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Senior Data Analyst - NZDPU

Bloomberg
City of London
2 days ago
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Overview

Senior Data Analyst - NZDPU role at Bloomberg. At NZDPU, our mission is to provide a trusted, central source of company-level climate data that is transparent and openly accessible to all. Our efforts started in 2022 when the Climate Data Steering Committee published recommendations for the development of a unified, global, open climate data repository. A proof of concept of the Net-Zero Data Public Utility was launched during the UN’s Climate Change Conference (COP28) and with an expansion to over 12,000 companies during London Climate Action Week this year and is publicly accessible at nzdpu.com. Location: London. Business Area: Marketing and Public Relations. Ref # 10045996.

Responsibilities
  • Manage large and complex data projects related to climate datasets, with a particular focus on company-specific GHG emissions and emissions reduction targets
  • Demonstrate knowledge of statistical analysis and applied data analysis skills, with proficiency using Excel
  • Keep up to date with the evolving landscape of climate-related disclosure and conduct in-depth analysis into upcoming disclosure requirements and standards globally
  • Translate these standards into data models and create mappings between them, reflecting their level of interoperability
  • Serve as a subject matter expert to drive deliverables and navigate across internal and external partner groups
  • Apply subject-matter-expertise to support strategy development for engagement activities; make strategic decisions under pressure and operate with flexibility in a changing environment
  • Synthesize complex topics or information and communicate clearly to senior stakeholders
Qualifications
  • BA/BSc in Environmental Science, Economics, Finance, Political Science, Engineering, Mathematics, Physics, or another quantitative subject
  • 5+ years of experience working within the sustainability and climate policy space
  • Deep knowledge of climate-related disclosure frameworks such as the GHG Protocol, ISSB’s IFRS S2, and PCAF, with strong preference for familiarity with GHG emissions accounting and emissions reduction target setting
  • A collaborative approach and exceptional relationship-building and communication skills – both written and verbal
Preferred / Additional
  • Master's degree in environmental science, Sustainability, Economics, Public Policy, Engineering, Mathematics, MBA, or related field preferred; CFA or CAIA designation
  • Experience with Python and SQL
  • Familiarity with product development processes, having worked in close collaboration with product teams
  • Experience using modern AI tools to support data analysis, automate workflows, and contribute to content creation and insight generation
  • Ability to read/write in a language other than English
Job Details
  • Seniority level: Mid-Senior level
  • Employment type: Full-time
  • Job function: Information Technology

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