Fluent Mandarin Treasury Sales Trader

City of London
3 days ago
Applications closed

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It is essential that all applicants have some UK work experience, including at least 3 years finance market experience gained from a banking or financial environment. Our client does not offer sponsorship, student visa or PSW, therefore 3+ years on visa eligibility to work in UK is essential.
Our client, a Financial Institution, is seeking a Fluent Mandarin Treasury Sales Trader to join their team on a permanent basis.
Responsibilities include (but not limited to):
Transaction Execution & Risk Management:

  • Ensure the execution of Financial Markets transactions adheres to all risk constraints, guidelines, and policies.
  • Strive for optimal execution outcomes for both the Company and its clientele across financial market products.
    Client and Business Development:
  • Operational process includes handling client on-boarding, KYC processes, credit evaluations, presenting pricing, and culminating deals.
  • Collaborate within the team with a special emphasis on commodities, including product innovation, system integration, headquarters' directives, and nurturing client relationships.
  • Partner with FMD and ancillary departments to unearth novel business prospects, funding avenues, and revenue streams for the branch.
    Market Awareness:
  • Stay abreast of market evolutions, particularly regulatory shifts, which could influence the FMD business landscape.
    Skills and experience:
  • Undergraduate degree with at least 2.1 in a quantitative subject e.g. Economics, Accounting and Finance;
  • Bilingual in both English and Mandarin (both spoken and written);
  • Minimum 3 years’ experience in the finance market with experience in commodities market;
  • Candidates with existing client relationships in FX/commodities preferred
    For more information please send CV in to Judith Webb quoting job reference 16838JW

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