Senior MI Analyst

Erin Associates
Birmingham
1 year ago
Applications closed

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Senior MI Analyst – Central Birmingham / Hybrid£50,000 - £58,000 + bonus, 35-hour work week and great benefits  This profitable and multi-national business are looking to add an experienced MI Analyst to their collaborative team, who will be responsible for the design, development and maintenance of the firms MI and data analytics solutions. This role leans itself to be more of a ‘Business Data Analyst role’, where you will act as the bridge between the data team and wider business stakeholders. The MI Analyst will still undertake hands on data analysis, but you will work closely with central business teams to provide insight and guidance on how data and MI can add value. Ideally, you will have the skills needed to develop solutions using the Microsoft technologies and will have proven experience in applying best practices for delivering business critical MI services.  The role will require 1-2 days per week in the office, with the ideal location being their head office in Nottingham. Manchester or Birmingham could also be considered.  Package:Bonus opportunities35-hour work week with flexible working25 days holiday + 5 days buy/sell + bank holidays.Professional development opportunities5% employer pension, rising with service + many more.  Key Requirements:Excellent communication skills and the ability to communicate complex data to non-technical audiences.Experience working with internal stakeholders / clients to understand their data journey and how value can be provided through data and MIExperience designing, developing and maintaining MI Solutions e.g. reporting, dashboards and analytics toolsTech Stack – SSRS, SSMS, PowerBI, T-SQL, SQL Server, Visual StudioExcellent analytical and problem-solving skillsExperience of working in an analytical and data intensive environment  The company have an excellent reputation within their sector, and have experienced 14 consecutive years of growth, posting record revenues for the last financial year. They promote a healthy work-life balance and will give you the opportunity to develop your technical knowledge. Click APPLY to be considered for the role as my client is aiming to interview as soon as possible. All interviews are to be conducted virtually, with the process requiring a maximum of two stages. Contact – Scott Murray Erin Associates welcomes applications from people of all ethnicities, genders, sexual orientations, and disabilities. Please inform us if you require any reasonable adjustment at any stage of the application process. MI Analyst, MI Business Partner, BI Analyst, – Nottingham, Derby, Burton-upon-Trent, Loughborough, Mansfield, Leicester, Sheffield, Stoke, Peterborough, Coventry, Chesterfield, Birmingham, Dudley, Walsall, Wolverhampton, Solihull, Rugby

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