End-to-end protection for LLM applications — from adversarial testing before launch to inline guardrails and monitoring in production. For edtechs, the stakes are concrete: AI systems handle student PII, grades, behavioral data, and parent contacts.
LFPDPPP governs personal data; several AI bills are before Congress and CNBV oversees fintech AI use. Guardrails deployed in Mexico must also work in Spanish, not just English.
Frameworks to satisfy: COPPA/FERPA (US) · GDPR (children's data) · age-appropriate design codes
LFPDPPP governs personal data; several AI bills are before Congress and CNBV oversees fintech AI use.
Language coverage matters: primary business language — Spanish. Ask vendors for measured accuracy per language, not a supported-language list.
Safeguards and guard models are configured for the use case — and updated or fine-tuned for your domain when needed.
Every command, tool call, and data access is observable in one place — across models, frameworks, and MCP servers.
Policies apply inline as agents act — block, redact, or require approval before the action executes, not after.
A preserved audit trail of every agent action — evidence you can hand to auditors, regulators, and incident responders.
PII and secrets detected and redacted in tool-call payloads and MCP traffic before data leaves your org.
GuardionAI builds its own guard models and publishes the benchmarks — the numbers below come from the public guard models guide. Independent alternatives are listed right after this section.
Guard models are natively trained on 8 languages (English, Spanish, Italian, Portuguese, Russian, Chinese, Hindi, Arabic) — including Spanish — extended to 100+ languages, and evaluated across 1,000+ languages — including historical and dead languages — with graceful post-training decay.
Precision 0.98 • FPR 0.02
Recall 0.99 • aligned with the NVIDIA Aegis (Nemotron) content-safety taxonomy
Precision 1.00 • FPR 0.004
PII groups
Person name · Contact · Address · Government ID · Payment · Digital ID · Company
Secrets
AWS access & secret keys · GitHub tokens · Google API keys · Slack tokens · Stripe keys · Private keys & JWTs · npm tokens · Seed phrases · Generic API keys, secrets & passwords
Policy engine decisions return in under 130ms — 20× faster than cloud provider guardrails. Benchmarks: sensitivity L1–L4, methodology in the docs.
Request a demoIndependently listed from the Runtime Guardrails & AI Firewall category of the index — each with its own analysis page.
A focused runtime security layer protecting against prompt injection, PII leakage, and hallucinations via API. Acquired by Check Point in late 2025 (~$300M reported); Lakera Guard and Lakera Red remain live products and anchor Check Point's Center of Excellence for AI Security.
For edtechs: check Lakera (Check Point)'s coverage of COPPA/FERPA (US) and GDPR (children's data) requirements and its handling of student PII before committing.
Developer-friendly CLI tool for testing, evaluating, and red teaming LLM applications.
For edtechs: check Promptfoo's coverage of COPPA/FERPA (US) and GDPR (children's data) requirements and its handling of student PII before committing.
A set of LLM safeguards designed to detect violating content across multiple use cases. Model-based guardrail.
For edtechs: check Meta (Llama Guard)'s coverage of COPPA/FERPA (US) and GDPR (children's data) requirements and its handling of student PII before committing.
GuardionAI covers the full llm security stack (prompt defense F1 0.95, moderation F1 0.98, PII/DLP F1 0.97), and strong alternatives include Lakera (Check Point), Promptfoo, Meta (Llama Guard) — compared in detail on this page.
End-to-end protection for LLM applications — from adversarial testing before launch to inline guardrails and monitoring in production.
Edtechs route student PII, grades, behavioral data, and parent contacts through AI systems, so the top risks are minor-safety failures in AI tutors; student-data leakage; jailbreaks that bypass content controls for children. Relevant frameworks: COPPA/FERPA (US), GDPR (children's data), age-appropriate design codes.
LFPDPPP governs personal data; several AI bills are before Congress and CNBV oversees fintech AI use. Edtechs additionally answer to COPPA/FERPA (US), GDPR (children's data), age-appropriate design codes.
Yes — Guardion's guard models are natively trained on Spanish (one of 8 training languages), extended to 100+ languages, and evaluated across 1,000+ languages — including historical and dead languages — with graceful post-training decay. Verify language coverage explicitly when evaluating any vendor.
Published benchmarks report precision/recall/F1 and false-positive rate per model family. Guardion publishes its methodology and per-sensitivity results (L1–L4) in the guard models guide: https://guardion.ai/docs/guides/guard-models.