Course Catalog
Data Architecture
Code: Data Arch
Duration: 3 Day
$2195 USD

OVERVIEW

Data Architecture is designed to provide you with a in-depth understanding of the principles and responsibilities of data architecture. Throughout this course, you'll learn how to design efficient data models, solve real-world data modeling challenges, and optimize schemas. We'll explore the integration of structured, unstructured, and hybrid data solutions, and you'll gain hands-on experience in architecting cloud-native and hybrid systems. Additionally, we'll cover building real-time processing systems with tools like Kafka, and you'll learn best practices in data governance, quality, and security. By the end, you'll be equipped to design scalable architectures for AI/ML workflows and create end-to-end data architectures for various business use cases.

This course is perfect for anyone looking to deepen their understanding of data architecture and stay ahead in the ever-evolving field of data management. Join us and take the next step in your data architecture journey.

DELIVERY FORMAT

This course is available in the following formats:

Virtual Classroom

Duration: 3 Day

CLASS SCHEDULE

Delivery Format: Virtual Classroom
Date: Aug 10 2026 - Aug 12 2026 | 08:30 - 16:30 EDT
Location: Online
Course Length: 3 Day

$ 2195

Delivery Format: Virtual Classroom
Date: Sep 21 2026 - Sep 23 2026 | 08:30 - 16:30 EDT
Location: Online
Course Length: 3 Day

$ 2195

Delivery Format: Virtual Classroom
Date: Oct 28 2026 - Oct 30 2026 | 08:30 - 16:30 EDT
Location: Online
Course Length: 3 Day

$ 2195

Delivery Format: Virtual Classroom
Date: Nov 23 2026 - Nov 25 2026 | 08:30 - 16:30 EST
Location: Online
Course Length: 3 Day

$ 2195

Delivery Format: Virtual Classroom
Date: Dec 14 2026 - Dec 16 2026 | 08:30 - 16:30 EST
Location: Online
Course Length: 3 Day

$ 2195

GOALS
  • Understand the principles and responsibilities of Data Architecture.
  • Design efficient data models and Entity-Relationship Diagrams (ERDs).
  • Solve real-world data modeling challenges and optimize schemas.
  • Compare and integrate structured, unstructured, and hybrid data solutions.
  • Architect cloud-native and hybrid systems, integrating ETL/ELT pipelines.
  • Build real-time processing systems with tools like Kafka.
  • Apply best practices in data governance, quality, and security.
  • Design scalable architectures for AI/ML workflows.
  • Create end-to-end data architectures for business use cases.
OUTLINE


Notice: Undefined variable: classroom in /home/alliancemicro/public_html/content/catalog/public_course_details.php on line 264

Notice: Trying to access array offset on value of type null in /home/alliancemicro/public_html/content/catalog/public_course_details.php on line 264
Will Be Updated Soon!
  1. Data Architecture Fundamentals
    • Introduction to Data Architecture
    • Data Modeling Concepts
    • Relational vs Modern Data Warehouses
    • NoSQL Databases
    • Data Lakes and Delta Lakes
  2. Data Design Concepts
    • Cloud Data Architectures
    • OLTP vs. OLAP
    • Lambda and Kappa Architectures
    • ETL vs. ELT
    • Data Pipelines for AI/ML
  3. AI, Data Governance, Security, and Management
    • Scalable Data Architectures for AI/ML
    • Deployment and Optimization of AI/ML Systems
    • Data Governance and Quality
    • Data Security Best Practices
LABS


Notice: Undefined variable: classroom in /home/alliancemicro/public_html/content/catalog/public_course_details.php on line 289

Notice: Trying to access array offset on value of type null in /home/alliancemicro/public_html/content/catalog/public_course_details.php on line 289
Will Be Updated Soon!
Will Be Updated Soon!
WHO SHOULD ATTEND

This course is ideal for Data Engineers, Database Administrators, Big Data Specialists, Data Analysts and Scientists, and Cloud Architects who are looking to enhance their skills in data architecture and management.

PREREQUISITES

  • Familiarity with database systems, SQL, and basic data management concepts.
  • Working knowledge of at least one programming language (e.g., Python, Java, or Scala).
  • Basic understanding of data engineering or data analysis workflows.
  • Awareness of ETL processes and data integration principles.
  • Familiarity with cloud platforms (e.g., AWS, Azure, or Google Cloud) or interest in transitioning to cloud-based systems.
  • Awareness of big data concepts and tools (e.g., Hadoop, Spark) but no hands-on experience required.
  • Understanding of basic data modeling techniques (e.g., star schema, snowflake schema).
  • Awareness of data governance and security concepts.
  • Familiarity with modern data architectures, such as data lakes or warehouses.

Data Analysis Deep Dive