--- title: intellite-500m-sft emoji: πŸ’¬ colorFrom: blue colorTo: purple sdk: gradio sdk_version: 5.34.2 app_file: app.py pinned: false --- # intellite-500M SFT β€” RLHF data collector Serves the SFT-tuned **intellite 500M** model in a chat UI. Every assistant reply gets πŸ‘ / πŸ‘Ž buttons; each rating appends one JSONL record to a local folder that a `CommitScheduler` pushes to a dataset repo on the Hub every 5 minutes. Weights are loaded from a bundled bf16 checkpoint (`best.pt`, ~1 GB). Best sampling defaults are baked into the sliders: **temp 0.7 Β· top-k 40 Β· top-p 0.7 Β· rep penalty 1.1** β€” found by grid sweep against this checkpoint. You can override per-message via the right-side panel. ## Setup 1. **Upload the SFT checkpoint** to the Space root as `best.pt` (or set `INTELLITE_CKPT=/path/to/file.pt` in Settings β†’ Variables). 2. **Create the dataset repo** `ProCreations/Intellite-storage` (the scheduler will auto-create it on first push too). 3. **Set `HF_TOKEN`** in Settings β†’ Secrets β€” a token with **write** scope on the dataset repo. Without it, the Space runs but feedback only persists in-memory until the container restarts. 4. (Optional) Override `FEEDBACK_REPO` in Settings β†’ Variables if you want to use a different dataset repo. ## Data format Each record is a single line of JSONL in `data/data_.jsonl` on the dataset repo (one file per Space replica/restart): ```json {"ts":"2026-04-25T15:23:45","system":"You are a helpful, honest, and concise assistant.","prompt_messages":[{"role":"user","content":"..."},{"role":"assistant","content":"..."},{"role":"user","content":"..."}],"response":"...","liked":true} ``` Each record is exactly `(prompt, response, reward∈{0,1})` β€” the shape any preference/RL trainer expects. For DPO, group records by identical `prompt_messages` and pair a `liked=true` response (chosen) with a `liked=false` one (rejected). For REINFORCE/PPO, feed `liked` as a reward. ## Downloading the data ```bash hf download ProCreations/Intellite-storage --repo-type=dataset --local-dir ./rlhf-data ``` ## Hardware: ZeroGPU (half-H200, dynamic) This Space runs on **HuggingFace ZeroGPU** β€” a half-H200 slice (70 GB VRAM) is allocated on demand each time you press Send, then released when the reply finishes. Per-message latency: - Cold start (first message after idle): ~3–5 s of GPU queueing + ~2 s model warm - Warm: ~5–10 s for a typical 200–400 token reply (β‰ˆ80 tok/s on H200) - Max-length 800-token reply: ~10–15 s The `chat` function is decorated with `@spaces.GPU(duration=60)` so the GPU stays allocated for the duration of the streamed reply, then releases. ZeroGPU has a **per-account daily quota** (3.5 min free / 25 min PRO); heavy users will hit a queue. Generation is otherwise free. If the Space stalls on cold container boot, give it ~30 s β€” that's the 1 GB bf16 weights downloading from `ProCreations/intellite-500m-sft`. Subsequent restarts hit the cached copy.