AIBase
Home
AI NEWS
AI Tools
AI Models
MCP
AI Services
AI Compute
AI Tutorial
EN

AI News

View More

KRL+F Knowledge-Augmented Document Search Task Proposed by KAIST and Samsung

KTRL+F is a knowledge-augmented document search task jointly proposed by KAIST and Samsung, which identifies semantic targets in documents through a single natural query in real-time. Unlike traditional machine reading comprehension, KTRL+F incorporates external knowledge embeddings into phrase embeddings, balancing speed and performance. The model achieves accurate and comprehensive searching and retrieval within documents by enhancing contextual knowledge, aiming to improve information access efficiency. The project focuses on utilizing external knowledge to identify semantic targets in documents through natural queries in real-time, providing an enhanced search experience.

7k 01-16
KRL+F Knowledge-Augmented Document Search Task Proposed by KAIST and Samsung
AIBase
Empowering the future, your artificial intelligence solution think tank
English简体中文繁體中文にほんご
FirendLinks:
AI Newsletters AI ToolsMCP ServersAI NewsAIBaseLLM LeaderboardAI Ranking
© 2026AIBase
Business CooperationSite Map