Exploring the Landscape of Operating System Forensics: An In-Depth Evaluation

Main Article Content

Maria Rodriguez

Abstract

The rapid expansion of the internet has ushered in a surge in cybercrimes, both those perpetrated using computers and those targeting computer systems. In response to this growing threat, the field of computer forensics has emerged. Computer forensics involves the systematic collection and analysis of electronic evidence, encompassing not only the assessment of computer damage resulting from electronic attacks but also the recovery of lost data critical in convicting wrongdoers. Consequently, the standard forensic procedure following an electronic attack encompasses evidence collection, analysis, and the presentation of findings in a court of law. Emphasizing the recovery and examination of latent evidence, digital forensics has fueled the demand for effective tools. Numerous tools are currently available for examining the operating system (OS) of a computer. This paper aims to compare these OS forensics tools by evaluating their usability, functionality, performance, and the quality of product support and documentation. The research will offer a comprehensive comparative analysis of two prominent OS forensic tools, OSForensics and Autopsy, based on diverse, contrasting factors.

Downloads

Download data is not yet available.

Article Details

How to Cite
Exploring the Landscape of Operating System Forensics: An In-Depth Evaluation. (2023). International Journal of Creative Research In Computer Technology and Design, 5(5). https://jrctd.in/index.php/IJRCTD/article/view/10
Section
Articles

How to Cite

Exploring the Landscape of Operating System Forensics: An In-Depth Evaluation. (2023). International Journal of Creative Research In Computer Technology and Design, 5(5). https://jrctd.in/index.php/IJRCTD/article/view/10

References

R.S Khalaf and A. Varol, ”Digital Forensics: Focusing on Image Forensics,” 2019 7th International Symposium on Digital Forensics and Security (ISDFS), 2019, pp. 1-5, doi: 10.1109/ISDFS.2019.8757557

G Maria Jones; S Godfrey Winster, ”An Insight into Digital Forensics: History, Frameworks, Types and Tools,” in Cyber Security and Digital Forensics: Challenges and Future Trends, Wiley, 2022, pp.105-125, doi: 10.1002/9781119795667.ch6

H. Majed, H. N. Noura, and A. Chehab, "Overview of Digital Forensics and Anti-Forensics Techniques," 2020 8th International Symposium on Digital Forensics and Security (IS-DFS), 2020, pp. 1-5, doi: 10.1109/ISDFS49300.2020.9116399

O. M. Adedayo, ”Big data and digital forensics,” 2016 IEEE International Conference on Cybercrime and Computer Forensic (ICCCF), 2016, pp. 1-7, doi: 10.1109/IC-CCF.2016.7740422

Refaces. (2022, January 18). What is Digital Forensics: Process, tools, and types: Computer Forensicsoverview. RecFaces. Retrieved from https://recfaces.com/articles/digital-forensics

K. U. Maheshwari and G. Shobana, "The State of the art tools and techniques for remote digital forensic investigations," 2021 3rd International Conference on Signal Processing and Communication (ICPSC), 2021, pp. 464-468, doi: 10.1109/ICSPC51351.2021.9451718.

L. Chen, L. Xu, X. Yuan and N. Shashidhar, "Digital forensics in social networks and the cloud: Process, approaches, methods, tools, and challenges," 2015 International Conference on Computing, Networking and Communications (ICNC), 2015, pp. 1132-1136, doi: 10.1109/ICCNC.2015.7069509.

K. S. Singh, A. Irfan and N. Dayal, "Cyber Forensics and Comparative Analysis of Digital Forensic Investigation Frameworks," 2019 4th International Conference on Information Systems and Computer Networks (ISCON), 2019, pp. 584-590, doi: 10.1109/ISCON47742.2019.9036214.

K. Ghazinour, D. M. Vakharia, K. C. Kannaji and R. Satyakumar, "A study on digital forensic tools," 2017 IEEE International Conference on Power, Control, Signals and Instrumentation Engineering (ICPCSI), 2017, pp. 3136-3142, doi: 10.1109/ICPCSI.2017.8392304.

A. Al-Sabaawi, "Digital Forensics for Infected Computer Disk and Memory: Acquire, Analyse, and Report," 2020 IEEE Asia-Pacific Conference on Computer Science and Data Engineering (CSDE), 2020, pp. 1-7, doi: 10.1109/CSDE50874.2020.9411614.

Chaitanya Krishna Suryadevara, “TOWARDS PERSONALIZED HEALTHCARE - AN INTELLIGENT MEDICATION RECOMMENDATION SYSTEM”, IEJRD - International Multidisciplinary Journal, vol. 5, no. 9, p. 16, Dec. 2020.

Kunduru, A. R. (2023). DATA CONVERSION STRATEGIES FOR ERP IMPLEMENTATION PROJECTS. CENTRAL ASIAN JOURNAL OF MATHEMATICAL THEORY AND COMPUTER SCIENCES, 4(9), 1-6. Retrieved from https://cajmtcs.centralasianstudies.org/index.php/CAJMTCS/article/view/509

Arjun Reddy Kunduru. (2023). Healthcare ERP Project Success: It’s all About Avoiding Missteps. Central Asian Journal of Theoretical and Applied Science, 4(8), 130-134. Retrieved from https://cajotas.centralasianstudies.org/index.php/CAJOTAS/article/view/1268

Kunduru, A. R. (2023). THE PERILS AND DEFENSES OF ENTERPRISE CLOUDCOMPUTING: A COMPREHENSIVE REVIEW. Central Asian Journal of Mathematical Theory and Computer Sciences, 4(9), 29-41.

Kunduru, A. R. (2023). Maximizing Business Value with Integrated IoT and Cloud ERP Systems. International Journal of Innovative Analyses and Emerging Technology, 3(9), 1-8.

Kunduru, A. R. (2023). Blockchain Technology for ERP Systems: A Review. American Journal of Engineering, Mechanics and Architecture, 1(7), 56-63.

Suryadevara, Chaitanya Krishna, Predictive Modeling for Student Performance: Harnessing Machine Learning to Forecast Academic Marks (December 22, 2018). International Journal of Research in Engineering and Applied Sciences (IJREAS), Vol. 8 Issue 12, December-2018, Available at SSRN: https://ssrn.com/abstract=4591990

Suryadevara, Chaitanya Krishna, Unveiling Urban Mobility Patterns: A Comprehensive Analysis of Uber (December 21, 2019). International Journal of Engineering, Science and Mathematics, Vol. 8 Issue 12, December 2019, Available at SSRN: https://ssrn.com/abstract=4591998

Chaitanya Krishna Suryadevara. (2019). A NEW WAY OF PREDICTING THE LOAN APPROVAL PROCESS USING ML TECHNIQUES. International Journal of Innovations in Engineering Research and Technology, 6(12), 38–48. Retrieved from https://repo.ijiert.org/index.php/ijiert/article/view/3654

Chaitanya Krishna Suryadevara. (2020). GENERATING FREE IMAGES WITH OPENAI’S GENERATIVE MODELS. International Journal of Innovations in Engineering Research and Technology, 7(3), 49–56. Retrieved from https://repo.ijiert.org/index.php/ijiert/article/view/3653

Chaitanya Krishna Suryadevara. (2020). REAL-TIME FACE MASK DETECTION WITH COMPUTER VISION AND DEEP LEARNING: English. International Journal of Innovations in Engineering Research and Technology, 7(12), 254–259. Retrieved from https://repo.ijiert.org/index.php/ijiert/article/view/3184

Chaitanya Krishna Suryadevara. (2021). ENHANCING SAFETY: FACE MASK DETECTION USING COMPUTER VISION AND DEEP LEARNING. International Journal of Innovations in Engineering Research and Technology, 8(08), 224–229. Retrieved from https://repo.ijiert.org/index.php/ijiert/article/view/3672

Kunduru, A. R. (2023). Security concerns and solutions for enterprise cloud computing applications. Asian Journal of Research in Computer Science, 15(4), 24–33. https://doi.org/10.9734/ajrcos/2023/v15i4327

Kunduru, A. R. (2023). Industry best practices on implementing oracle cloud ERP security. International Journal of Computer Trends and Technology, 71(6), 1-8. https://doi.org/10.14445/22312803/IJCTT-V71I6P101

Kunduru, A. R. (2023). Cloud Appian BPM (Business Process Management) Usage In health care Industry. IJARCCE International Journal of Advanced Research in Computer and Communication Engineering, 12(6), 339-343. https://doi.org/10.17148/IJARCCE.2023.12658

Kunduru, A. R. (2023). Effective usage of artificial intelligence in enterprise resource planning applications. International Journal of Computer Trends and Technology, 71(4), 73-80. https://doi.org/10.14445/22312803/IJCTT-V71I4P109

Kunduru, A. R. (2023). Recommendations to advance the cloud data analytics and chatbots by using machine learning technology. International Journal of Engineering and Scientific Research, 11(3), 8-20.

Kunduru, A. R., & Kandepu, R. (2023). Data archival methodology in enterprise resource planning applications (Oracle ERP, Peoplesoft). Journal of Advances in Mathematics and Computer Science, 38(9), 115–127. https://doi.org/10.9734/jamcs/2023/v38i91809

Chaitanya Krishna Suryadevara, “DIABETES RISK ASSESSMENT USING MACHINE LEARNING: A COMPARATIVE STUDY OF CLASSIFICATION ALGORITHMS”, IEJRD - International Multidisciplinary Journal, vol. 8, no. 4, p. 10, Aug. 2023.

Chaitanya Krishna Suryadevara. (2023). REVOLUTIONIZING DIETARY MONITORING: A COMPREHENSIVE ANALYSIS OF THE INNOVATIVE MOBILE APP FOR TRACKING DIETARY COMPOSITION. International Journal of Innovations in Engineering Research and Technology, 10(8), 44–50. Retrieved from https://repo.ijiert.org/index.php/ijiert/article/view/3673

Chaitanya krishna Suryadevara. (2023). NOVEL DEVICE TO DETECT FOOD CALORIES USING MACHINE LEARNING. Open Access Repository, 10(9), 52–61. Retrieved from https://oarepo.org/index.php/oa/article/view/3546

Kunduru, A. R. (2023). Artificial intelligence usage in cloud application performance improvement. Central Asian Journal of Mathematical Theory and Computer Sciences, 4(8), 42-47. https://cajmtcs.centralasianstudies.org/index.php/CAJMTCS/article/view/491

Kunduru, A. R. (2023). Artificial intelligence advantages in cloud Fintech application security. Central Asian Journal of Mathematical Theory and Computer Sciences, 4(8), 48-53. https://cajmtcs.centralasianstudies.org/index.php/CAJMTCS/article/view/492

Kunduru, A. R. (2023). Cloud BPM Application (Appian) Robotic Process Automation Capabilities. Asian Journal of Research in Computer Science, 16(3), 267–280. https://doi.org/10.9734/ajrcos/2023/v16i3361

Kunduru, A. R. (2023). Machine Learning in Drug Discovery: A Comprehensive Analysis of Applications, Challenges, and Future Directions. International Journal on Orange Technologies, 5(8), 29-37.

Arjun Reddy Kunduru. (2023). From Data Entry to Intelligence: Artificial Intelligence’s Impact on Financial System Workflows. International Journal on Orange Technologies, 5(8), 38-45. Retrieved from https://journals.researchparks.org/index.php/IJOT/article/view/4727

Arjun Reddy Kunduru. (2023). The Inevitability of Cloud-Based Case Management for Regulated Enterprises. International Journal of Discoveries and Innovations in Applied Sciences, 3(8), 13–18. Retrieved from https://openaccessjournals.eu/index.php/ijdias/article/view/2247

Whig, P., & Bhatia, A. B. (2023). Interpretable Analysis of the Potential Impact of Various Versions of Corona Virus: A Case Study. In Explainable Artificial Intelligence for Biomedical Applications (pp. 57-78). River Publishers.

Whig, P (2023)AI-Driven Image Processing for Sustainable Development through Machine Learning in Environmental Conservation and Resource Management. (2023). International Journal of Sustainable Development Through AI, ML and IoT, 2(2), 1-10. https://ijsdai.com/index.php/IJSDAI/article/view/27

Kasula, B. Y. (2016). Advancements and Applications of Artificial Intelligence: A Comprehensive Review. International Journal of Statistical Computation and Simulation, 8(1), 1–7. Retrieved from https://journals.threws.com/index.php/IJSCS/article/view/214

Kasula, B. Y. (2017). Machine Learning Unleashed: Innovations, Applications, and Impact Across Industries. International Transactions in Artificial Intelligence, 1(1), 1–7. Retrieved from https://isjr.co.in/index.php/ITAI/article/view/169

Ronak Pansara, Master Data Management Importance in Today’s Organization, International Journal of Management (IJM), 12(10), 2021, pp. 55-59. https://iaeme.com/Home/issue/IJM?Volume=12&Issue=10

Pansara, R. (2023). Cultivating Data Quality to Strategies, Challenges, and Impact on Decision-Making. International Journal of Managment Education for Sustainable Development, 6(6), 24-33.

Pansara, R. (2023). Seeding the Future by Exploring Innovation and Absorptive Capacity in Agriculture 4.0 and Agtechs. International Journal of Sustainable Development in Computing Science, 5(2), 46-59.

Pansara, R. (2023). Unraveling the Complexities of Data Governance with Strategies, Challenges, and Future Directions. Transactions on Latest Trends in IoT, 6(6), 46-56.

Kasula, B. Y. (2017). Transformative Applications of Artificial Intelligence in Healthcare: A Comprehensive Review. International Journal of Statistical Computation and Simulation, 9(1). Retrieved from https://journals.threws.com/index.php/IJSCS/article/view/215

Kasula, B. Y. (2018). Exploring the Efficacy of Neural Networks in Pattern Recognition: A Comprehensive Review. International Transactions in Artificial Intelligence, 2(2), 1–7. Retrieved from https://isjr.co.in/index.php/ITAI/article/view/170

Kasula, B. Y. (2019). Exploring the Foundations and Practical Applications of Statistical Learning. International Transactions in Machine Learning, 1(1), 1–8. Retrieved from https://isjr.co.in/index.php/ITML/article/view/176

Kasula, B. Y. (2019). Enhancing Classification Precision: Exploring the Power of Support-Vector Networks in Machine Learning. International Scientific Journal for Research, 1(1). Retrieved from https://isjr.co.in/index.php/ISJR/article/view/171

Whig, P., Velu, A., Nadikattu, R. R., & Alkali, Y. J. (2024). Role of AI and IoT in Intelligent Transportation. In Artificial Intelligence for Future Intelligent Transportation (pp. 199-220). Apple Academic Press.

Whig, P., Velu, A., Nadikattu, R. R., & Sharma, P. (2024). Reinforcement Learning for Automated Medical Diagnosis and Dynamic Clinical Regimes. In Handbook of Research on Artificial Intelligence and Soft Computing Techniques in Personalized Healthcare Services (pp. 169-187). Apple Academic Press.

Most read articles by the same author(s)

1 2 3 4 > >>