Content Executive

Watford
10 months ago
Applications closed

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Content Executive
Are you passionate about creating compelling content?

We're looking for a Content Executive to join our digital content team within Customer Experience, focusing on our Away From Home proposition.

You'll need a strong editorial mindset, excellent copywriting skills, and a solid understanding of SEO best practices. This role requires creativity, organization, and collaboration, along with a keen eye for detail and a passion for producing high-quality content.

About the Role

This is an exciting and varied position where you'll be supporting the Content Managers in creating, managing, analyzing, and publishing digital content.

Key Responsibilities

Content Publishing & Management

Use our content management system (CMS) to publish and manage digital content regularly.

Collaborate with Content Managers and stakeholders to prepare, write, and publish engaging content.

Support cross-functional teams and act as an ambassador for content strategy.

Report on content performance and continuously seek ways to improve the user experience.

Manage the content launch for our Away From Home proposition, ensuring deadlines and best practices are met.

Oversee photo gallery management and image-related content.

Quality & Best Practices

Proofread and edit content to align with the brand's tone of voice and style guidelines.

Optimize content for SEO and ensure it meets accessibility standards.

Manage content repositories, taxonomies, and metadata, including image libraries.

Format presentations, update profiles, and use data analytics tools to measure content performance.

What You Bring

A background in content management, journalism, media, or a related field.

Experience in content planning and working with CMS platforms.

Understanding of SEO, metadata, and tagging systems.

Familiarity with HTML, accessibility standards, and digital best practices.

Strong communication skills and the ability to work collaboratively and under pressure.

High standard of written and spoken English.

The Rewards

We offer a competitive benefits package, including:

Market-leading pension scheme

Bonus opportunities

Flexible annual leave options

Comprehensive medical insurance

Location & Work Environment

We operate a hybrid working model, combining remote and office-based work. Our office is in a well-connected location within the M25, just 20 miles from central London.

Our Culture

We're committed to fostering an inclusive and diverse workplace, welcoming applications from candidates of all backgrounds, including individuals with disabilities. We encourage a culture where everyone can thrive and be valued for their contributions.

We Are Aspire Ltd are a Commited employer

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