--- license: other library_name: jax tags: - nanopore - signal-reconstruction - audio-codec - flax - jax pipeline_tag: feature-extraction --- # NanoRecon NanoRecon is a Flax/JAX SimVQ-based model for nanopore signal reconstruction. This repository contains inference-ready model weights and the matching architecture config. ## Files - `flax_model.msgpack`: Flax variables for inference only, containing `params` and mutable `vq` codebook variables. - `config.json`: model architecture and signal-shape metadata needed to instantiate the model. The uploaded package is limited to inference assets and does not include local machine paths or private dataset references. ## Loading Example ```python import json from pathlib import Path import jax import jax.numpy as jnp from flax.core import freeze from flax.serialization import from_bytes from codec.models import build_audio_model repo_dir = Path("/path/to/NanoRecon") cfg = json.loads((repo_dir / "config.json").read_text()) model = build_audio_model(cfg["model"]) variables = from_bytes(freeze({"params": {}, "vq": {}}), (repo_dir / "flax_model.msgpack").read_bytes()) x = jnp.zeros((1, cfg["input_signal"]["segment_samples"]), dtype=jnp.float32) rng = jax.random.PRNGKey(0) out = model.apply( variables, x, offset=0, rng=rng, collect_codebook_stats=False, ) reconstructed = out["wave_hat"] ``` ## Notes This model expects normalized nanopore signal chunks with shape `(batch, samples)`. The exported config records the expected chunk size and sample rate. ## Citation No citation metadata has been provided yet.