Data Analytics in Python

  • Enseignement

    Détails

    Faculté Interfacultaire
    Départements DIT - NTE
    Domaine Interdisciplinaire : Digital Skills
    Code UE-I09.00013
    Langues Anglais
    Type d'enseignement Cours
    Cursus Master, Doctorat, Bachelor
    Semestre(s) SA-2023

    Horaires et salles

    Horaire résumé Mardi 14:15 - 16:00, Hebdomadaire (Semestre d'automne)

    Enseignement

    Responsables
    • Cuccu Giuseppe
    Enseignants
    • Cuccu Giuseppe
    Description

    Data Analytics has become ubiquitous over the past decades, as tools based on Machine Learning continue producing innovative results in increasingly more fields. This course provides the foundations to autonomously understand and navigate the topic, with a practice-first approach that yet remains well-grounded into the theory. Students are confronted with weekly assignments, which begin without assumptions on prior knowledge, but soon explore in depth the Python programming language, data handling and pre-processing, visualization and plotting, all the way into the foundation of Machine Learning proper. The skills and confidence acquired are immediately applicable to real-world challenges, both in an industrial, product-first environment, and towards modern challenges in research-oriented academic laboratories.
    The course is entirely in English, and available at all time on Moodle. The students are encouraged to follow the lectures at their own pace, and start at any time, with the Moodle forums and frontal lectures providing extra support.
    Main topics:

    • Python programming: language fundamentals, Jupyter notebooks, object-oriented programming, advanced functionalities, core libraries, debugging.
    • Handling data: data sources, defects and mitigation, access and formats, visualization.
    • Problem analysis: experiment design, data selection, normalization, feature selection, fundamental statistics.
    • Machine Learning: classification, regression, clustering, imputation, dimensionality reduction, with a few selected algorithms on each topic.
    • Study of modern libraries and tools: numpy, jupyter, pandas, seaborn/matplotlib, scikit-learn, keras/tensorflow.

    Code : UE-I09.00013

    Objectifs de formation

    This online course provides the students with the competences and skills to perform advanced Data Analysis using the Python programming language.

    Conditions d'accès

    The course Python programming online is recommended but not mandatory.

    Places disponibles 30
    Softskills Oui
    Hors domaine Non
    BeNeFri Oui
    Mobilité Oui
    UniPop Non
    Auditeur Oui
  • Dates et salles
    Date Heure Type d'enseignement Lieu
    19.09.2023 14:15 - 16:00 Cours PER 21, salle F230
    26.09.2023 14:15 - 16:00 Cours PER 21, salle F230
    03.10.2023 14:15 - 16:00 Cours PER 21, salle F230
    10.10.2023 14:15 - 16:00 Cours PER 21, salle F230
    17.10.2023 14:15 - 16:00 Cours PER 21, salle F230
    24.10.2023 14:15 - 16:00 Cours PER 21, salle F230
    31.10.2023 14:15 - 16:00 Cours PER 21, salle F230
    07.11.2023 14:15 - 16:00 Cours PER 21, salle F230
    14.11.2023 14:15 - 16:00 Cours PER 21, salle F230
    21.11.2023 14:15 - 16:00 Cours PER 21, salle F230
    28.11.2023 14:15 - 16:00 Cours PER 21, salle F230
    05.12.2023 14:15 - 16:00 Cours PER 21, salle F230
    12.12.2023 14:15 - 16:00 Cours PER 21, salle F230
    19.12.2023 14:15 - 16:00 Cours PER 21, salle F230
  • Modalités d'évaluation

    Examen - SA-2023, Session d'hiver 2024

    Date 08.02.2024 14:00 - 16:00
    Mode d'évaluation Par note

    Examen - SP-2024, Session d'été 2024

    Mode d'évaluation Par note

    Examen - SP-2024, Session d'automne 2024

    Mode d'évaluation Par note
  • Affiliation
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