Technology and Trends to Handle Big Data: Survey

Author(s):  
Sunaina Sharma ◽  
Veenu Mangat
Keyword(s):  
Big Data ◽  
2018 ◽  
pp. 174-180
Author(s):  
Zewen WANG

Numerous studies show that scientific and reasonable physical exercise can promote human health. Reasonable exercise prescriptions based on an individual’s physical condition is important in improving one’s health. On this basis and through the investigation on the big data of emerging hightech photovoltaic enterprises, the development and design of a human health model and science in sports are developed based on ant colony optimization algorithm. Finally, the requirement analysis, design, specific application, and model algorithm testing of the physical fitness exercise prescription model can provide a scientific strategy for human health and scientific movement.


2021 ◽  
Vol 13 (2) ◽  
pp. 213-230
Author(s):  
Nurhayati Buslim ◽  
Rayi Pradono Iswara ◽  
Fajar Agustian

There are a lot of Mustahiq data in LAZ (Lembaga Amil Zakat) which is spread in many locations today. Each LAZ has Mustahiq data that is different in type from other LAZ. There are differences in Mustahiq data types so that data that is so large cannot be used together even though the purpose of the data is the same to determine Mustahiq data. And to find out whether the Mustahiq data is still up to date (renewable), of course it will be very difficult due to the types of data types that are not uniform or different, long time span, and the large amount of data. To give zakat to Mustahiq certainly requires speed of information. So, in giving zakat to Mustahiq, LAZ will find it difficult to monitor the progress of the Mustahiq. It is possible that a Mustahiq will change his condition to become a Muzaki. This is the reason for the researcher to take this theme in order to help the existing LAZ to make it easier to cluster Mustahiq data. Furthermore, the data already in the cluster can be used by LAZ managers to develop the organization. This can also be a reference for determining the zakat recipient cluster to those who are entitled later. The research is "Modeling using K-Means Algorithm and Big Data analysis in determine Mustahiq data ". We got data Mustahiq with random sample from online and offline survey. Online data survey with Google form and Offline Data survey we got from BAZNAS (National Amil Zakat Agency) in Indonesia and another zakat agency (LAZ) in Jakarta. We conducted by combining data to analyzed using Big Data and K-Means Algorithm. K-Means algorithm is an algorithm for cluster n objects based on attributes into k partitions according to criteria that will be determined from large and diverse Mustahiq data. This research focuses on modeling that applies K-Means Algorithms and Big Data Analysis. The first we made tools for grouping simulation test data. We do several experimental and simulation scenarios to find a model in mapping Mustahiq data to developed best model for processing the data. The results of this study are displayed in tabular and graphical form, namely the proposed Mustahiq data processing model at Zakat Agency (LAZ). The simulation result from a total of 1109 correspondents, 300 correspondents are included in the Mustahiq cluster and 809 correspondents are included in the Non-Mustahiq cluster and have an accuracy rate of 83.40%. That means accuracy of the system modeling able to determine data Mustahiq. Result filtering based on Gender is “Male” accuracy 83.93%, based on Age is ”30-39” accuracy 71,03%, based on Job is “PNS” accuracy 83.39%, based on Education is “S1” accuracy 83.79%. The advantaged of research expected to be able to determine quickly whether the person meets the criteria as a mustahik or Muzaki for LAZ (Amil Zakat Agency). The result of modeling is K-Means clustering algorithm application program can be used if UIN Syarif Hidayatullah Jakarta want to develop LAZ (Amil Zakat Agency) too.


2019 ◽  
Author(s):  
MYUNG-BAE PARK ◽  
Jumee Wang ◽  
Bernard E. Bulwer ◽  
Chhabi Ranabhat

It is new approach using big-data in public health area. I am sure that this approach will provide valuable lessons in suggesting a policy approach.


2017 ◽  
Vol 21 (1) ◽  
pp. 197-212 ◽  
Author(s):  
Artur Lugmayr ◽  
Björn Stockleben ◽  
Christoph Scheib ◽  
Mathew A. Mailaparampil

Purpose The purpose of this paper is to introduce and define Cognitive Big Data as a concept. Furthermore, it investigates what is really “new” in Big Data, as it seems to be a hyped-up concept that has emerged during recent years. The purpose is also to broaden the discussion around Big Data far beyond the common 4V (velocity, volume, veracity and variety) model. Design/methodology/approach The authors established an expert think tank to discuss the notion of Big Data, identify new characteristics and re-think what really is new in the idea of Big Data, by analyzing over 60 literature resources. They identified typical baseline scenarios (traffic, business processes, retail, health and social media) as a starting point from which they explored the notion of Big Data from different perspectives. Findings They concluded that the idea of Big Data is simply not new and recognized the need to re-think a new approach toward Big Data. The authors also introduced a five-Trait Framework for “Cognitive Big Data”, socio-technical system, data space, data richness, knowledge management (KM)/decision-making and visualization/sensory presentation. Research limitations/implications The viewpoint is centered on cognitive processes as KM process. Practical implications Data need to be made available in an understandable form for the right application context and in the right portion size that it can be turned into knowledge and eventually wisdom. The authors need to know about data that can be ignored, data that they are not aware of (dark data) and data that can be fully utilized for analysis (light data). In the foreground is the extension of human mental capabilities and data understandability. Social implications Cognitive Big Data implies a socio-technological knowledge system. Originality/value Introduction of cognitive Big Data as concept and framework.


2018 ◽  
Vol 17 (5) ◽  
pp. 639-646
Author(s):  
Dawn Iacobucci

This article considers three contemporary challenges faced by todays marketing researchers. These challenges involve big data, survey data, and publishing. With a marketers perennial optimism, each challenge is seen as an opportunity, to obtain better information than ever before.


Author(s):  
P.S.G. Aruna Sri ◽  
Anusha M
Keyword(s):  
Big Data ◽  

2019 ◽  
Author(s):  
MYUNG-BAE PARK ◽  
Jumee Wang ◽  
Bernard E. Bulwer ◽  
Chhabi Ranabhat

It is new approach using big-data in public health area. I am sure that this approach will provide valuable lessons in suggesting a policy approach.


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