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Apiture Integrates Data Security into SecOps with Open Raven
Technology Category
- Cybersecurity & Privacy - Cloud Security
- Infrastructure as a Service (IaaS) - Cloud Computing
- Infrastructure as a Service (IaaS) - Cloud Storage Services
Applicable Industries
- Finance & Insurance
Applicable Functions
- Business Operation
Use Cases
- Cybersecurity
Services
- Cloud Planning, Design & Implementation Services
- Cybersecurity Services
The Challenge
Apiture migrated to the cloud for improved service delivery speed and quality, but this move presented a challenge for CISO Sean Darragh. He needed to maintain his ability to protect data from attacks and compliance risks. However, the rate and variety at which infrastructure (IaC) and data change in the cloud meant that legacy, non-native, DLP, and governance tools could not keep pace. This reduced visibility rippled throughout SecOps, reducing the confidence in their overall security posture. The security gaps created and accentuated by the cloud set Sean on a search for an automated, data-centric approach to security to solve three problems: Restoring visibility with automated asset discovery and data classification, streamlining risk assessment, detection, and response, and using data insights to define and drive support for proactive defense hardening.
About The Customer
Apiture is a leading provider of digital banking solutions. It provides financial institutions with the integrations, capabilities, and resources that banks and credit unions have not had access to in the past. Offering two differentiated digital experience platforms, Apiture Xpress and Apiture Open, Apiture develops innovative solutions that can be used by financial institutions of any size. Apiture serves hundreds of financial institutions in the United States market. The company is headquartered in Wilmington, North Carolina, with offices in Austin, Texas. Apiture operates in the financial technology industry and uses Amazon Web Services (AWS), S3 as its cloud service provider. It adheres to the Center for Internet Security (CIS) framework and is compliant with SSAE 18, SOC2 Type II (CIS) standards. Its examining bodies include FFIEC.
The Solution
Apiture adopted the Open Raven Data Security Platform to gain complete and automated visibility into data types and locations. This information allows them to better manage the attack surface and compliance requirements with precision alerting and accelerated incident response. Open Raven simplified how Apiture answered fundamental questions with automated discovery, mapping, and data classification across an AWS Organization. Open Raven enabled Apiture’s team to apply policies to specific data types regardless of location rather than particular services or storage pools. These data-centric policies automated discovering risks like rogue assets and misplaced data with improper controls. The built-in Splunk-based search, reporting, and analysis allow teams to incorporate data findings from Open Raven into SPL queries, reports, and dashboards.
Operational Impact
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