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84درجة
GH · NousResearch/hermes-agent
SaaS subscription
Build

Secure LLM Context Firewall

Build middleware that enforces strict separation between user messages and system-owned memory or provider context before requests reach the model. The product would sanitize forged delimiters, preserve channel integrity, and reduce prompt-injection risk for teams shipping AI agents in production.

ارتفاع بنسبة +100%5 قنواتاتجاه الإشارات خلال 30 يومًا: latest 1, peak 2, 30-day series
عرض على Reddit
اكتُشف 25 يونيو 2026

لماذا هذا مهم

You are wiring together an agent that stores memory, passes provider metadata, and streams replies back into your product. Everything looks fine until hidden context starts surfacing in the visible conversation or gets written back into history as if the user said it. At that point, your trust boundary is gone. You are no longer sure whether the model is responding to the user, to internal memory, or to a forged block that imitates your own framework format. Existing open-source fixes are partial and uneven, so you end up writing custom guards around every step of the request lifecycle just to feel safe enough to deploy.

  • · مُصمم لـ Engineering teams building AI agents, copilots, and chat workflows that inject memory, retrieval output, or provider-side metadata into model prompts..
  • · طريقة تحقيق الدخل الأكثر ترجيحاً: SaaS subscription.

الألم · السرد

You are wiring together an agent that stores memory, passes provider metadata, and streams replies back into your product. Everything looks fine until hidden context starts surfacing in the visible conversation or gets written back into history as if the user said it. At that point, your trust boundary is gone. You are no longer sure whether the model is responding to the user, to internal memory, or to a forged block that imitates your own framework format. Existing open-source fixes are partial and uneven, so you end up writing custom guards around every step of the request lifecycle just to feel safe enough to deploy.

تفصيل الدرجة

شدة المشكلة9/10
الاستعداد للدفع7/10
سهولة البناء5/10
الاستدامة8/10

إشارة السوق

اتجاه الإشارات خلال 30 يومًاالذروة: 2
Sparkline: latest 1, peak 2, 30-day series
القنوات المغطاة
ChatGPTClaudeCodefront_pagellmcodex

خطة الذهاب إلى السوق

المستخدم المستهدف بالضبط

Founding engineers and platform leads shipping production AI agents with memory or retrieval features.

عدد المستخدمين المتوقع

~50K-150K globally in the near-term serviceable market

قناة الاكتساب الأساسية

Twitter dev community

مرتكز السعر

$99/month

المرحلة المهمة الأولى

10 paying teams using the proxy in staging or production within 30 days

نطاق المنتج الأدنى القابل للتطبيق · أسبوع إلى أسبوعين

الأسبوع الأول
  • Implement a lightweight request proxy that accepts chat payloads and rewrites trusted context into a separate internal structure
  • Build delimiter and forged-block detection for common memory tag patterns
  • Add a simple policy file for allowlist and blocklist behavior
  • Create a minimal SDK for Python applications to route prompts through the proxy
  • Record blocked events and rewritten payload summaries in a basic dashboard
الأسبوع الثاني
  • Add adapters for two popular agent frameworks and one direct provider API path
  • Support response-side sanitization before logs or persistence are written
  • Implement replay tooling to compare original and sanitized payloads
  • Add team settings for strict mode versus monitor-only mode
  • Launch a hosted beta with self-serve onboarding and sample integrations
ميزات MVP: Proxy layer that separates user content from trusted memory/context · Delimiter forgery detection and automatic sanitization · Framework adapters for common agent runtimes · Policy engine for allowed context channels and persistence rules · Audit logs showing where contamination was blocked

التمايز

الحلول الحالية
Hermes
منظورنا
There is a clear unmet need for security-first middleware and observability tools that separate, validate, and monitor agent memory/context flows independently of any single open-source framework.

لماذا قد يفشل هذا

الرد الذاتي — أهم إشارة ثقة

  1. 1If major model providers and frameworks quickly ship native channel separation, the product could be compressed into a low-value utility.
  2. 2Security-conscious teams may decide they cannot trust an external proxy with sensitive prompts and will build in-house instead.
  3. 3The issue may feel urgent to advanced builders but not broad enough among mainstream AI app teams to support a large standalone business.

ملخص الأدلة

كيف قام الذكاء الاصطناعي بتجميع هذه الرؤية — بدون اقتباسات حرفية

Multiple participants described the same underlying failure: memory or provider context is being treated as if it were part of the user message. Several comments focused on forged delimiters, sanitization points, and the lack of a hard channel boundary. The discussion also shows engineers are already patching around the issue manually, which suggests real cost and urgency.

1 1 منشور تم تحليله5 5 قنواتAI · مجمع بواسطة الذكاء الاصطناعي · بدون اقتباسات حرفية

خطة العمل

تحقق من هذه الفرصة قبل كتابة الكود

الخطوة التالية الموصى بها

ابنِ

إشارات طلب قوية. ألم حقيقي واستعداد للدفع — ابدأ ببناء نموذج أولي.

مجموعة نصوص صفحة الهبوط

نصوص جاهزة للنسخ، مبنية على لغة مجتمع Reddit الحقيقية

العنوان الرئيسي

Secure LLM Context Firewall

العنوان الفرعي

Build middleware that enforces strict separation between user messages and system-owned memory or provider context before requests reach the model. The product would sanitize forged delimiters, preserve channel integrity, and reduce prompt-injection risk for teams shipping AI agents in production.

لمن هو

لـ Engineering teams building AI agents, copilots, and chat workflows that inject memory, retrieval output, or provider-side metadata into model prompts.

قائمة الميزات

✓ Proxy layer that separates user content from trusted memory/context ✓ Delimiter forgery detection and automatic sanitization ✓ Framework adapters for common agent runtimes ✓ Policy engine for allowed context channels and persistence rules ✓ Audit logs showing where contamination was blocked

أين تتحقق

شارك رابط صفحتك في r/GitHub · NousResearch/hermes-agent — هذا هو المكان الذي اكتُشفت فيه هذه النقاط بالضبط.

أنشئ حساباً لفتح التحليل العميق الكامل

استراتيجية GTM، نطاق MVP، أسباب الفشل المحتملة، ومجموعة نصوص ActionPlan. يمنحك التسجيل المجاني 10 مشاهدات تفصيلية/شهر.

Report & PRDBUSINESS

فرص أخرى في نفس الموضوع

مجمعة تلقائيًا بواسطة الذكاء الاصطناعي من مناقشات ذات صلة

الأسئلة الشائعة

من يعاني من هذه المشكلة؟
Engineering teams building AI agents, copilots, and chat workflows that inject memory, retrieval output, or provider-side metadata into model prompts.
هل هذه فرصة حقيقية؟
سجلت هذه الفرصة 84/100 في المقياس المركب لـ Pain Spotter (شدة المشكلة، الاستعداد للدفع، الجدوى الفنية، والاستدامة). تحقق أكثر قبل تخصيص وقت هندسي لها.
كيف يجب أن أتحقق من ذلك؟
أجرِ 5 محادثات لاكتشاف العملاء مع الجمهور المستهدف، وانشر صفحة هبوط مع قائمة انتظار، وتحقق من المنشور المصدر المرتبط بحثًا عن أي نشاط حديث قبل البدء في البناء.