

Data Science & AI Training Bootcamp
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Take your career to the next level with our Online Data Science & AI Bootcamp
Whether you’re looking to switch into industry with the latest tech tools, learn AI and Machine Learning, or level up your data game, your next stop should be Data Science. At our 12-week Online Data Science & AI Course, you’ll learn everything you need to get started as a Data Scientist, including Python, Machine Learning, AI, neural networks, and the most in-demand methods and frameworks from the industry. You'll level up as a data pro, learning the tricks of the trade in data visualisation and communication with stakeholders - ensuring you’re 100% ready for a career in Data Science.
Successful graduates of this course will receive, in addition to their certificate from neuefische, the IHK certificate “Specialist for Data Science and AI” issued by HKBiS, the educational service of the Hamburg Chamber of Commerce.
Learn Data Science and AI - Don't Get Left Behind
At our Online Data Science & AI Bootcamp, you'll be mentored by 2 top coaches, receive 540 hours of effective instruction, real-world assignments and 1:1 feedback sessions. This is also the best way to learn AI: you’ll dive into Machine Learning, and get an insight into the inner-workings of Hugging Face and other cutting edge AI tools. It’s not just numbers and tech, either. With training in agile methods and presentations, you’ll get prepared for your next role in a way that’s practical and accessible. You’ll cap it all off in the final 4 weeks with your capstone project - the cherry on top of your intensive 12-week Data Science training.
Is our Data Science & AI Course for you?
As the world relies increasingly on data, we believe anyone that’s interested in Data Science and AI should apply to our Data Science course. If you’re a natural scientist, economist or engineer, you’ll find the course a natural fit. Similarly, if you enjoy crunching numbers as a Data Analyst, marketer or business analyst, our Online Data Science & AI course can help take you to the next level. Finally, if you're looking to understand how AI works, you'll cover forward-looking technologies such as Hugging Face and go deep into Machine Learning. Ultimately, if you want to become a Data Scientist, you should have one thing above all: motivation. We promote DiversITy, regardless of gender, sexual orientation, social and ethnic background, etc., and welcome everyone who is motivated: Let's code! 🌈. Learn more about becoming a data scientist in our latest blog article.
Keyfacts
- Full-Time: 12 weeks (Mo – Fr, 09.00am – 6.30pm)
- Participants: approx. 15
- Coaches: 2 per bootcamp
- Locations: remote (live online)
- Course language: English
- Graduation: Certificate "Data Scientist” + IHK Certificate “Specialist for Data Science and AI”
Our coaches

Lead Coach Data Part-Time + Data Science
Tech Stack





Why learn Data science? Data Science salaries in Germany are often more than €56,000 per year.
Starting dates
The next dates: Data Science & AI Training
Home alone? Come to campus to learn and exchange ideas with fellow learners. Just get in touch with us – happy to see you there!
Sep | 22nd Sep – 26th Jan ‘26 | Full-Time | Remote | English | Secure seat |
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Oct | 27th Oct – 26th Feb ‘26 | Full-Time | Remote | English | Secure seat |
Dec | 1st Dec – 1st Apr ‘26 | Full-Time | Remote | English | Secure seat |
Curriculum
This is what you learn in our Data Science & AI Bootcamp

Learn the basics of coding
Welcome to our Data Science & AI Bootcamp! After a short introductory phase, during which you’ll meet the coaches and your fellow participants, your learning journey begins by building a solid technical foundation. In this phase, you’ll lay the groundwork for all upcoming topics and develop the essential coding skills you’ll need for your success.
You’ll start by learning the basics of the Unix shell and how to navigate efficiently within this environment. Next, you’ll dive into the Python programming language and gradually work through its most important libraries, such as Pandas and NumPy, which are essential for data analysis and machine learning later on. You’ll write your first small programs and learn how to structure and execute your code effectively.
In addition, you’ll be introduced to Git and GitHub to explore modern and collaborative software development practices. Here, you’ll practice core concepts like branching, version control, and pull requests, which you’ll apply throughout the course.
Finally, you’ll gain an overview of the historical development of AI, the relationship between machine learning, deep learning, and neural networks, and an introduction to different data-related career paths. By the end of this phase, you’ll understand the roles of data scientists, data analysts, and data engineers, helping you better assess where you might position yourself in the future.

Advanced course 'exploratory data analysis'
Building on the foundations from the first phase of your Data Science & AI Bootcamp, you’ll now become familiar with tools like SQL and Pandas to extract and manipulate data from various sources — ranging from individual files to entire databases. After preparing and cleaning your data, you’ll move on to exploratory data analysis (EDA), where you’ll learn how to uncover insights and patterns hidden within complex datasets.
In this phase, you’ll work with a variety of data visualization libraries, including Matplotlib, Seaborn, Plotly, and Geo-visualization tools to create meaningful and visually compelling representations of your findings. You’ll also be introduced to data cleaning techniques, learn the basics of data ethics, and understand how to design and interpret A/B tests to validate insights and decisions.
This phase concludes with a two-day project focused on exploratory data analysis based on real-world datasets. With an emphasis on the business case, you’ll create tailored recommendations and compelling visualizations designed to communicate your insights effectively to fictional stakeholders.

First things first: the machine learning basics
In this phase, you’ll dive deep into the foundations of machine learning. You’ll explore the core concepts of supervised learning, including regression and classification. You’ll become familiar with different models such as linear and logistic regression, decision trees, random forests, k-nearest neighbors (KNN), and support vector machines. You’ll also learn when to apply each model and understand the assumptions and simplifications behind these algorithms.
Additionally, you’ll explore the basics of unsupervised learning, working with techniques like principal component analysis (PCA), clustering, and dimensionality reduction to identify patterns and structures in complex datasets.
A significant focus of this phase is on model tuning and optimizing predictive models. You’ll learn how to adjust hyperparameters to improve model performance and gain insights into concepts like the bias-variance trade-off, regularization, and cross-validation. You’ll also discover how optimization techniques such as gradient descent and cost functions are applied in practice.
This phase concludes with a four-day group project covering the entire data science lifecycle. Working collaboratively with Git and GitHub, your team will plan milestones and define the goals for your data product before presenting your findings to fictional stakeholders.

We dive deeper: advanced machine learning
In this phase, you’ll dive into advanced concepts of machine learning and artificial intelligence. Building on your existing knowledge, you’ll explore the fundamentals of deep learning and understand how artificial neural networks work. Using TensorFlow and Keras, you’ll learn to design and train your own models to solve complex problems.
A major focus of this phase is on natural language processing (NLP), where you’ll discover how computers can analyze and process human language. You’ll also be introduced to time series analysis, enabling you to make forecasts and predictions based on time-dependent data — an essential skill in many data-driven applications.
In addition, you’ll gain insights into machine learning engineering: you’ll learn how to deploy models into production environments, monitor their performance, and make results accessible through dashboards and cloud deployment (e.g., GCP).
With these advanced skills, you’ll be fully prepared to apply your knowledge in an extensive capstone project in the next phase.

Build neural networks, apply transfer learning, and put your knowledge into practice in a four-week capstone project with a final presentation.
In the final phase of your Data Science & AI Bootcamp, you’ll apply everything you’ve learned in an extensive capstone project. Over the course of four weeks, you and your team will develop a complete predictive modeling project — from data preparation and model training to delivering actionable results.
You’ll deepen your understanding of deep learning and artificial neural networks by building and training your own models. You’ll also explore transfer learning and work with pre-trained models from repositories like Hugging Face, enabling you to efficiently leverage state-of-the-art techniques for various applications.
Another key focus is machine learning engineering: you’ll learn how to deploy your models into production, monitor their performance, and make your results accessible using dashboards and cloud deployment (e.g., GCP).
Finally, you’ll present your findings to fictional stakeholders, strengthening your skills in data communication and stakeholder interaction.
Upon successful completion, you’ll receive the official IHK certificate “Specialist in Data Science & AI”, issued by HKBiS, the educational service of the Hamburg Chamber of Commerce, in addition to your neuefische graduation certificate.
Our partner companies
Our location
Study at our on-site campus
Need a change of scenery or do you prefer to learn together with others? Then simply use our campus in Hamburg by arrangement!

Information material
The most important info to download
Everything you need to know about our Data Science training in one pdf: Content, pricing, funding, and everything about the application process. ✅
FAQ
Really good questions, helpful answers
Our Data Science and AI course is suitable for numerous groups. Whether you’re reskilling, upskilling or just want to learn something new. Many participants come from business or academic backgrounds, but in the age of Data & AI, just about every industry is looking for people with the skills offered in our course. The most important thing? Motivation.
In our Data Scientist training you will learn everything you need to get started as a Data Scientist. You’ll learn Python, machine learning, neural networks, as well as the most common methods and frameworks from the industry. In addition, we will make you a professional in data visualization and communication with stakeholders - so you’re 100% ready for your new career as a Data Scientist.
In an era where digitization permeates every industry, the ability to harness and interpret data is paramount. As the currency of the future, data unlocks opportunities, empowering professionals to navigate the evolving landscape of customer behavior and strategic decision-making. By investing in a Data Science & AI Bootcamp, individuals not only enhance their skill set but also position themselves as indispensable assets in an increasingly data-driven world. Put simply? Data Scientists are in-demand.
Get trained as a data scientist and kickstart your career with a starting salary of around €55,000 per year. With no upper limits to earning potential, the demand for data scientists exceeds the supply, ensuring ample job opportunities.
Nothing impresses recruiters more than a complete production project – so combine your data pipeline and ML model into an end-to-end use case:
Data source & pipeline: Use APIs (e.g., public weather or financial data), load raw data into S3 or locally, transform it with Pandas or PySpark, and store it in a data lake or SQL database.
Model development: Create a classification or regression model (e.g., Random Forest, XGBoost), validate it via cross-validation, optimize hyperparameters, and save the final model.
Deployment: Package the model in a REST API with Flask or FastAPI, containerize it with Docker, and deploy via Heroku, AWS Lambda, or Azure Functions.
Monitoring & Reporting: Set up automated tests with unit tests and Prometheus-like logging. Create a dashboard (e.g., with Streamlit or Dash) to visualize model performance, drift, or data quality.
There are numerous funding options in Germany – combine them cleverly:
Education voucher (Kursnet/meinNOW): If you're unemployed or on parental leave, you often receive 100% funding, including travel and material costs.
Digital innovation programs: Funding programs such as 'go-digital' and BAFA support digitalization and AI in SMEs – anyone can submit approved courses.
Investment grants: If you're a founder in the data sector, you can apply for grants for technology and continuing education from the Chamber of Industry and Commerce (IHK) or the state.
Tax deductibility: Course fees, laptops, travel, textbooks – all count as business expenses and significantly reduce your tax burden.
🎯 Tip: Combine education voucher + bonus + tax deductibility – this way, your own contribution remains minimal and your investment is extremely sustainable!

What are you waiting for?
Our Student Admissions team is happy to talk with you, answer your questions, and advise you. Get in touch with us!