12.10.2021, 19:56
Complete PySpark Developer Course
Genre: eLearning | MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 5.34 GB | Duration: 22h 36m
Learn PySpark in-depth with hundreds of Practical examples. Be a complete PySpark Developer.
What you'll learn
Complete Curriculum for a successful PySpark Developer
Complete Flow of Installation of PySpark
Introduction to Spark
Understand SparkSession
Spark RDD Fundamentals, Operations, Persistence. Practical Examples to solve problems.
Spark Cluster Architecture - Execution, YARN, JVM Processes, DAG Scheduler, Task Scheduler
Spark Shared Variables
Spark SQL Architecture, Catalyst Optimizer, Volcano Iterator Model, Tungsten Execution Engine
DataFrame Fundamentals
DataFrame Rows, Columns and DataTypes. Practical examples.
ETL Using DataFrame (Extraction APIs, Transformation APIs, and Loading APIs). Practical Examples.
Optimization and Management - Join Strategies, Driver Conf, Executor Conf etc
HDFS Commands (Will be added shortly)
Python Fundamentals (Will be added shortly)
Description
This is a complete PySpark Developer course for Data Engineers and Data Scientists and others who wants to process Big Data in an effective manner. We will cover below topics and more:
Complete Curriculum for a successful PySpark Developer
Complete Flow of Installation of PySpark
Introduction to Spark (Why Spark was Developed, Spark Features, Spark Components)
Understand SparkSession
Spark RDD Fundamentals
How to Create RDDs
RDD Operations (Transformations & Actions)
Spark Cluster Architecture - Execution, YARN, JVM Processes, DAG Scheduler, Task Scheduler
RDD Persistence
Spark Shared Variables (Broadcast and Accumulators)
Spark SQL Architecture, Catalyst Optimizer, Volcano Iterator Model, Tungsten Execution Engine, Different Benchmarks
Spark Commonly Used Functions - Version, range, createDataFrame, sql, table, SparkContext, conf, read, udf, newSession, stop, catalog etc
DataFrame Built-in functions - new column, encryption, string, regexp, date, null, collection, na, math and statistics, explode, flatten, formatting and json
What is Partition, Repartition and Coalesce
Repartition Vs Coalesce
Extraction - csv file, text file, Parquet File, orc file, json file, avro file, hive, jdbc
DataFrame Fundamentals (What is a DataFrame, DataFrame Sources, DataFrame Features, DataFrame Organization)
DataFrame Rows, Columns and DataTypes. Practical examples.
ETL Using DataFrame (Extraction APIs, Transformation APIs, and Loading APIs). Practical Examples.
Optimization and Management - Join Strategies, Driver Conf, Parallelism Configurations, Executor Conf etc
HDFS Commands (Will be added shortly)
Python Fundamentals (Will be added shortly)
More will be added
Who this course is for:
Any IT professional willing to learn advanced Big Data Technologies like PySpark.
Python Developers who wants to learn Spark.
Data Engineers and Data Scientists.
Homepage
Download from Rapidgator: