top of page

Summer SALE: Get 10% OFF | Min Order Rs.999/-

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

calendar.png

6 July 2026

clock.png

5 Weeks

About Program

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.

check.png

Official & Verified, Signed by the Instructor

share.png

Share Easily- Add to Resume or Linkedin

career-opportunity (1).png

Use your certificate to stay ahead in Career Shift

Live Training Highlights

certificate (3).png

Certificate

Certificate course in collaboration with NSDC,DPIIT

id-card.png

Internship

Opportunity to intern overseas

support.png

24 x 7 Support

Training with 24x7 mentor support

mentorship.png

Mentoring & Doubt session

Personalized 1:1 mentoring

flexible.png

Schedule

Flexible course schedule

wages.png

Salary

Assured 6 digit salary association with industry partners

webinar (2).png

LMS & RecordingAccess

Free access to Learning Resource Portal and Recordings

idea.png

Live Projects

Engage in 3+ live projects and live case studies

job-offer.png

100% Placement Support

Assistance by Industry Experts

practice.png

Tools Access

Access to industry leading tools

Bonus Learning Perks

github (2).png

Github Profile

linkedin (1).png

LinkedIn Profile

resume (3).png

Resume Writing

abilities (1).png

Soft Skills

job-interview (1).png

Mock Interview

Learning Roadmap

10780075_19197511.jpg

STEP

1

Building Strong Foundation

Build strong fundemental from scratch by experts

STEP

2

Internship Learning

Gain hands-on experience working on 3+ live projects

STEP

3

Placement Supports

Counselling of each candidate and building confidence, helping with resume building to get right career opportunity

TESTIMONIALS

See what our Learners have to say

linkedin (1).png

Ashwini Ranade

National Institute of Hydrology (NIH)

Placed at:

Data Science

average rating is 5 out of 5

Nice and well-organized course. - Ashwini Ranade

linkedin (1).png

Manisha Kumari

CISCO

Placed at:

Python Programming Internship

average rating is 5 out of 5

I recently completed my Python Programming Internship at Nation Innovation, and it was a highly enriching experience that strengthened my Python skills, coding confidence, and industry readiness through practical learning and supportive mentorship.

linkedin (1).png

Deepak Chaudhary

BlockDeep Labs

Placed at:

Internet of Things

average rating is 5 out of 5

Overall good. - Deepak chaudhary

bottom of page