An Analysis of Microservices Oriented AI based API Security
Keywords:
API security, AI, microservices, API management.Abstract
Modern software is complicated, especially microservices which eventually making the API security difficult. Micro services are very versatile and scalable but it still vulnerable to security risk. This article focuses on AI based microservices API security management, which addresses thread detection, anomaly monitoring and vulnerability remediation. To secure APIs and microservices ecosystem, machine learning models, real time threat data and automation tools are used.
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References
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