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ESG Data Analyst

Janus Henderson U.S.
London
5 months ago
Applications closed

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Career Opportunities: ESG Data Analyst (30294)

Requisition ID30294- Posted -London-Janus Henderson

A career at Janus Henderson is more than a job; it’s about investing in a brighter future together.

Our Mission at Janus Henderson is to help clients define and achieve superior financial outcomes through differentiated insights, disciplined investments, and world-class service. We will do this by protecting and growing our core business, amplifying our strengths, and diversifying where we have the right.

Our Values are key to driving our success, and are at the heart of everything we do:

Clients Come First - Always|Execution Supersedes Intention|Together We Win|Diversity Improves Results|Truth Builds Trust

If our mission, values, and purpose align with your own, we would love to hear from you!

Your opportunity

Janus Henderson’s approach to ESG and Responsibility focuses on (1) our own corporate responsibility, (2) integrating financially material ESG considerations across most of our investment strategies through ESG Explore, and (3) expanding our suite of ESG-focused strategies by supporting the ESG Solution teams.

The ESG Data and Analytics team under the ESG Strategy & Operations pillar of the Responsibility team helps enable investment teams to achieve superior financial outcomes through differentiated ESG analysis and generate proprietary data-driven investment insights.

You will:

  • Create investment insights from ESG Data through statistical modelling and machine learning
  • Assess, evaluate, and integrate new ESG Data Sets
  • Partner with Investment desks to understand the systematic integration of ESG information in the investment strategy
  • Document business requirements and translate them into data requirements
  • Support automating the end-to-end data lifecycle, including onboarding, normalizing new data points, and aligning the appropriate methodology
  • Work closely with the Data Owner, Data Steward, and Technology to provide consistent ESG information across downstream systems
  • Understand data vendors’ methodologies for different products/tools and help investment desks to generate and interpret ESG data/reports
  • Help the head of the team to analyze other vendors to fill potential data gaps
  • Carry out additional duties as assigned

What to expect when you join our firm

  • Hybrid working and reasonable accommodations
  • Paid volunteer time to step away from your desk and into the community
  • Support to grow through professional development courses, tuition/qualification reimbursement, and more
  • All-inclusive approach to Diversity, Equity, and Inclusion
  • Maternal/paternal leave benefits and family services
  • Complimentary subscription to Headspace – the mindfulness app
  • Corporate membership to ClassPass and other health and well-being benefits
  • All employee events
  • Lunch allowance for use within subsidized onsite canteen

Must Have Skills

  • Degree educated in Statistics, Mathematics, Computer Science, Data Science, or a Quant discipline preferred

Nice to Have Skills

  • Studying towards IMC or CFA preferable
  • Experience with 3rd Party ESG Data Providers like MSCI, Sustainalytics, VE
  • Data Visualisation skills with tools like Power BI, Tableau
  • Understanding of ESG Data Integration into Investment Portfolios
  • Experience with Cloud-based Data Warehousing systems like Snowflake

Potential for growth

  • Regular training
  • Continuing education courses

You will be expected to understand the regulatory obligations of the firm and abide by the regulated entity requirements and JHI policies applicable for your role.

At Janus Henderson Investors, we’re committed to an inclusive and supportive environment. We believe diversity improves results and we welcome applications from all backgrounds. Don’t worry if you don’t think you tick every box; we still want to hear from you! We understand everyone has different commitments, and while we can’t accommodate every flexible working request, we’re happy to be asked about work flexibility and our hybrid working environment. If you need any reasonable accommodations during our recruitment process, please get in touch and let us know at .

#LI-IK1 #LI-HYBRID

Janus Henderson (including its subsidiaries) will not maintain existing or sponsor new industry registrations or licenses where not supported by an employee’s job functions. All applicants must be willing to comply with the provisions of Janus Henderson Investment Advisory Code of Ethics related to personal securities activities and other disclosure and certification requirements, including past political contributions and political activities. Applicants’ past political contributions or activity may impact applicants’ eligibility for this position.Janus Henderson is an equal opportunity / Affirmative Action employer.All qualified applicants will receive consideration for employment without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, disability, or veteran status. All applications are subject to background checks.


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