Data Analytics Lead – London /Remote

Atrium Workforce Solutions Ltd
London
3 days ago
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Data Analytics Lead – London /Remote

Atrium EMEA are looking for an accomplished Data Analytics Lead who will play a critical role in planning, executing, and monitoring various projects related to programs being designed and implemented by the Monetization Incentives Global Programs Team. The ideal candidate possesses strong data, communication, organizational and leadership skills, along with a proven track record of successfully managing complex projects or tasks from inception to completion.

The Programme Manager requires strong critical-thinking and organizational skills, a strong understanding of the ad industry, knowledge of messaging apps, and cross-functional management experience.

- Specific experience with data, analytics and insights gathering work [G-Suite, CRM and Daiquery].

- Strong presentation and communication skills [G-suite, Live presentations and Email / Workplace Post comms ]

- Data analytics, data manipulation and insights gathering skills

- Comfortable prioritizing work streams and communicating these priorities to leadership and stakeholders

- Strong operational background - bringing teams and functions together to increase efficiency

- Comfortable working with a global team and an understanding of regional nuances

- Previous experience with global activations

- Experience with east-west coordination, and relationship management across levels Abili...

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