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Machine Learning Zero to Hero: Step by Step with Python

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Learn Machine Learning from Scratch, Build Real Models and Master Python & Scikit-Learn
1
1/5
(41) Ratings
442 students
Created by Logic Labs
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What you'll learn

  • Understand core machine learning concepts and workflow
  • Build regression and classification models in Python
  • Apply clustering techniques for unsupervised learning
  • Clean and preprocess real-world datasets
  • Perform feature engineering and feature selection
  • Evaluate and optimize model performance
  • Use Scikit-Learn to build production-ready models
  • Complete practical projects for your portfolio
This course includes:
6.5 total hours on-demand video
0 articles
0 downloadable resources
39 lessons
Full lifetime access
Access on mobile and TV
Certificate of completion
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Course content

Requirements

  • No prior programming experience

Description

Machine Learning is one of the most in-demand skills in today’s technology driven world. From recommendation systems and fraud detection to predictive analytics and AI-powered applications, machine learning is transforming industries. In this comprehensive course, you’ll learn machine learning step by step using Python—starting from the absolute basics and progressing to advanced real-world applications.

I begin by building a strong foundation. You’ll understand what machine learning really is, how it works and why it matters. Core concepts such as supervised and unsupervised learning, training vs. testing data, overfitting, underfitting and model evaluation are explained in a clear, beginner friendly way—without overwhelming theory.

Next, you’ll dive into practical implementation with Python. You’ll work with essential libraries like NumPy, Pandas, Matplotlib and Scikit-Learn to manipulate data, visualize insights and build your first machine learning models. Every concept is reinforced through hands-on coding exercises, so you gain real confidence—not just theoretical knowledge.

You’ll master the most important machine learning algorithms used in industry. These include Linear Regression, Logistic Regression, K-Nearest Neighbors (KNN), Decision Trees, Random Forest, Support Vector Machines (SVM) and Clustering techniques such as K-Means. Each algorithm is explained intuitively and implemented step by step in Python.

Data preprocessing and feature engineering are critical skills for any machine learning practitioner. In this course, you’ll learn how to clean data, handle missing values, encode categorical variables, scale features and select the right inputs for better model performance. These practical techniques are what separate beginners from professionals.

You’ll also learn how to evaluate and improve your models using cross validation, confusion matrices, accuracy metrics, precision, recall, F1-score and hyperparameter tuning. By understanding how to properly measure performance, you’ll be able to build reliable and production ready machine learning systems.

Throughout the course, you’ll complete real-world projects designed to simulate industry scenarios. These projects help you apply everything you’ve learned—from data preprocessing to final predictions—so you can confidently add them to your portfolio and showcase your skills to employers or clients.

By the end of this course, you won’t just understand machine learning—you’ll be able to build, train, evaluate and improve your own models confidently using Python. This course is your complete roadmap from beginner to machine learning practitioner.

Who this course is for:

  • Anyone interested in learning machine learning step by step
  • Students pursuing data science or computer science
  • Developers who want to add machine learning to their skill set
  • Data analysts looking to transition into machine learning roles
  • Beginners with basic Python knowledge who want to enter AI
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