:::danger
Initial drafts, could be outdated. Scroll below for actual maps
:::
```markmap
# MIMER Training Program
## Core AI Foundations
### Machine Learning
- Foundations of Machine Learning: Theory to Practice
- Applied Machine Learning for Real-World Data
- Scalable & Efficient Machine Learning on HPC Systems
### Deep Learning
- Deep Learning Fundamentals
- Advanced Architectures for Vision and Sequence Modeling
- Scalable Deep Learning on GPUs and HPC Systems
- Optimization, Regularization, and Model Compression
### Generative AI
- Foundations of Generative AI
- Large Language Models (LLMs): Fine-Tuning and Adaptation
- Multimodal & Diffusion Models for Content Generation
- Scalable & Trustworthy Generative AI Systems
- Generative coding (for beginners/advanded)
- Local LLM, Ollama and local agents
---
## AI Infrastructure & Systems
### AI Systems & Engineering
- Distributed AI
- MLOps & LLMOps
- AI Infrastructure & HPC Integration
- Model Deployment & Serving
- AI Optimization & Acceleration
- Edge AI Systems
### Data Engineering for AI
- Data Governance
- Data Quality & Curation
- Big Data Architectures
- Data Security & Privacy
- Synthetic Data Systems
### AI Security
- Adversarial Machine Learning
- Model Attacks & Defenses
- Secure Model Deployment
- AI Red Teaming
- Robustness Testing
- Secure AI agents
---
## Advanced AI Paradigms
### Reinforcement Learning
- Reinforcement Learning
- Multi-Agent Systems
- Control Systems
- Optimization & Planning
- Autonomous Systems AI
### AI for Scientific Computing
- Physics-Informed AI
- Surrogate Modeling
- AI-Accelerated Simulation
- Hybrid AI + Numerical Methods
- Scientific Foundation Models
### Computer Vision & Perception
- Image Analysis
- Video Understanding
- 3D Vision
- Remote Sensing AI
- Medical Imaging AI
### Natural Language Processing
- Text Analytics
- Information Retrieval
- Knowledge Graphs
- Speech & Audio AI
- Multilingual AI Systems
### Multimodal AI
- Vision-Language Models
- Audio-Visual AI
- Cross-Modal Retrieval
- Embedding Systems
---
## Responsible & Sovereign AI
### Trustworthy & Responsible AI
- Explainable AI (XAI)
- Fairness & Bias Mitigation
- AI Safety & Robustness
- Privacy-Preserving AI
- AI Governance & Compliance
- Risk Assessment Frameworks
### AI Security & Sovereignty
### AI Governance & Policy Compliance
```
## This tree older (see below for treee in D3.1):
```markmap
## Domain AI Applications
### AI for Industry & Society
- AI Strategy & Digital Transformation for Enterprises
- AI Adoption Roadmaps for SMEs
- ROI Assessment and Business Case Development for AI
- AI for Risk Management and Compliance
- Human–AI Collaboration in the Workplace
- Ethical and Trustworthy AI in Industrial Deployment
- AI Governance & EU AI Act Readiness
- AI for decision makers
### AI for Manufacturing
- AI for process modelling
- Reinforcement learning for process control
### AI for Life Science
- AI for Genomics and Multi-Omics Data Analysis
- Deep Learning for Medical Imaging
- AI in Drug Discovery and Molecular Design
- Protein Structure Prediction with AI
- AI for Clinical Decision Support Systems
- AI for Epidemiological Modeling
- Digital Twins in Personalized Medicine
- Responsible AI in Healthcare Applications
### AI for Materials Science
- AI for Materials Discovery and Design
- Machine Learning for Computational Chemistry
- Surrogate Modeling for Simulation Acceleration
- Physics-Informed Neural Networks (PINNs)
- AI for Microstructure Analysis
- Generative Models for Novel Material Design
- AI-Enhanced Molecular Dynamics Simulations
- Autonomous Materials Experimentation
### AI for Autonomous Systems
- Core Perception & Sensing
- Decision-Making & Control
- Reinforcement learning for robotic control
### AI for the Gaming Industry
- Game AI Fundamentals
- Advanced AI for Gameplay
- Generative AI for Games
- AI for Player Experience & Analytics
- Technical & Scalable AI in Gaming
- AI for ray tracing and neural rendering
```
```markmap
# AI Skill Tree
```
```markmap
## Foundations of AI
### Mathematical Foundations
- Linear Algebra
- Calculus
- Probability & Statistics
- Optimization Theory
### Programming Fundamentals
- Python
- Data Structures
- Algorithms
### Data Handling
- Data Cleaning
- Feature Engineering
- Exploratory Data Analysis (EDA)
---
```
```markmap
## Machine Learning
### Basic ML Frameworks
- scikit-learn
### Supervised Learning
- Regression
- Classification
- Ensemble Methods
### Unsupervised Learning
- Clustering
- Dimensionality Reduction
### Model Evaluation
- Cross-Validation
- Evaluation Metrics
### Practical ML
- Overfitting / Underfitting
- Regularization
- Data Leakage Prevention
---
```
```markmap
## Deep Learning
### Core Concepts
- Neural Network Architectures
- Forward / Backward Propagation
- Activation Functions
- Loss Functions
### Deep Learning Frameworks
- PyTorch
- TensorFlow / Keras
### Training Techniques
- Optimization Algorithms
- Dropout & Batch Normalization
- Learning Rate Schedulers
### Computer Vision
- CNNs
- Image Segmentation
- Object Detection
### Natural Language Processing
- RNNs, LSTMs, GRUs
- Transformers
- Pretraining & Fine-Tuning
---
```
```markmap
## Generative AI
### Generative Models
- Variational Autoencoders (VAEs)
- Generative Adversarial Networks (GANs)
### Large Language Models (LLMs)
- Architecture & Attention Mechanisms
- Prompt Engineering
- Retrieval-Augmented Generation (RAG)
- Fine-Tuning & LoRA
- Agents
### Multimodal Models
- Vision-Language Models
- Diffusion Models
- Speech-to-Text / Text-to-Speech
---
```
```markmap
## Reinforcement Learning
### Foundations
- Markov Decision Processes
- Policies, Rewards & Value Functions
### Core Algorithms
- Q-Learning
- SARSA
- Deep Q-Networks (DQN)
### Advanced RL
- Policy Gradient Methods
- Actor-Critic Methods
- Multi-Agent RL
---
```
```markmap
## MLOps & AI Engineering
### Data Pipelines
- Data Versioning
- Streaming & Batch Processing
### Model Deployment
- REST APIs
- Containerization (Docker)
- Cloud Platforms (Azure, AWS, GCP)
### Model Monitoring
- Drift Detection
- Model Retraining Cycles
### CI/CD for ML
- Automated Training Pipelines
- Experiment Tracking (MLflow, Weights & Biases)
---
```
```markmap
## AI Safety, Ethics & Governance
### Bias, Fairness and Ethics
- Dataset Bias
- Algorithmic Fairness Techniques
- AI Ethics
### Explainability
- SHAP
- LIME
- Interpretability Tools
### Privacy
- Privacy-Preserving AI
- Differential Privacy
- Secure Multiparty Computation
- Homomorphic Encryption
- Federated Learning
- Privacy in LLMs and generative AI
### Security & Robustness
- Adversarial Attacks
- Model Hardening
- Formal verification
- Counter example driven optimization
### Cybersecurity
- Secure Coding for AI engineering
- Secure AI agents and LLMs
- Secure AI workflows
### Policies & Compliance
- Responsible AI
- Governance Frameworks
- Regulatory Standards (EU AI Act, etc.)
- Privacy regulation and GDPR
- Cybersecurity standards and guidelines for AI
```
## These trees will be in D3.1:
```mermaid
mindmap
root((Curriculum))
Foundational AI
Generative AI
Applied And Advanced AI
Focus Areas
Industry & Society
Life Sciences
Materials Science
Autonomous Systems
Gaming
```
```markmap
## Foundational AI
### Machine Learning
- Practical Machine Learning
- Machine Learning for Real-World Tabular Data
- Scalable & Efficient Machine Learning on HPC Systems
- Natural Language Processing
### Deep Learning
- Introduction to Deep Learning
- Convolutional Neural Networks
- Recurrent Neural Networks
- Transfer Learning and Fine Tuning
- Group Relative Policy Optimization (GRPO)
- Scalable and Resource-efficient Deep Learning
### AI Development Life Cycle
- Introduction to MLOps
- Introduction to LLMOps
- Data preparation and representation
- Hyperparameter Tuning
- Inference-optimized AI
```
```markmap
## Generative AI
### Tasks and Paradigms
- Large Language Models (LLMs)
- Vision Language Models
- Audio Models for STT and TTS
- Diffusion Models
### Agentic AI
- Responsible Use of Generative AI in Assisted Coding
- Retrieval Augmented Generation
- Agentic AI 101
- Model Context Protocol and AI Skills
- Sovereign LLM and agents
```
```markmap
## Applied and Advanced AI
### Trustworthy AI
- Ethical and Trustworthy AI self-assessment guide
- Federated Machine Learning
- Privacy-preserving AI
- Synthetic data generation
- Cybersecurity for AI systems
### AI for Science
- Physical AI and Surrogate Modeling
- Foundational models
- Hybrid AI + Numerical Methods
### Computer Vision
- OCR and handwritten text recognition
- Segmentation and object detection
```
## This tree ~~is~~ will be also in D3.1:
```markmap
## Focus Areas
### Autonomous Systems
- Core Perception & Sensing
- Decision-Making & Control
- Reinforcement learning for robotic control
- AI agents in cyberphysical systems
- Classical control and AI
### Gaming
- Game AI Fundamentals
- AI Moderation for Safe Game environments
- Game Jam and Hackathons
- AI for eductional games
- Game engines and AI for ray tracing and rendering
```
```markmap
## Focus Areas
### Industry & Society
- Introduction to AI for decision makers
- Human–AI Collaboration in the Workplace
- Ethical and Trustworthy AI for decision makers
- Digital competence, security and best practices
- AI for change: opportunities and risks
```
```markmap
## Focus Areas
### Life Sciences
- Generative AI for life sciences
- Explainable AI for life sciences
- Protein Language Models for Structure Prediction
- Vision language models for Medical Imaging
- Reconstructing Proteins and Molecules from Microscopy
- Semantic, instance and panoptic segmentation
- Feature extraction in Genomic data
- Graph Neural Networks and Transformers in Life Sciences
### Materials Science
- Data-driven methods for X-ray & CT
- Fingerprinting of Industrial Objects
- Deep Learning and Computer Vision for Defect Detection
- Designing Machine Learning Potentials
```
---
---
# AI Learning Personas
# Manager/Decision maker
- Manager in company (general)
- Manager in company (advanced AI use)
- Decision maker public administration
- Politician
# Layperson
- Citizen
- Employee private or public sector (non-technical, uses AI at work or needs awareness)
- Journalist (including content creator, editor etc.)
- Lawyer
# Student
- University student STEM field
- University student non-STEM field
- University student quantitative field (non-STEM)
- University student non-quantitative field
- High school student and below
# Artist
- Sound (musician, sound artist)
- Visual and Physical (actor, painter, illustrator, sculptor, art director, architect, digital art creator etc.)
- Text (author, art director)
# Technical specialist
- Developer (not AI-expert)
- Statistician
- Engineer (not AI-expert)
# AI and data specialist
- AI engineer
- Data scientist (include for example bio-informantics etc.)
# Researcher
- AI researcher
- Researcher STEM subject (using AI or needs AI awareness)
- Researcher non-STEM subject (using AI or needs AI awareness)
- Researcher quantitative field (non-STEM)
- Researcher non-quantitative field