SEO Specialist and Data Analyst

The Content Emporium
Bristol
3 weeks ago
Applications closed

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SEO Specialist and Data Analyst


Salary:£33,000 per annum

Location:Bristol / Hybrid

Contract:Full time, Permanent

Closing Date:Wednesday 7th May 2025

Interviews:Held during the week of 12th May 2025


ABOUT THE CONTENT EMPORIUM

At The Content Emporium, we offer high-level plug-in content marketing support to major brands across the UK, covering everything from strategy, design and CRM to photography, motion graphics, social media and content creation. With a 50-strong team of creative experts, we work in true partnership with our clients — delivering consistent, exceptional results across all channels. Our client base includes FTSE 100 companies and leading UK shopping centres, and SEO, analytics and insights are vital to the success of the work we do for them.


THE ROLE

We are looking for aSEO Specialist and Data Analystto join our growing agency. Reporting to the Client Success Director, this new role will support client website performance through smart, effective SEO strategy and data-driven insights.


You’ll be responsible for delivering on-page SEO optimisation and light technical SEO across client websites, identifying opportunities for improvement, and recommending SEO best practices. Alongside this, you will take ownership of GA4 analytics reporting, helping to track, interpret and present data that measures the success of our content and marketing work.


An interest in emerging SEO trends such as AI-driven search and social search (TikTok SEO, Instagram discoverability, etc) would be highly advantageous as we continue to future-proof our strategies.

This is an exciting opportunity for someone who loves combining technical skills, data analysis and content strategy to help drive measurable results.


RESPONSIBILITIES


SEO Strategy and Execution

  • Perform on-page SEO audits and optimise content to improve rankings and site performance.
  • Implement light technical SEO tasks such as metadata optimisation, internal linking, and monitoring site health.
  • Work closely with the editorial, design and client teams to embed SEO best practices into content production.
  • Stay ahead of search evolution, including AI-driven search changes and the rise of social search platforms.


GA4 Analytics and Reporting

  • Take full ownership of client GA4 analytics accounts, setting up tracking, goals and events where needed.
  • Build and deliver regular analytics reports for internal and client use, highlighting key metrics and actionable insights.
  • Monitor website and content performance across different channels, identifying trends and opportunities.
  • Present data to clients in a clear, insightful way that ties results back to their business goals.


Cross-Team Collaboration

  • Liaise with the editorial, design, CRM and social teams to ensure SEO strategies are fully integrated across all client activity.
  • Advise and train team members on basic SEO principles and SEO content best practice where needed.
  • Collaborate on multi-channel campaign planning, ensuring SEO, analytics and social discoverability are part of every stage.


Quality Assurance and Continuous Improvement

  • Perform regular website health checks and SEO audits, raising and resolving issues quickly.
  • Develop best-practice templates, guidelines and checklists to maintain consistent SEO quality.
  • Monitor SEO and performance reporting workflows, suggesting improvements to maximise efficiency.
  • Stay ahead of emerging trends in SEO, analytics, AI, and social search to bring fresh ideas to client work.


Client Delivery and Success

  • Support the Client Success Director in delivering outstanding service across all SEO and analytics work.
  • Participate in client performance reviews and presentations where relevant.
  • Help to identify areas where SEO, data and analytics can add further value to client partnerships.
  • Maintain a proactive, problem-solving approach to all client-facing work.


ABOUT YOU

We are looking for someone who combines a love of SEO, content performance and data storytelling. You’ll be detail-focused, technically capable, commercially aware, and confident in presenting clear recommendations that improve results.


You will ideally have:

  • 2+ years experience in SEO and/or analytics roles.
  • Strong understanding of on-page SEO, with basic technical SEO knowledge.
  • Proficiency in using GA4 and Google Search Console.
  • Ability to build clear, compelling data reports for clients and teams.
  • Strong Excel/Google Sheets skills; familiarity with Looker Studio (formerly Data Studio) is a bonus.
  • A working knowledge of how AI and social search are shaping SEO would be advantageous.
  • Excellent organisational, planning and project management abilities.
  • Strong written and verbal communication skills.
  • Experience with SEO tools such as SEMrush, Ahrefs, Screaming Frog or similar is desirable.


WHY JOIN US

  • Salary: £33,000 per annum
  • 25 days holiday per year plus all UK bank holidays
  • Pension scheme with employer contributions
  • Hybrid working, with minimum of one day per week in the Bristol office
  • Friendly, ambitious team environment with strong growth opportunities
  • The chance to work with leading brands on exciting, high-profile campaigns


HOW TO APPLY

Please submit your CV and a short cover letter explaining why you are a great fit for this role to - please ensure the subject line is'SEO Specialist and Data Analyst application'.


Please note we will not look at any applications submitted via easy apply – only email applications will be considered.


Applications close on Wednesday 7th May 2025. Interviews will take place during the week of 12th May 2025.



We encourage early applications and reserve the right to close the role early if we find the right person.


OUR COMMITMENT

We are actively trying to create an inclusive and diverse environment. All applicants will be considered for employment based on suitability for the role alone and without attention to age, ethnicity, religion, sex, sexual orientation, gender identity, family or parental status, neurodiversity or disability status.


Please let us know if there's anything specific we can do to make your application process easier for you.

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