TikTok Shop UK - Strategy & Operations Data Analyst

Poole & Partners
City of London
4 days ago
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Join the UKs eCommerce breakthrough. TikTok Shop was the fastest-growing online retailer in the UK in 2024 and 2025 (Source: NIQ Digital Purchases, Total eCommerce), and were continuing to accelerate as we redefine how people discover products and shop.

We are seeking a driven and proactive Strategy & Operations Data Analyst to be a critical engine for our growth. This is a high-impact, fixed-term contract where you will support strategic initiatives across the platform.

The ideal candidate will have strong data analysis skills, experience leveraging AI tools to gather external data for seller segmentation, and a solid understanding of eCommerce sales processes, from lead generation through to onboarding conversion, including CRM tools. If you thrive in fast-paced environments, work independently, and take initiative, wed love to hear from you.

Responsibilities

  • Gather data from external public sources for internal analysis
  • Review offerings from external data providers and provide recommendations
  • Leverage AI tools to collect external eCommerce data at scale, such as seller revenue, seller characteristics, and contact details
  • Analyse external and internal seller data f...

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