Become a Machine Learning Engineer in 2025! 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: [ Ссылка ]
🎁 [LIMITED TIME ONLY] Use code: YTMLDS10 to get 10% OFF (for life!)
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🗂 Crash Course Files: [ Ссылка ]
📓 Course Handbook: [ Ссылка ]
🐍 Free Python Crash Course: [ Ссылка ]
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⏲ 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 - [ Ссылка ]
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 - [ Ссылка ]
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
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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: [ Ссылка ]
This could be you 👆
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Full ML Bootcamp 👉 [ Ссылка ]
#zerotomastery #machinelearning
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