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Python Quantitative Developer - Bonhill Partners

Bonhill Partners
London
21 hours ago
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Bonhill Partners are currently partnering with a global crypto trading firm in their search for a Python Quantitative Developer. The role focuses on optimizing balance sheet utilization, transfer pricing, and liquidity management across crypto and fiat products, supporting 24/7 global trading operations.

Responsibilities

  • Develop and deploy comprehensive firmwide systems for Transfer Pricing and Treasury analytics, covering ALM, balance sheet management, inventory, and risk utilization.
  • Streamline and automate inventory and liquidity processes to enhance efficiency and profitability.
  • Partner with Trading, Research, Operations, and Technology teams to maintain strong and uninterrupted trading operations.
  • Manage, mentor, and expand the Treasury Quantitative Development team.

Requirements

  • 4–8 years of experience in quantitative development.
  • Proficiency in programming with Python and/or Java.
  • Background in Treasury, ALM, and balance sheet management.
  • Outstanding collaboration, communication, and analytical problem-solving abilities.

This Role requires 3 days in the office and can pay up to £200K TC.

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