A Survey on Smart Analytics: Method, Tools, and Open Research Issues
Abstract
Smart analytic nowadays was very popular because today big data is booming. Back several years ago, people were fascinating with statictics which surveys or cencus become a gun for describing or forecasting some issues as of decision making or planning. By migrating to big data, smart analytic is very needed to filter which data is useful and producing some worthy information.
Downloads
References
Jindal, Anish et al. 2018. Consumption Aware Data Analytical Demand Respond Scheme for Peak Load Reduction in Smart Grid. Published in IEEE Transactions on Industrial Electronics November 2018
Malvar, Hendrique and David H Staelin. 1988. Optional Pre Postfilters for Multichannel Signal Processing. Published on IEEE Transactions on Acoustic, Speech, and Signal, Febr 1988
Vatrapu, Ravi et al. 2016. Social Set Analysis: A Set Theoretical Approach to Big Data Analytics. Published in IEEE Access
Barbara Kitchenham etc, Systemic Literature Review in Software Engineering – A Tertiary Study, Information and Software Technology, 2010. Available from: : www.elsevier.com/locate/infsof
Bengt Ahlgren,2016, Internet of Things for Smart Cities: Interoperability and Open Data. IEEE Internet Computing
J. Carroll, J Chen, C. Yuan, and B. Hanrahan. “In Search of Coproduction: Smart Services as Reciprocal Activities”. Computer, Vol 49 No.7, Jan 2016 pp 26-32
Michael Weyrich and Christof Ebert. 2016. Reference Architectures for the Internet of Things. IEEE Software. January/February 2016
Lankow, Jason, Josh Ritchie,and Ross Crooks. 2012. Infographics : The Power of Visual Storytelling
G. Lin and W. Tang, “Wearable sensor patches for psychological monitoring”, in NASA Tech Briefs : Engineering Solutions for Design and Manufacturing , 2000
R. Paradiso, G. Loriga , and Taccini, “A wearable health care system based on knitted integrated sendors”, IEEE Trans. Inf. Technol B Vol.9 pp 337-344, 2015
M. Pacelli, G. Loriga, N. Taccini, and R. Paradiso “Sensing fabrics for monitoring psychological and biomechanical variables: E textile solutions” in IEEE Engineering in Medicine and Biology Society , New York, USA, 2006
P.A. Shaltis, A.T Reisner, and H.H. Asada, “Cuffless blood pressure monitoring using hydrostatic pressure changes,” IEEE Trans. Biomed. Eng. Vol 55 No 6 pp 1775 – 1777 June 2008
M-Z. Poh, K.Kim, A. Goessling, N. Swenson, and P. Picard, “Cardiovascular monitoring using earphones and a mobile device”, IEEE Pervasive Comput, Vol 11 No. 4, pp 18-26. Oct-Dec 2012
C. Strohrmann, H. Harms, C. Kappeler-Setz, and G. Tröster, “Monitoring kinematic changes with fatigue in running using bodyworn sensors,” IEEE Trans. Inf. Technol. Biomed., vol. 16, no. 5, pp. 983–990, Sep. 2012
J. Dean and S. Ghemawat. MapReduce: simplified data processing on large clusters. Commun. ACM, 51(1):107–113, Jan. 2008
Acharjya, Debi Prasanna and Kauser Ahmed P. 2016. A Survey n Big Data Anaytic: Challenge, Open Research Issue and Tools in International Journal of Advanced Computer Science and Application February 2016
Patel,Aditya B, Manashvi Birla, Ushma Nair. 2012 Addressing Big Data Problem Using Hadoop and Map Reduce. In 2012 Nirma University International Conference on Engineering, Nuicone-2012, 06-08December, 2012
Alpaydin, Ethem. 2014. Introduction to Machine Learning3rd Edition. Massachussets Insitute of Technology: Massachussets
Witten, Ian H and Eibe Frank. 2005. Data Mining: Practical Machine Learning Tools and Techniques. Elsevier Inc: USA
Meng Xiangrui et al. 2016. Mlib: Machine Learning in Apache Spark. In Journal of Machine Learning Research 17 (2016) 1-7
https://www.edureka.co/blog/spark-architecture/
H, Li, G. Fox, and J,Qiu, Performance model for parallel matrix multiplication with dryad: Dataflow graph runtime, Second International Conference on Cloud and Green Computing, 2012 pp.675-683
Isard, Michael et al. 2007. Dryad: Distributed Data-Parallel Programs from Sequential Building Blocks. Published in EuroSys '07 Proceedings of the 2nd ACM SIGOPS/EuroSys European Conference on Computer Systems 2007
https://id.wikipedia.org/wiki/FIFO
M, Hausenblas et al. 2013. Apache Drill: Interactive Ad-Hoc Analysis at Scale. Journal Big Data
Krum, Randy. 2014. Cool Infographic: Effective Communication Data Visualization and Design. John Wiley & Sons, Inc: Canada
Khalil, Ashraf and Suha Glal. 2009. Step Up: A Step Couner Mobile Application to Promote Healthy Lifesyle
Nakamura, Jiro et al. 2003. Impact of Spread of Informations Technology on Lifestyle Changes. Proceeding of EcoDesign2003: Third International Symposium on Environmentally Conscious Design and Inverse Manufacturing Tokyo, Japan, December 8-11, 2003
Pavel, Dana et al. 2013.Lifestyle Stories: Correlating User Information through a Story-Inspired Paradigm.
https://www.dream.co.id/sport/bocah-penggembala-sapi-di-kenya-dapat-hadiah-dari-ozil-190313f.html
Doi, Miwako et al. 2012.Personal and Home Electronics and Our Changing Lifestyles. Invited paper proceeding IEEE vol 100, May 13th, 2012
Philippon, Thomas.2016. The Fintech Opportunity. Worpking paper series in National Bureau of Economic Research.
Cnijders, Chris. 2012. Big Data: Big Gaps of Knowledge in The Field of Internet Science. International Journal of Internet Science 2012, 7(1), 1-5
https://en.oxforddictionaries.com/definition/microprocess
Erl, Thomas. 2017. Service Oriented Architecture.
Ansari, Shahriar. 2011. The Affect of Sales Promotion on Customer Interest to Purchase in IKCO Automative Company. Published in Journal of Knowledge Management, Economics and Information Technology
Webster Collegiate Dictionary
Yusuf, A Muri. 2017.Metode Peneliian Kuantitatif, Kualitatif, dan Penelitian Gabungan. Gramedia: Jakarta
Creswell, John W. 2014. Research Design: Qualitative, Quantitative, and Mixed Method Approach
Tashakkori and Teddle. 2003. The Handbook of Mixed Methods In the Social and Behavior Sciences.
Peters, DH et al. 2013. Implementation Research: What it is and How to Do it. Published in BMJ 2013 Nov 20;347:f6753. doi: 10.1136/bmj.f6753.





