Graduate Software Developer / Quantitative Developer / Quantitative Researcher - Up to £160,000[...]

Hunter Bond
London
1 week ago
Applications closed

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Overview

Graduate Software Developer / Quantitative Developer / Quantitative Researcher — Up to £160,000 + Bonus + Package

London, England, United Kingdom

Just graduated and eager to dive into the world of high-performance tech and quantitative finance? Join a leading global trading firm where innovation is key — no legacy systems, no bureaucracy, just a fast-paced, intellectually stimulating environment designed for growth.

With unlimited access to cutting-edge technology and mentorship from top-tier engineers and quants, you’ll have the opportunity to contribute to high-impact projects, shaping the future of trading tech.

What You’ll Be Doing
  • Develop and enhance state-of-the-art trading systems and infrastructure
  • Design and implement your own quantitative models
  • Collaborate with top engineers, quants, and researchers to tackle complex challenges
  • Learn rapidly and grow within a firm that thrives on initiative
What You Bring
  • Degree in Mathematics, Computer Science, Physics, Engineering, or related STEM field
  • Proficiency in at least one core programming language (Python, C++, Java, C#, KDB+/Q, etc.)
  • Analytical mindset with a passion for solving complex problems
  • Strong drive, curiosity, and a desire to learn in a fast-paced, high-stakes environment
Why This Role?
  • Work on greenfield projects from day one — your contributions have real impact
  • Collaborate with some of the brightest minds in both tech and finance
  • Access to top-of-the-line tools, systems, and infrastructure
  • Unmatched career growth in a high-performance, meritocratic culture
How to Apply

Apply now or reach out to me directly:

Role details
  • Seniority level: Entry level
  • Employment type: Full-time
  • Job function: Engineering and Finance
  • Industries: Banking, Investment Banking, and Financial Services


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