Any GPU with compute capability >= 3.5 will support TensorFlow. Both MX160 and GTX 1650 are OK. However, you may be limited in what networks you can run by the relatively small amount of GPU memory available on laptop GPUs. The required amount of memory depends on the DL networks you are interested in running.
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