Master In-Demand Data Science Skills with Hands-on Projects
Duration:3 months
Batch Type:Weekend and Weekdays
Languages:English, Hindi, Telugu
Class Type:Online and Offline
Address:Karwan Sahu, Hyderabad
Course Fee:
Course Content
📘 Data Science Course Content
📅 Module 1: Introduction to Data Science
What is Data Science?
Importance and applications
Data Science programs workflow
Roles in Data Science: Analyst, Scientist, Engineer, ML Engineer
📅 Module 2: Python for Data Science
Python for Data Science: variables, loops, functions
Data structures (lists, dictionaries, sets, tuples)
NumPy for numerical computing
Pandas for data manipulation
Data loading/exporting (CSV, Excel, JSON)
Working with missing data and outliers
📅 Module 3: Data Visualization
Visualizations using Matplotlib and Seaborn
Optional: Plotly
Creating effective visual stories
Dashboards and presentation-ready plots
Tableau for interactive reporting
📅 Module 4: Statistics & Probability
Descriptive statistics: mean, median, mode, standard deviation
Data distributions
Probability theory, Bayes' Theorem
Hypothesis testing, confidence intervals
t-tests, z-tests, chi-square tests
📅 Module 5: SQL for Data Science
Introduction to SQL for Data Science
Writing SQL queries: SELECT, JOIN, GROUP BY, HAVING
Subqueries & nested queries
Window functions
Real-world case studies with databases
📅 Module 6: Exploratory Data Analysis (EDA)
Understanding data features
Univariate & bivariate analysis
Correlation analysis
Handling categorical variables
Feature scaling (standardization/normalization)
📅 Module 7: Machine Learning (ML)
ML overview: supervised vs unsupervised
Model development process
Data splitting (train/test)
Model evaluation metrics
🔹 Supervised Learning
Linear Regression, Logistic Regression
Decision Trees, Random Forest
K-Nearest Neighbors (KNN), Naive Bayes
🔹 Unsupervised Learning
K-Means Clustering, Hierarchical Clustering
Dimensionality Reduction (PCA)
📅 Module 8: Advanced Machine Learning
Hyperparameter tuning (Grid Search, Random Search)
Cross-validation
Ensemble models: Bagging, Boosting
Introduction to XGBoost, LightGBM
Model deployment basics using Flask API
📅 Module 9: Deep Learning (Optional/Advanced)
Basics of Neural Networks
TensorFlow / Keras introduction
CNNs for image processing
RNNs for sequence data
Transfer learning overview
📅 Module 10: Capstone Project & Portfolio Building
Real-world dataset project
From EDA to model deployment
GitHub portfolio building
Final presentation
Extras (Optional Topics)
Web scraping using BeautifulSoup and Selenium
Time series forecasting
Natural Language Processing (NLP) and Sentiment Analysis
Dashboards using Power BI / Tableau
Skills
Ai and Data Analytics, Al Ml, Machine Learning Model Deployment Using Flask and Streamlit, Tableau, Python, Data Science, Data Science:
Tutor
0.0 Average Ratings
0 Reviews
5 Years Experience
sanjay nagar, jiyaguda