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Machine Learning With Polars

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Joram Mutenge

2:28:49

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  • 1 - A brief Introduction to Machine Learning.mp4
    10:10
  • 1 - code-and-data.zip
  • 2 - Loading data.mp4
    02:18
  • 3 - Descriptive statistics and plots.mp4
    06:08
  • 4 - Cleaning columns Ram Weight.mp4
    03:41
  • 5 - Cleaning column Memory.mp4
    15:32
  • 6 - Cleaning column Memory part II.mp4
    07:00
  • 7 - Cleaning column Screen Resolution.mp4
    12:32
  • 8 - Cleaning column CPU.mp4
    07:47
  • 9 - Cleaning column GPU.mp4
    03:28
  • 10 - Cleaning column Operating System.mp4
    03:49
  • 11 - Creating column Clock Speed.mp4
    02:30
  • 12 - Selecting columns to use.mp4
    04:16
  • 13 - Standardizing numeric values.mp4
    03:49
  • 14 - OneHotEncoding categorical columns.mp4
    04:31
  • 15 - Data partitioning.mp4
    03:37
  • 16 - Model building Dummy Regressor.mp4
    02:57
  • 17 - Model building Linear Regression.mp4
    01:31
  • 18 - Model building Decision Tree.mp4
    02:27
  • 19 - Model building Catboost.mp4
    05:31
  • 20 - Model building Random Forest.mp4
    02:04
  • 21 - Model Evaluation Rsquared.mp4
    02:08
  • 22 - Model Evaluation MSE.mp4
    02:31
  • 23 - Model Evaluation MAE.mp4
    02:06
  • 24 - Model Evaluation Residual plot.mp4
    05:07
  • 25 - Hyperparameter tuning Regression.mp4
    06:21
  • 26 - Hyperparameter tuning Decision Tree.mp4
    06:27
  • 27 - Hyperparameter tuning Catboost.mp4
    05:02
  • 28 - Hyperparameter tuning GridSearchCV.mp4
    04:33
  • 29 - EndtoEnd Notebook.mp4
    01:42
  • 30 - Model deployment MLFlow.mp4
    07:14
  • Description


    Master the Essentials of Modern Machine Learning

    What You'll Learn?


    • Explore the fundamentals of an end-to-end machine learning application.
    • Carry out basic data cleaning and pre-processing in Python with Polars.
    • Build a pipeline to train machine learning models.
    • Implement regression, ensemble, and gradient-boosted models
    • Deploy a machine learning model using MLFlow.

    Who is this for?


  • Professionals with tabular data in spreadsheets or databases seeking to make predictions from it.
  • Students interested in learning the fundamentals of applied machine learning.
  • Students and professionals seeking to learn the implementation of regression, ensemble, and gradient-boosted models.
  • Data professionals interested in learning how to deploy a model into production.
  • What You Need to Know?


  • Very basic Python programming knowledge.
  • Familiarity with running code in Jupyter notebooks.
  • More details


    Description

    Machine learning (ML) and AI are the key drivers of innovation today. Understanding how these models work can help you apply ML techniques effectively.

    In this course, expert instructor Joram Mutenge shows you how to master machine learning essentials by leveraging Python and the high-performance Polars library for advanced data manipulation.

    You will build an end-to-end machine learning application to predict laptop prices. Building this ML application will help you gain hands-on experience in data exploration, data processing, model creation, model evaluation, model tuning, and model deployment with MLFlow.


    Learn from a Data Science Practioner

    Joram has a master’s degree in Data Science from the University of Illinois Urbana-Champaign, and currently works in data at a manufacturing company building demand forecasting models. He has years of experience building and deploying machine learning models. In this course, he shares the lessons he has learned along the way.


    Making the most of this course

    The modules in this course build on top of each other. Learn by following the order in which these modules are presented. This will help you understand the material better. To further cement the understanding, type out the code and run it on your computer instead of passively watching. Finally, apply the knowledge learned to your own dataset.

    Who this course is for:

    • Professionals with tabular data in spreadsheets or databases seeking to make predictions from it.
    • Students interested in learning the fundamentals of applied machine learning.
    • Students and professionals seeking to learn the implementation of regression, ensemble, and gradient-boosted models.
    • Data professionals interested in learning how to deploy a model into production.

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    Joram Mutenge
    Joram Mutenge
    Instructor's Courses
    I earned my master's degree in data science from the University of Illinois at Urbana-Champaign.Currently, I work as a Data Scientist in the Manufacturing Industry working on demand forecasting models.I also create tutorial videos on YouTube on data analysis and data science topic. Additionally, I perform data analysis work for prominent YouTube channels to help them better understand their analytics and drive data-driven business decisions.
    Students take courses primarily to improve job-related skills.Some courses generate credit toward technical certification. Udemy has made a special effort to attract corporate trainers seeking to create coursework for employees of their company.
    • language english
    • Training sessions 30
    • duration 2:28:49
    • Release Date 2025/01/24