
Anjali Bansal
Computer Science & Engineering
Phone:0
Email: anjalibansal@dtu.ac.in
Qualifications
B.Tech, M.Tech, Ph.D (Pursuing)
Areas of Interest
Machine Learning, Deep Learning, Software Engineering, Cloud Computing
BRIEF INTRODUCTION Anjali Bansal is an assistant professor in the Department of Computer Science and Engineering at Delhi Technological University (DTU) and is pursuing a part-time Ph.D. in the Department of Software Engineering at DTU, where her research focuses on the development and evaluation of methodologies for maintaining software containers. She has completed her M.Tech in Software Engineering from DTU and her B.Tech in Computer Science and Engineering from Noida Institute of Engineering and Technology. She has qualified UGC-NET JRF in 2022 and GATE in 2019. Her academic research interests include Machine Learning, Deep Learning, Software Engineering, and Cloud Computing. She has published research papers in SCI-indexed journals such as ACM Computing Surveys and Cluster Computing and has presented her work at various national and international conferences. During her Ph.D., she has taught subjects such as Object-Oriented Programming, Object-Oriented Software Engineering, and Research Paper Writing. LIST OF PUBLICATION Malhotra, R., Bansal, A., & Kessentini, M. (2024). A Systematic Literature Review on Maintenance of Software Containers. ACM Computing Surveys, 56(8), 1-38. https://doi.org/10.1145/3645092. (Impact Factor: 23.8) Malhotra, R., Bansal, A. & Kessentini, M. (2024). Deployment and Performance Monitoring of Docker based Federated Learning Framework for Software Defect Prediction. Cluster Computing, 27, 6039–6057. https://doi.org/10.1007/s10586-024-04266-0. (Impact Factor: 3.6) Malhotra, R., Bansal, A., & Kessentini, M. (2023, July). Vulnerability analysis of docker hub official images and verified images. In 2023 IEEE International Conference on Service-Oriented System Engineering (SOSE) (pp. 150-155) IEEE, Athens, Greece. https://doi.org/10.1109/SOSE58276.2023.00025. Malhotra, R., Bansal, A., Kessentini, M. (2025). Toward Federated Learning Approach for Workload Prediction in Cloud Computing. In: Swaroop, A., Virdee, B., Correia, S.D., Polkowski, Z. (eds) Proceedings of Data Analytics and Management. ICDAM 2024. Lecture Notes in Networks and Systems, vol 1299. Springer, Singapore. https://doi.org/10.1007/978-981-96-3358-6_7.
Last Updated : 2025-06-03 04:45:25