Data Science & Machine Learning Course by Ajai Krishna

DurationDuration:3 months

Batch TypeBatch Type:Weekend and Weekdays

LanguagesLanguages:English, Hindi, Tamil, Malayalam

Class TypeClass Type:Online and Offline

Class TypeAddress:Sarjapura, Bangalore

Class Type Course Fee:

₹25,000.00Full Course

Course Content

The Data Science & Machine Learning Mastery Course is a comprehensive, three-month program designed to equip students and professionals with the skills needed to analyze data, build machine learning models, and develop deep learning applications. The course combines hands-on programming, statistical analysis, data visualization, and advanced AI techniques to provide a complete learning experience.

This program is ideal for beginners, intermediate learners, and professionals who want to enter the growing field of data science and machine learning. By the end of the course, learners will gain practical experience in Python programming, data manipulation, statistical modeling, machine learning algorithms, and real-world project development. Both online and offline modes ensure flexibility for learners across locations.


What Students Will Learn

Month 1: Python & Data Fundamentals

Week 1: Python Basics

  • Introduction to Python

  • Variables, Data Types

  • Operators

  • Conditional Statements

  • Loops

  • Functions

Week 2: Data Structures

  • Lists, Tuples, Sets

  • Dictionaries

  • String Handling

  • File Handling

  • Basic Problem Solving

Week 3: NumPy & Pandas

  • Introduction to NumPy

  • Arrays and Operations

  • Introduction to Pandas

  • Series and DataFrames

  • Data Cleaning

Week 4: Data Visualization & EDA

  • Matplotlib

  • Seaborn

  • Exploratory Data Analysis (EDA)

  • Handling Missing Data

  • Mini Project (Data Analysis)


Month 2: Statistics & Machine Learning

Week 5: Statistics for Data Science

  • Mean, Median, Mode

  • Variance & Standard Deviation

  • Probability Basics

  • Correlation

  • Distributions

Week 6: Data Preprocessing

  • Feature Engineering

  • Encoding Categorical Data

  • Scaling & Normalization

  • Train-Test Split

Week 7: Supervised Learning

  • Linear Regression

  • Logistic Regression

  • K-Nearest Neighbors

  • Model Evaluation Metrics

Week 8: Advanced Supervised Models

  • Decision Trees

  • Random Forest

  • Support Vector Machine

  • Mini ML Project


Month 3: Advanced Topics & Projects

Week 9: Unsupervised Learning

  • K-Means Clustering

  • Hierarchical Clustering

  • PCA (Dimensionality Reduction)

Week 10: Introduction to Deep Learning

  • Neural Network Basics

  • ANN Concept

  • Introduction to TensorFlow/Keras

Week 11: Real-World Applications

  • End-to-End ML Workflow

  • Deployment Basics

  • Working with Real Datasets

Week 12: Capstone Project

  • Problem Statement Selection

  • Data Collection & Cleaning

  • Model Building

  • Final Presentation

Teaching Method

The course is offered in online and offline modes, with an emphasis on interactive and hands-on learning. The teaching approach includes:

• Step-by-step Python programming and ML concept explanation
• Practical exercises, coding demonstrations, and real datasets
• Guided mini projects and capstone project for hands-on experience
• Interactive Q&A sessions and personalized support
• Exposure to industry-relevant tools and frameworks

Students gain both conceptual understanding and practical implementation skills to handle real-world data science challenges.

Why This Course

This course provides a structured learning pathway from beginner to advanced topics, combining Python programming, data analysis, machine learning, and deep learning. The inclusion of mini projects and a capstone ensures practical experience, while both online and offline modes provide flexibility. The curriculum is designed to help learners confidently apply data science skills in academic, professional, or research settings.

Benefits and Outcomes

By completing this course, students will:

• Master Python programming for data analysis and machine learning
• Develop expertise in data cleaning, visualization, and preprocessing
• Understand supervised and unsupervised machine learning algorithms
• Gain foundational knowledge in deep learning frameworks such as TensorFlow and Keras
• Build a portfolio with mini projects and a capstone project
• Enhance problem-solving, analytical, and data-driven decision-making skills
• Prepare for careers in data science, AI, and machine learning

This course provides a complete, hands-on learning experience for anyone looking to excel in the field of data science and machine learning.

Skills

K-means Clustering, Ml Dl Algorithms, Logistic Regression, Python for Ml and Data Analysis, Python Basics, Numpy, Pandas and Matplotlib, Machine Learning, Deep Learning, Supervised Learning, Deep Learning Frameworks (tensorflow, Pytorch, Keras), Data Science, Data Visualization, Data Cleaning, Python Programming, Python for Data Science

Tutor

Ajai Krishna Profile Pic
Ajai Krishna

I am a Data Science professional with experience in Python, data analysis, and machine learning. I have worked with real-world datasets and practical projects, which helps me teach concepts in a cl...

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2 Years Experience

Akshay Plaza ,Sarjapura

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