| Study level | Bachelor |
|---|---|
| ECTS credits | 1 ECTS |
| Study forms | Hybrid or fully online |
| Module aims | The aim of the module is to introduce software architectures, middleware and lifecycle management for cyber-physical and autonomous systems. The course develops students’ understanding of how multi-layer autonomy stacks support reliable sensing, perception, planning and control under real-time, interoperability and safety constraints. |
| Pre-requirements | Basic programming skills and understanding of operating systems, computer networks and data structures. Familiarity with embedded or control systems and Linux-based development tools is recommended. |
| Learning outcomes | Knowledge • Explain the architecture and purpose of multi-layered autonomy software stacks. • Describe middleware technologies and their role in deterministic data exchange. • Identify lifecycle models and configuration management practices for autonomous software. Skills • Design modular autonomy software architectures integrating perception, localisation, planning, and control modules. • Configure and deploy middleware frameworks to support real-time, distributed communication. • Apply CI/CD and configuration management principles and orchestration tools. Understanding • Evaluate safety, verification, and cybersecurity aspects of autonomy software systems. • Recognize challenges in maintainability, scalability, and interoperability across heterogeneous systems. • Appreciate ethical, reliable, and transparent AI integration in autonomous decision-making. |
| Topics | 1. Introduction to Autonomy Software Stacks: – Functional layers: perception, localisation, planning, control, middleware, cloud. – Characteristics: real-time behaviour, determinism, scalability, resilience, interoperability. 2. Middleware and Communication Frameworks: – DDS, ROS2, MQTT, AUTOSAR Adaptive, CAN, Ethernet. – Quality of Service, message scheduling, fault tolerance. 3. Software Lifecycle and Configuration Management: – Lifecycle models (Waterfall, V-Model, Agile, DevOps, Spiral). – Configuration management, version control, CI/CD pipelines, baselines. 4. Development and Maintenance Challenges: – Real-time performance, safety, AI integration, cybersecurity, and continuous updates. 5. Simulation and Testing: – SIL/HIL methods, virtual environments and digital twins. 6. Ethics and Human–Machine Collaboration: – Transparency, accountability, and explainability in autonomy. |
| Type of assessment | The prerequisite of a positive grade is a positive evaluation of module topics and presentation of practical work results with required documentation. |
| Learning methods | Lecture — Cover theoretical and architectural foundations of autonomy software stacks and middleware frameworks. Lab works — Practical exercises in ROS2, DDS, and containerised deployments; simulation of autonomy software using Gazebo or CARLA. Individual assignments — System design and configuration management case studies applying CI/CD and risk analysis. Self-learning — Reading standards, research papers, and exploring MOOC content on middleware and DevOps. |
| AI involvement | Used for assisting code documentation, simulation setup, performance analysis, and literature review. Students must verify generated outputs, cite AI tool usage transparently, and ensure compliance with academic integrity policies. |
| Recommended tools and environments | ROS2, Gazebo, CARLA, AirSim |
| Verification and Validation focus | |
| Relevant standards and regulatory frameworks | MQTT, AUTOSAR, CAN, V-Model, DevOps, ISO 26262 |