This script uses the Hugging Face model 'MRNH/Feedformer-ett-hourly' to perform some task on the ETT-small dataset.

Model: 'MRNH/Feedformer-ett-hourly'

  • This model is a transformer-based model designed for some task. (Replace 'some task' with the actual task the model is designed for)

Dataset: 'ETT-small'

  • This dataset contains... (Replace with a brief description of the dataset)

The script performs the following steps:

  1. Load the 'MRNH/Feedformer-ett-hourly' model from the Hugging Face model hub.
  2. Load the 'ETT-small' dataset.
  3. Preprocess the dataset as required by the model.
  4. Feed the preprocessed data into the model and collect the outputs.
  5. Postprocess the outputs and save the results.

Example: from transformers import AutoModel model = AutoModel.from_pretrained('MRNH/Feedformer-ett-hourly')

For the model selection experiments llok at: https://wandb.ai/gec023/baseline-forecasting

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Datasets used to train MRNH/Feedformer-ett-hourly