US · projectpro.io

🌟Machine Learning code example - 17: How to preprocess string data within a Pandas DataFrame?


This email was sent

Is this your brand on Milled? Claim it.

Hi,

Thanks for registering with ProjectPro Recipes - get just-in-time learning and release your projects faster with "ready-to-use" Data-Science code snippets. 

Find below a recipe we launched recently - 
How to preprocess string data within a Pandas DataFrame?
Download the code for this recipe and access 1000+ recipes

 

Here you will find solved end-to-end projects with solution code and datasets 

## How to preprocess string data within a Pandas DataFrame
def Kickstarter_Example_74():
    print()
    print(format('How to preprocess string data within a Pandas DataFrame','*^82'))
    import warnings
    warnings.filterwarnings("ignore")

    # load libraries
    import pandas as pd
    # Create a dataframe with a single column of strings
    data = {'stringData': ['Arizona 1 2014-12-23    3242.0',
                           'Iowa 1 2010-02-23       3453.7',
                           'Oregon 0 2014-06-20     2123.0',
                           'Maryland 0 2014-03-14   1123.6',
.
.
View the complete recipe

Get access to solved, end-to-end projects using such recipes - price increases on March 26
Do you get stuck on your Data Science or Big Data projects ? 

Do you have trouble converting theoretical knowledge into real industry projects ?

Get access to Project Statement + Downloadable source code + Video explanation + Datasets

Skip the boring theory. Get practical project results. 

Learn more about solved end-to-end Big Data Projects

Learn more about solved end-to-end Data Science Projects

Get started with access to 120+ solved end-to-end Projects - price increases on March 26
Thanks,
Binny
Co-founder & CEO
https://www.projectpro.io/recipes


Copyright © 2024 ProjectPro, All rights reserved.
Welcome to ProjectPro

Want to change how you receive these emails?
You can update your preferences or unsubscribe from this list.
Are you sure?

Lists help you organize the brands that you care about. Your lists are private to you.