• editor.aipublications@gmail.com
  • Track Your Paper
  • Contact Us
  • ISSN: 2456-7817

International Journal Of Engineering, Business And Management(IJEBM)

The Comparison of Ticket Performance of Existing and Proposed TPRCA System

Hidayatulla Kamaruddin Pirjade , Dr. Sagar Fegade


International Journal of Engineering, Business And Management(IJEBM), Vol-7,Issue-6, November - December 2023, Pages 1-5 ,

Download | Downloads : 2 | Total View : 220

Article Info: Received: 17 Sep 2023; Received in revised form: 15 Oct 2023; Accepted: 24 Oct 2023; Available online: 02 Nov 2023

Share

The study has been tentatively checked and contrasted and the current methodology, so as to be executed effectively and tried in the research works to close, its infrastructure management and services offered by it have gotten progressively intricate. Study of the comparison of ticket performance of existing and proposed TPRCA system the domain driven data mining can be reached out in wide decent variety of stages, working frameworks, and different its applications. The deliverable example mining for DDDM idea is additionally appropriate any place the it related services framework; for example, start to finish business measures across web workers, application workers, ERP applications, heritage applications

Ticket, TPRCA, It Infrastructure, Applications, Services

[1] bayamlıoğlu, Emre & Leenes, Ronald. (2017). Data-Driven Decision-Making and the 'Rule of Law' Data-Driven Decision-Making and The 'Rule of Law'.
[2] Rahman, Fauziah & Kassim, Rahimah & Baharum, Zirawani & Noor, Helmi & Haris, Norhaidah. (2019). Data Cleaning in Knowledge Discovery Database-Data Mining (KDD-DM).
[3] Zimmermann, Olaf. (2019). Domain-Driven Service Identification and Design with Microservice API Patterns.
[4] Huber, Steffen & Wiemer, Hajo & Schneider, Dorothea & Ihlenfeldt, Steffen. (2018). DMME: Data Mining Methodology for Engineering Applications-A Holistic Extension to the CRISP-DM Model.
[5] Hippchen, Benjamin & Schneider, Michael & Landerer, Iris & Giessler, Pascal & Abeck, Sebastian. (2019). Methodology for Splitting Business Capabilities into a Microservice Architecture: Design and Maintenance Using a Domain-Driven Approach
[6] Hussain, Sadiq. (2017). Survey on Current Trends and Techniques of Data Mining Research. London Journal of Research in Computer Science and Technology.
[7] Fallon, Liam & Keeney, John & van der Meer, Sven. (2017). Distributed Management Information Models. 10.23919/INM.2017.7987306.
[8] Zhao, X., C. Wang, Z. Yan and Y. Zhang (2016) Yuan Online News Emotion Prediction with Bidirectional LSTM. Web-Age Information Management, 9659, Lecture Notes in Computer Science, 238-250.
[9] Agaoglu, M. (2016) Predicting instructor performance using data mining techniques in higher education. IEEE Access, 4, 2379–2387. doi:10.1109/access.2016.2568756.
[10] Guerzoni, Riccardo & Vaishnavi, et. al (2016). Analysis of end-to-end multi-domain management and orchestration frameworks for software defined infrastructures: An architectural survey. Transactions on Emerging Telecommunications Technologies. 10.1002/ett.3103.
[11] Maksood, Fathimath & Achuthan, Geetha. (2016). Analysis of Data Mining Techniques and its Applications. International Journal of Computer Applications. 140. 6-14. 10.5120/ijca2016909249.
[12] Hammarström, Pär & Herzog, Erik. (2016). Experience from integrating Domain Driven Software System Design into a Systems Engineering Organization. INCOSE International Symposium. 26. 1192-1203. 10.1002/j.2334-5837.2016.00220.x.
[13] Le, Duc & Dang, Duc-Hanh & Nguyen, Viet Ha. (2016). Domain-driven design patterns: A metadata-based approach. 247-252. 10.1109/RIVF.2016.7800302.
[14] Mani, Neel & Helfert, Markus & Pahl, Claus. (2016). Business Process Model Customisation using Domain-driven Controlled Variability Management and Rule Generation. International Journal of Advances in Software. 9. 179 - 190.
[15] Melendez, Karin & Dávila, Abraham & Pessoa, Marcelo. (2015). Information Technology Services Management Models Applied to Medium and Small Organizations: A Systematic Literature Review. Computer Standards & Interfaces. 47. 10.1016/j.csi.2015.10.001.