcase your problem-solving skills.

Showcase Your Problem-Solving Skills:In your application, give examples of how you've tackled data issues in the past. We love candidates who can demonstrate their ability to investigate problems and implement effective solutions. Share those success stories with us!

Apply Through Our Website:We encourage you to apply through our website for a smoother process. It helps us keep track of your application and ensures you get all the updates. Plus, it’s super easy to do – just follow the prompts and you’ll be set!

How to prepare for a job interview at Bloomberg

Know Your Data Inside Out

Make sure you brush up on your knowledge of data quality processes, especially in commodities and energy datasets. Be ready to discuss specific examples of how you've implemented data quality checks or resolved data issues in the past.

Show Off Your Technical Skills

Since this role requires strong Python and SQL skills, prepare to demonstrate your proficiency. You might be asked to solve a problem or write a small script during the interview, so practice coding challenges related to data validation and automation.

Communicate Clearly

Effective communication is key, especially when working with both technical and non-technical stakeholders. Practice explaining complex data issues in simple terms, and be prepared to discuss how you've collaborated with different teams to resolve data problems.

Be Ready for Scenario Questions

Expect scenario-based questions that assess your problem-solving abilities. Think about past experiences where you identified data quality issues and how you approached resolving them. Highlight your analytical skills and your ability to implement practical solutions.