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PACELC: Enchantment multi-dimension TensorFlow for value creation through Big Data | IEEE Conference Publication | IEEE Xplore

PACELC: Enchantment multi-dimension TensorFlow for value creation through Big Data


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 a...Show More

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.
Date of Conference: 07-09 October 2020
Date Added to IEEE Xplore: 10 November 2020
ISBN Information:
Conference Location: Palladam, India
References is not available for this document.

I. Introduction

Big data on decisions and policies have attracted attention over the past decade. Manufacturers, producers, market analysts and data memory in government The surge of information in recent decades has left the ear behind the law[1], and the vast amount of data management is increasing, however, for this large amount of data the analysis. There is a high potential and It contains a lot of useful information Scientific Discovery Helps identify big data problems A large data problem was found to provide the public with effective access to economic activities such as sectors and sectors

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References

References is not available for this document.