Data-Centric Security for AI and Analytics

Secure Agentic AI Workflows, Models, and Tooling

Enterprise-grade data protection for AI, analytics, and hybrid workloads – agnostic to frameworks, systems, and hyperscalers. Protect sensitive data at every stage – from ingestion and training to orchestration and model output – without slowing performance.

Proven at Global Scale

Protecting trillions of transactions and billions of people across the largest global organizations in Finance, Healthcare, Retail, and Governments.

Modular capabilities for AI, analytics, and compliance workloads

Centralized Policy.
Unified Control.
Distributed Enforecement.

As organizations scale AI, analytics, and data flows across clouds, warehouses, and models, Protegrity AI Enterprise Edition applies consistent policies for data discovery, protection, privacy, and semantic guardrails – improving precision, increasing trust, and lowering risk without slowing performance.

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Policy Management

Define and enforce consistent rules for redaction, masking, encryption, tokenization, and AI guardrails across data systems. Policies follow your data wherever it moves—cloud, on-prem, or model pipeline—ensuring consistent control.

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Discovery & Classification

Automatically detect and label sensitive information such as PII, PHI, or financial data across structured and unstructured sources. Context-aware classifiers identify risk early, before data enters analytics or AI workflows.

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Tokenization & Encryption

Protect sensitive values with high-speed vaultless tokenization that preserves format and performance. When controlled re-identification is required, optional vault-based tokens maintain context while keeping real data secure.

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Anonymization

Apply privacy-preserving transformations using statistical methods such as k-anonymity, l-diversity, and t-closeness. These techniques enable analytics on protected data while minimizing re-identification risk.

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Synthetic Data Generation

Control how large language models handle data by enforcing runtime policies on prompts and outputs. Guardrails detect and redact sensitive content automatically, ensuring that GenAI systems remain compliant and trustworthy.

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Policy Management

Define and enforce consistent rules for redaction, masking, encryption, tokenization, and AI guardrails across data systems. Policies follow your data wherever it moves—cloud, on-prem, or model pipeline—ensuring consistent control.

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Audit & Insight

Every protection event is logged and visualized for full transparency. Dashboards show what was protected, how it was used, and when—simplifying audits and helping teams demonstrate compliance across environments.

Scalable Deployment with built-in key management and audit

Kubernetes-Based &
Enterprise Ready

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Deployment Architecture

Deploy Protegrity AI Team Edition using infrastructure-as-code templates—Terraform provisions your AWS environment and Kubernetes cluster (EKS, ECS, or Docker Compose), while Helm Charts configure and install the platform’s microservices. Ingress, TLS management, routing, and audit logging are built in. Updates are applied by refreshing container images—no patching or appliance maintenance required.

Same protection capabilities, scoped for different personas

One Platform for Developers, Teams,
and Enterprise

Protegrity

AI Enterprise Edition

Protegrity AI Enterprise Edition extends the platform for organizations that need to scale policy and protection across clouds, environments, and teams. It introduces centralized policy management, broader entitlement coverage—including hybrid and on-prem deployment—and support for HSM-based key management. AI Enterprise Edition also includes formal SLA commitments and integration pathways aligned to procurement and compliance needs.

Protegrity

AI Team Edition

Protegrity AI Team Edition is a self-contained deployment running in your AWS environment. It's built for individual teams that need to secure sensitive data fast—without complex infrastructure or central dependencies. Entitlements include local policy control and one protector per family, covering tools like Redshift, Java, and Databricks. While current deployment is AWS-specific, the architecture is built to support additional platforms in future releases.

Unified logging & Reporting for regulated environments

Visibility & proof of
protection

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Audit & compliance

Every discovery, tokenization, and policy event is logged to OpenSearch and exportable to enterprise SIEM systems. Dashboards provide at-a-glance compliance status for audits such as SOC 2 and HIPAA. Data lineage can be traced from source to model output.

Connect to data warehouses, AI Pipelines, & Enterprise Systems

BROAD INTEGRATION ACROSS
DATA & AI STACKS

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Application
Protectors

Support for Java, .NET, and Python applications allows developers to apply data protection directly within business logic and APIs—without changing application behavior.

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Analytics &
Big Data

Native protectors for Databricks SQL, Amazon EMR, and Cloudera/CDP integrate protection directly into large-scale analytics pipelines. Sensitive data stays governed even as it moves through distributed compute frameworks.

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Cloud Data
Warehouses

Connectors for Snowflake, Amazon Redshift, and Amazon Athena secure queries and transformations without altering schemas or requiring ETL rewrites.

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Web & Application
Layers

The WebApp Protector enforces data policies in real time at the user interface level, giving administrators fine-grained control over what data can be viewed or unprotected inside web applications.

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Mainframe &
File Systems

File and Mainframe Protectors extend modern data protection to legacy platforms, ensuring consistent security and compliance across decades of infrastructure.

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Vector & AI
Pipelines

Policy-driven tokenization for embeddings, retrieval, and LLM input/output secures sensitive data used in GenAI and machine learning workflows. REST APIs and SDKs provide integration points for any model pipeline.

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VISIBILITY & CONTROL

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