Business Intelligence Developer - Finance / Power BI Specialist

Michael Page
Milton Keynes
3 weeks ago
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This role involves leveraging Power BI to deliver insightful business intelligence solutions within the industrial/manufacturing industry. The ideal candidate will be responsible for developing, implementing, and enhancing analytics to support strategic business decision-making.

Client Details

The employer is a well-established large organisation within the industrial/manufacturing industry. They are committed to innovation and excellence, offering a professional environment that fosters growth and development.

Description

Develop and maintain business intelligence solutions using Power BI.
Collaborate with teams to gather and analyse business requirements for analytics and reporting.
Work closely with FP&A teams to contribute to budgeting, forecasting, and scenario modelling by providing data-driven inputs and tools. This includes building models that reflect business drivers and trends, helping to improve forecast accuracy and agility in planning cycles
Create and optimise dashboards and visualisations to support decision-making processes.
Ensure data accuracy and integrity across all reporting tools and systems.
Provide technical support and training to end-users on business intelligence tools.
Identify opportunities to improve data processes and implement solutions.
Integrate various data sources to provide comprehensive insights.
ETL Process - Knowledge of extract, Transform, Load (ETL) techniques for cleaning and consolidating data from different sources using SQL and other tools
Maintain documentation for all analytics tools and processes.Profile

A successful Business Intelligence Analyst / Developer - SAP CO-PA/FI & Power BI should have:

Expert user of Power BI.
SQL, DAX and Databases - Ability to query databases and structure financial data efficiently
ETL Process - Knowledge of extract, Transform, Load (ETL) techniques for cleaning and consolidating data from different sources.
Strong analytical and problem-solving skills.
Experience in the industrial/manufacturing industry is preferred.
Knowledge of data integration and management techniques.
Ability to create clear and effective data visualisations.
Excellent communication skills to engage with stakeholders.
A proactive approach to identifying and implementing improvements.
A degree in a relevant field such as Computer Science, Data Analytics, or similar.Job Offer

Competitive salary ranging from GBP 60,000 to GBP 65,000.
Comprehensive pension scheme.
Permanent role within a large organisation in Milton Keynes.
Opportunities for career development and growth.
Professional work environment in the industrial/manufacturing industry.If you are passionate about analytics and want to make an impact in a large organisation, this role in Milton Keynes could be the perfect opportunity for you. Apply now to take the next step in your career as a Senior Business Intelligence Analyst / Developer

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