Master Databricks and Apache Spark Step by Step - PySpark Using RDDs
Offered By: Bryan Cafferky via YouTube
Course Description
Overview
Explore PySpark data analysis using Resilient Distributed Datasets (RDDs) in this informative video lesson. Learn about the foundational concept of RDDs in Spark, understand Lazy Evaluation and its importance, and master the use of Transformations and Actions. Follow along with practical demonstrations in a Databricks notebook, covering topics such as lambda functions, parallelization, and various RDD operations like flatmap, distinct, and filter. Access accompanying slides, code samples, and additional resources to deepen your understanding of Apache Spark's RDD programming guide and file management in Databricks.
Syllabus
Introduction
RDDs
Lazy Evaluation
Transformations
Actions
Demo
lambda function
linelengths
parallelize
transfunc
flatmap
Distinct
Filter
Recap
Taught by
Bryan Cafferky
Related Courses
CS115x: Advanced Apache Spark for Data Science and Data EngineeringUniversity of California, Berkeley via edX Big Data Analytics
University of Adelaide via edX Big Data Essentials: HDFS, MapReduce and Spark RDD
Yandex via Coursera Big Data Analysis: Hive, Spark SQL, DataFrames and GraphFrames
Yandex via Coursera Introduction to Apache Spark and AWS
University of London International Programmes via Coursera