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This workshop provides a hands-on learning experience with a focus on a wider variety of AI tools, their ethical implications and their practical applications. The aim is to facilitate the responsible and efficient use of AI-based tools in research and academia.

Content:

  • Understand the importance of using AI in research and academia and assess the benefits and risks involved
  • Craft effective prompts for your research tasks
  • Develop strategies to integrate AI tools into your research workflow
  • Stay informed about and adapt to new developments in the field of AI

At the end of the workshop, you will receive a list of generative AI prompts useful in research and academia. There will be practice sessions during the workshop for which you will need access to AI tools, particularly ChatGPT/GPT-4o. If you do not have an account with ChatGPT/GPT-4o, alternatives like Microsoft Copilot, Google Bard or Claude.ai could also be used.

Course - For Bonn members: 8 units are applicable within the Doctorate plus or Careers plus certificate ECTS

In the workshop “Fit for AI - Prompting for advanced users” you can get to know and try out prompting tips and techniques. You will learn about prompting techniques such as Few Shot Prompting, Chain-of-Thought Prompting and others. You can try out these techniques directly on various tasks and your own examples.

This seminar focuses on the increasing importance of Artificial Intelligence (AI) in academic research and writing, providing practical insights into AI technologies; use in these areas.The workshop explores ChatGPT and prompt engineering, as well as other academic AI tools to aid research and writing, examining both benefits and challenges. Ethical aspects, such as copyright and authenticity of research results, are discussed, with the goal of equipping participants with practical knowledge and skills to effectively utilize AI in daily research through interactive elements like case studies and group discussions.

Course - Certificate of attendance, for Bonn members: 8 units are applicable within the Doctorate plus and Careers plus certificates ECTS

The course is practical and aims at teaching students how to:

  • Use the programming environment R and RStudio, which includes installation, how to handle errors, problem solve and access helper documents.
  • Use basic concepts of programming, such as data types, logical and arithmetic operators, if else conditions, loops and functions.
  • Use common R packages to perform basic statistical analysis (e.g., t-test, chi2-test, correlation) and visual presentation (e.g., boxplot, histogram and heat-map) of data in R.

The course is structured with the intent to gradually make students more autonomous in writing code. Starting by introducing a concept through a lecture, then providing formative quizzes and tasks relateed to the concept. This all leads up to a project (exam) where the student gets to combine multiple concepts into a project with the intent of solving a certain problem or displaying specific statistical tests of visual components. 

 

Course - 3.0 ECTS

Do you need to turn data into a publication figure? We offer tools and confidence for the student to independently select a statistical method for research questions in their field. The course is practical and includes implementing a basic statistical analysis in R, the leading statistical programming language in bioinformatics and medical science. Furthermore, we give a brief introduction to visualization in R, with a focus on R/ggplot2. Students can bring data from their own research project, or work on data from the course.

Course - 3.0 ECTS

The course content lean on Design thinking ideology and methodology that inform research as well as developmental work and form a practice-based foundation for innovation aimed to meet the needs of societal and scientific environments. As a student, you work  individually from your own research perspective, and get helpful insights for future research.  

The course apply a problem-oriented teaching and learning style,  with a pedagogy that enables students to take active responsibility for individual and also group learning in a multi-disciplinary context.

Course - 4.5 ECTS

Progress in medical innovation stands as a catalyst for worldwide economic growth. Whether within pharmaceuticals, medical devices, biotechnology, information technology, or a fusion of these advancements, the potential advantages extend significantly to private businesses and societal well-being. However, due to long development times and rigorous regulations, these innovative concepts require a lot of financing to establish their presence in the market. Consequently, assessing the value of novel medical innovations remains crucial. The primary objective of this course is to empower researchers with the proficient capability to effectively assess the worth of emerging technologies or processes within the medical industry.

Course - 3.0 ECTS

The course aim is that the doctoral student develops a theory of science approach by enabling the doctoral student to understand, employ, reflect upon and critically assess concepts and ideas of theories of science as well as their implications for in particular medical scientific practice. A further aim is to enable the doctoral student to understand, reflect upon and critically assess views on and implications of definitions of health and disease.

Course - 1.5 ECTS

This course aims to introduce students to health care organization and management, and how this affects public health. There is a special focus on the opportunities offered by digitization and how these can be utilized in quality and improvement work.

Course - 7.5 ECTS

This course provides students with in-depth knowledge in the field of digital health from an entrepreneurship perspective. Domains of digital health, needs-based innovation including prototyping, usability and testing as well as data management, intellectual property, reimbursement, business models, ethics and future trends will be discussed and analyzed.

Course - 7.5 ECTS

Topics covered include:

  • Computational design strategies
  • Differential equations
  • Programming in Python
  • Data analysis
Course - 15 ECTS

Topics covered include:

  • Coding: theory, practical training, coding styles, unit testing
  • Collaborative software development workflows
  • Data analytics workflows
  • (Generalised) linear mixed effects models
  • Bayesian statistics
  • Data visualisation
  • Workflow automation
  • Meta-science
Course - 15 ECTS

Topics covered include:

  • Reconstruction of neuron morphologies
  • Histological preparation of brain tissue
  • Electrophysiological recordings of single neurons in vivo
  • Simulations of cellular function via multi-compartmental neuron models
Course - 15 ECTS

Topics covered include:

  • linear and nonlinear time series analysis methods for the characterization of complex dynamical systems
  • statistical tools
  • analysis of biomedical data (e.g. EEG, structural/functional MRI data)
Course - 15 ECTS

This course will cover:

  • Intro to Jupyter Notebooks, IDEs
  • Intro Python (loops, variables, functions)
  • Core packages (Numpy, Pandas, Matplotlib, Seaborn)
  • Accessing folders (shell, OS)

The module presents a variety of fundamental models and methods from computational neuroscience. By solving daily exercises the students learn how to practically apply the acquired concepts. The course introduces the employed more
advanced mathematical tools embedded into the different topics. Further there will be a pre-course teaching the required programming skills in python.

Course - 7.5 ECTS

The Statistics module covers:

Basic test theory; 2-tests for contingency tables; t-Test; non-parametric tests; analysis of variance (ANOVA); multiple testing; power calculations; calculation rules for probabilities and neurobiological applications; guidelines for choice of analysis strategy; software implementations; effect size based hypothesis testing

The Scientific writing module:

  • Introduction into general guidelines and rules for scientific writing
  • Introduction into the elements of style
  • Analysis and discussion of scientific texts
  • How to improve and correct a text
  • Practices in writing. Students will write their own texts and correct and make suggestions for improvements of the texts of others

Research ethics module covers:

  • Main approaches and methods in current research ethics
  • Ethical standards of good scientific practice
  • Ethical issues related to research with humans
  • Ethical issues related to animals
  • Ethical issues related to research with biological material
Course - 7.5 ECTS

The course aim is that the doctoral student develops a theory of science approach by enabling the doctoral student to understand, employ, reflect upon and critically assess concepts and ideas of theories of science as well as their implications for in particular medical scientific practice. A further aim is to enable the doctoral student to understand, reflect upon and critically assess views on and implications of definitions of health and disease.

The course is given online. The teaching and learning activities used are web lectures, written examination, individual writing exercises, an individual written assignment, and reading of course literature and other distributed materials.

Course - 1.5 ECTS