Machine Learning - Decision Trees and Random Forests
Indian : Rs.1380 International : $21
Learn Intuitive Machine Learning Techniques by Exploring a Classic Problem.
In an age of decision fatigue and information overload, this “Machine Learning: Decision Trees & Random Forests” course is a crisp yet thorough primer on two great Machine Learning techniques that help cut through the noise: decision trees and random forests. Supplemental Material included!
This Machine Learning: Decision Trees & Random Forests online course will teach you cool machine learning techniques to predict survival probabilities aboard the Titanic – a Kaggle problem!
Design and Implement the solution to a famous problem in machine learning: predicting survival probabilities aboard the Titanic. Understand the perils of overfitting, and how random forests help overcome this risk. Identify the use-cases for Decision Trees as well as Random Forests.
No prerequisites required, but knowledge of some undergraduate level mathematics would help, but is not mandatory. Working knowledge of Python would be helpful if you want to perform the coding exercise and understand the provided source code.
Taught by a Stanford-educated, ex-Googler and an IIT, IIM – educated ex-Flipkart lead analyst. This team has decades of practical experience in quant trading, analytics and e-commerce.
Python Activity: Surviving aboard the Titanic! Build a decision tree to predict the survival of a passenger on the Titanic. This is a challenge posed by Kaggle (a competitive online data science community). We’ll start off by exploring the data and transforming the data into feature vectors that can be fed to a Decision Tree Classifier.
Chapter I: Decision Fatigue & Decision Trees
Lesson I: Introduction: You, This Course & Us!
Lesson II: Planting the seed: What are Decision Trees?
Lesson III: Growing the Tree: Decision Tree Learning
Lesson IV: Branching out: Information Gain
Lesson V: Decision Tree Algorithms
Lesson VI: Installing Python: Anaconda & PIP
Lesson VII: Back to Basics: Numpy in Python
Lesson VIII: Back to Basics: Numpy & Scipy in Python
Lesson IX: Titanic: Decision Trees predict Survival (Kaggle) – I
Lesson X: Titanic: Decision Trees predict Survival (Kaggle) – II
Lesson XI: Titanic: Decision Trees predict Survival (Kaggle) – III
Chapter II: A Few Useful Things to Know about Overfitting
Lesson I: Overfitting: The Bane of Machine Learning
Lesson II: Back on the Titanic: Cross Validation & Random Forests
4 hrs 50 min
Janani Ravi, Vitthal Srinivasan, Swetha Kolalapudi, and Navdeep Singh have honed their tech expertise at Google and Flipkart. Together, they have created dozens of training courses and are excited to be sharing their content with eager students. The team believes it has distilled the instruction of complicated tech concepts into enjoyable, practical, and engaging courses.
Janani: 7 years at Google (New York, Singapore); Studied at Stanford; also worked at Flipkart and Microsoft
Vitthal: Also Google (Singapore) and studied at Stanford; Flipkart, Credit Suisse and INSEAD too
Swetha: Early Flipkart employee, IIM Ahmedabad and IIT Madras alum
Navdeep: Longtime Flipkart employee too, and IIT Guwahati alum
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