Description
Course Description;
This Data Science has become increasingly popular in recent years. These courses provide a convenient and flexible way for individuals to acquire the skills and knowledge needed to excel in the field of data science, which is a rapidly growing and highly sought-after area of expertise.
Key Features of Course Divine:
- Collaboration with E‑Cell IIT Tirupati
- 1:1 Online Mentorship Platform
- Credit-Based Certification
- Live Classes Led by Industry Experts
- Live, Real-World Projects
- 100% Placement Support
- Potential Interview Training
- Resume-Building Activities
Career Opportunities After Data Science:
- Data Scientist
- Data Analyst
- Machine Learning Engineer
- Business Intelligence (BI) Analyst
- AI Engineer
- Data Engineer
- Statistician
- Big Data Engineer
Essential Skills you will Develop Data Science:
- Statistical Analysis & Probability
- Data Wrangling & Cleaning
- Machine Learning
- Data Visualization
- Big Data Technologies
Tools Covered:
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Python – Most popular for data analysis, machine learning, visualization.
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R – Especially strong in statistical analysis.
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SQL – Essential for data querying and database operations.
Syllabus:
Module 1: Introduction to Data Science What is Data Science? Lifecycle of Data Science Projects Roles: Data Analyst, Data Engineer, Data Scientist
Tools Overview: Python, Jupyter, Git, SQL.
Module 2: Python for Data Science Python Basics: Variables, Data Types, Loops, Functions Number for Numerical Computing Pandas for Data Manipulation
Seaborn for Visualization.
Module 3: Data Wrangling & Cleaning Handling Missing Data Transformation & Normalization Outlier Detection & Treatment Feature Engineering Techniques.
Module 4: Exploratory Data Analysis (EDA) Descriptive Statistics
Data Visualization Techniques Correlation Analysis Dashboarding with.
Module 5: Databases and SQL Relational Databases & Data Models SQL Basics: SELECT, JOIN, GROUP BY, HAVING Working with PostgreSQL / MySQL Integration with Python.
Module 6: Statistics for Data Science Probability & Distributions Hypothesis Testing
Confidence Intervals Central Limit Theorem.
Module 7: Machine Learning – Supervised Learning Regression Models: Linear, Logistic Classification Algorithms: KNN, SVM, Decision Trees Model Evaluation: Confusion Matrix, ROC, AUC.
Module 8: Machine Learning – Unsupervised Learning Clustering: K-Means, Hierarchical Dimensionality Reduction: PCA Association Rules Anomaly Detection.
Module 9: Introduction to Deep Learning Basics of Neural Networks Tens or Flow & Introduction Feedforward & Convolutional Neural Networks Real-life Applications.
Module 10: Capstone Project & Deployment End-to-End Data Science Project Model Deployment with Flask GitHub Portfolio Setup Resume & Interview Preparation.
Industry Projects:
- Predictive Maintenance
- Credit Risk Modeling
- Customer Segmentation
- Demand Forecasting
Who is this program for?
- Students and Recent Graduates
- Working Professionals
- IT Professionals
- Researchers and Academicians
How To Apply:
Mobile: 9100348679
Email: coursedivine@gmail.com
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