Analysis of Big Data
with Neural Network
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ranges in processing the data of speech recognition, visual object classification, information
retrieval and natural language data. Deep neural network is the greatest
tool recognized for
processing big data [4] [5].
Big data along with neural networks which build up with two portions called training
phase and operational phase. Training phase is obtained for specific task which makes use of
neural networks which demands in storing large amount of memory to
store the data and to
compute the results which demands large amount of time consumption as well which leads to
large scale of neural networks [6].
The performance of neural networks is been classified in the form of accuracy and the
performance id predicted according to the accuracy levels of the data along with the increase
in the range of neural network [7]. In order to proceeding huge assortment of data along with
large volume data which involves neural networks and big
data analytics we need more
amount of computational power along with memory consumption as primary impact to
process and evaluate the data which should emerge less cost as well[8].
There exists a survey which explore the computational power of GPU’s and for
demonstrating an effective GPU’s for training phase which comes
with the concept of big
data analytics and large scale neural networks with DNN’s along with recurrent neural
network[9][10].
Recurrent neural networks plays vital role for storing the information and capturing long
range dependencies between the input data and it is a peculiar sample of neural network with
which enables recurrent connection for RNN. However there
exists large amount of
computational complexities and difficulties which exists in training the data[11].
Understanding recurrent neural networks in terms of internal dynamics which as receive
more and more attention the world of big data and neural networks. Most of the research has
been proved in the concept of recurrent neural networks which provides awareness in terms of
visualization properties which inherit internal state properties of RNN’s[12].
With this approach we come across two varieties of sequential
networks which includes
simple recurrent neural networks (SRR’s) for more efficient extension of GPU’s to gated
recurrent units(GRU’s) which provide a huge research in recurrent
neural networks along
with the computational properties to manage the data in a very effective manner[13][14].
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