--- title: "Slipstream: Semantic Quantization for Multi-Agent Coordination" emoji: 📄 colorFrom: blue colorTo: indigo sdk: gradio app_file: app.py pinned: false license: mit tags: ["semantic-quantization", "multi-agent-systems", "protocol-standards", "token-efficiency"] --- # Slipstream: Semantic Quantization for Efficient Multi-Agent Coordination This Space was generated from a research paper PDF. ## What you can do here - **Live Quantizer**: Type messy natural language and watch it get quantized to a UCR anchor (the core demo!) - **Start here**: guided entry points (summary / limitations / thread) - **Gallery**: extracted figures or page previews - **Chat**: ask questions about the paper - **Share Kit**: generate a tweet thread / talk outline / FAQ - **Model Playground**: chat with a referenced HF model (requires `HF_TOKEN`) ## Optional secrets If you add these as Space secrets, Chat + Share Kit become generative: - `HF_TOKEN`: Hugging Face token (read access is sufficient for inference; write is **not** needed at runtime) - `PAPER_LLM_MODEL`: e.g. `meta-llama/Meta-Llama-3-8B-Instruct` (or any chat-completion capable model) ## Build provenance - Source PDF: `slipstream-paper.pdf` - Extracted pages: 7