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Master Machine Learning with Projects Hands-On

Our course is designed to get master in machine learning from foundational concepts to advanced techniques through a series of hands-on projects.

Meet Your Instructor

Mr. Saurabh Singh

Technical Trainer | Expertise in AI, ML & Data Science

₹ 1599.00

₹ 1999.00

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1 June 2026

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5 Weeks

What will I learn here?

Our course is designed to teach machine learning from foundational concepts to advanced techniques through a series of hands-on projects. By the end of this course, students will be proficient in using machine learning algorithms to solve real-world problems and capable of applying ML models in various domains. 


Course Objectives: 

● Understand the fundamentals of machine learning. 

● Implement and evaluate machine learning algorithms. 

● Develop problem-solving skills using ML techniques. 

● Work with datasets, from preprocessing to modeling. 

● Implement machine learning models in real-world applications.

    • Gain expertise in Machine Learning using Python  programming languages.

    • Make accurate predictions and perform powerful data analysis for real-world applications.

    • Build robust and scalable Machine Learning models for both business and personal use.

    • Apply ML techniques to drive business value and create intelligent automation.

    • Learn how to choose the right ML model for different types of problems and datasets.

    • Combine multiple ML models using ensemble methods to solve complex challenges effectively.

  • Module 1: Python Overview

    ● Role of Python in Machine Learning

    ● Data Types, Operators, Conditional Statements, Loops

    ● Data Structures in Python: Lists, Dictionaries, Tuples, Sets

    ● Functions and Modules

    ● File Handling: Reading and Writing Files


    Module 2: Introduction to Machine Learning

    ● Introduction to Machine Learning and its Applications

    ● Types of Machine Learning: Supervised, Unsupervised

    ● Overview of Machine Learning Workflow

    ● Setting Up ML Environment (Python, Jupyter Notebooks, ML Libraries)

    ● Introduction to Python Libraries for Machine Learning (NumPy, Pandas, Matplotlib, Seaborn, Scikit-learn)


    Module 3: Data Wrangling

    ● Introduction to Series & DataFrames

    ● Handling Missing Values and Outliers

    ● Data Visualization & Charts

    ● Categorical Data Encoding: One-Hot Encoding, Label Encoding

    ● Feature Scaling: Normalization vs Standardization

    ● Feature Selection and Dimensionality Reduction

    ● Data Splitting

    ● Projects:

            Analysis of Titanic Dataset


    Module 4: Introduction to ML Linear Algorithms.

    ● Linear Regression

    ● Simple and Multiple Linear Regression

    ● Evaluation Metrics: MSE, RMSE, R²

    ● Regularization techniques

    ● Logistic Regression

    ● Binary Classification

    ● Sigmoid Function

    ● Evaluation Metrics: Accuracy, Precision, Recall, F1 Score, Confusion matrix, AUC

    ● Projects: 

            House Price Prediction using Linear Regression

            Heart Disease Prediction using Logistic Regression


    Module 5: Core Classification and Ensemble Algorithms

    ● Decision Trees

    ● Random Forest

    ● k-Nearest Neighbors (KNN)

    ● Support Vector Machines (SVM)

    ● Naive Bayes

    ● Projects:

            Breast Cancer Prediction - Analyzing and finding the best model by comparing.


    Module 6: Model Evaluation and Tuning

    ● Cross-Validation and Train-Test Split

    ● Bias-Variance Tradeoff

    ● Hyperparameter Tuning using Grid Search and Random Search

    ● Model Overfitting and Underfitting

    ● Imbalanced datasets


    Module 7: Clustering and Unsupervised Learning

    ● Introduction to Clustering

    ● K-Means Clustering

    ● Hierarchical Clustering

    ● DBSCAN

    ● Dimensionality Reduction using t-SNE

    ● Evaluation Metrics for Unsupervised Learning

    ● Projects:

            Customer Segmentation


    Module 8: Capstone Project - Hand Digit Image Classification

    ● End-to-End Machine Learning Project

    ● Problem Definition

    ● Data Exploration and Preprocessing

    ● Model Selection, Training, and Evaluation

    ● Hyperparameter Tuning

    ● Model Deployment - Joblib, Pickle


    Projects Covered

    ● Analysis of Titanic Dataset

    ● House Price Prediction using Linear Regression

    ● Heart Disease Prediction using Logistic Regression

    ● Breast Cancer Prediction

    ● Customer Segmentation

    ● Hand Digit Image Classification

Get Certified

Yes! You will be certified for this course on completion of the workshop.

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Official & Verified, Signed by the Instructor

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Share Easily- Add to Resume or Linkedin

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Use your certificate to stay ahead in Career Shift

Live Training Benefits

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Doubt sessions

Live Q&A sessions to clarify all your queries instantly

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Hands on Projects

Practical learning through real world project implementation

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Course Completion

Practical learning through real world project implementation

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Recorded Sessions

Practical learning through real world project implementation

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1:1 Mentor

Practical learning through real world project implementation

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Structured Curriculum

Practical learning through real world project implementation

Bonus Learning Perks

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Github Profile

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LinkedIn Profile

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Resume Writing

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Soft Skills

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Mock Interview

TESTIMONIALS

See what our Learners have to say

Mohith Reddy

Internet of Things

I am very happy to learn from a wonderful platform, thank you for your quality teaching. - Solleti Venkata Vigna Mohith

Kartik yadav

electronic device and circuit

A good platform for creative and curious minds interested in the field of electronics. Platform offers an extremely well-curated list of courses and modules couldn't be more satisfied!!

Aditi Kulshrestha

Internet of Things

My experience was good at Nation Innovation. Teaching was extremely good and I learned a lot.
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