Quantitative Researcher Systematic Equities - Zug, Switzerland

Marlin Selection
London
3 days ago
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We are recruiting on behalf of a small, highly collaborative, and entrepreneurial systematic investment team seeking a talentedQuantitative Researcherto help expand their global systematic equities strategies. This is an outstanding opportunity to join a high-performing group where your research will have direct impact on portfolio construction and alpha generation. The environment is fast-paced, intellectually rigorous, and offers exceptional long-term career growth.



Role Overview

As a Quantitative Researcher, you will work closely with the Senior Portfolio Manager and other researchers to develop, test, and refinesystematic equity signals and strategies. You will contribute across the full research lifecyclefrom idea generation and dataset exploration to modelling, backtesting, and deployment.

This role is ideal for someone who thrives in a lean team structure, enjoys autonomy, and brings both strong technical skills and economic intuition.



Key Responsibilities
  • Collaborate directly with the Senior Portfolio Manager onalp...

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