Master In-Demand Data Science Skills with Hands-on Projects

DurationDuration:3 months

Batch TypeBatch Type:Weekend and Weekdays

LanguagesLanguages:English, Hindi, Telugu

Class TypeClass Type:Online and Offline

Class TypeAddress:Karwan Sahu, Hyderabad

Class Type Course Fee:

₹1,000.00Per hour

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:

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5 Years Experience

sanjay nagar, jiyaguda

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