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Quantitative Analyst - Structured Credit

Tempest Vane Partners
London
1 day ago
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The Client

My client is a leading FinTech business delivering technology and investment management infrastructure services to some of the world's leading hedge funds and asset managers.


They are looking for a Quantitative Analyst with strong knowledge of Structured Credit / Securitised Products to join their Quantitative Analytics & Development team based in London. The individual will be focused on ABS, MBS, CDOs, CLOs and CMOs.


What You'll Get

  • An opportunity to be part of one of the most exciting buy-side FinTech businesses in the world with a clear goal to become the first choice trading technology provider with asset managers and financial institutions alike, across the derivatives markets.


  • There is a high talent density and as such you will be working with top performers from across the industry with exceptional mentoring and opportunities to learn and develop your skills.


  • They pay market leading compensation, including an annual discretionary bonus, with ongoing opportunities for financial advancement.


  • They offer benefits including pension contribution, healthcare, life insurance, 26 days holiday, 10 further days remote working from anywhere in the world and hybrid working.


What You'll Do

  • The successful candidate will join the Quantitative Analytics & Development team and is expected to contribute to the development and enhancement of new and existing models and analytics in the core Quant Analytics library (written in C++).


  • Furthermore, the individual is expected to develop new and enhance existing trading tools that are used by their clients (written in Python).


  • At the same time, the successful candidate is expected to provide ongoing support to clients across all asset classes (especially Rates, but also FX, Equities, and Commodities), and maintenance of existing BAU systems and processes.


What You'll Need

  • Experience working as a Quantitative Analyst in a front office trading environment.
  • Strong knowledge of Structured Credit / Securitised products and models, including ABS, MBS, CDOs, CLOs and CMOs (expertise is not required in all).
  • Strong C++ and Python development ability.
  • Experience supporting a live production environment and models.

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