You have been provided with a fewshotbench.zip
file containing the code for this benchmark. The accompanying presentation will also help you get started.
Create a conda env and install requirements with:
conda env create -f environment.yml
Before each run, activate the environment with:
conda activate few-shot-benchmark
Alternatively, for environments that do not support conda (e.g. Google Colab), install requirements with:
python -m pip install -r requirements.txt
python run.py exp.name={exp_name} method=maml dataset=tabula_muris
By default, method is set to MAML, and dataset is set to Tabula Muris. The experiment name must always be specified.
This project extends the original framework by the SOT layer and its embedding into the ProtoNet model. To use the ProtoNet model with the SOT layer user needs to specify method=protonet_sot
.
Example:
python run.py exp.name={exp_name} method=protonet_sot dataset=tabula_muris
The training process will automatically evaluate at the end. To only evaluate without running training, use the following:
python run.py exp.name={exp_name} method=maml dataset=tabula_muris mode=test
Run run.py
with the same parameters as the training run, with mode=test
and it will automatically use the
best checkpoint (as measured by val ACC) from the most recent training run with that combination of
exp.name/method/dataset/model. To choose a run conducted at a different time (i.e. not the latest), pass in the timestamp
in the form checkpoint.time={yyyymmdd_hhmmss}.
To choose a model from a specific epoch, use checkpoint.iter=40
.
We provide a set of datasets in datasets/
. The data itself is not in the GitHub, but will either be automatically downloaded
(Tabula Muris), or needs to be manually downloaded from here
for the SwissProt dataset. These should be unzipped and put under data/{dataset_name}
.
The configurations for each dataset are located at conf/dataset/{dataset_name}.yaml
.
To create a dataset, subclass the FewShotDataset
class to create a SimpleDataset (for baseline / transfer-learning methods) and
SetDataset (for the few-shot setting) and create a new config file for the dataset with the pointer to these classes.
The provided datasets are:
Dataset | Task | Modality | Type | Source |
---|---|---|---|---|
Tabula Muris | Cell-type prediction | Gene expression | Classification | Cao et al. (2021) |
SwissProt | Protein function prediction | Protein sequence | Classification | Uniprot |
We provide a set of methods in methods/
, including a baseline method that does typical transfer
learning, and meta-learning methods like Protoypical Networks (protonet), Matching Networks (matchingnet),
and Model-Agnostic Meta-Learning (MAML). To create a new method, subclass the MetaTemplate
class and
create a new method config file at conf/method/{method_name}.yaml
with the pointer to the new class.
The provided methods include:
Method | Source |
---|---|
Baseline, Baseline++ | Chen et al. (2019) |
ProtoNet | Snell et al. (2017) |
MatchingNet | Vinyals et al. (2016) |
MAML | Finn et al. (2017) |
We provide a set of backbone layers, blocks, and models in backbone.py
, inclduing a 2-layer fully connected network as
well as ConvNets and ResNets. The default backbone for each dataset is set in each dataset's config file,
e.g. dataset/tabula_muris.yaml
.
This repository uses the Hydra framework for configuration management.
The top-level configurations are specified in the conf/main.yaml
file. Dataset-specific values are set in files in
the conf/dataset/
directory, and few-shot method-specific files are specified in conf/method
.
Note that the files in the dataset directory are at the top-level package, so configurations can be set at the command
line directly, e.g. n_shot = 5
or backbone.layer_dim = [20,20]
. However, configurations in conf/method
are in
the method package, which needs to be specified e.g. method.stop_epoch=20
.
Note also that in Hydra, configurations are inherited through the specification of defaults
. For instance,
conf/method/maml.yaml
inherits from conf/method/meta_base.yaml
, which itself inherits from
conf/method/method_base.yaml
. Each configuration file then only needs to specify the deltas/differences
to the file it is inheriting from.
For more on Hydra, see their tutorial. For an example of a benchmark that uses Hydra for configuration management, see BenchMD.
We use Weights and Biases (WandB) for tracking experiments and results during training.
All hydra configurations, as well as training loss, validation accuracy, and post-train eval results are logged.
To disable WandB, use wandb.mode=disabled
.
You must update the project
and entity
fields in conf/main.yaml
to your own project and entity after creating one on WandB.
To log in to WandB, run wandb login
and enter the API key provided on the website for your account.
Algorithm implementations based on COMET and CloserLookFewShot. Dataset preprocessing code is modified from each respective dataset paper, where applicable.
- How to integrate a dataset into the benchmark ?
- Slides (Available on Moodle)