Module: Software Systems and Middleware (Part 1)

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
en/safeav/curriculum/softsys-b.txt · Last modified: 2025/11/05 09:03 by airi
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