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杨晓秋 高敏行 周凤华 刘学勇 【摘要】目的探讨导入(bridge-in)、目标(objective)、前测(pre-assessment)、参与式学习(participatory learning)、后测(post-assessment)、总结(summary)(BOPPPS)结合雨课堂在语言治疗学课程中的教学效果。方法选取中国医科大学...
Reading Comprehension On RACE, the most accurate results so far are produced on models based on Mistral 7B and LLaMA2. In SQuADv2, there are two settings: answerable (HasAns) and unanswerable (NoAns) questions. mGPT is the best model so far on the task of identifying una...
reading-books-using-epics really-painless-modular-development realworld-app-action recursive-angular-directive reduce-reigns-supreme redux-and-rethinkdb refactor-cypress-modal-tests refactor-network-tests refactor-using-each refactoring-or refactoring-to-compose releasing-for-old-node remove-boile...
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reading-books-using-epics really-painless-modular-development realworld-app-action recursive-angular-directive reduce-reigns-supreme redux-and-rethinkdb refactor-cypress-modal-tests refactor-network-tests refactor-using-each refactoring-or refactoring-to-compose releasing-for-old-node remove-...
interns-2023.md intro-graphml.md introducing-csearch.md introducing-doi.md introducing-private-hub.md introduction-to-ggml.md japanese-stable-diffusion.md jat.md keras-llama-32.md keras-nlp-integration.md kv-cache-quantization.md langchain.md large-language-models.md lcm_lora....