Graduate Software Developer / Quantitative Developer / Quantitative Researcher - Up to £170,000 + Bonus + Package

Hunter Bond
London
5 days ago
Applications closed

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🎓 Graduate Software Developer / Quantitative Developer / Quantitative Researcher

📍 Location: London (Hybrid)

💷 Compensation: Up to £170,000 + Bonus + Benefits

🏢 Client: Prestigious Hedge Fund


🚀 Kickstart Your Career in Technology & Quantitative Finance

Just graduated and ready to launch your career at the intersection of technology, mathematics, and finance? Join an elite global trading firm where innovation drives everything — no legacy systems, no bureaucracy, just cutting-edge tech and world-class mentorship.

You’ll work on greenfield projects from day one, collaborating with exceptional engineers, quants, and researchers to build the systems and models shaping the future of global trading.


🔧 What You’ll Do

  • 🧠 Design and enhance advanced trading systems and analytics platforms
  • 📊 Develop and implement your own quantitative models and research ideas
  • 🤝 Collaborate closely with top technologists, quants, and portfolio managers
  • 🚀 Learn fast, build fast: develop technical and analytical expertise in a performance-driven culture


✅ What You’ll Bring

  • 🎓 Degree in Computer Science, Mathematics, Physics, Engineering, or another STEM discipline
  • 💻 Strong programming skills in Python, C++, Java, C#, or KDB+/Q
  • 🔍 Analytical mindset with a passion for tackling complex, data-driven challenges
  • ⚡ Curiosity, drive, and the ability to thrive in fast-paced, intellectually demanding environments


🌟 Why Join

  • 🌍 Greenfield Work: Contribute to high-impact projects from day one
  • 🧠 Exceptional Mentorship: Learn from world-class engineers and quantitative researchers
  • 🛠 Cutting-Edge Tech: Access the latest tools, infrastructure, and computing resources
  • 📈 Fast Career Growth: A meritocratic culture that rewards innovation and initiative


If you’re a motivated STEM graduate eager to make an immediate impact in high-performance technology or quantitative finance, we’d love to hear from you.


📧 Apply now or reach out to me directly:

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