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Débute 8 June 2026 10:40

Se termine 8 June 2026

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IA pour les étudiants : Stratégies d'IA responsable pour la réussite académique

Maîtrisez l'utilisation responsable de l'IA pour la réussite académique—apprenez l'ingénierie des invites, les outils de recherche, et les stratégies d'éthique de l'IA en utilisant des plateformes comme DeepSeek, Scite.ai et Magic School.
Saint Petersburg State University via XuetangX

Saint Petersburg State University

344 Cours


Not Specified

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Free Online Course

Amélioration optionnelle disponible

Aperçu

Who is this course for?— Students who want to learn artificial intelligence for academic purposes and master working with text- and visual-based neural network tools— Prospective university students aiming to prepare for exams and higher educationWhat does the course include?Core Module:

— How neural networks work:

from machine learning to text generation— Avoiding pitfalls:

why AI makes mistakes and how to spot them— Ethical dilemmas:

copyright issues and academic integrity— Prompt engineering workshop:

learning to communicate with neural networksSpecialized module for students:

— Automating Routine Tasks:

generate tests, create summaries, and streamline your study process.— Practical AI Applications in Education:

ready-to-use examples you can implement in your own learning.The course features interviews with practitioners sharing real-world experiences of implementing AI technologies in education.What will you learn?Effective AI collaboration:

— Distinguish reliable results from erroneous conclusions— Apply specialized platforms for research and text analysisAutomate routine work:

— Delegate standard (and non-standard) tasks to AI— Structure information and extract dataCreate innovatively:

— Generate personalized assignments— Make the mundane exciting through interactive formatsMaster key tools:

— Generative AI Assistants:

DeepSeek, Perplexity, Qwen, Mistral, YandexGPT, GigaChat, Neuro, LLM Arena.ru— Academic Research Tools:

Scite.ai, Undermine, Litmaps, Research Rabbit— AI-Powered Education Platforms:

Twee, Brisk Teaching, Magic SchoolYou’ll master neural networks not as a trend, but as a practical tool—with full awareness of their capabilities, pitfalls, and ethical boundaries.The course is taught online and includes recorded lectures, tests, and additional materials.Upon completing the course, participants will:

Know:

The fundamental principles of how neural networks operate.The capabilities and key application areas of AI technologies in education.The limitations and potential risks of using AI.The main categories and examples of modern AI tools for education.The principles of effective interaction with AI systems (including the basics of prompt design).Ethical dilemmas and legal aspects related to AI use in academic settings.Be able to:

Critically evaluate AI-generated results:

distinguish reliable information from erroneous conclusions.Formulate effective prompts to solve various educational tasks using generative assistants.Apply specialized AI tools for research activities (literature search, source analysis, visualization of connections).Use AI to automate routine tasks (structuring information, data extraction, test generation).Analyze the feasibility and effectiveness of specific AI tools for solving given educational or research tasks.Possess:

Skills in effectively interacting with generative conversational assistants for tasks such as creating summaries, overcoming procrastination, completing creative assignments, and organizing the learning process.Proficiency in using research tools for analyzing scientific literature and supporting academic research.

Programme

  • Module 1. Introduction au cours
  • De quoi parle ce cours ?
    Introduction. Raisons du techno-optimisme
    Introduction. Polarité régionale des opinions
  • Module 2. Aspects psychologiques de l'interaction avec l'IA
  • Aspects psychologiques de l'interaction avec l'IA
  • Module 3. Fondamentaux de l'IA
  • Fondamentaux de l'intelligence artificielle et du machine learning
    Connaissance, bases de connaissances, graphes de connaissances
  • Module 4. IA générative : grands modèles de langage (LLM)
  • Comment l'IA comprend et génère du texte
    Notions de base pour solliciter des assistants IA textuels
  • Module 5. Aspects éthiques et juridiques du développement et de l'utilisation de l'IA
  • Régulation juridique de l'IA
    Éthique et politiques d'utilisation de l'IA
  • Module 7. Utilisation de l'IA dans la recherche. Partie 1
  • Utilisation de l'IA dans les activités de recherche sans enfreindre les exigences éthiques
    Approches pour accroître la productivité de la recherche
  • Module 8. Utilisation de l'IA dans la recherche. Partie 2
  • Réaliser des revues de la littérature à l'aide d'assistants IA
    Assistants IA pour analyser des textes et des données scientifiques
  • Module 9. Comment les réseaux de neurones vous aident à apprendre
  • Aspects appliqués de l'utilisation des réseaux de neurones
  • Examen final

Enseigné par

Anna N. Sytnik , Tatyana A. Gavrilova, Sergey Yu. Sevryukov, and Aleksandra K. Bordunos


Matières

Artificial Intelligence