Business Intelligence Analyst

Eton
11 months ago
Applications closed

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Business Intelligence Analyst

Business Intelligence Analyst

Business Intelligence Analyst

Business Intelligence Analyst

Business Intelligence Analyst

Business Intelligence Analyst

THIS IS A REMOTE ROLE
About The Company
General Information
At Salutem Care and Education, we are dedicated to ensuring that the individuals who use our
services receive exceptional, empowering support from a team of highly trained and engaged
staff in environments that are homely and comfortable. We pride ourselves on being innovative,
solution-focused, and committed to achieving the best possible outcomes.
We are Supportive by promoting opportunities for everyone so they can reach their full potential
We are very Ambitious to provide the best possible outcomes for the people who use our services
We are Loyal because we put the people that we support and our staff at the centre of everything we do and we deliver on our promises. We also are committed to ensuring that our services are meeting the needs of all stakeholders
We are Unique because we are ambitious and innovative about the diversity of the services that we provide without compromising quality
We are Transparent by being open, honest and fostering a culture of mutual respect. We promote a culture where we learn by our experiences and we are committed to doing things better and setting the highest standards in what we do
We are Engaging because we work in partnership with the people that we support, our staff and all our stakeholders
We encourage everyone to experience a Meaningful life by being aspirational and by offering opportunities 

About The Role
Job Overview
Salutem is a fast-growing, acquisitive group that has grown out of a number of different businesses with different backgrounds and processes. We are seeking a Business Intelligence Analyst to grow our Power BI reporting platform, automate data processes across our whole business, and develop our first large-scale, model-driven Power Apps.
You’ll collaborate with stakeholders from across the business to harness the power of data in every one of our systems, streamline workflows, boost insights and influence decisions. Strong communication skills will be key to your success. And you’ll need to quickly understand a variety of business processes as you become an expert in how our systems work, and how they can work better together.
This is a critical role to ensure the longevity and efficiency of our reporting processes.
 
Job Responsibilities:
• Azure Environment: Maintain and manage the Azure environment, ensuring optimal performance, security, and scalability of cloud resources and services
• Documentation and Training: Develop thorough documentation and provide training sessions to colleagues to ensure they can independently seek reports.
• Business Intelligence Solutions: Deliver high-quality business intelligence solutions, specializing in finance reporting.
• Management & Relationships: Provide project management and stakeholder management skills, using them to build strong relationships and trust across the business
• Partnership: Collaborate with operational teams and shared services departments to generate data-driven insights and use them to influence business activities
• Data Structures: Develop and maintain expert knowledge of our systems’ data structures and key departmental processes, using this knowledge to tailor your approach to each team
• Quick Learner: Ability and willingness to rapidly learn new systems and technologies.
• Report Creation: Create and refine Power BI reports, dashboards, and apps to ensure they are insightful and user-friendly.
• Support and Troubleshooting: Provide ongoing support and troubleshoot ad hoc issues with Power Query, SQL, and Power BI as needed.
• Data Cleansing: Responsible for data cleansing activities, including identifying, correcting, and managing inconsistencies or errors in large datasets to ensure accuracy and reliability for analysis and reporting.
• Process Automation: Assist in automating reporting processes across multiple departments/systems using tools like Power Platform and SharePoint.
• User Support: Deliver intuitive reporting solutions and processes for end users of all technical abilities, supporting both operational teams and central services.
 
Required Attributes:
• Power BI Experience: Experience analyzing large volumes of complex data with Power BI.
• SQL Proficiency: Strong skills in SQL for data manipulation and query writing.
• Power Automate: Experience with Power Automate for process automation.
• Personable and Customer-Focused: Able to relate well to colleagues at all levels and provide excellent customer service.
• High Standards: Commitment to delivering first-class solutions for both technical and non-technical users

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