Which Installer is Better? Pip or Easy Install

Which Installer is Better? Pip or Easy Install

In this tutorial, we discuss the differences between Pip or Easy_Install and which application is better suited to your needs.

One of the most significant advantages of Python is how easy it is to reuse existing code. 

  • Need to talk to servers? Just import requests
  • Need to talk to a MySQL database? Import the mysql.connector software! 
  • Need to fly? Just import antigravity

Of course, these packages need to exist somewhere in your server, and installing them can be problematic without the right tools. Fortunately, that is a problem the Python developers have invested significant time investigating and correcting.


The solution to this problem first arrived in 2004 in the form of a suite of tools called setuptools. It is a collection of Python enhancements that make it easy to package and disseminate Python distributions, especially those that depend on other packages. The original format used by setuptools was an “_egg_”; This is a ZIP file with additional information added to help the system locate and sort it out correctly. 

To manage these packages, setuptools includes easy_install, which can automatically download, build, install, and manage Python eggs.


Sadly, Python eggs have several disadvantages: 

  • Only a single version of a package can be installed in a given directory. This is especially troublesome if different parts of your application require different versions of the same package. 
  • It provides no support for clean uninstallation or upgrades. Removing files is the most common method, but it can get messy if any listed files are missing. Mainly, the issue lies in that the .egg_info files do not have a way to list the installed files that document the package metadata. 
  • Using an egg often requires modifying the sys.path variable to add the location of this egg. This modification, in turn, slows down the search whenever a command is issued. It is only noticeable when you have many entries (a hundred or so), which, while improbable, is certainly possible in complicated setups.


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In this tutorial, you’re going to learn a variety of Python tricks that you can use to write your Python code in a more readable and efficient way like a pro.

How to Remove all Duplicate Files on your Drive via Python

Today you're going to learn how to use Python programming in a way that can ultimately save a lot of space on your drive by removing all the duplicates. We gonna use Python OS remove( ) method to remove the duplicates on our drive. Well, that's simple you just call remove ( ) with a parameter of the name of the file you wanna remove done.

Basic Data Types in Python | Python Web Development For Beginners

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How To Compare Tesla and Ford Company By Using Magic Methods in Python

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The OS module is a python module that provides the interface for interacting with the underlying operating system that Python is running.