TinyML Based Edge Intelligent English Classroom Quality Assessment Scheme

IF 0.5 Q4 TELECOMMUNICATIONS
Shuang Jiang
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引用次数: 0

Abstract

With the escalating demand for intelligent educational evaluation driven by the advancement of artificial intelligence and edge computing, traditional English classroom quality assessment methods, characterized by subjectivity, inefficiency, and lack of real-time feedback, struggle to meet modern educational needs. Moreover, cloud-based AI solutions pose risks to student data privacy and suffer from high latency. TinyML, a lightweight machine learning paradigm, is inherently compatible with edge intelligence due to its ability to run efficiently on resource-constrained edge devices and perform local inference, thereby reducing latency and safeguarding data privacy. This paper presents an edge-intelligently assisted English classroom quality evaluation scheme based on the TinyML model, which utilizes edge computing devices to analyze classroom interaction data in real time, improving the objectivity and timeliness of teaching quality assessment. The scheme employs lightweight deep learning models for various analyses and conducts localized data processing to avoid cloud-related issues. Experimental results demonstrate its superiority over traditional cloud AI schemes in accuracy, real-time performance, and resource utilization, offering a viable approach for intelligent education evaluation.

基于TinyML的边缘智能英语课堂质量评价方案
随着人工智能和边缘计算技术的进步,对智能化教育评价的需求不断提升,传统的英语课堂质量评价方法主观性强、效率低下、缺乏实时反馈等特点已经难以满足现代教育的需求。此外,基于云的人工智能解决方案对学生的数据隐私构成风险,并且存在高延迟。TinyML是一种轻量级机器学习范式,由于能够在资源受限的边缘设备上高效运行并执行本地推理,从而减少延迟并保护数据隐私,因此与边缘智能天生兼容。本文提出了一种基于TinyML模型的边缘智能辅助英语课堂质量评价方案,利用边缘计算设备实时分析课堂互动数据,提高教学质量评价的客观性和及时性。该方案采用轻量级深度学习模型进行各种分析,并进行本地化数据处理,避免与云相关的问题。实验结果表明,该方法在准确性、实时性和资源利用率方面优于传统的云AI方案,为智能教育评估提供了一种可行的方法。
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