PPC Account Manager

Leeds
9 months ago
Applications closed

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Data Analyst - Marketing

PPC Account Manager - Hybrid Working - Leeds-Based Tech Innovator

Are you a PPC Account Manager with a passion for data-driven strategy and client success? An exciting opportunity has arisen with a cutting-edge technology company specialising in ecommerce growth solutions. As a PPC Account Manager, you’ll be the key point of contact for clients, delivering outstanding value through strategic account management, performance analysis, and exceptional communication.

This hybrid role, based in Leeds, places you at the heart of innovation, working alongside expert teams in data analysis and digital marketing. The successful PPC Account Manager will thrive in a dynamic environment, managing multiple client relationships, and helping leading ecommerce retailers scale their businesses through intelligent ad campaign management and reporting.

Key Responsibilities of the PPC Account Manager:



Own and manage client relationships as the primary contact, building trusted partnerships.

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Lead PPC campaign management, aligning client KPIs with strategic execution.

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Conduct insightful, weekly 30-minute client calls to review progress and address concerns.

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Present tailored C-Suite reports showcasing campaign performance and ROI.

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Drive strategic planning and execution to support client growth and retention.

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Collaborate with Data Analysts, Product, and Delivery teams to ensure seamless delivery.

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Identify upselling and cross-selling opportunities, boosting account value.

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Monitor performance metrics and implement continuous improvements.

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Champion the client’s voice internally to drive satisfaction and success.

About You:

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Solid experience managing Google Ads accounts (essential).

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Background in a client-facing role within a SaaS or digital agency environment.

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Proven ability to interpret and present data analytics and performance metrics.

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Confident communicator, experienced in reporting to executive stakeholders.

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Organised multitasker, capable of managing a busy client portfolio.

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Strategic thinker with a commercial mindset and customer-first approach.

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Familiar with CRM and reporting tools such as HubSpot, Wrike, and Data Studio.

Salary & Benefits:

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£30,000-£35,000 + Bonus

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Flexible working

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Join a forward-thinking company making a real impact in ecommerce

If you're a PPC Account Manager who thrives on strategic thinking, client interaction, and making data work harder, this is your chance to join a growing tech business where your contribution truly matters.

This vacancy is being advertised by POST- Recruitment Ltd, an Employment Agency. Visit our website for more details

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