You can also change or select the dates in your learning environment after booking. Rebookings are free of charge up to 4 weeks before the start of the event; after that, the fees specified in Terms and conditions apply.
No appointment is necessary for this examination.
You can take the exam at a time of your choosing in your learning environment.
This course includes self-study phases and live sessions. For the sake of clarity, only the live sessions are shown here.
This course takes place on site (partly optionally live online). Information about hotels and traveling by train can be found here.
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Don't worry, you remain flexible: you can adjust or reselect dates in your learning environment even after booking. Rebookings are free of charge up to 4 weeks before the start of the event; after that, the fees specified in Terms and conditions apply.
Course
Courses
1. introduction to deep learning
2. data preparation and feature extraction
3. specialized neural networks
4. deploy models and transfer learning
This training will provide you with in-depth knowledge of the concepts and methods of deep learning. You will learn about the possibilities and limitations of the technology and create, train and optimize your own data models and neural networks.
You will get to know the practical work of the most important Python frameworks and know how to use them in your own projects.
The technical hurdles for getting started are minimal - thanks to the use of Jupyter notebooks and free cloud GPUs.
After completing this training, you will not only have a sound theoretical knowledge of deep learning, but also gain practical experience in the application of modern AI technologies. You will be able to evaluate, adapt and productively use neural networks. You will also learn how to use the technologies in your own projects. This will qualify you for advanced tasks in AI development.
The content of this training supports the obligation to provide evidence of the promotion of AI competence within the meaning of Art. 4 EU AI Regulation.
This course offers you a digital blended concept that has been developed for part-time learning. Thanks to a flexible mix of online seminars and self-study phases, you are sure to reach your goal. This is how you learn in this course:
Learning environment: In your online learning environment, you will find useful information, downloads and extra services for this training course after you have registered.
Self-study phases: Learn independently, at your own pace and whenever you want. Our courses offer you didactically high-quality learning material.
Live webinars: In regular online seminars, you will meet your trainers in person. You will receive answers to your questions, specific assistance and instructions on how to deepen your knowledge and apply the skills you have acquired in practical exercises.
Learning community: A digital learning community is available to you throughout the course. Exchange ideas with other participants and the trainers and ask questions.
Future Jobs Club: Get exclusive access to a business network, news and future work hacks.
Certificate of attendance and Open Badge: As a graduate of the course, you will receive a certificate of attendance and an Open Badge, which you can easily share in professional networks (e.g. LinkedIn).
You will learn what artificial intelligence is, how it works and what you can use AI for.
You will learn about the importance of data for automation, analysis and the creation of models and what is important when it comes to data quality .
You can clean and prepare data to implement your own mining or machine learning projects.
You will get to know the technical processes in machine learning and will be able to communicate these clearly within the company.
You will gain your first practical experience of working on data and training sets and will be able to apply your knowledge immediately afterwards.
You are able to make informed decisions about the use of AI in your company and can communicate with technical departments on an equal footing.
You will qualify in a new field of expertise that will play a major role in the future and is already in high demand today.
Take an active part in our online community and work with your own questions - this is how you will benefit most from this online training. This will allow you to apply the content both in self-study and in practical exercises.
1. python techniques for text processing
2. introduction to Natural Language Processing (NLP)
3. text classification and text analysis
4 Topic Modeling and Long Short-Term Memory
5. transformer and attention
6. transfer learning and fine-tuning with Hugging Face
7th practical project: Training your own chatbot
This training will provide you with in-depth knowledge of concepts and methods for using language-based artificial intelligence. You will get to know the basic technologies and acquire comprehensive knowledge of the transformer architecture, which is a key technology for modern generative AI.
You will learn the practical work with the most important Python frameworks and with pre-trained models on Hugging Face and know how to use them in your own projects.
The technical hurdles for getting started are minimal - thanks to the use of Jupyter notebooks and free cloud GPUs.
After completing this training course, you will not only have sound theoretical knowledge of language processing with artificial intelligence, but also practical experience in the application of methods and frameworks. You will be able to develop, adapt and productively use your own language systems and models based on machine learning. You will also learn how to use the technologies in your own projects. This will qualify you for advanced tasks in AI development.
The content of this training supports the obligation to provide evidence of the promotion of AI competence within the meaning of Art. 4 EU AI Regulation.
1. Introduction and basics
2. Fundamentals of Retrieval-Augmented Generation
3. Chunking and embeddings in practice
4. Retrieval, reranking, and generation
5. Evaluation and optimization
6. Production deployment and MLOps
7. Monitoring and drift
In your online learning environment, you will find useful information, downloads and extra services for this training course once you have registered.
You will develop a deep, practical understanding of RAG-based AI systems and learn how they are technically structured.
You build complete end-to-end RAG pipelines yourself —from the data source to the productive API.
You will learn to critically evaluate RAG systems and systematically improve them, rather than just experimenting.
You understand how MLOps concepts are applied to LLM systems, including monitoring and drift analysis.
You will receive a practical blueprint that you can use to confidently transfer your own RAG solutions into the corporate context.
The prerequisite for taking the exam is participation in the four courses of the Master Class. We recommend attending all courses within a maximum of two years and completing the exam close to the last course attended.
The content of all four Master Class courses is relevant for the exam.As soon as you have booked the exam, you will see it in your learning environment.There is a tile with more detailed information about the exam, as well as a small mini-preview of the format of the e-exam with various sample questions.
The exam takes place online. It can be completed from the comfort of your own home or office within a set time frame. It consists of two parts:
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