A Frameworks for Mobile Application Development

Authors

  • Naresh Kumar, Popindra Kumar Department of Computer Science & Engineering, Phonics University, Roorkee, U.K., India Author
  • Dudigam Ramya Department of Computer Science and Engineering, Koneru Lakshmaiah Education Foundation, Guntur, A.P., India Author

DOI:

https://doi.org/10.15662/IJRAI.2023.0606010

Keywords:

Adaptive frameworks, cross-platform development, mobile applications, scalability, performance optimization, shared codebase, device-specific adaptation, iOS, Android, emerging technologies, artificial intelligence, machine learning, native functionalities, mobile environments, development cost, user experience

Abstract

The rapid evolution of mobile technology has led to the demand for scalable, cost-effective solutions that support cross-platform mobile application development. Adaptive frameworks have emerged as a key enabler of this trend, offering developers the ability to create applications that run seamlessly across multiple platforms while maintaining optimal performance and user experience. This paper explores the concept of adaptive frameworks, focusing on their architecture, design principles, and the advantages they offer for mobile application development. Adaptive frameworks enable the dynamic adaptation of an application’s functionality, layout, and performance based on device-specific constraints and user preferences. By leveraging shared codebases, these frameworks reduce development time and cost while ensuring compatibility across various operating systems, including iOS, Android, and web platforms. The paper also delves into the challenges associated with adopting adaptive frameworks, such as platform-specific nuances, performance optimization, and integration with native functionalities. Furthermore, it highlights the role of emerging technologies, such as artificial intelligence and machine learning, in enhancing the adaptability and intelligence of these frameworks. Through a comprehensive review of existing tools and methodologies, this study offers insights into how adaptive frameworks are shaping the future of cross-platform mobile application development. The findings underscore the importance of balancing flexibility, performance, and native experience to achieve successful application deployment across diverse mobile environments. This research provides valuable perspectives for developers, researchers, and organizations aiming to leverage adaptive frameworks in mobile application development.

References

1. Patchamatla, P. S. S. (2023). Security Implications of Docker vs. Virtual Machines. International Journal of Innovative Research in Science, Engineering and Technology, 12(09), 10-15680.

2. Patchamatla, P. S. S. (2023). Network Optimization in OpenStack with Neutron. International Journal of Advanced Research in Electrical, Electronics and Instrumentation Engineering, 12(03), 10-15662.

3. Patchamatla, P. S. (2022). Performance Optimization Techniques for Docker-based Workloads.

4. Patchamatla, P. S. (2020). Comparison of virtualization models in OpenStack. International Journal of Multidisciplinary Research in Science, Engineering and Technology, 3(03).

5. Patchamatla, P. S., & Owolabi, I. O. (2020). Integrating serverless computing and kubernetes in OpenStack for dynamic AI workflow optimization. International Journal of Multidisciplinary Research in Science, Engineering and Technology, 1, 12.

6. Patchamatla, P. S. S. (2019). Comparison of Docker Containers and Virtual Machines in Cloud Environments. Available at SSRN 5180111.

7. Patchamatla, P. S. S. (2021). Implementing Scalable CI/CD Pipelines for Machine Learning on Kubernetes. International Journal of Multidisciplinary and Scientific Emerging Research, 9(03), 10-15662.

8. Thepa, P. C. A. (2022). Conservation of the Thai Buddhist way of the community: A case study of the tradition of alms on the water, Suwannaram temple, Nakhon Pathom Province. NeuroQuantology, 20(12), 2916–2936.

9. Thepa, P. C. A. (2022). Chitasika: Mental factor in Buddhism. Intersecta Minds Journal, 1(3), 1–10.

10. Jandhimar, V., & Thepa, P. C. A. (2022). The nature of rebirth: Buddhist perspectives. Journal of Dhamma for Life, 28(2), 16–28.

11. Thepa, P. C. A. (2022). Mindfulness: A Buddhism dialogue of sustainability wellbeing. International Webinar Conference on the World Chinese Religions, Nanhua University.

12. Khemraj, S., Chi, H., Wu, W. Y., & Thepa, P. C. A. (2022). Foreign investment strategies. Performance and Risk Management in Emerging Economy, resmilitaris, 12(6), 2611–2622.

13. Khemraj, S., Thepa, P. C. A., Patnaik, S., Chi, H., & Wu, W. Y. (2022). Mindfulness meditation and life satisfaction effective on job performance. NeuroQuantology, 20(1), 830–841.

14. Thepa, A., & Chakrapol, P. (2022). Buddhist psychology: Corruption and honesty phenomenon. Journal of Positive School Psychology, 6(2).

15. Thepa, P. C. A., Khethong, P. K. S., & Saengphrae, J. (2022). The promoting mental health through Buddhadhamma for members of the elderly club in Nakhon Pathom Province, Thailand. International Journal of Health Sciences, 6(S3), 936–959.

16. Trung, N. T., Phattongma, P. W., Khemraj, S., Ming, S. C., Sutthirat, N., & Thepa, P. C. (2022). A critical metaphysics approach in the Nausea novel’s Jean Paul Sartre toward spiritual of Vietnamese in the Vijñaptimātratā of Yogācāra commentary and existentialism literature. Journal of Language and Linguistic Studies, 17(3).

17. Sutthisanmethi, P., Wetprasit, S., & Thepa, P. C. A. (2022). The promotion of well-being for the elderly based on the 5 Āyussadhamma in the Dusit District, Bangkok, Thailand: A case study of Wat Sawaswareesimaram community. International Journal of Health Sciences, 6(3), 1391–1408.

18. Thepa, P. C. A. (2022). Buddhadhamma of peace. International Journal of Early Childhood, 14(3).

19. Phattongma, P. W., Trung, N. T., Phrasutthisanmethi, S. K., Thepa, P. C. A., & Chi, H. (2022). Phenomenology in education research: Leadership ideological. Webology, 19(2).

20. Khemraj, S., Thepa, P., Chi, A., Wu, W., & Samanta, S. (2022). Sustainable wellbeing quality of Buddhist meditation centre management during coronavirus outbreak (COVID-19) in Thailand using the quality function deployment (QFD), and KANO. Journal of Positive School Psychology, 6(4), 845–858.

21. Thepa, D. P. P. C. A., Sutthirat, N., & Nongluk (2022). Buddhist philosophical approach on the leadership ethics in management. Journal of Positive School Psychology, 6(2), 1289–1297.

22. Thepa, P. C. A., Suebkrapan, A. P. D. P. C., Karat, P. B. N., & Vathakaew, P. (2023). Analyzing the relationship between practicing Buddhist beliefs and impact on the lifelong learning competencies. Journal of Dhamma for Life, 29(4), 1–19.

23. Phrasutthisaramethi, B., Khammuangsaen, B., Thepa, P. C. A., & Pecharat, C. (2023). Improving the quality of life with the Diṭṭhadhammikattha principle: A case study of the Cooperative Salaya Communities Stable House, Phuttamonthon District, Nakhonpathom Province. Journal of Pharmaceutical Negative Results, 14(2), 135–146.

24. Thepa, P. C. A. (2023). Buddhist civilization on Óc Eo, Vietnam. Buddho, 2(1), 36–49.

25. Khemraj, S., Pettongma, P. W. C., Thepa, P. C. A., Patnaik, S., Chi, H., & Wu, W. Y. (2023). An effective meditation practice for positive changes in human resources. Journal for ReAttach Therapy and Developmental Diversities, 6, 1077–1087.

26. Khemraj, S., Wu, W. Y., & Chi, A. (2023). Analysing the correlation between managers' leadership styles and employee job satisfaction. Migration Letters, 20(S12), 912–922.

27. Sutthirat, N., Pettongma, P. W. C., & Thepa, P. C. A. (2023). Buddhism moral courage approach on fear, ethical conduct and karma. Res Militaris, 13(3), 3504–3516.

28. Khemraj, S., Pettongma, P. W. C., Thepa, P. C. A., Patnaik, S., Wu, W. Y., & Chi, H. (2023). Implementing mindfulness in the workplace: A new strategy for enhancing both individual and organizational effectiveness. Journal for ReAttach Therapy and Developmental Diversities, 6, 408–416.

29. Mirajkar, G. (2012). Accuracy based Comparison of Three Brain Extraction Algorithms. International Journal of Computer Applications, 49(18).

30. Vadisetty, R., Polamarasetti, A., Guntupalli, R., Raghunath, V., Jyothi, V. K., & Kudithipudi, K. (2022). AI-Driven Cybersecurity: Enhancing Cloud Security with Machine Learning and AI Agents. Sateesh kumar and Raghunath, Vedaprada and Jyothi, Vinaya Kumar and Kudithipudi, Karthik, AI-Driven Cybersecurity: Enhancing Cloud Security with Machine Learning and AI Agents (February 07, 2022).

31. Polamarasetti, A., Vadisetty, R., Vangala, S. R., Chinta, P. C. R., Routhu, K., Velaga, V., ... & Boppana, S. B. (2022). Evaluating Machine Learning Models Efficiency with Performance Metrics for Customer Churn Forecast in Finance Markets. International Journal of AI, BigData, Computational and Management Studies, 3(1), 46-55.

32. Polamarasetti, A., Vadisetty, R., Vangala, S. R., Bodepudi, V., Maka, S. R., Sadaram, G., ... & Karaka, L. M. (2022). Enhancing Cybersecurity in Industrial Through AI-Based Traffic Monitoring IoT Networks and Classification. International Journal of Artificial Intelligence, Data Science, and Machine Learning, 3(3), 73-81.

33. Vadisetty, R., Polamarasetti, A., Guntupalli, R., Rongali, S. K., Raghunath, V., Jyothi, V. K., & Kudithipudi, K. (2021). Legal and Ethical Considerations for Hosting GenAI on the Cloud. International Journal of AI, BigData, Computational and Management Studies, 2(2), 28-34.

34. Vadisetty, R., Polamarasetti, A., Guntupalli, R., Raghunath, V., Jyothi, V. K., & Kudithipudi, K. (2021). Privacy-Preserving Gen AI in Multi-Tenant Cloud Environments. Sateesh kumar and Raghunath, Vedaprada and Jyothi, Vinaya Kumar and Kudithipudi, Karthik, Privacy-Preserving Gen AI in Multi-Tenant Cloud Environments (January 20, 2021).

35. Vadisetty, R., Polamarasetti, A., Guntupalli, R., Rongali, S. K., Raghunath, V., Jyothi, V. K., & Kudithipudi, K. (2020). Generative AI for Cloud Infrastructure Automation. International Journal of Artificial Intelligence, Data Science, and Machine Learning, 1(3), 15-20.

36. Gandhi Vaibhav, C., & Pandya, N. Feature Level Text Categorization For Opinion Mining. International Journal of Engineering Research & Technology (IJERT) Vol, 2, 2278-0181.

37. Gandhi Vaibhav, C., & Pandya, N. Feature Level Text Categorization For Opinion Mining. International Journal of Engineering Research & Technology (IJERT) Vol, 2, 2278-0181.

38. Gandhi, V. C. (2012). Review on Comparison between Text Classification Algorithms/Vaibhav C. Gandhi, Jignesh A. Prajapati. International Journal of Emerging Trends & Technology in Computer Science (IJETTCS), 1(3).

39. Desai, H. M., & Gandhi, V. (2014). A survey: background subtraction techniques. International Journal of Scientific & Engineering Research, 5(12), 1365.

40. Maisuriya, C. S., & Gandhi, V. (2015). An Integrated Approach to Forecast the Future Requests of User by Weblog Mining. International Journal of Computer Applications, 121(5).

41. Maisuriya, C. S., & Gandhi, V. (2015). An Integrated Approach to Forecast the Future Requests of User by Weblog Mining. International Journal of Computer Applications, 121(5).

42. esai, H. M., Gandhi, V., & Desai, M. (2015). Real-time Moving Object Detection using SURF. IOSR Journal of Computer Engineering (IOSR-JCE), 2278-0661.

43. Gandhi Vaibhav, C., & Pandya, N. Feature Level Text Categorization For Opinion Mining. International Journal of Engineering Research & Technology (IJERT) Vol, 2, 2278-0181.

44. Singh, A. K., Gandhi, V. C., Subramanyam, M. M., Kumar, S., Aggarwal, S., & Tiwari, S. (2021, April). A Vigorous Chaotic Function Based Image Authentication Structure. In Journal of Physics: Conference Series (Vol. 1854, No. 1, p. 012039). IOP Publishing.

45. Jain, A., Sharma, P. C., Vishwakarma, S. K., Gupta, N. K., & Gandhi, V. C. (2021). Metaheuristic Techniques for Automated Cryptanalysis of Classical Transposition Cipher: A Review. Smart Systems: Innovations in Computing: Proceedings of SSIC 2021, 467-478.

46. Gandhi, V. C., & Gandhi, P. P. (2022, April). A survey-insights of ML and DL in health domain. In 2022 International Conference on Sustainable Computing and Data Communication Systems (ICSCDS) (pp. 239-246). IEEE.

47. Dhinakaran, M., Priya, P. K., Alanya-Beltran, J., Gandhi, V., Jaiswal, S., & Singh, D. P. (2022, December). An Innovative Internet of Things (IoT) Computing-Based Health Monitoring System with the Aid of Machine Learning Approach. In 2022 5th International Conference on Contemporary Computing and Informatics (IC3I) (pp. 292-297). IEEE.

48. Dhinakaran, M., Priya, P. K., Alanya-Beltran, J., Gandhi, V., Jaiswal, S., & Singh, D. P. (2022, December). An Innovative Internet of Things (IoT) Computing-Based Health Monitoring System with the Aid of Machine Learning Approach. In 2022 5th International Conference on Contemporary Computing and Informatics (IC3I) (pp. 292-297). IEEE.

49. Sowjanya, A., Swaroop, K. S., Kumar, S., & Jain, A. (2021, December). Neural Network-based Soil Detection and Classification. In 2021 10th International Conference on System Modeling & Advancement in Research Trends (SMART) (pp. 150-154). IEEE.

50. Harshitha, A. G., Kumar, S., & Jain, A. (2021, December). A Review on Organic Cotton: Various Challenges, Issues and Application for Smart Agriculture. In 2021 10th International Conference on System Modeling & Advancement in Research Trends (SMART) (pp. 143-149). IEEE.

51. Jain, V., Saxena, A. K., Senthil, A., Jain, A., & Jain, A. (2021, December). Cyber-bullying detection in social media platform using machine learning. In 2021 10th International Conference on System Modeling & Advancement in Research Trends (SMART) (pp. 401-405). IEEE.

52. Kumar, S., Prasad, K. M. V. V., Srilekha, A., Suman, T., Rao, B. P., & Krishna, J. N. V. (2020, October). Leaf disease detection and classification based on machine learning. In 2020 International Conference on Smart Technologies in Computing, Electrical and Electronics (ICSTCEE) (pp. 361-365). IEEE.

53. Karthik, S., Kumar, S., Prasad, K. M., Mysurareddy, K., & Seshu, B. D. (2020, November). Automated home-based physiotherapy. In 2020 International Conference on Decision Aid Sciences and Application (DASA) (pp. 854-859). IEEE.

54. Rani, S., Lakhwani, K., & Kumar, S. (2020, December). Three dimensional wireframe model of medical and complex images using cellular logic array processing techniques. In International conference on soft computing and pattern recognition (pp. 196-207). Cham: Springer International Publishing.

55. Raja, R., Kumar, S., Rani, S., & Laxmi, K. R. (2020). Lung segmentation and nodule detection in 3D medical images using convolution neural network. In Artificial Intelligence and Machine Learning in 2D/3D Medical Image Processing (pp. 179-188). CRC Press.

56. Kantipudi, M. P., Kumar, S., & Kumar Jha, A. (2021). Scene text recognition based on bidirectional LSTM and deep neural network. Computational Intelligence and Neuroscience, 2021(1), 2676780.

57. Rani, S., Gowroju, S., & Kumar, S. (2021, December). IRIS based recognition and spoofing attacks: A review. In 2021 10th International Conference on System Modeling & Advancement in Research Trends (SMART) (pp. 2-6). IEEE.

58. Kumar, S., Rajan, E. G., & Rani, S. (2021). Enhancement of satellite and underwater image utilizing luminance model by color correction method. Cognitive Behavior and Human Computer Interaction Based on Machine Learning Algorithm, 361-379.

59. Rani, S., Ghai, D., & Kumar, S. (2021). Construction and reconstruction of 3D facial and wireframe model using syntactic pattern recognition. Cognitive Behavior and Human Computer Interaction Based on Machine Learning Algorithm, 137-156.

60. Rani, S., Ghai, D., & Kumar, S. (2021). Construction and reconstruction of 3D facial and wireframe model using syntactic pattern recognition. Cognitive Behavior and Human Computer Interaction Based on Machine Learning Algorithm, 137-156.

61. Kumar, S., Raja, R., Tiwari, S., & Rani, S. (Eds.). (2021). Cognitive behavior and human computer interaction based on machine learning algorithms. John Wiley & Sons.

62. Shitharth, S., Prasad, K. M., Sangeetha, K., Kshirsagar, P. R., Babu, T. S., & Alhelou, H. H. (2021). An enriched RPCO-BCNN mechanisms for attack detection and classification in SCADA systems. IEEE Access, 9, 156297-156312.

63. Kantipudi, M. P., Rani, S., & Kumar, S. (2021, November). IoT based solar monitoring system for smart city: an investigational study. In 4th Smart Cities Symposium (SCS 2021) (Vol. 2021, pp. 25-30). IET.

64. Sravya, K., Himaja, M., Prapti, K., & Prasad, K. M. (2020, September). Renewable energy sources for smart city applications: A review. In IET Conference Proceedings CP777 (Vol. 2020, No. 6, pp. 684-688). Stevenage, UK: The Institution of Engineering and Technology.

65. Raj, B. P., Durga Prasad, M. S. C., & Prasad, K. M. (2020, September). Smart transportation system in the context of IoT based smart city. In IET Conference Proceedings CP777 (Vol. 2020, No. 6, pp. 326-330). Stevenage, UK: The Institution of Engineering and Technology.

66. Meera, A. J., Kantipudi, M. P., & Aluvalu, R. (2019, December). Intrusion detection system for the IoT: A comprehensive review. In International Conference on Soft Computing and Pattern Recognition (pp. 235-243). Cham: Springer International Publishing.

67. Garlapati Nagababu, H. J., Patel, R., Joshi, P., Kantipudi, M. P., & Kachhwaha, S. S. (2019, May). Estimation of uncertainty in offshore wind energy production using Monte-Carlo approach. In ICTEA: International Conference on Thermal Engineering (Vol. 1, No. 1).

68. Kumar, M., Kumar, S., Gulhane, M., Beniwal, R. K., & Choudhary, S. (2023, December). Deep Neural Network-Based Fingerprint Reformation for Minimizing Displacement. In 2023 12th International Conference on System Modeling & Advancement in Research Trends (SMART) (pp. 100-105). IEEE.

69. Kumar, M., Gulhane, M., Kumar, S., Sharma, H., Verma, R., & Verma, D. (2023, December). Improved multi-face detection with ResNet for real-world applications. In 2023 12th International Conference on System Modeling & Advancement in Research Trends (SMART) (pp. 43-49). IEEE.

70. Gulhane, M., Kumar, S., Kumar, M., Dhankhar, Y., & Kaliraman, B. (2023, December). Advancing Facial Recognition: Enhanced Model with Improved Deepface Algorithm for Robust Adaptability in Diverse Scenarios. In 2023 10th IEEE Uttar Pradesh Section International Conference on Electrical, Electronics and Computer Engineering (UPCON) (Vol. 10, pp. 1384-1389). IEEE.

71. Patchamatla, P. S. S. (2021). Design and implementation of zero-trust microservice architectures for securing cloud-native telecom systems. International Journal of Research and Applied Innovations (IJRAI), 4(6), Article 008. https://doi.org/10.15662/IJRAI.2021.0406008

72. Patchamatla, P. S. S. (2022). A hybrid Infrastructure-as-Code strategy for scalable and automated AI/ML deployment in telecom clouds. International Journal of Computer Technology and Electronics Communication (IJCTEC), 5(6), 6075–6084. https://doi.org/10.15680/IJCTECE.2022.0506008

73. Patchamatla, P. S. S. R. (2022). A comparative study of Docker containers and virtual machines for performance and security in telecom infrastructures. International Journal of Advanced Research in Computer Science & Technology (IJARCST), 5(6), 7350–7359. https://doi.org/10.15662/IJARCST.2022.0506007

74. Patchamatla, P. S. S. (2021). Intelligent CI/CD-orchestrated hyperparameter optimization for scalable machine learning systems. International Journal of Research Publications in Engineering, Technology and Management (IJRPETM), 4(6), 5897–5905. https://doi.org/10.15662/IJRPETM.2021.0406005

75. Patchamatla, P. S. S. (2021). Intelligent orchestration of telecom workloads using AI-based predictive scaling and anomaly detection in cloud-native environments. International Journal of Advanced Research in Computer Science & Technology (IJARCST), 4(6), 5774–5882. https://doi.org/10.15662/IJARCST.2021.0406003

76. Patchamatla, P. S. S. R. (2023). Integrating hybrid cloud and serverless architectures for scalable AI workflows. International Journal of Research and Applied Innovations (IJRAI), 6(6), 9807–9816. https://doi.org/10.15662/IJRAI.2023.0606004

77. Patchamatla, P. S. S. R. (2023). Kubernetes and OpenStack Orchestration for Multi-Tenant Cloud Environments Namespace Isolation and GPU Scheduling Strategies. International Journal of Computer Technology and Electronics Communication, 6(6), 7876-7883.

78. Patchamatla, P. S. S. (2022). Integration of Continuous Delivery Pipelines for Efficient Machine Learning Hyperparameter Optimization. International Journal of Research and Applied Innovations, 5(6), 8017-8025

79. Patchamatla, P. S. S. R. (2023). Kubernetes and OpenStack Orchestration for Multi-Tenant Cloud Environments Namespace Isolation and GPU Scheduling Strategies. International Journal of Computer Technology and Electronics Communication, 6(6), 7876-7883.

80. Patchamatla, P. S. S. R. (2023). Integrating AI for Intelligent Network Resource Management across Edge and Multi-Tenant Cloud Clusters. International Journal of Advanced Research in Computer Science & Technology (IJARCST), 6(6), 9378-9385.

81. Uma Maheswari, V., Aluvalu, R., Guduri, M., & Kantipudi, M. P. (2023, December). An Effective Deep Learning Technique for Analyzing COVID-19 Using X-Ray Images. In International Conference on Soft Computing and Pattern Recognition (pp. 73-81). Cham: Springer Nature Switzerland.

82. Shekhar, C. (2023). Optimal management strategies of renewable energy systems with hyperexponential service provisioning: an economic investigation.

83. Saini1, V., Jain, A., Dodia, A., & Prasad, M. K. (2023, December). Approach of an advanced autonomous vehicle with data optimization and cybersecurity for enhancing vehicle's capabilities and functionality for smart cities. In IET Conference Proceedings CP859 (Vol. 2023, No. 44, pp. 236-241). Stevenage, UK: The Institution of Engineering and Technology.

84. Sani, V., Kantipudi, M. V. V., & Meduri, P. (2023). Enhanced SSD algorithm-based object detection and depth estimation for autonomous vehicle navigation. International Journal of Transport Development and Integration, 7(4).

85. Kantipudi, M. P., & Aluvalu, R. (2023). Future Food Production Prediction Using AROA Based Hybrid Deep Learning Model in Agri‑Se

86. Prashanth, M. S., Maheswari, V. U., Aluvalu, R., & Kantipudi, M. P. (2023, November). SocialChain: A Decentralized Social Media Platform on the Blockchain. In International Conference on Pervasive Knowledge and Collective Intelligence on Web and Social Media (pp. 203-219). Cham: Springer Nature Switzerland.

87. Kumar, S., Prasad, K. M. V. V., Srilekha, A., Suman, T., Rao, B. P., & Krishna, J. N. V. (2020, October). Leaf disease detection and classification based on machine learning. In 2020 International Conference on Smart Technologies in Computing, Electrical and Electronics (ICSTCEE) (pp. 361-365). IEEE.

88. Karthik, S., Kumar, S., Prasad, K. M., Mysurareddy, K., & Seshu, B. D. (2020, November). Automated home-based physiotherapy. In 2020 International Conference on Decision Aid Sciences and Application (DASA) (pp. 854-859). IEEE.

89. Rani, S., Lakhwani, K., & Kumar, S. (2020, December). Three dimensional wireframe model of medical and complex images using cellular logic array processing techniques. In International conference on soft computing and pattern recognition (pp. 196-207). Cham: Springer International Publishing.

90. Raja, R., Kumar, S., Rani, S., & Laxmi, K. R. (2020). Lung segmentation and nodule detection in 3D medical images using convolution neural network. In Artificial Intelligence and Machine Learning in 2D/3D Medical Image Processing (pp. 179-188). CRC Press.

91. Kantipudi, M. P., Kumar, S., & Kumar Jha, A. (2021). Scene text recognition based on bidirectional LSTM and deep neural network. Computational Intelligence and Neuroscience, 2021(1), 2676780.

92. Rani, S., Gowroju, S., & Kumar, S. (2021, December). IRIS based recognition and spoofing attacks: A review. In 2021 10th International Conference on System Modeling & Advancement in Research Trends (SMART) (pp. 2-6). IEEE.

93. Kumar, S., Rajan, E. G., & Rani, S. (2021). Enhancement of satellite and underwater image utilizing luminance model by color correction method. Cognitive Behavior and Human Computer Interaction Based on Machine Learning Algorithm, 361-379.

94. Rani, S., Ghai, D., & Kumar, S. (2021). Construction and reconstruction of 3D facial and wireframe model using syntactic pattern recognition. Cognitive Behavior and Human Computer Interaction Based on Machine Learning Algorithm, 137-156.

95. Rani, S., Ghai, D., & Kumar, S. (2021). Construction and reconstruction of 3D facial and wireframe model using syntactic pattern recognition. Cognitive Behavior and Human Computer Interaction Based on Machine Learning Algorithm, 137-156.

96. Kumar, S., Raja, R., Tiwari, S., & Rani, S. (Eds.). (2021). Cognitive behavior and human computer interaction based on machine learning algorithms. John Wiley & Sons.

97. Shitharth, S., Prasad, K. M., Sangeetha, K., Kshirsagar, P. R., Babu, T. S., & Alhelou, H. H. (2021). An enriched RPCO-BCNN mechanisms for attack detection and classification in SCADA systems. IEEE Access, 9, 156297-156312.

98. Kantipudi, M. P., Rani, S., & Kumar, S. (2021, November). IoT based solar monitoring system for smart city: an investigational study. In 4th Smart Cities Symposium (SCS 2021) (Vol. 2021, pp. 25-30). IET.

99. Sravya, K., Himaja, M., Prapti, K., & Prasad, K. M. (2020, September). Renewable energy sources for smart city applications: A review. In IET Conference Proceedings CP777 (Vol. 2020, No. 6, pp. 684-688). Stevenage, UK: The Institution of Engineering and Technology.

100. Raj, B. P., Durga Prasad, M. S. C., & Prasad, K. M. (2020, September). Smart transportation system in the context of IoT based smart city. In IET Conference Proceedings CP777 (Vol. 2020, No. 6, pp. 326-330). Stevenage, UK: The Institution of Engineering and Technology.

101. Meera, A. J., Kantipudi, M. P., & Aluvalu, R. (2019, December). Intrusion detection system for the IoT: A comprehensive review. In International Conference on Soft Computing and Pattern Recognition (pp. 235-243). Cham: Springer International Publishing.

102. Kumari, S., Sharma, S., Kaushik, M. S., & Kateriya, S. (2023). Algal rhodopsins encoding diverse signal sequence holds potential for expansion of organelle optogenetics. Biophysics and Physicobiology, 20, Article S008. https://doi.org/10.2142/biophysico.bppb-v20.s008

103. Sharma, S., Sanyal, S. K., Sushmita, K., Chauhan, M., Sharma, A., Anirudhan, G., ... & Kateriya, S. (2021). Modulation of phototropin signalosome with artificial illumination holds great potential in the development of climate-smart crops. Current Genomics, 22(3), 181-213.

104. Guntupalli, R. (2023). AI-driven threat detection and mitigation in cloud infrastructure: Enhancing security through machine learning and anomaly detection. Journal of Informatics Education and Research, 3(2), 3071–3078. ISSN: 1526-4726.

105. Guntupalli, R. (2023). Optimizing cloud infrastructure performance using AI: Intelligent resource allocation and predictive maintenance. Journal of Informatics Education and Research, 3(2), 3078–3083. https://doi.org/10.2139/ssrn.5329154

Downloads

Published

2023-12-07

How to Cite

A Frameworks for Mobile Application Development. (2023). International Journal of Research and Applied Innovations, 6(6), 9862-9873. https://doi.org/10.15662/IJRAI.2023.0606010