Power BI Integration with AWS and Snowflake

External: Coursera Courses ↗ · Coursera

Open Course on External: Coursera

Free to audit · Opens on External: Coursera

Power BI Integration with AWS and Snowflake

Coursera · Advanced ·📊 Data Analytics & Business Intelligence ·3mo ago
Skills: BI Tools90%

Key Takeaways

Connects Power BI with AWS and Snowflake to design, build, and manage data models in Snowflake and host, stream, and visualize datasets with AWS and Power BI

Original Description

Take your data visualization and business intelligence skills further by learning how to connect Power BI with AWS and Snowflake, two of the most widely used platforms in cloud analytics. This course gives you practical experience designing, building, and managing data models in Snowflake using its unique architecture, as well as hosting, streaming, and visualizing datasets with AWS and Power BI. By the end of this course, you’ll know how to: - Set up AWS and Snowflake accounts and navigate their interfaces for data management. - Explore Snowsight, Snowflake’s user interface, to discover tables, data warehouses, and advanced analytics tools. - Create and manage databases, tables, and S3 storage buckets in both Snowflake and AWS for efficient data storage. - Connect Power BI to Snowflake and AWS, enabling you to visualize and analyze live data from cloud sources. - Apply best practices for data security, governance, and cost optimization in cloud environments. This course is ideal for data analysts, business analysts, database administrators, and anyone seeking to advance their ability to work with cloud-based analytics tools. Some past experience with MS Excel, SQL, AWS, R, or relational databases is helpful but not required. You will finish with hands-on expertise in cloud data integration, scalable architecture, automated reporting, and advanced business intelligence ,preparing you for real-world analytics roles in organizations using modern cloud platforms.
Watch on External: Coursera ↗ (saves to browser)
Sign in to unlock AI tutor explanation · ⚡30

Related Reads

📰
Tracking Macroeconomic Indicators with the Finance Toolkit
Learn to track macroeconomic indicators using the Finance Toolkit and understand its importance in global economic trends
Dev.to · Jeroen Bouma
📰
Pydantic for Data Engineering: Schema Validation in ETL & Pipeline Contracts
Use Pydantic for schema validation in ETL pipelines to ensure data consistency and quality
Dev.to · Gowtham Potureddi
📰
Half of Data Engineering Jobs on LinkedIn Aren't Real
Understand the discrepancy between reported data engineering job growth and actual job availability on LinkedIn
Dev.to · DataDriven
📰
Evolutionary Data Through Schemaboi: Achieving Forward, Backwards, and Sideways Compatibility
Learn how Schemaboi achieves forward, backwards, and sideways compatibility for evolutionary data through self-contained schemas in file headers
InfoQ AI/ML
Up next
6-Phase SQL Roadmap 2026 | Data Analytics & Engineering | #shorts
SCALER
Watch →