Data Quality Analyst

Experis
Liverpool
1 year ago
Applications closed

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Data Quality Analyst

Looking to recruit a Data Quality Analyst with ideally experience in the Financial Services sector. You will be tasked with ensuring theaccuracy, validity, consistency, completeness, timeliness, uniqueness of data across the business. You must have a strong background in collaboration as you will working across alongside department leads to ensure across the business on data quality issues and work with the business to identify and fix any data quality related issues.

Key Areas are to

Strong experience of understanding inowning and managing data quality issues from inception to resolutionaddressing the root cause. Strong experience of understandsdata quality metricsand own thedata quality dashboardincluding producing reports up to exec level. Knowledge ofdata governanceand data quality framework Strong understanding and experience inData MigrationExperiencing of chairing a data quality working group or similar Work closely with IT and the business by undertaking the following:data profiling, cleansing and validationexercise Strong experience in developing dashboards, preferably using tools such asTableau, Power BI, or similar

This is hybrid permanent role and you will be expected to go in the office 1 / 2 days a week.

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