Join us to start creating a mindset of business leaders responsible for the future together
This course is for:
By the end of the course, participants will be equipped to reduce data complexity, identify patterns, and apply clustering techniques using both proprietary and open-source tools.
It is common to have data sets with multiple variables describing business topics. But how can we extract all the hidden patterns from such complex data sets? Reducing the number of variables into simple "maps" with PCA becomes essential to highlight invisible relations within the data, facilitating the correct actions to take. This workshop also explains the difference between scientific market "clustering" and simple common sense "filtering". It empowers the definition of market niches and profiles them using Data Analysis techniques. Additionally, the program covers illustrations that reveal associations between the components of multiple variables for efficient tracking of pattern evolution. The workshop also includes practical applications with two different technologies, allowing participants to become more like consultants than mere experts.
Day 1:
- Matrix Factorization
- Principal Component Analysis
Day 2:
- t-SNE and Multi-Dimensional Scaling
- Simple Correspondence Analysis
Day 3:
- Agglomerative Clustering
- K Means and Medoids
Day 4:
- Recommender Systems
Day 5:
- Gaussian Mixture Models
- Colored PPT documents / Videos.
- Multidimensional Reducibility
- Hierarchical vs. Divisive Clustering
- Proprietary vs. Open Source tools solutions
- Eigenvalues and Eigenvectors
- Team Exercises
- The science behind mapping illustration.
- Quality measurements of unsupervised models
- Demystifying the Curse of Multidimensionality
We have partnerships with international
professional organizations that specialize in professional training and have unique and up-to-date quality programs for our students.
Join us to start creating a mindset of business leaders responsible for the future together