Call for Paper - August 2022 Edition
IJCA solicits original research papers for the August 2022 Edition. Last date of manuscript submission is July 20, 2022. Read More

Android based Student Progress Analysis System using Adaptive Data Visualization

IJCA Proceedings on National Conference on Contemporary Computing
© 2017 by IJCA Journal
NCCC 2016 - Number 3
Year of Publication: 2017
Samik Bhattacharjee
Kirti Panwar

Samik Bhattacharjee and Kirti Panwar. Article: Android based Student Progress Analysis System using Adaptive Data Visualization. IJCA Proceedings on National Conference on Contemporary Computing NCCC 2016(3):1-7, April 2017. Full text available. BibTeX

	author = {Samik Bhattacharjee and Kirti Panwar},
	title = {Article: Android based Student Progress Analysis System using Adaptive Data Visualization},
	journal = {IJCA Proceedings on National Conference on Contemporary Computing},
	year = {2017},
	volume = {NCCC 2016},
	number = {3},
	pages = {1-7},
	month = {April},
	note = {Full text available}


In last decade Indian Education System got very advanced. Technological growth is the primary reason behind it. Although its always difficult to have the strong communication between Teachers and Parents. The proposed system is targeted to provide a very effective communication between Teachers and Parents while they are on move. This system is implemented as an application for Android Operating System. This application is very useful for Schools to provide interaction between two import stakeholders. The core idea of this project is to implement Android based System for management of academics and details of both Teacher and Students for advancement of Institution and educational system. Features implemented in our System are notices, academic details and reminders of examination, performance record, and intimation to the parents using Android applications. This system helps teacher keep record of students for their progress assessment. This system gives a prior intimation to student as soon as their attendance goes below the specified attendance threshold in the form of notice.


  • A. Srinivas, Kalyan Srinivas, A. V. R. K. Harsha Vardhan Varma. 2013. A Study On Cloud Computing Data Mining. International Journal of Innovative Research in Computer and Communication Engineering. Volume 1,Issue 5, pp 1-6
  • David C. Chou. 2015. Cloud computing risk and audit issues. Computer Standards & Interfaces. Volume 42. pp 137-142
  • Steve Jones. 2015. Cloud computing procurement and implementation: Lessons learnt from a United Kingdom case study. International Journal of Information Management. Volume 35, Issue 6. pp 712-716
  • Shutchapol Chopvitayakun. 2015. Android Application to Enhance Performance of Internship Program Implementing Cloud Computing Platform and Infrastructure. Procedia - Social and Behavioral Sciences. Volume 197. 2530-2538
  • M. Amoretti, A. Grazioli, F. Zanichelli. 2015. A modeling and simulation framework for mobile cloud computing. Simulation Modelling Practice and Theory.
  • Mazhar Ali, Samee U. Khan, Athanasios V. Vasilakos. 2015. Security in cloud computing: Opportunities and challenges. Information Sciences. Volume 305. 357-383.
  • M. Amoretti, A. Grazioli, F. Zanichelli. 2015. A modeling and simulation framework for mobile cloud Computing. Simulation Modelling Practice and Theory
  • Babak Akhgar, Ashkan Tafaghodi and Konstantinos Domdouzis. 2015. Chapter 15 - Cloud Computing, Sustainability, and Risk: Case Study: A Quantitative Fuzzy Optimization Model for Determining Cloud Inexperienced Risks. Appetite, In Green Information Technology, edited by Mohammad DastbazColin PattinsonBabak Akhgar, Morgan Kaufmann, Boston. 295-311
  • Mohamed Medhat Gaber, Shonali Krishnaswamy, Brett Gillick, Hasnain AlTaiar, Nicholas Nicoloudis, Jonathan Liono, Arkady Zaslavsky. 2013. Interactive self-adaptive clutter-aware visualisation for mobile data mining, Journal of Computer and System Sciences. Volume 79, Issue 3. 369-382
  • Jae-wook Ahn, Peter Brusilovsky. 2013. Adaptive visualization for exploratory information retrieval. Information Processing & Management. Volume 49, Issue 5. 1139-1164
  • Hannah Kim, Jaegul Choo, Chandan K. Reddy, Haesun Park, Doubly supervised embedding based on class labels and intrinsic clusters for high-dimensional data visualization, Neurocomputing, Volume 150, Part B, 20 February 2015, Pages 570-582
  • Konstantin Ryabinin, Svetlana Chuprina. 2015. Development of ontology-based multiplatform adaptive scientific visualization system. Journal of Computational Science. Volume 10. 370-381
  • Jia Chaolong, Wang Hanning, Wei Lili. 2016. Research on Visualization of Multi-Dimensional Real-Time Traffic Data Stream Based on Cloud Computing. Procedia Engineering. Volume 137. 709-718
  • Sascha Fahl, Marian Harbach, Lars Baumgärtner, Bernd Freisleben. 2012. Why Eve and Mallory Love Android: An Analysis of Android SSL (In)Security. CCS'12 ACM. 50-61
  • Android (operating system) http://en. wikipedia. org/wiki/Android_(operating_system)
  • Android Overview http://www. openhandsetalliance. com/android_overview. html
  • Android http://www. android. com
  • International Journal of Trend in Research and Development, Volume 2(5) http://www. 4shared. com/office/0RX_5-iE/file. html
  • Stack Overflow http://stackoverflow. com