top of page

 

 

 

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

Diploma in Data Analysis

190,00$ Precio
35,15$Precio de oferta
  • Digital Certificate of Completion

No hay reseñas todavíaComparte tu opinión. Deja la primera reseña.
bottom of page