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BAT三巨头混战AI高考报志愿,争最强AI升学搭子,张雪峰要失业了?
3 6 Ke· 2025-06-10 10:51
Core Viewpoint - The 2025 National College Entrance Examination (Gaokao) has concluded, with AI technology playing a significant role in ensuring fairness and assisting students in the application process. Major platforms like Quark, Baidu, and Tencent have launched AI tools to aid students and parents in making informed decisions during the college application process [1][2]. Group 1: AI Tools for College Application - Quark, Baidu, and Tencent have developed AI tools specifically for the college application process, each with unique features and functionalities [2][3]. - Quark focuses on "deep search" capabilities, allowing students to simulate their application process based on their predicted scores and providing tailored recommendations for colleges and majors [3][6]. - Baidu's AI tool integrates multiple models to provide comprehensive recommendations, including employment rates and salary comparisons for different majors, making it the only platform to combine search popularity and salary data [13][16]. - Tencent's AI Gaokao Assistant offers a conversational interface, guiding students through the entire application process and providing personalized recommendations based on user input [21][22]. Group 2: Comparative Analysis of Platforms - Quark's AI tool is noted for its structured logic and ease of use, but it may lack in understanding complex user intentions [25][30]. - Baidu's platform supports multi-model comparisons but has been criticized for its coordination and integration of functionalities [30]. - Tencent's AI Gaokao Assistant stands out for its ability to combine traditional web search with AI-generated responses, enhancing user experience and providing a smooth application process [21][22]. Group 3: Data Sources and Limitations - All three platforms synchronize their data with official educational resources, covering essential metrics such as admission scores and historical data [2][3]. - However, there are gaps in "soft indicators" like employment rates and further education paths due to limited data disclosure from some universities, necessitating users to conduct additional research [3][30].