Head of Quantitative Sustainable Investment Research

Lazard Asset Management
London
1 week ago
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EMEA

Asset Management

London

Lazard is one of the world’s preeminent financial advisory and asset management firms. Our people and culture make the difference. While global in presence and reach, ours is a close, collaborative community of just over 3,000 professionals. Lazard is a place of continuous knowledge sharing, skill development and relationship building, where professionals grow and succeed together. Our entrepreneurial culture, flat structure and embrace of individual differences, allow creative ideas, original concepts, and unique perspectives to drive our business forward - and for careers to take flight.

Many of the world’s leading investors - from individuals to institutions across the globe - have entrusted Lazard Asset Management. We pride ourselves in uncovering the best investment opportunities for our clients. The purpose of our asset management business is to help our clients invest for the future - whether it’s for retirement, to grow and preserve inter-generational wealth, or to benefit the organizations that make our world smarter, healthier and more sustainable.

Head of QSIR – to be based in London / New York / Boston

Lazard Asset Management is currently recruiting for a Head of Quantitative Sustainable Investment Research to join its Sustainable Investment and Quantitative Research teams across New York, Boston, and London. This is an exciting opportunity to work in a growing team within a large global organization. This position will play a key role in leveraging the firm’s existing Sustainable Investment research capabilities to set and drive the quantitative ESG and climate research agenda. The ideal candidate will have a passion for sustainable investing combined with strong quantitative research skills.

We’ll trust you to:
  • Set and drive the quantitative ESG and climate transition research agenda for helping drive credible, high-quality research that forms the foundation for building innovative client solutions that meet financial and sustainability objectives
  • Lead the design and structuring of proprietary models based on sustainability related data and insights.
  • Demonstrated experience coding and structuring quantitative research in a cloud environment (Snowflake, workflow tools, basic understanding of NLP models, data engineering expectations, model deployment process, simulations/back testing).
  • Establish partnerships with portfolio managers, product specialists, client reporting, and risk teams.
  • Develop data-driven frameworks to support the firm’s engagement and stewardship efforts, ensuring a quant-backed approach to corporate interaction.
  • Ensure research outputs are aligned with market trends and client needs, providing actionable insights that inform product development and investment strategies.
You’ll need to have:
  • 10+ years in a quantitative research and ESG-specific role within an investment bank, asset manager, or specialized sustainable firm.
  • Experience articulating a clear, independent perspective on ESG topics with high conviction and a passion for the subject.
  • Deep understanding of ESG frameworks, data, and methodology (MSCI/Sustainalytics/ISS/SBTi).
  • Familiarity with relevant regulatory frameworks including SFDR, TCFD, and climate scenario frameworks.
  • Experience in coding (Python/ SQL preferred) and structuring complex quantitative research. Familiarity in Snowflake/DBT a plus, workflow tools Sustainability modelling, and simulations/back testing.
  • Experience presenting and leading client meetings on quant/ESG strategies
  • Experience publishing thought-leadership, white papers and/or representing the firm in industry groups.
  • People‑management experience; this role will oversee a small team team size of 2-3 direct reports and will require a hands‑on working style with willingness to engage directly in analysis.
  • Bachelor’s degree in STEM required; Master’s degree, CFA preferred or sustainability related certifications preferred.
What We Offer

We strive to enhance the total health and well-being of our employees through comprehensive, competitive benefits. Our goal is to offer a highly individualized employee experience that enables you to balance your commitments to career, family, and community. When you work for Lazard, you are working for an organization that cares about your unique talents and passions, and will continue to invest in the development of your career.

Does this sound like you?

Apply! We’ll get in touch and let you know the next steps. To learn more about our products and services, please visit www.lazardassetmanagement.com.

Representation at Lazard

Lazard is an intellectual capital business committed to delivering the best advice and solutions to clients. To achieve these objectives, we focus on attracting, developing and retaining the best talent. We believe that a workforce comprised of people who represent a wide array of backgrounds, experiences and perspectives creates a rich variety of thought that empowers us to challenge conventional wisdom, solve problems creatively and make better decisions.

Lazard was built on the premise that a multicultural firm can best serve a global clientele. As a global firm that has grown organically from local roots in different countries, we have a deep tradition of respecting and appreciating individual differences. Doing so has been core to our success for over 175 years. We are committed to sustaining an environment where every colleague is supported in their professional pursuits, can maximize their individual potential and contribute to our collective success.


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