Lead Data Quality & Tagging Analyst (GA4 & GTM)

Open Partners
Manchester
1 week ago
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A leading analytics firm is seeking an Analytics Associate Partner in Manchester. The role involves managing data quality and implementing tracking solutions. Candidates should have deep expertise in Google Tag Manager and advanced GA4 skills. Responsibilities include technical audits, compliance with data regulations, and collaboration with technical teams. The firm offers a permanent contract, hybrid work options, and a focus on data integrity, making this an excellent opportunity for skilled analytics professionals.
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