Quantitative Trading Analyst - Hybrid (UK Visa Sponsorship)

J&T Business Consulting
Bromley
1 week ago
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A financial consulting firm in Bromley is on the lookout for disciplined individuals to join their team. The job involves market research and analysis across G10 FX and equity indices, executing trading strategies, and maintaining precise performance records. Candidates should possess strong analytical skills and an understanding of financial derivatives. They offer a competitive base salary of £45,800 and hybrid working arrangements, among other performance incentives.
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