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The human approval system adds a layer of security that ensures we maintain control over automated actions.
There are occasional performance lags which can be a drawback during high-demand periods.
It simplifies our multi-cloud security management, reducing the risk of human error significantly.
I love the context-aware automation features. It saves time when managing security across AWS and Azure.
Sometimes, the approval process can be slow, which affects quick decision-making.
It streamlines cloud management tasks, reducing the workload on our security team significantly.
I appreciate the platform's ability to automate various cloud security tasks. It does help in reducing some manual efforts.
The user interface is not very intuitive, making it a bit challenging to navigate for new users.
It assists in managing cloud security across multiple platforms, but the integration could use some improvements for better efficiency.
The integration with Git is a standout feature for me, as it helps in securing code repositories effectively.
The learning curve can be steep for new team members, which delays onboarding.
It enhances our cloud security posture by automating compliance checks, allowing us to focus on other critical areas.
The hyperautomation feature is revolutionary, making our cloud operations much smoother.
I wish there were more tutorials available for troubleshooting common issues.
It effectively reduces the time spent on repetitive tasks, allowing us to allocate resources to more strategic initiatives.
The automation capabilities are impressive, particularly for Kubernetes management.
The tool often has bugs that interrupt workflow, which can be frustrating.
It is meant to reduce manual monitoring tasks, but the reliability issues make it hard to trust completely.