{"title":"PACELC:赋能多维TensorFlow,通过大数据创造价值","authors":"A. Yasmin, S. Kamalakkannan","doi":"10.1109/I-SMAC49090.2020.9243592","DOIUrl":null,"url":null,"abstract":"New online mode learns more about different kinetic models. Frequency algorithm reduces the loss function, which directly compensates for the error between the required and the actual acceleration. It allows the use of green acceleration principles such as speed accelerators and TensorFlow as a helper function of the robot mode. The use of direct loss eliminates the problem of learning outside the scope of indirect loss programs, usually in their current state. The power of re-learning creates a trend online tip according to standard non-linear parameters updating and updating online can correct frequency varied operating error during big data real-world generation. JEDEC reduced the machine learning sequence by a combined multi-dimension robust management robust study is planned for future tasks. This paper describes the operation and control of the controller for analytical, there is a clear link between the size of the compressor, the vibration level and the lens pool, learning new machine learning tools. In particular, JEDEC(Joint Electron Device Engineering Council) would like to use relational PACELC(Partition exists for Availability/consistency Else Latency/consistency) theoretical analysis to obtain the same summary and intensity The results of frequency case will also focus on increasing demand Important task balance, especially Restore model other types of contractions, as well as the connection between this reduced style adapter control and the learned control style multi-dimensions in sushisen algorithm using reduces these updates Deep Lanning Networks. Therefore, BDA data Partitioning helps to reduce the complexity of the calculation in the learning process and classification of data storage.","PeriodicalId":432766,"journal":{"name":"2020 Fourth International Conference on I-SMAC (IoT in Social, Mobile, Analytics and Cloud) (I-SMAC)","volume":"57 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2020-10-07","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"PACELC: Enchantment multi-dimension TensorFlow for value creation through Big Data\",\"authors\":\"A. Yasmin, S. Kamalakkannan\",\"doi\":\"10.1109/I-SMAC49090.2020.9243592\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"New online mode learns more about different kinetic models. Frequency algorithm reduces the loss function, which directly compensates for the error between the required and the actual acceleration. It allows the use of green acceleration principles such as speed accelerators and TensorFlow as a helper function of the robot mode. The use of direct loss eliminates the problem of learning outside the scope of indirect loss programs, usually in their current state. The power of re-learning creates a trend online tip according to standard non-linear parameters updating and updating online can correct frequency varied operating error during big data real-world generation. JEDEC reduced the machine learning sequence by a combined multi-dimension robust management robust study is planned for future tasks. This paper describes the operation and control of the controller for analytical, there is a clear link between the size of the compressor, the vibration level and the lens pool, learning new machine learning tools. In particular, JEDEC(Joint Electron Device Engineering Council) would like to use relational PACELC(Partition exists for Availability/consistency Else Latency/consistency) theoretical analysis to obtain the same summary and intensity The results of frequency case will also focus on increasing demand Important task balance, especially Restore model other types of contractions, as well as the connection between this reduced style adapter control and the learned control style multi-dimensions in sushisen algorithm using reduces these updates Deep Lanning Networks. 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引用次数: 0
摘要
新的在线模式学习了更多不同的动力学模型。频率算法减小了损失函数,直接补偿了所需加速度与实际加速度之间的误差。它允许使用绿色加速原理,如速度加速器和TensorFlow作为机器人模式的辅助功能。直接损失的使用消除了在间接损失程序范围之外的学习问题,通常在它们的当前状态下。再学习的力量根据标准的非线性参数更新产生趋势在线提示,在线更新可以纠正大数据现实生成过程中的频变操作误差。JEDEC通过组合多维鲁棒管理减少了机器学习序列,并计划对未来的任务进行鲁棒研究。本文介绍了控制器的操作和控制进行分析,压缩机的大小、振动水平和镜头池之间有明确的联系,学习新的机器学习工具。特别是JEDEC(联合电子器件工程委员会)希望利用关系PACELC(Partition exists for Availability/consistency Else Latency/consistency)理论分析得到相同的总结和强度,频率情况下的结果也将重点放在增加需求的重要任务平衡上,特别是Restore模型其他类型的收缩。以及在sushisen算法中使用减少这些更新的深度学习网络中,这种简化风格适配器控制与学习风格多维度之间的联系。因此,BDA数据分区有助于降低学习过程中计算和数据存储分类的复杂性。
PACELC: Enchantment multi-dimension TensorFlow for value creation through Big Data
New online mode learns more about different kinetic models. Frequency algorithm reduces the loss function, which directly compensates for the error between the required and the actual acceleration. It allows the use of green acceleration principles such as speed accelerators and TensorFlow as a helper function of the robot mode. The use of direct loss eliminates the problem of learning outside the scope of indirect loss programs, usually in their current state. The power of re-learning creates a trend online tip according to standard non-linear parameters updating and updating online can correct frequency varied operating error during big data real-world generation. JEDEC reduced the machine learning sequence by a combined multi-dimension robust management robust study is planned for future tasks. This paper describes the operation and control of the controller for analytical, there is a clear link between the size of the compressor, the vibration level and the lens pool, learning new machine learning tools. In particular, JEDEC(Joint Electron Device Engineering Council) would like to use relational PACELC(Partition exists for Availability/consistency Else Latency/consistency) theoretical analysis to obtain the same summary and intensity The results of frequency case will also focus on increasing demand Important task balance, especially Restore model other types of contractions, as well as the connection between this reduced style adapter control and the learned control style multi-dimensions in sushisen algorithm using reduces these updates Deep Lanning Networks. Therefore, BDA data Partitioning helps to reduce the complexity of the calculation in the learning process and classification of data storage.