
Diploma in Data Analysis
Whats Covered
This comprehensive online course provides a thorough foundation in data analytics, equipping you with the skills to collect, clean, analyze, and interpret data for informed decision-making.
Course Structure:
The course is divided into 15 modules, progressively building your analytical skillset:
Module 1: Introduction to Data Analytics
- What is data analytics?
- Applications of data analytics across industries
- The data analysis lifecycle
Module 2: Understanding Data Types
- Categorical vs. quantitative data
- Levels of measurement (nominal, ordinal, interval, ratio)
- Identifying data types in real-world scenarios
Module 3: Data Collection Methods
- Various data collection techniques (surveys, interviews, web scraping)
- Data extraction from different sources (databases, APIs)
- Ethical considerations in data collection
Module 4: Exploring and Cleaning Data
- Introduction to data cleaning tools (e.g., spreadsheets, SQL)
- Identifying and handling missing values
- Dealing with outliers and inconsistencies
Module 5: Data Visualization Fundamentals
- Choosing the right chart type for different data types
- Creating effective visual representations using tools like bar charts, scatter plots, and heatmaps
Module 6: Introduction to Statistics
- Descriptive statistics (mean, median, standard deviation)
- Understanding probability distributions (normal, binomial, Poisson)
- Introduction to hypothesis testing concepts
Module 7: Correlation and Regression Analysis
- Identifying relationships between variables using correlation coefficients
- Linear regression modeling to predict future values
Module 8: Working with Big Data
- Introduction to big data concepts (volume, variety, velocity)
- Big data storage and processing techniques (e.g., Hadoop)
Module 9: Data Wrangling with Python
- Introduction to Python programming for data analysis
- Using libraries like Pandas for data manipulation and cleaning
Module 10: SQL for Data Analysis
- Writing SQL queries to retrieve data from relational databases
- Joining tables and filtering data for specific needs
Module 11: Introduction to Machine Learning
- Understanding the core concepts of machine learning
- Exploring different machine learning algorithms (supervised, unsupervised)
- Real-world applications of machine learning
Module 12: Data Storytelling
- Communicating insights effectively through data visualizations and reports
- Tailoring presentations for different audiences
- Best practices for data storytelling
Module 13: Business Intelligence (BI) Tools
- Introduction to popular BI tools (e.g., Tableau, Power BI)
- Creating interactive dashboards and reports for informed decision-making
Module 14: Data Ethics and Privacy
- Understanding data privacy regulations (e.g., GDPR)
- Ethical considerations in data collection, analysis, and usage
- Ensuring responsible data practices
Module 15: Capstone Project
- Apply your learned skills to a real-world data analysis project
- Choose a dataset, analyze it, and present your findings
Course Access
You'll be added to this within 24 to 48hrs after purchase. Please make sure you put a working email address as your login will be emailed to you.
Program Duration and Study Hours
Duration: 6 months
All online courses must be completed within the allotted time
If you have not completed your course within allotted time, we reserve the right to restrict access to your course.
For questions regarding this policy, please contact us
Course Recognition
CPD Points Assigned - 150
Recognized by
Qualifications Framework