Data Analyst

Malmaison Belfast
Birmingham
2 days ago
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Job Title: Data Analyst – Revenue – Malmaison & Hotel Du Vin


Salary: Competitive Salary & Benefits


Location: Remote with occasional travel


At Malmaison & Hotel du Vin we’re passionate about delivering memorable guest experiences powered by intelligent insight and reporting. We are recruiting for a Data Analyst to support our Revenue team with key reporting and development.


The Data Analyst supports the Revenue Management team by transforming data into actionable insights that drive strategic pricing, inventory optimization, and commercial performance. This role is critical to ensuring revenue opportunities are maximized and our current tools continue to be developed.


Working closely with the data team, you will be responsible for a range of reporting projects and development that enhances our insights. You’ll have the opportunity to work across a variety of systems and hotel environments. You’ll collaborate with internal teams, third-party vendors, and wider business stakeholders to ensure our reporting priorities are delivered for 2026 and beyond.


What you’ll be doing as a Data Analyst

  • Collect, clean, and validate large datasets from multiple sources (PMS, RMS, BI tools, external market data).
  • Develop and maintain dashboards and automated reports to monitor key performance indicators (KPIs).
  • Enhance reporting processes to support efficient trend analysis, identifying demand patterns, booking behavior, and revenue opportunities.
  • Ensure data accuracy and integrity across all reporting tools and systems.
  • Streamline reporting through automation and improved visualization tools (e.g., Power BI, Tableau).
  • Contribute to the development of data standards and best practices within the Revenue Management function.
  • Stay updated on emerging trends, technologies, and analytics techniques in hospitality and data analytics.
  • Collaborate closely with the Malmaison and Hotel du Vin data team to deliver technology priorities and infrastructure.
  • Present insights and recommendations clearly to both technical and non-technical stakeholders, supporting decision making with actionable data-driven insights.
  • Liaise between hotel teams, IT colleagues, and third-party vendors to ensure smooth communication, support vendor evaluations, and align systems with global policies.

What we’re looking for

  • Strong experience in an administrative, coordination, or support role within hospitality.
  • Organised and detail-oriented with strong multitasking skills.
  • Proficient in Microsoft Office Excel e.g Advanced formulas, Pivot Tables & Data loading from SQL.
  • Experience in Oracle SQL desirable.
  • Excellent communication and interpersonal skills.
  • Experience with hospitality platforms such as Opera PMS.
  • Awareness of ITIL framework or service management concepts (Desirable).
  • Experience with data extraction and manipulation using SQL e.g Joins, Create/Alter views, CTEs & Pivots


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