Spaces:
Runtime error
Runtime error
Commit
·
12e94ae
1
Parent(s):
1395200
Update README
Browse files
README.md
CHANGED
@@ -36,7 +36,7 @@ export DATASET_ROOT={path/to/datasets}
|
|
36 |
```
|
37 |
|
38 |
## Training
|
39 |
-
Before training, it is important that you have downloaded the starter datasets (see above) and set DATASET_ROOT
|
40 |
This project uses the [pytorch-lightning](https://www.pytorchlightning.ai/index.html) framework and [hydra](https://hydra.cc/) for configuration management. All experiments are defined in `cfg/exp/`. To train with an existing experiment run
|
41 |
```
|
42 |
python scripts/train.py +exp={experiment_name}
|
@@ -103,7 +103,7 @@ Metrics and hyperparams will be logged in `./lightning_logs/{timestamp}`
|
|
103 |
## Generate other datasets
|
104 |
The datasets used in the experiments are customly generated from the starter datasets. In short, for each training/val/testing example, we select a random 5.5s segment from one of the starter datasets and apply a random number of effects to it. The number of effects applied is controlled by the `num_kept_effects` and `num_removed_effects` parameters. The effects applied are controlled by the `effects_to_keep` and `effects_to_remove` parameters.
|
105 |
|
106 |
-
Before generating datasets, it is important that you have downloaded the starter datasets (see above) and set DATASET_ROOT
|
107 |
|
108 |
To generate one of the datasets used in the paper, use of the experiments defined in `cfg/exp/`.
|
109 |
For example, to generate the `chorus` FXAug dataset, which includes files with 5 possible effects, up to 4 kept effects (distortion, reverb, compression, delay), and 1 removed effects (chorus), run
|
|
|
36 |
```
|
37 |
|
38 |
## Training
|
39 |
+
Before training, it is important that you have downloaded the starter datasets (see above) and set `$DATASET_ROOT`.
|
40 |
This project uses the [pytorch-lightning](https://www.pytorchlightning.ai/index.html) framework and [hydra](https://hydra.cc/) for configuration management. All experiments are defined in `cfg/exp/`. To train with an existing experiment run
|
41 |
```
|
42 |
python scripts/train.py +exp={experiment_name}
|
|
|
103 |
## Generate other datasets
|
104 |
The datasets used in the experiments are customly generated from the starter datasets. In short, for each training/val/testing example, we select a random 5.5s segment from one of the starter datasets and apply a random number of effects to it. The number of effects applied is controlled by the `num_kept_effects` and `num_removed_effects` parameters. The effects applied are controlled by the `effects_to_keep` and `effects_to_remove` parameters.
|
105 |
|
106 |
+
Before generating datasets, it is important that you have downloaded the starter datasets (see above) and set `$DATASET_ROOT`.
|
107 |
|
108 |
To generate one of the datasets used in the paper, use of the experiments defined in `cfg/exp/`.
|
109 |
For example, to generate the `chorus` FXAug dataset, which includes files with 5 possible effects, up to 4 kept effects (distortion, reverb, compression, delay), and 1 removed effects (chorus), run
|