Learner Reviews & Feedback for Classify Radio Signals with PyTorch by Coursera Project Network
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Top reviews
HA
Nov 6, 2022
It was a wonderful project which not only covers a few concepts of signal processing but also sheds light on transfer learning with Pytorch.
GD
Jul 23, 2024
Nice guided lab, however there are some content issues: 1. The last video is missing; 2. Some problem with certificates on loading the model.
1 - 6 of 6 Reviews for Classify Radio Signals with PyTorch
By Haider A
•Nov 6, 2022
It was a wonderful project which not only covers a few concepts of signal processing but also sheds light on transfer learning with Pytorch.
By Jores A
•Jul 19, 2025
This project was quit interesting
By Gennadii D
•Jul 24, 2024
Nice guided lab, however there are some content issues: 1. The last video is missing; 2. Some problem with certificates on loading the model.
By Agrover112
•Dec 26, 2022
I feel the instructor put in very little effort. Usually in other courses the instructor provides an Completed Copy of the entire code .
There was an entire section of code and video which the instructor seems to have missed altogether.
The instructor seems to just copy the spec_augment library from some GitHub repository without showing which package to install. Overall I would say this was very poorly executed.
Very little discussion was spent into why spec-augment was used at all? Even a signle statement saying that the masking improves the Robustness of the Acoustic model (without the LM) on datasets such as Librispeech without any noise aware training shows good results would have sufficed.
By Sidney V
•Oct 25, 2025
Overall, this course looks reasonable useful. It needs some crucial improvements: (1) The training process did not improved model performance. The final accuracy values (for both training and validation datasets) were similar to their initial values. In other words, the model did not learned! (2) The course misses a final lecture to show how to make inferences. (3) make available the caption files. (4) Provide a complete and fully working version of the Jupyter Notebook.
By David F
•Oct 24, 2023
If you are looking to learn how to implement pytorch dataloaders and neural networks the course covers those topics. If you are looking to learn anything about the RF signal processing/classification domain you will be disappointed.