Course Catalog

ARTIFICIAL INTELLIGENCE (DS3026)

Introduces some of the key ideas and concepts in artificial intelligence (e.g. knowledge bases, problem solving). Provides an overview of current applications (expert systems and rule-based systems, language understanding, perception, learning). Introduces some of the techniques (matching, goal reduction, tree-pruning, searching, etc.) that are typically used.

MULTIVARIATE STATISTICAL ANALYSIS (DS3066)

This course is designed to extend the statistical analysis of environmental and social science data: it will highlight the building blocks of multivariate analysis from the definition of the research problem to the interpretation of the results. Both dependence methods (that is in which one or several variables can be expressed in terms of the others – for instance Multivariate Analysis of Variance or Discriminant Analysis) and interdependence methods (where all the variables are analysed simultaneously – for instance Factor & Cluster Analyses or Multidimensional Scaling) will be studied.
Significant applications will be analysed and discussed so as to develop new insights.
Projects (individual or with peers), will allow the students to apply the multivariate models, thereby enhancing the importance of work and knowledge sharing.
Statistical software package: SPSS.
Prerequisite: MA 1020

DATABASE APPLICATIONS (DS3068)

Introduces databases from the programmer's perspective. IT and CS students have common lectures but different projects. IT students learn the fundamentals of database design, SQL, and how to integrate a database into applications. CS students learn the fundamentals of database design, application integration, query motors, and space management.

TOPICS IN DATA SCIENCE (DS3091)

TOPICS VARY BY SEMESTER

INTERNSHIP (DS3098)

An Internship can replace one elective from the ICT curriculum. It may be done in France or elsewhere. Internships may be taken for 1 or 4 credits. Students may do more than one internship, but internship credit cannot cumulatively total more than 4 credits.

INTERNSHIP (DS3980)

Internships may be taken for 0 credits. Students may do more than one internship, but internship credit cannot cumulatively total more than 4 credits.

TOPICS IN DATA SCIENCE (DS4091)

Topics vary by semester

PLANETARY AND ENVIRONMENTAL DATA SCIENCE (DS5010)

Environmental systems are controlled by multiple factors coming from outer space, atmosphere, ocean, earth systems. We want to understand many existential questions that are related to environmental systems. What is happening with our current environmental system? Is there an alternative system that we can live on? How can we learn from other planetary
systems? How can we prevent ourselves from being destroyed or becoming extinct? To answer these questions, Environmental Scientists and Data Scientists will face the challenge of making decisions based on their understanding of the environmental systems and the abundant availability of data. We will explore remote sensing techniques, spectroscopy imaging, planetary atmosphere, astrochemistry, habitability, among other things. The course encourages students to think critically and reason quantitatively about an environmental problem rather than just focusing on getting a specific answer. Students will learn to read scientific articles, to synthesize data and to use statistical models to provide answers with estimates of uncertainty that are critical for decision makers. The course will also focus on visualizing data, communicating results in a way that allows stakeholders to make decisions and the public audience to understand. This course will have hands-on practical work with real data, R or Python, statistical and/or machine learning software packages. This course is an integrated course that combines knowledge that students acquired in different sub-fields disciplines: science, computer science, and writing. This course is therefore crucial for students to conduct a throughout (?) research project from starting with finding data source to writing up their finding. For graduate students, research skills such as data science project design and implementation will be emphasized.

HUMAN RIGHTS AND DIGITAL TECHNOLOGIES (DS5039)

This course joins two seemingly disparate disciplines – law and science – in an attempt to understand more fully the dense, multidimensional nature of the digital revolution and how we are going to live with it. Human Rights and Digital Technology is designed as an interdisciplinary primer, a guide to examining the critical issues that shape our use of digital technology.