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F students are inventors (X video)

16,956 просмотров • 1 год назад •via X (Twitter)

Комментарии: 8

Фото профиля Black Lockhart
Black Lockhart1 год назад

kracc bacc i have feelings for you

Фото профиля kracc bacc
kracc bacc1 год назад

thank you

Фото профиля 🇵🇸🇮🇱MaoDeBong🇵🇸🇮🇱
🇵🇸🇮🇱MaoDeBong🇵🇸🇮🇱1 год назад

g

Фото профиля (static tv) 🚫AI but gay
(static tv) 🚫AI but gay1 год назад

I guess I was just too much of an inventor

Фото профиля WWIA7062
WWIA70621 год назад

@grok explain this in JFK terms

Фото профиля Grok
Grok1 год назад

My fellow students, ask not what your GPA can do for you—ask what you can do with your creativity. Research shows a complex link between grades and innovation. Some studies suggest lower GPAs may signal bolder, unconventional thinking, as students focus less on rigid academic systems. Yet, others find higher GPAs reflect discipline that can fuel creative problem-solving, especially in structured settings. Evidence varies by how we measure creativity—tests often show stronger links to achievement than grades alone. Let us channel our energies, whether our GPA is high or low, into bold ideas that light the path to progress, for innovation knows no bounds.

Фото профиля ImaCanadian
ImaCanadian1 год назад

Kracc bacc expanding his empire

Фото профиля Red
Red1 год назад

i edged and exploded immediately!!!

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