--- license: other tags: - mlx - robotics - pi0.5 - quantized - apple-silicon --- # pi0.5 — 4-bit Quantized MLX Weights 4-bit quantized weights for [lerobot/pi05_base](https://huggingface.co/lerobot/pi05_base) converted to Apple MLX format. Runs on **Apple Silicon (M1/M2/M3)** with ~2.4 GB RAM. Loads in ~6s, inference in ~2s per action chunk. ## Architecture - PaliGemma 2B VLM (SigLIP + Gemma 2B) + Gemma 300M action expert - Flow-matching policy: 10-step Forward Euler denoising - Output: action chunk [B, 50, 32] ## Usage ```python from huggingface_hub import hf_hub_download import mlx.core as mx import mlx.nn as nn # Download quantized weights (~2.6 GB, one-time) npz_path = hf_hub_download("mohan007/pi05-mlx-4bit", "pi05_mlx_4bit.npz") # Load with mlx_pi05 from mlx_pi05.load import load_model model = load_model(quantized_path=npz_path, quantize=True) model.eval() # Run inference import numpy as np image_mlx = mx.array(np.zeros((1, 3, 224, 224), dtype=np.float32)) lang_mlx = mx.array(np.array([[1, 2, 3, 4, 5]], dtype=np.int32)) actions = model.sample_actions(image_mlx, lang_mlx) # [1, 50, 32] ``` ## Quantization - Gemma 2B + expert layers: 4-bit (group_size=64) - SigLIP kept in float16 (fc2 input dim 4304 not divisible by 64) - Total: ~2.4 GB vs ~7.2 GB float16 ## Source Converted from [lerobot/pi05_base](https://huggingface.co/lerobot/pi05_base) original float32 safetensors.