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    Machine Learning with Python: Beginner Projects

    Posted By: lucky_aut
    Machine Learning with Python: Beginner Projects

    Machine Learning with Python: Beginner Projects
    Published 9/2025
    Duration: 2h 36m | .MP4 1280x720 30 fps(r) | AAC, 44100 Hz, 2ch | 1.26 GB
    Genre: eLearning | Language: English

    Hands-on Machine Learning with Python: Build beginner-friendly projects using Logistic Regression, KNN, SVM & more

    What you'll learn
    - Understand the intuition behind algorithms like Logistic Regression, KNN, SVM, and Decision Trees.
    - Apply Gradient Descent methods to optimize models effectively.
    - Evaluate models with metrics such as accuracy, precision, recall, and F1-score.
    - Compare different algorithms and choose the right one for a given problem.

    Requirements
    - Basic knowledge of Python programming (variables, loops, functions).
    - A computer with Python installed (Anaconda or Google Colab works fine).

    Description
    Machine Learning is one of the most in-demand skills in today’s world, and the best way to learn it is throughpractical projects. This beginner-friendly course will guide you step by step through the essential algorithms of Machine Learning usingPython, while working on real-world datasets likeTitanic,Wine Data, andBank Marketing.

    We’ll start from the basics — understanding how models work, how to evaluate their performance, and how to improve them. Then, we’ll move into hands-on projects covering a wide range of algorithms:

    Logistic Regression with the Titanic dataset

    Naive Bayes with Wine classification

    Decision Trees with Bank Marketing data

    Random Forests for ensemble learning

    Gradient Descent methods (Batch, Stochastic, Mini-Batch)

    Linear Regression projects with real datasets

    K-Nearest Neighbors (KNN) and Support Vector Machines (SVM)

    Boosting techniques and Unsupervised Learning (Clustering, PCA)

    By the end of this course, you will:

    Understand the intuition behind core ML algorithms

    Be able to implement them from scratch and with Python libraries

    Know how to choose the right model and evaluate its performance

    Gain confidence through practical, project-based learning

    No advanced math is required — just basic Python knowledge and a willingness to learn. Whether you’re a student, programmer, or professional looking to upskill, this course will give you a solid foundation to start your Machine Learning journey.

    Who this course is for:
    - Beginners who want to start learning machine learning through hands-on projects.
    - Students and programmers curious about data science and AI.
    - Career changers looking to add machine learning to their skill set.
    More Info