DMDT : Data analytics, AI and machine learning

Catalog of Institut Mines-Télécom Business School courses

Code

MGFE MIS 5209

Level

M2

Field

Systèmes d’information

Language

Anglais/English

ECTS Credits

4

Class hours

30

Total student load

80

Program Manager(s)

Department

  • Technologies, Information et Management

Educational team

Introduction to the module

This module offers an introduction to data analytics, artificial intelligence (AI), and machine learning (ML). The first part, dedicated to Data Analytics, enables students to master industry-standard tools (Python, Jupyter, Google Colaboratory) to conduct exploratory data analysis (EDA) and data visualisation, statistical testing, and modeling (regressions, PCA, Clustering). The course then extends to Machine Learning and AI, where students explore various predictive models and learning algorithms to address diverse challenges, while also discussing the broader implications of artificial intelligence. This comprehensive approach transforms complex data into strategic decision-making levers.

Learning objectives/Intended learning outcomes

  • 2.3 - Conduct a reflective and detached analysis that takes into account the challenges, issues and complexity of a request or situation in order to propose appropriate and/or innovative solutions in line with regulatory developments.
  • 5.1 - Monitor global and systemic changes in ecosystems in an international environment with a view to anticipating possible transformations and innovations and proposing proactive and proportionate responses to the major issues and challenges ahead.

Content : structure and schedule

1.Tools: Python, Jupyter and Google Colab
2.Data: Exploratory Data Analysis (EDA)
3. Statistics: Statistical hypothesis, statistical tests
4. Regression analysis: Linear regression, logistic regression
5. Multivariate techniques: Cluster analysis, PCA
6. Introduction to AI

Sustainable Development Goals

SDG 4: Quality Education
The module contributes to this goal by providing students with essential technical and analytical skills in the field of Artificial Intelligence and Data Science. By mastering tools such as Python and machine learning, students develop high-level digital literacy that is indispensable for their professional integration and for meeting the challenges of the modern economy, thus promoting high-quality, relevant education.

Number of SDG's addressed among the 17

1

Learning delivery

synchrone

Pedagogical methods

Lectures followed by practical sessions

Evaluation and grading system and catch up exams

Case study and class participation

Module Policies

Professor-Student Communication
● The professor will contact the students through their school email address (IMT-BS/TSP) and the Moodle portal. No communication via personal email addresses will take place. It is the student responsibility to regularly check their IMT-BS/TSP mailbox.
● Students can communicate with the professor by emailing him/her to his institutional address. If necessary, it is possible to meet the professor in his office during office-hours or by appointment.

Students with accommodation needs
If a student has a disability that will prevent from completing the described work or require any kind of accommodation, he may inform the program director (with supporting documents) as soon as possible. Also, students are encouraged to discuss it with the professor.

Class behavior
● Out of courtesy for the professor and classmates, all mobile phones, electronic games or other devices that generate sound should be turned off during class.
● Students should avoid disruptive and disrespectful behavior such as: arriving late, leaving early, careless behavior (e.g. sleeping, reading a non-course material, using vulgar language, over-speaking, eating, drinking, etc.). A warning may be given on the first infraction of these rules. Repeated violators will be penalized and may face expulsion from the class and/or other disciplinary proceedings.
● The tolerated delay is 5 minutes. Attendance will be declared on Moodle during these 5 minutes via a QR code provided by the teacher at each course start.
● Student should arrive on time for exams and other assessments. No one will be allowed to enter the classroom once the first person has finished the exam and left the room. There is absolutely no exception to this rule. No student can continue to take an exam once the time is up. No student may leave the room during an examination unless he / she has finished and handed over all the documents.
● In the case of remote learning, the student must keep his camera on unless instructed otherwise by the professor.

Honor code
IMT-BS is committed to a policy of honesty in the academic community. Conduct that compromises this policy may result in academic and / or disciplinary sanctions. Students must refrain from cheating, lying, plagiarizing and stealing. This includes completing your own original work and giving credit to any other person whose ideas and printed materials (including those from the Internet) are paraphrased or quoted directly. Any student who violates or helps another student violate academic behavior standards will be penalized according to IMT-BS rules.

Textbook Required and Suggested Readings

Bishop, C. M. (2006). Pattern Recognition and Machine Learning. Springer.

Keywords

data science, digital workplace, AI, machine learning

Prerequisites

Basic knowledge of Python