Business Intelligence Developer

Peaple Talent
Woking
6 months ago
Applications closed

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Business Intelligence Developer

Business Intelligence Developer

Business Intelligence Developer

Business Intelligence Developer

Business Intelligence Developer

Business Intelligence Developer

✈️ Business Intelligence Developer | Surrey 2/3 days onsite | £45,000-£55,000 ✈️


Join a leading travel and leisure business that creates unforgettable, wish-list holidays. With a strong focus on customer experience, the company is powered by passionate teams and a collaborative, results-driven culture.


Employees are encouraged to truly understand the product, with opportunities to visit destinations as part of their role.


We’re looking for a skilled BI Developer to help shape and deliver data solutions that support smarter business decisions. You’ll work closely with Finance, Marketing, Digital, and Commercial teams to turn data into insights, automate reporting, and improve data infrastructure.


Key Responsibilities

  • Develop and maintain ETL processes using SSIS
  • Build interactive dashboards and reports in Power BI
  • Integrate data from various sources into clear insights
  • Support the development of the data warehouse and reporting environment
  • Promote best practices in BI and self-serve analytics


What You’ll Need

  • 4+ years in a BI development role
  • Strong SQL and Power BI skills
  • Experience with SSIS, SSRS, SSAS
  • Familiarity with Snowflake or similar cloud data platforms
  • Comfortable with scripting (e.g. Python) and Visual Studio
  • Excellent problem-solving and communication skills


Why Join:

💰Salary: £45,000-£55,000

⭐Work with a passionate and award-winning team

📈Work in a data-driven, supportive, and innovative environment

⚙️Exposure to modern BI tools and technologies

🔑Access to DataCamp for ongoing skill development

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