Title
AI and Machine Learning
Course ID
I.1
Semester
1
ΕCTS
6
Κατηγορία
Compulsory
Description
This module provides a structured and comprehensive introduction to
modern Artificial Intelligence (AI) and Machine Learning (ML). Students
develop a solid understanding of the concepts, the mathematical and
computational underpinnings, and the operational components of state of
the art AI and ML techniques, tools, and enabling infrastructures.
The course is designed to equip students with the ability to critically
evaluate and competitively manage AI systems, henceforth understand how
models are developed, deployed, and governed, and assess their
implications in real-world organizational and societal contexts. The
module coverage spans from classical ML approaches (e.g. linear models,
decision trees) to advanced deep learning architectures and generative
AI and foundation models, highlighting both strengths and limitations of
different model families.
Students learn how AI-driven solutions are designed and managed across
the full ML lifecycle, from data acquisition and preprocessing to model
training, validation, deployment, and monitoring, while accounting for
data governance, quality, ethical, and socio-technical constraints. A
key perspective of the module design is to offer students the knowledge
to foster the integration of AI into business strategy and operations.
More specifically, the module will enable students to co-design and
evaluate AI-enabled products and services, and lead or contribute to
AI-driven transformation initiatives across diverse sectors and
functional roles such as in finance, operations, marketing, and strategy
or policy.
The module employs examples/exercises, paper discussions, and state of
the art pedagogical approaches (e.g. group work and flipped classroom
activities).
Besides the theoretical aspects, the students will be introduced to the
associated tools/development platforms per Leacture topic. e.g., Python
Libraries, PyTorch/TensorFlow/Keras, Enterprise and Cloud Platforms