Learning Outcomes
After studying the course materials of the Python for Data Science & Machine Learning: Zero to Hero there will be a written assignment test which you can take either during or at the end of the course. After successfully passing the test you will be able to claim the pdf certificate for £4.99. Original Hard Copy certificates need to be ordered at an additional cost of £8.
This Python for Data Science & Machine Learning: Zero to Hero does not require you to have any prior qualifications or experience. You can just enrol and start learning. This Python for Data Science & Machine Learning: Zero to Hero was made by professionals and it is compatible with all PC’s, Mac’s, tablets and smartphones. You will be able to access the course from anywhere at any time as long as you have a good enough internet connection.
Introduction | |||
Welcome to the Python for Data Science & ML bootcamp! | 00:01:00 | ||
Introduction to Python | 00:01:00 | ||
Setting Up Python | 00:02:00 | ||
What is Jupyter? | 00:01:00 | ||
Anaconda Installation Windows Mac and Ubuntu | 00:04:00 | ||
How to implement Python in Jupyter | 00:01:00 | ||
Managing Directories in Jupyter Notebook | 00:03:00 | ||
Input & Output | 00:02:00 | ||
Working with different datatypes | 00:01:00 | ||
Variables | 00:02:00 | ||
Arithmetic Operators | 00:02:00 | ||
Comparison Operators | 00:01:00 | ||
Logical Operators | 00:03:00 | ||
Conditional statements | 00:02:00 | ||
Loops | 00:04:00 | ||
Sequences Part 1: Lists | 00:03:00 | ||
Sequences Part 2: Dictionaries | 00:03:00 | ||
Sequences Part 3: Tuples | 00:01:00 | ||
Functions Part 1: Built-in Functions | 00:01:00 | ||
Functions Part 2: User-defined Functions | 00:03:00 | ||
The Must-Have Python Data Science Libraries | |||
Installing Libraries | 00:01:00 | ||
Importing Libraries | 00:01:00 | ||
Pandas Library for Data Science | 00:01:00 | ||
NumPy Library for Data Science | 00:01:00 | ||
Pandas vs NumPy | 00:01:00 | ||
Matplotlib Library for Data Science | 00:01:00 | ||
Seaborn Library for Data Science | 00:01:00 | ||
NumPy Mastery: Everything you need to know about NumPy | |||
Introduction to NumPy arrays | 00:01:00 | ||
Creating NumPy arrays | 00:06:00 | ||
Indexing NumPy arrays | 00:06:00 | ||
Array shape | 00:01:00 | ||
Iterating Over NumPy Arrays | 00:05:00 | ||
Basic NumPy arrays: zeros() | 00:02:00 | ||
Basic NumPy arrays: ones() | 00:01:00 | ||
Basic NumPy arrays: full() | 00:01:00 | ||
Adding a scalar | 00:02:00 | ||
Subtracting a scalar | 00:01:00 | ||
Multiplying by a scalar | 00:01:00 | ||
Dividing by a scalar | 00:01:00 | ||
Raise to a power | 00:01:00 | ||
Transpose | 00:01:00 | ||
Element-wise addition | 00:02:00 | ||
Element-wise subtraction | 00:01:00 | ||
Element-wise multiplication | 00:01:00 | ||
Element-wise division | 00:01:00 | ||
Matrix multiplication | 00:02:00 | ||
Statistics | 00:03:00 | ||
DataFrames and Series in Python's Pandas | |||
What is a Python Pandas DataFrame? | 00:01:00 | ||
What is a Python Pandas Series? | 00:01:00 | ||
DataFrame vs Series | 00:01:00 | ||
Creating a DataFrame using lists | 00:03:00 | ||
Creating a DataFrame using a dictionary | 00:01:00 | ||
Loading CSV data into python | 00:02:00 | ||
Changing the Index Column | 00:01:00 | ||
Inplace | 00:01:00 | ||
Examining the DataFrame: Head & Tail | 00:01:00 | ||
Statistical summary of the DataFrame | 00:01:00 | ||
Slicing rows using bracket operators | 00:01:00 | ||
Indexing columns using bracket operators | 00:01:00 | ||
Boolean list | 00:01:00 | ||
Filtering Rows | 00:01:00 | ||
Filtering rows using AND OR operators | 00:02:00 | ||
Filtering data using loc() | 00:04:00 | ||
Filtering data using iloc() | 00:02:00 | ||
Adding and deleting rows and columns | 00:03:00 | ||
Sorting Values | 00:02:00 | ||
Exporting and saving pandas DataFrames | 00:02:00 | ||
Concatenating DataFrames | 00:01:00 | ||
groupby() | 00:03:00 | ||
Data Cleaning Techniques for Better Data | |||
Introduction to Data Cleaning | 00:01:00 | ||
Quality of Data | 00:01:00 | ||
Examples of Anomalies | 00:01:00 | ||
Median-based Anomaly Detection | 00:03:00 | ||
Mean-based anomaly detection | 00:03:00 | ||
Z-score-based Anomaly Detection | 00:03:00 | ||
Interquartile Range for Anomaly Detection | 00:05:00 | ||
Dealing with missing values | 00:06:00 | ||
Regular Expressions | 00:07:00 | ||
Feature Scaling | 00:03:00 | ||
Exploratory Data Analysis in Python | |||
Introduction (Exploratory Data Analysis in Python) | 00:01:00 | ||
What is Exploratory Data Analysis? | 00:01:00 | ||
Univariate Analysis | 00:02:00 | ||
Univariate Analysis: Continuous Data | 00:06:00 | ||
Univariate Analysis: Categorical Data | 00:02:00 | ||
Bivariate analysis: Continuous & Continuous | 00:05:00 | ||
Bivariate analysis: Categorical & Categorical | 00:03:00 | ||
Bivariate analysis: Continuous & Categorical | 00:02:00 | ||
Detecting Outliers | 00:06:00 | ||
Categorical Variable Transformation | 00:04:00 | ||
Python for Time-Series Analysis: A Primer | |||
Introduction to Time Series | 00:02:00 | ||
Getting stock data using yfinance | 00:03:00 | ||
Converting a Dataset into Time Series | 00:04:00 | ||
Working with Time Series | 00:04:00 | ||
Visualising a Time Series | 00:03:00 | ||
Python for Data Visualisation: Library Resources, and Sample Graphs | |||
Data Visualisation using python | 00:01:00 | ||
Setting Up Matplotlib | 00:01:00 | ||
Plotting Line Plots using Matplotlib | 00:02:00 | ||
Title, Labels & Legend | 00:05:00 | ||
Plotting Histograms | 00:01:00 | ||
Plotting Bar Charts | 00:02:00 | ||
Plotting Pie Charts | 00:03:00 | ||
Plotting Scatter Plots | 00:06:00 | ||
Plotting Log Plots | 00:01:00 | ||
Plotting Polar Plots | 00:02:00 | ||
Handling Dates | 00:01:00 | ||
Creating multiple subplots in one figure | 00:03:00 | ||
The Basics of Machine Learning | |||
What is Machine Learning? | 00:02:00 | ||
Applications of machine learning | 00:02:00 | ||
Machine Learning Methods | 00:01:00 | ||
What is Supervised learning? | 00:01:00 | ||
What is Unsupervised learning? | 00:01:00 | ||
Supervised learning vs Unsupervised learning | 00:04:00 | ||
Simple Linear Regression with Python | |||
Introduction to regression | 00:02:00 | ||
How Does Linear Regression Work? | 00:02:00 | ||
Line representation | 00:01:00 | ||
Implementation in python: Importing libraries & datasets | 00:02:00 | ||
Implementation in python: Distribution of the data | 00:02:00 | ||
Implementation in python: Creating a linear regression object | 00:03:00 | ||
Multiple Linear Regression with Python | |||
Understanding Multiple linear regression | 00:02:00 | ||
Exploring the dataset | 00:04:00 | ||
Encoding Categorical Data | 00:05:00 | ||
Splitting data into Train and Test Sets | 00:02:00 | ||
Training the model on the Training set | 00:01:00 | ||
Predicting the Test Set results | 00:03:00 | ||
Evaluating the performance of the regression model | 00:01:00 | ||
Root Mean Squared Error in Python | 00:03:00 | ||
Classification Algorithms: K-Nearest Neighbors | |||
Introduction to classification | 00:01:00 | ||
K-Nearest Neighbours algorithm | 00:01:00 | ||
Example of KNN | 00:01:00 | ||
K-Nearest Neighbours (KNN) using python | 00:01:00 | ||
Importing required libraries | 00:01:00 | ||
Importing the dataset | 00:02:00 | ||
Splitting data into Train and Test Sets | 00:03:00 | ||
Feature Scaling | 00:01:00 | ||
Importing the KNN classifier | 00:02:00 | ||
Results prediction & Confusion matrix | 00:02:00 | ||
Classification Algorithms: Decision Tree | |||
Introduction to decision trees | 00:01:00 | ||
What is Entropy? | 00:01:00 | ||
Exploring the dataset | 00:01:00 | ||
Decision tree structure | 00:01:00 | ||
Importing libraries & datasets | 00:01:00 | ||
Encoding Categorical Data | 00:03:00 | ||
Splitting data into Train and Test Sets | 00:01:00 | ||
Results Prediction & Accuracy | 00:03:00 | ||
Classification Algorithms: Logistic regression | |||
Introduction (Classification Algorithms: Logistic regression) | 00:01:00 | ||
Implementation steps | 00:01:00 | ||
Importing libraries & datasets | 00:02:00 | ||
Splitting data into Train and Test Sets | 00:01:00 | ||
Pre-processing | 00:02:00 | ||
Training the model | 00:01:00 | ||
Results prediction & Confusion matrix | 00:02:00 | ||
Logistic Regression vs Linear Regression | 00:02:00 | ||
Clustering | |||
Introduction to clustering | 00:01:00 | ||
Use cases | 00:01:00 | ||
K-Means Clustering Algorithm | 00:01:00 | ||
Elbow method | 00:02:00 | ||
Steps of the Elbow method | 00:01:00 | ||
Implementation in python | 00:04:00 | ||
Hierarchical clustering | 00:01:00 | ||
Density-based clustering | 00:02:00 | ||
Implementation of k-means clustering in python | 00:01:00 | ||
Importing the dataset | 00:03:00 | ||
Visualising the dataset | 00:02:00 | ||
Defining the classifier | 00:02:00 | ||
3D Visualisation of the clusters | 00:03:00 | ||
3D Visualisation of the predicted values | 00:03:00 | ||
Number of predicted clusters | 00:02:00 | ||
Recommender System | |||
Introduction (Recommender System) | 00:01:00 | ||
Collaborative Filtering in Recommender Systems | 00:01:00 | ||
Content-based Recommender System | 00:01:00 | ||
Importing libraries & datasets | 00:03:00 | ||
Merging datasets into one dataframe | 00:01:00 | ||
Sorting by title and rating | 00:04:00 | ||
Histogram showing number of ratings | 00:01:00 | ||
Frequency distribution | 00:01:00 | ||
Jointplot of the ratings and number of ratings | 00:01:00 | ||
Data pre-processing | 00:02:00 | ||
Sorting the most-rated movies | 00:01:00 | ||
Grabbing the ratings for two movies | 00:01:00 | ||
Correlation between the most-rated movies | 00:02:00 | ||
Sorting the data by correlation | 00:01:00 | ||
Filtering out movies | 00:01:00 | ||
Sorting values | 00:01:00 | ||
Repeating the process for another movie | 00:02:00 | ||
Conclusion | |||
Conclusion | 00:01:00 |
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