Quantitative Financial Engineer

Teamtailor
London
6 days ago
Applications closed

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Location:Remote (Preferred GMT+4 ±1h)
Language:Native English (C2 required)

About the Company:

Our client is a top-tierliquidity and technology providerspecializing in thecrypto and FX (foreign exchange)industries. They deliver advanced, ready-to-deploy B2B tech solutions that empower brokers and financial institutions to scale faster while minimizing infrastructure costs. Clients include licensed brokers, crypto exchanges, hedge funds, and asset managers across the globe.

Role Overview:

We are seeking aSenior Quantitative Financial Engineerto take the lead in developing and optimizingpricing models,execution algorithms, andmarket integrationfor Spot FX, Derivatives, Structured Products, and Futures.

You’ll act as thelead quant expert, shaping the trading platform’s risk and pricing engine, collaborating across teams to deliver competitive, robust solutions. Your work will directly influence product innovation and market performance.

Key Responsibilities:

  • Develop and enhance models forCFDs, Futures, Options, and other derivatives
  • Design and maintainexecution algorithmsfor optimal pricing and performance
  • Integrate data fromprime brokers, liquidity providers, and market feeds
  • Collaborate with senior stakeholders acrosstrading, liquidity, and development teams
  • Provide real-timequantitative support to trading operations, troubleshooting pricing
  • Oversee thedevelopment and backtestingof proprietary pricing engines
  • Implementquant-driven monitoring toolsand improve execution strategies
  • Work closely with developers to improveautomationand infrastructure performance

Must-Have Qualifications:

  • 5+ yearsof hands-on experience withSpot FX, Derivatives (Futures, Options, Swaps), CFDs, and Structured Products
  • Deep expertise inderivatives pricing, yield curve modeling, volatility surfaces, stochastic models
  • Proven background inquant-based roleswithin banks, hedge funds, or brokers
  • Skilled inPythonand proficient inquantitative modeling and trading systems
  • Familiar withAPI integrations, order book dynamics, andmarket microstructure analysis
  • Experience withreal-time pricing feedsandhedging algorithms
  • If you're anative English-speaking quant with deep financial engineering experienceand are looking for a remote opportunity with a high-impact FinTech leader — this role could be a perfect fit.

What the Company Offers

Hybrid work environment

A dynamic and technically challenging environment

Competitive salary and performance-based incentives

Opportunity to work from offices (depending on the location of the candidate).

21 paid holidays.

Amazing networking events within the group.

Growth opportunities within the group.



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