--- title: HyperView VisA Manufacturing emoji: 🏭 colorFrom: gray colorTo: blue sdk: docker app_port: 7860 pinned: false --- # HyperView - VisA Manufacturing Reference Retrieval This Space builds a balanced subset of the VisA industrial visual anomaly dataset and opens HyperView with two side-by-side embedding spaces: - CLIP ViT-B/32 in a Euclidean 2D layout - Hyper3-CLIP `hyper3-clip-v0.5` from the public `hyper-models` provider in a Poincare 2D layout The workflow is inspection reference retrieval: given a production-line inspection image, retrieve the right normal references for the same SKU or product family. This maps to a real manufacturing QA pain point: engineers need to compare a questionable camera frame against the correct part library rather than a visually similar but wrong line or variant. ## Benchmark Context Fresh local probe on 600 VisA samples, using test inspection images as queries and train split images as the normal reference library: | Metric | Hyper3-CLIP | CLIP-B/32 | |---|---:|---:| | Same-SKU mAP | 0.9995 | 0.9924 | | Macaroni2 same-SKU mAP | 1.0000 | 0.9377 | | Same-SKU P@10 | 1.0000 | 0.9983 | | Family P@10 | 1.0000 | 0.9997 | | Off-family leakage@10 | 0.0000 | 0.0003 | The live Space uses a smaller cached interactive subset by default (`VISA_SAMPLES_PER_CATEGORY=4` in local smoke runs) so the maps open quickly. The benchmark table above is the full 600-image protocol. Keep the claim narrow: this is not defect segmentation or anomaly AUROC. It is a reference-retrieval workflow for inspection image libraries, where Hyper3-CLIP keeps same-SKU and same-family references slightly cleaner than CLIP on this sample. Pilot framing: two lines, four SKUs, two weeks, using the plant's normal-reference image library. Success metrics should be wrong-SKU reference retrieval and QA lookup time, not defect segmentation accuracy. Suggested acceptance thresholds: 30%+ faster QA reference lookup, 50%+ fewer wrong-SKU top-10 references versus the current baseline, at least three hard negative SKU families, and a failure report with abstentions/top misses. Run locally from the HyperView repo: ```bash VISA_SAMPLES_PER_CATEGORY=12 HYPERVIEW_PORT=6265 \ uv run python hyperview-spaces/spaces/manufacturing-visa-reference-clip-hyper3clip/demo.py ``` The Docker image installs the bundled latest HyperView wheel for this repo and uses HyperView's public dataset, UI, and panel command APIs. Hyper3-CLIP loads through the public `hyper-models` provider catalog entry for the gated `hyper3labs/hyper3-clip-v0.5` model repository. The Space needs an `HF_TOKEN` secret with access to that model. If unavailable, the Space can start with a clearly labeled CLIP fallback unless `HYPERVIEW_ALLOW_CANDIDATE_FALLBACK=0` is set.