HOME > Development > Data Cleaning Techniques in Data Science Machine Learning

Data Cleaning Techniques in Data Science Machine Learning

  • Development
  • Dec 10, 2024
SynopsisData Cleaning Techniques in Data Science & Machine Learni...
Data Cleaning Techniques in Science Machine Learning  No.1

Data Cleaning Techniques in Data Science & Machine Learning, available at $29.99, has an average rating of 3.67, with 30 lectures, based on 9 reviews, and has 170 subscribers.

You will learn about Professional ways for handling the data Learn Standard visualization techniques like Histograms, Scatterplots etc How to locate discrepancies, and deal with issues This course is ideal for individuals who are Students who want to learn the basics of Data Cleaning It is particularly useful for Students who want to learn the basics of Data Cleaning.

Enroll now: Data Cleaning Techniques in Data Science & Machine Learning

Summary

Title: Data Cleaning Techniques in Data Science & Machine Learning

Price: $29.99

Average Rating: 3.67

Number of Lectures: 30

Number of Published Lectures: 30

Number of Curriculum Items: 30

Number of Published Curriculum Objects: 30

Original Price: $29.99

Quality Status: approved

Status: Live

What You Will Learn

  • Professional ways for handling the data
  • Learn Standard visualization techniques like Histograms, Scatterplots etc
  • How to locate discrepancies, and deal with issues
  • Who Should Attend

  • Students who want to learn the basics of Data Cleaning
  • Target Audiences

  • Students who want to learn the basics of Data Cleaning
  • One of the most essential aspects of Data Science or Machine Learning is Data Cleaning. In order to get the most out of the data, your data must be clean as uncleaned data can make it harder for you to train ML models. In regard to ML & Data Science, data cleaning generally filters & modifies your data making it easier for you to explore, understand and model.

    A good statistician or a researcher must spend at least 90% of his/her time on collecting or cleaning data for developing a hypothesis and remaining 10% on the actual manipulation of the data for analyzing or deriving the results. Despite these facts, data cleaning is not commonly discussed or taught in detail in most of the data science or ML courses. With the rise of big data & ML, now data cleaning has also become equally important.

    Why should you learn Data Cleaning?

  • Improve decision making

  • Improve the efficiency

  • Increase productivity

  • Remove the errors and inconsistencies from the dataset

  • Identifying missing values

  • Remove duplication

  • Why should you take this course?

    Data Cleaning is an essential part of Data Science & AI, and it has become an equally important skill for a programmer. It’s true that you will find hundreds of online tutorials on Data Science and Artificial Intelligence but only a few of them cover data cleaning or just give the basic overview. This online guide for data cleaning includes numerous sections having over 5 hours of video which are enough to teach anyone about all its concepts from the very beginning. Enroll in this course now to learn all the concepts of Data Cleaning.

    This course teaches you everything including the basics of Data Cleaning, Data Reading, merging or splitting datasets, different visualization tools, locate or handling missing/absurd values and hands-on sessions where you’ll be introduced to the dataset for ensuring complete learning of Data Cleaning.

    Enroll in this course now to learn about data cleaning concepts and techniques in detail!

    Course Curriculum

    Chapter 1: Introduction

    Lecture 1: Identifying the task

    Lecture 2: Model building

    Lecture 3: Some common solutions

    Lecture 4: Training and test data

    Lecture 5: Cross validation

    Lecture 6: Feature selection

    Lecture 7: Accuracy measures

    Lecture 8: Overfitting

    Chapter 2: Playing with the Data

    Lecture 1: Reading the data

    Lecture 2: Structure of the data

    Lecture 3: Merging/Splitting

    Lecture 4: Integrity check

    Lecture 5: Knowing the domain

    Lecture 6: Range of variables

    Lecture 7: Inquiring dependencies

    Chapter 3: Variables and Correlations

    Lecture 1: Type of variables

    Lecture 2: More variable types

    Lecture 3: Single variable plots

    Lecture 4: Plotting interrelations

    Lecture 5: Measuring correlations

    Lecture 6: Need for transformation

    Lecture 7: Discretizing features

    Chapter 4: Missing Values and Outliers

    Lecture 1: Absurd or Missing values

    Lecture 2: Finding their distribution in the dataset

    Lecture 3: Deciding what to do with them

    Lecture 4: Looking for outliers

    Chapter 5: Exercises

    Lecture 1: Exercise-1

    Lecture 2: Exercise-2

    Lecture 3: Exercise-3

    Lecture 4: Exercise-4

    Instructors

  • Data Cleaning Techniques in Science Machine Learning  No.2
    Eduonix Learning Solutions
    1+ Million Students Worldwide | 200+ Courses
  • Rating Distribution

  • 1 stars: 0 votes
  • 2 stars: 2 votes
  • 3 stars: 2 votes
  • 4 stars: 3 votes
  • 5 stars: 2 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!