Commercial Data Analyst

Dunnockshaw
6 months ago
Applications closed

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Ralph Recruitment are excited to be recruiting exclusively for a Commercial Data Analyst for our client based in Burnley - this can be office/hybrid or a home working role after the first few weeks of training.

Working for this international, growing, online retail business you will be responsible for analysing and pulling together data from various platforms, producing reports through deep analysis, and then determining the best way to represent it visually to managers and stakeholders. The Commercial Data Analyst will have proven, strong analytical skills with a commercial mindset within a medium to large business or a graduate of similar.

The Role-

Data analyst responsibilities include conducting full life cycle analysis to include requirements, activities and design. Data analysts will develop analysis and reporting capabilities. They will also monitor performance and quality control plans to identify improvements.

·Interpreting data, analysing results using statistical techniques

·Developing and implementing data analysis, data collection systems and other strategies that optimize statistical efficiency and quality

·Acquiring data from primary or secondary data sources and maintaining databases

·Identify, analyse, and interpret trends or patterns in complex data sets

·Filter and “clean” data by reviewing computer reports, printouts, and performance indicators to locate and correct code problems

·Work with management to prioritize business and information needs

·Locate and define new process improvement opportunities

The Candidate-

·Proven working experience as a Data Analyst or Business Data Analyst or graduate of similar

·Strong knowledge of and experience with reporting packages (Business Objects etc), databases

·Knowledge of statistics and experience using statistical packages for analysing datasets (Excel, etc)

·Strong analytical skills with the ability to collect, organize, analyse, and disseminate significant amounts of information with attention to detail and accuracy

·Adept at queries, report writing and presenting findings

·Commercially aware, proactive and inquisitive

All applications are dealt with in the strictest of confidence.

To confirm, the services advertised by Ralph Recruitment Ltd are those of an Employment Agency. We continually strive to be the industry leader in delivering the highest calibre of candidates to our client’s companies, whilst enhancing the careers of our candidates. For further information and contact details, please visit our website. Where you will also find links to our Privacy Policies.

By submitting your details you are consenting to Ralph Recruitment Ltd providing you with recruitment services as an agency defined under the Employment Agencies Act 1973 and authorising Ralph Recruitment Ltd to seek employment on your behalf. You are consenting to your details being forwarded to clients and to giving your consent to your personal data being stored on a database and to use in order to secure employment.

Unfortunately, due to the high volume of applications we receive per vacancy, we are unable to respond to every candidate personally and so if you have not heard back from us within 21 days, please consider your application unsuccessful.

Thank you for working with Ralph Recruitment! Please contact Louisa Ellis for further details

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