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专业的切割效率 阿特拉斯·科普柯Rock Buggy和SpeedCut首秀中国
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《矿业装备》 2013年第2期103-,共1页
制造商:阿特拉斯·科普柯 市场背景:阿特拉斯·科普柯在中国市场推出Rock Buggy和SpeedCut两款设备,向中国的石材行业(DSI)引入了最新的技术.这两款设备是专为石材行业量身定制的,能明显提高石材切割效率. 小身材、大产能——... 制造商:阿特拉斯·科普柯 市场背景:阿特拉斯·科普柯在中国市场推出Rock Buggy和SpeedCut两款设备,向中国的石材行业(DSI)引入了最新的技术.这两款设备是专为石材行业量身定制的,能明显提高石材切割效率. 小身材、大产能——阿特拉斯 科普柯 Rock Buggy Rock Buggy是石材行业专用轮式液压钻机,可用于大理石、花岗岩和沙岩的开采.该钻机钻孔直,营运成本低,生产效率高.钻孔速度最高可达2 m/min,而能耗则只有6L/h. 展开更多
关键词 阿特拉斯·科普柯 SpeedCut 切割效率 Rock buggy 中华人民共和国
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Integrating Attention Mechanism with Code Structural Affinity and Execution Context Correlation for Automated Bug Repair
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作者 Jinfeng Ji Geunseok Yang 《Computers, Materials & Continua》 2026年第3期1708-1725,共18页
Automated Program Repair(APR)techniques have shown significant potential in mitigating the cost and complexity associated with debugging by automatically generating corrective patches for software defects.Despite cons... Automated Program Repair(APR)techniques have shown significant potential in mitigating the cost and complexity associated with debugging by automatically generating corrective patches for software defects.Despite considerable progress in APR methodologies,existing approaches frequently lack contextual awareness of runtime behaviors and structural intricacies inherent in buggy source code.In this paper,we propose a novel APR approach that integrates attention mechanisms within an autoencoder-based framework,explicitly utilizing structural code affinity and execution context correlation derived from stack trace analysis.Our approach begins with an innovative preprocessing pipeline,where code segments and stack traces are transformed into tokenized representations.Subsequently,the BM25 ranking algorithm is employed to quantitatively measure structural code affinity and execution context correlation,identifying syntactically and semantically analogous buggy code snippets and relevant runtime error contexts from extensive repositories.These extracted features are then encoded via an attention-enhanced autoencoder model,specifically designed to capture significant patterns and correlations essential for effective patch generation.To assess the efficacy and generalizability of our proposed method,we conducted rigorous experimental comparisons against DeepFix,a state-of-the-art APR system,using a substantial dataset comprising 53,478 studentdeveloped C programs.Experimental outcomes indicate that our model achieves a notable bug repair success rate of approximately 62.36%,representing a statistically significant performance improvement of over 6%compared to the baseline.Furthermore,a thorough K-fold cross-validation reinforced the consistency,robustness,and reliability of our method across diverse subsets of the dataset.Our findings present the critical advantage of integrating attentionbased learning with code structural and execution context features in APR tasks,leading to improved accuracy and practical applicability.Future work aims to extend the model’s applicability across different programming languages,systematically optimize hyperparameters,and explore alternative feature representation methods to further enhance debugging efficiency and effectiveness. 展开更多
关键词 Automated bug repair autoencoder algorithm buggy code analysis stack trace similarity machine learning for debugging
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以乐为业
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《汽车驾驶员》 2010年第11期48-49,共2页
这种车叫Buggy,也叫冲锋车,想不到年近六旬的老先生不仅酷爱驾驶它,还热衷于亲手制造它。
关键词 轿车 品牌 车型 buggy
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