Skip to main content

Machine Learning with Python: Zero to GBMs | Jovian | Free Course

 

Machine Learning with Python: Zero to GBMs






Machine Learning with Python: Zero to GBMs

A beginner-friendly introduction to supervised machine learning, decision trees, and gradient boosting using Python and its ecosystem of ML libraries: scikit-learn, XGBoost, and LightGBM. Earn a verified certificate of accomplishment by completing practical assignments and building a real-world course project.

  • Watch hands-on coding-focused video tutorials
  • Practice coding with cloud Jupyter notebooks
  • Build an end-to-end real-world course project
  • Earn a verified certificate of accomplishment
  • Interact with a global community of learners

You will solve 2 coding assignments & build a course project where you'll train ML models using a large real-world dataset. Prerequisite: Data Analysis with Python: Zero to Pandas.

Lesson 1 - Linear Regression with Scikit Learn

  • Preparing data for machine learning
  • Linear regression with multiple features
  • Generating predictions and evaluating models

Lesson 2 - Logistic Regression for Classification

  • Downloading & processing Kaggle datasets
  • Training a logistic regression model
  • Model evaluation, prediction & persistence

Assignment 1 - Train Your First ML Model

  • Download and prepare a dataset for training
  • Train a linear regression model using sklearn
  • Make predictions and evaluate the model

Lesson 3 - Decision Trees and Hyperparameters

  • Downloading a real-world dataset
  • Preparing a dataset for training
  • Training & interpreting decision trees

Lesson 4 - Random Forests and Regularization

  • Training and interpreting random forests
  • Ensemble methods and random forests
  • Hyperparameter tuning and regularization

Assignment 2 - Decision Trees and Random Forests

  • Prepare a real-world dataset for training
  • Train decision tree and random forest
  • Tune hyperparameters and regularize

Lesson 5 - Gradient Boosting with XGBoost

  • Training and evaluating a XGBoost model
  • Data normalization and cross-validation
  • Hyperparameter tuning and regularization

Course Project - Real-World Machine Learning Model

  • Perform data cleaning & feature engineering
  • Training, compare & tune multiple models
  • Document and publish your work online

Lesson 6 - Unsupervised Learning and Recommendations

  • Clustering and dimensionality reduction
  • Collaborative filtering and recommendations
  • Other supervised learning algorithms

Certificate of Accomplishment

Earn a verified certificate of accomplishment (sample) for FREE by completing all weekly assignments and the course project. The certificate can be added to your LinkedIn profile, linked from your Resume, and downloaded as a PDF.

Comments

  1. In today’s world people are very much stucked in their personal works, same is happening with the students that’s why we have strated the services of the Computer Networking Assignment Help . Connect with us to avail this premium offer.

    ReplyDelete

Post a Comment

If you have any doubts, Please let me know

Popular posts from this blog

The Ultimate Guide to Pay-Per-Click (PPC) Advertising

  The Ultimate Guide to Pay-Per-Click (PPC) Advertising Introduction In the fast-paced digital marketing world, businesses strive to maximize their online presence and reach their target audiences effectively. One of the most potent tools in their arsenal is Pay-Per-Click (PPC) advertising. This advertising model has revolutionized how companies attract and engage potential customers. This comprehensive guide will delve deep into PPC advertising, exploring its benefits, strategies, and best practices to help you harness its power for your business. What is Pay-Per-Click (PPC) Advertising? PPC advertising is an online marketing model where advertisers pay a fee each time their ad is clicked. Essentially, it's a way of buying visits to your site rather than earning them organically. PPC ads are displayed on search engines, social media platforms, and websites, targeting specific keywords and demographics. The Mechanics of PPC Understanding the mechanics of PPC is crucial for creating...

Difference between loc() and iloc() in Pandas DataFrame

  Difference between loc() and iloc() in Pandas DataFrame Pandas library of python is very useful for the manipulation of mathematical data and is widely used in the field of machine learning. It comprises many methods for its proper functioning.  loc()  and  iloc()  are one of those methods. These are used in slicing data from the Pandas DataFrame. They help in the convenient selection of data from the DataFrame. They are used in filtering the data according to some conditions. The working of both of these methods is explained in the sample dataset of cars. loc()  :  loc()  is label-based data selecting method which means that we have to pass the name of the row or column which we want to select. This method includes the last element of the range passed in it, unlike  iloc() .  loc()   can accept the boolean data unlike  iloc()  .  iloc() :  iloc( )  is an indexed-based selecting method which means that we ...

Best digital marketing in Perth

Best digital marketing in Perth Introduction Your introduction into the brave new world of the digital space will be custom-tailored to your business needs requirements. You will be introduced to the crew who will be handling your project, from inception to the launch into the market. Assess It will be our job to not only know your customers but how they engage with the core products and  brand relationships . From here we break down what we research, to identify the core elements needed to engage the customer. Create It’s imperative that the design of your vessel is done right from the start. Its shape, level of focus, and attention to detail are crucial for a prosperous, lucrative, and extended journey. We will always present concepts and suggestions as per the requirement, but we truly believe this process should be a collaborative one between the creative crew of the PWD and the client. The final form will dictate its progression into the  development  and manufacturi...

What are Advertising Strategies?

  What are Advertising Strategies? Introduction In today's competitive market, businesses need to stand out to attract and retain customers. Advertising strategies are vital tools that help companies achieve this by creating awareness, generating interest, and driving sales. In this comprehensive guide, we will explore various advertising strategies, their importance, and how to implement them effectively. Understanding Advertising Strategies Advertising strategies are plans and methods used by businesses to promote their products or services. These strategies are designed to reach a target audience and persuade them to take specific actions, such as making a purchase or signing up for a service. An effective advertising strategy aligns with a company’s overall marketing goals and leverages various channels and techniques to achieve these objectives. Key Components of Advertising Strategies Market Research Understanding the Audience : Identifying the target audience is crucial. Thi...

Introduction to Transfer Learning

  Introduction to Transfer Learning We, humans, are very perfect in applying the transfer of knowledge between tasks. This means that whenever we encounter a new problem or a task, we recognize it and apply our relevant knowledge from our previous learning experiences. This makes our work easy and fast to finish. For instance, if you know how to ride a bicycle and if you are asked to ride a motorbike which you have never done before. In such a case, our experience with a bicycle will come into play and handle tasks like balancing the bike, steering, etc. This will make things easier compared to a complete beginner. Such leanings are very useful in real life as it makes us more perfect and allows us to earn more experience. Following the same approach, a term was introduced  Transfer Learning  in the field of machine learning. This approach involves the use of knowledge that was learned in some task, and apply it to solve the problem in the related target task. While most ...