Data Analysis and Visualization

Introduction:

This course aims to help professionals develop and enhance their data analysis and visualization skills, which are essential for working with various types of data and creating insightful reports and dashboards. The course will cover topics such as:

  • What are the types and characteristics of data, and how can they be evaluated for quality and representativeness?
  • How can you use descriptive statistics to summarize data, and profile two or more groups with statistical tests?
  • How can you visualize multiple analytics with powerful smart charts, such as simple linear regression, simple logistic regression, and outlier detection?
  • What is machine learning, and how can you use supervised learning algorithms to perform classification and regression tasks, such as multiple linear regression, multiple logistic regression, discriminant analysis, decision trees, support vector machines, k-nearest neighbors, naive Bayes, and neural networks?
  • What is business intelligence, and how can you use databases, ETL, storage, analytics, and BI tools to create data warehouses, data marts, data lakes, OLAP, dashboards, etc.?
  • How can you use forecasting techniques to predict future trends and outcomes, such as exponential smoothing, time series, ARIMA models, etc.?
  • How can you compare R vs. Python for performing statistical tests and machine learning algorithms?
  • What is unsupervised learning, and how can you use dimensionality reduction and clustering algorithms to discover patterns and groups in data, such as principal component analysis, hierarchical clustering, k-means clustering, correspondence analysis, multi-dimensional scaling, quadrant analysis, etc.?
  • What is PMP (Project Management Professional), and how can you use it to plan and execute data science projects effectively?
  • What are IoT (Internet of Things) and Big Data Ecosystems, and how can you use various protocols and technologies to collect, store, process, and analyze large-scale data from various sources?
  • Define critical thinking and HRM and explain their importance and benefits
  • Apply various critical thinking techniques to analyse information, generate ideas, and evaluate arguments
  • Apply various HRM techniques to manage the human resources of an organisation
  • Identify and avoid the common pitfalls and biases that affect your thinking and HRM
  • Use appropriate tools and frameworks to support your thinking and HRM process
  • Communicate and collaborate effectively with others to make better decisions
  • Describe the types and characteristics of data
  • Evaluate the quality and representativeness of data
  • Summarize data using descriptive statistics
  • Profile two or more groups using statistical tests
  • Visualize multiple analytics using smart charts
  • Perform classification and regression tasks using supervised learning algorithms
  • Create data warehouses, data marts, data lakes using databases, ETL, storage
  • Create OLAP dashboards using analytics and BI tools
  • Predict future trends and outcomes using forecasting techniques
  • Compare R vs. Python for statistical tests and machine learning algorithms
  • Discover patterns and groups in data using unsupervised learning algorithms
  • Plan and execute data science projects using PMP
  • Collect store process analyze large-scale data using IoT Big Data Ecosystems

Day One:

Types of Data and Data Visualization

  • Introduction to the course: objectives expectations agenda
  • What are the types of data? Definition examples characteristics
  • How can you evaluate the quality representativeness of data? Techniques tools examples
  • How can you use descriptive statistics to summarize data? Techniques tools examples
  • How can you profile two or more groups with statistical tests? Techniques tools examples
  • How can you visualize multiple analytics with smart charts? Techniques tools examples
  • Self-assessment: How familiar are you with types of data or data visualization?

Day Two:

Machine Learning – Supervised

  • What is machine learning? Definition history types purposes
  • How can you use supervised learning algorithms to perform classification or regression tasks? Techniques tools examples
  • How can you perform multiple linear regressions? Techniques tools examples
  • How can you perform multiple logistic regressions? Techniques tools examples
  • How can you perform discriminant analysis? Techniques tools examples
  • How can you perform decision trees? Techniques tools examples
  • Quiz: Test your knowledge on machine learning – supervised

Day Three:

Business Intelligence Forecasting – R vs. Python

  • What is business intelligence? Definition history components purposes
  • How can you use databases ETL storage to create data warehouses data marts data lakes? Techniques tools examples
  • How can you use analytics BI tools to create OLAP dashboards? Techniques tools examples
  • What is forecasting? Definition history types purposes
  • How can you use forecasting techniques to predict future trends outcomes? Techniques tools examples
  • How can you compare R vs. Python for performing statistical tests machine learning algorithms? Comparison criteria advantages disadvantages examples
  • Case study: Analyze a given data set using various techniques tools

Day Four:

Machine Learning – Unsupervised

  • What is unsupervised learning? Definition history types purposes
  • How can you use dimensionality reduction algorithms to discover patterns in data? Techniques tools examples
  • How can you perform principal component analysis? Techniques tools examples
  • How can you perform clustering algorithms to discover groups in data? Techniques tools examples
  • How can you perform hierarchical clustering? Techniques tools examples
  • How can you perform k-means clustering? Techniques tools examples
  • Exercise: Perform unsupervised learning algorithms on a given data set

Day Five:

PMP for Data Scientists IoT Big Data Ecosystem

  • What is PMP? Definition history components purposes
  • How can you use PMP to plan execute data science projects effectively? Techniques tools examples
  • What are IoT Big Data Ecosystems? Definition history components purposes
  • How can you use various protocols technologies to collect store process analyze large-scale data from various sources? Techniques tools examples
  • Feedback: Evaluate your learning outcomes based on a given scenario

This course is designed for professionals who want to learn how to improve their data analysis and visualization skills. The course is suitable for professionals from any industry or sector who work with various types of data.

To enhance learning and practical application of concepts, the training course will use a combination of interactive lectures, case studies, group discussions, practical exercises, and real-world examples. Participants will also get the chance to collaborate on group projects and create action plans adapted to the needs of their respective organizations.

Outline: The course will run for five days with each day covering a different topic. The course will consist of lectures discussions exercises case studies videos quizzes feedback sessions.

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