Skip to content
EdindxEdindx
  • Courses
      • Data Engineering and Analytics
      • Microsoft Dynamics 365
      • Animation Tools
      • Network and Security
      • Professional Development
      • Marketing
      • Graphic Design
      • Sales
      • Oracle Cloud
      • Communication Skills
      • IT Trending Courses
      • Cyber Security
      • Full Stack Engineer
      • E-Commerce
      • Data Engineering and Analytics
      • Programming
  • Career Path
  • Instructor Registration
Login/Register
EdindxEdindx
  • Courses
      • Data Engineering and Analytics
      • Microsoft Dynamics 365
      • Animation Tools
      • Network and Security
      • Professional Development
      • Marketing
      • Graphic Design
      • Sales
      • Oracle Cloud
      • Communication Skills
      • IT Trending Courses
      • Cyber Security
      • Full Stack Engineer
      • E-Commerce
      • Data Engineering and Analytics
      • Programming
  • Career Path
  • Instructor Registration
Home » Courses » Machine Learning with Scikit-learn

Machine Learning with Scikit-learn

  • By Rajiv Pujala
  • (0 Rating)
Breadcrumb Abstract Shape
Breadcrumb Abstract Shape
Breadcrumb Abstract Shape
  • Course Info
  • Instructor
  • Reviews
  • More
    • Your Hands-On Guide to Building Intelligent Systems & Real-World AI Solutions

      • Implement key machine learning algorithms on real-world data for practical insights.

        This course is overall structured with muliple projects and recap sessions which helps you to get how ML is being used.

        By the end of this course, you’ll be profoundly comfortable with Machine Learning and Deep Learning concepts, equipped with the confidence and practical skills to start applying for jobs in the rapidly expanding AI field. You’ll not only understand the theory but also how to implement and optimize models, making you a valuable asset in any data-driven team. This journey will transform your understanding of AI into tangible, employable skills.

      Show More

      Requirements

      • A computer with a stable internet connection. All lectures and materials are delivered online, and you will need to download software and datasets.
      • Basic computer skills. You should be comfortable with tasks like downloading and installing software, creating folders, and navigating your operating system (Windows, macOS, or Linux).
      • High school level mathematics. A basic understanding of algebra and concepts like variables and functions will be very helpful, but we will review key mathematical concepts as needed.
      • No prior programming experience is required! The course is designed to take you from the fundamentals of Python all the way to advanced AI topics. A strong desire to learn is the most important prerequisite.

      Audience

      • Aspiring Data Scientists & AI Specialists: If you're looking to start a career in the exciting field of AI but don't know where to begin, this course provides the complete roadmap.
      • Programmers & Developers: If you already know another programming language, this course will get you up to speed with Python and show you how to apply your skills to the domains of Machine Learning and Deep Learning.
      • Students & Academics: This course will help you bridge the gap between theoretical knowledge and practical, hands-on application by working on real-world projects.

      Course Content

      Python for Applied Machine Learning – Getting Started & EDA

      • Import ML Libraries
        19:38
      • Exploratory Data Analysis (EDA) – Part 1
        17:01
      • Exploratory Data Analysis (EDA) – Part 2
        12:53
      • Split Data
        10:57
      • Develop ML Models and check accuracy score
        10:47
      • Classification Report
        06:49
      • Accuracy precision recall and f1
        02:14
      • Recap
        15:46
      • Confusion Matrix
        06:47
      • Glimpses of hyperparameter training estimators
        05:14
      • Save and load the model
        04:08
      • LinearSVC
        08:14
      • NeighborsClassifier
        06:20
      • Run multiple models using Functions
        11:47
      • Run multiple models using Parallel
        10:09
      • Cross Validation Score
        13:19
      • Predict vs Predict Proba
        04:37
      • ROC Curve
        15:22
      • Cross tab
        01:59
      • Correlation Analysis
        05:30
      • Feature Importance
        10:35
      • Hyperparameter tuning – Randomized SearchCV
        15:07
      • Hyperparameter tuning – GridSearchCV
        08:19
      • Classification Project – Heart Disease dataset
        32:25
      • Regressor – Train our model Part – 1
        14:22
      • Regressor – Train our model Part – 2
        11:55
      • Regressor – Recap
        10:55
      • Fill missing values using Pandas
        20:41
      • Fill missing values using scikit-learn libraries
        21:47
      • Regression Project – California Housing dataset
        25:26

      Tags

      • Machine Learning

      A course by

      Rajiv Pujala
      Rajiv Pujala
      Data Scientist

      Student Ratings & Reviews

      No Review Yet
      No Review Yet

      Course Includes:

      • Price:
        ₹499.00 ₹799.00
      • Instructor:Rajiv Pujala
      • Duration: 6 hours
      • Lessons:30
      • Students:0
      • Level:Intermediate
      ₹499.00 ₹799.00
      Wishlist

      Share On:

      Edindx-5

      Email: info@edindx.com

      Online Platform

      Links

      • News & Articles

      Contacts

      Enter your email address to register to our newsletter subscription

      • Privacy Policy
      • Terms & Conditions
      Facebook Instagram Youtube Linkedin
      Copyright 2026 Edindx All Rights Reserved
      EdindxEdindx
      Sign inSign up

      Sign in

      Don’t have an account? Sign up
      Lost your password?

      Sign up

      Already have an account? Sign in
      Hi, Welcome back!
      Forgot Password?
      Don't have an account?  Register Now