Master of Science in Applied Data Science and Generative Artificial Intelligence (MSADSGAI) Program

Program Overview

The main objective of this program is the training of recent graduates to help them land their first job as entry-level data scientists or AI engineers. The program will also support professionals in data-related roles who are interested in applying recent advances in AI to their daily work practice. 

The program adopts a Problem-Based Learning (PBL) approach to design and deliver the modules of the program. PBL is increasingly considered an effective instructional approach to facilitate students’ attainment of the high-level competences and transferable skills increasingly being demanded by industry and the public sector.

The program will be structured in 3 stages:

Stage 1 will ensure that students acquire basic programming skills and will introduce students to basic statistical analysis techniques and data visualization.

Stage 2 will expose students to advanced programming and statistical analysis.

Stage 3 will introduce students to machine learning techniques and generative AI and will allow them to apply their skills in industry contexts.

Program Outcomes

The student learning outcomes are grouped into the categories of analytical, technical, and communication, and there is substantial intersection between categories. In completing the program, students will:

Analytical Competences

  • Build statistical models and understand their power and limitations.
  • Design an experiment.
  • Apply problem-solving strategies to open-ended questions.
  • Determine when to use generative AI.
  • Translate business requirements into technical specifications.
  • Design secure generative AI systems.

Technical Competences

  • Acquire, clean, and manage data.
  • Handle and analyze massive datasets.
  • Use machine learning and optimization to make decisions.
  • Assemble computational processes to develop data science using widely available market tools.

Communication Competences

  • Visualize data for exploration, analysis, and communication.
  • Collaborate with other functional teams.
  • Perform reproducible data analysis.
  • Conduct data science activities mindful of policies, privacy, security, and ethical considerations.
  • Develop generative AI-based systems consistent with privacy best practices, ethical principles, and security.

    Program Summary

    The program consists of a total of 36 credits and encompasses 11 core courses along with a Capstone Project. It is structured to be completed in a specific sequence, as indicated by the prerequisites mentioned in the Course Descriptions section. The Capstone Project serves as a platform to integrate and apply the knowledge acquired throughout the degree program. Consequently, this course is taken after successfully fulfilling all other course requirements, except for the Generative AI for Data Science 3 course, which can be pursued simultaneously if desired.

    Course Code Course Name Credit Value
    MTI-521 Python for Data Science 1 3
    MTI-522 Python for Data Science 2 3
    MTI-621 Python for Data Science 3 3
    MDS-511 Math for Data Science 1 3
    MDS-512 Math for Data Science 2 3
    MDS-641 Math for Data Science 3 3
    MDS-731 Machine Learning for Data Science 1 3
    MTI-771 Generative AI for Data Science 1 3
    MDS-741 Analytics for Decision Making 3
    MTI-772 Generative AI for Data Science 2 3
    MTI-773 Generative AI for Data Science 3 3
    MAF-731 Capstone Project 3
    TOTAL CREDITS 36 CREDITS

    Program Requirements

    In order to be eligible for the award of degree, students must:

    • successfully complete and pass all core courses (33 credits);
    • successfully complete and pass the Capstone Project (3 credits);
    • maintain acceptable program performance and remain in good academic standing, which includes maintaining a cumulative GPA of 3.00 or above and no more than 2 “C” grades.
    • have no outstanding student disciplinary sanctions or investigations; and
    • be in good financial standing.

    Course Descriptions

    All courses will be offered either 100% online or in hybrid format, depending on the program format that students have selected.

    Python for Data Science 1 (MTI-521)
    3 credits

    In this course you will learn fundamental programming skills that enable you to search and sort data. You will be introduced to programming in Python and learn how to develop and run programs in Jupyter Notebooks. You will learn key programming principles and practice applying them to real business or industry problems. These skills will form the basis of your ability to address business or industry problems using data.

    Python for Data Science 2 (MTI-522)
    3 credits

    In this course you will learn fundamental programming skills that enable you to process textual and time-series information. You will further learn programming concepts in Python. You will learn advanced programming principles and will practice applying them to real business or industry problems. These skills will form the basis of your ability to address business or industry problems using data. Prerequisite: Python for Data Science 1

    Math for Data Science 1 (MDS-511)
    3 credits

    In this course you will learn fundamental statistical skills that enable you to analyze data. You will be introduced to basic descriptive and exploratory statistics and will learn how to implement them using software code. You will learn key statistical principles and practice applying them to real business or industry problems. These skills will form the basis of your ability to address business or industry problems using data.

    Math for Data Science 2 (MDS-512)
    3 credits

    In this course you will learn fundamental statistical skills that enable you to analyze data. You will be introduced to basic statistical analysis with a focus on regression models and learn how to implement them using software code. You will learn key statistical principles and practice applying them to real business or industry problems. These skills will form the basis of your ability to address business or industry problems using data.
    Prerequisite: Math for Data Science 1

    Python for Data Science 3 (MTI-621)
    3 credits

    In this course you will learn advanced programming skills that enable you to process large datasets and access external databases. You will further learn programming concepts in Python. You will learn advanced programming principles and practice applying them to real business or industry problems. These skills will further enhance your ability to address business or industry problems using data.
    Prerequisite: Python for Data Science 2

    Math for Data Science 3 (MDS-641)
    3 credits

    In this course you will learn advanced statistical skills that enable you to analyze panel data. You will be introduced to advanced statistical analysis and learn how to apply it using software code. You will learn key statistical principles and practice applying them to real business or industry problems. These skills will form the basis of your ability to address business or industry problems using complex data structures.
    Prerequisite: Math for Data Science 2

    Analytics for Decision Making (MDS-645)
    3 credits

    In this course you will apply the concepts, methodologies, and techniques from previous courses to tackle realistic analytical challenges. You will develop analytical skills and Competences required to inform decision-making processes in business and industry contexts. This course will allow you to consolidate your analytical skills and Competences.
    Prerequisites: Python for Data Science 3, Math for Data Science 3

    Machine Learning for Data Science 1 (MDS-731)
    3 credits

    In this course you will learn advanced statistical skills that enable you to classify, forecast and find patterns in data. You will be introduced to clustering, forecasting and classification techniques and learn how to apply them using software code. You will learn basic machine learning principles and practice applying them to real business or industry problems. These skills will form the basis of your ability to address business or industry problems using machine learning techniques. Prerequisites: Python for Data Science 3, Math for Data Science 3

    Generative AI for Data Science 1 (MTI-771)
    3 credits

    In this course you will learn how to apply generative artificial intelligence to process and transform complex, unstructured datasets. You will be introduced to prompt engineering and learn how to apply it for analytical purposes. These skills will complement your ability to process textual information and extract relevant insights from it.
    Prerequisites: Python for Data Science 3, Math for Data Science 3

    Generative AI for Data Science 2 (MTI-772)
    3 credits

    In this course you will further apply generative artificial intelligence to process and transform complex, unstructured datasets. You will be introduced to LangChain and learn how to apply it for analytical purposes. These skills will complement your ability to process textual information and extract relevant insights from it.
    Prerequisite: Generative AI for Data Science 1

    Generative AI for Data Science 3 (MTI-773)
    3 credits

    In this course you will further apply generative artificial intelligence to process and transform complex, unstructured datasets. You will learn how to design safe and secure systems abiding by international security and privacy standards. You will learn how to instrument generative AI-based systems and fine tune them for your specific business purposes.
    Prerequisite: Generative AI for Data Science 2

    Capstone Project (MAF-731)
    3 credits

    In this course you will apply the concepts, methodologies, and techniques from previous courses to provide a solution to a real business or industry challenge. This course will allow you to consolidate your analytical skills and competences and gain real experience as an aspiring data scientist, analyst, or AI engineer.