My name is Preetha, and I am a dedicated Python and Data Science Trainer with strong hands-on expertise in Python programming, Machine Learning, Web Development, and Backend Development. I have trained school students, engineering students, and working professionals who want to upgrade their skills — even those from non-technical backgrounds.
My sessions focus on clarity, hands-on coding, structured assignments, and doubt-solving support. I emphasize practical implementation, real-time datasets, and portfolio development. My goal is to make complex concepts simple, interactive, and career-oriented through real-time projects.
Classes are available in English and Tamil, online with flexible scheduling options. I am committed to helping learners build strong technical foundations and advance confidently in the field of Python and Data Science.
Course Summary
This course is designed to provide strong conceptual clarity combined with practical implementation using real-world datasets. Students will gain hands-on experience in Python programming, data analysis, data visualization, statistics, and machine learning algorithms. The program includes end-to-end projects to help learners build a strong portfolio and gain job-ready skills.
With step-by-step guidance, doubt-clearing sessions, assignments, and project support, this course ensures practical learning rather than just theoretical knowledge. Whether you are a student, job seeker, or working professional, this program will help you confidently start your journey in Data Science.
Course Curriculum
This comprehensive curriculum covers Python programming, data analysis, visualization, machine learning, and real-time projects to help learners build industry-ready skills through hands-on training.
Module 1: Python Programming Fundamentals
• Core Python
• Object-Oriented Programming
• NumPy, Pandas, and Matplotlib
• Data handling basics
Module 2: Data Analysis with Python
• Data cleaning
• Data wrangling
• Exploratory Data Analysis (EDA)
• Working with real-world datasets
Module 3: SQL for Data Handling
• Database concepts
• Writing SQL queries
• Working with MySQL
• Data extraction and transformation
Module 4: Data Visualization with Python
• Data storytelling
• Creating charts using Matplotlib
• Advanced visualizations with Seaborn
Module 5: Data Visualization with BI Tools
• Dashboard creation using Microsoft Power BI
• Reporting with Tableau
• Building interactive business dashboards
Module 6: Machine Learning Fundamentals
• Introduction to Machine Learning concepts
• Types of Machine Learning
• Model evaluation techniques
Module 7: Supervised Learning Algorithms
• Linear Regression
• Logistic Regression
• Decision Trees
• Model training and evaluation using Scikit-learn
Module 8: Unsupervised Learning
• Clustering
• Dimensionality reduction
• Practical implementation
Module 9: Statistics & EDA
• Statistical foundations for data science
• Hypothesis testing basics
• Probability concepts
• Feature engineering
Module 10: Real-Time Projects
• End-to-end data science projects
• Model deployment basics
• Portfolio development
• Industry use-case simulations
Outcome: Upon completion, students will be able to confidently analyze real-world datasets, build and evaluate machine learning models, create interactive dashboards, and build job-ready portfolio projects.
Who Can Join?
College Students
Job Seekers
Working Professionals
Career Switchers
Benefits - What Students Will Gain?
Strong Python & Data Science foundation
Hands-on practical training
Real-time datasets
Industry-oriented projects
Resume guidance
Interview preparation support