Udemy

Mining and Analyzing LinkedIn Data

Enroll Now
  • 1,186 Students
  • Updated 4/2023
4.5
(68 Ratings)
CTgoodjobs selects quality courses to enhance professionals' competitiveness. By purchasing courses through links on our site, we may receive an affiliate commission.

Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
6 Hour(s) 20 Minute(s)
Language
English
Taught by
Jones Granatyr, AI Expert Academy
Rating
4.5
(68 Ratings)
1 views

Course Overview

Mining and Analyzing LinkedIn Data

Apply Data Science and Artificial Intelligence techniques to extract and analyze your LinkedIn network

LinkedIn is a social network focused on professional experience in order to generate connections and relationships between professionals from different areas. Professionals can provide profissional skills and search for jobs by connecting with people around the world. For example, if you would like to work with Data Science you can connect with companies and people who work in this field, increasing your chances of getting a job. On the other hand, companies are able to search for candidates according to the curriculum and skills provided by users. In 2017, LinkedIn established itself as the largest business platform and an important strategic tool for both professionals and companies.

It is important that professionals know how to use the data of this social network in their favor. LinkedIn provides some datasets related to your profile, in which it is possible to apply Data Science and Analysis techniques to extract important and interesting insights about our network of connections. We can answer questions like this: What are the main positions of the people who are connected to us? Which companies are sending invitations to our profile? What is the location of our contacts? Is our LinkedIn network made up of people and companies related to our job? Are the companies I want to work for sending invitations to my profile? These and other questions can be answered during this course, so you can analyze if your network is in line with what you want professionally. Below you can see the main topics that will be implemented step by step:


  • Extract data from your LinkedIn profile using the LinkedIn API and .csv files. If you do not have LinkedIn, you will be able to follow the course using the data about my profile

  • Extract and analyze connections between users, invitations and text messages

  • Generate fake data to mask real information

  • Explore and visualize data related to your contacts' companies and job titles

  • Use Levenshtein distance, n-gram similarity and Jaccard distance to measure similarity between strings

  • Cluster contacts based on similarity between positions, as well as generate HTML views to improve data presentation

  • Use location APIs to extract latitude and longitude of contacts to capture the city and country they live

  • View the location of contacts dynamically with Google Earth and the Basemap library

  • Cluster contacts using k-means algorithm

  • Apply natural language processing techniques to analyze your LinkedIn text messages

  • Generate word cloud to view the most frequent terms

  • Extract named entities from your text messages

  • Create a sentiment classifier to extract the polarity from LinkedIn messages

During the course, we will use the Python programming language and Google Colab, so you do not need to spend time installing the stuff on your own machine. You will be able to follow the course with a browser and an Internet connection! This is the best course if this is your first contact with social media data analysis!

Course Content

  • 5 section(s)
  • 53 lecture(s)
  • Section 1 Introduction
  • Section 2 LinkedIn datasets
  • Section 3 Connections between users and invitations
  • Section 4 Messages between users
  • Section 5 Final remarks

What You’ll Learn

  • Extract data from your LinkedIn profile using the LinkedIn API and .csv files
  • Extract and analyze the connections between users, invitations, and text messages
  • Generate fake usernames to mask real information
  • Explore and view data related to your contacts' companies and job titles
  • Use edit Levenshtein distance, n-gram similarity and Jaccard distance to measure similarity between strings
  • Cluster contacts based on similarity between positions, as well as generate HTML views to improve data presentation
  • Use location APIs to extract latitude and longitude of contacts, in order to capture the city and country of lives
  • View the location of contacts dynamically with Google Earth and the Basemap library
  • Cluster contacts using the k-means algorithm
  • Apply natural language processing techniques to analyze your LinkedIn text messages
  • Generate word cloud to view the most frequent terms
  • Extract name entities from text messages
  • Create a sentiment classifier to extract the polarity of the LinkedIn text messages

Reviews

  • J
    Job ten Bosch
    3.0

    In the current Linkedin version, I only see "Sign In with LinkedIn using OpenID Connect" I guess that's the same, but not sure.

  • R
    Rossi Daniele
    5.0

    Really interesting and original project-oriented course either for the theme (valorizing our own LinkedIn data) or for the technique (clustering of profiles, visualization of companies, textual analysis of messages with detection of the language, ...), in addition to be well explained and with an elegant style of coding in Python !

  • R
    Reynold Hagenes
    5.0

    The course is very clear and easy to understand, with course examples that put key concepts into context in a Mining and Analyzing LinkedIn Data. I look forward to learning more.

  • S
    Seth Padberg
    5.0

    Super complete course material with amazing explanations. It's a great experience to learn mining and analyzing LinkedIn data.

Start FollowingSee all

We use cookies to enhance your experience on our website. Please read and confirm your agreement to our Privacy Policy and Terms and Conditions before continue to browse our website.

Read and Agreed