Graphic Designer

Propel
London
10 months ago
Applications closed

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Exciting Opportunity for Graphic Designer in Central London - 5 days onsite in Central London - Up to 40k


Join a dynamic construction technology company with a global presence, boasting over 20 years of industry expertise. This role offers a chance to spearhead a complete redesign of the company's visual identity. As part of a small team, you will have full creative control over all Graphic Design aspects.


Key Requirements:

- Minimum 3 years of graphic design experience, ideally within the technology sector

- Proficiency in Design and Production: Crafting visually captivating graphics for diverse marketing materials such as presentations, social media posts, email campaigns, websites, and print materials

- Brand Cohesion: Ensuring design elements adhere to brand guidelines for a consistent brand image across all platforms

- Sound grasp of design fundamentals and typography

- Strong communication and interpersonal abilities


This is a full-time position based in Central London, requires working onsite for 5 days a week.


Interested applicants, kindly forward your CV to

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