Commercial Data Analyst TRAVEL

Chaucer
3 months ago
Applications closed

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Our client, a leading well-established and award-winning travel company in their field, is currently seeking a highly skilled and motivated Commercial Data Analyst to join their dynamic team in the heart of Central London.
This is an exciting opportunity for an individual with a passion for data analysis and a desire to make a significant impact within a growing organisation.
As a Commercial Data Analyst, you will play a crucial role in analysing complex datasets, identifying trends, and providing valuable insights to support data-driven decision-making across the company. You will work closely with various departments, including Marketing, Sales, and Operations, to understand their data requirements and deliver actionable recommendations.
Key responsibilities include:

  • Collecting, cleaning, and processing large volumes of data from multiple sources
  • Conducting in-depth analysis using statistical techniques and data mining tools
  • Developing and maintaining dashboards and reports to visualise key metrics and trends
  • Collaborating with stakeholders to identify business needs and provide data-driven solutions
  • Identifying opportunities for process improvement and optimisation through data analysis
  • Staying up-to-date with the latest industry trends and best practices in data analysis
    To be considered for this position, you should possess the following qualifications and skills:
  • Proven experience as a Data Analyst or similar role, preferably within a fast-paced environment in Travel / Tourism / Hospitality.
  • Strong proficiency in SQL, Excel, and data visualisation tools such as Tableau or Power BI
  • Experience with programming languages such as Python or R is a plus
  • Excellent analytical and problem-solving skills with a keen eye for detail
  • Strong communication and interpersonal skills, with the ability to translate complex data insights into clear and actionable recommendations
  • Ability to work independently as well as collaborate effectively in a team environment
    Our client is committed to providing a supportive and rewarding work environment. As a Data Analyst, you will enjoy:
  • A competitive salary of £40,000 per annum
  • Comprehensive benefits package including pension contributions, Medicash health cash-back plan
  • Opportunities for professional development and career growth within the organisation
  • A collaborative and inclusive team culture that values innovation and creativity
  • Fully office-based role (remote or hybrid working is not available) including Medicash health cash-back plan
  • Discounted tours and travel products
  • Modern office facilities located in the vibrant area of Central London, with excellent transport links
    If you are a passionate and skilled Data Analyst looking for an exciting new challenge, we encourage you to apply for this position via our website using the application form provided. Join our client's team and help drive their success through the power of data analysis.
    Please submit your application with an updated CV

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