Laminar Supports Launch of Amazon Security Lake

Public Cloud Data Security Leader contributes security events to Amazon Security Lake to help customers enrich their customer owned data lake with data for security insights and investigations

Laminar, a leader in public cloud data security, today announced it is supporting the launch of Amazon Security Lake from Amazon Web Services (AWS). Amazon Security Lake automatically centralizes an organization’s security data from cloud, on-premises, and custom sources into a customer owned purpose-built data lake. With support for the Open Cybersecurity Schema Framework (OCSF) standard, Amazon Security Lake reduces the complexity and costs for customers to make their security solutions data accessible to address a variety of security use cases such as threat detection, investigation, and incident response.

“All cybersecurity in the end is about protecting data and all cybersecurity is more effective and efficient with data-context,” said Amit Shaked, co-founder and CEO, Laminar. “Laminar is proud to be a launch partner for Amazon Security Lake, adding data-context to security events for better risk models, effective investigations and efficient remediation.”

Amazon Security Lake helps organizations aggregate, manage, and derive value from log and event data on the cloud and on-premises to give security teams greater visibility across their organizations. With Amazon Security Lake, customers can use the security and analytics solutions of their choice to simply query that data in place or ingest the OCSF-compliant data to address further use cases. Amazon Security Lake helps customers optimize security log data retention by optimizing the partitioning of data to improve performance and reduce costs. Now, analysts and engineers can easily build and use a centralized security data lake to improve the protection of workloads, applications, and data.

Laminar is a Data Security Posture Management (DSPM) leader that delivers autonomous, agentless, and continuous data security for everything that you build and run on the cloud. Laminar provides autonomous discovery and classification for all data across AWS and hybrid cloud environments into a cloud data catalog, prioritization of data assets by our proprietary risk model, and an agentless and asynchronous approach to DSPM to reduce the exposure surface without impacting performance.

“Data is every enterprise’s most valuable asset, which makes protecting it a critical capability for all cybersecurity solutions,” said Rod Wallace, General Manager for Amazon Security Lake. “Amazon Security Lake enables security teams to optimize security log data collection and retention by optimizing the partitioning of data to improve performance and reduce costs. With the Laminar integration, analysts and engineers can store their data in the OCSF format for further analytics to improve the protection of workloads, applications, and data.”

For more information about how Laminar supports Amazon Security Lake, please visit our blog.

About Laminar

Laminar’s Cloud Data Security Platform protects data for everything you build and run in the cloud across cloud providers and cloud data warehouses. The platform autonomously and continuously discovers and classifies new datastores for complete visibility, prioritizes risk based on sensitivity and data risk posture, secures data by remediating weak controls and actively monitors for egress and access anomalies. Designed for the multi cloud, the architecture takes an API-only approach, without any agents, and without sensitive data ever leaving your environment. Founded in 2020 by a brilliant team of award winning Israeli red team experts, Laminar is proudly backed by Insight Partners, Tiger Global, Salesforce Ventures, TLV Partners, and SentinelOne. To learn more please visit www.laminarsecurity.com.

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