About Course
Module 1: Introduction to Data Analysis
- Understanding the role of data analysis in decision-making and problem-solving.
- Overview of the data analysis process: data collection, cleaning, exploration, analysis, and visualization.
- Introduction to data analysis tools and techniques.
Module 2: Data Collection and Cleaning
- Methods for collecting and sourcing data from various sources.
- Data cleaning techniques: handling missing values, removing duplicates, and data normalization.
- Exploring data quality issues and best practices for data cleaning.
Module 3: Exploratory Data Analysis (EDA)
- Overview of exploratory data analysis (EDA) techniques.
- Visualizing data distributions: histograms, box plots, and density plots.
- Analyzing relationships between variables: scatter plots, correlation analysis, and heatmap visualization.
Module 4: Statistical Analysis
- Introduction to basic statistical concepts: mean, median, mode, variance, and standard deviation.
- Performing statistical tests for hypothesis testing and inference.
- Understanding probability distributions and their applications in data analysis.
Module 5: Data Wrangling and Transformation
- Data wrangling techniques: reshaping, pivoting, and transforming data for analysis.
- Working with datetime data, text data, and categorical data.
- Introduction to data aggregation, grouping, and summarization.
Module 6: Data Visualization
- Principles of effective data visualization.
- Using visualization libraries (e.g., Matplotlib, Seaborn, Plotly) in Python for creating static and interactive visualizations.
- Designing dashboards and interactive plots for data exploration and storytelling.
Module 7: Machine Learning for Data Analysis
- Introduction to machine learning concepts and algorithms.
- Supervised learning techniques: regression and classification.
- Unsupervised learning techniques: clustering and dimensionality reduction.
Module 8: Big Data Analytics
- Overview of big data technologies: Hadoop, Spark, and distributed computing frameworks.
- Performing data analysis on large datasets using Apache Spark.
- Introduction to cloud-based big data analytics platforms (e.g., Google BigQuery, Amazon Redshift).
Module 9: Time Series Analysis
- Understanding time series data and its characteristics.
- Time series decomposition and trend analysis.
- Forecasting techniques: moving averages, exponential smoothing, and ARIMA models.
Module 10: Real-World Data Analysis Projects
- Applying data analysis skills to real-world datasets and scenarios.
- Working on data analysis projects covering various domains (e.g., finance, marketing, healthcare).
- Presenting findings and insights from data analysis projects.
Student Ratings & Reviews
No Review Yet