Threat Intelligence Automation - Orchestration Platforms: Studying orchestration platforms for automating the collection, analysis, and dissemination of threat intelligence to improve cyber defense capabilities
Keywords:
Threat Intelligence, AutomationAbstract
This research paper examines the role of orchestration platforms in automating threat intelligence processes to enhance cyber defense capabilities. It investigates the challenges faced by organizations in managing threat intelligence and explores how orchestration platforms streamline the collection, analysis, and dissemination of threat intelligence. The paper discusses the key features and functionalities of orchestration platforms, their integration with existing security tools and technologies, and their impact on improving overall security posture. Additionally, it analyzes case studies and use cases to highlight the practical implementation and benefits of orchestration platforms in real-world scenarios.
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