• Stars
    star
    308
  • Rank 130,708 (Top 3 %)
  • Language
    Python
  • License
    MIT License
  • Created about 2 years ago
  • Updated 3 months ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

Zero and Few shot named entity & relationships recognition

Zshot

Zero and Few shot named entity & relationships recognition

Tutorials Build Build

Documentation: https://ibm.github.io/zshot

Source Code: https://github.com/IBM/zshot

Paper: https://aclanthology.org/2023.acl-demo.34/

Zshot is a highly customisable framework for performing Zero and Few shot named entity recognition.

Can be used to perform:

  • Mentions extraction: Identify globally relevant mentions or mentions relevant for a given domain
  • Wikification: The task of linking textual mentions to entities in Wikipedia
  • Zero and Few Shot named entity recognition: using language description perform NER to generalize to unseen domains
  • Zero and Few Shot named relationship recognition
  • Visualization: Zero-shot NER and RE extraction

Requirements

  • Python 3.6+

  • spacy - Zshot rely on Spacy for pipelining and visualization

  • torch - PyTorch is required to run pytorch models.

  • transformers - Required for pre-trained language models.

  • evaluate - Required for evaluation.

  • datasets - Required to evaluate over datasets (e.g.: OntoNotes).

Optional Dependencies

  • flair - Required if you want to use Flair mentions extractor and for TARS linker.
  • blink - Required if you want to use Blink for linking to Wikipedia pages.

Installation

$ pip install zshot

---> 100%

Examples

Example Notebook
Installation and Visualization Open In Colab
Knowledge Extractor Open In Colab
Wikification Open In Colab
Custom Components Open In Colab
Evaluation Open In Colab

Zshot Approach

ZShot contains two different components, the mentions extractor and the linker.

Mentions Extractor

The mentions extractor will detect the possible entities (a.k.a. mentions), that will be then linked to a data source (e.g.: Wikidata) by the linker.

Currently, there are 6 different mentions extractors supported, SMXM, TARS, 2 based on SpaCy, and 2 that are based on Flair. The two different versions for SpaCy and Flair are similar, one is based on Named Entity Recognition and Classification (NERC) and the other one is based on the linguistics (i.e.: using Part Of the Speech tagging (PoS) and Dependency Parsing(DP)).

The NERC approach will use NERC models to detect all the entities that have to be linked. This approach depends on the model that is being used, and the entities the model has been trained on, so depending on the use case and the target entities it may be not the best approach, as the entities may be not recognized by the NERC model and thus won't be linked.

The linguistic approach relies on the idea that mentions will usually be a syntagma or a noun. Therefore, this approach detects nouns that are included in a syntagma and that act like objects, subjects, etc. This approach do not depend on the model (although the performance does), but a noun in a text should be always a noun, it doesn't depend on the dataset the model has been trained on.

Linker

The linker will link the detected entities to a existing set of labels. Some of the linkers, however, are end-to-end, i.e. they don't need the mentions extractor, as they detect and link the entities at the same time.

Again, there are 4 linkers available currently, 2 of them are end-to-end and 2 are not. Let's start with those thar are not end-to-end:

Linker Name end-to-end Source Code Paper
Blink X Source Code Paper
GENRE X Source Code Paper
SMXM Source Code Paper
TARS Source Code Paper

Relations Extractor

The relations extractor will extract relations among different entities previously extracted by a linker..

Currently, the is only one Relation Extractor available:

Knowledge Extractor

The knowledge extractor will perform at the same time the extraction and classification of named entities and the extraction of relations among them. The pipeline with this component doesn't need any mentions extractor, linker or relation extractor to work.

Currently, the is only one Knowledge Extractor available:

How to use it

  • Install requirements: pip install -r requirements.txt
  • Install a spacy pipeline to use it for mentions extraction: python -m spacy download en_core_web_sm
  • Create a file main.py with the pipeline configuration and entities definition (Wikipedia abstract are usually a good starting point for descriptions):
import spacy

from zshot import PipelineConfig, displacy
from zshot.linker import LinkerRegen
from zshot.mentions_extractor import MentionsExtractorSpacy
from zshot.utils.data_models import Entity

nlp = spacy.load("en_core_web_sm")
nlp_config = PipelineConfig(
    mentions_extractor=MentionsExtractorSpacy(),
    linker=LinkerRegen(),
    entities=[
        Entity(name="Paris",
               description="Paris is located in northern central France, in a north-bending arc of the river Seine"),
        Entity(name="IBM",
               description="International Business Machines Corporation (IBM) is an American multinational technology corporation headquartered in Armonk, New York"),
        Entity(name="New York", description="New York is a city in U.S. state"),
        Entity(name="Florida", description="southeasternmost U.S. state"),
        Entity(name="American",
               description="American, something of, from, or related to the United States of America, commonly known as the United States or America"),
        Entity(name="Chemical formula",
               description="In chemistry, a chemical formula is a way of presenting information about the chemical proportions of atoms that constitute a particular chemical compound or molecule"),
        Entity(name="Acetamide",
               description="Acetamide (systematic name: ethanamide) is an organic compound with the formula CH3CONH2. It is the simplest amide derived from acetic acid. It finds some use as a plasticizer and as an industrial solvent."),
        Entity(name="Armonk",
               description="Armonk is a hamlet and census-designated place (CDP) in the town of North Castle, located in Westchester County, New York, United States."),
        Entity(name="Acetic Acid",
               description="Acetic acid, systematically named ethanoic acid, is an acidic, colourless liquid and organic compound with the chemical formula CH3COOH"),
        Entity(name="Industrial solvent",
               description="Acetamide (systematic name: ethanamide) is an organic compound with the formula CH3CONH2. It is the simplest amide derived from acetic acid. It finds some use as a plasticizer and as an industrial solvent."),
    ]
)
nlp.add_pipe("zshot", config=nlp_config, last=True)

text = "International Business Machines Corporation (IBM) is an American multinational technology corporation" \
       " headquartered in Armonk, New York, with operations in over 171 countries."

doc = nlp(text)
displacy.serve(doc, style="ent")

Run it

Run with

$ python main.py

Using the 'ent' visualizer
Serving on http://0.0.0.0:5000 ...

The script will annotate the text using Zshot and use Displacy for visualising the annotations

Check it

Open your browser at http://127.0.0.1:5000 .

You will see the annotated sentence:

How to create a custom component

If you want to implement your own mentions_extractor or linker and use it with ZShot you can do it. To make it easier for the user to implement a new component, some base classes are provided that you have to extend with your code.

It is as simple as create a new class extending the base class (MentionsExtractor or Linker). You will have to implement the predict method, which will receive the SpaCy Documents and will return a list of zshot.utils.data_models.Span for each document.

This is a simple mentions_extractor that will extract as mentions all words that contain the letter s:

from typing import Iterable
import spacy
from spacy.tokens import Doc
from zshot import PipelineConfig
from zshot.utils.data_models import Span
from zshot.mentions_extractor import MentionsExtractor

class SimpleMentionExtractor(MentionsExtractor):
    def predict(self, docs: Iterable[Doc], batch_size=None):
        spans = [[Span(tok.idx, tok.idx + len(tok)) for tok in doc if "s" in tok.text] for doc in docs]
        return spans

new_nlp = spacy.load("en_core_web_sm")

config = PipelineConfig(
    mentions_extractor=SimpleMentionExtractor()
)
new_nlp.add_pipe("zshot", config=config, last=True)
text_acetamide = "CH2O2 is a chemical compound similar to Acetamide used in International Business " \
        "Machines Corporation (IBM)."

doc = new_nlp(text_acetamide)
print(doc._.mentions)

>>> [is, similar, used, Business, Machines, materials]

How to evaluate ZShot

Evaluation is an important process to keep improving the performance of the models, that's why ZShot allows to evaluate the component with two predefined datasets: OntoNotes and MedMentions, in a Zero-Shot version in which the entities of the test and validation splits don't appear in the train set.

The package evaluation contains all the functionalities to evaluate the ZShot components. The main function is zshot.evaluation.zshot_evaluate.evaluate, that will take as input the SpaCy nlp model and the dataset to evaluate. It will return a str containing a table with the results of the evaluation. For instance the evaluation of the TARS linker in ZShot for the Ontonotes validation set would be:

import spacy

from zshot import PipelineConfig
from zshot.linker import LinkerTARS
from zshot.evaluation.dataset import load_ontonotes_zs
from zshot.evaluation.zshot_evaluate import evaluate, prettify_evaluate_report
from zshot.evaluation.metrics.seqeval.seqeval import Seqeval

ontonotes_zs = load_ontonotes_zs('validation')


nlp = spacy.blank("en")
nlp_config = PipelineConfig(
    linker=LinkerTARS(),
    entities=ontonotes_zs.entities
)

nlp.add_pipe("zshot", config=nlp_config, last=True)

evaluation = evaluate(nlp, ontonotes_zs, metric=Seqeval())
prettify_evaluate_report(evaluation)

Citation

@inproceedings{picco-etal-2023-zshot,
    title = "Zshot: An Open-source Framework for Zero-Shot Named Entity Recognition and Relation Extraction",
    author = "Picco, Gabriele  and
      Martinez Galindo, Marcos  and
      Purpura, Alberto  and
      Fuchs, Leopold  and
      Lopez, Vanessa  and
      Hoang, Thanh Lam",
    booktitle = "Proceedings of the 61st Annual Meeting of the Association for Computational Linguistics (Volume 3: System Demonstrations)",
    month = jul,
    year = "2023",
    address = "Toronto, Canada",
    publisher = "Association for Computational Linguistics",
    url = "https://aclanthology.org/2023.acl-demo.34",
    doi = "10.18653/v1/2023.acl-demo.34",
    pages = "357--368",
    abstract = "The Zero-Shot Learning (ZSL) task pertains to the identification of entities or relations in texts that were not seen during training. ZSL has emerged as a critical research area due to the scarcity of labeled data in specific domains, and its applications have grown significantly in recent years. With the advent of large pretrained language models, several novel methods have been proposed, resulting in substantial improvements in ZSL performance. There is a growing demand, both in the research community and industry, for a comprehensive ZSL framework that facilitates the development and accessibility of the latest methods and pretrained models.In this study, we propose a novel ZSL framework called Zshot that aims to address the aforementioned challenges. Our primary objective is to provide a platform that allows researchers to compare different state-of-the-art ZSL methods with standard benchmark datasets. Additionally, we have designed our framework to support the industry with readily available APIs for production under the standard SpaCy NLP pipeline. Our API is extendible and evaluable, moreover, we include numerous enhancements such as boosting the accuracy with pipeline ensembling and visualization utilities available as a SpaCy extension.",
}

More Repositories

1

sarama

Sarama is a Go library for Apache Kafka.
Go
10,858
star
2

plex

The package of IBM’s typeface, IBM Plex.
CSS
9,297
star
3

css-gridish

Automatically build your grid design’s CSS Grid code, CSS Flexbox fallback code, Sketch artboards, and Chrome extension.
CSS
2,253
star
4

openapi-to-graphql

Translate APIs described by OpenAPI Specifications (OAS) into GraphQL
TypeScript
1,594
star
5

Project_CodeNet

This repository is to support contributions for tools for the Project CodeNet dataset hosted in DAX
Python
1,485
star
6

fp-go

functional programming library for golang
Go
1,480
star
7

pytorch-seq2seq

An open source framework for seq2seq models in PyTorch.
Python
1,431
star
8

fhe-toolkit-linux

IBM Fully Homomorphic Encryption Toolkit For Linux. This toolkit is a Linux based Docker container that demonstrates computing on encrypted data without decrypting it! The toolkit ships with two demos including a fully encrypted Machine Learning inference with a Neural Network and a Privacy-Preserving key-value search.
C++
1,427
star
9

ibm.github.io

IBM Open Source at GitHub
JavaScript
1,106
star
10

MicroscoPy

An open-source, motorized, and modular microscope built using LEGO bricks, Arduino, Raspberry Pi and 3D printing.
Python
1,102
star
11

Dromedary

Dromedary: towards helpful, ethical and reliable LLMs.
Python
1,059
star
12

MAX-Image-Resolution-Enhancer

Upscale an image by a factor of 4, while generating photo-realistic details.
Python
863
star
13

elasticsearch-spark-recommender

Use Jupyter Notebooks to demonstrate how to build a Recommender with Apache Spark & Elasticsearch
Jupyter Notebook
806
star
14

differential-privacy-library

Diffprivlib: The IBM Differential Privacy Library
Python
774
star
15

build-blockchain-insurance-app

Sample insurance application using Hyperledger Fabric
JavaScript
719
star
16

FfDL

Fabric for Deep Learning (FfDL, pronounced fiddle) is a Deep Learning Platform offering TensorFlow, Caffe, PyTorch etc. as a Service on Kubernetes
Go
676
star
17

spring-boot-microservices-on-kubernetes

In this code we demonstrate how a simple Spring Boot application can be deployed on top of Kubernetes. This application, Office Space, mimicks the fictitious app idea from Michael Bolton in the movie "Office Space".
JavaScript
548
star
18

cloud-native-starter

Cloud Native Starter for Java/Jakarta EE based Microservices on Kubernetes and Istio
Shell
517
star
19

federated-learning-lib

A library for federated learning (a distributed machine learning process) in an enterprise environment.
Python
480
star
20

nicedoc.io

pretty README as service.
JavaScript
473
star
21

clai

Command Line Artificial Intelligence or CLAI is an open-sourced project from IBM Research aimed to bring the power of AI to the command line interface.
Python
466
star
22

import-tracker

Python utility for tracking third party dependencies within a library
Python
458
star
23

mac-ibm-enrollment-app

The Mac@IBM enrollment app makes setting up macOS with Jamf Pro more intuitive for users and easier for IT. The application offers IT admins the ability to gather additional information about their users during setup, allows users to customize their enrollment by selecting apps or bundles of apps to install during setup, and provides users with next steps when enrollment is complete.
Swift
454
star
24

mobx-react-router

Keep your MobX state in sync with react-router
JavaScript
437
star
25

openapi-validator

Configurable and extensible validator/linter for OpenAPI documents
JavaScript
429
star
26

EvolveGCN

Code for EvolveGCN: Evolving Graph Convolutional Networks for Dynamic Graphs
Python
384
star
27

fhe-toolkit-macos

IBM Homomorphic Encryption Toolkit For MacOS
C++
356
star
28

AutoMLPipeline.jl

A package that makes it trivial to create and evaluate machine learning pipeline architectures.
HTML
345
star
29

graphql-query-generator

Randomly generates GraphQL queries from a GraphQL schema
TypeScript
334
star
30

portieris

A Kubernetes Admission Controller for verifying image trust.
Go
329
star
31

BluePic

WARNING: This repository is no longer maintained ⚠️ This repository will not be updated. The repository will be kept available in read-only mode.
Swift
325
star
32

FedMA

Code for Federated Learning with Matched Averaging, ICLR 2020.
Python
320
star
33

lale

Library for Semi-Automated Data Science
Python
320
star
34

powerai-counting-cars

Run a Jupyter Notebook to detect, track, and count cars in a video using Maximo Visual Insights (formerly PowerAI Vision) and OpenCV
Jupyter Notebook
317
star
35

evote

A voting application that leverages Hyperledger Fabric and the IBM Blockchain Platform to record and tally ballots.
JavaScript
316
star
36

aihwkit

IBM Analog Hardware Acceleration Kit
Jupyter Notebook
314
star
37

blockchain-network-on-kubernetes

Demonstrates the steps involved in setting up your business network on Hyperledger Fabric using Kubernetes APIs on IBM Cloud Kubernetes Service.
Shell
305
star
38

IBM-Z-zOS

The helpful and handy location for finding and sharing z/OS files, which are not included in the product.
REXX
296
star
39

charts

The IBM/charts repository provides helm charts for IBM and Third Party middleware.
Smarty
295
star
40

TabFormer

Code & Data for "Tabular Transformers for Modeling Multivariate Time Series" (ICASSP, 2021)
Python
295
star
41

blockchain-application-using-fabric-java-sdk

Create and Deploy a Blockchain Network using Hyperledger Fabric SDK Java
Java
292
star
42

mac-ibm-notifications

macOS agent used to display custom notifications and alerts to the end user.
Swift
289
star
43

MAX-Object-Detector

Localize and identify multiple objects in a single image.
Python
286
star
44

design-kit

The IBM Design kit is a collection of tools aimed to help you design and prototype experiences faster, with confidence and thoughtfulness. This kit is based on the IBM Design System. Also, you may use this documentation to create add-on libraries to the IBM Design System or submit bugs to the current system.
272
star
45

AccDNN

A compiler from AI model to RTL (Verilog) accelerator in FPGA hardware with auto design space exploration.
Verilog
270
star
46

deploy-ibm-cloud-private

Instructions and Code required to install IBM Cloud Private
HCL
263
star
47

vue-a11y-calendar

Accessible, internationalized Vue calendar
JavaScript
253
star
48

audit-ci

Audit NPM, Yarn, and PNPM dependencies in continuous integration environments, preventing integration if vulnerabilities are found at or above a configurable threshold while ignoring allowlisted advisories
TypeScript
253
star
49

watson-banking-chatbot

A chatbot for banking that uses the Watson Assistant, Discovery, Natural Language Understanding and Tone Analyzer services.
JavaScript
250
star
50

UQ360

Uncertainty Quantification 360 (UQ360) is an extensible open-source toolkit that can help you estimate, communicate and use uncertainty in machine learning model predictions.
Python
249
star
51

Kubernetes-container-service-GitLab-sample

This code shows how a common multi-component GitLab can be deployed on Kubernetes cluster. Each component (NGINX, Ruby on Rails, Redis, PostgreSQL, and more) runs in a separate container or group of containers.
Shell
243
star
52

tensorflow-hangul-recognition

Handwritten Korean Character Recognition with TensorFlow and Android
Python
232
star
53

transition-amr-parser

SoTA Abstract Meaning Representation (AMR) parsing with word-node alignments in Pytorch. Includes checkpoints and other tools such as statistical significance Smatch.
Python
229
star
54

BlockchainNetwork-CompositeJourney

Part 1 in a series of patterns showing the building blocks of a Blockchain application
Shell
227
star
55

pytorchpipe

PyTorchPipe (PTP) is a component-oriented framework for rapid prototyping and training of computational pipelines combining vision and language
Python
223
star
56

Graph2Seq

Graph2Seq is a simple code for building a graph-encoder and sequence-decoder for NLP and other AI/ML/DL tasks.
Python
219
star
57

LNN

A `Neural = Symbolic` framework for sound and complete weighted real-value logic
Python
214
star
58

Scalable-WordPress-deployment-on-Kubernetes

This code showcases the full power of Kubernetes clusters and shows how can we deploy the world's most popular website framework on top of world's most popular container orchestration platform.
Shell
214
star
59

janusgraph-utils

Develop a graph database app using JanusGraph
Java
204
star
60

ModuleFormer

ModuleFormer is a MoE-based architecture that includes two different types of experts: stick-breaking attention heads and feedforward experts. We released a collection of ModuleFormer-based Language Models (MoLM) ranging in scale from 4 billion to 8 billion parameters.
Python
203
star
61

ibm-generative-ai

IBM-Generative-AI is a Python library built on IBM's large language model REST interface to seamlessly integrate and extend this service in Python programs.
Python
202
star
62

tensorflow-large-model-support

Large Model Support in Tensorflow
199
star
63

Scalable-Cassandra-deployment-on-Kubernetes

In this code we provide a full roadmap the deployment of a multi-node scalable Cassandra cluster on Kubernetes. Cassandra understands that it is running within a cluster manager, and uses this cluster management infrastructure to help implement the application. Kubernetes concepts like Replication Controller, StatefulSets etc. are leveraged to deploy either non-persistent or persistent Cassandra clusters on Kubernetes cluster.
Shell
195
star
64

adaptive-federated-learning

Code for paper "Adaptive Federated Learning in Resource Constrained Edge Computing Systems"
Python
193
star
65

action-recognition-pytorch

This is the pytorch implementation of some representative action recognition approaches including I3D, S3D, TSN and TAM.
Python
193
star
66

gantt-chart

IBM Gantt Chart Component, integrable in Vanilla, jQuery, or React Framework.
JavaScript
193
star
67

api-samples

Samples code that uses QRadar API's
Python
192
star
68

cdfsl-benchmark

(ECCV 2020) Cross-Domain Few-Shot Learning Benchmarking System
Python
190
star
69

kube101

Kubernetes 101 workshop (https://ibm.github.io/kube101/)
Shell
184
star
70

CrossViT

Official implementation of CrossViT. https://arxiv.org/abs/2103.14899
Python
180
star
71

browser-functions

A lightweight serverless platform that uses Web Browsers as execution engines
JavaScript
180
star
72

pwa-lit-template

A template for building Progressive Web Applications using Lit and Vaadin Router.
TypeScript
176
star
73

rl-testbed-for-energyplus

Reinforcement Learning Testbed for Power Consumption Optimization using EnergyPlus
Python
170
star
74

AMLSim

The AMLSim project is intended to provide a multi-agent based simulator that generates synthetic banking transaction data together with a set of known money laundering patterns - mainly for the purpose of testing machine learning models and graph algorithms. We welcome you to enhance this effort since the data set related to money laundering is critical to advance detection capabilities of money laundering activities.
Python
170
star
75

socket-io

A Socket.IO client for C#
C#
169
star
76

tfjs-web-app

A TensorFlow.js Progressive Web App for Offline Visual Recognition
JavaScript
164
star
77

molformer

Repository for MolFormer
Jupyter Notebook
163
star
78

spark-tpc-ds-performance-test

Use the TPC-DS benchmark to test Spark SQL performance
TSQL
160
star
79

watson-online-store

Learn how to use Watson Assistant and Watson Discovery. This application demonstrates a simple abstraction of a chatbot interacting with a Cloudant NoSQL database, using a Slack UI.
HTML
156
star
80

istio101

Istio 101 workshop (https://ibm.github.io/istio101/)
Shell
154
star
81

Medical-Blockchain

A healthcare data management platform built on blockchain that stores medical data off-chain
Vue
150
star
82

watson-assistant-slots-intro

A Chatbot for ordering a pizza that demonstrates how using the IBM Watson Assistant Slots feature, one can fill out an order, form, or profile.
JavaScript
143
star
83

tsfm

Foundation Models for Time Series
Jupyter Notebook
143
star
84

simulai

A toolkit with data-driven pipelines for physics-informed machine learning.
Python
142
star
85

etcd-java

Alternative etcd3 java client
Java
141
star
86

deploy-react-kubernetes

Built for developers who are interested in learning how to deploy a React application on Kubernetes, this pattern uses the React and Redux framework and calls the OMDb API to look up movie information based on user input. This pattern can be built and run on both Docker and Kubernetes.
JavaScript
139
star
87

innovate-digital-bank

This repository contains instructions to build a digital bank composed of a set of microservices that communicate with each other. Using Nodejs, Express, MongoDB and deployed to a Kubernetes cluster on IBM Cloud.
JavaScript
137
star
88

ipfs-social-proof

IPFS Social Proof: A decentralized identity and social proof system
JavaScript
135
star
89

KubeflowDojo

Repository to hold code, instructions, demos and pointers to presentation assets for Kubeflow Dojo
Jupyter Notebook
132
star
90

probabilistic-federated-neural-matching

Bayesian Nonparametric Federated Learning of Neural Networks
Python
132
star
91

fhe-toolkit-ios

IBM Fully Homomorphic Encryption Toolkit For iOS
C++
131
star
92

pytorch-large-model-support

Large Model Support in PyTorch
130
star
93

taxinomitis

Source code for Machine Learning for Kids site
JavaScript
127
star
94

Decentralized-Energy-Composer

WARNING: This repository is no longer maintained ⚠️ We are no longer showing the Hyperledger Composer Service.
TypeScript
127
star
95

quantum-careers

Learn about career opportunities with IBM Quantum.
126
star
96

cloud-pak

IBM Cloud Paks are enterprise-grade containerized software by combining container images with enterprise capabilities for deployment in production use cases with integrations for management and lifecycle operations. Features such as pre-configured deployments based on product expertise, rolling upgrades, and management of production workloads.
Shell
126
star
97

build-knowledge-base-with-domain-specific-documents

Create a knowledge base using domain specific documents and the mammoth python library
Jupyter Notebook
125
star
98

japan-technology

IBM Related Japanese technical documents - Code Patterns, Learning Path, Tutorials, etc.
Jupyter Notebook
125
star
99

DiffuseKronA

DiffuseKronA: A Parameter Efficient Fine-tuning Method for Personalized Diffusion Models
125
star
100

compliance-trestle

An opinionated tooling platform for managing compliance as code, using continuous integration and NIST's OSCAL standard.
Python
124
star