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大模型这个坑,还有哪些可以发论文的点?
具身智能之心·2025-07-05 02:25

Core Insights - The article emphasizes the rapid development of large language models (LLMs) and multimodal models, focusing on enhancing model efficiency, expanding knowledge capabilities, and improving reasoning performance as key research areas in artificial intelligence [1][2]. Course Objectives - The course aims to systematically explore cutting-edge optimization methods for large models, addressing challenges in parameter-efficient computation, dynamic knowledge expansion, and complex reasoning [1][2]. Enrollment Details - The course will accept 6 to 8 participants per session [3]. Target Audience - The course is designed for master's and doctoral students in the field of large models, individuals seeking to enhance their resumes for graduate studies abroad, and professionals in artificial intelligence looking to deepen their understanding of algorithm theory and research skills [4]. Course Outcomes - Participants will gain insights into classic and cutting-edge papers, coding implementations, and methods for writing and submitting research papers, thereby developing a clearer understanding of the subject matter [3][4]. Enrollment Requirements - Basic requirements include familiarity with deep learning/machine learning, basic knowledge of large model algorithms, proficiency in Python, and experience with PyTorch [5]. Course Structure - The course spans 12 weeks of online group research, followed by 2 weeks of paper guidance, and includes a maintenance period of 10 weeks for paper development [10]. Learning Requirements - Participants are expected to engage actively in discussions, complete assignments on time, and maintain academic integrity throughout the course [12]. Course Outline - The curriculum covers various topics, including model pruning, quantization, dynamic knowledge expansion, and advanced reasoning paradigms, with a focus on practical applications and coding [16][18].