Seamlessly integrate with AI applications built on Amazon Bedrock and Amazon SageMaker to innovate with secure generative AI applications
Privacera, the AI and data security governance company founded by the creators of Apache Ranger announced that Privacera AI Governance (PAIG) now integrates with Amazon Web Services (AWS) on security for foundation models (FMs) used for generative AI. PAIG is designed to provide the ability to responsibly govern and protect sensitive data within FMs and generative AI applications. PAIG does this by leveraging the power of Amazon Bedrock, a fully-managed service that makes FMs from leading AI companies accessible through an API to build and scale generative AI applications, and Amazon SageMaker, a cloud-based machine-learning platform that enables developers to create, train, and deploy machine learning (ML) models on the cloud, to support open-source and proprietary FMs and workflows. AWS services uphold enterprise-grade security and privacy best practices, and with PAIG, customers can take security and privacy measures even further.
“Every data-driven organization today is looking for scalable strategies to leverage generative AI applications in a secure, fully-governed, and transparent manner. Highly secure, easy-to-apply, consistent, and automatic enforcement of security and governance policies is paramount to scale the next generation of AI-powered applications,” said Balaji Ganesan, Privacera co-founder and CEO. “Today, we are thrilled to announce the integration of PAIG with Amazon Bedrock and Amazon SageMaker. It’s a testament to our commitment to AWS and to seamlessly integrate with AWS AI and ML services to help enterprises address critical security, governance, and compliance requirements.”
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PAIG provides a comprehensive suite of built-in product capabilities to address privacy, security, and compliance requirements associated with building generative AI applications. Whether using some of the open-source, public FMs or customizing private FMs, the same consistent security controls can be applied to training and tuning data, as well as user-injected model inputs and outputs.
The new integration provides the following security and governance capabilities covering the end-to-end lifecycle of generative AI applications – from discovery, training, and deployment, to continuous monitoring:
Privacera’s Unified Data Security Platform ensures the masking and redaction of sensitive training and tuning data, while PAIG secures the generative AI models and applications. PAIG specific capabilities allow organizations.
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