MRI
MRI India Journals Vol. 15 No. 1 (2026)

TripMind: An Agentic AI-Based System for End-to-End Travel Planning

Authors

  • Nigar Sayyed Department of Computer Engineering, Shree L.R. Tiwari College of Engineering, Mumbai
  • Sanika Rane Department of Computer Engineering, Shree L.R. Tiwari College of Engineering, Mumbai
  • Bindu Yadav Department of Computer Engineering, Shree L.R. Tiwari College of Engineering, Mumbai
  • Suhani Tiwari Department of Computer Engineering, Shree L.R. Tiwari College of Engineering, Mumbai
  • Shraddha Sharma Assistant Professor, Department of Computer Engineering, Shree L.R. Tiwari College of Engineering, Mumbai

DOI:

https://doi.org/10.65521/ijacte.v15i1.2600

Keywords:

Agentic AI End-To-End Travel Planning Multi- Agent Systems Itinerary Generation Conversational AI Budget-Aware Planning Decision Support

Abstract

A trip usually means moving back and forth between multiple platforms for destination research, cost estimation, flight comparison, hotel search, weather checking, and itinerary preparation. While conversational assistants can suggest places or activities, they often stop short of turning user constraints into a usable trip plan. TripMind addresses this gap as an agentic AI-based system for end-to-end travel planning. It accepts free-form travel requests and turns them into structured outputs through a coordinated multi- agent pipeline. Separate agents handle budget feasibility, flight estimation, hotel planning, weather interpretation, itinerary generation, and final travel advice, while a Spring Boot backend manages session state, orchestration, persistence, and provider integration. The system also exposes planning-intelligence signals such as booking readiness, source reliability, and live-data coverage so that users can better judge the quality of the generated plan. The final response includes a feasibility verdict, cost breakdown, contextual recommendations, a day-by-day itinerary, and booking links populated with trip parameters. The work illustrates how an agentic architecture can support more grounded and practically useful travel planning than a generic conversational travel assistant.

Downloads

Published

2026-04-30

How to Cite

Sayyed, N., Rane, S., Yadav, B., Tiwari, S., & Sharma , S. (2026). TripMind: An Agentic AI-Based System for End-to-End Travel Planning. International Journal on Advanced Computer Theory and Engineering, 15(1), 34–44. https://doi.org/10.65521/ijacte.v15i1.2600

Issue

Section

Articles

Most read articles by the same author(s)

Similar Articles

1 2 3 4 5 6 7 8 9 10 > >> 

You may also start an advanced similarity search for this article.