Parallel processing of big data using Hadoop MapReduce Kh. Sh. Kuzibaev T. K. Urazmatov
Download 230,49 Kb.
|
Maqola ready english
Conclusion: in the process of writing this article on the topic of processing large-scale data using parallel computing, we did the following:
We analyzed the literature on large-volume data and their processing We have installed and configured Apache Hadoop on our computer We found a large amount of information and transferred it to the format we needed We saved large volumes of data in distributed file systems We processed a large amount of data in a traditional method based on Java Core and got the result We processed large volumes of data using parallel computing and obtained results We drew conclusions based on the comparative comparison of the obtained results. Based on the results of this experiment, the following can be concluded: A large amount of data can be processed in a traditional way based on Java Core, but it requires a lot of calculations and a lot of time; Large volumes of data can be processed in parallel using Hadoop, which is very efficient and these calculations take less time; The same task can be obtained in the same way by traditional processing based on Java Core and parallel processing using Hadoop, but there is a big difference in computing time; The total time spent for parallel processing using Hadoop is 6 404 ms; The time spent for processing in the traditional method based on Java Core is 389 781 ms; In terms of computation time, we can see that Hadoop-based parallel computing is about 61 times faster than serial computing. References: 1. Onay, Ceylan; Öztürk, Elif "A review of credit scoring research in the age of Big Data". Journal of Financial Regulation and Compliance. . 2018 – C.382–405. 2. Muhammad Habib ur Rehman, Chee Sun Liew, Assad Abbas Prem Prakash Jayaraman, Teh Ying Wah, Samee U. Khan. Big Data Reduction Methods: A Survey. Data Sci. Eng. (2016) 3. "Measuring the Business Value of Big Data | IBM Big Data & Analytics Hub". Www.ibmbigdatahub.com. 2021. 4. . Kitchin, Rob; McArdle, Gavin. "What makes Big Data, Big Data? Exploring the ontoёзувical characteristics of 26 datasets".2016 Big Data & Society. 3 (1): 5. Алексеева И.Ю. Искусственный интеллект и рефлексия над знаниями. // ―Философия науки и техники‖: журнал 1991 №9, с. 44-53. 6. Urazmatov, T.Q.,Nurmetova, B.B.,Kuzibayev, X.S. Analysis of big data processing technologies. IOP Conference Series: Materials Science and Engineering, 2020, 862(4), 042006 7. Urazmatov, T.Q.,Sh Kuzibayev, X. MapReduce and Apache spark: Technology analysis, advantages and disadvantages Journal of Physics: Conference Seriesthis link is disabled, 2022, 2373(5), 052008 8. Ilhombekovich, S.B.,Kuzibayev K.S.,Xakimovna, A.G. Calculation of Synaptic Weights in Neuroexpert Systems International Conference on Information Science and Communications Technologies: Applications, Trends and Opportunities, ICISCT 2021, 2021 Download 230,49 Kb. Do'stlaringiz bilan baham: |
Ma'lumotlar bazasi mualliflik huquqi bilan himoyalangan ©fayllar.org 2025
ma'muriyatiga murojaat qiling
ma'muriyatiga murojaat qiling