Instructions to use hackshare/curtain-privacy with libraries, inference providers, notebooks, and local apps. Follow these links to get started.
- Libraries
- Transformers.js
How to use hackshare/curtain-privacy with Transformers.js:
// npm i @huggingface/transformers import { pipeline } from '@huggingface/transformers'; // Allocate pipeline const pipe = await pipeline('token-classification', 'hackshare/curtain-privacy');
curtain-privacy
On-device PII redaction: a token classifier plus deterministic recognizers across 24 Latin-script languages, with a reversible-placeholder layer for chat. It runs in the browser, in Node, and on iOS and Android from these same files. Source, training pipeline, whitepaper, and the full model card: https://github.com/hackshare/curtain-privacy
This repo ships in two sizes, selected by revision:
curtain-smallโv2.0.0, 59.9 MB, 12-layer Multilingual-MiniLM with a SentencePiece tokenizer. The default: best multilingual and repeated/leading-name recall.onnx/model_q4.onnxSHA-256c9bfe8a0a9e3cfbb1a8995009259a5195109c8881f16905ef5be58351ad8786f.curtain-tinyโv1.0.0, 14.2 MB, 6-layer MiniLM with a WordPiece tokenizer. The smallest-footprint tier, frozen.onnx/model_q4.onnxSHA-25624ba1f03a8c3db8a4f760d4d266faeb679ba23f8c23f7be9ba6964cbfff6f6c1.
The models are built locally from the committed train/ pipeline; this repo is a
distribution copy. Verify integrity by pinning a revision and checking the hash above.
Integrating
Web and Node (transformers.js)
import { createGuard } from "curtain-privacy";
const guard = await createGuard({ model: "hackshare/curtain-privacy", revision: "v2.0.0" });
const { text } = await guard.protect("My SSN is 472-81-0094");
revision: "v2.0.0" pins the audited curtain-small weights (use v1.0.0 for
curtain-tiny). transformers.js fetches from this repo with permissive CORS, so it
works from any origin. v2.0.0 is a moving pointer to the latest curtain-small
build; to pin an immutable artifact, use the timestamped tag v2.0.0-<timestamp>
published alongside each release.
iOS and Android (ONNX Runtime Mobile)
Fetch or bundle two files from a pinned revision (curtain-small shown; use v1.0.0
for curtain-tiny):
https://huggingface.co/hackshare/curtain-privacy/resolve/v2.0.0/onnx/model_q4.onnxhttps://huggingface.co/hackshare/curtain-privacy/resolve/v2.0.0/tokenizer.json
Verify model_q4.onnx against the SHA-256 above. Load the model with ONNX Runtime
Mobile, tokenize with the Hugging Face tokenizers library (Swift and Kotlin
bindings load tokenizer.json directly) or ONNX Runtime Extensions, then apply the
BIO decode and the default keep-set (CITY, STATE, ZIP_CODE) the library documents.
These are integration guides, not a shipped native SDK.
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// npm i @huggingface/transformers import { pipeline } from '@huggingface/transformers'; // Allocate pipeline const pipe = await pipeline('token-classification', 'hackshare/curtain-privacy');