Data Architecture For Data Engineers - Practical Approaches - Printable Version +- Softwarez.Info - Software's World! (https://softwarez.info) +-- Forum: Library Zone (https://softwarez.info/Forum-Library-Zone) +--- Forum: Video Tutorials (https://softwarez.info/Forum-Video-Tutorials) +--- Thread: Data Architecture For Data Engineers - Practical Approaches (/Thread-Data-Architecture-For-Data-Engineers-Practical-Approaches) |
Data Architecture For Data Engineers - Practical Approaches - OneDDL - 11-22-2024 Free Download Data Architecture For Data Engineers - Practical Approaches Published 11/2024 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 773.24 MB | Duration: 3h 55m Building Scalable, Efficient Data Solutions with Real-World Applications What you'll learn Evaluate and select data architectures based on specific business needs and data characteristics. Design data models and implement database strategies for structured and unstructured data. Build scalable, fault-tolerant data pipelines using ETL/ELT processes and real-time data processing. Implement cloud-based data solutions on AWS, Azure, and multi-cloud environments. Differentiate between modern data architectures, including data lakes, warehouses, and lakehouses, for optimal data storage. Apply best practices for data governance, security, and compliance within data architecture frameworks. Analyze and choose appropriate data integration and management tools for hybrid and multi-cloud strategies. Plan a career path from Data Engineer to Data Architect, including key skills and certifications. Requirements Basic Understanding of Data Concepts: Familiarity with data structures, databases, and general data processing will make it easier to follow along with the technical aspects. Knowledge of SQL and Data Storage: Some experience with SQL and an understanding of different types of data storage (e.g., relational databases, cloud storage) would be helpful, though not essential. Interest in Data Architecture and Cloud Platforms: Curiosity about data architecture frameworks and cloud platforms like AWS, Azure, or Google Cloud will make the course content more engaging and relevant. No specific tools or advanced skills are required for beginners; the course is designed to introduce you to key concepts and guide you through practical data architecture approaches step-by-step. If you're motivated to learn and eager to apply new skills, this course is for you! Description Unlock the potential of data architecture with Data Architecture for Data Engineers: Practical Approaches. This course is designed to give data engineers, aspiring data architects, and analytics professionals a solid foundation in creating scalable, efficient, and strategically aligned data solutions.In this course, you'll explore both traditional and modern data architectures, including data warehouses, data lakes, and the emerging data lakehouse approach. You'll learn about distributed and cloud-based architectures, along with practical applications of each to suit different data needs. We cover key aspects like data modeling, governance, and security, with emphasis on practical techniques for real-world implementation.Starting with the foundational principles-data quality, scalability, security, and cost efficiency-we'll guide you through designing robust data pipelines, understanding ETL vs. ELT processes, and integrating batch and real-time data processing. With dedicated sections on AWS, Azure, and hybrid/multi-cloud architectures, you'll gain hands-on insights into leveraging cloud tools for scalable data solutions.This course also prepares you for a career transition, offering guidance on skills, certifications, and steps toward becoming a data architect. Through case studies, quizzes, and real-world examples, you'll be equipped to make strategic architectural decisions and apply best practices across industries. By the end, you'll have a comprehensive toolkit to design and implement efficient data architectures that align with business goals and emerging data needs. Overview Section 1: Introduction to the Instructor and Course Overview Lecture 1 Meet Your Instructor Lecture 2 Course Structure and Objectives Section 2: Introduction to Data Architecture Lecture 3 Key Tenets in Data Architecture and Governance Lecture 4 Overview of Data Architecture Lecture 5 Types of Data Architectures Lecture 6 Monolithic Architecture Lecture 7 Distributed Architecture Lecture 8 Cloud-based Architecture Use Cases Lecture 9 Choosing the Optimal Data Architecture Lecture 10 Additional Readings Section 3: Data Modeling for Effective Architectures Lecture 11 Introduction to Data Modeling Lecture 12 Database Types Lecture 13 Database Design Approaches Lecture 14 Normalization Lecture 15 Denormalization Lecture 16 Normalization & Denormalization - How to choose? Lecture 17 Case Study Lecture 18 Additional Readings Section 4: Architecting Data Pipelines Lecture 19 Introduction to Data Pipelines Lecture 20 ETL vs. ELT Processes Lecture 21 Data Pipeline Tools & Best Practices Lecture 22 Batch Data Processing Lecture 23 Real-time Data Processing Lecture 24 Batch vs Real-time Data Processing Lecture 25 Architecting Robust Pipelines - I Lecture 26 Architecting Robust Pipelines - II Lecture 27 Case Study Lecture 28 Additional Readings Section 5: Modern Data Architectures Lecture 29 Data Lakes and Data Warehouses Lecture 30 Data Lakehouse Architecture Lecture 31 Data Mesh and Data Fabrics Lecture 32 Case Study Lecture 33 Additional Readings Section 6: Cloud Data Architecture: Tools and Technologies Lecture 34 AWS for Data Engineers Lecture 35 Azure for Data Engineers Lecture 36 Hybrid and Multi-cloud Architectures Lecture 37 Additional Readings Section 7: Cheat Sheet and Course Wrap-Up Lecture 38 Step-by-Step Guide to Choosing an Architecture Lecture 39 Road to Becoming a Data Architect Lecture 40 Other Courses by Manas Jain Lecture 41 Feedback & Course Conclusion This course is ideal for Data Engineers, aspiring Data Architects, and Analytics Professionals who want to deepen their understanding of data architecture frameworks and practical applications. If you're a data professional looking to step into a strategic role by mastering data architecture, this course is designed for you.,Who will benefit from this course:,Early-career Data Engineers and Analysts aiming to advance their careers by building robust skills in data architecture principles, design, and cloud technologies.,Aspiring Data Architects who want a comprehensive, practical foundation in data architecture concepts, including data modeling, data governance, and cloud-based data solutions.,Tech Professionals in Data-Related Roles such as Business Intelligence (BI) engineers, Data Analysts, or Software Engineers who want to transition into data engineering or architecture roles.,IT Managers and Team Leads looking to enhance their teams' data capabilities and understand the broader architectural decisions impacting data strategy.,Prior Knowledge Recommendations:,Familiarity with Basic Data Concepts such as databases, data processing, and SQL will help learners maximize their experience.,An Interest in Cloud Platforms like AWS, Azure, or Google Cloud is beneficial, but no advanced knowledge is required.,Learners in this course will gain hands-on, practical insights into data architecture, positioning them to apply their knowledge immediately in data engineering roles or to transition toward data architecture. Homepage Recommend Download Link Hight Speed | Please Say Thanks Keep Topic Live No Password - Links are Interchangeable |