Junior Quantitative Developer

Miller Maxwell
London
3 months ago
Applications closed

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Exciting Opportunity for a Junior Quantitative Developer! Miller Maxwell is excited to partner with a leading Proprietary trading firm known for its innovative trading strategies and cutting-edge technology. This firm excels in quantitative trading, leveraging state-of-the-art systems to stay ahead in the global financial markets.

The Junior Quantitative Developer's key responsibilities:

  1. Work alongside quantitative researchers, developers, and traders to convert research concepts into high-efficiency, low-latency code.
  2. Investigate, comprehend, and proactively enhance trading performance.
  3. Examine market data and pinpoint trading opportunities.
  4. Pay close attention to detail, devise enhancements to the algorithm, and either implement them in the code or collaborate with developers to do so.

Minimum qualifications include:

  1. Bachelor’s degree or higher in Computer Science, Engineering, Mathematics, or a related field.
  2. Strong programming skills in languages C++, or Java.
  3. At least 5 years of professional experience with exposure to algorithmic trading execution systems.
  4. Currently a Junior quantitative developer or Quantitative Trader with experience working within the HFT, Algorithmic or Proprietary Trading space.
  5. A foundational knowledge of microstructure and strategy development.
  6. A genuine enthusiasm for trading and a desire to learn and develop in the field.

If you're ready to make a significant impact in the trading world, we want to hear from you! Connect with us or visit millermaxwell.co.uk to explore this fantastic opportunity!

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