Data Warehousing and Integration Part 2

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Data Warehousing and Integration Part 2

Coursera · Beginner ·🔄 Data Engineering ·3mo ago

Key Takeaways

Covers data warehousing and integration for decision support systems and data analytics

Original Description

Covers various topics in Data Engineering in support of decision support systems, data analytics, data mining, machine learning, and artificial intelligence. Studies on-premises data warehouse architecture, dimensional modeling of data warehouses, Extract-Transform-Load (ETL) integration from source systems to data warehouse, On-line Analytical Processing (OLAP) systems, and the evolving world of data quality and data governance. Offers students an opportunity to design, develop and maintain cloud-based data pipelines. Both on-premises and cloud-based platforms will be used to illustrate and implement Data Engineering techniques using operational and analytical data warehouses.
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