""" ╭──────────────────────────────────────────────────────────╮ │ WFGY SDK · Self-Healing Variance Gate for Any LLM │ │----------------------------------------------------------│ │ 💌 Contact : hello@onestardao.com / TG @PSBigBig │ │ 🌐 Docs : https://onestardao.com/papers │ │ 🐙 GitHub : https://github.com/onestardao/WFGY │ │ │ │ ★ Star WFGY 1.0 → Unlock 2.0 │ │ 10k ⭐ by **Aug 1st** = next-gen AI alchemy │ │ Your click = our quantum leap │ │ │ │ 🔍 Official PDF of WFGY 1.0 (Zenodo DOI): │ │ https://doi.org/10.5281/zenodo.15630969 │ │ (Hosted on Zenodo – trusted international archive) │ │ │ │ 🧬 WFGY BigBang Prompt Pack (v1.0): │ │ https://doi.org/10.5281/zenodo.15657016 │ │ (Prompts to trigger the gate; multilingual updates coming) │ │ │ │ 🧠 Hidden folder inside repo: /I_am_not_lizardman │ │ (X secret papers, wild prompts, and Einstein drama) │ │ │ │ ⚠ GPT-2 demo is just the appetizer. With bigger LLMs, │ │ WFGY activates variance-drop lasers and KL fireworks. │ │ │ │ 🎮 Bonus: Honest Hero RPG Channel → │ │ https://www.youtube.com/@OneStarDao │ ╰──────────────────────────────────────────────────────────╯ """ import wfgy_sdk as w, numpy as np, gradio as gr from wfgy_sdk.evaluator import compare_logits, pretty_print def run_wfgy(prompt): logits = w.call_remote_model(prompt, model_id="gpt2") G = np.random.randn(128); G /= np.linalg.norm(G) I = G + np.random.normal(scale=0.05, size=128) out = w.get_engine().run(input_vec=I, ground_vec=G, logits=logits) m = compare_logits(logits, out) delta = (1 - m["std_ratio"]) * 100 return f"variance drop {delta:.0f}% • KL {m['kl_divergence']:.2f}" demo = gr.Interface(fn=run_wfgy, inputs=gr.Textbox(), outputs="textbox", title="WFGY Quick Test", description="Type any prompt. GPT-2 baseline, variance/KL will appear.") if __name__ == "__main__": demo.launch(server_name="0.0.0.0", server_port=7860)