Global Data and Analytics Associate Director

Spark Foundry
London
2 months ago
Applications closed

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BRAND:Spark Foundry
Job Function:Data Sciences
Location:London, United Kingdom
Experience Level:Specialist
Workplace Type:Hybrid

Company Description

Spark Foundry, the Acceleration Agency, helps brands to identify, learn, and respond to opportunities faster than the competition. Every client has an area of their business they need to accelerate, from short-term goals to long-term transformation. We've proven our approach during the most difficult year on record, providing a launchpad for their future. Come be an accelerator with us.

Overview

The Global Analytics team ensures the measurability for all global campaigns, enabling insights and learnings that drive business impact for our clients. We use our problem-solving and analytics skills to generate the right data to answer critical questions, optimizing campaign effectiveness and efficiency.

Responsibilities

  • Data Management and Reporting: Oversee data sourcing and processing from various media platforms, ensuring data harmonization and variance correction. Prepare campaign pacing and post-campaign reports, formulating insights and recommendations.
  • Collaboration and Communication: Work closely with media partners and internal teams to create solutions for client needs. Engage in client communication through presentations and optimization sharing.
  • Innovation and Best Practices: Stay updated with industry trends to utilize current technologies and best practices in media delivery, following Meta's global Ways of Working.

Qualifications

  • Expertise in media analytics, KPI development, and technical practices for campaigns.
  • Proficient in client management and consultation.
  • Strong critical thinking and problem-solving skills.
  • Experience with statistical concepts and modeling.
  • Strong knowledge of Excel/Google Sheets, PPT/Google Slides, Google Campaign manager.
  • Strong understanding of key reporting metrics across channels.
  • Ability to analyze data and build insights.
  • Strong organizational and communication skills.
  • Ability to meet deadlines in a fast-paced environment.
  • Experience working across regional/global campaigns is preferable.

Additional Information

Spark Foundry offers fantastic benefits including pension, life assurance, private medical, and more. Full details of our benefits will be shared when you join us!

Publicis Groupe operates a hybrid working pattern with full-time employees being office-based three days during the working week.

Please inform your Talent Acquisition Partner if you have any circumstances that may affect your assessment, and we will discuss possible adjustments to ensure fairness.

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