Welcome to Mobilarian Forum - Official Symbianize forum.

Join us now to get access to all our features. Once registered and logged in, you will be able to create topics, post replies to existing threads, give reputation to your fellow members, get your own private messenger, and so, so much more. It's also quick and totally free, so what are you waiting for?

Microsoft Fabric: End To End Data Engineering Project

Alexhost
OP
O 0

oaxino

Alpha and Omega
Member
Access
Joined
Nov 24, 2022
Messages
30,024
Reaction score
863
Points
113
Age
35
Location
japanse
grants
₲89,697
1 years of service
Microsoft Fabric: End To End Data Engineering Project


355149ad24bfdd8b151db287f5904618.jpeg


Published 4/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 2.45 GB | Duration: 3h 39m

Build Bing News Data Analytics platform using different Data Engineering components of Microsoft Fabric[DP-600][DP-203]​


What you'll learn
You will learn to use Microsoft Fabric for building a Bing News Data Analytics platform, enabling seamless integration with Azure Data Engineering components
You will learn the process of ingesting data from external sources, specifically utilizing Bing API, using Data Factory.
You will learn to perform data transformation techniques to shape and refine raw JSON data into curated Delta Tables using Synapse Data Engineering component
You will learn how to perform sentiment analysis using Synapse Data Science component
You will learn how to orchestrate data workflows with Data Factory pipelines.
You will learn how to perform Incremental Load using spark notebooks.
You will learn how to visualize data effectively using Power BI.
You will learn how to configure alerts within Power BI visuals with Data Activator.
Requirements
Basic Programming Skills
Watch the two Pre-requisite videos
Description
In this project, we will build a Bing News Data Analytics platform! This would be a complete end to end Azure Data Engineering project that's done using Microsoft Fabric. We'll pull raw data from Bing API, transform the raw data to clean data with Synapse Data Engineering, analyze sentiment with Synapse Data Science, set up workflows with Data Factory, make cool reports with Power BI, set alerts with Data Activator, and test everything well. Let's get started on Bing News Analytics! The Topics covered in this Project are, 1. Data Ingestion from Bing API using Data Factory: Learn how to seamlessly pull in data from external sources, setting the foundation for your analytics project. 2. Data Transformation using Synapse Data Engineering: Dive into the process of shaping and refining your raw JSON data to a curated Delta Table, including techniques like incremental loading to keep your processes efficient. 3. Sentiment Analysis using Synapse Data Science: Uncover insights hidden within the news description by predicting the sentiment of the news classified as Positive, Negative or Neutral. 4. Orchestration using Data Factory via pipelines: Discover the art of orchestrating your data workflows, ensuring smooth and efficient operations. 5. Data Reporting using Power BI: Visualize your data in a compelling and actionable manner, empowering stakeholders with valuable insights. 6. Configuring Alerts using the Data Activator: Stay ahead of potential issues by setting up alerts and notifications within your Power BI visuals using a new tool called Data Activator. 7. End to End Pipeline Testing: The complete flow will be tested right from the data ingestion to the data transformation and until the report gets updated with the incoming new data to Validate the integrity and performance of your pipelines, ensuring reliability and accuracy. This project revolves around Bing News Data Analytics, a practical application that involves ingesting news data daily and generating insightful reports. By walking through each step in a simplified manner, I aim to make Azure Data Engineering accessible to all enthusiasts, regardless of their background. Pre-requisitesYou don't need to have any skills to do this project. Even if you are an absolute beginner, if you follow the entire course, you will be able to implement this project, The only pre-requisite for this project is, you need to two introductory videos of Microsoft Fabric which is included as part of this course in the section 1. All the very best and Happy Learning!!!
Overview
Section 1: Introduction (Pre-requisites)
Lecture 1 Introduction to Microsoft Fabric
Lecture 2 Create and Enable Microsoft Fabric
Section 2: Build an End to End Project using Microsoft Fabric
Lecture 3 Project Overview
Lecture 4 Environment Setup
Lecture 5 Data Ingestion using Data Factory
Lecture 6 Data Transformation using Synapse Data Engineering
Lecture 7 Incremental Load using Spark Notebook
Lecture 8 Sentiment Analysis using Synapse Machine Learning
Lecture 9 Building Reports using Power BI
Lecture 10 Read Me (*Important*)
Lecture 11 Building Pipelines using Data Factory for Orchestration
Lecture 12 Setting up Alerts using Data Activator
Lecture 13 End to End Pipeline Testing
Are new to Azure Data Engineering and want to learn from scratch.,Data enthusiasts looking to gain practical experience in Azure Data Engineering.,Professionals seeking to expand their skills in data ingestion, transformation, and analysis.,Individuals interested in building data analytics platforms using Azure services.

Screenshots

12c5bf76879c7caaacfdbd463e5f1973.jpeg

rapidgator.net:
You must reply in thread to view hidden text.

nitroflare.com:
You must reply in thread to view hidden text.
 
K 0

KatzSec DevOps

Alpha and Omega
Philanthropist
Access
Joined
Jan 17, 2022
Messages
606,514
Reaction score
7,817
Points
83
grants
₲58,329
2 years of service
oaxino salamat sa pag contribute. Next time always upload your files sa
Please, Log in or Register to view URLs content!
para siguradong di ma dedeadlink. Let's keep on sharing to keep our community running for good. This community is built for you and everyone to share freely. Let's invite more contributors para mabalik natin sigla ng Mobilarian at tuloy ang puyatan. :)
 
Top Bottom