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Project: #FakeNews Detector Using #Python and #ML. Models: DecisionTree Classifiers. Logistic Regression Model. Random Forest Classification ID: FE/23/68871350 #3MTTLearningCommunity #My3MTT 3MTT Nigeria Github Repo to project:

13,193 просмотров • 2 лет назад •via X (Twitter)

Комментарии: 10

Фото профиля Shamsuddeen Jibril Bagaldi
Shamsuddeen Jibril Bagaldi2 лет назад

@3MTTNigeria I wish you all the best sir

Фото профиля Yusuf Nasir Ahmad
Yusuf Nasir Ahmad2 лет назад

@3MTTNigeria Thank you so much Drone Master

Фото профиля Th3Cl0udGuy ☁️💚🌙
Th3Cl0udGuy ☁️💚🌙2 лет назад

@3MTTNigeria May Almighty Allah put Barakah in it brother (ameen)

Фото профиля Yusuf Nasir Ahmad
Yusuf Nasir Ahmad2 лет назад

@3MTTNigeria Cyber Security, check the work on Github and check how Fake News breed security threats in Nigeria. I am open for Colab sir.

Фото профиля Yusuf Hamisu
Yusuf Hamisu2 лет назад

@3MTTNigeria Best wishes, Nasiru

Фото профиля Yusuf Nasir Ahmad
Yusuf Nasir Ahmad2 лет назад

@3MTTNigeria Thanks so much Mr. Opportunity. Kindly have time to review the Project on Github.

Фото профиля Abdullahi Salihu
Abdullahi Salihu2 лет назад

@3MTTNigeria Nice one Nasir, keep it up

Фото профиля Yusuf Nasir Ahmad
Yusuf Nasir Ahmad2 лет назад

@3MTTNigeria Dr. I hope you will get to patronize the project and build on it. It is available on Github.

Фото профиля GieDee
GieDee2 лет назад

@3MTTNigeria More power to your elbow Champ!

Фото профиля Yusuf Nasir Ahmad
Yusuf Nasir Ahmad2 лет назад

@3MTTNigeria Thanks Boss

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