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Data science ,Analytics AI Real world Project using Python

  • Development
  • Dec 21, 2024
SynopsisData science ,Analytics & AI Real world Project using Pyt...
Data science ,Analytics AI Real world Project using Python  No.1

Data science ,Analytics & AI Real world Project using Python, available at $59.99, has an average rating of 4.8, with 46 lectures, based on 5 reviews, and has 1175 subscribers.

You will learn about Go from zero to hero in Entire Pipeline of AI/Data Science/Machine learning from Data Collection to building a Machine Learning Model Various Feature Engineering Techniques & how to apply it in Real-World How to Approach a problem in Real-world.. Solve any problem in your business, job or in real-time with powerful Data Sceince & Machine Learning algorithms Case studies This course is ideal for individuals who are Data Scientists who want to apply their knowledge on Real World Case Studies It is particularly useful for Data Scientists who want to apply their knowledge on Real World Case Studies.

Enroll now: Data science ,Analytics & AI Real world Project using Python

Summary

Title: Data science ,Analytics & AI Real world Project using Python

Price: $59.99

Average Rating: 4.8

Number of Lectures: 46

Number of Published Lectures: 45

Number of Curriculum Items: 46

Number of Published Curriculum Objects: 45

Original Price: ?799

Quality Status: approved

Status: Live

What You Will Learn

  • Go from zero to hero in Entire Pipeline of AI/Data Science/Machine learning from Data Collection to building a Machine Learning Model
  • Various Feature Engineering Techniques & how to apply it in Real-World
  • How to Approach a problem in Real-world..
  • Solve any problem in your business, job or in real-time with powerful Data Sceince & Machine Learning algorithms
  • Case studies
  • Who Should Attend

  • Data Scientists who want to apply their knowledge on Real World Case Studies
  • Target Audiences

  • Data Scientists who want to apply their knowledge on Real World Case Studies
  • This is the first course that gives hands-onData Science, Analytics & AIReal world Projects using Python..

    This is a practical course, the course I wish I had when I first started learning Data Science.

    It focuses on understanding all the basic theory and programming skills required as a Data Scientist, but the best part is that it has Practical Case Studies covering so many common business problems faced by Data Scientists in the real world.

    This course will cover the following topics:-

  • All basic stuffs of Python

  • Loops and conditionals

  • Functions

  • Working with Text data using Regular expressions

  • Numpy ,seaborn, matplotlib ,plotly and pandas library

  • Some Other fancy libraries like- fuzzywuzzy

  • Along with python programming, this course will cover other data analytics concepts such as

  • Data Visualization

  • Data cleaning

  • Query Analysis

  • Data Exploration

  • Statistics and Probability concepts

  • Feature Engineering

  • Featurization

  • Natural Language Processing

  • Machine Learning

  • Model Hypertuning

  • “Data Scientist has become the top job in the US for the last 4 years running!” according to Harvard Business Review & Glassdoor.

    This course seeks to fill all those gaps in knowledge that scare off beginners and simultaneously apply your knowledge of Data Science , Machine Learning  , Data analysis  ,, Natural Language Processing to real-world business problems.

    Who this course is for:

  • Beginners of Data Science

  • Data Analysts / Business Analysts who wish to do more with their data

  • College graduates who lack real world experience

  • Software Developers or Engineers who’d like to start learning Data Science

  • Anyone looking to become more employable as a Data Scientist

  • Anyone with an interest in using Data to Solve Real World Problems

  • Course Curriculum

    Chapter 1: Welcome to this course !

    Lecture 1: Introduction to course & its benefits

    Lecture 2: Utilize QnA Section , (Golden Opportunity )

    Lecture 3: How to follow this course – must watch !

    Lecture 4: Introduction to Jupyter Notebook

    Chapter 2: Understanding the business problem

    Lecture 1: Datasets & Resources

    Chapter 3: Data Analysis & Basic stats

    Lecture 1: Perform Basic Stats on Data..

    Lecture 2: Lets Understand more about data !

    Lecture 3: Checking for Duplicates questions in our data !

    Lecture 4: Finding occurrences of each question..

    Lecture 5: Lets perform Text Analysis..

    Lecture 6: Lets perform Semantic Analysis..

    Chapter 4: Feature Extraction for Data Science

    Lecture 1: find frequency of questions-ID

    Lecture 2: Finding Length of questions

    Lecture 3: How to Find common words in 2 strings..

    Lecture 4: How to Find Total Words in 2 strings..

    Lecture 5: Lets Create some features using basic featurization..

    Lecture 6: Analysing distribution of data ( Basic EDA)

    Lecture 7: Finding Boxplot & Violinplot of data ( Basic EDA)

    Chapter 5: Data Pre-preocessing For Data Science/ML

    Lecture 1: How to Overcome with the contractions of data !

    Lecture 2: How to remove special characters from data

    Lecture 3: Lets Remove Extra White-spaces in data..

    Chapter 6: String matching in ML/NLP

    Lecture 1: String Matching using fuzz ratio

    Lecture 2: String Matching using fuzz Partial ratio

    Lecture 3: String Matching using Token Sort ratio

    Lecture 4: String Matching using Token set ratio.

    Lecture 5: String Matching using Longest sub-string..

    Chapter 7: Advance Feature Engineering in Data Science/NLP/ML

    Lecture 1: Create some set of features like : [ first_word , last_word & length_diff ]

    Lecture 2: What are stopwords & how to remove it from data. ?

    Lecture 3: Finding common_word_count_min & common_word_count_max

    Lecture 4: Lecture 25

    Lecture 5: Lecture 26

    Lecture 6: Lecture 27

    Chapter 8: Advance Data Analysis

    Lecture 1: Lecture 28

    Lecture 2: Lecture 29

    Lecture 3: Lecture 30

    Chapter 9: NLP (Natural Language Processing )

    Lecture 1: Lecture 31

    Lecture 2: Lecture 32

    Lecture 3: Lecture 33

    Lecture 4: Lecture 34

    Lecture 5: Lecture 35

    Chapter 10: Machine Learning

    Lecture 1: Lecture 36

    Chapter 11: Hypertuning of Machine Learning Model

    Lecture 1: Lecture 37

    Lecture 2: Lecture 38

    Lecture 3: Lecture 39

    Chapter 12: Bonus lesson

    Lecture 1: Bonus lecture

    Instructors

  • Data science ,Analytics AI Real world Project using Python  No.2
    Shan Singh
    Top Rated & Best-Selling Udemy Instructor , Data Scientist
  • Rating Distribution

  • 1 stars: 0 votes
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  • 3 stars: 0 votes
  • 4 stars: 1 votes
  • 5 stars: 4 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!