ARTIFICIAL INTELLIGENCE COURSES (Prof. Vagan Terziyan)
This set of 3
Master-level courses (5+5+5(+2)=15(+2) credits) is the
complete and complementary coverage of the modern Artificial Intelligence (AI) theory and technologies. It is taught
in English by Prof. Vagan Terziyan (who has already 40 years of experience in
AI). AI content is divided according to 3 major and popular approaches:
Top-Down AI; Bottom-Up AI; and Autonomic AI, each of which is taught as a
separate 5-credit course as follows:
- ITKS5440: Semantic Web and Linked Data;
- TIES4910: Deep Learning for Cognitive
Computing. Theory;
- TIES4530: Collective Intelligence and
Agent Technology.
Each of the
courses can be studied either separately as a stand-alone course or one can
choose any combination of these courses as a package. The courses are
self-contained (include all needed background content) and adapted to a wide
audience of potential students (from a variety of programs) so that THERE IS NO NEED FOR ANY PRE-REQUESITY.
Courses can be studied REMOTELY as all the needed material and
instructions are available within the courses’ web pages online. Course
assessment and grading are based on written assignments, with NO EXAM.
Brief
description of the courses is as follows:
I. Semantic Web and Linked Data. /5
credits, Autumn Semester/ (The
course concerns the so called Top-Down (“Symbolic”) approach to AI, when AI is
designed on the basis of data, information and knowledge, which is represented
in a standardized way and suitable for automated machine processing and
understanding, sharing, data and application integration, reuse, reasoning and
inference, etc. This includes various aspects of Knowledge Representation and
Reasoning, Data Tagging, Metadata Creation, Semantic Web, Linked Data, Ontology
(i.e. Web-based shared knowledge) Engineering, etc.
Course Web
page: https://ai.it.jyu.fi/vagan/itks544.html
II. Deep Learning for Cognitive Computing.
Theory. /5 credits, Autumn
Semester/ (The course concerns the so called Bottom-Up (“Statistical”) approach
to AI, when AI can be trained on the basis of available data. This includes
various aspects of Machine Learning (Supervised Learning, Unsupervised
Learning, Semi-Supervised Learning, Reinforcement Learning, Adversarial
Learning, Deep Learning, etc.). Cognitive Computing part is represented by a
variety of deep neural network architectures (including recurrent,
convolutional, adversarial, etc.) suitable for processing and translating
natural language texts, speech-to-text and text-to speech transformations,
speech recognition, tone (emotional and other) analysis on the basis of texts,
capturing cognitive profiles of people, recognizing and tagging patterns from
images and videos, generating new texts, handwritings, speech, images
(including art), etc.
Course Web
page: https://ai.it.jyu.fi/vagan/DL4CC.html
III. Collective Intelligence and Agent
Technology. /5 - 7 credits, Spring Semester/ (The course concerns the so called Autonomic
(“Self-Managed”) approach to AI, when AI is represented by autonomous
intelligent agents (i.e., software robots) capable to fully manage themselves
(having self-trained models of own objectives, beliefs, desires, intentions,
plans, values, consciousness to some extent, etc., and being capable to
communicate, negotiate, collaborate, replicate, etc., among each other within
collaborative or competitive environments). The topic is very
challenging and interesting due to the popular assumption that such autonomous
agents can one day become superintelligent and take majority of jobs from
humans. Therefore we believe that the best and safest way for a human in such a
context is to study (be professional in) this topic and even to drive it
further towards AI benefits (at least keep-on-eye on it).
Course Web
page: https://ai.it.jyu.fi/vagan/ties453.html