Free download » Free download video courses » IT and Programming » Learning Apache Spark – Master Spark for Big Data Processing
  |   view 👀:50   |   🙍   |   redaktor: Baturi   |   Rating👍:

Learning Apache Spark – Master Spark for Big Data Processing

Learning Apache Spark – Master Spark for Big Data Processing
Free Download Learning Apache Spark – Master Spark for Big Data Processing
Published 10/2024
Created by VCloudMate Solutions
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English | Duration: 88 Lectures ( 7h 11m ) | Size: 2.8 GB


Embark on a comprehensive journey to master Apache Spark from data manipulation to machine learning!
What you'll learn
Understand the fundamentals of Spark's architecture and its distributed computing capabilities
Learn to write and optimize Spark SQL queries for efficient data processing
Master the creation and manipulation of DataFrames, a core component of Spark
Learn to read data from different file formats such as CSV and Parquet
Develop skills in filtering, sorting, and aggregating data to extract meaningful insights
Learn to process and analyze streaming data for real-time insights
Explore the capabilities of Spark's MLlib for machine learning
Learn to create and fine-tune models using pipelines and transformers for predictive analytics
Requirements
You should know how to write and run Python code
Basic understanding of Python syntax and concepts is necessary
Understanding SQL (Structured Query Language) is important
You should know how to create and manage tables, transform data, and run queries
Description
Unlock the power of big data with Apache Spark!In this course, you'll learn how to use Apache Spark with Python to work with data.We'll start with the basics and move up to advanced projects and machine learning.Whether you're just starting or already know some Python, this course will teach you step-by-step how to process and analyze big data.What You'll Learn:Use PySpark's DataFrame: Learn to organize and work with data.Store Data Efficiently: Use formats like Parquet to store data quickly.Use SQL in PySpark: Work with data using SQL, just like with DataFrames.Connect PySpark with Python Tools: Dig deeper into data with Python's data tools.Machine Learning with PySpark's MLlib: Work on big projects using machine learning.Real-World Examples: Learn by doing with practical examples.Handle Large Data Sets: Understand how to manage big data easily.Solve Real-World Problems: Apply Spark to real-life data challenges.Build Confidence in PySpark: Get better at big data processing.Manage and Analyze dаta: Gain skills for both work and personal projects.Prepare for Data Jobs: Build skills for jobs in tech, finance, and healthcare.By the end of this course, you'll have a solid foundation in Spark, ready to tackle real-world data challenges.
Who this course is for
IT professionals interested in big data and analytics
Aspiring Data Scientists
Aspiring Data Analysts
Aspiring Machine Learning Engineers
Business Analysts
Software Engineers
Students and Academics
Researchers
Anyone Interested in Big Data
Homepage
https://www.udemy.com/course/learning-apache-spark-master-spark-for-big-data-processing/










Learning Apache Spark – Master Spark for Big Data Processing Torrent Download , Learning Apache Spark – Master Spark for Big Data Processing Watch Free Online , Learning Apache Spark – Master Spark for Big Data Processing Download Online

In today's era of digital learning, access to high-quality educational resources has become more accessible than ever, with a plethora of platforms offering free download video courses in various disciplines. One of the most sought-after categories among learners is the skillshar free video editing course, which provides aspiring creators with the tools and techniques needed to master the art of video production. These courses cover everything from basic editing principles to advanced techniques, empowering individuals to unleash their creativity and produce professional-quality content.

Comments (0)

Information
Users of Guests are not allowed to comment this publication.