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questions about parameters #122
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These refer to the dimensionality of the target inputs and outputs. |
I'm attempting to apply S4 to my experiments, but I'm confused about the maximum sequence length (l_max). If my dataset consists of sequences all with a length of l_max, am I allowed to sample a subsequent sequence with a length (seq_len) less than l_max during training, or must I use sequences of the full length exclusively? |
The sequences should be padded to the max length if they're shorter. If you need to deal with generation and also have varying length sequences, I'd strongly recommend using the diagonal (S4D) versions. |
Hi @albertfgu , I am trying to use S4 in POMDP RL. During training, I sample sub-episodes with a fixed length 64 to train S4. The whole episode, however, can last up to 1000 timesteps, and I currently set l_max = 1000. I have to do that because when I sample whole episodes (padded to have the same length of 1000) for training, the training will be very slow. Do you have any suggestions in this case? Thank you! |
I'm not sure I understand the question. If during training you only see sequences of length 64, why not set l_max=64? Or if using the diagonal version, you don't need to set |
Hi, I forgot to mention that setting l-max 64 got bad performance. |
I can't help diagnose without much more information about the training setup and model. As a first step, I would use the diagonal variant and don't set l_max |
Hello, I am very new to working with audio data and had some confusion about the parameters. I am trying to train Sashimi for music generation. In My apologies for the basic questions. Thank you for your help! |
The audio signal have a dimension of |
Thank you, that makes sense! So for a custom sequence model, I would have an encoder to project my audio data to |
That's right. |
I am new to series forecasting and have some questions about dataset parameters. What's the meaning of d_input, d_output, l_output, L in src/dataloaders/xxx.py, and what is __l_max inc configs/datasets/xxx.yaml
Thank you so much~
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