- State of the art of artificial intelligence
- Philosophy of artificial intelligence
- Future of artificial intelligence
- Project development processes with artificial intelligence
- Data, your greatest asset
- Machine learning
- Deep learning
- Transformers
- Synthetic data generation
- Hyperparameters in artificial intelligence models
- Linear regression
- Non-linear Regression and Support Vector Machine (SVM)
- Decision trees and random forests
- Fuzzy logic and gradient descent
- Recommender systems
- Preparing the working environment: Anaconda, Visual Studio Code and Python
- Data input and processing datasets
- TensorHub, TensorFlow and Keras
- Image processing
- Artificial intelligence modelling
- Introduction
- Data literacy
- Working with data
- Solutions and techniques for data processing
- Data quality management
- Working with data in Excel
- Data set (DATASET)
- Data Cleasing with Excel
- Data Wrangling with Excel
- Data Blending in Excel
- Talend Data Preparation Desktop Installation
- Working with data in Talend
- Data Cleasing with Talend
- Data Wrangling with Talend
- Data Blending with Talend
- Registration in dataprep by Trifacta
- Working with data with Dataprep by Trifacta
- Data Cleasing with Trifacta
- Data Wrangling with Dataprep by Trifacta
- Data Blending with Dataprep by Trifacta
- Introduction
- Linear, multiple and logistic regression (I)
- Linear, multiple and logistic regression (II)
- Support Vector Machine (SVM)
- Decision trees
- KNN (K-Nearest Neighbors)
- Naive bayes
- Evaluation of supervised models
- Sample exercise
- Proposed exercise
- Introduction to clustering: purpose and metrics
- K-means clustering
- Hierarchical clustering, other techniques and examples
- Principal Component Analysis (PCA)
- Sample PCA exercise
- Artificial Neural Networks (ANN) (I)
- Artificial Neural Networks (ANN) (II)
- Artificial Neural Networks (ANN) (III)
- Sample exercise
- Proposed exercise
- Introduction and Review of Artificial Neural Networks (ANN)
- Convolutional Neural Networks (CNN): Introduction and Use Cases
- CNN: Intuition
- CNN: Mathematical description
- CNN: Programming example with Python and TensorFlow
- Exercise: Artificial vision with CNN
- Time Series Review
- Recurrent Neural Networks (RNN): Introduction and Use Cases
- RNN: Intuition
- RNN: Mathematical description
- RNN: Programming Example with Python and TensorFlow
- Exercise: Time Series with RNN
- Review of Recommender Systems
- Deep Bolztmann Machines (DBM): Introduction and use cases [Video].
- DBM: Intuition
- DBM: Mathematical description
- DBM: Programming Example with Python and TensorFlow
- Exercise: Recommendation System with DBM
- Anomaly detection
- Self-Organising Maps (SOM): Introduction and intuition
- SOM: Mathematical description
- AutoEncoders (AE): Introduction and intuition
- AE: Mathematical description
- Exercise: Anomaly detection with SOM and AE
- Introduction to Power BI
- Different types of Power BI: is it really free?
- Let's dive in: simple first report
- Power Query: data source
- Data transformation
- Data modelling
- Starting with DAX (I)
- Getting started with DAX (II)
- Mastering DAX (I)
- Mastering DAX (II)
- Table and matrix
- Trends
- How to filter your data properly
- Scoreboards
- Obtaining details
- Understanding Power BI Service
- Sharing content in Power BI Service
- Comparing Power BI Service and Power Report Service
- Integrating Python and R in Power BI Desktop
- Introducing Bravo for Power BI Desktop
- - Linear Regression.
- - Logistic Regression.
- - Neural Networks.
- - Clustering.
- Principal Component Analysis (PCA).
- - Deep neural networks.
- - Optimisation of algorithms.
- - Convolutional neural networks.
- - Recurrent neural networks.
- - NPL. Natural language processing.
- - Creation of tables and reports.
- - Data transformation and filtering.
- - Data visualisation.
- - Calculation. Relationships between data tables, metrics and indicators.
- - Dynamic and interactive control panel.
- - Application. Classification of objects in images.
- - Application. Detection of objects in images.
- - Application. Facial recognition.
- - Application. Word detection for voice assistants.
- - Application. Business Intelligence.
- Fourth industrial revolution
- Digital transformation in business
- Fundamentals and key points
- Benefits
- Enabling technologies
- Big Data
- Cloud Computing
- Cybersecurity
- Artificial intelligence
- Virtual and augmented reality
- BIM
- Collaborative robots
- Additive manufacturing
- Hyperconnectivity
- IoT
- Manufacturing Execution System (MES)
- Process integration and efficiency
- Use cases
- New methodologies: Agile, Lean Startup or Design Thinking.
- Change management in the company
- Introduction
- Key elements for AI project management
- Characteristics of AI projects
- Introduction to the main agile and ideation methodologies
- Integration of different methodologies
- Introduction
- Phase I: Empathising
- Phase II: Define
- Phase III: Devising
- Phase IV: Prototyping
- Lean start-up. Basic concepts
- Lean Start-up. Tools
- Scrum. Introduction
- Scrum. Roles
- Scrum. Ceremonies and artefacts
- Introduction
- Devising the project
- Implementing the project
- Some tips on how to implement the methodologies
- Summary and conclusions
- Finance and Insurance
- Retail
- Industry
- Agriculture
- Health
- Logistics and operations
- Marketing
- Sales and Customer Service
- Finance and Control
- People Analytics
- Current scenario of a booming sector
- Financing and funding
- Featured Startups
- Future of the ecosystem
- Starting an AI company
- Ethics. General notes.
- Examples of biases.
- Global initiatives.
- Public bodies and regulation.
- AI in the Sustainable Development Goals



