Legal Data Analyst

Bybit
Manchester
2 months ago
Applications closed

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About Us

Established in March 2018, Bybit is one of the fastest growing cryptocurrency derivatives exchanges, with more than 70 million registered users. We offer a professional platform where crypto traders can find an ultra-fast matching engine, excellent customer service and multilingual community support. We provide innovative online spot and derivatives trading services, mining and staking products, as well as API support, to retail and institutional clients around the world, and strive to be the most reliable exchange for the emerging digital asset class.

Our core values define us. We listen, care, and improve to create a faster, fairer, and more humane trading environment for our users. Our innovative, highly advanced, user-friendly platform has been designed from the ground-up using best-in-class infrastructure to provide our users with the industry's safest, fastest, fairest, and most transparent trading experience. Built on customer-centric values, we endeavour to provide a professional, 24 / 7 multi-language customer support to help in a timely manner.

As of today, Bybit is one of the most trusted, reliable, and transparent cryptocurrency derivatives platforms in the space.

Key Responsibilities
  • Extract, clean, and structure legal data from various sources for analysis and reporting
  • Build and maintain dashboards to monitor internal legal projects and KPIs
  • Visualize data trends and metrics to track legal performance and progress
  • Support legal operations across departments with data analysis and reporting
  • Collaborate on testing AI tagging tools and contract model development
  • Assist in legal tech initiatives focused on automation, compliance, and risk analytics
  • Contribute to improving internal processes and reporting workflows within the legal team
Qualifications & Key Skills
  • Proficiency in SQL and dashboarding tools (e.g., Tableau, Power BI, Excel)
  • Strong logical thinking and analytical skills with attention to detail
  • A curious, structured, and proactive approach to working with data
  • Interest in legal tech, compliance, and data automation
  • Ability to translate complex data into clear visualizations and insights
  • Effective communication skills for working with both technical and legal stakeholders
  • Comfortable working in a fast-paced, cross-functional environment


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