Skip to main content

No project description provided

Project description

ood_detectors

OOD Detectors is a Python package that offers a suite of algorithms designed to identify out-of-distribution samples in datasets. This is crucial for maintaining the reliability and accuracy of machine learning models when faced with unfamiliar data.

PyPI - Version PyPI - Python Version


Table of Contents

Installation

To install OOD Detectors, run the following command:

pip install ood_detectors

Usage

This package includes several OOD detection algorithms, each tailored to different aspects of OOD detection:

  • Likelihood Based: SubSDE_DDM, VPSDE_DDM and VESDE_DDM are likelihood-based methods that use different variations stochastic differential equations for DDMS to detect OOD samples.

  • Residual: This method employs the least significant eigen vector for OOD detection.

All detectors share a common interface:

  1. Initialize the detector with necessary hyperparameters.
  2. Fit the model using fit() with the training data.
  3. Use predict() to obtain OOD scores for new data samples.

Example

import ood_detectors.likelihood as likelihood

ood_detector = likelihood.SubSDE_DDM(feat_dim).to('cuda')
train_loss = ood_detector.fit(train_data, n_epochs, batch_size)
scores = ood_detector.predict(test_data, batch_size)
from ood_detectors import Residual

ood_detector = Residual()
train_loss = ood_detector.fit(train_data)
scores = ood_detector.predict(test_data)

low-level interface

The low-level interface allows you to customize the training process and access the model's internal components.

import ood_detectors.likelihood as likelihood
import ood_detectors.sde as sde_lib 
import ood_detectors.models as models
import ood_detectors.losses as losses
...
sde = sde_lib.subVPSDE(beta_min=beta_min, beta_max=beta_max)

model = models.SimpleMLP(
    channels=feat_dim,
    bottleneck_channels=bottleneck_channels,
    num_res_blocks=num_res_blocks,
    time_embed_dim=time_embed_dim,
    dropout=dropout,
)

optimizer = functools.partial(
                torch.optim.Adam,
                lr=lr,
                betas=(beta1, beta2),
                eps=eps,
                weight_decay=weight_decay,
                )

ood_detector = likelihood.Likelihood(
    sde = sde,
    model = model,
    optimizer = optimizer,
    ).to(device)

update_fn = functools.partial(
    losses.SDE_EMA_Warmup_GradClip, 
    ema_rate=ema_rate,
    warmup=warmup,
    grad_clip=grad_clip,
    continuous=continuous,
    reduce_mean=reduce_mean,
    likelihood_weighting=likelihood_weighting,
    )

train_loss = ood_detector.fit(
    train_data,  
    n_epochs=n_epochs,
    batch_size=batch_size,
    update_fn=update_fn,
    )

Create a custom component

You can create a custom component by doing the same thing as the library does. Good luck!

Evaluate

To assess the performance of the OOD detectors, you can utilize the following metrics:

  • AUC: Area under the ROC curve
  • FPR95: False positive rate when the true positive rate is 95%
import ood_detectors.eval_utils as eval_utils
score_id = ood_detector.predict(train_data)
score_ref = ood_detector.predict(reference_data)
print(f"Train AUC: {eval_utils.auc(-score_ref, -score_id):.2%}")
print(f"Train FPR95: {eval_utils.fpr95(-score_ref, -score_id):.2%}")
results = eval_utils.eval_ood(ood_detector, train_data, reference_data, ood_data, batch_size, verbose=False)
plot_utils.plot(results, id_name, ood_names, encoder=embedding, model=ood_detector.name,
                train_loss=train_loss,
                config=conf,
                )

License

ood_detectors is distributed under the terms of the apache-2.0 license.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

ood_detectors-0.0.53.tar.gz (426.5 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

ood_detectors-0.0.53-py3-none-any.whl (36.9 kB view details)

Uploaded Python 3

File details

Details for the file ood_detectors-0.0.53.tar.gz.

File metadata

  • Download URL: ood_detectors-0.0.53.tar.gz
  • Upload date:
  • Size: 426.5 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: python-httpx/0.28.1

File hashes

Hashes for ood_detectors-0.0.53.tar.gz
Algorithm Hash digest
SHA256 62c2608dbcb4f3adfa076eab30ce21d30dbda3a66adcf190e619b648b5029b0c
MD5 6860e5c1363d39dee466516a2c82e28b
BLAKE2b-256 6d198ec2de3186c3f1f07b22281079eef72169a3b8d26867e7ddf4a522ccae2d

See more details on using hashes here.

File details

Details for the file ood_detectors-0.0.53-py3-none-any.whl.

File metadata

File hashes

Hashes for ood_detectors-0.0.53-py3-none-any.whl
Algorithm Hash digest
SHA256 7e729e2b615951ac5c62459e671e9c675713095e858746fdb1c70b0fb425cc68
MD5 a302f8d8e2ac35b4a4b07161b3d4ffa3
BLAKE2b-256 fac4c97332a97c5ec7e5e8626d77ad9b68d405f5aed633123728fb1af6175e44

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page