--- title: CERNenv Trainer emoji: ⚛️ colorFrom: indigo colorTo: pink sdk: docker suggested_hardware: a100x4 suggested_storage: medium pinned: false license: bsd-3-clause short_description: GRPO trainer for CERNenv (Unsloth + LoRA, A100) --- # CERNenv Trainer (Hugging Face Space, A100) Fine-tunes a small instruction-tuned LLM (Large Language Model) to act as an LHC (Large Hadron Collider) physicist inside the **CERNenv** OpenEnv environment using **GRPO** (Group-Relative Policy Optimization), **Unsloth**, and **LoRA** (Low-Rank Adaptation). ## Hardware - Recommended: **4× A100 (`a100x4`, 320 GB VRAM, ~$10/hr)** - Single GPU also supported: `a100-large` (slower, fewer episodes recommended) - Minimum: T4 / L4 (use the Colab notebook fallback) ## Required Space secrets | Secret | Purpose | | --- | --- | | `HF_TOKEN` | Hugging Face token with `write` access for model push | | `HF_USERNAME` | Hub username, used as the default model-repo owner | ## Optional environment variables | Variable | Default | Notes | | --- | --- | --- | | `MODEL_NAME` | `unsloth/Qwen2.5-3B-Instruct` | Any chat model Unsloth supports | | `TOTAL_EPISODES` | `1500` | Prompts × generations rollouts | | `DIFFICULTY` | `easy` | `easy` / `medium` / `hard` | | `MAX_STEPS` | `18` | Max steps per episode | | `NUM_GENERATIONS` | `8` | GRPO group size (bigger = better signal) | | `NUM_GPUS` | auto-detected | `accelerate launch --num_processes` value | | `CHECKPOINT_EVAL_STEPS` | `25` | Run a held-out eval every N updates | | `CHECKPOINT_EVAL_EPISODES` | `8` | Episodes per mid-training eval | | `EVAL_EPISODES` | `32` | Episodes for pre/post eval (statistical power) | | `OUTPUT_DIR` | `runs/unsloth-grpo` | LoRA adapter output | | `EVIDENCE_DIR` | `evidence` | Where curves, CSVs, plots are written | | `PUSH_REPO` | `${HF_USERNAME}/cernenv-grpo-qwen2.5-3b` | Hub repo for adapters + evidence | | `AUTOSTART` | `0` | Set to `1` to start training on Space boot | ## How to use This Space exposes a tiny FastAPI control panel: - `GET /` — status + run info + **live training-progress evidence** (curves, before/after metrics, plots) - `POST /train` — start / restart a training run - `GET /logs?tail=N` — live tail of `training.log` - `GET /metrics` — pre / post / Δ metrics JSON - `GET /evidence` — list of evidence artifacts on disk - `GET /evidence/{name}` — download an artifact (`training_curve.png`, `training_log.csv`, etc.) ### Training-progress evidence saved (and pushed to Hub) - `training_log.csv` — per-step reward, loss, KL, lr, grad-norm - `training_curve.png` — reward + loss vs step - `checkpoint_evals.csv` — held-out eval every `CHECKPOINT_EVAL_STEPS` updates - `checkpoint_progression.png` — mean reward + success/mass/channel accuracy vs step - `pre_eval.jsonl` / `post_eval.jsonl` — full per-episode rollouts before vs after - `before_after_summary.png` — pre/post bar chart with Δ annotations - `reward_distribution.png` — pre vs post reward histogram - `before_after_metrics.json` — machine-readable metrics + deltas - `sample_trajectories.md` — cherry-picked pre vs post agent traces Click **"Start training"** in the UI, or set `AUTOSTART=1` in the Space variables to kick off immediately on boot. When training finishes, the LoRA adapters are pushed to `PUSH_REPO`. ## Local equivalent The same training run is reproducible locally with: ```bash # single GPU PYTHONPATH=. python -m training.training_unsloth \ --model_name unsloth/Qwen2.5-3B-Instruct \ --difficulty easy --total_episodes 1500 --max_steps 18 \ --num_generations 8 --output_dir runs/unsloth-grpo \ --evidence_dir evidence # multi-GPU (e.g. 4× A100) PYTHONPATH=. accelerate launch --num_processes 4 --mixed_precision bf16 \ -m training.training_unsloth \ --total_episodes 1500 --num_generations 8 \ --output_dir runs/unsloth-grpo --evidence_dir evidence ```