A "gym" style toolkit for building lightweight Neural Architecture Search systems

Overview

gymnastics

License CI status Code analysis

A "gym" style toolkit for building lightweight Neural Architecture Search systems. I know, the name is awful.

Installation

Preferred option: Install from source:

git clone [email protected]:jack-willturner/gymnastics.git
cd gymnastics
python setup.py install

To install the latest release version:

pip install gymnastics

If you want to use NAS-Bench-101, follow the instructions here to get it set up.

Overview

Over the course of the final year of my PhD I worked a lot on Neural Architecture Search (NAS) and built a bunch of tooling to make my life easier. This is an effort to standardise the various features into a single framework and provide a "gym" style toolkit for comparing various algorithms.

The key use cases for this library are:

  • test out new predictors on various NAS benchmarks
  • visualise the cells/graphs of your architectures
  • add new operations to NAS spaces
  • add new backbones to NAS spaces

The framework revolves around three key classes:

  1. Model
  2. Proxy
  3. SearchSpace

The anatomy of NAS

We can break down NAS spaces into three separate components: the skeleton or backbone of the network, the possible cells that can fill the skeletons, and the possible operations that can fill the cells. NAS papers and benchmarks all define their own versions of each of these variables. Our goal here is to de-couple the "search strategy" from the "search space" by allowing NAS designers to test out their technique on many NAS search spaces very easily. Specifically, the goal is the provide an easy interface for defining each column of the picture above.

Obligatory builder pattern README example

Using gymnastics we can very easily reconstruct NAS spaces (the goal being that it's easy to define new and exciting ones).

For example, here's how easy it is to redefine the NATS-Bench / NAS-Bench-201 search space:

best_score: best_score = score best_model = model best_model.show_picture() ">
from gymnastics.searchspace import SearchSpace, CellSpace, Skeleton
from gymnastics.searchspace.ops import Conv3x3, Conv1x1, AvgPool2d, Skip, Zeroize

search_space = SearchSpace(
    CellSpace(
        ops=[Conv3x3, Conv1x1, AvgPool2d, Skip, Zeroize], num_nodes=4, num_edges=6
    ),
    Skeleton(
        style=ResNetCIFAR,
        num_blocks=[5, 5, 5],
        channels_per_stage=[16, 32, 64],
        strides_per_stage=[1, 2, 2],
        block_expansion=1
    ),
)


# create an accuracy predictor
from gymnastics.proxies import NASWOT
from gymnastics.datasets import CIFAR10Loader

proxy = NASWOT()
dataset = CIFAR10Loader(path="~/datasets/cifar10", download=False)

minibatch, _ = dataset.sample_minibatch()

best_score = 0.0
best_model = None

# try out 10 random architectures and save the best one
for i in range(10):

    model = search_space.sample_random_architecture()

    y = model(minibatch)

    score = proxy.score(model, minibatch)

    if score > best_score:
        best_score = score
        best_model = model

best_model.show_picture()

Which prints:

Have a look in examples/ for more examples.

NAS-Benchmarks

If you have designed a new proxy for accuracy and want to test its performance, you can use the benchmarks available in benchmarks/.

The interface to the benchmarks is exactly the same as the above example for SearchSpace.

For example, here we score networks from the NDS ResNet space using random input data:

import torch
from gymnastics.benchmarks import NDSSearchSpace
from gymnastics.proxies import Proxy, NASWOT

search_space = NDSSearchSpace(
    "~/nds/data/ResNet.json", searchspace="ResNet"
)

proxy: Proxy = NASWOT()
minibatch: torch.Tensor = torch.rand((10, 3, 32, 32))

scores = []

for _ in range(10):
    model = search_space.sample_random_architecture()
    scores.append(proxy.score(model, minibatch))

Additional supported operations

In addition to the standard NAS operations we include a few more exotic ones, all in various states of completion:

Op Paper Notes
conv - params: kernel size
gconv - + params: group
depthwise separable pdf + no extra params needed
mixconv pdf + params: needs a list of kernel_sizes
octaveconv pdf Don't have a sensible way to include this as a single operation yet
shift pdf no params needed
ViT pdf
Fused-MBConv pdf
Lambda pdf

Repositories that use this framework

Alternatives

If you are looking for alternatives to this library, there are a few which I will try to keep a list of here:

Owner
Jack Turner
Jack Turner
Projects for AI/ML and IoT integration for games and other presented at re:Invent 2021.

Playground4AWS Projects for AI/ML and IoT integration for games and other presented at re:Invent 2021. Architecture Minecraft and Lamps This project i

Vinicius Senger 5 Nov 30, 2022
Codes for TS-CAM: Token Semantic Coupled Attention Map for Weakly Supervised Object Localization.

TS-CAM: Token Semantic Coupled Attention Map for Weakly SupervisedObject Localization This is the official implementaion of paper TS-CAM: Token Semant

vasgaowei 112 Jan 02, 2023
Official PyTorch implementation of "Contrastive Learning from Extremely Augmented Skeleton Sequences for Self-supervised Action Recognition" in AAAI2022.

AimCLR This is an official PyTorch implementation of "Contrastive Learning from Extremely Augmented Skeleton Sequences for Self-supervised Action Reco

Gty 44 Dec 17, 2022
Updated for TTS(CE) = Also Known as TTN V3. The code requires the first server to be 'ttn' protocol.

Updated Updated for TTS(CE) = Also Known as TTN V3. The code requires the first server to be 'ttn' protocol. Introduction This balenaCloud (previously

Remko 1 Oct 17, 2021
YOLOX Win10 Project

Introduction 这是一个用于Windows训练YOLOX的项目,相比于官方项目,做了一些适配和修改: 1、解决了Windows下import yolox失败,No such file or directory: 'xxx.xml'等路径问题 2、CUDA out of memory等显存不

5 Jun 08, 2022
iNAS: Integral NAS for Device-Aware Salient Object Detection

iNAS: Integral NAS for Device-Aware Salient Object Detection Introduction Integral search design (jointly consider backbone/head structures, design/de

顾宇超 77 Dec 02, 2022
Code for DisCo: Remedy Self-supervised Learning on Lightweight Models with Distilled Contrastive Learning

DisCo: Remedy Self-supervised Learning on Lightweight Models with Distilled Contrastive Learning Pytorch Implementation for DisCo: Remedy Self-supervi

79 Jan 06, 2023
[ICCV21] Code for RetrievalFuse: Neural 3D Scene Reconstruction with a Database

RetrievalFuse Paper | Project Page | Video RetrievalFuse: Neural 3D Scene Reconstruction with a Database Yawar Siddiqui, Justus Thies, Fangchang Ma, Q

Yawar Nihal Siddiqui 75 Dec 22, 2022
Centroid-UNet is deep neural network model to detect centroids from satellite images.

Centroid UNet - Locating Object Centroids in Aerial/Serial Images Introduction Centroid-UNet is deep neural network model to detect centroids from Aer

GIC-AIT 19 Dec 08, 2022
PyTorch implementation of our CVPR2021 (oral) paper "Prototype Augmentation and Self-Supervision for Incremental Learning"

PASS - Official PyTorch Implementation [CVPR2021 Oral] Prototype Augmentation and Self-Supervision for Incremental Learning Fei Zhu, Xu-Yao Zhang, Chu

67 Dec 27, 2022
The code of paper 'Learning to Aggregate and Personalize 3D Face from In-the-Wild Photo Collection'

Learning to Aggregate and Personalize 3D Face from In-the-Wild Photo Collection Pytorch implemetation of paper 'Learning to Aggregate and Personalize

Tencent YouTu Research 136 Dec 29, 2022
SGPT: Multi-billion parameter models for semantic search

SGPT: Multi-billion parameter models for semantic search This repository contains code, results and pre-trained models for the paper SGPT: Multi-billi

Niklas Muennighoff 182 Dec 29, 2022
Sequential Model-based Algorithm Configuration

SMAC v3 Project Copyright (C) 2016-2018 AutoML Group Attention: This package is a reimplementation of the original SMAC tool (see reference below). Ho

AutoML-Freiburg-Hannover 778 Jan 05, 2023
The goal of the exercises below is to evaluate the candidate knowledge and problem solving expertise regarding the main development focuses for the iFood ML Platform team: MLOps and Feature Store development.

The goal of the exercises below is to evaluate the candidate knowledge and problem solving expertise regarding the main development focuses for the iFood ML Platform team: MLOps and Feature Store dev

George Rocha 0 Feb 03, 2022
The official code repo of "HTS-AT: A Hierarchical Token-Semantic Audio Transformer for Sound Classification and Detection"

Hierarchical Token Semantic Audio Transformer Introduction The Code Repository for "HTS-AT: A Hierarchical Token-Semantic Audio Transformer for Sound

Knut(Ke) Chen 134 Jan 01, 2023
Deep Reinforced Attention Regression for Partial Sketch Based Image Retrieval.

DARP-SBIR Intro This repository contains the source code implementation for ICDM submission paper Deep Reinforced Attention Regression for Partial Ske

2 Jan 09, 2022
A bare-bones Python library for quality diversity optimization.

pyribs Website Source PyPI Conda CI/CD Docs Docs Status Twitter pyribs.org GitHub docs.pyribs.org A bare-bones Python library for quality diversity op

ICAROS 127 Jan 06, 2023
Rotation Robust Descriptors

RoRD Rotation-Robust Descriptors and Orthographic Views for Local Feature Matching Project Page | Paper link Evaluation and Datasets MMA : Training on

Udit Singh Parihar 25 Nov 15, 2022
[ICCV2021] 3DVG-Transformer: Relation Modeling for Visual Grounding on Point Clouds

3DVG-Transformer This repository is for the ICCV 2021 paper "3DVG-Transformer: Relation Modeling for Visual Grounding on Point Clouds" Our method "3DV

22 Dec 11, 2022
Blender Add-on that sets a Material's Base Color to one of Pantone's Colors of the Year

Blender PCOY (Pantone Color of the Year) MCMC (Mid-Century Modern Colors) HG71 (House & Garden Colors 1971) Blender Add-ons That Assign a Custom Color

Don Schnitzius 15 Nov 20, 2022