Data Analyst

OpenPayd
London
2 days ago
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Who are we?



At OpenPayd, we are building a universal financial infrastructure to power the growth of the digital economy. Our rails-agnostic approach empowers any business to move and manage money globally - across both traditional rails and stablecoins — at scale, and in real time

.The OpenPayd platform delivers a suite of banking and payments infrastructure: accounts in over 40 currencies, FX, on/off ramp, international and domestic payments, Open Banking services – all via a single API. A global network of licences alongside our best-in-class tech is why we're trusted by 800+ enterprise clients to process over €130 billion annually.


How will you add value to the OpenPayd journey?


  • Owns and inputs into reports on the company performance – this reporting is to be done daily/ weekly/ monthly, depending on the metrics.
  • Manages ad-hoc queries from a variety of teams across the business, and fulfils them with existing reports or builds new ones as needed - you will be the 'go-to' data resource for a number of teams.
  • Documentation of existing data sources and identification of gaps - propose and deliver solutions to fill these and improve data quality.
  • Gathering and analysing cross-functional performance data.
  • Presenting performance analysis and recommending solutions.
  • Maintaining current reports, ensuring that company changes do not impact or affect their accuracy.
  • Managing weekly, monthly, and annual regulatory reporting, including all ad-hoc requests received from regulators.



The ideal candidate will have the following:


  • Results driven person with goal-oriented mindset, passionate about payments industry and with proven track record of achieving results.
  • Strong communication and people skills, ability to transform complex problems into simple solutions.
  • Extensive experience with Tableau a must: building reports, data visualisation, and streamlining underlying data sources to optimise this process.
  • Experience with BigQuery and SQL a must.
  • Experience with ThoughSpot and Salesforce CRM will be considered a plus.
  • Excellent organisational skills and attention to detail.
  • Self-starter who can work autonomously and enjoys building solutions from scratch.
  • A problem solver, a person who has a logical mind which can understand someone’s requirements and provide a better way.


We’d like you to take a read of our Talent Acquisition Privacy Notice which explains how we collect and process your personal data. Please read our notice carefully. By submitting the application button, we will consider that you aware of it.


We are looking forward to receiving your CV.


OpenPayd Talent Team


To all recruitment agencies: OpenPayd does not accept speculative agency resumes. Please do not forward resumes to our jobs alias, OpenPayd employees or any other company location. OpenPayd is not responsible for any fees related to unsolicited resumes. OpenPayd will only accept CV's from the partners with relevant agreement via the People and Talent team only.

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