Tags
Language
Tags
June 2025
Su Mo Tu We Th Fr Sa
1 2 3 4 5 6 7
8 9 10 11 12 13 14
15 16 17 18 19 20 21
22 23 24 25 26 27 28
29 30 1 2 3 4 5
    Attention❗ To save your time, in order to download anything on this site, you must be registered 👉 HERE. If you do not have a registration yet, it is better to do it right away. ✌

    ( • )( • ) ( ͡⚆ ͜ʖ ͡⚆ ) (‿ˠ‿)
    SpicyMags.xyz

    Microsoft Fabric Complete Guide - Future Of Data With Fabric

    Posted By: ELK1nG
    Microsoft Fabric Complete Guide - Future Of Data With Fabric

    Microsoft Fabric Complete Guide - Future Of Data With Fabric
    Published 10/2023
    MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
    Language: English | Size: 3.27 GB | Duration: 9h 0m

    Microsoft Fabric Masterclass | Data Factory, Warehouse, Data Science, Power BI all in Fabric | Learn Microsoft Fabric

    What you'll learn

    Understand Microsoft Fabric, what it is, how it works and its various components

    Learn how to explore, create, assign and configure workspaces

    Discover the principles of data engineering in Microsoft Fabric, including Lakehouse and Delta Lake

    Explore the application of OneLake on Fabric

    Learn about data loading and ingestion options in the Fabric enviroment

    Understand the connection of Power BI and Fabric in data visualization

    Discover how to use data factory to create and execute data pipelines in Fabric

    Find out the uses of Fabric within the domains of data science and data engineering

    Gain comprehensive understanding of performance management, SQL, and KQL, and learn how to use KSQL Queryset, KSQL database, and KSQLMagic for data analysis.

    Explore how to manage access control, governance, and monitoring in the Fabric environment

    Requirements

    Basic understanding and knowledge of data concepts and terminologies.

    Programming experience and familiarity with data engineering and data science languages such as SQL, Spark and Python is not required, but recommend

    Simple understanding of cloud computing concepts and services, particularly for Microsoft Azure.

    Description

    Are you ready to immerse yourself in the cutting-edge world of Microsoft Fabric and revolutionize your data-professional and data engineering skills? This in-depth course will take you on an exploration of the power of Microsoft Fabric, Microsoft's cutting-edge data tools and analytics platform. With over 9 hours of engaging content, you will obtain a solid grasp of Microsoft Fabric's capabilities and how it can assist you with your data journey.In this comprehensive Microsoft Fabric course, you will learn about important topics like Lakehouse versus warehouse and the concept of workspaces. Learn how to set up and configure workspace access, how to use OneLake and Delta Lake, and how to apply authentication and authorization techniques for data protection. Improve your knowledge of shortcuts, monitoring hubs, and data hubs. Learn about Spark integration, different ingest strategies for efficient data loading, and key topics like SQL vs. KQL and performance management.Whether you're a seasoned data expert or just starting out, this course will prepare you to thrive in the world of data.What is this course all about?The main goal of this course is to offer a comprehensive guide to Microsoft Fabric and showcase its diverse applications across multiple domains in the data field. By delving into data engineering, data science, and data analytics, you will develop a holistic comprehension of how Microsoft Fabric can be effectively utilized in the world of data. What is Microsoft Fabric?Microsoft Fabric is an all-in-one cloud-based analytics platform that includes data migration, data lakes, data engineering, data integration, data science, real-time analytics, and business intelligence. It offers a user-friendly, cloud SaaS interface that makes it accessible even to people with limited data analytics knowledge. All analytics components are available on a single platform, easing data pipeline management, model deployment, and insight sharing.Who are the instructors for this course?Sawyer NyquistA data professional from West Michigan, USA, holding the position of Sr. Data Engineering Consultant at Microsoft. He specializes in business intelligence, data engineering, data warehousing, and data platform architecture. Possessing cloud data certifications in data engineering, Apache Spark, and business intelligence, he has collaborated with numerous companies to strategize and deploy data platforms, analytics, and technology and to foster growth.Hitesh GovindHitesh is a cloud solutions architect from Southern California, USA, with a wide expertise in database administration and enterprise architecture. He is also a published author who is passionate about mentoring teenagers and an entrepreneur who believes in the power of technology to tackle real-world business challenges. Hitesh also has expert-level certification in Azure Solutions Architecture, as well as Data Engineer and Power Platform certifications.Why learn Microsoft Fabric?Role-Tailored Tools: Microsoft Fabric provides specialized tools for different roles involved in the data analytics process, catering to the demands of data professionals, analysts, and engineers.Unified Platform: Microsoft Fabric unifies diverse components of an analytics solution into a single platform.Cloud-Based Accessibility: As a cloud-based platform, Fabric allows users to access it from anywhere, making it ideal for organizations with distributed teams or those requiring quick scalability for their analytics capabilities.AI-Powered Capabilities: Microsoft Fabric incorporates features like Copilot, which aids in efficient code writing, and Data Activator, which provides real-time data monitoring, enhancing data analysis and decision-making.Adaptation to Current Trends and Upskilling: Embracing Microsoft Fabric allows individuals and organizations to stay current with emerging trends in data analytics, providing opportunities for continuous learning and skill enhancement to remain competitive in the data realm.Why choose this course?Learn from Experts: The course is taught by industry experts who have extensive knowledge and experience in the fields of data science, data analytics, and data engineering.Comprehensive Coverage: This course provides a complete guide covering the areas of data engineering, data analytics, and data science, making it a useful and well-rounded resource for data professionals.Practical Approach: Going beyond theoretical explanations, we provide practical examples, allowing students to practice alongside the instructor, which allows the learners to apply the concepts in real-world scenarios, enhancing their learning experience.Instructor support: Whether you're stuck on a particular subject, seeking clarification, or looking for expert insights, our instructors are committed to helping you every step of the way.Course Overview:Sections 1: Learn about the course objectives, the instructors, and how to align analytical solutions with the needs of the clients.Section 2: An introduction to Microsoft Fabric along with workspace set-up and configuration.Sections 3 to 5: An overview of data engineering in Fabric, covering OneLake, Delta Lake, shortcuts, authentication process, and monitoring Spark jobs.Section 6: Introduction to data warehouse in Fabric covering data ingestion, data loading, performance management, etc.Section 7: Learn real-time analytics including SQL and KQL, monitoring queries and data, KSQLmagic along with Spark integration.Sections 8 and 9: Understanding data factory, data flows, pipelines and workspace set-up.Section 10: Exploring the integration of Power BI with Fabric.Section 11: Introduction to data science process, model management and practical exercises.Section 12: Covers the fundamentals of data management including access control, governance and security, and monitoring.

    Overview

    Section 1: Introduction

    Lecture 1 Instructors Introduction

    Lecture 2 Learning objectives

    Lecture 3 Understanding the Objectives

    Lecture 4 Success Criteria

    Lecture 5 Introduction

    Lecture 6 Course Roadmap

    Section 2: Microsoft Fabric Foundation

    Lecture 7 Overview of Microsoft Fabric

    Lecture 8 Lakehouse vs Warehouse

    Lecture 9 Fabric License Types

    Lecture 10 Getting-Started: Sign-up Screen

    Lecture 11 Concept of Workspaces

    Lecture 12 Create and Configure Workspace Access

    Lecture 13 Workspace Settings

    Section 3: Data Engineering - OneLake

    Lecture 14 Introduction to Data Engineering in Fabric

    Lecture 15 Introduction to OneLake

    Lecture 16 Lakehouse

    Lecture 17 Delta Lake

    Lecture 18 OneLake Explorer

    Lecture 19 Authentication and Authorization

    Lecture 20 Introduction to Shortcuts

    Lecture 21 Creating Shortcuts

    Lecture 22 Monitoring Hub and Data Hub

    Section 4: Data Engineering - Lakehouse

    Lecture 23 Introduction

    Lecture 24 Architecture

    Lecture 25 Distinctions between Lakehouse & Warehouse

    Section 5: Data Engineering - ETL with Lakehouse

    Lecture 26 What is Spark?

    Lecture 27 Notebook Overview

    Lecture 28 Web based and VS Code Notebooks

    Lecture 29 Spark + Monitoring Spark Jobs

    Section 6: Data Warehouse - Serverless Engine

    Lecture 30 Warehouse-SQL Scripts

    Lecture 31 Introduction

    Lecture 32 Default Dataset and Modelling

    Lecture 33 Ingest Methods

    Lecture 34 Load Data Introduction

    Lecture 35 Load Data into Lakehouse

    Lecture 36 Load Data Using Data Pipeline Part 1

    Lecture 37 Load Data Using Dataflows

    Lecture 38 Load Data Using Data Pipeline Part 2

    Lecture 39 Models and Power BI reports

    Lecture 40 Cross-database Query

    Lecture 41 Roles + Permissions (RLS, CLS)

    Lecture 42 Manage Performance

    Lecture 43 Warehouse-SQL Scripts

    Section 7: Real-Time Analytics

    Lecture 44 Real-Time Analytics - KQL Scripts

    Lecture 45 SQL vs KQL Introduction

    Lecture 46 Create, Process and Monitor

    Lecture 47 KSQL Queryset

    Lecture 48 KSQL Database

    Lecture 49 KSQLmagic

    Lecture 50 Spark

    Lecture 51 Real-Time Analytics - KQL Scripts

    Section 8: Data Factory Introduction

    Lecture 52 What is Data Factory?

    Lecture 53 Data Flows and Pipelines

    Lecture 54 Architecture

    Lecture 55 Workspace Setup

    Section 9: Data Factory End-to-End Build

    Lecture 56 Control Table and Copy Data

    Lecture 57 Metadata Copy Pattern

    Lecture 58 Script Activity

    Lecture 59 Data Flows Gen2 Introduction

    Lecture 60 Data Flows Gen2 Continuation

    Lecture 61 Execute Pipeline

    Lecture 62 Shortcut to Other Workspaces

    Lecture 63 Notebooks

    Lecture 64 Data Flow Gen2 Transformations

    Lecture 65 Pipelines, Notebooks and Parameters

    Lecture 66 Monitoring Notebooks in Pipelines

    Section 10: Data Visualization with Power BI

    Lecture 67 Power BI and Fabric

    Lecture 68 Version Control

    Lecture 69 Direct Lake

    Section 11: Data Science

    Lecture 70 Data Science - Resources

    Lecture 71 What is Data Science?

    Lecture 72 The Data Science Process

    Lecture 73 Items and Models

    Lecture 74 Excercise

    Lecture 75 Saving Models

    Lecture 76 Model Management

    Lecture 77 Data Science - Resources

    Section 12: Data Management

    Lecture 78 Introduction

    Lecture 79 Access Control

    Lecture 80 Governance

    Lecture 81 Monitoring

    Citizen and professional data practioners,Data professionals working with data infrastructure, ETL, and data integration, who are seeking to learn how they can utilize Fabric in their data workflows,Business analysts who want to expand their knowledge and skills by learning about data engineering practices, data lakes, and the integration with Power BI for reports and visualization,Data scientists who are looking at how they can leverage Fabric in their data science projects, including model management and integration with Azure services