Udemy
  •  
  •  
  •  
  •  
  •  
  •  
  •  
  •  
  •  
  •  
  •  
  •  
  •  
Development
Web Development Data Science Mobile Development Programming Languages Game Development Database Design & Development Software Testing Software Engineering Development Tools No-Code Development
Business
Entrepreneurship Communications Management Sales Business Strategy Operations Project Management Business Law Business Analytics & Intelligence Human Resources Industry E-Commerce Media Real Estate Other Business
Finance & Accounting
Accounting & Bookkeeping Compliance Cryptocurrency & Blockchain Economics Finance Finance Cert & Exam Prep Financial Modeling & Analysis Investing & Trading Money Management Tools Taxes Other Finance & Accounting
IT & Software
IT Certification Network & Security Hardware Operating Systems Other IT & Software
Office Productivity
Microsoft Apple Google SAP Oracle Other Office Productivity
Personal Development
Personal Transformation Personal Productivity Leadership Career Development Parenting & Relationships Happiness Esoteric Practices Religion & Spirituality Personal Brand Building Creativity Influence Self Esteem & Confidence Stress Management Memory & Study Skills Motivation Other Personal Development
Design
Web Design Graphic Design & Illustration Design Tools User Experience Design Game Design Design Thinking 3D & Animation Fashion Design Architectural Design Interior Design Other Design
Marketing
Digital Marketing Search Engine Optimization Social Media Marketing Branding Marketing Fundamentals Marketing Analytics & Automation Public Relations Advertising Video & Mobile Marketing Content Marketing Growth Hacking Affiliate Marketing Product Marketing Other Marketing
Lifestyle
Arts & Crafts Beauty & Makeup Esoteric Practices Food & Beverage Gaming Home Improvement Pet Care & Training Travel Other Lifestyle
Photography & Video
Digital Photography Photography Portrait Photography Photography Tools Commercial Photography Video Design Other Photography & Video
Health & Fitness
Fitness General Health Sports Nutrition Yoga Mental Health Dieting Self Defense Safety & First Aid Dance Meditation Other Health & Fitness
Music
Instruments Music Production Music Fundamentals Vocal Music Techniques Music Software Other Music
Teaching & Academics
Engineering Humanities Math Science Online Education Social Science Language Teacher Training Test Prep Other Teaching & Academics
AWS Certification Microsoft Certification AWS Certified Solutions Architect - Associate AWS Certified Cloud Practitioner CompTIA A+ Cisco CCNA Amazon AWS AWS Certified Developer - Associate CompTIA Security+
Photoshop Graphic Design Adobe Illustrator Drawing Digital Painting InDesign Character Design Canva Figure Drawing
Life Coach Training Neuro-Linguistic Programming Mindfulness Personal Development Personal Transformation Meditation Life Purpose Coaching Neuroscience
Web Development JavaScript React CSS Angular PHP WordPress Node.Js Python
Google Flutter Android Development iOS Development Swift React Native Dart Programming Language Mobile Development Kotlin SwiftUI
Digital Marketing Google Ads (Adwords) Social Media Marketing Google Ads (AdWords) Certification Marketing Strategy Internet Marketing YouTube Marketing Email Marketing Retargeting
SQL Microsoft Power BI Tableau Business Analysis Business Intelligence MySQL Data Analysis Data Modeling Big Data
Business Fundamentals Entrepreneurship Fundamentals Business Strategy Online Business Business Plan Startup Freelancing Blogging Home Business
Unity Game Development Fundamentals Unreal Engine C# 3D Game Development C++ 2D Game Development Unreal Engine Blueprints Blender
30-Day Money-Back Guarantee

This course includes:

  • 6 hours on-demand video
  • 1 article
  • 1 downloadable resource
  • Full lifetime access
  • Access on mobile and TV
Business Business Analytics & Intelligence Data Visualization

Complete Data Wrangling & Data Visualisation With Python

Learn to Preprocess, Wrangle and Visualise Data For Practical Data Science Applications in Python
Rating: 4.5 out of 54.5 (417 ratings)
12,694 students
Created by Minerva Singh
Last updated 11/2020
English
English [Auto], German [Auto], 
30-Day Money-Back Guarantee

What you'll learn

  • Install and Get Started With the Python Data Science Environment- Jupyter/iPython
  • Read In Data Into The Jupiter/iPython Environment From Different Sources
  • Carry Out Basic Data Pre-processing & Wrangling In the Jupyter Environment
  • Learn to IDENTIFY Which Visualisations Should be Used in ANY given Situation
  • Go From A Basic Level To Performing Some Of The MOST COMMON Data Preprocessing, Data Wrangling & Data Visualization Tasks In Jupyter
  • How To Use Some Of The MOST IMPORTANT Data Wrangling & Visualisation Packages Such As Matplotlib
  • Build POWERFUL Visualisations and Graphs from REAL DATA
  • Apply Data Visualization Concepts For PRACTICAL Data Analysis & Interpretation
  • Gain PROFICIENCY In Data Preprocessing, Data Wrangling & Data Visualisation In Jupyter By Putting Your Soon-To-Be-Acquired Knowledge Into IMMEDIATE Application
Curated for the Udemy for Business collection

Requirements

  • The Ability To Install the Anaconda Environment On Your Computer/Laptop
  • Know how to install and load packages in Anaconda
  • Interest in Learning to Process and Visualise Real Data

Description

Hello, My name is Minerva Singh and I am an Oxford University MPhil (Geography and Environment) graduate. I recently finished a PhD at Cambridge University (Tropical Ecology and Conservation).


I have several years of experience in analyzing real life data from different sources using statistical modeling and producing publications for international peer reviewed journals. If you find statistics books & manuals too vague, expensive & not practical, then you’re going to love this course!

I created this course to take you by hand and teach you all the concepts, and tackle the most fundamental building block on practical data science- data wrangling and visualisation.

 

GET ACCESS TO A COURSE THAT IS JAM PACKED WITH TONS OF APPLICABLE INFORMATION!


This course is your sure-fire way of acquiring the knowledge and statistical data analysis wrangling and visualisation skills that I acquired from the rigorous training I received at 2 of the best universities in the world, perusal of numerous books and publishing statistically rich papers in renowned international journal like PLOS One.

To be more specific, here’s what the course will do for you:


  (a) It will take you (even if you have no prior statistical modelling/analysis background) from a basic level to performing some of the most common data wrangling tasks in Python.


  (b) It will equip you to use some of the most important Python data wrangling and visualisation packages such as seaborn.


  (c) It will Introduce some of the most important data visualisation concepts to you in a practical manner such that you can apply these concepts for practical data analysis and interpretation.

 

  (d) You will also be able to decide which wrangling and visualisation techniques are best suited to answer your research questions and applicable to your data and interpret the results.

 

The course will mostly focus on helping you implement different techniques on real-life data such as Olympic and Nobel Prize winners


After each video you will learn a new concept or technique which you may apply to your own projects immediately! Reinforce your knowledge through practical quizzes and assignments.

 

TAKE ACTION NOW :) You’ll also have my continuous support when you take this course just to make sure you’re successful with it.  If my GUARANTEE is not enough for you, you can ask for a refund within 30 days of your purchase in case you’re not completely satisfied with the course.

TAKE ACTION TODAY! I will personally support you and ensure your experience with this course is a success.

Who this course is for:

  • Students Interested In Getting Started With Data Science Applications In The Jupyter Environment
  • Students Interested in Learning About the Common Pre-processing Data Tasks
  • Students Interested in Gaining Exposure to Common Python Packages Such As pandas
  • Those Interested in Learning About Different Kinds of Data Visualisations
  • Those Interested in Learning to Create Publication Quality Visualisations

Course content

9 sections • 52 lectures • 6h 12m total length

  • Preview02:01
  • Data & Script For the Course
    00:07
  • Python Data Science Environment
    Preview10:57
  • Preview04:05
  • Introduction to IPython/Jupyter
    19:13
  • ipython in Browser
    03:26

  • What are Pandas?
    12:06
  • Read CSV Data
    05:42
  • Read Excel Data
    05:31
  • Read in HTML Data
    12:06

  • Remove NA Values
    10:28
  • Missing Values in a Real Dataset
    06:04
  • Data Imputation
    09:07
  • Imputing Qualitative Values
    03:27
  • Use k-NN for Data Imputation
    06:23

  • Basic Principles
    04:20
  • Preliminary Data Explorations
    08:17
  • Basic Data Handling With Conditional Statements
    05:24
  • Drop Column/Row
    04:42
  • Change Column Name
    03:35
  • Change the Column Type
    03:50
  • Explore Date Related Data
    04:02
  • Simple Date Related Computations
    03:46

  • Data Grouping
    09:47
  • Data Subsetting and Indexing
    09:44
  • More Data Subsetting
    08:54
  • Extract Information From Strings
    04:40
  • (Fuzzy) String Matching
    02:39
  • Ranking & Sorting
    08:03
  • Concatenate
    08:16
  • Merging and Joining
    10:47

  • Correlation Analysis
    08:26
  • Using Correlation to Decide Which Features to Retain
    05:00
  • Univariate Feature Selection
    04:56
  • Recursive Feature Elimination (RFE)
    04:26
  • Theory Behind PCA
    02:37
  • Implement PCA
    03:53
  • Data Standardisation
    04:10
  • Create a New Feature
    06:16

  • What is Data Visualisation?
    09:33
  • Some Theoretical Principles Behind Data Visualisation
    06:46

  • Histograms-Visualize the Distribution of Continuous Numerical Variables
    12:13
  • Boxplots-Visualize the Distribution of Continuous Numerical Variables
    05:54
  • Scatter plot-Relationship Between Two Numerical Variables
    11:57
  • Barplot
    22:25
  • Pie Chart
    05:29
  • Line Charts
    12:31
  • More Line Charts
    02:32
  • Some More Plot Types
    11:14
  • And Some More
    08:40

  • Using Colabs as an Online Jupyter Notebook
    07:13
  • Github
    05:16

Instructor

Minerva Singh
Bestselling Udemy Instructor & Data Scientist(Cambridge Uni)
Minerva Singh
  • 4.3 Instructor Rating
  • 12,587 Reviews
  • 68,823 Students
  • 39 Courses

Hello. I am a PhD graduate from Cambridge University where I specialized in Tropical Ecology. I am also a Data Scientist on the side. As a part of my research I have to carry out extensive data analysis, including spatial data analysis.or this purpose I prefer to use a combination of freeware tools- R, QGIS and Python.I do  most of my spatial data analysis work using R and QGIS.  Apart from being free, these are very powerful tools for data visualization, processing and analysis. I also hold an MPhil degree in Geography and Environment from Oxford University. I have honed my statistical and data analysis skills through a number of MOOCs including The Analytics Edge (R based statistics and machine learning course offered by EdX), Statistical Learning (R based Machine Learning course offered by Standford online). In addition to spatial data analysis, I am also proficient in statistical analysis, machine learning and data mining. I also enjoy general programming, data visualization and web development. In addition to being a  scientist and number cruncher, I am an avid traveler

  • Udemy for Business
  • Teach on Udemy
  • Get the app
  • About us
  • Contact us
  • Careers
  • Blog
  • Help and Support
  • Affiliate
  • Terms
  • Privacy policy
  • Cookie settings
  • Sitemap
  • Featured courses
Udemy
© 2021 Udemy, Inc.