An LLM-Powered Agent for Real-Time Analysis of the Vietnamese IT Job Market
September 26, 2025 Β· Declared Dead Β· π 2025 19th International Conference on Advanced Computing and Analytics (ACOMPA)
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Authors
Minh-Thuan Nguyen, Thien Vo-Thanh, Thai-Duy Dinh, Xuan-Quang Phan, Tan-Ha Mai, Lam-Son LΓͺ
arXiv ID
2511.14767
Category
cs.IR: Information Retrieval
Cross-listed
cs.AI,
cs.CY
Citations
0
Venue
2025 19th International Conference on Advanced Computing and Analytics (ACOMPA)
Last Checked
4 months ago
Abstract
Individuals entering Vietnam's dynamic Information Technology (IT) job market face a critical gap in reliable career guidance. Existing market reports are often outdated, while the manual analysis of thousands of job postings is impractical for most. To address this challenge, we present the AI Job Market Consultant, a novel conversational agent that delivers deep, data-driven insights directly from the labor market in real-time. The foundation of our system is a custom-built dataset created via an automated pipeline that crawls job portals using Playwright and leverages the Large Language Model (LLM) to intelligently structure unstructured posting data. The core of our system is a tool-augmented AI agent, based on the ReAct agentic framework, which enables the ability of autonomously reasoning, planning, and executing actions through a specialized toolbox for SQL queries, semantic search, and data visualization. Our prototype successfully collected and analyzed 3,745 job postings, demonstrating its ability to answer complex, multi-step queries, generate on-demand visualizations, and provide personalized career advice grounded in real-world data. This work introduces a new paradigm for labor market analysis, showcasing how specialized agentic AI systems can democratize access to timely, trustworthy career intelligence for the next generation of professionals.
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