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Data Analyst

ELLIOTT MOSS CONSULTING PTE. LTD.
Glasgow
3 weeks ago
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Job Description:

We are seeking a skilled and detail-oriented Data Engineer / BI Developer with strong expertise in Oracle database development and dashboard reporting (preferably using Qlik Sense or Tableau). The ideal candidate will have a strong analytical mindset and a proven ability to translate complex data into meaningful insights that support business decision-making.

Key Responsibilities:

· Develop, maintain, and optimize Oracle database stored procedures to support business intelligence, analytics, and reporting needs.

· Design, build, and manage interactive dashboards and visualizations using Qlik Sense (preferred) or Tableau.

· Analyze large and complex datasets to identify trends, patterns, and actionable insights.

· Collaborate closely with business stakeholders to gather reporting requirements and translate them into scalable technical solutions.

· Perform data validation, cleansing, and reconciliation to ensure accuracy and integrity of reports.

· Automate routine reporting processes to enhance operational efficiency.

· Document data models, processes, dashboards, and technical workflows for knowledge sharing and future maintenance.

· Provide ad-hoc data analysis and reporting support to various business units as needed.

· Work with cross-functional teams to understand data needs and recommend effective solutions.

Must-Have Skills:

· Strong proficiency in Oracle database stored procedures and SQL scripting.

· Hands-on experience with dashboard/reporting tools, especially Qlik Sense (preferred) or Tableau.

· Solid analytical and problem-solving skills.

· Strong acumen in data analysis and interpretation.

· Good understanding of Oracle DB query optimization and performance tuning.

Good-to-Have Skills:

· Familiarity with Agile methodology and development tools related to SDLC.

· Working knowledge of SAS (Statistical Analysis System) for data manipulation and reporting.

· Experience in Python scripting for ETL and data pipeline development.


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