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* 🛡️ fix: Bound object-traverse against DAG fan-out and shared refs Detect cycles via the ancestor chain (so shared, non-circular references in sibling branches / DAGs are traversed correctly) and add defensive maxNodes (100k) / maxDepth (100) caps. The removed global visited set was implicitly bounding work at O(distinct nodes); ancestor-chain-only detection is O(root-to-node paths), exponential on DAGs (a depth-24 diamond went from 26 to 50M visits / 1.6s of synchronous work). The caps bound it to ~9ms while leaving normal traversal untouched. Adds a spec covering shared refs, cycles, DAGs, and both bounds. The lone consumer, debugTraverse, inherits the defaults with no change. * 🪵 refactor: Remove legacy api/config logger duplicate The api/config winston logger was a stale parallel implementation of the canonical @librechat/data-schemas logger, with unbounded redaction (regex-only redactFormat, npm traverse-based debugTraverse). Its winston instance and the logger export from api/config/index.js had zero consumers — every ~/config importer uses the MCP/flow-manager exports. The only live tie was ToolService's use of redactMessage. Re-export redactMessage from @librechat/data-schemas (behaviorally identical, a superset of the regex set), point ToolService at it, delete api/config/winston.js and api/config/parsers.js, drop the dead logger export, and remove the orphaned ~/config/parsers mock from the global test setup. * 🧹 chore: Drop orphaned traverse dep and stale legacy logger tests Deleting api/config/{winston,parsers}.js left the npm 'traverse' package unused in api/package.json (flagged by the detect-unused-packages CI check) and orphaned two tests that imported the deleted modules. Remove the traverse dependency (sync package-lock), and delete api/config/__tests__/{parsers,logToFile}.spec.js — the canonical logger's behavior is covered by packages/data-schemas/src/config/parsers.spec.ts. * 🩹 fix: Make object-traverse caps bound work and survive update() Address Codex review: (1) break the child loops as soon as the node budget is spent and iterate objects via for...in instead of materializing Object.entries/Object.keys, so maxNodes actually bounds work for wide arrays/objects; (2) detect ancestor cycles against an immutable original-node stack rather than context.node, which a callback's update() can reassign (the debug formatter rewrites array nodes in place). Adds tests for the wide-array bound and the update()-cycle case. * 🎚️ fix: Tighten object-traverse defaults to a ~1ms log budget Lower maxNodes 100000 -> 2500 and maxDepth 100 -> 5. Measured cost is ~140ns/node with the debug formatter callback, so 2500 nodes keeps a single log under ~1ms even on slower prod hardware; real log objects are ~25-30 nodes at depth 3-4, leaving ample headroom. maxNodes is the fan-out/cost lever; maxDepth bounds recursion and output readability (depth-5 covers typical logs, deeper renders compactly). |
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LibreChat
English · 中文
✨ Features
-
🖥️ UI & Experience inspired by ChatGPT with enhanced design and features
-
🤖 AI Model Selection:
- Anthropic (Claude), AWS Bedrock, OpenAI, Azure OpenAI, Google, Vertex AI, OpenAI Responses API (incl. Azure)
- Custom Endpoints: Use any OpenAI-compatible API with LibreChat, no proxy required
- Compatible with Local & Remote AI Providers:
- Ollama, groq, Cohere, Mistral AI, Apple MLX, koboldcpp, together.ai,
- OpenRouter, Helicone, Perplexity, ShuttleAI, Deepseek, Qwen, and more
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- Secure, Sandboxed Execution in Python, Node.js (JS/TS), Go, C/C++, Java, PHP, Rust, and Fortran
- Seamless File Handling: Upload, process, and download files directly
- No Privacy Concerns: Fully isolated and secure execution
-
🔦 Agents & Tools Integration:
- LibreChat Agents:
- No-Code Custom Assistants: Build specialized, AI-driven helpers
- Agent Marketplace: Discover and deploy community-built agents
- Collaborative Sharing: Share agents with specific users and groups
- Flexible & Extensible: Use MCP Servers, tools, file search, code execution, and more
- Skills: Create reusable
SKILL.mdinstruction bundles for manual, automatic, or always-on agent workflows - Subagents: Delegate focused work to isolated child agent runs with their own context windows
- Compatible with Custom Endpoints, OpenAI, Azure, Anthropic, AWS Bedrock, Google, Vertex AI, Responses API, and more
- Model Context Protocol (MCP) Support for Tools
- LibreChat Agents:
-
🔍 Web Search:
- Search the internet and retrieve relevant information to enhance your AI context
- Combines search providers, content scrapers, and result rerankers for optimal results
- Customizable Jina Reranking: Configure custom Jina API URLs for reranking services
- Learn More →
-
🪄 Generative UI with Code Artifacts:
- Code Artifacts allow creation of React, HTML, and Mermaid diagrams directly in chat
-
🎨 Image Generation & Editing
- Text-to-image and image-to-image with GPT-Image-1
- Text-to-image with DALL-E (3/2), Stable Diffusion, Flux, or any MCP server
- Produce stunning visuals from prompts or refine existing images with a single instruction
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💾 Presets & Context Management:
- Create, Save, & Share Custom Presets
- Switch between AI Endpoints and Presets mid-chat
- Edit, Resubmit, and Continue Messages with Conversation branching
- Create and share prompts with specific users and groups
- Fork Messages & Conversations for Advanced Context control
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💬 Multimodal & File Interactions:
- Upload and analyze images with Claude 3, GPT-4.5, GPT-4o, o1, Llama-Vision, and Gemini 📸
- Chat with Files using Custom Endpoints, OpenAI, Azure, Anthropic, AWS Bedrock, & Google 🗃️
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🌎 Multilingual UI:
- English, 中文 (简体), 中文 (繁體), العربية, Deutsch, Español, Français, Italiano
- Polski, Português (PT), Português (BR), Русский, 日本語, Svenska, 한국어, Tiếng Việt
- Türkçe, Nederlands, עברית, Català, Čeština, Dansk, Eesti, فارسی
- Suomi, Magyar, Հայերեն, Bahasa Indonesia, ქართული, Latviešu, ไทย, ئۇيغۇرچە
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🧠 Reasoning UI:
- Dynamic Reasoning UI for Chain-of-Thought/Reasoning AI models like DeepSeek-R1
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🎨 Customizable Interface:
- Customizable Dropdown & Interface that adapts to both power users and newcomers
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- Never lose a response: AI responses automatically reconnect and resume if your connection drops
- Multi-Tab & Multi-Device Sync: Open the same chat in multiple tabs or pick up on another device
- Production-Ready: Works from single-server setups to horizontally scaled deployments with Redis
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🗣️ Speech & Audio:
- Chat hands-free with Speech-to-Text and Text-to-Speech
- Automatically send and play Audio
- Supports OpenAI, Azure OpenAI, and Elevenlabs
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📥 Import & Export Conversations:
- Import Conversations from LibreChat, ChatGPT, Chatbot UI
- Export conversations as screenshots, markdown, text, json
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🔍 Search & Discovery:
- Search all messages/conversations
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👥 Multi-User & Secure Access:
- Multi-User, Secure Authentication with OAuth2, LDAP, & Email Login Support
- Built-in Moderation, and Token spend tools
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⚙️ Configuration & Deployment:
- Configure Proxy, Reverse Proxy, Docker, & many Deployment options
- Use S3 with CloudFront for stable media links, edge delivery, signed cookies, and secured downloads
- Use completely local or deploy on the cloud
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📖 Open-Source & Community:
- Completely Open-Source & Built in Public
- Community-driven development, support, and feedback
For a thorough review of our features, see our docs here 📚
🪶 All-In-One AI Conversations with LibreChat
LibreChat is a self-hosted AI chat platform that unifies all major AI providers in a single, privacy-focused interface.
Beyond chat, LibreChat provides AI Agents, Model Context Protocol (MCP) support, Artifacts, Code Interpreter, custom actions, conversation search, and enterprise-ready multi-user authentication.
Open source, actively developed, and built for anyone who values control over their AI infrastructure.
🌐 Resources
GitHub Repo:
- RAG API: github.com/danny-avila/rag_api
- Website: github.com/LibreChat-AI/librechat.ai
Other:
- Website: librechat.ai
- Documentation: librechat.ai/docs
- Blog: librechat.ai/blog
📝 Changelog
Keep up with the latest updates by visiting the releases page and notes:
⚠️ Please consult the changelog for breaking changes before updating.
⭐ Star History
✨ Contributions
Contributions, suggestions, bug reports and fixes are welcome!
For new features, components, or extensions, please open an issue and discuss before sending a PR.
If you'd like to help translate LibreChat into your language, we'd love your contribution! Improving our translations not only makes LibreChat more accessible to users around the world but also enhances the overall user experience. Please check out our Translation Guide.
💖 This project exists in its current state thanks to all the people who contribute
🎉 Special Thanks
We thank Locize for their translation management tools that support multiple languages in LibreChat.