IBM X-FORCE

By: Arya Brijith, International Center for AI and Cyber Security Research and Innovations (CCRI), Asia University, Taiwan,sia University, Taiwan, arya.brijithk@gmail.com

In this article, we shall discuss about IBM X-Force, a cybersecurity initiative, and its important features.

Keywords IBM X-Force, threat, cybersecurity, security, response.

Introduction

A group of experts with specialization in threat intelligence, security research, and incident response make up IBM X-Force, a dedicated cybersecurity initiative. Addressed for its comprehensive worldwide surveillance, examination of emerging cyber threats, and supply of practical information, IBM X-Force is a vital resource supporting businesses globally in their proactive efforts to prevent, identify, and address evolving cyber risks and security breaches.

Important IBM X-Force features

  • Thrеat Intеlligеncе: IBM X-Force keeps an eye on the whole threat landscape, gathering information on emerging cyber threats, vulnerabilities, and attack vectors. They analyze this data to give enterprises actionable intelligence, enabling them to proactively defend against potential threats.
  • Sеcurity Rеsеarch: The team carries out comprehensive investigations on cybercrimes, vulnerabilities, attack patterns, and trends. These findings are disseminated to the cybersecurity community through reports, white papers, and advisories, providing invaluable information.
  • Incidеnt Rеsponsе: IBM X-Force provides guidance, expertise, and solutions to help companies mitigate the effects of cyberattacks and recover from breaches in response to security incidents.
  • Sеcurity Sеrvicеs: Leveraging the expertise and understanding obtained from threat intelligence and research, IBM X-Force offers a range of security services, from managed security solutions to consultancy and assessment, to assist enterprises in improving their cybersecurity posture.
Figure: IBM X-Force features

Conclusion

IBM X-Force makes a substantial contribution to assisting enterprises in staying ahead of cyber threats. By providing comprehensive threat intelligence, practical insights, and guidance on cybersecurity best practices, they enable businesses to bolster their defenses, reduce risks, and effectively respond to security incidents.

With its extensive resources and expertise, together with its dedication to being at the forefront of cybersecurity, IBM X-Force solidifies its position as a key player in the ongoing battle against cyber threats. The cybersecurity community benefits greatly from the initiative’s research reports and advisories, which promote cooperation and awareness in the fight against emerging threats and vulnerabilities.

References

  1. Guo, H., Xing, Z., Chen, S., Li, X., Bai, Y., & Zhang, H. (2021, July). Key aspects augmentation of vulnerability description based on multiple security databases. In 2021 IEEE 45th Annual Computers, Software, and Applications Conference (COMPSAC) (pp. 1020-1025). IEEE.
  2. Danso, P. K., Dadkhah, S., Neto, E. C. P., Zohourian, A., Molyneaux, H., Lu, R., & Ghorbani, A. A. (2023). Transferability of Machine Learning Algorithm for IoT Device Profiling and Identification. IEEE Internet of Things Journal.
  3. Yadav, K., Gupta, B. B., Chui, K. T., & Psannis, K. (2020). Differential privacy approach to solve gradient leakage attack in a federated machine learning environment. In Computational Data and Social Networks: 9th International Conference, CSoNet 2020, Dallas, TX, USA, December 11–13, 2020, Proceedings 9 (pp. 378-385). Springer International Publishing.
  4. Srivastava, D., Chui, K. T., Arya, V., Peñalvo, F. J. G., Kumar, P., & Singh, A. K. (2022). Analysis of Protein Structure for Drug Repurposing Using Computational Intelligence and ML Algorithm. International Journal of Software Science and Computational Intelligence (IJSSCI), 14(1), 1-11.
  5. Pathoee, K., Rawat, D., Mishra, A., Arya, V., Rafsanjani, M. K., & Gupta, A. K. (2022). A cloud-based predictive model for the detection of breast cancer. International Journal of Cloud Applications and Computing (IJCAC), 12(1), 1-12.
  6. Peñalvo, F. J. G., Maan, T., Singh, S. K., Kumar, S., Arya, V., Chui, K. T., & Singh, G. P. (2022). Sustainable Stock Market Prediction Framework Using Machine Learning Models. International Journal of Software Science and Computational Intelligence (IJSSCI), 14(1), 1-15.

Cite As

Brijith A. (2023) IBM X-FORCE, Insights2Techinfo, pp.1

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