Analytics Director - Advertising -Client Services

Charles Moore Associates
London
2 months ago
Applications closed

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Analytics Director - Advertising - Client Services

Job Title: Analytics Director, Client Services

The following information aims to provide potential candidates with a better understanding of the requirements for this role.About Us:

This global leader in advertising technology provides businesses with valuable insights into consumer behaviour.Position Overview:

As they continue to grow, they’re looking for an experienced Analytics Director to lead the client analytics team and drive the adoption of their advertising technology and metrics in the media industry. This role requires technical expertise and creativity to work with the client success and partnerships teams, delivering solutions that maximize the impact of advertising data for clients. The Director will also mentor and guide the client analytics team to ensure high-quality, impactful work that supports client success.Key Responsibilities:Collaborate with client service, partnerships, and data ops teams to design and deliver analytics solutions that align with client goals.Think strategically and creatively about leveraging attention data to inform and drive actionable insights, especially in connecting advertising data to outcomes.Lead and mentor a team of analysts, providing guidance on analytics methodologies, data interpretation, and solution design.Oversee the production of reports, dashboards, and presentations that communicate key insights and recommendations to clients.Introduce new analytical methodologies, techniques, and tools to improve the effectiveness and efficiency of client analytics solutions.Stay up-to-date on industry trends, new technologies, and best practices in advertising analytics to ensure the company remains a leader in the field.Criteria:Education & Experience:

Bachelor's or Master’s degree in Data Science, Statistics, Economics, Business, or a related field.10+ years of experience in media analytics, with at least 3-4 years in a leadership role.Technical Skills:Proficient in data analytics tools such as SQL, Python, R, Looker, Tableau, and/or Power BI.Hands-on experience with predictive modeling and statistical analysis.Experience with large-scale data platforms (e.g., AWS, Google Cloud) and data pipelines.Leadership & Communication:Proven track record of managing and growing high-performing teams.Strong communication and presentation skills with the ability to clearly articulate complex analytical concepts to diverse audiences.Ability to influence and partner with senior leadership and cross-functional teams.Business Acumen:Ability to think strategically about how analytics can drive business goals in a fast-paced environment.Experience translating data insights into actionable business strategies and outcomes.Problem-Solving & Innovation:A strong analytical mindset with a creative approach to problem-solving.Ability to work in an evolving field and adapt to emerging trends in attention technology and analytics.Why Join:Impactful Work:

Work with cutting-edge technology that is revolutionizing the way advertising is planned, bought, and evaluated.Innovative Culture:

Be part of a team that is shaping the future of attention technology and driving meaningful change in digital interactions.Career Growth:

Opportunity to lead and grow an analytics function at a fast-paced and innovative company.Flexible Work Environment:

Hybrid working with a collaborative team culture.Seniority Level:

DirectorEmployment Type:

Full-timeJob Function:

Research, Analyst, and Information TechnologyIndustries:

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