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Data Analyst - ETRM and T&S (Time & Sales)

London
1 year ago
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Job Title: Data Analyst - ETRM and T&S (Time & Sales)
Location: London/Hybrid - 2 days per week onsite in London but possibility to work remotely
Salary/Rate: Up to £515 per day INSIDE IR35
Start Date: 02/12/2024
Job Type: 12 month contract initially - likely to extend

Company Introduction

Coltech is partnered with a prestigious consultancy client who are looking for an experienced Data Analyst to join their team for a 12 month contract.

The ideal candidate will have background experience in Oil and Gas/Commodities (not mandatory but it's desired) with strong proficiency in Data Analysis.

Key Roles & Responsibilities

  1. Combine business understanding with logical data modelling and process design skills to integrate new T&S businesses and enhanced activities into global operations.

  2. Understand the key Align ETRMs of T&S, with in-depth knowledge of how systems in their region interact with Risk systems and tools.

  3. Demonstrate the understanding of market risk analytics on both a pre- and post-deal basis; including, but not limited to, Value at Risk (VaR), VaR Scenario Analysis, Stress Testing & Risk Metric reporting & PnL Explained reporting.

  4. Demonstrate the understanding of credit risk analytics on both a pre- and post-deal basis; including, but not limited to, Potential Future Exposure (PFE), portfolio analytics, expected credit loss (ECL), credit value adjustment (CVA), credit reserves and cost of credit analysis.

  5. Collaborate with and support Commercial / Credit / Market Risk / Valuation teams with production reporting, transformation projects etc.,

  6. Ability to link technical solutions with business requirements when working with business partners.

  7. Precisely capture business problems, value drivers, and functional/non-functional requirements, including security, usability, data, and supportability considerations.

  8. Translate business requirements into functionality and assess the risks, feasibility, opportunities, and business impacts of various solution options.

  9. Assess and model processes, data flows, and technology to understand the current value and issues, and identify opportunities for improvement.

  10. Create clear documentation to communicate requirements and related information; keep updated to align with the solution over the project/product life-cycle.

  11. Ensure traceability of requirements from business needs and requirements, through testing and scope changes, to final solution.

  12. Interact with business analysts, software designers and developers to understand software limitations, deliver elements of system and database design, and ensure that business requirements and use cases are handled.

  13. Create acceptance criteria and validate that solutions meet business needs through defining and coordinating testing.

  14. Participates in team effort to create new best practice material based on identified gaps

    Apply now for immediate consideration

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