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Senior Data Analyst

John F Kennedy High School
London
4 days ago
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Overview

Copper is building the standard for institutional digital asset infrastructure with a focus on custody, collateral management, and prime services. Copper provides a comprehensive suite of custody, trading and settlement solutions that reduce counterparty risk and increase capital and operational efficiency in digital asset markets, underpinned by Multi-Party Computation (MPC) technology. ClearLoop connects global exchanges to enable trading and settlement directly from MPC-secured wallets, reducing settlement times and enhancing security.
Copper holds strong security certifications and significant insurance coverage to safeguard assets.


Role Purpose

We are seeking a proactive, detail-oriented Senior Data Analyst with a keen interest to investigate and remediate data quality issues, define data standards, and act as a data steward to ensure the accuracy, reliability, and integrity of our data assets. In this role you will collaborate with Product Managers and Engineers, as well as external stakeholders such as clients or auditors, to identify and define critical data elements and data management required for auditing, traceability, transparency, reporting, compliance and KPI tracking, enabling reliable analytics for decision-making.


Key Responsibilities
  • Work closely with Engineering and BI teams to troubleshoot, improve physical, logical and business data models.
  • Collaborate with product teams to understand business rules, define data requirements, and ensure product changes maintain data accuracy.
  • Establish and maintain data dictionaries, metadata documentation, and data taxonomies.
  • Partner with Engineering to define what data must be captured in the system and ensure technical teams fully understand the key attributes subject to auditing or reporting needs.
  • Act as the primary point of accountability for availability, quality and integrity of key datasets across products and systems.
  • Support enhancements to UI-based data presentation and reporting, ensuring data is displayed clearly and aligns with stakeholder needs.
  • Collaborate with Product, Revenue, Finance, Risk teams to gather data requirements for new product launches.
  • Translate business, risk and compliance data requirements into structured, technical documentation.
  • Define and enforce data governance standards and processes to ensure consistency across systems.
  • Perform root cause analysis on recurring data issues and propose long-term solutions.
  • Act as a subject matter expert and advocate for best practices in data management across the organization.

Your Experience And Knowledge
  • Proven experience as a Data Analyst, Data Steward or similar data-focused role.
  • Experience working in or alongside Product teams.
  • Experience working on system integration projects, including defining data flows between platforms, coordination across technical teams, and ensuring data consistency across systems.
  • Strong understanding of data governance, data quality, data lineage and reporting requirements.
  • Knowledge of TradFi and keen interest in blockchain technology and digital assets.
  • Proficiency in querying data and working with relational data models.
  • Strong communication and documentation skills; capable of translating business needs into technical requirements.
  • Detail-oriented and process-driven with strong sense of ownership.
  • Familiarity with data visualization tools (e.g., Tableau, Power BI, Looker).
  • Knowledge of audit or compliance reporting standards (revenue recognition, audit trails).

Your Skills
  • Strong problem-solving mindset with excellent attention to detail.
  • Clear communication skills to explain complex data issues to both technical and non-technical stakeholders.
  • Structured approach to documentation.
  • Experience of system integrations involving data pipelines.
  • Adaptability and ownership.
  • Familiarity with ETL/ELT processes.
  • Knowledge of data modelling concepts.
  • Stakeholder management.
  • Experience in a product-led or tech-driven company.

The Benefits Offered
  • Paid Time Off - A minimum of 35 days of paid time off per year, inclusive of annual leave and public holidays. Employees also receive one additional day of annual leave for each year of service.
  • Comprehensive Medical Insurance - Inclusive of dental, optical, audiology, and mental health coverage, with medical history disregarded.
  • Life Insurance
  • Enhanced Pension Contributions - Includes an enhanced employer matching contribution.
  • 24/7 Employee Assistance Programme (EAP).

In return for everything you can bring to Copper, we offer an exciting, challenging role in a fast-growing and dynamic business with career opportunities and a welcoming working environment. If you think you have what we’re looking for, apply for the opportunity.


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