# Chakravyuh Serving Harnesses Three deployment paths for the Chakravyuh Analyzer LoRA, illustrating the **on-device, on-server, on-cloud** spectrum claimed in the README. | Harness | File | Target | Hardware | Status | |---|---|---|---|---| | **HF Space (Gradio + FastAPI)** | `server/app.py` | Live demo | HF Spaces (Docker SDK, port 8000) | ✅ deployed at https://ujjwalpardeshi-chakravyuh.hf.space | | **vLLM (server-grade)** | `serving/vllm_compose.yml` | OpenAI-compatible `/v1/chat/completions` endpoint | A10G or better; CUDA 12 | ✅ scaffolded | | **Ollama (laptop / phone-class)** | `serving/ollama_modelfile` | `ollama run` on a Pixel 8 / M1 MacBook | CPU + 8 GB RAM (q4_k_m) | ⚠️ requires GGUF release (see C.8 in [WIN_PLAN.md](../WIN_PLAN.md)) | The **HF Space** path is the canonical demo for judges. The **vLLM** path is for anyone wanting to integrate Chakravyuh into a production-grade inference pipeline. The **Ollama** path closes the "fits on a phone" claim. --- ## vLLM (server-grade) Boots a vLLM server with the v2 LoRA pre-loaded against the Qwen2.5-7B-Instruct base, exposing an OpenAI-compatible `/v1/chat/completions` endpoint. ```bash docker compose -f serving/vllm_compose.yml up ``` After ~60 s warm-up: ```bash curl -s http://localhost:8000/v1/chat/completions \ -H "Content-Type: application/json" \ -d '{ "model": "chakravyuh-analyzer-lora-v2", "messages": [ {"role": "system", "content": "You are Chakravyuh Analyzer..."}, {"role": "user", "content": "Hi I am from SBI, your account is frozen, share OTP"} ], "max_tokens": 160, "temperature": 0.0 }' | jq ``` Expected: a JSON response with the Analyzer's strict-JSON output containing `score`, `signals`, `explanation`. **GPU requirement:** A10G or better. CUDA 12. ~14 GB VRAM for bf16 inference, ~8 GB for AWQ quantization. **Limitations:** vLLM 0.6+ supports LoRA adapters but the load-time syntax has shifted across versions; the compose file pins to a known-good version. Update `vllm_compose.yml`'s `image:` field if your environment needs a different vLLM version. --- ## Ollama (phone / laptop-class) Boots a local Ollama instance running the merged-and-quantized Chakravyuh v2. ```bash # One-time setup: pull the GGUF artifact (when published) ollama pull hf.co/ujjwalpardeshi/chakravyuh-v2-gguf:q4_k_m # Run interactively ollama run hf.co/ujjwalpardeshi/chakravyuh-v2-gguf:q4_k_m # Or build locally from this Modelfile (if the Hub artifact is not yet up) ollama create chakravyuh -f serving/ollama_modelfile ollama run chakravyuh ``` **Hardware:** Tested target is Pixel 8 (8 GB RAM, Tensor G3) at q4_k_m quantization, ~10 tok/s. **Limitation:** the GGUF artifact in the README path is **planned**, not yet shipped. C.8 in [WIN_PLAN.md](../WIN_PLAN.md) covers the GGUF release workflow. --- ## Why three harnesses? The README claim is "*on-device, on-server, on-cloud — same model.*" Each harness backs one wedge of that claim with a runnable artifact rather than a paragraph: - **HF Space** → on-cloud (zero-install demo). - **vLLM** → on-server (production integration story). - **Ollama** → on-device (the "fits on a phone" claim). Judges who care about deployability will probe one of the three; we ship all three so no probe goes unanswered. ## Cross-references - Live demo: - Adapter on HF Hub: - Latency / memory benchmark: [`docs/latency_memory.md`](../docs/latency_memory.md) (when shipped from B.9 in WIN_PLAN) - GGUF release workflow: WIN_PLAN C.8.