This tutorial repository is to introduce the functionality of KGTK to first-time users

Overview

Welcome to the KGTK notebook tutorial

The goal of this tutorial repository is to introduce the functionality of KGTK to first-time users. The Knowledge Graph Toolkit (KGTK) is a comprehensive framework for the creation and exploitation of large hyper-relational knowledge graphs (KGs), designed for ease of use, scalability, and speed. The tutorial consists of several notebooks that demonstrate how to perform network analysis, graph profiling, knowledge enrichment, and embedding computation over a portion of the Wikidata knowledge graph. The tutorial notebooks can be found in the tutorial folder. All notebooks require minimum configuration and can be run locally or in Google Colab in a matter of a few minutes. The input data for the notebooks is stored in the datasets folder. Basic understanding of knowledge graphs is sufficient for this tutorial.

This repository has been created for the purpose of the KGTK tutorial presented at ISWC 2021. For more information on this tutorial, see our website.

Notebooks

  1. 01-kgtk-introduction.ipynb introduction to kgtk and kypher.
  2. 02-kg-profiling.ipynb performs profiling of a Wikidata subgraph, by computing deep statistics of its classes, instances, and properties.
  3. 03-kg-graph-embeddings.ipynb computes graph embeddings of a Wikidata subgraph using kgtk, demonstrates how to use these embeddings for similarity estimation, and visualizes them.
  4. 04-kg-enrichment-with-csv.ipynb shows how structured data from IMDb can be integrated into a subset of Wikidata.
  5. 05-kg-enrichment-with-lod.ipynb shows how LOD graphs like Getty Vocabulary can be used to enrich Wikidata by using kgtk operations.
  6. 06-kg-network-analysis.ipynb analyzes the family network of Arnold Schwarzenegger (Q2685) in Wikidata by using KGTK operations.
  7. 07-kg-constraint-validation.ipynb demonstrates how to do constraint validation on one wikidata property.

Running the notebooks in Google Colab

List of steps required to be able to run the ISI Google colab Notebooks.

Make a copy of the notebooks to your Google Drive.

The following tutorial notebooks are available to run in Google Colab

  1. 01-kgtk-introduction.ipynb
  2. 02-kg-profiling.ipynb
  3. 03-kg-graph-embeddings.ipynb
  4. 04-kg-enrichment-with-csv.ipynb
  5. 05-kg-enrichment-with-lod.ipynb
  6. 06-kg-network-analysis.ipynb
  7. 07-kg-constraint-validation.ipynb
  8. kgtk-browser.ipynb (experimental)

Click on a link, it'll take you to the Google Colab notebook. These are readonly notebook links.

Click on Save a copy in Drive from the File menu as shown.

Save a Copy

This will create a copy of the notebook in your Google Drive.

Install kgtk

Run the first cell to install kgtk.

If you see this warning,

Author

click on Run anyway to continue

You'll see an error after the install finishes,

Restart Runtime

This is because of a conflict in Google Colab's python environment. You have to click on the Restart Runtime button.

You do not have to install kgtk again.

In some notebooks, there are a few more installation cells, in case you see the same error as above, please click on Restart Runtime

Run the cells in the notebook

Now, simply run all the cells. The notebook should run successfully.

Google Colab Caveats

  • The colab VM and python environment is ephemeral. The VM will reset after a while, all the installed libraries and files produced will be lost.
  • Google Colab File IO. Download / Upload files to Google Colab
  • You can connect a google drive to the colab notebook to read from and save to.
  • Users can run the same colab notebook by sharing it with a link. This can have unwanted complications in case multiple people run the same cell at the same time.

Contact

Owner
USC ISI I2
USC ISI I2
交互式标注软件,暂定名 iann

iann 交互式标注软件,暂定名iann。 安装 按照官网介绍安装paddle。 安装其他依赖 pip install -r requirements.txt 运行 git clone https://github.com/PaddleCV-SIG/iann/ cd iann python iann

294 Dec 30, 2022
Simple Tensorflow implementation of Toward Spatially Unbiased Generative Models (ICCV 2021)

Spatial unbiased GANs — Simple TensorFlow Implementation [Paper] : Toward Spatially Unbiased Generative Models (ICCV 2021) Abstract Recent image gener

Junho Kim 16 Apr 15, 2022
[CVPR2021] DoDNet: Learning to segment multi-organ and tumors from multiple partially labeled datasets

DoDNet This repo holds the pytorch implementation of DoDNet: DoDNet: Learning to segment multi-organ and tumors from multiple partially labeled datase

116 Dec 12, 2022
学习 python3 以来写的一些垃圾玩具……

和东哥做兄弟 Author: chiupam 版权 未经本人同意,仓库内所有资源文件,禁止任何公众号、自媒体、开发者进行任何形式的转载、发布、搬运。 声明 这不是一个开源项目,只是把 GitHub 当作一个代码的存储空间,本项目不接受任何开源要求。 仅用于学习研究,禁止用于商业用途,不能保证其合法性

Chiupam 67 Mar 26, 2022
Pytorch implementation of Implicit Behavior Cloning.

Implicit Behavior Cloning - PyTorch (wip) Pytorch implementation of Implicit Behavior Cloning. Install conda create -n ibc python=3.8 pip install -r r

Kevin Zakka 49 Dec 25, 2022
Official code for Score-Based Generative Modeling through Stochastic Differential Equations

Score-Based Generative Modeling through Stochastic Differential Equations This repo contains the official implementation for the paper Score-Based Gen

Yang Song 818 Jan 06, 2023
(Preprint) Official PyTorch implementation of "How Do Vision Transformers Work?"

(Preprint) Official PyTorch implementation of "How Do Vision Transformers Work?"

xxxnell 656 Dec 30, 2022
Real life contra a deep learning project built using mediapipe and openc

real-life-contra Description A python script that translates the body movement into in game control. Welcome to all new real life contra a deep learni

Programminghut 7 Jan 26, 2022
Deep generative modeling for time-stamped heterogeneous data, enabling high-fidelity models for a large variety of spatio-temporal domains.

Neural Spatio-Temporal Point Processes [arxiv] Ricky T. Q. Chen, Brandon Amos, Maximilian Nickel Abstract. We propose a new class of parameterizations

Facebook Research 75 Dec 19, 2022
[CVPR 2021] Rethinking Text Segmentation: A Novel Dataset and A Text-Specific Refinement Approach

Rethinking Text Segmentation: A Novel Dataset and A Text-Specific Refinement Approach This is the repo to host the dataset TextSeg and code for TexRNe

SHI Lab 174 Dec 19, 2022
Papers about explainability of GNNs

Papers about explainability of GNNs

Dongsheng Luo 236 Jan 04, 2023
Wenet STT Python

Wenet STT Python Beta Software Simple Python library, distributed via binary wheels with few direct dependencies, for easily using WeNet models for sp

David Zurow 33 Feb 21, 2022
Multi-angle c(q)uestion answering

Macaw Introduction Macaw (Multi-angle c(q)uestion answering) is a ready-to-use model capable of general question answering, showing robustness outside

AI2 430 Jan 04, 2023
Sibur challange 2021 competition - 6 place

sibur challange 2021 Решение на 6 место: https://sibur.ai-community.com/competitions/5/tasks/13 Скор 1.4066/1.4159 public/private. Архитектура - однос

Ivan 5 Jan 11, 2022
A series of convenience functions to make basic image processing operations such as translation, rotation, resizing, skeletonization, and displaying Matplotlib images easier with OpenCV and Python.

imutils A series of convenience functions to make basic image processing functions such as translation, rotation, resizing, skeletonization, and displ

Adrian Rosebrock 4.3k Jan 08, 2023
Improved Fitness Optimization Landscapes for Sequence Design

ReLSO Improved Fitness Optimization Landscapes for Sequence Design Description Citation How to run Training models Original data source Description In

Krishnaswamy Lab 44 Dec 20, 2022
Official Pytorch Implementation of: "ImageNet-21K Pretraining for the Masses"(2021) paper

ImageNet-21K Pretraining for the Masses Paper | Pretrained models Official PyTorch Implementation Tal Ridnik, Emanuel Ben-Baruch, Asaf Noy, Lihi Zelni

574 Jan 02, 2023
A Fast Knowledge Distillation Framework for Visual Recognition

FKD: A Fast Knowledge Distillation Framework for Visual Recognition Official PyTorch implementation of paper A Fast Knowledge Distillation Framework f

Zhiqiang Shen 129 Dec 24, 2022
A whale detector design for the Kaggle whale-detector challenge!

CNN (InceptionV1) + STFT based Whale Detection Algorithm So, this repository is my PyTorch solution for the Kaggle whale-detection challenge. The obje

Tarin Ziyaee 92 Sep 28, 2021
Pytorch and Torch testing code of CartoonGAN

CartoonGAN-Test-Pytorch-Torch Pytorch and Torch testing code of CartoonGAN [Chen et al., CVPR18]. With the released pretrained models by the authors,

Yijun Li 642 Dec 27, 2022