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Quantitative Engineer

Prudence Holdings
City of London
1 day ago
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Blockchain.com is connecting the world to the future of finance. As the most trusted and fastest-growing global crypto company, it helps millions of people worldwide safely access cryptocurrency. Since its inception in 2011, Blockchain.com has earned the trust of over 90 million wallet holders and more than 40 million verified users, facilitating over $1 trillion in crypto transactions.

Blockchain.com is the world's leading software platform for digital assets. Offering the largest production blockchain platform in the world, we share the passion to code, create, and ultimately build an open, accessible and fair financial future, one piece of software at a time.

What you will do
  • Design, develop, test, and deploy pricing & risk-management library for OTC trading. Code optimization.
  • Work in a scaled, performance-based software environment building efficient, reliable/high-availability and fast applications
  • Partner with the traders to define priorities and deliver custom software solutions
  • Design and develop high-performance C++/Rust components used by trading applications
What you will need
  • A deep passion for technology, software development, and mathematics
  • Proficiency with C++/Rust
  • Experience with derivatives and knowledge of pricing library design; provide timely systems support for trading activities
  • Exceptional quantitative and analytical skills
  • Bachelor’s or Master’s in Computer Science, Mathematics, Statistics, or equivalent experience
  • Strong written and verbal communications skills
Compensation & Perks
  • Full-time salary based on experience and meaningful equity in an industry-leading company
  • This is a hybrid role based in our London office, with a mandatory in-office presence four days per week
  • Work from Anywhere Policy: You can work remotely from anywhere in the world for up to 20 days per year
  • ClassPass
  • Budgets for learning & professional development
  • Unlimited vacation policy; work hard and take time when you need it
  • The opportunity to be a key player and build your career at a rapidly expanding, global technology company in an emerging field

Blockchain is committed to diversity and inclusion in the workplace and is proud to be an equal opportunity employer. We prohibit discrimination and harassment of any kind based on race, religion, color, national origin, gender, gender expression, sex, sexual orientation, age, marital status, veteran status, disability status or any other characteristic protected by law.

You may contact our Data Protection Officer by email at .

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