HOME > Development > Building Automated Data Extraction Pipelines with Python_1

Building Automated Data Extraction Pipelines with Python_1

  • Development
  • Feb 11, 2025
SynopsisBuilding Automated Data Extraction Pipelines with Python, ava...
Building Automated Data Extraction Pipelines with Python_1  No.1

Building Automated Data Extraction Pipelines with Python, available at $69.99, has an average rating of 3.9, with 40 lectures, based on 5 reviews, and has 1032 subscribers.

You will learn about How to automate data extraction pipelines using Python How to scrape data from e-commerce websites using Python How to use Scrapy to build scalable and efficient web scrapers How to use Requests to make HTTP requests to web servers Scrape data with BeautifuSoup Scrape data with Scrapy Scrape e-commerce Data with Python How to use Beautiful Soup to parse HTML How to install and set up Python libraries for data extraction How to use Python libraries for data extraction Common use cases for automated data extraction The importance of automated data extraction Python 3.x installed on the computer This course is ideal for individuals who are Data analysts and data scientists who want to expand their skills and automate the data collection process. or Business analysts who need to extract data from websites to inform business decisions. or Researchers who need to extract data from a variety of sources for their research projects. or Web developers who want to build web scrapers for their projects. or Digital marketers who want to extract data from social media platforms and other online sources. or Students who want to learn practical skills in data extraction and scraping. or Professionals who want to switch careers to a data-related field. or Anyone who wants to learn how to automate the process of collecting data from the web. It is particularly useful for Data analysts and data scientists who want to expand their skills and automate the data collection process. or Business analysts who need to extract data from websites to inform business decisions. or Researchers who need to extract data from a variety of sources for their research projects. or Web developers who want to build web scrapers for their projects. or Digital marketers who want to extract data from social media platforms and other online sources. or Students who want to learn practical skills in data extraction and scraping. or Professionals who want to switch careers to a data-related field. or Anyone who wants to learn how to automate the process of collecting data from the web.

Enroll now: Building Automated Data Extraction Pipelines with Python

Summary

Title: Building Automated Data Extraction Pipelines with Python

Price: $69.99

Average Rating: 3.9

Number of Lectures: 40

Number of Published Lectures: 40

Number of Curriculum Items: 40

Number of Published Curriculum Objects: 40

Original Price: $39.99

Quality Status: approved

Status: Live

What You Will Learn

  • How to automate data extraction pipelines using Python
  • How to scrape data from e-commerce websites using Python
  • How to use Scrapy to build scalable and efficient web scrapers
  • How to use Requests to make HTTP requests to web servers
  • Scrape data with BeautifuSoup
  • Scrape data with Scrapy
  • Scrape e-commerce Data with Python
  • How to use Beautiful Soup to parse HTML
  • How to install and set up Python libraries for data extraction
  • How to use Python libraries for data extraction
  • Common use cases for automated data extraction
  • The importance of automated data extraction
  • Python 3.x installed on the computer
  • Who Should Attend

  • Data analysts and data scientists who want to expand their skills and automate the data collection process.
  • Business analysts who need to extract data from websites to inform business decisions.
  • Researchers who need to extract data from a variety of sources for their research projects.
  • Web developers who want to build web scrapers for their projects.
  • Digital marketers who want to extract data from social media platforms and other online sources.
  • Students who want to learn practical skills in data extraction and scraping.
  • Professionals who want to switch careers to a data-related field.
  • Anyone who wants to learn how to automate the process of collecting data from the web.
  • Target Audiences

  • Data analysts and data scientists who want to expand their skills and automate the data collection process.
  • Business analysts who need to extract data from websites to inform business decisions.
  • Researchers who need to extract data from a variety of sources for their research projects.
  • Web developers who want to build web scrapers for their projects.
  • Digital marketers who want to extract data from social media platforms and other online sources.
  • Students who want to learn practical skills in data extraction and scraping.
  • Professionals who want to switch careers to a data-related field.
  • Anyone who wants to learn how to automate the process of collecting data from the web.
  • In the age of Big Data, the ability to effectively extract, process, and analyze data from various sources has become increasingly important. This  course will guide you through the process of building automated data extraction pipelines using Python, a powerful and versatile programming language. You will learn how to harness Python’s vast ecosystem of libraries and tools to efficiently extract valuable information from websites, APIs, and other data sources, transforming raw data into actionable insights.

    This  course is designed for data enthusiasts, analysts, engineers, and anyone interested in learning how to build data extraction pipelines using Python. By the end of this course, you will have developed a solid understanding of the fundamental concepts, tools, and best practices involved in building automated data extraction pipelines. You will also gain hands-on experience by working on a real-world project, applying the skills and knowledge acquired throughout the course. We will be using two popular Python Libraries called BeautifulSoup and Scrapy  f to build our  data pipelines.

    Beautiful Soup is a popular Python library for web scraping that helps extract data from HTML and XML documents. It creates parse trees from the page source, allowing you to navigate and search the document’s structure easily.

    Beautiful Soup plays a crucial role in data extraction by simplifying the process of web scraping, offering robust parsing and efficient navigation capabilities, and providing compatibility with other popular Python libraries. Its ease of use, adaptability, and active community make it an indispensable tool for extracting valuable data from websites.

    Scrapy is an open-source web crawling framework for Python, specifically designed for data extraction from websites. It provides a powerful, flexible, and high-performance solution to create and manage web spiders (also known as crawlers or bots) for various data extraction tasks.

    Scrapy plays an essential role in data extraction by offering a comprehensive, high-performance, and flexible web scraping framework. Its robust crawling capabilities, built-in data extraction tools, customizability, and extensibility make it a powerful choice for data extraction tasks ranging from simple one-time extractions to complex, large-scale web scraping projects. Scrapy’s active community and extensive documentation further contribute to its importance in the field of data extraction.

    Course Curriculum

    Chapter 1: Introduction to Automated Data Extraction

    Lecture 1: Introduction

    Lecture 2: Understanding the importance of automated data extraction

    Lecture 3: Identifying use cases for automated data extraction

    Lecture 4: Web Scraping Overview

    Lecture 5: Introduction to Python libraries for data extraction

    Chapter 2: Setting up Your Data Extraction Environment

    Lecture 1: Installing Python on Windows

    Lecture 2: Installing Python on Mac OS

    Lecture 3: Updating Pip

    Lecture 4: Create and activate a virtual environment

    Lecture 5: Install Scrapy

    Lecture 6: Install Beautiful Soup

    Lecture 7: Note on Text Editors

    Lecture 8: Installing Visual Studio Code Text Editor

    Lecture 9: Best practices for data extraction pipelines

    Chapter 3: Building Basic Data Extraction Pipeline using BeautifulSoup

    Lecture 1: What we will extract

    Lecture 2: Writing Python script for basic data extraction – Part 1

    Lecture 3: Writing Python script for basic data extraction -Part 2

    Lecture 4: Prototyping the script – Part 1

    Lecture 5: Prototyping the script – Part 2

    Lecture 6: Prototyping the script – Part 3

    Lecture 7: Prototyping the script – Part 4

    Lecture 8: Prototyping the script – Part 5

    Lecture 9: Extracting data with the script

    Chapter 4: Building Basic Data Extraction Pipeline using Scrapy

    Lecture 1: Creating a Scrapy project

    Lecture 2: Components of a scrapy project

    Lecture 3: Scrapy architecture

    Lecture 4: Creating a spider : Part 1

    Lecture 5: Creating a spider : Part 2

    Lecture 6: Extracting data with scrapy shell : Part 1

    Lecture 7: Extracting data with scrapy shell : Part 2

    Lecture 8: Running the spider to extract data

    Chapter 5: Building Basic Data Extraction Pipeline for e-commerce

    Lecture 1: Create and activate a virtual environment

    Lecture 2: Install Python Packages

    Lecture 3: Creating a Python file

    Lecture 4: Creating Variables

    Lecture 5: Enabling Gmail Security

    Lecture 6: Creating Functions: Part 1

    Lecture 7: Creating Functions: Part 2

    Lecture 8: Creating Functions: Part 3

    Lecture 9: Extracting data with the Python Script

    Instructors

  • Building Automated Data Extraction Pipelines with Python_1  No.2
    Tech Academy
    Real Skills For The Real World
  • Rating Distribution

  • 1 stars: 0 votes
  • 2 stars: 1 votes
  • 3 stars: 1 votes
  • 4 stars: 1 votes
  • 5 stars: 2 votes
  • Frequently Asked Questions

    How long do I have access to the course materials?

    You can view and review the lecture materials indefinitely, like an on-demand channel.

    Can I take my courses with me wherever I go?

    Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!