Who should attend
Programmers, data scientists and business analysts, as well as individuals with experience in programming and/or data analysis seeking an in-depth understanding of and practical exposure to the latest AI technologies (especially Deep Learning)
About the course
Don't just follow the trend - apply AI in practice!
The recent wave of innovation in Artificial intelligence (AI) has enormous disruptive potential, but there is a decided shortage of professionals capable of harnessing the power of the latest modelling techniques and moving AI from the drawing board into real life.
Solid foundation in data modelling
The programme Certified Expert in Data Science and AI aims to give practitioners a solid foundation in data modelling, as well as an in-depth understanding of the latest AI methods and solutions (especially Deep Learning). The course covers the theoretical foundations of statistical modelling, the detailed analysis of neural models – along with associated machine learning procedures – and includes a technical introduction to and practice in Python programming using the general “Data Science Stack” (Numpy, SciPy, Pandas, Scikit-Learn), as well as TensorFlow for Deep Learning.
Latest AI methods and solutions
After successfully finishing the course, practitioners will not only be familiar with the state of the art in AI, they will also be capable of implementing the latest machine-learning models in practice.
The course is conducted by two trainers who are also available as points of contact throughout the on-campus study period, ensuring that you receive the highest possible standard of mentoring and guidance. Please note that the two trainers are specialists in different areas of expertise, meaning that each will contribute his or her own perspective to the learning process.
The programme Certified Expert Data Science and Artificial Intelligence consists of two 5-day weeks which are divided by a weekend. The course will take the form of interactive “lab” sessions during which participants will implement solutions (under guidance). Passing the automatically evaluated programming assignments is a necessary prerequisite for certification.
Data Science an Modelling Foundations (Week 1)
- Foundational definitions, historical overview
- Task settings, tasks of AI models
- Data science pipeline
- Visualization, representation and embedding
- Clustering methods, anomaly detection models, classification methods
- Regression, metrics, measurements of models
Neural Networks and Deep Learning (Week 2)
- Training and setup for neural networks
- Neural network basics
- Current neural architectures and their application
- Memory networks, unsupervised learning with neural models, transfer learning
- Peak into what else is there?
- Advice on deployment of Machine Learning models
Florian is Assistant Professor for International Entrepreneurship at the Frankfurt School of Finance & Management. He completed his undergraduate degree in Economics and Philosophy in the UK. His PhD at Cambridge University was a comparison of three approaches to explanation in management re...
Deep tech leader, consultant and manager with special interest in artificial intelligence, cognitive sciences, data science and deep learning Long time "Startupper" and CTO Lecturer in applied Artificial Intelligence, tech leadership Public speaker with interest in Buddhist studies, comparativ...
András is a computational linguist and philosopher with a strong background in logic. As a developer and researcher he worked on the design and implementation of various natural language processing based intelligent systems at Applied Logic Laboratory (2006-2015), the Hungarian Academy of Science...
Videos and materials
Because of COVID-19, many providers are cancelling or postponing in-person programs or providing online participation options.
We are happy to help you find a suitable online alternative.