Course detail
Evolutionary and neural hardware
FIT-EUDAcad. year: 2021/2022
This course introduces selected computational models and computer systems which have appeared at the intersection of hardware and artificial intelligence in order to address insufficient performance and energy efficiency of conventional computers in solving some hard problems. The course surveys relevant theoretical models, circuit techniques and computational intelligence methods inspired in biology. In particular, the following topics will be discussed: evolutionary design, evolvable hardware, neural hardware, neuroevolution and approximate computing. Typical applications will illustrate these approaches.
Doctoral state exam - topics:
- Inspiration in biology (adaptation, self-organization, entropy, evolution, learning).
- Hardware and reconfigurable devices for artificial intelligence.
- Cartesian genetic programming.
- Scalability issues of evolutionary circuit design and their solutions.
- Evolutionary design of analog circuits.
- Cellular automata in 1D and 2D, Wolfram classes, self-replication.
- Approximate computing (principles, error metrics, circuit approximation methods).
- Deep neural networks.
- Hardware implementation of neural networks.
- Neuroevolution.
Guarantor
Department
Learning outcomes of the course unit
Students will be able to utilize evolutionary algorithms to design electronic circuits. They will be able to model, simulate and implement bio-inspired computational systems, particularly evolvable and neural hardware.
Understanding the relation between computers (computing) and some natural processes.
Prerequisites
Not applicable.
Co-requisites
Not applicable.
Recommended optional programme components
Not applicable.
Recommended or required reading
Floreano, D., Mattiussi, C.: Bioinspired Artificial Intelligence: Theories, Methods, and Technologies. The MIT Press, Cambridge 2008, ISBN 978-0-262-06271-8
Reda S., Shafique M.: Approximate Circuits - Methodologies and CAD. Springer Nature, 2019, ISBN 978-3-319-99322-5
Trefzer M., Tyrrell A.M.: Evolvable Hardware - From Practice to Application. Berlin: Springer Verlag, 2015, ISBN 978-3-662-44615-7
Sekanina L., Vašíček Z., Růžička R., Bidlo M., Jaroš J., Švenda P.: Evoluční hardware: Od automatického generování patentovatelných invencí k sebemodifikujícím se strojům. Academia Praha 2009, ISBN 978-80-200-1729-1
Planned learning activities and teaching methods
Not applicable.
Assesment methods and criteria linked to learning outcomes
Submission of the project on time, exam.
Language of instruction
Czech, English
Work placements
Not applicable.
Aims
To understand the principles of bio-inspired computing techniques and their use particularly during the design, hardware implementation and operation of computer systems.
Specification of controlled education, way of implementation and compensation for absences
During the course, it is necessary to submit the project and pass the exam. Teaching is performed as lectures or controlled self-study; the missed classes need to be replaced by self-study.
Classification of course in study plans
- Programme VTI-DR-4 Doctoral
branch DVI4 , any year of study, summer semester, 0 credits, elective
- Programme VTI-DR-4 Doctoral
branch DVI4 , any year of study, summer semester, 0 credits, elective
- Programme VTI-DR-4 Doctoral
branch DVI4 , any year of study, summer semester, 0 credits, elective
- Programme VTI-DR-4 Doctoral
branch DVI4 , any year of study, summer semester, 0 credits, elective
- Programme DIT Doctoral, any year of study, summer semester, 0 credits, compulsory-optional
- Programme DIT-EN Doctoral, any year of study, summer semester, 0 credits, compulsory-optional
- Programme DIT-EN Doctoral, any year of study, summer semester, 0 credits, compulsory-optional
- Programme DIT Doctoral, any year of study, summer semester, 0 credits, compulsory-optional
Type of course unit
Lecture
26 hours, optionally
Teacher / Lecturer
Syllabus
- Introduction.
- Bio-inspired computational models (inspiration, principles of adaptation and self-organization).
- Approximate computing and energy efficiency.
- Hardware and reconfigurable devices for artificial intelligence.
- Evolutionary design.
- Cartesian genetic programming.
- Evolutionary design of digital and analog circuits.
- Scalability problems of evolutionary design.
- Computational development, cellular automata, L-systems.
- Deep neural networks and their hardware implementation.
- Approximate computing for neural networks.
- Neuroevolution.
- Recent HW/SW platforms and applications.
Guided consultation in combined form of studies
26 hours, optionally
Teacher / Lecturer