Hacklink

marsbahis

Hacklink

Hacklink

Marsbahis

Marsbahis

BetKare Güncel Giriş

Marsbahis

Marsbahis

Hacklink

casino kurulum

Hacklink

Hacklink

printable calendar

Hacklink

NETTOYAGE PROFESSIONNEL EN SAVOIE & HAUTE-SAVOIE

Hacklink

pusulabet

Hacklink

Eros Maç Tv

hacklink panel

hacklink

Hacklink

Hacklink

ataşehir escort

Hacklink

Hacklink

Hacklink

Marsbahis

Rank Math Pro Nulled

WP Rocket Nulled

Yoast Seo Premium Nulled

Hacklink

grandpashabet

Hacklink

sekabet

Hacklink

Hacklink

Hacklink

bahiscom

Hacklink

Marsbahis

Hacklink

Hacklink Panel

Hacklink

Hacklink

Hacklink

Nulled WordPress Plugins and Themes

olaycasino giriş

Hacklink

hacklink

Taksimbet

Marsbahis

Hacklink

Marsbahis

Marsbahis

Hacklink

Hacklink

Bahsine

Tipobet

Hacklink

Betmarlo

Marsbahis

บาคาร่า

Hacklink

Hacklink

Hacklink

Hacklink

duplicator pro nulled

elementor pro nulled

litespeed cache nulled

rank math pro nulled

wp all import pro nulled

wp rocket nulled

wpml multilingual nulled

yoast seo premium nulled

Nulled WordPress Themes Plugins

Buy Hacklink

Hacklink

Hacklink

Hacklink

Hacklink

Hacklink

Hacklink

Bahiscasino

Hacklink

Hacklink

Hacklink

Hacklink

หวยออนไลน์

Hacklink

Marsbahis

Hacklink

Hacklink

Marsbahis

Hacklink

Hacklink satın al

Hacklink

Hacklink

marsbahis

Hacklink

Hacklink

Marsbahis

Marsbahis

BetKare Güncel Giriş

Marsbahis

Marsbahis

Hacklink

casino kurulum

Hacklink

Hacklink

printable calendar

Hacklink

NETTOYAGE PROFESSIONNEL EN SAVOIE & HAUTE-SAVOIE

Hacklink

pusulabet

Hacklink

Eros Maç Tv

hacklink panel

hacklink

Hacklink

Hacklink

ataşehir escort

Hacklink

Hacklink

Hacklink

Marsbahis

Rank Math Pro Nulled

WP Rocket Nulled

Yoast Seo Premium Nulled

Hacklink

grandpashabet

Hacklink

sekabet

Hacklink

Hacklink

Hacklink

bahiscom

Hacklink

Marsbahis

Hacklink

Hacklink Panel

Hacklink

Hacklink

Hacklink

Nulled WordPress Plugins and Themes

olaycasino giriş

Hacklink

hacklink

Taksimbet

Marsbahis

Hacklink

Marsbahis

Marsbahis

Hacklink

Hacklink

Bahsine

Tipobet

Hacklink

Betmarlo

Marsbahis

บาคาร่า

Hacklink

Hacklink

Hacklink

Hacklink

duplicator pro nulled

elementor pro nulled

litespeed cache nulled

rank math pro nulled

wp all import pro nulled

wp rocket nulled

wpml multilingual nulled

yoast seo premium nulled

Nulled WordPress Themes Plugins

Buy Hacklink

Hacklink

Hacklink

Hacklink

Hacklink

Hacklink

Hacklink

Bahiscasino

Hacklink

Hacklink

Hacklink

Hacklink

หวยออนไลน์

Hacklink

Marsbahis

Hacklink

Hacklink

Marsbahis

Hacklink

Hacklink satın al

Hacklink

bets10

Betpas

casibom güncel giriş

casibom giriş

holiganbet giriş

casibom

Betorder giriş

Kartal Escort

Betpas

Hititbet

casibom güncel

pariteler

casinoroyal

betpuan

casibom güncel giriş

grandpashabet giriş

matbet

grandpashabet

bahsegel

bahiscom

Betpas

meritking

tipobet

grandpashabet

pusulabet

bahiscasino

dizipal

celtabet

matbet giriş

grandpashabet giriş

matadorbet

onwin

sahabet

meritking

jojobet

holiganbet

meritking

betsmove giriş

betsmove güncel

marsbahis

celtabet

Betpas

betmarino

maksibet

betovis

nitrobahis

vaycasino

Betorder

sahabet

casibom güncel


Many real-world planning tasks involve both harder “quantitative” constraints (e.g., budgets or scheduling requirements) and softer “qualitative” objectives (e.g., user preferences expressed in natural language). Consider someone planning a week-long vacation. Typically, this planning would be subject to various clearly quantifiable constraints, such as budget, travel logistics, and visiting attractions only when they are open, in addition to a number of constraints based on personal interests and preferences that aren’t easily quantifiable.

Large language models (LLMs) are trained on massive datasets and have internalized an impressive amount of world knowledge, often including an understanding of typical human preferences. As such, they are generally good at taking into account the not-so-quantifiable parts of trip planning, such as the ideal time to visit a scenic view or whether a restaurant is kid-friendly. However, they are less reliable at handling quantitative logistical constraints, which may require detailed and up-to-date real-world information (e.g., bus fares, train schedules, etc.) or complex interacting requirements (e.g., minimizing travel across multiple days). As a result, LLM-generated plans can at times include impractical elements, such as visiting a museum that would be closed by the time you can travel there.

We recently introduced AI trip ideas in Search, a feature that suggests day-by-day itineraries in response to trip-planning queries. In this blog, we describe some of the work that went into overcoming one of the key challenges in launching this feature: ensuring the produced itineraries are practical and feasible. Our solution employs a hybrid system that uses an LLM to suggest an initial plan combined with an algorithm that jointly optimizes for similarity to the LLM plan and real-world factors, such as travel time and opening hours. This approach integrates the LLM’s ability to handle soft requirements with the algorithmic precision needed to meet hard logistical constraints.

Share.
Leave A Reply

Exit mobile version