Procédé de Gram-Schmidt
Auteur: Christian Côté, professeur de mathématique et chargé de cours Institutions: Cégep régional de Lanaudière à Terrebonne et Université de Montréal Champ: Algèbre Cours: Algèbre linéaire Aimez-nous sur Facebook: / mathematicfr Suivez-nous sur Twitter: / mathema_tic Table des matières: 1. Mise en contexte = 00:07 2. Exemple 1 = 00:28 3. Exemple 2 = 01:01 4. Théorème: Le procédé de Gram-Schmidt = 02:34 5. Exemple 3 = 03:37 6. Résumé = 05:34

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