Skip to main content

GeDML is an easy-to-use generalized deep metric learning library, which contains state-of-the-art deep metric learning algorithms and auxiliary modules to build end-to-end compute vision systems

Project description

Logo

PyPi version Documentation build

News

  • [2022-3-22]: **v0.2.2 has been released:
    • Fix some bugs.
  • [2021-11-3]: **v0.2.0 has been released:
    • New features:
      • Change the format of link configuration.
  • [2021-10-27]: **v0.1.4 has been released:
    • New features:
      • Add contrastive representation learning methods (MoCo-V2).
  • [2021-10-24]: **v0.1.2 has been released:
    • New features:
      • Add distributed (DDP) support.
  • [2021-10-7]: **v0.1.1 has been released:
    • New features:
      • Change the Cars196 loading method.
  • [2021-9-15]: **v0.1.0 has been released:
    • New features:
      • output_wrapper and pipeline setting are decomposed for convenience.
      • Pipeline will be stored in the experiment folder using a directed graph.
  • [2021-9-13]: **v0.0.1 has been released:
    • New features:
      • config.yaml will be created to store the configuration in the experiment folder.**
  • [2021-9-6]: v0.0.0 has been released.

Introduction

GeDML is an easy-to-use generalized deep metric learning library, which contains:

  • State-of-the-art DML algorithms: We contrain 18+ losses functions and 6+ sampling strategies, and divide these algorithms into three categories (i.e., collectors, selectors, and losses).
  • Bridge bewteen DML and SSL: We attempt to bridge the gap between deep metric learning and self-supervised learning through specially designed modules, such as collectors.
  • Auxiliary modules to assist in building: We also encapsulates the upper interface for users to start programs quickly and separates the codes and configs for managing hyper-parameters conveniently.

Installation

Pip

pip install gedml

Quickstart

Demo 1: deep metric learning

CUDA_VISIBLE_DEVICES=0 python demo.py \
--data_path <path_to_data> \
--save_path <path_to_save> \
--eval_exclude f1_score NMI AMI \
--device 0 --batch_size 128 --test_batch_size 128 \
--setting proxy_anchor --splits_to_eval test --embeddings_dim 128 \
--lr_trunk 0.0001 --lr_embedder 0.0001 --lr_collector 0.01 \
--dataset cub200 --delete_old \

Demo 2: contrastive representation learning

CUDA_VISIBLE_DEVICES=0 python demo.py \
--data_path <path_to_data> \
--save_path <path_to_save> \
--eval_exclude f1_score NMI AMI \
--device 0 --batch_size 128 --test_batch_size 128 \
--setting mocov2 --splits_to_eval test --embeddings_dim 128 \
--lr_trunk 0.015 --lr_embedder 0.015 \
--dataset imagenet --delete_old \

If you want to use our code to conduct DML or CRL experiments, please refer to the up-to-date and most detailed configurations below: :point_down:

  • If you use the command line, you can run sample_run.sh to try this project.
  • If you debug with VS Code, you can refer to launch.json to set .vscode.

API

Initialization

Use ParserWithConvert to get parameters

>>> from gedml.launcher.misc import ParserWithConvert
>>> csv_path = ...
>>> parser = ParserWithConvert(csv_path=csv_path, name="...")
>>> opt, convert_dict = parser.render()

Use ConfigHandler to create all objects.

>>> from gedml.launcher.creators import ConfigHandler
>>> link_path = ...
>>> assert_path = ...
>>> param_path = ...
>>> config_handler = ConfigHandler(
    convert_dict=convert_dict,
    link_path=link_path,
    assert_path=assert_path,
    params_path=param_path,
    is_confirm_first=True
)
>>> config_handler.get_params_dict()
>>> objects_dict = config_handler.create_all()

Start

Use manager to automatically call trainer and tester.

>>> from gedml.launcher.misc import utils
>>> manager = utils.get_default(objects_dict, "managers")
>>> manager.run()

Or directly use trainer and tester.

>>> from gedml.launcher.misc import utils
>>> trainer = utils.get_default(objects_dict, "trainers")
>>> tester = utils.get_default(objects_dict, "testers")
>>> recorder = utils.get_default(objects_dict, "recorders")
# start to train
>>> utils.func_params_mediator(
    [objects_dict],
    trainer.__call__
)
# start to test
>>> metrics = utils.func_params_mediator(
    [
        {"recorders": recorder},
        objects_dict,
    ],
    tester.__call__
)

Document

For more information, please refer to: :point_right: Docs :book:

Some specific guidances:

Configs

We will continually update the optimal parameters of different configs in TsinghuaCloud

Framework

This project is modular in design. The pipeline diagram is as follows:

Pipeline

Code structure

Method

Collectors

method description
BaseCollector Base class
DefaultCollector Do nothing
ProxyCollector Maintain a set of proxies
MoCoCollector paper: Momentum Contrast for Unsupervised Visual Representation Learning
SimSiamCollector paper: Exploring Simple Siamese Representation Learning
HDMLCollector paper: Hardness-Aware Deep Metric Learning
DAMLCollector paper: Deep Adversarial Metric Learning
DVMLCollector paper: Deep Variational Metric Learning

Losses

classifier-based

method description
CrossEntropyLoss Cross entropy loss for unsupervised methods
LargeMarginSoftmaxLoss paper: Large-Margin Softmax Loss for Convolutional Neural Networks
ArcFaceLoss paper: ArcFace: Additive Angular Margin Loss for Deep Face Recognition
CosFaceLoss paper: CosFace: Large Margin Cosine Loss for Deep Face Recognition

pair-based

method description
ContrastiveLoss paper: Learning a Similarity Metric Discriminatively, with Application to Face Verification
MarginLoss paper: Sampling Matters in Deep Embedding Learning
TripletLoss paper: Learning local feature descriptors with triplets and shallow convolutional neural networks
AngularLoss paper: Deep Metric Learning with Angular Loss
CircleLoss paper: Circle Loss: A Unified Perspective of Pair Similarity Optimization
FastAPLoss paper: Deep Metric Learning to Rank
LiftedStructureLoss paper: Deep Metric Learning via Lifted Structured Feature Embedding
MultiSimilarityLoss paper: Multi-Similarity Loss With General Pair Weighting for Deep Metric Learning
NPairLoss paper: Improved Deep Metric Learning with Multi-class N-pair Loss Objective
SignalToNoiseRatioLoss paper: Signal-To-Noise Ratio: A Robust Distance Metric for Deep Metric Learning
PosPairLoss paper: Exploring Simple Siamese Representation Learning

proxy-based

method description
ProxyLoss paper: No Fuss Distance Metric Learning Using Proxies
ProxyAnchorLoss paper: Proxy Anchor Loss for Deep Metric Learning
SoftTripleLoss paper: SoftTriple Loss: Deep Metric Learning Without Triplet Sampling

Selectors

method description
BaseSelector Base class
DefaultSelector Do nothing
DenseTripletSelector Select all triples
DensePairSelector Select all pairs

Code Reference

TODO:

  • assert parameters.
  • write github action to automate unit-test, package publish and docs building.
  • add cross-validation splits protocol.
  • distributed tester for matrix-form input.
  • add metrics module.
  • how to improve the running efficiency.

IMPORTANT TODO:

  • re-define pipeline setting!!!
  • simplify distribution setting!!

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

gedml-0.2.2.tar.gz (69.2 kB view details)

Uploaded Source

Built Distribution

gedml-0.2.2-py3-none-any.whl (117.4 kB view details)

Uploaded Python 3

File details

Details for the file gedml-0.2.2.tar.gz.

File metadata

  • Download URL: gedml-0.2.2.tar.gz
  • Upload date:
  • Size: 69.2 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/3.8.0 pkginfo/1.8.2 readme-renderer/34.0 requests/2.27.1 requests-toolbelt/0.9.1 urllib3/1.26.9 tqdm/4.63.0 importlib-metadata/4.11.3 keyring/23.5.0 rfc3986/2.0.0 colorama/0.4.4 CPython/3.9.11

File hashes

Hashes for gedml-0.2.2.tar.gz
Algorithm Hash digest
SHA256 a1a768a688347822fab8df37b4d8412eb9203ac4a770a195bfe6a2a16ab6a591
MD5 ce0cad40d5db55ea9f557ac614b66c78
BLAKE2b-256 003ba81cbb3c78f3a6744c67f530f7442697bb4ca059b20c56a0cb5000f40e07

See more details on using hashes here.

File details

Details for the file gedml-0.2.2-py3-none-any.whl.

File metadata

  • Download URL: gedml-0.2.2-py3-none-any.whl
  • Upload date:
  • Size: 117.4 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/3.8.0 pkginfo/1.8.2 readme-renderer/34.0 requests/2.27.1 requests-toolbelt/0.9.1 urllib3/1.26.9 tqdm/4.63.0 importlib-metadata/4.11.3 keyring/23.5.0 rfc3986/2.0.0 colorama/0.4.4 CPython/3.9.11

File hashes

Hashes for gedml-0.2.2-py3-none-any.whl
Algorithm Hash digest
SHA256 9ba8f5bbf532c2eeffd18af74849809f5afca686529f3d70b04a0691d8a9468e
MD5 871808a9652b748ba5fa1bcac03b154c
BLAKE2b-256 5f3a0b44984854149da5834d9c58b0b5f5585dfb26dec76f0975277fdd7819da

See more details on using hashes here.

Supported by

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