Complete Machine Learning Data Science with Python- ML A-Z
- Development
- Jan 16, 2025

Complete Machine Learning & Data Science with Python| ML A-Z, available at $59.99, has an average rating of 4.15, with 78 lectures, based on 470 reviews, and has 25191 subscribers.
You will learn about Data Science libraries like Numpy , Pandas , Matplotlib, Scipy, Scikit Learn, Seaborn , Plotly and many more Machine learning Concept and Different types of Machine Learning Machine Learning Algorithms like Regression, Classification, Naive Bayes Classifier, Decision Tree, Support Vector Machine Algorithm etc.. Feature engineering Python Basics This course is ideal for individuals who are Anyone interested in Machine Learning. or Any students in college who want to start a career in Data Science. It is particularly useful for Anyone interested in Machine Learning. or Any students in college who want to start a career in Data Science.
Enroll now: Complete Machine Learning & Data Science with Python| ML A-Z
Summary
Title: Complete Machine Learning & Data Science with Python| ML A-Z
Price: $59.99
Average Rating: 4.15
Number of Lectures: 78
Number of Published Lectures: 78
Number of Curriculum Items: 78
Number of Published Curriculum Objects: 78
Original Price: $89.99
Quality Status: approved
Status: Live
What You Will Learn
Who Should Attend
Target Audiences
Artificial Intelligence is the next digital frontier, with profound implications for business and society. The global AI market size is projected to reach $202.57 billion by 2026, according to Fortune Business Insights.
This Data Science & Machine Learning (ML) course is not only ‘Hands-On’ practical based but also includes several use cases so that students can understand actual Industrial requirements, and work culture. These are the requirements to develop any high level application in AI.
In this course several Machine Learning (ML) projects are included.
1) Project – Customer Segmentation Using K Means Clustering
2) Project – Fake News Detection using Machine Learning (Python)
3) Project COVID-19: Coronavirus Infection Probability using Machine Learning
4) Project – Image compression using K-means clustering | Color Quantization using K-Means
This course include topics
What is Data Science
Describe Artificial Intelligence and Machine Learning and Deep Learning
Concept of Machine Learning – Supervised Machine Learning , Unsupervised Machine Learning and Reinforcement Learning
Python for Data Analysis- Numpy
Working envirnment-
Google Colab
Anaconda Installation
Jupyter Notebook
Data analysis-Pandas
Matplotlib
What is Supervised Machine Learning
Regression
Classification
Multilinear Regression Use Case- Boston Housing Price Prediction
Save Model
Logistic Regression on Iris Flower Dataset
Naive Bayes Classifier on Wine Dataset
Naive Bayes Classifier for Text Classification
Decision Tree
K-Nearest Neighbor(KNN) Algorithm
Support Vector Machine Algorithm
Random Forest Algorithm I
What is UnSupervised Machine Learning
Types of Unsupervised Learning
Advantages and Disadvantages of Unsupervised Learning
What is clustering?
K-means Clustering
Image compression using K-means clustering | Color Quantization using K-Means
Underfitting, Over-fitting and best fitting in Machine Learning
How to avoid Overfitting in Machine Learning
Feature Engineering
Teachable Machine
Python Basics
In the recent years, self-driving vehicles, digital assistants, robotic factory staff, and smart cities have proven that intelligent machines are possible. AI has transformed most industry sectors like retail, manufacturing, finance, healthcare, and media and continues to invade new territories. Everyday a new app, product or service unveils that it is using machine learning to get smarter and better.
NOTE :- In description reference notes also provided , open reference notes , there is Download link. You can download datasets there.
Course Curriculum
Chapter 1: Introduction
Lecture 1: What is Data Science
Lecture 2: Describe Artificial Intelligence and Machine Learning and Deep Learning
Lecture 3: Concept of Machine Learning
Chapter 2: Installation and Colab
Lecture 1: Google Colab Introduction
Lecture 2: Anaconda Installation
Lecture 3: Jupyter Notebook
Chapter 3: Python for Data Analysis- Numpy
Lecture 1: Python for Data Analysis- Numpy
Lecture 2: linear algebra for data science
Chapter 4: Python for Data Analysis- Pandas
Lecture 1: Pandas Series
Lecture 2: Pandas DataFrames
Lecture 3: Grouping and Filtering
Lecture 4: Slicing and Sorting
Lecture 5: Pandas Missing Values
Lecture 6: Pandas Aggregation Functions
Chapter 5: Python for Data Visualization – Matplotlib
Lecture 1: Matplotlib Introduction
Lecture 2: Matplotlib Bar Graphs
Lecture 3: Matplotlib Histogram
Lecture 4: Matplotlib Scatter Plot
Lecture 5: Matplotlib Area Plot
Lecture 6: Matplotlib Pie Chart
Lecture 7: Matplotlib Subplots
Chapter 6: Supervised Machine Learning
Lecture 1: What is Supervised Machine Learning and Linear Regression Algorithm
Lecture 2: Implementation of Linear Regression
Lecture 3: Plot Linear Regression
Lecture 4: Implementation of Multi Linear Regression
Lecture 5: Example 2- Multilinear Regression
Lecture 6: Use Case- Boston Housing Price Prediction
Lecture 7: Save Model
Lecture 8: how to implement Logistic Regression
Lecture 9: Logistic Regression on Iris Flower Dataset
Lecture 10: Logistic Regression on Digits Dataset
Lecture 11: Naive Bayes Classifier
Lecture 12: Implementation of Naive Bayes classifier on Wine Dataset
Lecture 13: Introduction to Naive Bayes Classifier for Text Classification
Lecture 14: Implementating Naive Bayes Classifier for Text Classification
Lecture 15: Introduction to Decision Tree
Lecture 16: Implementation of Decision Tree
Lecture 17: K-Nearest Neighbor(KNN) Algorithm
Lecture 18: Implementation of K-Nearest Neighbor(KNN) Algorithm
Lecture 19: Support Vector Machine Algorithm
Lecture 20: Implementation of Support Vector Machine Algorithm
Lecture 21: Random Forest Algorithm
Lecture 22: Implementation of Random Forest Algorithm
Chapter 7: UnSupervised Machine Learning
Lecture 1: What is UnSupervised Machine Learning
Lecture 2: Types of Unsupervised Learning
Lecture 3: Advantages and Disadvantages of Unsupervised Learning
Lecture 4: What is clustering?
Lecture 5: K-means Clustering
Lecture 6: Implementing K-means Clustering
Lecture 7: Image compression using K-means clustering | Color Quantization using K-Means
Chapter 8: Reinforcement Learning
Lecture 1: Introduction to Reinforcement Learning
Lecture 2: Q-learning algorithm in machine learning
Chapter 9: Feature Engineering
Lecture 1: What is Feature Engineering
Lecture 2: What is Outlier
Lecture 3: outlier detection and removal using std deviation
Lecture 4: Z score
Lecture 5: IQR
Chapter 10: Project – Customer Segmentation using Clustering
Lecture 1: Customer Segmentation Part 1
Lecture 2: Customer Segmentation Part 2
Lecture 3: Customer segmentation 3
Lecture 4: Customer Segmentation Part 4
Chapter 11: Project – Fake News Detection using machine learning (Python)
Lecture 1: Fake News Detection using machine learning (Python)
Chapter 12: Project COVID-19: Coronavirus Infection Probability using machine learning
Lecture 1: Project COVID-19: Coronavirus Infection Probability using machine learning
Chapter 13: Miscellaneous
Lecture 1: Underfitting, Overfitting and best fitting in Machine Learning
Lecture 2: How to avoid Overfitting in Machine Learning
Lecture 3: Applications of Artificial Intelligence
Lecture 4: Teachable Machine
Chapter 14: Python Crash Course
Lecture 1: Python Basic Introduction
Lecture 2: Getting Started with Python
Lecture 3: Python Data Types-Numbers
Lecture 4: Python Data Types-Strings
Lecture 5: Python Data Types-Lists
Lecture 6: Python Data Types- Dictionary
Lecture 7: Python Data Types- Sets
Lecture 8: Python Loops
Lecture 9: Decision Making
Lecture 10: Control Statements
Lecture 11: Python Functions
Instructors

Goeduhub Technologies
Technical Training Provider Company.
Rating Distribution
Frequently Asked Questions
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