This work is licensed under the Creative Commons Attribution 4.0 International License.
Ralph, P. (2018). The two paradigms of software development research. Science of Computer Programming, 156, 68-89.Search in Google Scholar
Alahyari, H., Svensson, R. B., & Gorschek, T. (2017). A study of value in agile software development organizations. Journal of Systems and Software, 125, 271-288.Search in Google Scholar
Albusays, K., Bjorn, P., Dabbish, L., Ford, D., Murphy-Hill, E., Serebrenik, A., & Storey, M. A. (2021). The diversity crisis in software development. IEEE Software, 38(2), 19-25.Search in Google Scholar
Rokis, K., & Kirikova, M. (2022, September). Challenges of low-code/no-code software development: A literature review. In International Conference on Business Informatics Research (pp. 3-17). Cham: Springer International Publishing.Search in Google Scholar
Georgiou, S., Rizou, S., & Spinellis, D. (2019). Software development lifecycle for energy efficiency: techniques and tools. ACM Computing Surveys (CSUR), 52(4), 1-33.Search in Google Scholar
Joshi, P. (2017). Artificial intelligence with python. Packt Publishing Ltd.Search in Google Scholar
Goralski, M. A., & Tan, T. K. (2020). Artificial intelligence and sustainable development. The International Journal of Management Education, 18(1), 100330.Search in Google Scholar
Tatineni, S., & Chinamanagonda, S. (2021). Leveraging Artificial Intelligence for Predictive Analytics in DevOps: Enhancing Continuous Integration and Continuous Deployment Pipelines for Optimal Performance. Journal of Artificial Intelligence Research and Applications, 1(1), 103-138.Search in Google Scholar
Oliinyk, B., & Oleksiuk, V. (2019, November). Automation in software testing, can we automate anything we want?. In CS&SE@ SW (pp. 224-234).Search in Google Scholar
Kong, P., Li, L., Gao, J., Liu, K., Bissyandé, T. F., & Klein, J. (2018). Automated testing of android apps: A systematic literature review. IEEE Transactions on Reliability, 68(1), 45-66.Search in Google Scholar
Hutchison, C., Zizyte, M., Lanigan, P. E., Guttendorf, D., Wagner, M., Le Goues, C., & Koopman, P. (2018, May). Robustness testing of autonomy software. In Proceedings of the 40th International Conference on Software Engineering: Software Engineering in Practice (pp. 276-285).Search in Google Scholar
Galhotra, S., Brun, Y., & Meliou, A. (2017, August). Fairness testing: testing software for discrimination. In Proceedings of the 2017 11th Joint meeting on foundations of software engineering (pp. 498-510).Search in Google Scholar
Hutchinson, B., Smart, A., Hanna, A., Denton, E., Greer, C., Kjartansson, O., ... & Mitchell, M. (2021, March). Towards accountability for machine learning datasets: Practices from software engineering and infrastructure. In Proceedings of the 2021 ACM Conference on Fairness, Accountability, and Transparency (pp. 560-575).Search in Google Scholar
Shah, V. (2019). Towards Efficient Software Engineering in the Era of AI and ML: Best Practices and Challenges. International Journal of Computer Science and Technology, 3(3), 63-78.Search in Google Scholar
Gerke, S., Babic, B., Evgeniou, T., & Cohen, I. G. (2020). The need for a system view to regulate artificial intelligence/machine learning-based software as medical device. NPJ digital medicine, 3(1), 53.Search in Google Scholar
Nass, M., Alégroth, E., & Feldt, R. (2021). Why many challenges with GUI test automation (will) remain. Information and Software Technology, 138, 106625.Search in Google Scholar
Esnaashari, M., & Damia, A. H. (2021). Automation of software test data generation using genetic algorithm and reinforcement learning. Expert Systems with Applications, 183, 115446.Search in Google Scholar
Yatskiv, S., Voytyuk, I., Yatskiv, N., Kushnir, O., Trufanova, Y., & Panasyuk, V. (2019, June). Improved method of software automation testing based on the robotic process automation technology. In 2019 9th international conference on advanced computer information technologies (ACIT) (pp. 293-296). IEEE.Search in Google Scholar
Khatibsyarbini, M., Isa, M. A., Jawawi, D. N., & Tumeng, R. (2018). Test case prioritization approaches in regression testing: A systematic literature review. Information and Software Technology, 93, 74-93.Search in Google Scholar
Battina, D. S. (2019). Artificial intelligence in software test automation: A systematic literature review. International Journal of Emerging Technologies and Innovative Research (www.jetir.Org UGC and issn Approved), ISSN, 2349-5162.Search in Google Scholar
Takanen, A., Demott, J. D., Miller, C., & Kettunen, A. (2018). Fuzzing for software security testing and quality assurance. Artech House.Search in Google Scholar
Chen, T. Y., Kuo, F. C., Liu, H., Poon, P. L., Towey, D., Tse, T. H., & Zhou, Z. Q. (2018). Metamorphic testing: A review of challenges and opportunities. ACM Computing Surveys (CSUR), 51(1), 1-27.Search in Google Scholar
Wiklund, K., Eldh, S., Sundmark, D., & Lundqvist, K. (2017). Impediments for software test automation: A systematic literature review. Software Testing, Verification and Reliability, 27(8), e1639.Search in Google Scholar
Sneha, K., & Malle, G. M. (2017, August). Research on software testing techniques and software automation testing tools. In 2017 international conference on energy, communication, data analytics and soft computing (ICECDS) (pp. 77-81). IEEE.Search in Google Scholar
Umar, M. A., & Zhanfang, C. (2019). A study of automated software testing: Automation tools and frameworks. International Journal of Computer Science Engineering (IJCSE), 6(217-225), 47-48.Search in Google Scholar
Eckhart, M., Meixner, K., Winkler, D., & Ekelhart, A. (2019). Securing the testing process for industrial automation software. Computers & Security, 85, 156-180.Search in Google Scholar
Sanuja D. Mohanty, Ram N. Patro, Pradyut K. Biswal, Biswajit Pradhan & Sk Sazim. (2024). Trade-off between bagging and boosting for quantum separability-entanglement classification. Quantum Information Processing(7),273-273.Search in Google Scholar
Zhongtao Wang, Shuguo Liu, Xinrui Zhang, Bing Zhang, Kaiyuan Zhao, Zhiwei Li... & Shengbin Wei. (2024). Research on the application of Bagging W-KNN algorithm in alloy steel identification with PXRF analyzer. Materials Today Communications109600-109600.Search in Google Scholar
Hayato Nishimori & Taiji Suzuki. (2024). Feature learning and generalization error analysis of two-layer linear neural networks for high-dimensional inputs. Information Geometry(prepubulish),1-43.Search in Google Scholar
Meejoung Kim & Jun Heo. (2024). Study on applicable coverage extension of theory-based generalization errors bounds to the variants of RVFL network and ELM. Neurocomputing127875-127875.Search in Google Scholar
Zheng Suqing, Wang Lei, Xiong Jun, Liang Guang, Xu Yong & Lin Fu. (2022). Consensus Prediction of Human Gut Microbiota-Mediated Metabolism Susceptibility for Small Molecules by Machine Learning, Structural Alerts, and Dietary Compounds-Based Average Similarity Methods.. Journal of chemical information and modeling(4).Search in Google Scholar