Quantitative Researcher

Referment
6 days ago
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Candidate Success Manager | CIPD, Human Resources Foundation

Referment is partnering with a regulated digital asset trading and technology firm, specializing in market-making, OTC brokerage, and derivatives, to hire a Quantitative Researcher. This is an exceptional opportunity to join a leading firm that offersexcellent compensationand the flexibility ofremote work.

Key Responsibilities:

  • Develop Quantitative Models: Design models to improve trading strategies and risk management.
  • Analyze Data: Extract insights from large datasets to inform trading strategies.
  • Optimize Execution Algorithms: Fine-tune algorithms to reduce slippage and enhance liquidity.
  • Backtest Strategies: Ensure strategies perform well in live trading environments.
  • Collaborate with Traders: Refine models based on market conditions and feedback.
  • Research New Opportunities: Identify innovative strategies and techniques for the digital asset markets.

Required Qualifications:

  • Strong academic background inmathematics, physics, computer science, or a related field.
  • Experience inquantitative research or analysis.
  • Proficiency in at leastone programming language(Python, Rust, C++, Java).
  • Hands-on experience withstatistical modeling, machine learning, oralgorithmic trading.
  • Deep understanding offinancial marketsandmarket microstructure.
  • Professional proficiency in English.

Preferred Qualifications:

  • Experience indigital assetsorcryptocurrency trading.
  • Knowledge ofblockchain technologyorDeFi protocols.
  • Familiarity withoptions pricingandrisk management.
  • Proficiency inFrench(a plus).

This role offersexceptional compensationand the ability to workremotely, making it an ideal opportunity for top talent seeking to make a significant impact in the digital asset space.

Seniority level

Mid-Senior level

Employment type

Full-time

Job function

Information Technology

Industries

Investment Management

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