--- license: apache-2.0 base_model: OpenMed/OpenMed-NER-PathologyDetect-MultiMed-335M pipeline_tag: token-classification library_name: openmed tags: - openmed - mlx - apple-silicon - token-classification - pii - de-identification - medical - clinical --- # OpenMed-NER-PathologyDetect-MultiMed-335M for OpenMed MLX This repository contains an OpenMed MLX conversion of [`OpenMed/OpenMed-NER-PathologyDetect-MultiMed-335M`](https://huggingface.co/OpenMed/OpenMed-NER-PathologyDetect-MultiMed-335M) for Apple Silicon inference with [OpenMed](https://github.com/maziyarpanahi/openmed). Artifact metadata: - OpenMed MLX task: `token-classification` - OpenMed MLX family: `bert` - Weight format: `safetensors` - Runtime API: `OpenMed MLX token-classification backend` ## OpenMed MLX Status - MLX rollout: refreshed for public access on 2026-06-23 - Hub artifact: OpenMed MLX repository - Source checkpoint: [`OpenMed/OpenMed-NER-PathologyDetect-MultiMed-335M`](https://huggingface.co/OpenMed/OpenMed-NER-PathologyDetect-MultiMed-335M) - Collection: [OpenMed Medical MLX Models](https://huggingface.co/collections/OpenMed/medical-mlx-models) - Runtime: OpenMed Python MLX backend on Apple Silicon - Artifact layout: `config.json`, `id2label.json`, `openmed-mlx.json`, MLX weights, and tokenizer assets ## Use This MLX Snapshot Download this OpenMed MLX artifact directly from the Hub: ```bash hf download OpenMed/OpenMed-NER-PathologyDetect-MultiMed-335M-mlx --local-dir ./OpenMed-NER-PathologyDetect-MultiMed-335M-mlx ``` Use the downloaded directory when you want to pin this exact MLX artifact in an offline or local Apple Silicon workflow. ## Quick Start ```bash pip install openmed pip install "openmed[mlx]" ``` ```python from openmed import analyze_text from openmed.core.config import OpenMedConfig result = analyze_text( "Patient John Doe, DOB 1990-05-15, SSN 123-45-6789", model_name="OpenMed/OpenMed-NER-PathologyDetect-MultiMed-335M", config=OpenMedConfig(backend="mlx"), ) for entity in result.entities: print(entity.label, entity.text, round(entity.confidence, 4)) ``` ## Swift and Apple Apps Use Swift with OpenMedKit, not with MLX weight files directly. 1. Open Xcode and go to File > Add Package Dependencies. 2. Paste the OpenMed repository URL: `https://github.com/maziyarpanahi/openmed` 3. Choose the package product OpenMedKit from the repository. 4. Add a compatible CoreML model bundle plus `id2label.json` to your app target. This MLX model is for Python services on Apple Silicon, local MLX inference on macOS, and Hub-hosted model distribution. If a given environment cannot write `weights.safetensors`, OpenMed falls back to `weights.npz` so the model remains usable. ## Credits - Base checkpoint: [`OpenMed/OpenMed-NER-PathologyDetect-MultiMed-335M`](https://huggingface.co/OpenMed/OpenMed-NER-PathologyDetect-MultiMed-335M) - OpenMed GitHub: [https://github.com/maziyarpanahi/openmed](https://github.com/maziyarpanahi/openmed) - OpenMed website: [https://openmed.life](https://openmed.life) - MLX conversion and runtime support: OpenMed - Swift runtime for Apple apps: OpenMedKit from the OpenMed repository