Senior Data Analyst - Trading Data Specialist EMEA (F/M/D)

Flowdesk
London
1 week ago
Applications closed

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Flowdesk is rapidly growing and looking for new talents!

Founded in 2020, Flowdesk is a regulated, full-service digital asset trading and technology firm that specializes in market making, OTC and treasury management services. We have engineered a trading infrastructure that integrates more than 120 centralized and decentralized exchanges. Combining proprietary technology with significant experience from traditional markets and algorithmic trading, Flowdesk brings control and transparency to digital asset markets.

Flowdesk has offices in France, Singapore, the U.S. and the U.K.

Job Description

The data team has grown from 1 BI Analyst to 4 members in the past year. The team's vision, mission, and scope have expanded from bespoke reporting to high-scale data management platform engineering. The resulting systems will be the stateful computation powerhouse that will push Flowdesk trading operations to the next level.

Now, we are seeking aSenior Data Analyst – Trading Data Specialistto bridge the gap between trading teams and data operations. In this role, you will focus onleading the design, development and monitoring of market data metrics and signals.Your insights and problem-solving skills will directly contribute to the efficiency and performance of our trading operations.

Your mission will be to

  • Design and implement systems to identify trading opportunities, monitor market conditions, identify trading signals or detect manipulation tactics.
  • Collaborate with trading teams to understand data requirements, scope analytical projects and ensure timely delivery of actionable dashboards and alerts.
  • Detect, investigate and resolve data issues resulting from discrepancy, accuracy or consistency by defining data assertions and implementing corresponding tests.
  • Create detailed yet concise and intuitive documentation for metrics computation, reconciliation processes, and reporting standards.

Requirements

Background and experience

  • 5+ year proven experience in data analysis, reconciliation, and reporting within a trading or financial environment.
  • Strong understanding of market finance, trading operations, financial instruments or decentralized finance protocols.
  • Proficiency in data transformation and visualization technologies such as Dbt or Grafana (real-time systems exposure is a plus).
  • Analytical and problem-solving skills with academic background in statistics, machine learning, financial forecasting or econometrics.
  • Excellent communication skills, with the ability to present complex data to non-technical stakeholders. Fluency in English (French is a plus).
  • International environment (English is the main language)
  • Top of the range equipment, Macbook, keyboard, laptop stand, 4K monitor & headphones
  • Team events and offsites
  • Coming soon, gym memberships, international mobility & lot of other cool benefits!

Recruitment Process

Are you interested in this job but feel you haven't ticked all the boxes? Don't hesitate to apply and tell us in the cover letter section why we should meet!

Here's what you can expect if you apply

  • HR call (30')with a Talent Acquisition
  • Technical Interview (45')with the Lead Data
  • Technical meeting (60')with the Head of Infrastructure and Data
  • Culture Interview with HR (45')

On the agenda, discussions rather than trick questions! These moments of exchange will allow you to understand how Flowdesk works and its values. But they are also (and above all) an opportunity for you to present your career path and your expectations for your next job!

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