Key considerations for IAM in a hybrid work environment

Authors

  • Sairamesh Konidala Vice President at JPMorgan & Chase, USA Author

Keywords:

Hybrid Work, Identity and Access Management

Abstract

Abstract: The shift to hybrid work environments has reshaped how organizations operate, blending on-premises and remote work into a flexible yet complex structure. This new paradigm has placed Identity and Access Management (IAM) at the forefront of securing digital ecosystems. Organizations must prioritize robust IAM strategies that balance security, compliance, scalability, and user experience. Central to this approach is the adoption of Zero Trust Architecture (ZTA), which emphasizes strict verification of users and devices, ensuring that trust is never assumed within or outside the network. Multi-factor authentication (MFA) and adaptive access controls further enhance security by verifying identities through multiple layers and adjusting access based on user behavior and context. However, hybrid work also introduces unique challenges, such as the rise of shadow IT, where employees use unauthorized tools, and the complexities of managing a decentralized workforce across various locations and time zones. Additionally, the evolving threat landscape, with increasingly sophisticated cyberattacks, requires continuous monitoring and rapid response capabilities. Organizations should implement clear IAM policies to address these challenges, invest in user-friendly solutions that reduce friction without compromising security, and ensure regular employee training to promote compliance. Practical steps include Leveraging cloud-based IAM tools for scalability, Integrating IAM solutions with existing security frameworks & Conducting regular audits to identify vulnerabilities. By adopting these best practices, businesses can secure digital assets, foster seamless collaboration across hybrid teams, and maintain operational efficiency in an ever-changing work environment.

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Published

08-04-2024

How to Cite

[1]
Sairamesh Konidala, “Key considerations for IAM in a hybrid work environment ”, J. of Artificial Int. Research and App., vol. 4, no. 1, pp. 670–693, Apr. 2024, Accessed: Dec. 28, 2024. [Online]. Available: https://aimlstudies.co.uk/index.php/jaira/article/view/338

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