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Global Operations Data Analyst

Meta
City of London
3 days ago
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Overview

The mission of Global Operations (GO) at Meta is to build and run world-class processes at a global scale that minimize harm to people and society, and maximize the success and well-being of Meta's ecosystem of people, communities, businesses, and partners. On the Global Operations Quality team, we measure how effectively Meta is creating safe and open environments for our users and positive experiences for businesses across our family of apps. We use that information to drive continuous improvement across our organization. We are looking for Data Analyst(s) to play a critical role in supporting the operational efficiency and strategic decision-making of our global teams. Your work will enable the organization to optimize processes, improve performance, and drive business outcomes through data-driven insights. You will be relied upon as a thought partner by a variety of operational and technical teams to drive our business transformation agenda.

Responsibilities
  1. Partner with operations teams, data science, data engineering, and product teams to understand business needs and define analytical approaches to solve complex problems
  2. Design and execute data analyses to uncover insights that drive operational improvements and strategy decisions, under your own initiative
  3. Create dashboards, automated reports, and self-service tools using BI platforms (e.g. Tableau) which deepen our understanding of the business and enable efficiencies for our operations teams
  4. Build and maintain data pipelines and associated documentation
  5. Communicate results of analyses to technical and non-technical stakeholders in a way that influences business outcomes (e.g. roadmap decisions, opportunity areas etc)
Qualifications

Minimum Qualifications:

  1. Minimum 5+ years professional experience working in an Operations, Analytics, Product, Engineering or equivalent team, preferably in a technology company, consulting firm, or similar fast-paced environment
  2. B.A. or B.S. degree with a quantitative focus in Computer Science, Information Systems, Math, Statistics, Operations Research, Business Analytics, Data Science or equivalent training
  3. Advanced proficiency in querying and manipulating complex raw datasets for analysis using SQL
  4. Extensive professional experience with data visualization tools (e.g., Tableau - designing, building, productionising dashboards)
  5. Professional experience building and deploying data pipelines
  6. Familiarity with statistical analysis and concepts
  7. Demonstrated experience of managing analytics projects end to end from concept design through to business adoption, autonomously
  8. Business acumen is a must. You will be required to partner with business stakeholders to proactively define analytics strategy, drive execution, and communicate data insights clearly
  9. Demonstrated experience working collaboratively, cross functionally, autonomously, and in a fluid business environment

Preferred Qualifications:

  1. Advanced degree with a quantitative focus (Economics, Computer Science, Operations Research, Math, Statistics, Analytics)
  2. Experience leveraging AI to drive operational efficiencies
  3. Familiarity with data science and machine learning concepts and an understanding of how to apply these methods to solve real-world business problems

Industry: Internet


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