The rapidly increasing volume of data – both structured and unstructured – in the pharma industry creates several challenges as well as opportunities for large-scale data mining. Extracting relevant information from the unstructured text and connecting the extracted semantic information via graph helps in unlocking the true potential hidden the data. Our team at Fresh Gravity has been extensively performing text mining and creating knowledge graph specifically in pharma domain (where standard information extraction fail to give desired results).

 
 

Outline/Structure of the Demonstration

1. Knowledge Graph

2. Information Extraction

3. Graph Construction

4. Demonstration - Create Knowledge Graph on Pharmaceutical raw data

5. Q/A

Learning Outcome

Tackling practical challenges in Information Extraction and Graph Construction

Ability to build Knowledge Graph for domain specific data

Text Mining

Target Audience

Anyone who is interested in unlocking the potential of unstructured data

Prerequisites for Attendees

Basic understanding of Natural Language Processing and Graph Database

schedule Submitted 1 year ago

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