Udemy

Data Science and Machine Learning: A Practical Guide

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  • 142 Students
  • Updated 6/2024
4.7
(51 Ratings)
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Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
17 Hour(s) 27 Minute(s)
Language
English
Taught by
Selfcode Academy
Rating
4.7
(51 Ratings)
4 views

Course Overview

Data Science and Machine Learning: A Practical Guide

Dive Deep into Data Analysis, Visualization, and Predictive Modeling – Excel in the World of Data Science

Unlock the Power of Python for Data Science and Visualization



Welcome to a comprehensive Python programming course tailored by Selfcode Academy for data science and visualization enthusiasts. Whether you're a beginner or looking to expand your skill set, this course will equip you with the knowledge you need.


Master the Python Basics:

  • Start from scratch with Python fundamentals.

  • Learn about variables, data types, and the logic behind programming.

  • Explore conditional statements and loops.

  • Dive into essential data structures like lists, tuples, dictionaries, and sets.

  • Discover the world of functions, including powerful lambda functions.

  • Get familiar with Object-Oriented Programming (OOP) concepts.


Python's Role in Data Science:

  • Transition to data science seamlessly.

  • Manipulate dates and times using Python's datetime module.

  • Tackle complex text patterns with regular expressions (regex).

  • Harness the power of built-in Python functions.

  • Embrace NumPy for efficient numerical computing.

  • Master Pandas and its data structures, including Series and DataFrames.

  • Acquire data cleaning skills to handle missing values and outliers.

  • Excel at data manipulation with Pandas, including indexing, grouping, sorting, and merging.

  • Dive into data visualization with Matplotlib to create compelling graphs.


Advanced Data Science and Visualization:

  • Uncover insights through Exploratory Data Analysis (EDA) techniques.

  • Automate data analysis with Pandas Profiling, DABL, and Sweetviz.

  • Perfect your data cleaning and preprocessing techniques.

  • Craft captivating visualizations using Seaborn.

  • Create various plots, from lines and areas to scatter and violin plots with Plotly.

  • Take your data to the map with geographical visualizations.


Statistics and Hypothesis Testing:

  • Dive into descriptive statistics, including central tendency and dispersion.

  • Master inferential statistics, covering sampling, confidence intervals, and hypothesis testing.

  • Learn to conduct hypothesis tests using Python libraries.


Capstone Project:

  • Apply your skills to a real-world data science project.

  • Define a business problem and structure your analysis.

  • Summarize your findings in a comprehensive report.


Upon completing this course, you'll have a strong foundation in Python programming for data science and visualization. You'll possess the expertise to clean, analyze, and visualize data, empowering you to make data-driven decisions confidently.


Don't miss this opportunity to embark on your data science journey.

Enroll now and unleash the potential of Python for data exploration and visualization!


Course Content

  • 8 section(s)
  • 47 lecture(s)
  • Section 1 Fundamentals of python
  • Section 2 Data Science with Python
  • Section 3 Data Cleaning
  • Section 4 Visualization
  • Section 5 Statistics for Data Science
  • Section 6 Exploratory Data Analysis (EDA)
  • Section 7 Capstone Project
  • Section 8 Practice Set

What You’ll Learn

  • Data Manipulation: Learn how to effectively manipulate and transform data using Python libraries such as Pandas, NumPy, and SciPy.
  • Data Analysis: Develop the ability to explore and analyze datasets using Python's powerful data visualization libraries like Matplotlib and Seaborn.
  • Gain hands-on experience in conducting EDA, including using tools like Pandas Profiling, DABL, and Sweetviz to analyze and visualize datasets.
  • Master the essential concepts of Python programming, including data types, tuples, lists, dicts, basic operators, and functions.
  • Gain an in-depth understanding of Data Science processes: data wrangling, data exploration, data visualization, hypothesis building, and testing
  • Apply knowledge and actionable insights from data across a broad range of application domains.


Reviews

  • P
    Pranay Somsing Rathod
    3.5

    good

  • A
    Anju Innani
    5.0

    Very Nicely Explained

  • N
    Nancy Jason
    5.0

    Great course with well-structured content. The real-world projects were particularly helpful in applying what I learned. A must for anyone serious about data science.

  • S
    Sanghmitra S.
    5.0

    Loved the hands-on approach of this course. It made complex topics easier to understand. The certification at the end was a great bonus for my resume.

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