Business Intelligence Analyst

Linnk Group
London
1 month ago
Applications closed

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Job Title:Business Intelligence Analyst

Location:London Bridge (On-Site)

Are you someone who enjoys working with data, creating visualisations, and providing recommendations to improve business outcomes?

At Linnk Group, we are on a mission to drive data-driven decision-making across all levels of our organisation. Our team is passionate about harnessing the power of data to uncover insights, improve business performance, and fuel innovation. We’re looking for a skilled Data/BI Analyst to join our growing team and help us turn raw data into actionable intelligence that drives success.

Job Description:

As a Data/BI Analyst, you will play a crucial role in collecting, analysing, and transforming complex data into clear, impactful reports and visualisations. You’ll collaborate with cross-functional teams to understand their data needs and deliver insights that guide business strategies.

Key Responsibilities:

  1. Collect, clean, and analyse large datasets from various sources.
  2. Develop and maintain interactive dashboards and reports.
  3. Work closely with the Head of the Business Information Systems to understand their data requirements and deliver insights.
  4. Identify trends, patterns, and opportunities for improvement through data analysis.
  5. Ensure data quality, consistency, and integrity across various platforms.
  6. Support ad-hoc reporting needs and provide recommendations based on findings.
  7. Automate and streamline reporting processes to increase efficiency.
  8. Strong experience with data analysis tools such as SQL, Excel, Tableau, Power BI, or similar.
  9. Proficiency in data visualisation and reporting techniques.
  10. Solid understanding of data modelling and database design.
  11. Strong analytical and problem-solving abilities.
  12. Excellent communication skills with the ability to present complex data insights in an easily understandable format.
  13. Attention to detail and commitment to delivering accurate and actionable data.
  14. Prior experience in a business intelligence or analytics-focused role.
  15. Experience with Python, R, or other data analysis programming languages.
  16. Prior experience with KPI development in a sales-driven environment.
  17. Understanding of recruitment or talent management data such as ATS or CRM platforms.
  18. Experience leveraging artificial intelligence or machine learning techniques to enhance predictive analytics, automate processes, and generate deeper business insights.

Benefits Of Working for Linnk:

  • Clear career progression opportunities within Linnk Group.
  • 25 days of annual leave, plus your birthday off!
  • Comprehensive benefits including private medical, dental, and gym discounts.
  • Regular company events to foster team spirit.
  • A modern office with an incredible location near The Shard and Borough Market, complete with a rooftop!

If you’re excited about the opportunity to contribute to an innovative, data-driven company, we’d love to hear from you!

Seniority level

Associate

Employment type

Full-time

Job function

Analyst and Information Technology

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