Okasha Khan
FAST
· 2021
·
i17 - 0176
Email
—
Phone
—
LinkedIn
—
GitHub
—
Academic
Program
BSCS
CGPA
—
Year
2021
Education
SEECS
Address
—
DOB
—
Career
Current role
—
Target role
—
Skills
python, pyCharm, RASA framework, colab, github, React
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.
Rehnuma An interactive chatbot for admission inquiries in Roman Urdu Roman Urdu is a resource-poor language and hasn’t been enough researched and worked upon by researchers and developers. No intelligent chatbot for Roman Urdu is developed yet. Mostly the existing chatbots understand only a limited number of static queries and give only a limited number of static responses. So, we developed an interactive and intelligent chatbot that understands and gives dynamic responses to students’ queries in Roman Urdu. Our chatbot can handle different spelling variations of Roman Urdu words, detect offensive language, and handle out-of-scope questions. Chatbot also asks follow-up questions if the query is unclear or not enough information is provided. It then extracts the required information from the query, uses that information to calculate or predict the answer, and then replies to the user. It also remembers the context of the conversation. We used the RASA framework for the development of our chatbot and we got average accuracy of around 94% and an average F1 score of around 84% for all the user intents. It handles questions/queries falling in more than 50 different categories which include closing merit, programs offered, merit list date, financial aid, entry test schedule, entry test pattern, sports, scholarship, admission procedure, admission requirement, fee structure, semester system info, refund policy, admission open, admission deadline, campus life, hostel info, transportation, grading system, societies, facilities and many more. Technology Used: python, pyCharm, RASA framework colab, github, React Supervisor Name: Mr. Umair Arshad Group Members: Muhammad Usman Zafar (i16 - 0430) Okasha Khan (i17 - 0176) Zain-ul-Abideen (i16 - 0064)
AI enrichment
Okasha Khan is a BSCS graduate who developed an interactive chatbot for admission inquiries in Roman Urdu using the RASA framework. The project achieved 94% accuracy and 84% F1 score, handling over 50 query categories with context awareness and dynamic response generation.
Skills (AI)
["Python", "RASA Framework", "React", "Natural Language Processing", "Chatbot Development", "Git", "Google Colab"]
Status: ai_done
Provenance
Source file: Graduate Directory FAST School of Computing 2021 (1st Final) (1).pdfFrom job #24 page 229
Created: 1778170890