Data Science Course
Data Science Course Overview
Our Data Science course is designed to equip you with in-demand analytical skills and hands-on experience in tools like Python, SQL, Machine Learning, and more.
Whether you’re a beginner or want to enhance your data expertise, this course will transform your career path in today’s data-driven world.
Module 1:Introduction to Data Science
Description:
Understand what Data Science is, its lifecycle, and how it solves real-world problems. Explore use cases across industries like finance, healthcare, marketing, and technology.Topics Covered:
What is Data Science?
Data Science vs Data Analytics vs Machine Learning
Applications of Data Science
Career Opportunities
2. Python for Data Science
Description:
Master Python from basics to advanced, tailored for data manipulation and analysis.
Topics Covered:
Python Basics (Variables, Data Types, Loops, Functions)
NumPy for Numerical Operations
Pandas for Data Manipulation
Matplotlib & Seaborn for Data Visualization
3. Statistics & Probability
Description:
Learn the statistical foundation essential for data modeling and interpretation.
Topics Covered:
Descriptive & Inferential Statistics
Probability Distributions
Hypothesis Testing
Statistical Measures (Mean, Median, Mode, Variance)
4. Data Wrangling & Preprocessing
Description:
Handle real-world datasets by cleaning, transforming, and preparing data for analysis.
Topics Covered:
Handling Missing Values
Data Transformation Techniques
Outlier Detection and Treatment
Encoding Categorical Data
Feature Scaling
5. Exploratory Data Analysis (EDA)
Description:
Gain insights from raw data using visualization and pattern recognition.
Topics Covered:
Univariate and Bivariate Analysis
Correlation Analysis
Interactive Charts
Data Distribution Analysis
6. SQL for Data Science
Description:
Learn to query, filter, join, and analyze structured data using SQL.
Topics Covered:
SQL Basics (SELECT, WHERE, GROUP BY, HAVING)
Joins and Subqueries
Window Functions
Data Aggregation
7. Machine Learning Fundamentals
Description:
Build predictive models and make data-driven decisions with supervised and unsupervised learning.
Topics Covered:
Supervised vs Unsupervised Learning
Regression Analysis
Classification Algorithms (KNN, SVM, Decision Trees)
Clustering (K-Means, Hierarchical)
8. Advanced Machine Learning & Model Tuning
Description:
Optimize models with cross-validation and hyperparameter tuning.
Topics Covered:
Ensemble Techniques (Random Forest, Gradient Boosting)
Model Evaluation Metrics (Accuracy, Precision, Recall, F1-Score)
Overfitting vs Underfitting
Grid Search and Random Search
9. Deep Learning with TensorFlow & Keras (Optional Advanced Module)
Description:
Dive into neural networks and AI with hands-on deep learning techniques.
Topics Covered:
Neural Network Basics
CNNs for Image Processing
RNNs for Time Series & NLP
Using TensorFlow/Keras for Model Building
10. Capstone Project & Portfolio Building
Description:
Work on real-time projects to showcase your data science skills to employers.
Sample Projects:
Customer Churn Prediction
Sentiment Analysis
Sales Forecasting
E-commerce Recommendation System
Who Can Join This Course?
Students & Graduates
Working Professionals
Engineers & Analysts
Anyone with a curiosity for data
Tools & Technologies Covered
Python, NumPy, Pandas
SQL
Matplotlib, Seaborn
Scikit-Learn
TensorFlow & Keras (Advanced)
Jupyter Notebook
Tableau or Power BI (Optional)
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