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From 0 to 1- Machine Learning, NLP Python-Cut to the Chase

  • Development
  • Apr 29, 2025
SynopsisFrom 0 to 1: Machine Learning, NLP & Python-Cut to the Ch...
From 0 to 1- Machine Learning, NLP Python-Cut the Chase  No.1

From 0 to 1: Machine Learning, NLP & Python-Cut to the Chase, available at $59.99, has an average rating of 4.45, with 95 lectures, 27 quizzes, based on 903 reviews, and has 8754 subscribers.

You will learn about Identify situations that call for the use of Machine Learning Understand which type of Machine learning problem you are solving and choose the appropriate solution Use Machine Learning and Natural Language processing to solve problems like text classification, text summarization in Python This course is ideal for individuals who are Yep! Analytics professionals, modelers, big data professionals who havent had exposure to machine learning or Yep! Engineers who want to understand or learn machine learning and apply it to problems they are solving or Yep! Product managers who want to have intelligent conversations with data scientists and engineers about machine learning or Yep! Tech executives and investors who are interested in big data, machine learning or natural language processing or Yep! MBA graduates or business professionals who are looking to move to a heavily quantitative role It is particularly useful for Yep! Analytics professionals, modelers, big data professionals who havent had exposure to machine learning or Yep! Engineers who want to understand or learn machine learning and apply it to problems they are solving or Yep! Product managers who want to have intelligent conversations with data scientists and engineers about machine learning or Yep! Tech executives and investors who are interested in big data, machine learning or natural language processing or Yep! MBA graduates or business professionals who are looking to move to a heavily quantitative role .

Enroll now: From 0 to 1: Machine Learning, NLP & Python-Cut to the Chase

Summary

Title: From 0 to 1: Machine Learning, NLP & Python-Cut to the Chase

Price: $59.99

Average Rating: 4.45

Number of Lectures: 95

Number of Quizzes: 27

Number of Published Lectures: 94

Number of Published Quizzes: 27

Number of Curriculum Items: 122

Number of Published Curriculum Objects: 121

Original Price: $89.99

Quality Status: approved

Status: Live

What You Will Learn

  • Identify situations that call for the use of Machine Learning
  • Understand which type of Machine learning problem you are solving and choose the appropriate solution
  • Use Machine Learning and Natural Language processing to solve problems like text classification, text summarization in Python
  • Who Should Attend

  • Yep! Analytics professionals, modelers, big data professionals who havent had exposure to machine learning
  • Yep! Engineers who want to understand or learn machine learning and apply it to problems they are solving
  • Yep! Product managers who want to have intelligent conversations with data scientists and engineers about machine learning
  • Yep! Tech executives and investors who are interested in big data, machine learning or natural language processing
  • Yep! MBA graduates or business professionals who are looking to move to a heavily quantitative role
  • Target Audiences

  • Yep! Analytics professionals, modelers, big data professionals who havent had exposure to machine learning
  • Yep! Engineers who want to understand or learn machine learning and apply it to problems they are solving
  • Yep! Product managers who want to have intelligent conversations with data scientists and engineers about machine learning
  • Yep! Tech executives and investors who are interested in big data, machine learning or natural language processing
  • Yep! MBA graduates or business professionals who are looking to move to a heavily quantitative role
  • Prerequisites: No prerequisites, knowledge of some undergraduate level mathematics would help but is not mandatory. Working knowledge of Python would be helpful if you want to run the source code that is provided.

    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.

    This course is a down-to-earth, shy but confident take on machine learning techniques that you can put to work today

    Let’s parse that.

    The course is down-to-earth: it makes everything as simple as possible – but not simpler

    The course is shy but confident : It is authoritative, drawn from decades of practical experience -but shies away from needlessly complicating stuff.

    You can put ML to work today: If Machine Learning is a car, this car will have you driving today. It won’t tell you what the carburetor is.

    The course is very visual : most of the techniques are explained with the help of animations to help you understand better.

    This course is practical as well : There are hundreds of lines of source code with comments that can be used directly to implement natural language processing and machine learning for text summarization, text classification in Python.

    The course is also quirky. The examples are irreverent. Lots of little touches: repetition, zooming out so we remember the big picture, active learning with plenty of quizzes. There’s also a peppy soundtrack, and art – all shown by studies to improve cognition and recall.

    What’s Covered:

    Machine Learning:

    Supervised/Unsupervised learning, Classification, Clustering, Association Detection, Anomaly Detection, Dimensionality Reduction, Regression.

    Naive Bayes, K-nearest neighbours, Support Vector Machines, Artificial Neural Networks, K-means, Hierarchical clustering, Principal Components Analysis, Linear regression, Logistics regression, Random variables, Bayes theorem, Bias-variance tradeoff

    Natural Language Processing with Python:

    Corpora, stopwords, sentence and word parsing, auto-summarization, sentiment analysis (as a special case of classification), TF-IDF, Document Distance, Text summarization, Text classification with Naive Bayes and K-Nearest Neighbours and Clustering with K-Means

    Sentiment Analysis:?

    Why it’s useful, Approaches to solving – Rule-Based , ML-Based , Training , Feature Extraction, Sentiment Lexicons, Regular Expressions, Twitter API, Sentiment Analysis of Tweets with Python

    Mitigating Overfitting with Ensemble Learning:

    Decision trees and decision tree learning, Overfitting in decision trees, Techniques to mitigate overfitting (cross validation, regularization), Ensemble learning and Random forests

    Recommendations: ?Content based filtering, Collaborative filtering and Association Rules learning

    Get started with Deep learning:Apply?Multi-layer perceptrons to the MNIST?Digit recognition problem

    A Note on Python:The code-alongs in this class all use Python 2.7. Source code (with copious amounts of comments) is attached as a resource with all the code-alongs. The source code has been provided for both Python 2 and Python 3 wherever possible.

    Course Curriculum

    Chapter 1: Introduction

    Lecture 1: You, This Course and Us

    Lecture 2: Source Code and PDFs

    Lecture 3: A sneak peek at whats coming up

    Chapter 2: Jump right in : Machine learning for Spam detection

    Lecture 1: Solving problems with computers

    Lecture 2: Machine Learning: Why should you jump on the bandwagon?

    Lecture 3: Plunging In – Machine Learning Approaches to Spam Detection

    Lecture 4: Spam Detection with Machine Learning Continued

    Lecture 5: Get the Lay of the Land : Types of Machine Learning Problems

    Chapter 3: Solving Classification Problems

    Lecture 1: Solving Classification Problems

    Lecture 2: Random Variables

    Lecture 3: Bayes Theorem

    Lecture 4: Naive Bayes Classifier

    Lecture 5: Naive Bayes Classifier : An example

    Lecture 6: K-Nearest Neighbors

    Lecture 7: K-Nearest Neighbors : A few wrinkles

    Lecture 8: Support Vector Machines Introduced

    Lecture 9: Support Vector Machines : Maximum Margin Hyperplane and Kernel Trick

    Lecture 10: Artificial Neural Networks:Perceptrons Introduced

    Chapter 4: Clustering as a form of Unsupervised learning

    Lecture 1: Clustering : Introduction

    Lecture 2: Clustering : K-Means and DBSCAN

    Chapter 5: Association Detection

    Lecture 1: Association Rules Learning

    Chapter 6: Dimensionality Reduction

    Lecture 1: Dimensionality Reduction

    Lecture 2: Principal Component Analysis

    Chapter 7: Regression as a form of supervised learning

    Lecture 1: Regression Introduced : Linear and Logistic Regression

    Lecture 2: Bias Variance Trade-off

    Chapter 8: Natural Language Processing and Python

    Lecture 1: Applying ML to Natural Language Processing

    Lecture 2: Installing Python – Anaconda and Pip

    Lecture 3: Natural Language Processing with NLTK

    Lecture 4: Natural Language Processing with NLTK – See it in action

    Lecture 5: Web Scraping with BeautifulSoup

    Lecture 6: A Serious NLP Application : Text Auto Summarization using Python

    Lecture 7: Python Drill : Autosummarize News Articles I

    Lecture 8: Python Drill : Autosummarize News Articles II

    Lecture 9: Python Drill : Autosummarize News Articles III

    Lecture 10: Put it to work : News Article Classification using K-Nearest Neighbors

    Lecture 11: Put it to work : News Article Classification using Naive Bayes Classifier

    Lecture 12: Python Drill : Scraping News Websites

    Lecture 13: Python Drill : Feature Extraction with NLTK

    Lecture 14: Python Drill : Classification with KNN

    Lecture 15: Python Drill : Classification with Naive Bayes

    Lecture 16: Document Distance using TF-IDF

    Lecture 17: Put it to work : News Article Clustering with K-Means and TF-IDF

    Lecture 18: Python Drill : Clustering with K Means

    Chapter 9: Sentiment Analysis

    Lecture 1: Solve Sentiment Analysis using Machine Learning

    Lecture 2: Sentiment Analysis – Whats all the fuss about?

    Lecture 3: ML Solutions for Sentiment Analysis – the devil is in the details

    Lecture 4: Sentiment Lexicons ( with an introduction to WordNet and SentiWordNet)

    Lecture 5: Regular Expressions

    Lecture 6: Regular Expressions in Python

    Lecture 7: Put it to work : Twitter Sentiment Analysis

    Lecture 8: Twitter Sentiment Analysis – Work the API

    Lecture 9: Twitter Sentiment Analysis – Regular Expressions for Preprocessing

    Lecture 10: Twitter Sentiment Analysis – Naive Bayes, SVM and Sentiwordnet

    Chapter 10: Decision Trees

    Lecture 1: Using Tree Based Models for Classification

    Lecture 2: Planting the seed – What are Decision Trees?

    Lecture 3: Growing the Tree – Decision Tree Learning

    Lecture 4: Branching out – Information Gain

    Lecture 5: Decision Tree Algorithms

    Lecture 6: Titanic : Decision Trees predict Survival (Kaggle) – I

    Lecture 7: Titanic : Decision Trees predict Survival (Kaggle) – II

    Lecture 8: Titanic : Decision Trees predict Survival (Kaggle) – III

    Chapter 11: A Few Useful Things to Know About Overfitting

    Lecture 1: Overfitting – the bane of Machine Learning

    Lecture 2: Overfitting Continued

    Lecture 3: Cross Validation

    Lecture 4: Simplicity is a virtue – Regularization

    Lecture 5: The Wisdom of Crowds – Ensemble Learning

    Lecture 6: Ensemble Learning continued – Bagging, Boosting and Stacking

    Chapter 12: Random Forests

    Lecture 1: Random Forests – Much more than trees

    Lecture 2: Back on the Titanic – Cross Validation and Random Forests

    Chapter 13: Recommendation Systems

    Lecture 1: Solving Recommendation Problems

    Lecture 2: What do Amazon and Netflix have in common?

    Lecture 3: Recommendation Engines – A look inside

    Lecture 4: What are you made of? – Content-Based Filtering

    Lecture 5: With a little help from friends – Collaborative Filtering

    Lecture 6: A Neighbourhood Model for Collaborative Filtering

    Lecture 7: Top Picks for You! – Recommendations with Neighbourhood Models

    Lecture 8: Discover the Underlying Truth – Latent Factor Collaborative Filtering

    Lecture 9: Latent Factor Collaborative Filtering contd.

    Lecture 10: Gray Sheep and Shillings – Challenges with Collaborative Filtering

    Lecture 11: The Apriori Algorithm for Association Rules

    Chapter 14: Recommendation Systems in Python

    Lecture 1: Back to Basics : Numpy in Python

    Lecture 2: Back to Basics : Numpy and Scipy in Python

    Lecture 3: Movielens and Pandas

    Lecture 4: Code Along – Whats my favorite movie? – Data Analysis with Pandas

    Lecture 5: Code Along – Movie Recommendation with Nearest Neighbour CF

    Lecture 6: Code Along – Top Movie Picks (Nearest Neighbour CF)

    Instructors

  • From 0 to 1- Machine Learning, NLP Python-Cut the Chase  No.2
    Loony Corn
    An ex-Google, Stanford and Flipkart team
  • Rating Distribution

  • 1 stars: 30 votes
  • 2 stars: 36 votes
  • 3 stars: 136 votes
  • 4 stars: 282 votes
  • 5 stars: 419 votes
  • Frequently Asked Questions

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