Corpus to Graph Pipeline
Corpus to Graph pipeline is a module that processes documents from a public repository (corpus),
performs entity extraction + scoring on them and outputs the data into a database in the form of entity-relation graph.
Solution Architecture
The elements in play in this solution are as follows:
Element | Description |
---|
Public Repository | External repository that supplies new documents every day |
Trigger Web Job | Scheduled to run daily and trigger a flow |
Query Web Job | Queries for new document IDs (latest) |
Parser Web Job | Divides documents into sentences and entities |
Scoring Web Job | Scores sentences and relations |
External API | API (url) that enables entity extraction and scoring |
Graph Data | Database to store documents, sentences and relations |
Web Jobs
There are 3 web jobs in the bundle
Web Job | Description |
---|
Trigger | A scheduled web job that triggers a daily check for new document Ids |
Query | Queries documents according to date range provided through Trigger Queue and insert all unprocessed documents to New IDs Queue |
Parser | Processes each document in New IDs Queue into sentences and entities and pushes them into Scoring Queue |
Scoring | Scores each sentence in the Scoring Queue via the Scoring Service |
To get more information on the message api between the web jobs and the queues see Corpus to Graph Pipeline - Message API
Pipeline Logic Interface
If you have a document repository and you'd like to run it through the corpus to graph pipeline you will need to provide an implementation of the following pipeline logic interface:
pipeline-logic-interface.js:
- getNewUnprocessedDocumentIDs - Retrieves IDs of unprocessed documents in the following format:
var documents = [
{
sourceId: 1,
docId: '85500001'
},
{
sourceId: 2,
docId: '90800001'
}
];
- getDocumentSentences - Gets an array of sentences in following format (you can also provide entities alongside the sentences):
var sentencesArray = {
"sentences": [
{
"sentence": "This is a sentence about entity-1 and entity-2.",
"mentions": [
{
"from": "25",
"to": "32",
"id": "1234",
"type": "entityType1",
"value": "entity-1"
},
{
"from": "38",
"to": "45",
"id": "ABCD",
"type": "entityType2",
"value": "entity-2"
}
]
},
{
"sentence": "This sentence also contains entity-1 and entity-2.",
"mentions": []
}
]
};
- getSentenceEntities - Gets the entities array for a retrieved sentence
You can implement the methods getSentenceEntities and getDocumentSentences separately, or use getDocumentSentences to get both sentences and entities (as is done in the stub).
- getScoring - Scores a sentence with mentions and return the score in the following format:
var result = {
entities: [
{
id: "1234",
name: "entity-1",
typeId: 1
},
{
id: "ABCD",
name: "entity-2",
typeId: 2
}
],
relations: [
{
entity1: {
id: "1234",
name: "entity-1",
typeId: 1
},
entity2: {
id: "ABCD",
name: "entity-2",
typeId: 2
},
modelVersion: "0.1.0.1",
relation: 2,
score: 0.8,
scoringServiceId: "SERVICE1"
}
]
};
You have an example on how to implement this interface here: Pipeline Logic Stub
Testing
Initiate tests by running:
npm install
npm test
The test replaces the implementation of azure sql database and the azure storage queue with stubs.
In the same way you can replace the implementation of azure sql database and the azure storage queue with non-azure implementations
Example
An example on how to use this project for processing a document in a Genomics context see Corpus to Graph Genomics
License
Document Processing Pipeline is licensed under the MIT License.