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run_image_classification.py |
README.md
Image classification examples
This directory contains 2 scripts that showcase how to fine-tune any model supported by the TFAutoModelForImageClassification
API (such as ViT, ConvNeXT, ResNet, Swin Transformer...) using TensorFlow. They can be used to fine-tune models on both datasets from the hub as well as on your own custom data.
Try out the inference widget here: https://huggingface.co/google/vit-base-patch16-224
TensorFlow
Based on the script run_image_classification.py
.
Using datasets from Hub
Here we show how to fine-tune a Vision Transformer (ViT
) on the beans dataset, to classify the disease type of bean leaves. The following will train a model and push it to the amyeroberts/vit-base-beans
repo.
python run_image_classification.py \
--dataset_name beans \
--output_dir ./beans_outputs/ \
--remove_unused_columns False \
--do_train \
--do_eval \
--push_to_hub \
--hub_model_id amyeroberts/vit-base-beans \
--learning_rate 2e-5 \
--num_train_epochs 5 \
--per_device_train_batch_size 8 \
--per_device_eval_batch_size 8 \
--logging_strategy steps \
--logging_steps 10 \
--eval_strategy epoch \
--save_strategy epoch \
--load_best_model_at_end True \
--save_total_limit 3 \
--seed 1337
👀 See the results here: amyeroberts/vit-base-beans.
Note that you can replace the model and dataset by simply setting the model_name_or_path
and dataset_name
arguments respectively, with any model or dataset from the hub. For an overview of all possible arguments, we refer to the docs of the TrainingArguments
, which can be passed as flags.
If your model classification head dimensions do not fit the number of labels in the dataset, you can specify
--ignore_mismatched_sizes
to adapt it.
Using your own data
To use your own dataset, there are 2 ways:
- you can either provide your own folders as
--train_dir
and/or--validation_dir
arguments - you can upload your dataset to the hub (possibly as a private repo, if you prefer so), and simply pass the
--dataset_name
argument.
Below, we explain both in more detail.
Provide them as folders
If you provide your own folders with images, the script expects the following directory structure:
root/dog/xxx.png
root/dog/xxy.png
root/dog/[...]/xxz.png
root/cat/123.png
root/cat/nsdf3.png
root/cat/[...]/asd932_.png
In other words, you need to organize your images in subfolders, based on their class. You can then run the script like this:
python run_image_classification.py \
--train_dir <path-to-train-root> \
--output_dir ./outputs/ \
--remove_unused_columns False \
--do_train \
--do_eval
Internally, the script will use the ImageFolder
feature which will automatically turn the folders into 🤗 Dataset objects.
💡 The above will split the train dir into training and evaluation sets
- To control the split amount, use the
--train_val_split
flag. - To provide your own validation split in its own directory, you can pass the
--validation_dir <path-to-val-root>
flag.
Upload your data to the hub, as a (possibly private) repo
To upload your image dataset to the hub you can use the ImageFolder
feature available in 🤗 Datasets. Simply do the following:
from datasets import load_dataset
# example 1: local folder
dataset = load_dataset("imagefolder", data_dir="path_to_your_folder")
# example 2: local files (supported formats are tar, gzip, zip, xz, rar, zstd)
dataset = load_dataset("imagefolder", data_files="path_to_zip_file")
# example 3: remote files (supported formats are tar, gzip, zip, xz, rar, zstd)
dataset = load_dataset("imagefolder", data_files="https://download.microsoft.com/download/3/E/1/3E1C3F21-ECDB-4869-8368-6DEBA77B919F/kagglecatsanddogs_3367a.zip")
# example 4: providing several splits
dataset = load_dataset("imagefolder", data_files={"train": ["path/to/file1", "path/to/file2"], "test": ["path/to/file3", "path/to/file4"]})
ImageFolder
will create a label
column, and the label name is based on the directory name.
Next, push it to the hub!
# assuming you have ran the huggingface-cli login command in a terminal
dataset.push_to_hub("name_of_your_dataset")
# if you want to push to a private repo, simply pass private=True:
dataset.push_to_hub("name_of_your_dataset", private=True)
and that's it! You can now train your model by simply setting the --dataset_name
argument to the name of your dataset on the hub (as explained in Using datasets from the 🤗 hub).
More on this can also be found in this blog post.
Sharing your model on 🤗 Hub
-
If you haven't already, sign up for a 🤗 account
-
Make sure you have
git-lfs
installed and git set up.
$ apt install git-lfs
$ git config --global user.email "you@example.com"
$ git config --global user.name "Your Name"
- Log in with your HuggingFace account credentials using
huggingface-cli
:
$ huggingface-cli login
# ...follow the prompts
- When running the script, pass the following arguments:
python run_image_classification.py \
--push_to_hub \
--push_to_hub_model_id <name-your-model> \
...