Graduate Data Analyst

NCR Atleos Corporation
Dundee
3 weeks ago
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About NCR AtleosNCR Atleos, headquartered in Atlanta, is a leader in expanding financial access. Our dedicated 20,000 employees optimize the branch, improve operational efficiency and maximize self-service availability for financial institutions and retailers across the globe.Title: Graduate Data AnalystLocation: DundeeGrade: 9Responsibilities for this position include: Build solutions to detect error patterns in the systems log data for alerting. Build PowerBI Dashboards providing insight to the health of the end points based on the log data with focus on data quality. Provide analytics and feedback on the effectiveness of the alerting and resulting service engineer actions. Use of best practices in Database Design, Business Intelligence, Configuration Management, Unit Test and Product Test to iteratively build out dashboard solutions.* Integrate data from a range of different systems.* Collaborate with Product Owner and stakeholders to ensure solutions meet the needs of the business.* Provide regular reports to the business as required.Basic Qualifications:* University Degree or equivalent in Computer Science/Engineering or other related field.* Strong analytical and problem-solving skills.* Competency to create and maintain complex SQL queries.* Experience with any of MySQL, Oracle, Aster, Teradata DW, Hive/Hadoop databases.* Worked with PowerBI or similar BI Visualization tool* Python and R experience would be an advantage* Excel (including VBA in Excel and charts)Offers of employment are conditional upon passage of screening criteria applicable to the job.EEO Statement NCR Atleos is an equal-opportunity employer. It is NCR Atleos policy to hire, train, promote, and pay associates based on their job-related qualifications, ability, and performance, without regard to race, color, creed, religion, national origin, citizenship status, sex, sexual orientation, gender identity/expression, pregnancy, marital status, age, mental or physical disability, genetic information, medical condition, military or veteran status, or any other factor protected by law.Statement to Third Party AgenciesTo ALL recruitment agencies: NCR Atleos only accepts resumes from agencies on the NCR Atleos preferred supplier list. Please do not forward resumes to our applicant tracking system, NCR Atleos employees, or any NCR Atleos facility. NCR Atleos is not responsible for any fees or charges associated with unsolicited resumes.A career at NCR Atleos means embracing our innovative culture and values, seeking new adventures and carving your own path.
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