Published 5/2023
Created by No Latency
MP4 | Video: h264, 1280×720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English | Duration: 72 Lectures ( 5h 36m ) | Size: 2.3 GB
Build Scalable Batch and Real Time Data Processing Pipelines with PySpark and Dataproc
Free Download What you’ll learn
Understand the fundamentals of Apache Spark3, including the architecture and components
Develop and Deploy PySpark Jobs to Dataproc on GCP including setting up a cluster and managing resources
Gain practical experience in using Spark3 for advanced batch data processing , Machine learning and Real Time analytics
Best practices for optimizing Spark3 performance on GCP including Autoscaling , fine tuning and integration with other GCP Components
Requirements
Prior experience in writing basic coding in Python & Sql
Basic background on programming and Big Data
Description
Are you looking to dive into big data processing and analytics with Apache Spark and Google Cloud? This course is designed to help you master PySpark 3.3 and leverage its full potential to process large volumes of data in a distributed environment. You’ll learn how to build efficient, scalable, and fault-tolerant data processing jobs by learn how to applyDataframe transformations with the Dataframe APIs , SparkSQL Deployment of Spark Jobs as done in real world scenarios Integrating spark jobs with other components on GCP Implementing real time machine learning use-cases by building a product recommendation system.This course is intended for data engineers, data analysts, data scientists, and anyone interested in big data processing with Apache Spark and Google Cloud. It is also suitable for students and professionals who want to enhance their skills in big data processing and analytics using PySpark and Google Cloud technologies.Why take this course?In this course, you’ll gain hands-on experience in designing, building, and deploying big data processing pipelines using PySpark on Google Cloud. You’ll learn how to process large data sets in parallel in the most practical way without having to install or run anything on your local computer .By the end of this course, you’ll have the skills and confidence to tackle real-world big data processing problems and deliver high-quality solutions using PySpark and other Google Cloud technologies.Whether you’re a data engineer, data analyst, or aspiring data scientist, this comprehensive course will equip you with the skills and knowledge to process massive amounts of data using PySpark and Google Cloud.Plus, with a final section dedicated to interview questions and tips, you’ll be well-prepared to ace your next data engineering or big data interview.
Who this course is for
Data engineers or data analysts who want to learn how to use Spark3 on the Google Cloud Platform (GCP) for large-scale data processing and analysis
Software developers who want to integrate Spark3 into their applications or workflows running on GCP
Data scientists who want to leverage Spark3’s machine learning capabilities on GCP for building and deploying predictive models
Anyone who wants to get started with their cloud journey with Spark 3
Homepage
www.udemy.com/course/spark-3-on-google-cloud-platform-beginner-to-advanced-level/
mkbqe.S.3.o.G.C.P.t.A.L.part2.rar.html
mkbqe.S.3.o.G.C.P.t.A.L.part3.rar.html
mkbqe.S.3.o.G.C.P.t.A.L.part1.rar.html
Uploadgig
mkbqe.S.3.o.G.C.P.t.A.L.part3.rar
mkbqe.S.3.o.G.C.P.t.A.L.part1.rar
mkbqe.S.3.o.G.C.P.t.A.L.part2.rar
NitroFlare
mkbqe.S.3.o.G.C.P.t.A.L.part2.rar
mkbqe.S.3.o.G.C.P.t.A.L.part3.rar
mkbqe.S.3.o.G.C.P.t.A.L.part1.rar
Leave a Reply
You must be logged in to post a comment.