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Data Warehouse - The Ultimate Guide - AD-TEAM - 08-31-2024 ![]() Data Warehouse - The Ultimate Guide Last updated 10/2022 MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz Language: English | Size: 3.36 GB | Duration: 8h 48m Master Data Warehousing, Dimensional Modeling & ETL process
What you'll learn Architect & implement a professional data warehouse end-to-end You will learn the principles of Data Warehouse Design You will master ETL process in both theory & practise You will implement in a case study your own data warehouse & ETL process You will learn the modern architecture of a Data Warehouse Dimensional Modeling in a professional way Requirements Basic SQL is helpful but absolutely not necessary Laptop or PC Description Master Data Warehousing, Dimensional Modeling & ETL processDo you want to learn how to implement a data warehouse in a modern way?This is the only course you need to master architecting and implementing a data warehouse end-to-end!Data Modeling and data warehousing is one of the most important skills in Business Intelligence & Data Engineering!This is the most comprehensive & most modern course you can find on data warehousing.Here is why:Most comprehenisve course with 9 hours video lecturesLearn from a real expert - crystal clear & straight-forwardMaster theory & practice - hands-on demonstrations, assignments & quizzesWe will implement a complete data warehouse - end-to-endUnderstand everything step by step from the absolute basics to the advanced topicsLearn the practical steps and the important theory to upskill your careerThis course will take you all the way to being able to architect and implement a data warehouse in a company in a professional manner.Here is what you'll learn ![]() Overview Section 1: Intro Lecture 1 Welcome! Lecture 2 How this course works Lecture 3 What do you learn in this course? Lecture 4 Course slides Section 2: Data Warehouse Basics Lecture 5 Why a data warehouse? Lecture 6 What is a data warehouse? Lecture 7 What is Business Intelligence? Lecture 8 Data Lake or Data Warehouse? Lecture 9 Demos & Hands-on Lecture 10 Setting up Pentaho (ETL tool) Lecture 11 Setting up PostgreSQL (Database system) Section 3: Data Warehouse Architecture Lecture 12 3 Layers of a Data Warehouse Lecture 13 Staging area Lecture 14 Demo: Setting up the staging area Lecture 15 Data Marts Lecture 16 Relational databases Lecture 17 In-Memory databases Lecture 18 Cubes Lecture 19 Operational Data Storage Lecture 20 Summary Section 4: Dimensional Modeling Lecture 21 What is dimensional modeling? Lecture 22 Why dimensional modeling? Lecture 23 Facts Lecture 24 Dimensions Lecture 25 Star schema Lecture 26 Snowflake schema Lecture 27 Demo: Product & Category dimension (snowflaked) Section 5: Facts Lecture 28 Additivity Lecture 29 Nulls in facts Lecture 30 Year-to-Date facts Lecture 31 Types of fact tables Lecture 32 Transactional fact tables Lecture 33 Periodic fact tables Lecture 34 Accumulating snapshots Lecture 35 Comparing fact table types Lecture 36 Factless fact tables Lecture 37 Steps in designing fact tables Lecture 38 Surrogate Keys Lecture 39 Case Study: The Project Lecture 40 Case Study: Identify the business process Lecture 41 Case Study: Define the grain Lecture 42 Case Study: Identify the dimensions Lecture 43 Case Study: Identify the facts Section 6: Dimensions Lecture 44 Dimension tables Lecture 45 Date dimensions Lecture 46 Nulls in dimensions Lecture 47 Hierarchies in dimensions Lecture 48 Conformed dimensions Lecture 49 Degenerate dimensions Lecture 50 Junk dimension Lecture 51 Role-playing dimension Lecture 52 Case Study: Date dimension Section 7: Slowly Changing Dimensions Lecture 53 What are slowly changing dimensions? Lecture 54 Type 0 - Original Lecture 55 Type 1 - Overwrite Lecture 56 Type 2 - Additional row Lecture 57 Administrating Type 2 dimensions Lecture 58 Mixing Type 1 & Type 2 Lecture 59 Type 3 - Additional attribute Section 8: ETL process Lecture 60 Understanding the ETL process Lecture 61 Extract Lecture 62 Initial Load Lecture 63 Delta Load Lecture 64 Load Workflow Lecture 65 Demo: Quick Intro to Pentaho Lecture 66 Demo: Setting up tables in SQL Lecture 67 Demo: Initial Load example Lecture 68 Demo: Delta Load example Lecture 69 Transforming data Lecture 70 Basic Transformations Lecture 71 Advanced Transformations Lecture 72 Demo: Planning next steps Lecture 73 Demo: Table setup & Complete Staging Lecture 74 Demo: Transform Lecture 75 Demo: Load & Validate results Lecture 76 Scheduling jobs Section 9: ETL tools Lecture 77 ETL tools Lecture 78 Choosing the right ETL tool Section 10: Case Study: Creating a Data Warehouse Lecture 79 Plan of attack Lecture 80 Source data & table design Lecture 81 Setting up the tables in database Lecture 82 Staging: Sales Fact Lecture 83 Staging job & fixing problems Lecture 84 Load Payment Dimension Lecture 85 Transform & Load Sales Fact Lecture 86 Transform & Load job Lecture 87 Final ETL job & Incremental Load Section 11: ETL vs. ELT Lecture 88 What is an ELT? Lecture 89 ETL vs. ETL Section 12: Using a Data Warehouse Lecture 90 What are the common use cases? Lecture 91 Connecting the DWH to Power BI Section 13: Optimizing a Data Warehouse Lecture 92 Using indexes Lecture 93 B-tree indexes Lecture 94 Bitmap indexes Lecture 95 Guidelines for indexes Lecture 96 Demo: Setting indexes Section 14: The Modern Data Warehouses Lecture 97 Cloud vs. on-premise Lecture 98 Benefits cloud vs on-premise Lecture 99 Massive parallel processing Lecture 100 Columnar storage Section 15: Bonus Lecture 101 Bonus lecture Data Analyst that want to upskill and learn how to build a data warehouse,Data Engineers that want to learn about data warehousing and data modeling,People that want to become a data architect, BI consultant, data engineer or data analyst,Data professionals that want to upskill in Business Intelligence & Data Modeling ![]() |