Harness the power of data to gain valuable insights and make informed decisions. From business intelligence to predictive modeling, improve your analytical skills and stay on top of today`s data-driven world of uncommon possibilities. Start Learning Today !
About Course
This Data Analytics course is designed to provide students with a solid foundation in data analysis concepts, techniques, and tools. Through a combination of theoretical learning, practical exercises and practical projects, participants will develop the skills needed to effectively analyze and interpret data to make informed decisions. transparent. Whether you are a beginner or have some experience, this course will give you the knowledge and confidence to excel in the field of data analytics.
Course Content
Course Duration: 12 weeks (3 hours per session, 2 sessions per week)
Week 1-2: Introduction to Data Analytics
- Understanding the role and importance of data analytics in various industries
- Introduction to the data analytics process: Define, Collect, Clean, Analyze, Interpret, and Visualize (DCCAIV)
- Overview of data analytics tools and technologies
- Setting up the analytical environment: Installing necessary software (Python, Jupyter, etc.)
Week 3-4: Data Wrangling and Cleaning
- Exploring different data types: Numerical, Categorical, Textual
- Data cleaning techniques: Handling missing values, duplicate data, and outliers
- Introduction to data transformation and feature engineering
- Hands-on: Cleaning and preparing real-world datasets
Week 5-6: Exploratory Data Analysis (EDA)
- Importance of EDA in understanding data patterns and relationships
- Data visualization techniques: Matplotlib, Seaborn, Plotly
- Descriptive statistics and data summarization
- EDA for different types of data: Univariate, Bivariate, Multivariate analysis
Week 7-8: Statistical Analysis for Decision Making
- Probability distributions and inferential statistics
- Hypothesis testing: t-tests, ANOVA, chi-squared tests
- Introduction to regression analysis
- Applying statistical concepts to real-world scenarios
Week 9-10: Machine Learning Fundamentals
- Introduction to machine learning and its applications in data analytics
- Supervised vs. unsupervised learning
- Regression analysis: Linear regression, logistic regression
- Classification algorithms: Decision trees, random forests, support vector machines
Week 11-12: Advanced Topics in Data Analytics
- Clustering techniques: K-means, hierarchical clustering
- Dimensionality reduction: Principal Component Analysis (PCA)
- Time series analysis and forecasting
- Introduction to natural language processing (NLP) for text data analysis
Week 13-14: Data Visualization and Communication
- Principles of effective data visualization
- Data visualization libraries: Tableau, Power BI
- Creating interactive dashboards and reports
- Telling a compelling data-driven story
Week 15-16: Capstone Project
- Applying learned concepts to a real-world data analytics project
- Project selection, data acquisition, and preparation
- Exploratory data analysis and feature selection
- Model building, evaluation, and interpretation
- Creating a comprehensive project report and presentation
Week 17-18: Ethical and Legal Considerations
- Privacy and data protection regulations (GDPR, HIPAA, etc.)
- Ethical considerations in data collection and analysis
- Bias and fairness in machine learning
- Ensuring responsible and transparent data analytics practices
Week 19-20: Future Trends in Data Analytics
- Introduction to big data and cloud computing
- AI and machine learning advancements
- Automation in data analytics: AutoML
- Emerging trends and opportunities in the field
Week 21-22: Career Development in Data Analytics
- Building a strong data analytics portfolio
- Job roles and career paths in data analytics
- Interview preparation and resume building
- Networking and continuous learning strategies
Week 23-24: Case Studies and Industry Applications
- Analyzing real-world case studies from various industries
- Healthcare analytics, financial analytics, marketing analytics, etc.
- Guest lectures from industry experts
- Identifying data analytics opportunities in different domains