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Data Science Statistics A-Z - Python_1

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  • Jan 20, 2025
SynopsisData Science Statistics A-Z : Python, available at $44.99, ha...
Data Science Statistics A-Z - Python_1  No.1

Data Science Statistics A-Z : Python, available at $44.99, has an average rating of 4.45, with 103 lectures, based on 52 reviews, and has 277 subscribers.

You will learn about Master Data Science on Python Learn to use Numpy and Pandas for Data Analysis Learn All the Mathematics Required to understand Machine Learning Algorithms Real World Case Studies Learn to use MatplotLib for Python Plotting Learn to use Seaborn for Statistical Plots Learning End to End Data Science Solutions Learn All Statistical concepts To Make You Ninza in Machine Learning 2 Real time time project with detailed explaination This course is ideal for individuals who are This course is meant for anyone who wants to become a Data Scientist It is particularly useful for This course is meant for anyone who wants to become a Data Scientist.

Enroll now: Data Science Statistics A-Z : Python

Summary

Title: Data Science Statistics A-Z : Python

Price: $44.99

Average Rating: 4.45

Number of Lectures: 103

Number of Published Lectures: 103

Number of Curriculum Items: 103

Number of Published Curriculum Objects: 103

Original Price: $199.99

Quality Status: approved

Status: Live

What You Will Learn

  • Master Data Science on Python
  • Learn to use Numpy and Pandas for Data Analysis
  • Learn All the Mathematics Required to understand Machine Learning Algorithms
  • Real World Case Studies
  • Learn to use MatplotLib for Python Plotting
  • Learn to use Seaborn for Statistical Plots
  • Learning End to End Data Science Solutions
  • Learn All Statistical concepts To Make You Ninza in Machine Learning
  • 2 Real time time project with detailed explaination
  • Who Should Attend

  • This course is meant for anyone who wants to become a Data Scientist
  • Target Audiences

  • This course is meant for anyone who wants to become a Data Scientist
  • Want to become a good Data Scientist?? Then this is a right course for you.

    This course has been designed by IIT professionals who have mastered in Mathematics and Data Science.? We will be covering complex theory,?algorithms and coding libraries in a very simple way which can be easily grasped by any beginner as well.

    We will walk you step-by-step into the World of Data science. With every tutorial you will develop new skills and improve your understanding of this challenging yet lucrative sub-field of Data Science from beginner to advance level.

    This course is a part of “Machine Learning A-Z : Become Kaggle Master”, so if you have already taken that course, you need not buy this course. This course includes 2 Project related to Data science.

    We have covered following topics in detail in this course:

    1. Python Fundamentals

    2. Numpy

    3. Pandas

    4. Some Fun with Maths

    5. Inferential Statistics

    6. Hypothesis Testing

    7. Data Visualisation

    8. EDA

    9. Simple Linear Regression

    10. Project1

    11. Project2

    Course Curriculum

    Chapter 1: Python Fundamentals

    Lecture 1: Installation of Python and Anaconda

    Lecture 2: Python Introduction

    Lecture 3: Variables in Python

    Lecture 4: Numeric Operations in Python

    Lecture 5: Logical Operations

    Lecture 6: If else Loop

    Lecture 7: for while Loop

    Lecture 8: Functions

    Lecture 9: String Part1

    Lecture 10: String Part2

    Lecture 11: List Part1

    Lecture 12: List Part2

    Lecture 13: List Part3

    Lecture 14: List Part4

    Lecture 15: Tuples

    Lecture 16: Sets

    Lecture 17: Dictionaries

    Lecture 18: Comprehentions

    Chapter 2: Numpy

    Lecture 1: Introduction

    Lecture 2: Numpy Operations Part1

    Lecture 3: Numpy Operations Part2

    Chapter 3: Pandas

    Lecture 1: Introduction

    Lecture 2: Series

    Lecture 3: DataFrame

    Lecture 4: Operations Part1

    Lecture 5: Operations Part2

    Lecture 6: Indexes

    Lecture 7: loc and iloc

    Lecture 8: Reading CSV

    Lecture 9: Merging Part1

    Lecture 10: groupby

    Lecture 11: Merging Part2

    Lecture 12: Pivot Table

    Chapter 4: Some Fun With Maths

    Lecture 1: Linear Algebra : Vectors

    Lecture 2: Linear Algebra : Matrix Part1

    Lecture 3: Linear Algebra : Matrix Part2

    Lecture 4: Linear Algebra : Going From 2D to nD Part1

    Lecture 5: Linear Algebra : 2D to nD Part2

    Chapter 5: Inferential Statistics

    Lecture 1: Inferential Statistics

    Lecture 2: Probability Theory

    Lecture 3: Probability Distribution

    Lecture 4: Expected Values Part1

    Lecture 5: Expected Values Part2

    Lecture 6: Without Experiment

    Lecture 7: Binomial Distribution

    Lecture 8: Commulative Distribution

    Lecture 9: PDF

    Lecture 10: Normal Distribution

    Lecture 11: z Score

    Lecture 12: Sampling

    Lecture 13: Sampling Distribution

    Lecture 14: Central Limit Theorem

    Lecture 15: Confidence Interval Part1

    Lecture 16: Confidence Interval Part2

    Chapter 6: Hypothesis Testing

    Lecture 1: Introduction

    Lecture 2: NULL And Alternate Hypothesis

    Lecture 3: Examples

    Lecture 4: One/Two Tailed Tests

    Lecture 5: Critical Value Method

    Lecture 6: z Table

    Lecture 7: Examples

    Lecture 8: More Examples

    Lecture 9: p Value

    Lecture 10: Types of Error

    Lecture 11: t- distribution Part1

    Lecture 12: t- distribution Part2

    Chapter 7: Data Visualisation

    Lecture 1: Matplotlib

    Lecture 2: Seaborn

    Lecture 3: Case Study

    Lecture 4: Seaborn On Time Series Data

    Chapter 8: Exploratory Data Analysis

    Lecture 1: Introduction

    Lecture 2: Data Sourcing and Cleaning part1

    Lecture 3: Data Sourcing and Cleaning part2

    Lecture 4: Data Sourcing and Cleaning part3

    Lecture 5: Data Sourcing and Cleaning part4

    Lecture 6: Data Sourcing and Cleaning part5

    Lecture 7: Data Sourcing and Cleaning part6

    Lecture 8: Data Cleaning part1

    Lecture 9: Data Cleaning part2

    Lecture 10: Univariate Analysis Part1

    Lecture 11: Univariate Analysis Part2

    Lecture 12: Segmented Analysis

    Lecture 13: Bivariate Analysis

    Lecture 14: Derived Columns

    Chapter 9: Simple Linear Regression

    Lecture 1: Introduction to Machine Learning

    Lecture 2: Types of Machine Learning

    Lecture 3: Introduction to Linear Regression (LR)

    Lecture 4: How LR Works?

    Lecture 5: Some Fun With Maths Behind LR

    Lecture 6: R Square

    Lecture 7: LR Case Study Part1

    Instructors

  • Data Science Statistics A-Z - Python_1  No.2
    Geekshub Pvt Ltd
    BigData and Analytics
  • Rating Distribution

  • 1 stars: 1 votes
  • 2 stars: 2 votes
  • 3 stars: 10 votes
  • 4 stars: 25 votes
  • 5 stars: 14 votes
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