Mastering Databricks & Apache spark -Build ETL data pipeline

Udemy Mastering Databricks & Apache spark -Build ETL data pipeline

Register & Get access to index
6usH9oM.jpg


Learn fundamental concept about databricks and process big data by building your first data pipeline on Azure

What you'll learn​

  • Databricks
  • Build your first data pipeline to process CSV, JSON, XML
  • Orchestrate data pipeline on Azure data factory
  • Spin up spark cluster
  • Delta tables
  • Concept of time travel and vacuum on delta tables
  • Apache Spark SQL
  • Filtering Dataframe
  • Renaming, drop, Select, Cast
  • Aggregation operations SUM, AVERAGE, MAX, MIN
  • Rank, Row Number, Dense Rank
  • Building dashboards
  • Build Complete project
  • Build End to End data pipeline

Requirements​

  • There are no pre requisites with this course


Description​

Welcome to the course on Mastering Databricks & Apache spark -Build ETL data pipeline
Databricks
combines the best of data warehouses and data lakes into a lakehouse architecture. In this course we will be learning how to perform various operations in Scala, Python and Spark SQL. This will help every student in building solutions which will create value and mindset to build batch process in any of the language. This course will help in writing same commands in different language and based on your client needs we can adopt and deliver world class solution. We will be building end to end solution in azure databricks.

Key Learning Points
  • We will be building our own cluster which will process our data and with one click operation we will load different sources data to Azure SQL and Delta tables
  • After that we will be leveraging databricks notebook to prepare dashboard to answer business questions
  • Based on the needs we will be deploying infrastructure on Azure cloud
  • These scenarios will give student 360 degree exposure on cloud platform and how to step up various resources
  • All activities are performed in Azure Databricks
Fundamentals
  • Databricks
  • Delta tables
  • Concept of versions and vacuum on delta tables
  • Apache Spark SQL
  • Filtering Dataframe
  • Renaming, drop, Select, Cast
  • Aggregation operations SUM, AVERAGE, MAX, MIN
  • Rank, Row Number, Dense Rank
  • Building dashboards
  • Analytics
This course is suitable for Data engineers, BI architect, Data Analyst, ETL developer, BI Manager

Who this course is for:​

  • Data engineer
  • People who are interested in build End to End ETL data pipeline
  • Learn fundamentals commands in Python, Apache Spark SQL, Scala
Author
TUTProfessor
Downloads
85
Views
1,040
First release
Last update
Rating
0.00 star(s) 0 ratings

More resources from TUTProfessor