Online Data Analyst - United Kingdom

Environmental Career Center
City of London
1 month ago
Applications closed

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Are you passionate about turning raw data into meaningful insights that drive strategic decisions? We are seeking a detail-oriented Online Data Analyst to join our dynamic team in the United Kingdom. This role offers the opportunity to work with diverse datasets, uncover trends, and support business growth through data-driven recommendations.


About the Role

As an Online Data Analyst, you will play a crucial role in collecting, analyzing, and interpreting data from various online platforms. Your insights will empower teams across the organization to optimize performance, improve customer experiences, and make informed decisions.


Key Objectives

  • Analyze online data to identify patterns, trends, and opportunities.
  • Provide actionable insights to support marketing, sales, and product strategies.
  • Ensure data accuracy and integrity across reporting tools and platforms.
  • Collaborate with cross-functional teams to align data analysis with business goals.

Responsibilities

  • Collect, clean, and validate data from various online sources including web analytics, social media, and e-commerce platforms.
  • Develop and maintain dashboards and reports to track key performance indicators (KPIs).
  • Perform detailed data analysis to identify trends, anomalies, and growth opportunities.
  • Communicate findings clearly through visualizations and presentations to stakeholders.
  • Support the development of data-driven strategies by providing insights and recommendations.
  • Collaborate with IT and marketing teams to improve data collection processes and accuracy.
  • Stay updated with industry trends and best practices in data analytics and online behavior.

Requirements

  • Bachelor’s degree in Data Science, Statistics, Business Analytics, or a related field.
  • Proven experience (2+ years) in online data analysis or digital analytics.
  • Strong proficiency with data analysis tools such as Excel, SQL, Google Analytics, or similar platforms.
  • Experience with data visualization tools like Tableau, Power BI, or equivalent.
  • Excellent analytical and problem-solving skills with a keen attention to detail.
  • Ability to communicate complex data insights in a clear and concise manner.
  • Familiarity with online marketing metrics and e-commerce data is preferred.
  • Self-motivated with the ability to work independently and collaboratively in a fast-paced environment.

Benefits

  • Competitive salary with performance-based incentives.
  • Flexible working arrangements including remote work options.
  • Opportunities for professional growth and continuous learning.
  • Supportive and inclusive company culture.
  • Access to cutting-edge tools and technologies.
  • Comprehensive health and wellness benefits.

Only UK candidates can apply. Please send your CV to:


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