Data Analyst

High Wycombe
1 day ago
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Silent Sounds is an established agency with over 25 years of experience in the provision of high-quality, professional interpreting and translation services. We specialise in both Deaf services and Spoken services, covering more than 250 languages and dialects. We bridge the gap with precision and care.

We are looking for a Data Analyst to join our busy team! Working closely with our Account Managers, you’ll act as our data expert, turning raw data into clear, professional reports.

Key Responsibilities

  • Create, maintain, and update reports.

  • Build clear and concise dashboards that summarise key performance indicators (KPIs).

  • Respond to specific client data requests, ensuring information is accurate and delivered on time.

  • Manage and clean large datasets to ensure the integrity of the information being reported.

  • Identify ways to automate repetitive reporting tasks to save time and reduce errors.

    Technical Requirements

    You should be comfortable managing large datasets and possess the following skills:

  • Enhanced Knowledge of Excel

  • Mastery of Pivot Tables to quickly organise thousands of rows of data into readable summaries.

  • Ability to create charts that make complex data easy for clients to understand.

  • Ability to look at numbers and identify trends, patterns, or discrepancies.

    What We Offer



* Competitive salary of £26,000 – £28.000 per annum for full-time, or pro-rata for part-time (25 hours)

* On-site parking

* Opportunities for career progression and professional development

* Full training and ongoing support

* Monthly staff lunches and team-building activities

* Christmas bonuses

* A supportive and collaborative team environment.

Whether you’re looking for a full-time or part-time opportunity, we’d love to hear from you.

This is an office-based position in High Wycombe, and full training will be provided.

Silent Sounds is an equal opportunities employer and welcomes applications from all suitably qualified people regardless of their race, sex, disability, religion/belief, sexual orientation or age.

Please note: only shortlisted candidates will be contacted for an interview

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