Machine Learning: Modern Computer Vision & Generative AI | Black Friday best- selling courses

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Machine Learning: Modern Computer Vision & Generative AI | Black Friday best- selling courses  

 Black Friday Udemy best- selling courses  





Description

The course "Machine Learning: Modern Computer Vision & Generative AI" is a comprehensive exploration of the intersection of machine learning and generative artificial intelligence. It utilizes the KerasCV library, which integrates with popular deep learning backends like Tensorflow, PyTorch, and JAX, to simplify the writing process of deep learning code. The course covers image classification, object detection, and generative AI with Stable Diffusion, a powerful text-to-image model developed by Stability AI.

The course aims to develop a strong foundation in modern computer vision techniques, acquire hands-on experience in using pre-trained models, create custom object detection datasets, and unlock the world of generative AI with Stable Diffusion. This will enable users to generate images from text with state-of-the-art speed and precision.

The course is designed for both seasoned machine learning practitioners and beginners, equipping them with the knowledge and skills to tackle complex image analysis and creative AI projects with confidence. Basic knowledge of machine learning and Python programming is required, but familiarity with deep learning concepts is not mandatory. The course is designed to equip practitioners with the knowledge and skills to tackle complex image analysis and creative AI projects with confidence.

coupon Code : BFCP23





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