Skip to content

jazken/IRS-CS-2019-07-29-IS1FT-GRP-Team10-Personal-Career-Manager-Software-Agent

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

SECTION 1 : PROJECT TITLE

Personal Career Manager Software Agent


SECTION 2 : EXECUTIVE SUMMARY / PAPER ABSTRACT

The team has successfully implemented a Personal Career Manager Software Agent which is deployable on Facebook Messenger platform. The Software Agent can help professionals develop a personalised career roadmap as well as recommending suitable jobs and training opportunities. It is also able to answer questions regarding jobs available in the market. The Software Agent takes a persona-based approach in its interaction with its users. A context management approach has been implemented to allow the Software Agent to hold the context of the conversation from start to end and to allow flexibility for the user to branch away from the predefined conversation flow.


SECTION 3 : CREDITS / PROJECT CONTRIBUTION

Official Full Name Student ID (MTech Applicable) Work Items (Who Did What) Email (Optional)
Alfred Tay Wenjie A0198541W Project Scoping, Persona Identification, Design Conversation Flow and Structure, Dialogflow Intents, Entities and Context, Fulfilment Coding, Testing and Fine-tuning, Report
Kenneth Goh Chia Wei A0198544N Dialogflow Intents, Entities and Context, Intent functions, Facebook Integration, Report, Chatbot utility function, Test Cases Generation
Dominic Tan Heng Han A0198502B Dialogflow, Intent functions, Datasourcing, User Acceptance Test, Report, Video
Wang Zilong A0198523W Dialogflow, knowledge discovery, database, backend function
Raymond Ng Boon Cheong A0198543R Dialogflow, Django server, chatbot utility functions, database, user guide, system architecture design, system integration

SECTION 4 : VIDEO OF SYSTEM MODELLING & USE CASE DEMO

SECTION 5 : USER GUIDE

SECTION 6 : PROJECT REPORT / PAPER

About

Project for ISS CS course

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 93.8%
  • HTML 5.8%
  • CSS 0.4%