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[QEff Finetune]: Adding steps about how to fine tune on any custom dataset. #381
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@@ -63,4 +63,38 @@ to visualise the data, | |
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```python | ||
tensorboard --logdir runs/<file> --bind_all | ||
``` | ||
``` | ||
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## Fine-Tuning on custom dataset | ||
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To run fine tuning for any user specific dataset, prepare the dataset using the following steps: | ||
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1) Create a directory named 'dataset' inside efficient-transformers. | ||
2) Inside this directory, create a file named 'custom_dataset.py'. This is different than the custom_dataset.py present at efficient-transformers/QEfficient/finetune/dataset. | ||
3) Inside the newly created efficient-transformers/dataset/custom_dataset.py, define a function named 'get_custom_dataset'. | ||
4) get_custom_dataset() should have following 4 parameters: dataset_config, tokenizer, split, context_length. This function gets called twice through Qefficient/cloud/finetune.py with the name get_preprocessed_dataset. | ||
5) Inside get_custom_dataset(), dataset needs to prepared for fine tuning. So, the user needs to apply prompt and tokenize the dataset accordingly. Please refer the below template on how to define get_custom_dataset(). | ||
6) For examples, please refer python files present in efficient-transformers/QEfficient/finetune/dataset. In case of Samsum dataset, get_preprocessed_samsum() of efficient-transformers/QEfficient/finetune/dataset/samsum_dataset.py is called. | ||
There was a problem hiding this comment. Choose a reason for hiding this commentThe reason will be displayed to describe this comment to others. Learn more. I think this is no longer needed after PR#289. We can directly pass --train_split and --test_split from the CLI. |
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7) In efficient-transformers/QEfficient/finetune/configs/dataset_config.py, for custom_dataset class, pass the appropriate value for train_split and test_split according to the dataset keys corresponding to train and test data points. | ||
8) While running fine tuning, pass argument "-–dataset custom_dataset" to finetune on custom dataset. | ||
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Template for get_custom_dataset() to be defined inside efficient-transformers/dataset/custom_dataset.py is as follows: | ||
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```python | ||
def get_custom_dataset(dataset_config, tokenizer, split, context_length=None): | ||
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# load dataset | ||
# based on split, retrieve only the specific portion of the dataset (train or eval) either here or at the last | ||
There was a problem hiding this comment. Choose a reason for hiding this commentThe reason will be displayed to describe this comment to others. Learn more. Add one more comment as "Define a prompt template" |
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def apply_prompt_template(): | ||
There was a problem hiding this comment. Choose a reason for hiding this commentThe reason will be displayed to describe this comment to others. Learn more. Add some comment as "Convert the raw input into format as per the template defined earlier." |
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def tokenize(): | ||
There was a problem hiding this comment. Choose a reason for hiding this commentThe reason will be displayed to describe this comment to others. Learn more. Add some comment as "Implement tokenization and prepare inputs for the training." |
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# define prompt | ||
# call apply_prompt_template() for each data point: | ||
# dataset = dataset.map(apply_prompt_template ,<other args>) | ||
# call tokenize() for each data point: | ||
# dataset = dataset.map(tokenize, <other args>) | ||
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return dataset | ||
``` |
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double space between "a" and "directory"