Machine Learning Course – A Beginner's Guide
Machine Learning Course – A Beginner's Guide, available at $19.99, has an average rating of 4, with 161 lectures, 90 quizzes, based on 1 reviews, and has 16 subscribers.
You will learn about Understanding the basics of supervised and unsupervised learning Python libraries like Numpy, Pandas, etc. to analyze your data efficiently Linear Regression, Logistic Regression, and Decision Trees for building machine learning models Understand how to solve Classification and Regression problems using machine learning How to evaluate your machine learning models using the right evaluation metrics? Improve and enhance your machine learning model’s accuracy through feature engineering Projects covered – a) Customer Churn Prediction and b) NYC Taxi Trip Duration Prediction This course is ideal for individuals who are Beginners in Data Science It is particularly useful for Beginners in Data Science.
Enroll now: Machine Learning Course – A Beginner's Guide
Summary
Title: Machine Learning Course – A Beginner's Guide
Price: $19.99
Average Rating: 4
Number of Lectures: 161
Number of Quizzes: 90
Number of Published Lectures: 161
Number of Published Quizzes: 90
Number of Curriculum Items: 251
Number of Published Curriculum Objects: 251
Original Price: ₹1,199
Quality Status: approved
Status: Live
What You Will Learn
- Understanding the basics of supervised and unsupervised learning
- Python libraries like Numpy, Pandas, etc. to analyze your data efficiently
- Linear Regression, Logistic Regression, and Decision Trees for building machine learning models
- Understand how to solve Classification and Regression problems using machine learning
- How to evaluate your machine learning models using the right evaluation metrics?
- Improve and enhance your machine learning model’s accuracy through feature engineering
- Projects covered – a) Customer Churn Prediction and b) NYC Taxi Trip Duration Prediction
Who Should Attend
- Beginners in Data Science
Target Audiences
- Beginners in Data Science
Machine Learning is the science of teaching machines how to learn by themselves. Machine Learning is re-shaping and revolutionising the world and disrupting industries and job functions globally.
Machine learning is so extensive that you probably use it numerous times a day without even knowing it. From unlocking your mobile phones using your face to giving your attendance using a biometric machine, machine learning is being used in almost every stage.
In this age of machine learning, every aspiring data scientist is expected to up-skill themselves in machine learning techniques & tools and apply them in real-world business problems.
Machine Learning problems can be divided into 3 broad classes:
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Supervised Machine Learning
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Unsupervised Machine Learning
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Reinforcement Learning
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Supervised Machine Learning: When you have past data with outcomes (labels in machine learning terminology) and you want to predict the outcomes for the future – you would use Supervised Machine Learning algorithms. Supervised Machine Learning problems can again be divided into 2 kinds of problems:
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Classification Problems: When you want to classify outcomes into different classes. For example – whether a customer would default on their loan or not is a classification problem which is of high interest to any Bank
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Regression Problem: When you are interested in answering how much – these problems would fall under the Regression umbrella. For example – what is the expected amount of default from a customer is a Regression problem
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Unsupervised Machine Learning: There are times when you don’t want to exactly predict an Outcome. You just want to perform a segmentation or clustering. For example – a bank would want to have a segmentation of its customers to understand their behavior. This is an Unsupervised Machine Learning problem as we are not predicting any outcomes here.
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Reinforcement Learning: It is said to be the hope of true artificial intelligence. And it is rightly said so because the potential that Reinforcement Learning possesses is immense. It is a slightly complex topic as compared to traditional machine learning but an equally crucial one for the future.
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Course Curriculum
Chapter 1: Introduction to Data Science and Machine Learning
Lecture 1: Overview of the Course
Lecture 2: Introduction
Lecture 3: Common Terminology used in Data Science
Lecture 4: Applications of Data Science
Chapter 2: Setting up your system
Lecture 1: Installation steps for Windows
Lecture 2: Installation steps for Linux
Lecture 3: Installation steps for Mac
Chapter 3: Introduction to Python
Lecture 1: Introduction to Python
Lecture 2: Introduction to Jupyter Notebook
Chapter 4: Variables and Data Types
Lecture 1: Introduction to Variables
Lecture 2: Implementing Variables in Python
Chapter 5: Operators
Lecture 1: Introduction to Operators
Lecture 2: Implementing Operators in Python
Chapter 6: Conditional Statements
Lecture 1: Introduction to Conditional Statements
Lecture 2: Implementing Conditional Statements in Python
Chapter 7: Looping Constructs
Lecture 1: Introduction to Looping Constructs
Lecture 2: Implementing Loops in Python
Lecture 3: Break, Continue and Pass Statements
Chapter 8: Data Structures
Lecture 1: Introduction to Data structures
Lecture 2: List and Tuple
Lecture 3: Implementing List in Python
Lecture 4: List- Project in Python
Lecture 5: Implementing Tuple in Python
Lecture 6: Introduction to sets
Lecture 7: Implementing Sets in Python
Lecture 8: Introduction to Dictionary
Lecture 9: Implementing Dictionary in Python
Chapter 9: String Manipulation
Lecture 1: Introduction to String Manipulation
Chapter 10: Functions
Lecture 1: Introductions to Functions
Lecture 2: Implementing Function in Python
Lecture 3: Lambda Expression
Lecture 4: Recursion
Lecture 5: Implementing Recursion in Python
Chapter 11: Module, Packages and Standard Libraries
Lecture 1: Introduction to Modules
Lecture 2: Modules: Intuition
Lecture 3: Introduction to Packages
Lecture 4: Standard Libraries in Python
Lecture 5: Unser Defined Libraries in Python
Chapter 12: Handling Text Files in Python
Lecture 1: Handling Text Files in Python
Chapter 13: Introduction to Python Libraries in Python
Lecture 1: Important Libraries of Data Science
Chapter 14: Python Libraries for Data Science
Lecture 1: Basics of Numpy in Python
Lecture 2: Basics of Scipy in Python
Lecture 3: Basics of Pandas in Python
Lecture 4: Basics of Matplotlib in Python
Lecture 5: Basics of Scikit-Learn in Python
Lecture 6: Basics of Statsmodels in Python
Chapter 15: Reading Data Files in Python
Lecture 1: Reading Data in Python
Lecture 2: Reading CSV files in Python
Lecture 3: Reading Big CSV Files in Python
Lecture 4: Reading Excel & Spreadsheet files in Python
Lecture 5: Reading Excel & Spreadsheet files in Python
Lecture 6: Reading JSON files in Python
Chapter 16: Preprocessing, Subsetting and Modifying Pandas Dataframes
Lecture 1: Subsetting and Modifying Data in Python
Lecture 2: Overview of Subsetting in Pandas I
Lecture 3: Overview of Subsetting in Pandas II
Lecture 4: Subsetting based on Position
Lecture 5: Subsetting based on Label
Lecture 6: Subsetting based on Value
Lecture 7: Modifying data in Pandas
Chapter 17: Sorting and Aggregating Data in Pandas
Lecture 1: Preprocessing, Sorting and Aggregating Data
Lecture 2: Sorting the Dataframe
Instructors
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Analytics Vidhya
Data Science Community
Rating Distribution
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- 2 stars: 0 votes
- 3 stars: 0 votes
- 4 stars: 1 votes
- 5 stars: 0 votes
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