Dania Zahid
FAST
· 2021
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i17 - 0175
Email
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Academic
Program
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CGPA
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Year
2021
Education
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Address
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DOB
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Career
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Skills
Neo4j, Python 3.8, Flask, Jupyter Notebook, Google Colab, PyCharm, HTML, CSS, Javascript
Interests / quote
Our Project, Athena, is an automated graph based Knowledge Extraction System that aims to solve the challenges of linked data by providing users the ability to retrieve and extract meaningful information without the need of having expert domain knowledge. Our system has successfully achieved the conversion of raw text from various genres to a well structured Graph format. This has enabled our users to structure, store, retrieve and analyse data quickly, in runtime. Additionally, the live Graph Database will be queryable; The main medium for handling these queries will be Cypher, the robust language backed by Neo4j. Once a cypher query is formulated, information is passed along from the knowledge graph to the user via a query interface in an efficient manner.
Verbatim text
The exact text the LLM saw on the page (or the booklet text from the old import).
This is what powers semantic search.
Athena Our Project, Athena, is an automated graph based Knowledge Extraction System that aims to solve the challenges of linked data by providing users the ability to retrieve and extract meaningful information without the need of having expert domain knowledge. Our system has successfully achieved the conversion of raw text from various genres to a well structured Graph format. This has enabled our users to structure, store, retrieve and analyse data quickly, in runtime. Additionally, the live Graph Database will be queryable; The main medium for handling these queries will be Cypher, the robust language backed by Neo4j. Once a cypher query is formulated, information is passed along from the knowledge graph to the user via a query interface in an efficient manner. Features of Athena include: ➢ Knowledge graph construction at runtime ➢ Automatic conversion of unstructured text to a structured form ➢ Robust Querying options ➢ User friendly interface Conversion of raw unstructured text to a Knowledge Graph Technology Used: Neo4j, Python 3.8, Flask, Jupyter Notebook,Google Colab, PyCharm, HTML,CSS, Javascript Supervisor Name: Dr. Omer Beg Group Members: Hamza Mahmood (i17 - 0054) Azfar Bakht (i17 - 0158) Dania Zahid (i17 - 0175)
AI enrichment
Dania Zahid contributed to Athena, an automated graph-based knowledge extraction system that converts unstructured text into structured knowledge graphs using Neo4j and Cypher. The project involved building a runtime queryable database and a user-friendly interface for data retrieval and analysis.
Skills (AI)
["Neo4j", "Python", "Flask", "Cypher", "Knowledge Graphs", "HTML", "CSS", "JavaScript", "Jupyter Notebook", "Data Extraction"]
Status: ai_done
Provenance
Source file: Graduate Directory FAST School of Computing 2021 (1st Final) (1).pdfFrom job #24 page 194
Created: 1778144159