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    Crash Course Introduction To Machine Learning

    Posted By: ELK1nG
    Crash Course Introduction To Machine Learning

    Crash Course Introduction To Machine Learning
    Published 9/2024
    MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
    Language: English | Size: 292.05 MB | Duration: 0h 40m

    Kickstart Your Machine Learning Journey: Hands-On Projects with Python Libraries

    What you'll learn

    Learn the key concepts of Machine Learning

    Get experienced with Jupyter Notebooks

    Learn how to use Python libraries, such as Scikit-learn, numpy, pandas, matplotlib

    Data handling & cleaning to be used in Machine Learning

    Introduced to common ML algorithms

    Learn to evaluate the performance of a model

    Have hands-on experience with ML algorithms

    Requirements

    Basic understanding of high school mathematics

    Some Python experience would be helpful

    Description

    Welcome to "Crash Course Introduction to Machine Learning"! This course is designed to provide you with a solid foundation in machine learning, leveraging the powerful Scikit-learn library in Python.What You'll Learn:The Basics of Machine Learning: Understand the key concepts and types of machine learning, including supervised, unsupervised, and reinforcement learning.Setting Up Your Environment: Get hands-on experience setting up Python, Jupyter Notebooks, and essential libraries like numpy, pandas, matplotlib, and Scikit-learn.Data Preprocessing: Learn how to load, clean, and preprocess data, handle missing values, and split data for training and testing.Building Machine Learning Models: Explore common algorithms such as Linear Regression, Decision Trees, and K-Nearest Neighbors. Train and evaluate models(Linear Regression), and understand performance metrics like accuracy, R^2 and scatter values in plots to measure the prediction.Model Deployment: Gain practical knowledge on saving your pre-trained model for others to use.This course is structured to provide you with both theoretical understanding and practical skills. Each section builds on the previous one, ensuring you develop a comprehensive understanding of machine learning concepts and techniques.Why This Course?Machine learning is transforming industries and driving innovation. This course equips you with the knowledge and skills to harness the power of machine learning, whether you're looking to advance your career, work on personal projects, or simply explore this exciting field.Prerequisites:Basic understanding of Python programming.No prior knowledge of machine learning is required.Enroll Today!Join me on this journey to become proficient in machine learning with Scikit-learn. By the end of this course, you'll have the confidence to build, evaluate, and deploy your machine learning models. Let's get started!

    Overview

    Section 1: Introduction

    Lecture 1 Introduction

    Section 2: Basics of Machine Learning

    Lecture 2 AI vs Machine Learning vs Deep Learning

    Lecture 3 Types of Machine Learning

    Lecture 4 Key Terminology

    Section 3: Setting up the environment

    Lecture 5 Installing Anaconda Distribution

    Lecture 6 The importance of Jupyter Notebooks

    Section 4: Data Preprocessing

    Lecture 7 Data Loading & Cleaning

    Lecture 8 Data Splitting

    Section 5: Building a simple ML model

    Lecture 9 Introduction to ML models & using one

    Lecture 10 Common ML models

    Lecture 11 Evaluating accuracy

    Section 6: Saving the trained model

    Lecture 12 Saving the model using Pickle

    Lecture 13 Publishing the ML model

    Section 7: Conclusion and Next Steps

    Lecture 14 Recap of What You've Learned

    Lecture 15 Resources

    Section 8: [Extra] Improving a model's performance

    Lecture 16 5 common methods to improve a model's performance

    Anyone eager enough to learn how machine learning works and to break down the magic to reality