Options Quant Researcher

We're looking for a Mid-Senior Quant Researcher specializing in options, with hands-on experience turning original strategy ideas into fully automated, production strategies in TradFi markets – working close to trading throughout.

The mandate is to help build a single, unified options quoting/pricing engine that prices across all strikes, expiries, and underlyings, driven by a relative-value view on implied volatility across instruments in a unified delta order book (spot / futures / option legs).
The alpha stack spans:

  • Index vol arbitrage (IV differences between instruments) + single-stock IV ranking
  • Calendar / term-structure spreads
  • Skew (smile) arbitrage
  • Implied Volatility vs. Realized Volatility
  • Correlation via dispersion trading

We expect the candidate to do some subset of these things:

  • Own end-to-end options strategy research: hypothesis → data → modeling → backtesting → production → live monitoring and iteration
  • Work on Relative Value, Statistical Arbitrage, and Spread Trading strategies specific to the options universe (the stack above)
  • Build and own the volatility fitter the signals sit on – calibrating arbitrage-free, temporally stable surfaces (SVI/SSVI or a proposed alternative) on realistic data (wide bid/ask, missing strikes, gaps, latency), with attention to residual noise near expiry / illiquid strikes / events
  • Translate strategy output into execution – routing a target delta-order across option legs to minimize Greek risk, with inventory-aware quoting that shifts price/size against live vega/gamma/skew, and awareness of options microstructure (spreads, queue, adverse selection, latency)
  • Build and maintain mid-frequency (MFT), fully automated strategies with a strong live-performance focus
    • Track record of deploying fully automated strategies with Sharpe > 2 (or demonstrable equivalent risk-adjusted performance)
  • Design robust signal research pipelines (feature engineering, labeling, validation, regime analysis)
  • Develop realistic backtests and live-simulation frameworks accounting for slippage, spreads, latency, partial fills, and market impact
  • Work in tight feedback loops with trading and execution to improve PnL, robustness, and risk-adjusted performance
  • Debug and tune research outputs under live conditions: data issues, execution artifacts, microstructure noise, and changing market regimes
  • Python (mandatory), strong use of NumPy, pandas, matplotlib, SciPy, and optimization/ML libraries
  • Strong research engineering: clean code, reproducible experiments, versioning, and production readiness
  • Hands-on experience developing Relative Value strategies
  • Experience building systematic strategies in equities / futures / options / other listed derivatives (any strong TradFi systematic experience is relevant)
  • Good knowledge of option maths and strong options intuition
  • Familiarity with common quant tooling (e.g., QuantLib and/or in-house libraries)

Nice to Have

  • Experience with execution-aware modeling and/or close collaboration with execution / low-latency teams (HFT exposure a plus)
  • Position-driven surface shaping – adapting surface/spread to current portfolio Greeks
  • Practical experience applying ML/DL (PyTorch, TensorFlow, LightGBM) in trading, with careful validation and overfitting controls
  • Experience trading exchange-margined derivatives where capital efficiency is a first-order constraint (NSE options, CME, Eurex) – comfortable optimizing return-on-margin under SPAN-style portfolio margining
  • Direct experience in cross-instrument arbitrage (spot / futures / options)

What we offer:

  • Experience a modern international technology company without the burden of bureaucracy.
  • Enjoy excellent opportunities for professional growth and self-realization.
  • Work remotely from anywhere in the world with a flexible schedule.
  • Receive compensation for health insurance, sports activities, and non-professional training.