AppOmni SIEM Integration

Integration Overview

AppOmni continuously monitors and normalizes hundreds of event types across critical SaaS applications, including Salesforce, Box, ServiceNow, Workday, Office365, and Zoom. Panther seamlessly integrates with AppOmni, allowing you to continuously monitor and respond to security events across your environment. Once events are ingested into Panther, the normalized data is stored for future security investigations in a Snowflake-powered, serverless data lake.

Use Cases for AppOmni

Common SIEM use cases for these events include:

  • Delivering AppOmni alerts through Panther’s alert destinations
  • Correlating SaaS events across all of your applications
  • Monitoring changes in policy compliance

Onboarding AppOmni in Panther

Panther’s integration for AppOmni is easy to configure, allowing you to onboard your log data in just a few minutes. AppOmni events can be streamed using HTTP webhook or AWS S3 transport mechanisms.

For more detailed steps on onboarding AppOmni or for supported schema for events, you can view our AppOmni documentation here.

Normalizing & Analyzing AppOmni Events

As Panther ingests events, they are parsed, normalized, and stored in a Snowflake security data lake. This empowers security teams to craft detections, identify anomalies, and conduct investigations on your data in the context of days, weeks, or months.

Panther’s managed schema will apply normalization fields to your AppOmni events, which standardize names for attributes and empower users to correlate and investigate data across all log types. For more on searching log data in Panther, check out our documentation on Investigations & Search.

Detection as Code

With Panther, your team won’t be confined to restrictive detection rules or domain-specific query languages as seen in many SIEM platforms. Panther is built with detection-as-code principles, giving you the ability to use Python to write expressive detections, and to integrate external systems like version control and CI/CD pipelines into your detection engineering workflows. This results in powerful, flexible, and reusable scripting of detections for your security team.

A number of pre-built detections for AppOmni are available by default in Panther, offering users immediate value for monitoring common IoCs and threats. You can explore our built-in detection coverage for AppOmni logs here.

Configuring Alerts

Panther fires alerts when your detection rules or policies are triggered, and integrates with a variety of alert destinations to allow for easy access and management of any AppOmni alerts. Alerts can also be forwarded to alert context or SOAR platforms for more remediation options.

Alerts are categorized in five different severity levels: Info, Low, Medium, High, and Critical. Security teams have the options to dynamically assign severity based on specific log event attributes.

Customer Support

If you have any questions about configuring AppOmni in Panther, we’re here to help. All customers have access to our technical support team via a dedicated Slack channel, email, or in-app messenger.

You can check out our documentation on configuring AppOmni here, or customers can sign up for the Panther Community to share best practices or custom detections for AppOmni.

The Ideal SIEM Integration for AppOmni

With Panther, security teams don’t have to struggle with restrictive detection logic, waste time and resources on operational overhead, or pay skyrocketing costs to keep up with the growth of cloud data. Panther was founded by a team of veteran security practitioners who struggled with legacy SIEM challenges first-hand, and built an intuitive, cloud-native platform to solve them.

Panther is a cloud-native SIEM built for security operations at scale, offering flexible detection-as-code, intuitive security workflows, and actionable real-time alerts to keep up with the needs of today’s security teams. For a powerful, flexible, and scalable SIEM solution, request a demo today.

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