
18 hours of action packed Snowflake Data Engineering content including Hybrid tables, Iceberg tables and Dynamic Tables.
β±οΈ Length: 18.1 total hours
β 4.58/5 rating
π₯ 1,878 students
π October 2025 update
Add-On Information:
“`html
Noteβ Make sure your ππππ¦π² cart has only this course you're going to enroll it now, Remove all other courses from the ππππ¦π² cart before Enrolling!
-
Course Overview
- Embark on a comprehensive journey from foundational concepts to expert-level data engineering in Snowflake, seamlessly integrated with AWS.
- Master the design and implementation of scalable, high-performance data pipelines and warehousing solutions within the Snowflake Data Cloud.
- Gain hands-on expertise with cutting-edge features like Hybrid, Iceberg, and Dynamic Tables for modern data architecture.
- Understand how to architect and manage enterprise-grade data solutions, leveraging Snowflake’s powerful capabilities in an AWS environment.
- Transition from a basic understanding to confidently designing, deploying, and managing complex data engineering workflows.
- Equip yourself to tackle real-world data challenges, driving significant business value through robust data initiatives.
-
Requirements / Prerequisites
- A foundational understanding of SQL (Structured Query Language) is essential for effective participation.
- Familiarity with basic cloud computing concepts, especially related to AWS services like S3, will be beneficial.
- A general grasp of data warehousing principles will aid in comprehending data modeling strategies.
- Comfort with a command-line interface (CLI) for basic operations is helpful but not strictly required.
- Ability to set up a free Snowflake trial account for crucial hands-on practice throughout the course.
- A strong desire to master cloud-native data platforms and actively engage with practical labs.
-
Skills Covered / Tools Used
- Advanced Data Modeling: Optimize table structures for performance and cost, including semi-structured data handling.
- ELT Pipeline Orchestration: Develop robust, scalable data ingestion, transformation, and workflow automation within Snowflake.
- Performance Tuning: Master query optimization, caching, clustering keys, and search optimizations for rapid data access.
- Data Governance: Implement strategies for data quality, lineage, and compliance using Snowflake’s native features.
- Cost Management: Gain expertise in monitoring credit usage, optimizing virtual warehouses, and managing storage costs.
- AWS Integration: Seamlessly connect Snowflake with key AWS services like S3, Lambda, and Kinesis for comprehensive solutions.
- Complex SQL & Procedural Logic: Develop advanced UDFs, stored procedures, and intricate analytical queries for data manipulation.
- Metadata Management: Leverage Snowflake’s metadata layer for automated cataloging, impact analysis, and data discovery.
- Data Lakehouse Architecture: Build modern data lakehouse solutions utilizing Snowflake’s support for Iceberg and Hybrid tables.
- Data Product Development: Apply data mesh principles through Snowflake’s secure data sharing features and domain-driven design.
-
Benefits / Outcomes
- Architect, build, and deploy sophisticated, high-performance data warehousing and data lake solutions on Snowflake and AWS.
- Significantly enhance your career prospects as a skilled data engineer specializing in leading cloud data platforms.
- Master modern ELT methodologies, enabling you to build automated, reliable, and scalable data pipelines efficiently.
- Gain the confidence to optimize Snowflake environments for both peak performance and cost efficiency effectively.
- Be fully equipped to leverage advanced Snowflake features, including Hybrid, Iceberg, and Dynamic Tables, for future-proof infrastructure.
- Become an invaluable asset, capable of transforming raw data into actionable insights through robust, secure data platforms.
-
PROS
- Action-Packed, Hands-On Learning: Over 18 hours of practical content with downloadable code, data, and slides ensures effective, active engagement.
- Cutting-Edge & Future-Ready Content: Updated for October 2025, covering the latest Snowflake features like Hybrid, Iceberg, and Dynamic Tables.
- Comprehensive “Zero to Expert” Path: Guides learners from foundational concepts to advanced data engineering patterns for complete mastery.
- Proven Student Satisfaction: A high rating of 4.58/5 from 1,878 students validates the course’s quality and effectiveness.
- Strong Focus on Data Engineering: Tailored specifically for data engineers, delving into crucial architectural and implementation details.
- Significant Career Advancement: Equips you with highly sought-after skills, boosting your professional profile in the tech industry.
-
CONS
- Substantial Time Commitment Required: The 18+ hours demand significant dedication and consistent engagement to master all concepts and practical applications.
“`
Learning Tracks: English,IT & Software,Other IT & Software
Found It Free? Share It Fast!