Full-time, in English

Applied Data Science &
AI Master

Big data meets artificial intelligence — become an expert in Applied Data Science & AI.

You’ll build the essential skills across data engineering, data analytics, machine learning, deep learning and generative AI — from data architecture to productive AI systems (MLOps) — and learn to deploy AI responsibly and compliantly (trustworthy AI). Applied Data Science & AI is the consistent evolution of our former Data Science & Management master.

YOUR APPLIED DATA SCIENCE & AI MASTER IN A NUTSHELL

State-recognized
Language: English
120 ECTS credits
24 months full-time
Free extension if needed
Tuition €18,830 total
Reg fee €150 + Exam fee €500
Two installments
Berlin-Kreuzberg campus
Kienbaum career network
Online & on-campus exams
ACQUIN accredited
Start: April 1 / October 1

Digitalisation and artificial intelligence let us capture, analyse and use immense volumes of data. For companies that’s opportunity and challenge at once: how do you turn ever-growing data into real, reliable decisions with AI?

In this program you’ll acquire the essential skills in data engineering, data analytics, machine learning, deep learning and generative AI — from data architecture to productive AI systems (MLOps). You’ll learn to deploy AI responsibly and compliantly (trustworthy AI) and sharpen your profile as a sought-after Applied Data Science & AI expert with excellent career prospects. Applied Data Science & AI is the consistent evolution of our former Data Science & Management master.

"With the growing complexity of data science projects, companies no longer need only technical experts, but also additional skills."

Prof. Dr. Marcel Hebing

Program Director, Professor of Data Science

Laser-focused

Two modules at a time. No overloaded timetables, no parallel exams — just eight weeks of deep, structured learning per subject.

Maximum impact

Combine on-site classes with online content and sessions to apply your knowledge in group work for maximum impact.

Real career value

Work with the same tools the industry uses — Databricks, Tableau, GitLab, DataCamp. Backed by Kienbaum and a strong network of corporate partners.

More than a student number

Learn in fixed cohorts with direct, personal access to your professors. We guide you from application to graduation.

State-recognized
Accredited
100% recommendation rate
Strong partners

ACCREDITED & RECOMMENDED

Akkreditierungsrat
Studycheck
Senatsverwaltung
ACQUIN
Datacamp
Gitlab
Databricks
Tableau
Aws Academy
Hands-on
Competency-based

CURRICULUM — WHAT YOU'LL LEARN

Your Master’s in Applied Data Science & AI (M.Sc.) — 15 modules plus your master’s thesis.

In the first module you’ll work through every step of the data science life cycle and get an overview of how to successfully implement data science in organisations and run projects — including the fundamentals of project management. You’ll get to know the roles, tasks and perspectives for data science in business and society.

  • Data science process models
  • Working in a data science team
  • Overview of machine-learning methods
  • Project management fundamentals
  • Visualising and communicating analytical results

You’ll get to know the end-to-end data analytics process as a strategic tool for data-driven decisions — from data acquisition and advanced machine-learning techniques to communicating results convincingly.

  • Process models & project planning (CRISP-DM, agile & deployment-oriented approaches)
  • Data acquisition & data quality (API integration, web scraping, feature engineering)
  • Advanced ML techniques (gradient boosting, ensembles, deep learning)
  • Model evaluation (ROC, precision-recall, cross-validation)
  • Data storytelling & data visualisation for stakeholders

You’ll learn the tools of professional software development to implement data science projects cleanly — from version control and object-oriented programming to simulations and working with online data.

  • Testing & evaluating code (unit tests, integration tests, benchmarking)
  • Object-oriented, procedural & functional programming
  • Version control with Git & GitHub
  • Working with REST APIs, web scraping & parsing HTML
  • Full analysis project with online data (scraping, ETL, analysis, report)

You’ll master the core machine-learning methods and run ML projects independently — from data preprocessing and model selection to critically evaluating and explaining your results.

  • Learning paradigms: supervised, unsupervised & reinforcement learning
  • Data preprocessing & feature engineering (scaling, encoding, PCA)
  • Classification & regression (random forests, gradient boosting, XGBoost, SVM)
  • Model evaluation: metrics, cross-validation, bias-variance trade-off
  • Explainable AI (SHAP, LIME) and tooling (Python, scikit-learn)

You’ll learn the foundations and methods of data engineering and build powerful, scalable data architectures — from data warehouses and ETL pipelines to DevOps principles.

  • Foundations of data architecture, data lake & data warehouse
  • Data integration, storage, transformation & modelling
  • Building and using ETL pipelines with Python
  • Applying SQL
  • DevOps, continuous integration/delivery & containerisation

You’ll learn to bring machine-learning models reliably into production and operate them across their entire lifecycle — reproducibly, scalably and under continuous monitoring.

  • MLOps foundations & lifecycle management
  • Designing & implementing ML pipelines (e.g. with MLflow)
  • Monitoring & logging: detecting model and data drift
  • Automated retraining & versioning of models and data
  • Testing, governance & reproducibility of ML systems

You’ll learn to deploy AI responsibly, safely and compliantly (trustworthy AI) — from ethical trade-offs and systematic risk analysis to the key European regulations.

  • AI as a socio-technical system & the AI lifecycle as a governance structure
  • Principles of trustworthy AI (fairness, accountability, transparency, robustness)
  • Regulation: EU AI Act, NIS2 Directive, Cyber Resilience Act
  • Links to data protection & standards (ISO/IEC 42001, ISO 27001)
  • Governance, role and responsibility models for AI in practice

You’ll learn to prepare data analyses so they become understandable and usable for different audiences — from data storytelling and visualisation to interactive data products.

  • Data storytelling: narrative structures for data analyses
  • Principles of good data visualisation & chart selection
  • Interactive dashboards & data applications (Python frameworks)
  • User experience (UX) for data-driven applications
  • Documentation & reproducibility (model cards, data dictionaries)

You’ll understand the foundations of neural networks and generative models and gain a solid introduction to deep learning and generative AI — up to transformer architectures.

  • Neural networks: perceptron, MLP, CNN, RNN & backpropagation
  • Loss functions, optimizers & overfitting control
  • Discriminative vs. generative models (autoencoders, VAE)
  • Foundations of generative language models (tokenisation, language modelling)
  • Introduction to transformers, attention & scaling laws

You’ll learn to manage and govern data as a valuable corporate asset — from data collection and data strategy to enterprise-wide, low-barrier provisioning.

  • Elements & frameworks of data governance
  • Data architectures (data lake, data warehouse, data mesh)
  • Data lifecycle management & developing data strategies
  • Data stewardship, data ownership & metadata management
  • Data quality, master data management, data security & privacy

You’ll enter your chosen specialization track and build the foundation for the research project that follows — choose from Data Engineering or Generative AI (GenAI).

  • Deep dive into your chosen track (Data Engineering or GenAI)
  • Current methods & tools of the track
  • Foundation for the research project in the same semester

You’ll build a solid understanding of academic research methods and choose the right approach for your question — preparing you for the research project and master’s thesis.

  • Research paradigms & quality criteria of academic methods
  • Qualitative methods (interviews, case studies) & analysis
  • Quantitative methods (surveys, experiments) & statistics
  • Constructive research / design science (prototypes, artefacts)
  • Developing research designs & critical reflection

Over four months you’ll work on an applied question in your specialization — rigorously and hands-on (12 ECTS).

  • Independent research project in your chosen track
  • Applying the methods from Advanced Research Methods
  • Scientific treatment of a real-world problem
  • Ideal preparation for the master’s thesis

In your third semester you’ll choose an elective on current topics that matches your interests (excerpt; offering varies).

  • IT & Cybersecurity
  • Cyber Resilience
  • Visual Communication
  • Design Thinking Methods: Product Development & Service Design
  • Cyber Forensics
  • Agile Project Management
  • Agentic AI & RAG Workflow Engineering Lab
  • Creative Problem-Solving & Critical Thinking
  • AI Transformation in Organisations

You’ll develop, analyse and evaluate digital business strategies and apply strategic methods to concrete concepts of digital and AI-driven transformation.

  • Strategic management in the age of digital transformation
  • Strategic analysis of digital business models (e.g. platform economy)
  • Digital corporate strategies & innovation initiatives
  • Implementing digital strategies (roadmap, communication)
  • Digital maturity & AI-driven solutions

You’ve (almost) completed your studies. In your master’s thesis you’ll work on a focused research question of your choice — your professors will help you shape a topic, or you can take on one we propose. The colloquium now takes place as part of your thesis phase.

Choose your specialization

You’ll choose one of four specialization tracks for your studies — focusing your master’s in the area that fits your career goals best.

Specialization modules:

  • Modern Cloud & Lakehouse Engineering
  • Research Project

Specialization modules:

  • Advanced Methods in Generative AI
  • Research Project

Elective Module

In your third semester, you’ll choose an elective module on current topics that matches your personal interests (excerpt; offering varies):

  • Creative Problem-Solving & Critical Thinking
  • IT & Cyber Security
  • Cyber Resilience
  • Visual Communication
  • Design Thinking Methods: Product Development & Service Design
  • Cyber Forensics
  • Agile Project Management
  • Agentic AI & RAG Workflow Engineering Lab
  • AI Transformation in Organisations

MEET YOUR PROFESSORS AND LECTURERS

Discover an academic environment at the DBU shaped by expertise and passion. Get to know your professors and lecturers, who will accompany you on your path toward excellence and innovation.

Professor
Prof. Dr. Marcel Hebing
Professor
Prof. Dr. Daniel Ambach
Professor
Prof. Dr. Martin Manhembué
Professor
Prof. Dr. Alexander Koeberle-Schmid
Professor
Prof. Dr. Jürgen Weimann
Lehrbeauftragte:r
Dr. Ingrid Wahl
Lehrbeauftragte:r
Dr. Georg Merz
Lehrbeauftragte:r
Sebastian Seck
Lehrbeauftragte:r
Martin Fischer
Lehrbeauftragte:r
Dilyana Bossenz
Lehrbeauftragte:r
Christoph Fleig

Talk to Marcel

Got questions about the program? Drop Marcel — your future Program Director — a line and ask anything you’d like to know about the Applied Data Science & AI Master’s.

Credit for prior learning

ADMISSION & RECOGNITION

What you should bring with you:

You hold a Bachelor’s degree (180 ECTS) in (business) informatics, natural sciences, social sciences or engineering — or an equivalent national or international university degree. Career changers from economics or psychology are also welcome. Prior knowledge of Python/Pandas, data structures and statistics is recommended (preparatory courses available).

Already started a master’s program? Or you have substantial professional experience in a relevant field? Send us your documents and certificates — ideally, you can bring that experience into your studies.

Want to study but not sure how to balance family or work with your studies? We’ll work out an individual study plan with you so you can fit it all together.

Your investment

TUITION & FINANCING

The DBU offers the Applied Data Science & AI Master’s as a 24-month full-time program. Tuition is paid in two installments, with one upfront payment at enrollment and one at the start of year two. On top, you have a one-time registration fee and an examination fee. If your studies take a little longer than planned, you can extend beyond the standard period free of charge.

Credit awarded for prior learning shortens your overall study time — which directly reduces your total tuition. Tuition fees may also be tax-deductible (please check the rules in your country). Pausing your studies for personal or health reasons is straightforward — and during that time, you don’t pay tuition.

€10,740
Installment 1 — due at enrollment
Standard duration: 24 months
Credit for prior learning possible

The first half of your tuition, paid at enrollment — get going right away.

€7,440
Installment 2 — start of year 2
Plus: €150 registration fee
Plus: €500 examination fee

The second installment of your total €18,830 tuition, due at the start of your second year.

€0
If you extend
Up to 6 months extra at no cost
Pause for personal or health reasons

Life isn’t always predictable. Extend your studies if needed — without any additional cost.

FAQs

Frequently asked questions about studying at the DBU

Once you’ve filled in our form, we’ll get back to you personally to ask for the additional documents we need (Bachelor’s certificate, ID, language proof, etc.). After we review your application, you’ll receive a study contract. Sign and return it — and you’re officially a DBU student.

Yes — you will combine on-site lectures with online learning videos.

For the Master’s, you need a Bachelor’s degree (180 ECTS). However, if your background is non-traditional — e.g. you studied in economics or psychology and want to move into data science — we still welcome your application. Substantial professional experience in a related field can also count. Talk to our student advisory team and we’ll find the right path.

Total tuition for the Applied Data Science & AI Master’s is €18,830 — paid in two installments (€10,740 at enrollment and €7,440 at the start of year two). On top, you have a €150 registration fee and a €500 examination fee. If your studies take longer than planned, you can extend free of charge.

Yes — your study plan can be flexibly adjusted at any time. If life changes, just talk to us and we’ll find a setup that works for you.

The DBU was officially recognized by the Berlin Senate Chancellery in November 2019 as a state-recognized university of applied sciences in Germany. Our Master’s programs are accredited by ACQUIN — internationally recognized and valid across the EU.

Of course. Send us evidence of successfully completed courses or relevant professional experience, and we’ll review what can be credited toward your degree — reducing your total study time and tuition accordingly.

  • Klausuren (Online)
  • Studienarbeiten
  • Modul begleitende Studiennachweise wie z.B. kurze Erfolgskontrollen, etc.

Absolutely. The DBU’s Master’s programs are designed to build directly on Bachelor’s-level competencies — including those acquired at the DBU.

Yes — you can pursue an MBA with a Bachelor’s degree, though most MBA programs additionally require professional work experience. Talk to us if you’re considering this path.

Yes — and naturally, it’s also 100% digital. Our digital library gives you access to specialist eBooks, journals and learning materials 24/7, alongside our online learning platform.

Yes. Send us a quick message at hello@dbuas.com and we’ll arrange a no-commitment look at our learning platform.

Questions about the
Applied Data Science & AI Master?

Still have questions about applying, admissions, our study programs, or anything else about life at the DBU? Marleen and Nina from the DBU team are happy to talk with you personally.
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