[D] Best websites for pytorch/numpy interviews
Hello, I’m at the last year of my PHD and I’m starting to prepare interviews. I’m mainly aiming at applied scientist/research engineer or research scientist role. For now I’m doing mainly leetcode. I’m looking for websites that can help me train for coding interviews in pytorch/numpy. I did some research and these websites popped up: nexskillai, tensorgym, deep-ml, leetgpu and the torch part of neetcode. However I couldn’t really decide which of these websites are the best. I’m open to suggestions in this matter, thanks. submitted by /u/Training-Adeptness57 [link] [comments]
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