Close Menu
Edu Expertise Hub
    Facebook X (Twitter) Instagram
    Tuesday, June 17
    • About us
    • Contact
    • Submit Coupon
    Facebook X (Twitter) Instagram YouTube
    Edu Expertise Hub
    • Home
    • Udemy Coupons
    • Best Online Courses and Software Tools
      • Business & Investment
      • Computers & Internet
      • eBusiness and eMarketing
    • Reviews
    • Jobs
    • Latest News
    • Blog
    • Videos
    Edu Expertise Hub
    Home » Udemy Coupons » Foundations of Data Science: Machine Learning and Statistics | Udemy Coupons 2025
    Udemy Coupons

    Foundations of Data Science: Machine Learning and Statistics | Udemy Coupons 2025

    By March 30, 2024No Comments7 Mins Read0 Views
    Facebook Twitter Pinterest LinkedIn Telegram Tumblr Email
    5769354 0818 Foundations of Data Science: Machine Learning and Statistics | Udemy Coupons [year] Edu Expertise Hub udemy coupons
    Share
    Facebook Twitter LinkedIn Pinterest Email

    “Foundations of Data Science: Machine Learning and Statistics Mastery” is a comprehensive and fitting title for a course that covers essential concepts, tools, and techniques in both machine learning and statistics. This title conveys the course’s focus on building a strong foundation in the key elements of data science, offering participants the knowledge and skills necessary to excel in the dynamic field of data-driven decision-making. It suggests a balanced and in-depth exploration of both machine learning and statistical principles, making it an appealing and informative choice for potential learners. This comprehensive program is designed to provide you with a solid understanding of the fundamental principles that underlie both Machine Learning (ML) and Statistics. In this course, we will explore key concepts, methodologies, and tools essential for anyone looking to embark on a journey into the world of data-driven decision-making.

    In an era dominated by data, the ability to harness and interpret information is invaluable. This course is structured to equip you with the knowledge and skills needed to navigate the intricate landscapes of Machine Learning and Statistics. Whether you’re a beginner eager to grasp the basics or an experienced professional seeking to reinforce your foundation, this course caters to diverse learning levels.

    Course Structure: The course is organized into eleven sections, each focusing on a specific aspect of ML and Statistics. From the foundational principles of ML in Python to in-depth explorations of statistical concepts, you will progress through a structured curriculum that builds your expertise step by step. Each section comprises a series of lectures, providing a well-rounded and comprehensive learning experience.

    What You Will Learn:

    • Understand the significance of Machine Learning and its applications.
    • Gain proficiency in using Python for ML implementations.
    • Explore the integration of Big Data and emerging trends in Machine Learning.
    • Master the basics of statistical sampling, data types, and visualization.
    • Develop a solid understanding of probability theory and its relevance to ML.
    • Comprehend random variables, probability distributions, and their applications.
    • Explore various statistical distributions crucial for ML.
    • Acquire essential skills in matrix algebra and its application in ML.
    • Master the principles and techniques of hypothesis testing.
    • Delve into different types of hypothesis tests and their practical applications.
    • Gain insights into regression analysis and covariance.

    Who Should Enroll: This course is suitable for beginners entering the field of data science, professionals seeking to enhance their statistical knowledge, and anyone interested in understanding the foundations of Machine Learning. Whether you are in academia, industry, or a self-learner, the course provides a comprehensive and accessible learning path.

    Prerequisites: Basic knowledge of programming concepts is beneficial, but not mandatory. A curious mind and enthusiasm for exploring the intersection of data, statistics, and machine learning are the key prerequisites.

    Course Format: The course is presented in a series of text-based lectures, each focusing on specific topics. It is self-paced, allowing you to progress through the material at your own speed. Each section concludes with quizzes and practical examples to reinforce your understanding.

    Embark on this exciting journey into the world of data-driven decision-making! We are confident that, by the end of this course, you will have a strong foundation in both Machine Learning and Statistics, empowering you to tackle real-world challenges and contribute to the evolving field of data science. Let’s get started!

    Section 1: Introduction

    In the introductory section, participants are provided with a foundational understanding of the field of Machine Learning (ML) with a specific focus on its applications using the Python programming language. The primary goal is to familiarize participants with the broad scope of ML, its historical evolution, and the crucial role Python plays in implementing ML algorithms. This section aims to set the stage for subsequent modules by establishing a common understanding of the core concepts in ML.

    Section 2: Importing

    Section 2 builds upon the introduction and delves deeper into various aspects of Machine Learning. The lectures in this section cover analytics within the ML context, emphasizing the role of data-driven insights in decision-making. The integration of Big Data into ML processes is explored, highlighting the challenges and opportunities posed by the vast amounts of data generated. Additionally, participants gain insights into emerging trends in ML, ensuring they are aware of the latest developments shaping the field.

    Section 3: Basics of Statistics Sampling

    This section shifts the focus to the fundamental principles of statistics, particularly sampling methods in the context of ML. Lectures cover various techniques, terminology, and concepts such as error observation and non-observation. The exploration of systematic and cluster sampling provides participants with a solid foundation in statistical sampling, crucial for making informed decisions in ML.

    Section 4: Basics of Statistics Data types and Visualization

    Section 4 concentrates on the basics of statistics related to data types and visualization. Participants learn how to categorize different types of data and explore visualization techniques, with a specific emphasis on qualitative data. This knowledge equips participants with the essential skills to represent and interpret data effectively in the ML context.

    Section 5: Basics of Statistics Probability

    Section 5 introduces participants to the probabilistic aspects of Machine Learning. Lectures cover fundamental probability concepts, including relative frequency probability, joint probability, conditional probability, independence, and total probability. This section establishes the probabilistic foundation necessary for understanding ML algorithms and their underlying statistical principles.

    Section 6: Basics of Statistics Random Variables

    The focus shifts to random variables and probability distributions in Section 6. Participants delve into the mathematical aspects of random variables and their distributions, gaining an understanding of how probability influences data in the ML context. This section lays the groundwork for comprehending the stochastic nature of variables encountered in ML applications.

    Section 7: Basics of Statistics Distributions

    Building upon Section 6, Section 7 deepens the exploration of probability distributions relevant to ML. Lectures cover specific distributions such as Bernoulli, Gaussian, geometric, continuous, and normal distributions. Participants gain insights into the applications of these distributions, establishing a strong statistical background for advanced ML concepts.

    Section 8: Matrix Algebra

    Section 8 introduces participants to matrix algebra, a fundamental tool in ML. Lectures cover mathematical expressions, computations, and properties of matrices, along with the concept of determinants. This section aims to provide participants with the necessary mathematical knowledge to understand and manipulate matrices in the context of ML algorithms.

    Section 9: Hypothesis Testing

    This section focuses on hypothesis testing in ML. Lectures cover error types, critical value approaches, P-value approaches, and various scenarios for hypothesis testing. Participants learn how to apply statistical methods to validate hypotheses, a crucial skill for making informed decisions based on data in ML.

    Section 10: Hypothesis Tests-Types

    Section 10 delves into specific types of hypothesis tests applicable in ML scenarios. Lectures cover normality tests, T-tests, tests of independence, and goodness of fit tests. Practical examples illustrate the application of these tests, providing participants with hands-on experience in applying statistical methods to real-world ML problems.

    Section 11: Regression

    The final section focuses on regression analysis, starting with the concept of covariance and its continuation. Participants gain insights into how covariance contributes to understanding relationships between variables in ML applications. The section aims to equip participants with the knowledge and skills required for regression analysis, a fundamental aspect of predictive modeling in ML.



    Free
    $54.99




    Redeem Coupon

    If the coupon is not opening, disable Adblock, or try another browser.

    If you reach this page after the coupon expired then search the latest coupon here

    This post is exclusively published on eduexpertisehub.com

    Tags: udemy coupons 100 off, udemy coupons, udemy coupons 2025, udemy online free courses, Udemy Coupons June 2025
    #udemycoupons

    udemy coupons udemy coupons 100 off udemy coupons 2024 udemy online free courses
    Share. Facebook Twitter Pinterest LinkedIn Tumblr Email

      Related Posts

      CEO Playbook: Generative AI | Udemy Coupons 2025

      June 17, 2025

      Python And Django Framework And HTML 5 Stack Complete Course | Udemy Coupons 2025

      June 17, 2025

      Consulting Resume Crash Course: Stand Out to Top Firms (MBB) | Udemy Coupons 2025

      June 16, 2025

      The Complete SEO Course From Beginner To Professional | Udemy Coupons 2025

      June 16, 2025

      Executive Program in Resilient Leadership | Udemy Coupons 2025

      June 16, 2025

      How to use Actions class in Selenium WebDriver 4 with Java | Udemy Coupons 2025

      June 16, 2025
      Courses and Software Tools

      Extreme Privacy: What It Takes to Disappear

      August 24, 202450 Views

      Modern C++ Programming Cookbook: Master Modern C++ with comprehensive solutions for C++23 and all previous standards

      September 18, 202426 Views

      Meebook E-Reader M7 | 6.8′ Eink Carta Screen | 300PPI Smart Light | Android 11 | Ouad Core Processor | Out Speaker | Support Google Play Store | 3GB+32GB Storage | Micro-SD Slot | Gray

      August 19, 202422 Views

      HR from the Outside In: Six Competencies for the Future of Human Resources

      May 20, 202517 Views

      Coders at Work: Reflections on the Craft of Programming

      April 19, 202516 Views
      Reviews

      CEO Playbook: Generative AI | Udemy Coupons 2025

      June 17, 2025

      Sr. Technical Systems Analyst

      June 17, 2025

      Python And Django Framework And HTML 5 Stack Complete Course | Udemy Coupons 2025

      June 17, 2025

      Senior Director, CNBC Select

      June 17, 2025

      How to Grow a Successful Digital Marketing Business: WITHOUT BEING A DIGITAL MARKETER

      June 16, 2025
      Stay In Touch
      • Facebook
      • YouTube
      • TikTok
      • WhatsApp
      • Twitter
      • Instagram
      Latest News

      5 fun STEM learning resources for summer engagement

      June 16, 2025

      Fusion and AI: How private sector tech is powering progress at ITER

      June 16, 2025

      Ignite Reading Again Approved as 1:1 High-Dosage Early Literacy Tutoring Provider in Massachusetts

      June 15, 2025

      Fortifying retail: how UK brands can defend against cyber breaches

      June 15, 2025

      I’ve Taught Gen Z for Almost a Decade. I’m Split on the So-Called Gen Z ‘Split’

      June 14, 2025
      Latest Videos

      5 JOBS that Makes you Millionaire

      June 16, 2025

      Digital Marketing Salary In India | Mujhe Kitni Salary Milti Hai?

      June 15, 2025

      Club Career FC Barcelona (2004-2021): Messi played for FC Barcelona

      June 13, 2025

      Get Ahead of the Game with the #1 FREE Cybersecurity Career Launchpad Resource!

      June 12, 2025

      How Hospitality Work Helped My Marketing Career

      June 11, 2025
      Latest Jobs

      Sr. Technical Systems Analyst

      June 17, 2025

      Senior Director, CNBC Select

      June 17, 2025

      Sr Manager, B2B Performance Media

      June 16, 2025

      Senior Manager, Software Engineering, Mobile Development

      June 16, 2025

      Associate Scientist – Biology II

      June 16, 2025
      Legal
      • Home
      • Privacy Policy
      • Cookie Policy
      • Terms and Conditions
      • Disclaimer
      • Affiliate Disclosure
      • Amazon Affiliate Disclaimer
      Latest Udemy Coupons

      Mastering Maxon Cinema 4D 2024: Complete Tutorial Series | Udemy Coupons 2025

      August 22, 202435 Views

      Advanced Program in Human Resources Management | Udemy Coupons 2025

      April 5, 202530 Views

      Diploma in Aviation, Airlines, Air Transportation & Airports | Udemy Coupons 2025

      March 21, 202529 Views

      Python Development & Data Science: Variables and Data Types | Udemy Coupons 2025

      May 24, 202521 Views

      Time Management and Timeboxing in Business, Projects, Agile | Udemy Coupons 2025

      April 2, 202521 Views
      Blog

      Why Feedback Will Help Your Professional Development

      June 14, 2025

      4 Ways To Improve Your LinkedIn Presence

      June 13, 2025

      5 Ways To Develop Your Leadership Skills

      June 12, 2025

      7 Vital Habits Of Successful People

      June 10, 2025

      How To Escape The One-Job Trap In 30 Days

      June 8, 2025
      Facebook X (Twitter) Instagram Pinterest YouTube Dribbble
      © 2025 All rights reserved!

      Type above and press Enter to search. Press Esc to cancel.

      We use cookies on our website to give you the most relevant experience by remembering your preferences and repeat visits. By clicking “Accept”, you consent to the use of ALL the cookies.
      .
      SettingsAccept
      Privacy & Cookies Policy

      Privacy Overview

      This website uses cookies to improve your experience while you navigate through the website. Out of these, the cookies that are categorized as necessary are stored on your browser as they are essential for the working of basic functionalities of the website. We also use third-party cookies that help us analyze and understand how you use this website. These cookies will be stored in your browser only with your consent. You also have the option to opt-out of these cookies. But opting out of some of these cookies may affect your browsing experience.
      Necessary
      Always Enabled
      Necessary cookies are absolutely essential for the website to function properly. This category only includes cookies that ensures basic functionalities and security features of the website. These cookies do not store any personal information.
      Non-necessary
      Any cookies that may not be particularly necessary for the website to function and is used specifically to collect user personal data via analytics, ads, other embedded contents are termed as non-necessary cookies. It is mandatory to procure user consent prior to running these cookies on your website.
      SAVE & ACCEPT