ESG Data Analyst

Neuberger Berman
London
8 months ago
Applications closed

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Information regarding Neuberger Berman’s privacy policy is available under Important Links on http://www.nb.com .

We are seeking a motivated and resourceful ESG Data Analyst to join our ESG Data & Reporting team. This role is pivotal in supporting our existing functions of generating client reports, responding to ESG data queries from various stakeholders, and contributing to discussions around ESG data methodologies and ESG regulatory impacts on our datasets. In addition to these core responsibilities, the candidate will play a key part in helping to enhance existing processes by automating workflows and continually looking at opportunities to generate new insights from our ESG datasets to deliver additional value for our investment and client teams.

The ideal candidate will have some prior experience with analysing, reconciling, investigating and resolving data issues, and generating reports off the back of this.

Key Responsibilities

  • Produce and deliver timely, accurate ESG client reports to internal and external stakeholders
  • Respond promptly and accurately to ESG data queries
  • Develop and implement automated solutions to improve our current reporting capabilities and deliver extra insights for our internal and external clients
  • Working with third-party vendors on data requirements, report automation and data distribution
  • Work with stakeholders to deliver on client queries or engagements on cross-team projects
  • Helping with ESG regulatory reporting including the production of ESG metrics related to regulations and associated queries
  • Working with the Stewardship and Sustainable Investing team and project teams on implementation of any new frameworks or ongoing review and compliance with regulations, including but not limited to the measurement of sustainable investments, trade compliance and risk monitoring

Experiences:

  • Proficient with SQL to be able to extract and query data unassisted
  • Strong data analysis skills with proficiency in Excel
  • Preferred experience with Python (ability to read, write and edit code)
  • Analysing and reconciling datasets
  • Client reporting experience, and proven ability to project manage their own work and deliver outputs timely
  • Able to articulate and document processes for others to easily follow and understand
  • Highly motivated and self-driven team-player with a desire to work on a wide range of ESG related projects, collaborative and entrepreneurial spirit
  • At least 3 years experience in the asset management industry

Neuberger Berman is an equal opportunity employer. The Firm and its affiliates do not discriminate in employment because of race, creed, national origin, religion, age, color, sex, marital status, sexual orientation, gender identity, disability, citizenship status or protected veteran status, or any other characteristic protected by local, state, or federal laws, rules, or regulations. If you would like to contact us regarding the accessibility of our website or need assistance completing the application process, please contact .


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