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Data Analyst

Orbital
City of London
3 days ago
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Overview

Join to apply for the Data Analyst role at Orbital.

Orbital is on an exciting mission to revolutionise global cross-border payments by innovatively combining traditional fiat banking rails with stablecoins over blockchain rails for a variety of use cases. Our class leading B2B payments platform offers multi-currency e-money accounts (corporate IBANs) combined with a suite of digital assets services. Our company sits at the frontier of payments & fintech, by intersecting blockchain and traditional (fiat) financial services, and is leading the way to bridging those two worlds for corporate enterprises globally. We believe blockchain technology is firmly here to stay, and we want to be the first to bring a combined offering of fiat & crypto payment services under one exciting platform.

What is the purpose of this role in the delivery of our mission? As a Data Analyst, you will bring a curious mindset, a thirst for knowledge and a hunger for fearless experimentation in new and interesting ways to meet our most pressing data challenges. You are a self-starter and effective communicator to share stories through data and empower colleagues with the ability to utilise data.

Responsibilities
  • Utilise a modern tech stack to analyse and query databases
  • Create report and dashboard visualisations to show insights from our data
  • Communicate insights to stakeholders across the organisation
  • Problem solve and business analysis to create requirements for product change
  • Share and implement new methods to empower the usage of data
  • Liaise with stakeholders across the business to gather reporting requirements
  • Opportunities to learn and develop your understanding of applications and transforming data landscape
  • Build the data products and and models
  • Documenting business processes and code
Accountability
  • Develop and owning data models, dashboard and reporting
  • Business analysis and the query of databases
  • Ownership of Jiras
Essential skills, qualifications and experience
  • Professional experience with SQL
  • A background in accounting with understanding of accounting principles
  • Experience and understanding of logical data modelling
  • Experience within an Agile environment/Atlassian tools are desirable
  • A strong attention to detail and quality, especially as it applies to data
  • You are a clear and confident communicator
  • You are a self starter who can take proud ownership of your work
  • Demonstrate ability to manage stakeholder expectations
  • Have passion working in a dynamic and growing start-up environment that is tight-knit, challenging and fun
  • You have strong analytical, organisational, and prioritisation skills, with a belief in writing documentation as part of SQL queries
Desirable skills, qualifications and experience
  • Bachelors or Master’s degree in STEM or Computer science
  • 2+ years experience in data
  • Previous experience in a Tech, Finance, or product firm is desirable
  • Advance knowledge and experience in SQL
  • Experience a BI tool (Metabase, Tableau, PowerBI, Looker)
  • Nice to have Python (Data-frames - Pandas, Numpy)
  • Experience in AWS tools desirable (Redshift, DynamoDB)
  • Experience using data infrastructure tools is desirable (Stitch, DBT, Fivetran)
Seniority level
  • Entry level
Employment type
  • Full-time
Job function
  • Information Technology


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