QuanTaichi: A Compiler for Quantized Simulations (SIGGRAPH 2021)

Overview

QuanTaichi: A Compiler for Quantized Simulations (SIGGRAPH 2021)

Yuanming Hu, Jiafeng Liu, Xuanda Yang, Mingkuan Xu, Ye Kuang, Weiwei Xu, Qiang Dai, William T. Freeman, Fredo Durand

[Paper] [Video]

The QuanTaichi framework is now officially part of Taichi. This repo only contains examples.

Simulate more with less memory, using a quantization compiler.

High-resolution simulations can deliver great visual quality, but they are often limited by available memory. We present a compiler for physical simulation that can achieve both high performance and significantly reduced memory costs, by enabling flexible and aggressive quantization.

To achieve that, we implemented an extension of the type system in Taichi. Now, programmers can define custom data types using the following code:

i8 = ti.quant.int(bits=8, signed=True)
fixed12 = ti.quant.fixed(frac=12, signed=False, range=3.0)
cft16 = ti.quant.float(exp=5, frac=11, signed=True)

The compiler will automatically encode/decode numerical data to achieve an improved memory efficiency (storage & bandwidth). Since custom data types are not natively supported by hardware, we propose two useful types of bit adapters: Bit structs and Bit arrays to pack thses types into hardware supported types with bit width 8, 16, 32, 64. For example, The following code declears 2 fields with custom types, and materialized them into two 2D 4 x 2 arrays with Bit structs:

u4 = ti.quant.int(bits=4, signed=False)
i12 = ti.quant.int(bits=12, signed=True)
p = ti.field(dtype=u4)
q = ti.field(dtype=i12)
ti.root.dense(ti.ij, (4, 2)).bit_struct(num_bits=16).place(p, q)

The p and q fields are laid in an array of structure (AOS) order in memory. Note the containing bit struct of a (p[i, j], q[i, j]) tuple is 16-bit wide. For more details of the usage of our quantization type system, please refer to our paper or see the examples in this repo.

Under proper quantization, we achieve 8× higher memory efficiency on each Game of Life cell, 1.57× on each Eulerian fluid simulation voxel, and 1.7× on each material point method particle. To the best of our knowledge, this is the first time these high-resolution simulations can run on a single GPU. Our system achieves resolution, performance, accuracy, and visual quality simultaneously.

How to run

Install the latest Taichi first.

Install the latest Taichi by:

python3 -m pip install —U taichi

Game of Life (GoL)

gol_pic

To reproduce the GOL galaxy:

cd gol && python3 galaxy.py -a [cpu/cuda] -o output

We suggest you run the script using GPU (--arch cuda). Because to better observe the evolution of metapixels, we set the steps per frame to be 32768 which will take quite a while on CPUs.

To reproduce the super large scale GoL:

  1. Download the pattern quant_sim_meta.rle from our Google Drive and place it in the same folder with quant_sim.py

  2. Run the code

python3 quant_sim.py -a [cpu/cuda] -o output

For more details, please refer to this documentation.

MLS-MPM

mpm-pic

To test our system on hybrid Lagrangian-Eulerian methods where both particles and grids are used, we implemented the Moving Least Squares Material Point Method with G2P2G transfer.

To reproduce, please see the output of the following command:

cd mls-mpm
python3 -m demo.demo_quantized_simulation_letters --help

You can add -s flag for a quick visualization and you may need to wait for 30 frames to see letters falling down.

More details are in this documentation.

Eulerian Fluid

smoke_simulation

We developed a sparse-grid-based advection-reflection fluid solver to evaluate our system on grid-based physical simulators.

To reproduce the large scale smoke simulation demo, please first change the directory into eulerain_fluid, and run:

python3 run.py --demo [0/1] -o outputs

Set the arg of demo to 0 for the bunny demo and 1 for the flow demo. -o outputs means the set the output folder to outputs.

For more comparisons of this quantized fluid simulation, please refer to the documentation of this demo.

Microbenchmarks

To reproduce the experiments of microbenchmarks, please run

cd microbenchmarks
chmod +x run_microbenchmarks.sh
./run_microbenchmarks.sh

Please refer to this Readme to get more details.

Bibtex

@article{hu2021quantaichi,
  title={QuanTaichi: A Compiler for Quantized Simulations},
  author={Hu, Yuanming and Liu, Jiafeng and Yang, Xuanda and Xu, Mingkuan and Kuang, Ye and Xu, Weiwei and Dai, Qiang and Freeman, William T. and Durand, Frédo},
  journal={ACM Transactions on Graphics (TOG)},
  volume={40},
  number={4},
  year={2021},
  publisher={ACM}
}
Owner
Taichi Developers
Taichi Developers
OpenGait is a flexible and extensible gait recognition project

A flexible and extensible framework for gait recognition. You can focus on designing your own models and comparing with state-of-the-arts easily with the help of OpenGait.

Shiqi Yu 335 Dec 22, 2022
Opencv-image-filters - A camera to capture videos in real time by placing filters using Python with the help of the Tkinter and OpenCV libraries

Opencv-image-filters - A camera to capture videos in real time by placing filters using Python with the help of the Tkinter and OpenCV libraries

Sergio Díaz Fernández 1 Jan 13, 2022
Hand gesture detection project with aweome UI implementation.

an awesome hand gesture detection project for you to be creative! Imagination is the limit to do with this project.

AR Ashraf 39 Sep 26, 2022
OCR, Scene-Text-Understanding, Text Recognition

Scene-Text-Understanding Survey [2015-PAMI] Text Detection and Recognition in Imagery: A Survey paper [2014-Front.Comput.Sci] Scene Text Detection and

Alan Tang 354 Dec 12, 2022
Markup for note taking

Subtext: markup for note-taking Subtext is a text-based, block-oriented hypertext format. It is designed with note-taking in mind. It has a simple, pe

Gordon Brander 224 Jan 01, 2023
🖺 OCR using tensorflow with attention

tensorflow-ocr 🖺 OCR using tensorflow with attention, batteries included Installation git clone --recursive http://github.com/pannous/tensorflow-ocr

646 Nov 11, 2022
Provides OCR (Optical Character Recognition) services through web applications

OCR4all As suggested by the name one of the main goals of OCR4all is to allow basically any given user to independently perform OCR on a wide variety

174 Dec 31, 2022
Go package for OCR (Optical Character Recognition), by using Tesseract C++ library

gosseract OCR Golang OCR package, by using Tesseract C++ library. OCR Server Do you just want OCR server, or see the working example of this package?

Hiromu OCHIAI 1.9k Dec 28, 2022
7th place solution

SIIM-FISABIO-RSNA-COVID-19-Detection 7th place solution Validation: We used iterative-stratification with 5 folds (https://github.com/trent-b/iterativ

11 Jul 17, 2022
PianoVisuals - Create background videos synced with piano music using opencv

Steps Record piano video Use Neural Network to do body segmentation (video matti

Solbiati Alessandro 4 Jan 24, 2022
Character Segmentation using TensorFlow

Character Segmentation Segment characters and spaces in one text line,from this paper Chinese English mixed Character Segmentation as Semantic Segment

26 Aug 25, 2022
Face Recognizer using Opencv Python

Face Recognizer using Opencv Python The first step create your own dataset with file open-cv-create_dataset second step You can put the photo accordin

Han Izza 2 Nov 16, 2021
Machine Leaning applied to denoise images to improve OCR Accuracy

Machine Learning to Denoise Images for Better OCR Accuracy This project is an adaptation of this tutorial and used only for learning purposes: https:/

Antonio Bri Pérez 2 Nov 16, 2022
aardio的opencv库

opencv_aardio dll库下载地址:https://github.com/xuncv/opencv-plugin/releases import cv2 img = cv2.imread("./images/Lena.jpg",1) img = cv2.medianBlur(img,5)

71 Dec 31, 2022
An application of high resolution GANs to dewarp images of perturbed documents

Docuwarp This project is focused on dewarping document images through the usage of pix2pixHD, a GAN that is useful for general image to image translat

Thomas Huang 97 Dec 25, 2022
An interactive interface for using OpenCV's GrabCut algorithm for image segmentation.

Interactive GrabCut An interactive interface for using OpenCV's GrabCut algorithm for image segmentation. Setup Install dependencies: pip install nump

Jason Y. Zhang 16 Oct 10, 2022
Text page dewarping using a "cubic sheet" model

page_dewarp Page dewarping and thresholding using a "cubic sheet" model - see full writeup at https://mzucker.github.io/2016/08/15/page-dewarping.html

Matt Zucker 1.2k Dec 29, 2022
Apply different text recognition services to images of handwritten documents.

Handprint The Handwritten Page Recognition Test is a command-line program that invokes HTR (handwritten text recognition) services on images of docume

Caltech Library 117 Jan 02, 2023
Using python libraries to track hands

Python-HandTracking Using python libraries to track hands on a camera Uses cv2 and mediapipe libraries custom hand tracking module PyCharm IDE Final E

Martin Matsudaira 1 Dec 17, 2021
利用Paddle框架复现CRAFT

CRAFT-Paddle 利用Paddle框架复现CRAFT CRAFT 本项目基于paddlepaddle框架复现CRAFT,并参加百度第三届论文复现赛,将在2021年5月15日比赛完后提供AIStudio链接~敬请期待 参考项目: CRAFT: Character-Region Awarenes

QuanHao Guo 2 Mar 07, 2022