Quantitative Developer - (Python | Equities | Backtesting) Key Skills: Python, Equities, Backtesting

Scope AT Limited
London
1 month ago
Applications closed

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Quantitative Developer - (Python | Equities | Backtesting)

Key Skills: Python, Equities, Backtesting, Data Analysis, Systematic Trading

A leading financial organisation is seeking a Quantitative Developer with strong Python expertise and solid equities knowledge. You will contribute to the design, development, and optimisation of systematic trading models, backtesting frameworks, and analytical tools. (Client name intentionally omitted)

Role Overview

  • Build and enhance Python-based tools, analytics, and trading model components

  • Develop and refine backtesting frameworks to support systematic strategies

  • Work closely with quants and researchers to translate ideas into robust production code

  • Analyse large equities datasets and support model validation

  • Contribute to performance optimisation and workflow automation

Required Experience

  • 3-5+ years' experience in a quantitative, trading, or financial engineering environment

  • Strong Python engineering skills (core Python, data structures, scientific libraries)

  • Solid understanding of equities markets, pricing, and market microstructure

  • Hands-on experience with backtesting framewo...

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