Data Science
- Sehrish Khan(Trainer)
- 300+ (Graduates)
- Reviews
Learn how to collect, analyze, and visualize data to make smarter decisions. This course covers the fundamentals of data analysis, statistics, Python programming, and machine learning. Perfect for beginners and professionals who want to build a career in data-driven industries.

Rs. 30,000
- Course Duration: 3 Months
- Live Lectures
- 24/7 Support
- Lifetime Access
- Certificate of Completion
- 15 Days Refund Policy
DUS AI – Details & Registration
Data Science Training
- This course is designed to equip you with practical Data Science skills using tools like Python, Pandas, NumPy, and Matplotlib. You'll learn how to analyze large datasets, build data-driven strategies, and even offer services on freelancing platforms or create your own data-based products.
- In today’s data-driven world, Data Science is one of the most in-demand and future-ready careers. DUS Skills provides expert-led, career-focused training that prepares learners to succeed in the modern job market with real-world projects and support.
Module 1: Introduction to Data Science
What is Data Science?
Role of a Data Scientist
Data Science Workflow
Data Types (Structured, Unstructured)
Difference: Data Science vs Data Analytics vs Machine Learning vs AI
Real-World Applications
Module 2: Python for Data Science
2.1 Python Basics
Python Installation (Anaconda / Jupyter Notebook)
Variables & Data Types
Lists, Tuples, Dictionaries
Loops & Conditions
Functions
2.2 Python for Data Handling
Importing Datasets
Working with CSV, Excel, JSON
Basic File Handling
2.3 Libraries
NumPy (Arrays, Operations)
Pandas (Data Cleaning, Filtering, Grouping)
Matplotlib (Visual Plots)
Seaborn (Advanced Visualization)
Module 3: Data Cleaning & Preprocessing
Handling Missing Values (Techniques)
Data Formatting & Normalization
Outlier Detection
Encoding Categorical Variables
Scaling Techniques (MinMax, StandardScaler)
Basics of Feature Selection
Module 4:Exploratory Data Analysis (EDA)
Understanding Dataset Structure
Numerical vs Categorical Data Analysis
Correlation Analysis
Pair Plots & Heatmaps
Summary Statistics
Pattern Detection & Insights
Module 5: SQL for Data Science
Introduction to Databases
SELECT, WHERE, ORDER BY, GROUP BY
Joins (Inner, Left, Right, Full)
Subqueries
Aggregations
SQL Project: Business Data Analysis
Module 6: Data Visualization Tools
Power BI / Tableau
Connecting Datasets
Data Modeling
Creating Dashboards
Charts, Graphs, KPI Cards
Filters & Slicers
Publishing Dashboards
Module 7: Statistics for Data Science
Mean, Median, Mode
Standard Deviation & Variance
Probability Basics
Probability Distributions
Sampling Techniques
Hypothesis Testing (t-test, Chi-Square)
Correlation vs Causation
Module 8: Machine Learning (Beginner to Intermediate)
8.1 Supervised Learning
Linear Regression
Logistic Regression
Decision Trees
Random Forest
Gradient Boosting
Naive Bayes
KNN
8.2 Unsupervised Learning
K-Means Clustering
Hierarchical Clustering
PCA (Dimensionality Reduction)
8.3 Model Training Concepts
Training vs Testing Data
Overfitting & Underfitting
Cross-Validation
Accuracy, Precision, Recall, F1-Score
Confusion Matrix
Module 9: Deep Learning (Optional Advanced Module)
Introduction to Neural Networks
Perceptron Model
TensorFlow / Keras Basics
Image Classification Introduction (CNN)
Text Classification Introduction (RNN)
Module 10: Data Science with AI Tools
- ChatGPT for data analysis
- AI code generation
- Automated EDA tools
Module 11: Big Data Introduction
- What is Big Data?
- Hadoop ecosystem basics
- Spark overview
- Cloud platforms (AWS/GCP/Azure) basics
Module 12: Capstone Projects (Real World)
Students complete 3–5 practical projects, such as:
Sales Data Analysis Dashboard
Customer Churn Prediction
House Price Prediction (Regression)
Market Segmentation (Clustering)
Social Media Sentiment Analysis
E-Commerce Data Insights Dashboard
Module 13: Freelancing & Career Development
Fiverr Gigs for Data Science
Upwork Profile Optimization
Portfolio Building
Resume & LinkedIn Optimization
Interview Preparation (MCQs + Coding Tasks)
This course uses industry-standard tools including Python, Jupyter Notebook, Anaconda, NumPy, Pandas, Matplotlib, and Scikit-learn to build and test machine learning models in real-world scenarios.
- Free Access to AI Tools List & Resources
- Downloadable Project Files & Code Templates
- Freelancing Guide for Data Science & ML Services
- Mini Course: Data Visualization with Python
- Portfolio-Building Tips & Templates
- Exclusive Certificate with DUS Skills Branding
- 1-on-1 Mentorship Session (Limited Slots)
- Access to Private Learners' Community
- Free Future Course Updates