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  2. inter-agent-guard/
  3. Alternatives

inter-agent-guard Alternatives

inter-agent-guard is an open-source security firewall library designed for multi-agent AI systems. Below are 10 security & compliance platforms apps with similar functionality to inter-agent-guard, matched by what each product actually does — not ranked or scored. Explore each to find the closest fit for your use case.

  • AgentGuard
    quilrai.dev

    AgentGuard is an open-source desktop and CLI tool that provides local guardrails for AI coding agents. It blocks secrets, protects dependencies, compresses shell and context output, and offers logs and analytics. Designed for developers seeking to secure and optimize AI agent workflows.

  • ai-agentguard
    github.com

    ai-agentguard is an open-source CLI tool that monitors AI coding agents for security threats such as remote code execution, MCP poisoning, and API key theft. It is designed for developers working with AI agent frameworks to enhance security.

  • agent-memory-guard
    pypi.org

    agent-memory-guard is an open-source CLI tool that provides runtime defense for AI agent memory, protecting against poisoning, tool abuse, and privilege escalation. It is designed for AI security engineers and follows OWASP guidelines.

  • AgentGuard
    agentguard.tech

    AgentGuard is an infrastructure tool for runtime governance, compliance, and security of production AI agents. It integrates with popular AI frameworks and provides audit logging, policy enforcement, and regulatory compliance features for organizations deploying autonomous agents.

  • AgentGuard
    rlabs.cl

    AgentGuard is an open-source MCP server that provides quality assurance for AI-generated code. It offers archetype templates, structural validation, and self-challenge mechanisms to ensure production-ready code from agents like Claude or GPT. Designed for AI developers and QA teams.

  • agentguardCI
    github.com

    agentguardCI is an open-source command-line tool that provides contract testing for tool-using AI agents. It integrates with CI pipelines to automatically evaluate and validate agent behaviors, helping developers ensure reliability and correctness of their AI systems.

  • agent-gate-sec
    pypi.org

    agent-gate-sec is an open-source middleware service designed for secure data collection and security analysis in AI agent systems. It provides APIs for integrating with agent frameworks and supports extensible security workflows. Ideal for AI developers and security engineers.

  • aport-agent-guardrails
    pypi.org

    aport-agent-guardrails is an open-source core library that provides pre-action authorization and security guardrails for AI agent and LLM frameworks. It helps developers enforce policies and secure agent actions before execution.

  • agentic-guard
    github.com

    agentic-guard is an open-source static analysis tool that scans LLM agent code for prompt injection and confused-deputy vulnerabilities. It helps AI developers and security engineers ensure the safety of agentic software.

  • agent-shield-int
    pypi.org

    agent-shield-int is an open-source API and library for detecting prompt injection attacks in large language model (LLM) applications. It uses a five-layer detection approach combining Vigil, DistilBERT, mDeBERTa, rules, and Groq. Designed for developers and security teams integrating AI safely.