Pervaziv AI Brings On-Device Local Models to Cortex for Private, Low-Latency Developer AI Controls

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Cortex Privacy, Cortex Prompt Guard, and Cortex Secure Distribution extend Pervaziv AI's model independence strategy with local AI safety for secure software development

SAN FRANCISCO - Rezul -- Pervaziv AI today announced a major expansion of its on-device local model strategy for Cortex, bringing private, low-latency AI controls directly into developer workflows.

Following the recent launch of Cortex 5.0 and Cortex-LLM-1.0, Pervaziv AI's first internally trained AI model for secure software development, the company is now extending its model independence roadmap into local AI safety. The new work focuses on privacy protection, prompt-injection defense, and secure model distribution for enterprise developer environments.

The on-device local model work centers on three capabilities: Cortex Privacy, Cortex Prompt Guard, and Cortex Secure Distribution.

Cortex Privacy, released as cortex-privacy-1.1, is designed to detect sensitive developer data before it leaves the local environment. Developer workflows often include credentials, tokens, account identifiers, database URLs, internal service endpoints, stack traces, logs, configuration snippets, customer references, and operational details.

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Cortex Prompt Guard, released as cortex-prompt-guard-1.2, focuses on detecting prompt-injection and instruction-manipulation attempts before they influence AI behavior. These risks can appear in copied logs, documentation, issue comments, package metadata, web pages, code comments, and generated text. The local classifier helps Cortex apply prompt-risk controls without requiring every preflight decision to call a remote model.

Cortex Secure Distribution provides the foundation for delivering these local models through private, controlled channels. It supports stable model versions, integrity verification metadata, provenance metadata, packaged product behavior, runtime compatibility validation, and release-level governance.

"Cortex 5.0 moved Pervaziv AI closer to model independence by introducing specialized AI behavior for secure software development. On-device local models take that strategy one layer deeper," said Anoop Jaishankar, Founder and CEO of Pervaziv AI. "Enterprises should not have to send every sensitive prompt, code snippet, log, or browser context to a remote model just to decide whether it is safe. The future of secure AI development is layered: local models for fast privacy and safety decisions, specialized models for secure reasoning, and governed workflows that keep control where enterprises need it most."

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The new local model capabilities are designed to run where Cortex users already work, including VS Code and major browsers such as Chrome, Safari, Edge, and Firefox. The goal is to make AI privacy and safety controls feel native to the developer experience rather than external services that slow teams down.

By handling high-frequency safety checks locally, Cortex can also reduce unnecessary remote model token usage, lower inference cost, and reserve larger models for deeper reasoning, security analysis, remediation, and agentic workflows.

Visit https://pervaziv.com to learn more about their products.

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Source: Pervaziv AI

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