Course Hive
Search

Welcome

Sign in or create your account

Continue with Google
or
Intro to Machine Learning & Data Science (+Pandas, NumPy, Matplotlib)
Play lesson

Full Course - Data Science - Intro to Machine Learning & Data Science (+Pandas, NumPy, Matplotlib)

4.0 (1)
32 learners

What you'll learn

This course includes

  • 161.5 hours of video
  • Certificate of completion
  • Access on mobile and TV

Summary

Keywords

Full Transcript

Become a Machine Learning Engineer! Join Daniel Bourke & Andrei Neagoie as they take you from complete beginner to learning the basics of Machine Learning & Data Science. In this 10-hour beginner course, you'll learn: machine learning 101, environment setup, data analysis, and some popular ML libraries like Pandas, NumPy & Matplotlib! This Crash Course is ~25% of Andrei & Daniel's Machine Learning & Data Science Bootcamp course. So if you like this video, you'll LOVE their full course which has 30+ hours of additional lectures where you'll get to build your own machine learning models from scratch! Want to get hired as a professional ML Engineer or Data Scientist? Then take the full course 👇 🤖 Full Machine Learning & Data Science Bootcamp Course: https://zerotomastery.io/courses/machine-learning-and-data-science-bootcamp/ 🎁 [LIMITED TIME ONLY] Use code: YTMLDS10 to get 10% OFF (for life!) ========== 🗂 Crash Course Files: https://links.zerotomastery.io/machine-learning-crash-course 📓 Course Handbook: https://dev.mrdbourke.com/zero-to-mastery-ml/ 🐍 Free Python Crash Course: https://youtu.be/4uBbCUjJ_G8 ========== ⏲ Timestamps: 00:00 Course Intro 01:50 Your First Day 05:50 What Is Machine Learning? 12:54 AI/Machine Learning/Data Science 17:57 Exercise: Machine Learning Playground 24:25 How Did We Get Here? 30:40 Exercise: YouTube Recommendation Engine 35:18 Types of Machine Learning 40:11 What Is Machine Learning? Round 2 42:11 Section Review 47:08 Section Overview: Machine Learning and Data Science Framework 50:28 Introducing Our Framework 53:17 6-Step Machine Learning Framework 58:29 Types of Machine Learning Problems 1:09:13 Types of Data 1:14:16 Types of Evaluation 1:17:59 Features in Data 1:23:33 Modelling - Splitting Data 1:29:44 Modelling - Picking the Model 1:37:59 Modelling - Comparison 1:47:44 Overfitting and Underfitting Definitions: Experimentation 1:51:47 Tools We Will Use 1:55:59 Quick Announcement 1:57:04 Section Overview: Data Science Environment Setup 1:58:24 Introducing Our Tools 2:02:06 What is Conda? 2:04:52 Conda Environments 2:09:35 Mac Environment Setup 2:27:14 Mac Environment Setup 2 2:47:06 Windows Environment Setup 2 3:10:35 Linux Environment Setup 3:10:51 Sharing your Conda Environment 3:11:03 Jupyter Notebook Walkthrough 3:21:37 Jupyter Notebook Walkthrough 2 3:38:06 J upyter Notebook Walkthrough 3 3:46:28 Section Overview: Pandas - Data Analysis 3:49:08 Downloading Workbooks & Assignments - https://github.com/mrdbourke/zero-to-mastery-ml 3:49:19 Pandas Introduction 3:54:00 Series, Data Frames & CSVs 4:07:34 Data from URLs 4:07:45 Describing Data with Pandas 4:17:46 Selecting and Viewing Data with Pandas 4:29:07 Selecting and Viewing Data with Pandas Part 2 4:42:25 Manipulating Data 4:56:34 Manipulating Data 2 5:06:43 Manipulating Data 3 5:17:07 Assignment: Pandas Practice 5:17:18 How To Download The Course Assignments - https://github.com/mrdbourke/zero-to-mastery-ml 5:25:14 Section Overview: NumPy 5:28:06 NumPy Introduction 5:33:35 Quick Note: Correction in the next video 5:34:23 NumPy DataTypes and Attributes 5:48:40 Creating NumPy Arrays 5:58:15 NumPy Random Seed 6:05:43 Viewing Arrays and Matrices 6:15:33 Manipulating Arrays 6:27:16 Manipulating Arrays 2 6:37:11 Standard Deviation and Variance 6:44:34 Reshape and Transpose 6:52:12 Dot Product vs Element Wise 7:04:08 Exercise: Nut Butter Store Sales 7:17:24 Comparison Operators 7:21:10 Sorting Arrays 7:27:41 T urn Images Into NumPy Arrays 7:35:31 Assignment: NumPy Practice 7:35:42 Section Overview: Matplotlib - Plotting and Data Visualization 7:37:45 Matplotlib Introduction 7:43:14 Importing And Using Matplotlib 7:55:02 Anatomy Of A Matplotlib Figure 8:04:24 Scatter Plot And Bar Plot 8:14:45 Histograms And Subplots 8:23:37 Subplots Option 2 8:28:05 Quick Tip: Data Visualizations 8:34:15 Plotting From Pandas DataFrames 8:36:15 Quick Note: Regular Expressions 8:36:27 Plotting From Pandas DataFrames 2 8:47:13 Plotting from Pandas DataFrames 3 8:55:57 Plotting from Pandas DataFrames 4 9:02:44 Plotting from Pandas DataFrames 5 9:11:25 Plotting from Pandas DataFrames 6 9:20:06 Plotting from Pandas DataFrames 7 9:31:38 Customizing Your Plots 9:41:59 Customizing Your Plots 2 9:51:52 Saving And Sharing Your Plots 9:56:18 Assignment: Matplotlib Practice 9:56:30 Section Overview: Scikit-learn Creating Machine Learning Models 9:59:10 Where To Keep Learning ========== Graduates of Zero To Mastery are now working at Google, Tesla, Amazon, Apple, IBM, JP Morgan, Facebook, Shopify + other top tech companies. Many are also working as top-rated Freelancers getting paid $1,000s while working remotely around the world. 🎓 Here are just a few of them: https://zerotomastery.io/testimonials This could be you 👆 ========== Full ML Bootcamp 👉 https://zerotomastery.io/courses/machine-learning-and-data-science-bootcamp/ #zerotomastery #machinelearning

Course Hive

Continue this lesson in the app

Install CourseHive on Android or iOS to keep learning while you move.

Related Courses

FAQs

Course Hive
Download CourseHive
Keep learning anywhere