Investment Product Analyst (Quantitative Analyst) - B2B SaaS Fintech

Landytech
London
1 month ago
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Overview

Landytech is on a mission to revolutionize the way that investment managers, asset owners and their advisors access asset information. Powered by Sesame, an industry-leading investment reporting platform, we are helping clients in over 15 countries make informed investment decisions and deliver insights faster.

The company is growing rapidly and it's an exciting time to join, having secured $12M in Series B funding in January 2023. In just four years, it has gone from two co-founders to a team of 100+ staff, with offices in London and Paris. Landytech values diversity with a team from over 15 countries and 14 languages spoken.

Team & Role

We are looking for a detail-oriented Investment Product Analyst to join our growing team building innovative fintech products and interacting with investment model, analytics, and reporting. This hybrid role is ideal for professionals in investment management or financial analytics who are keen to apply their skills in a technology-driven environment. You will support both our investment analytics capabilities and the software product development process, helping bridge the gap between client needs and product delivery.

Responsibilities
  • Portfolio Analytics & Investment Research: Assist in building and interpreting performance attribution, risk analysis, and exposure reporting for multi-asset portfolios across public and private markets
  • Develop investment models, processes, and solutions that are suitable for clients' needs
  • Work with clients and internal teams to ensure analytics outputs align with client expectations
  • Act as a subject matter expert on investment analysis for private and institutional clients
  • Support external asset managers engagements and due diligence across public (equities, fixed income) and private markets (private equity, real assets, credit)
Product Management & Collaboration
  • Collaborate with product owners, designers, and engineers to translate investment use cases into product requirements
  • Support the product roadmap development and drive alignment across teams to ensure its successful execution
  • Participate in agile sprint planning, backlog grooming, and sprint reviews to help shape product roadmap execution
  • Gather feedback from client-facing teams and contribute to continuous product improvement
Your Skills & Expertise
  • Bachelor's degree in Engineering, Mathematics, Finance, Economics or related discipline
  • Ideally 1-3 years of experience in financial services, asset managers, or fintech environment. CFA Level I or higher is a plus
  • Exposure to investment analytics, asset management, or portfolio risk tools across public and private markets is a strong advantage
  • Fluent in English, with excellent written and verbal communication skills
  • Based in London or willing to relocate to London
  • Strong analytical skills, preferably with demonstrable experience in financial modelling and data analysis
  • Strong foundation in portfolio theory, performance attribution, investment analytics, quantitative finance, derivatives, private markets, and multi-asset investments
  • Comfortable working in a fast-paced, agile, and collaborative environment
Our Benefits
  • An opportunity to work in a fast growing fintech revolutionizing investment reporting
  • Hybrid style of work/WFH allowed depending on role
  • Competitive salary & stock options package
  • Private medical insurance with Bupa for you and your family members
  • Life insurance option
  • Pension Plan with NEST
  • Cycle to Work Scheme and gym allowance
  • Office food & drinks, regular socials

If this sounds like a match to you, we are looking forward to receiving your application!


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