Marketing Lead ? HPC and Cloud Solutions

Crawley
1 year ago
Applications closed

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We are looking for a Marketing Lead to amplify our presence in High-Performance Computing (HPC) and Artificial Intelligence (AI) across established and emerging markets. You will work collaboratively with teams across sales, technology, and operations to ensure cohesive marketing efforts that resonate with our target audiences and promote sustainable growth.

Responsibilities Include:

Creating and implementing marketing plans with internal teams to align with our business goals.

Organising our presence at industry tradeshows and developing messaging that captures our competitive edge.

Crafting impactful communications and campaigns in partnership with sales and business development.

Managing creative projects across digital platforms, including promotional materials, website updates, and social media content.

Researching industry trends and producing insightful reports to guide strategic decisions.

Qualifications:

Masters degree in marketing, business, or a related field.

Experience in planning and executing strategic marketing initiatives, particularly in digital sectors.

Knowledge of HPC and Cloud technology is preferred.

Excellent English communication skills, with a collaborative spirit across diverse teams and cultures.

Analytical mindset with a focus on data-driven results and problem-solving

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