This github repo serves as the starting point for offline evaluation of submissions for the training data selection visual benchmark. The offline evaluation can be run on both your local environment as well as a containerized image for reproducibility of score results.
For a detailed summary of the a benchmark, refer to the provided benchmark documentation.
Note that permission is required to view the benchmark documentation and download the required resources. Please contact [email protected] to request access.
The following resources will need to be downloaded locally in order to run offline evaluation:
- Embeddings for candidate pool of training images (.parquet file)
- Test sets for each classification task (.parquet files)
These resources can be downloaded in a .zip file at the following url
https://drive.google.com/drive/folders/181uI-7NFJwK3IOPy2kOYVIQS4vZOC02A?usp=sharing
For running as a containerized image:
docker
for building the containerized imagedocker-compose
for running the scoring service with the appropriate resources
Installation instructions can be found at the following links: Docker, Docker compose
For running locally:
- Python (>= 3.7)
- An appropriate version of Java for your version of
python
andpyspark
The current version of this repo has only been tested locally on python 3.9 and java openjdk-11.
Clone this repo to your local machine
git clone [email protected]:CoactiveAI/dataperf-vision-selection.git
If you want to run the offline evaluation in your local environment, install the required python packages
pip install -r dataperf-vision-selection/requirements.txt
A template filesystem with the following structure is provided in the repo. Move the embeddings file and the tests sets to the appropriate folders in this template filesystem
unzip dataperf-vision-selection-resources.zip
mv dataperf-vision-selection-resources/embeddings/* dataperf-vision-selection/data/embeddings/
mv dataperf-vision-selection-resources/test_sets/* dataperf-vision-selection/data/test_sets/
mv dataperf-vision-selection-resources/train_sets/* dataperf-vision-selection/data/train_sets/
mv dataperf-vision-selection-resources/results/* dataperf-vision-selection/data/results/
The resulting filesystem in the repo should look as follows
|____data
| |____embeddings
| | |____train_emb_256_dataperf.parquet
| |____test_sets
| | |____alpha_test_set_Hawk_256.parquet
| | |____alpha_test_set_Cupcake_256.parquet
| | |____alpha_test_set_Sushi_256.parquet
| |____train_sets
| | |____random_500.csv
| |____results
| | |____result_for_random_500.json
With the resources in place, you can now test that the system is functioning as expected.
To test the containerized offline evaluation, run
cd dataperf-vision-selection
docker-compose up
Similarly, to test the local python offline evaluation, run
cd dataperf-vision-selection
python3 main.py
Either test will run the offline evaluation using the setup specified in task_setup.yaml
, which will utilize a training set of randomly sampled and labeled data points (data/train_sets/random_500.csv
) to generate a score results file in data/results/
with a unique UTC timestamp
|____data
| |____results
| | |____result_for_random_500.json
| | |____result_UTC-2022-03-31-20-19-24.json
The generated scores in this new results file should be identical to those in data/results_for_random_500.json
.
The MLCube implementation allows us to execute the project using the following steps.
# Create Python environment and install MLCube Docker runner
virtualenv -p python3 ./env && source ./env/bin/activate && pip install mlcube-docker
# Fetch the vision selection repo
git clone https://github.com/CoactiveAI/dataperf-vision-selection && cd ./dataperf-vision-selection
# Download and extract dataset
mlcube run --task=download -Pdocker.build_strategy=always
# Run evaluation
mlcube run --task=evaluate -Pdocker.build_strategy=always
# Run all steps
mlcube run --task=download,evaluate -Pdocker.build_strategy=always
For the beta version of this benchmark we will support offline and online evaluation for the open division.
A valid submission for the open division includes the following:
- A description of the data selection algorithm/strategy used
- A training set for each classification task as specified below
- (Optional) A script of the algorithm/strategy used
Each training set file must be a .csv file containing two columns: ImageID
(the unique identifier for the image) and Confidence
(the binary label, either a 0
or 1
). The ImageID
s in the training set files must be limited to the provided candidate pool of training images (i.e. ImageID
s in the downloaded embeddings file).
The included training set file serves as a template of a single training set:
cat dataperf-vision-selection/data/train_sets/random_500.csv
ImageID,Confidence
0002643773a76876,0
0016a0f096337445,0
0036043ce525479b,1
00526f123f84db2f,1
0080db2599d54447,1
00978577e9fdd967,1
...
The configuration for the offline evaluation is specified in task_setup.yaml
file. For simplicity, the repo comes pre-configured such that for offline evaluation you can simply:
- Copy your training sets to the template filesystem
- Modify the config file to specify the training set for each task
- Run offline evaluation
- See results in stdout and results file in
data/results/
For example
# 1. Copy training sets for each task
cd dataperf-vision-selection
cp /path/to/your/training/sets/Cupcake.csv data/train_sets/
cp /path/to/your/training/sets/Hawk.csv data/train_sets/
cp /path/to/your/training/sets/Sushi.csv data/train_sets/
# 2. task_setup.yaml: modify the training set relative path for each classification task
Cupcake: ['train_sets/Cupcake.csv', 'test_sets/alpha_test_set_Cupcake_256.parquet']
Hawk: ['train_sets/Hawk.csv', 'test_sets/alpha_test_set_Hawk_256.parquet']
Sushi: ['train_sets/Sushi.csv', 'test_sets/alpha_test_set_Sushi_256.parquet']
# 3a. Run offline evaluation (docker)
docker-compose up --build --force-recreate
# 3b. Run offline evaluation (local python)
python3 main.py
# 4. See results (file will have save timestamp in name)
cat data/results/result_UTC-2022-03-31-20-19-24.json
{
"Cupcake": {
"accuracy": 0.5401459854014599,
"recall": 0.463768115942029,
"precision": 0.5517241379310345,
"f1": 0.5039370078740157
},
"Hawk": {
"accuracy": 0.296551724137931,
"recall": 0.16831683168316833,
"precision": 0.4857142857142857,
"f1": 0.25000000000000006
},
"Sushi": {
"accuracy": 0.5185185185185185,
"recall": 0.6261682242990654,
"precision": 0.638095238095238,
"f1": 0.6320754716981132
}
}
Though we recommend working as described above, you can specify a custom task setup .yaml file and/or data folder if needed.
For the containerized offline evaluation, modify the following files and run as follows
# docker-compose.yaml: modify the volume source
volumes:
- path/to/your/data/folder:/app/data
# Dockerfile: modify the COPY *.yaml command and specify the new file in the entrypoint
COPY path/to/your/custom_task_setup.yaml /app/
...
ENTRYPOINT python3 main.py --docker_flag True --setup_yaml_path 'custom_task_setup.yaml'
# Run and force rebuild
docker-compose up --build --force-recreate
For the local python offline evaluation, modify the following files and run as follows
# path/to/your/custom_task_setup.yaml: modify data_dir
data_dir: 'path/to/your/data/folder'
# Run and specify custom .yaml file
python3 main.py --setup_yaml_path 'path/to/your/custom_task_setup.yaml'
Note: when specifying a data folder, ensure all relative paths in the task setup .yaml file are valid
To submit your final submission, we will utilize Dynabench as our online evaluation system. Please submit to the the Vision Dataperf task
TBD.
TBD.