Quantitative Trading & Research - Etrading - Associate/vice President

JPMorgan Chase JPMorgan Chase · Banking · Mumbai, Maharashtra, India · Commercial & Investment Bank

Quantitative researcher at JPMorgan Chase focusing on developing mathematical models for algorithmic execution strategies, limit order placement, order routing, and analyzing order flow. The role involves market microstructure research and applying statistical and machine learning models to high-frequency data for pre/post-trade analytics and price prediction.

What you'd actually do

  1. Developing mathematical models for algorithmic execution strategies, both for single stock and portfolios
  2. Designing state-of-the-art models for limit order placement, and order routing between venues
  3. Developing quantitative tools to analyze order flow and suggesting methods for improving execution performance
  4. Carrying out market microstructure research and writing white papers

Skills

Required

  • Python
  • C++
  • statistical modeling
  • machine learning modeling
  • quantitative analysis
  • problem-solving
  • research

Nice to have

  • q/kdb programming
  • system and solution design
  • testing and verification
  • LLM-based productivity tools

What the JD emphasized

  • prior experience in one or more of the following
  • Handling high frequency data/big data and developing statistical and/or machine learning models on the same
  • Pre/post trade analytics (including market microstructure research) for execution algorithms
  • Short term price predictive, alpha and portfolio optimization models
  • quantitative and problem-solving skills
  • research skills
  • computer programming experience such as use of Python and/or C++ in a substantial project in an academic/commercial environment

Other signals

  • developing mathematical models for algorithmic execution strategies
  • designing state-of-the-art models for limit order placement
  • developing quantitative tools to analyze order flow
  • carrying out market microstructure research
  • handling high frequency data/big data and developing statistical and/or machine learning models on the same
  • pre/post trade analytics for execution algorithms
  • short term price predictive, alpha and portfolio optimization models