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We teach because it is very satisfying to see students in our course gain a deep understanding of the material while embarking on a financially rewarding career path. What starts as a spark of interest becomes a blazing fire. And we wish you the same outcome. How does CareerX help you become job-ready?At OpenCV University, our Computer Vision and Deep Learning (CVDL) Master program isn’t just a collection of lessons, videos, and practical coding experiences; it’s a complete Career Transformation package. The CVDL Master program comes with our Career Accelerator (CareerX) program, which has one clear goal: to help you land a dream AI job. Once you finish two foundational courses in Computer Vision and Deep Learning, CareerX steps in to help you present your skills convincingly. ✅ 1:1 Session on GitHub Portfolio Review:
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Sample question: What are common ways for reducing overfitting in deep-learning models for computer vision? Short answer: Data augmentation, L1/L2 regularization, Dropout, and early stopping.
✅ Mock interviews:
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