--- license: mit tags: - interpretability - mechanistic-interpretability - activation-steering - llm - kv-cache - icml-2026 --- # DecodeShare Large artifacts for **DecodeShare: Tracing the Shared Pathways of LLM Decode-Time Decisions**. The corresponding GitHub release branch is: ```text https://github.com/Zishan-Shao/decodeshare/tree/Halo ``` This Hugging Face repository is intended for files that should not live in Git history: - decode-time activation caches - shared-subspace bases - patchback result archives - downstream compression outputs, with oversized profiling caches stored as `.pt.part-*` chunks - selected steering vectors and cached candidate pools - rebuttal mechanism and scaling artifacts that are too bulky for the main GitHub branch The GitHub branch tracks compact code, scripts, summaries, and the full artifact manifest at: ```text docs/artifact_manifest.tsv ``` Suggested layout: ```text artifacts/ Hype1/results/acts/ patch_back/results/ downstream/outputs/ rebuttal/ results/rebuttal_mechanism/ results/rebuttal_scaling/ ``` The 2026-05-10 rebuttal upload is summarized in: ```text docs/REBUTTAL_UPLOAD_2026-05-10.md ``` Install the Hugging Face CLI and upload from the original workspace: ```bash pip install -U huggingface_hub[hf_transfer] hf auth login cd /path/to/decodeshare hf upload Zishan-Shao/decodeshare Hype1/results/acts artifacts/Hype1/results/acts hf upload Zishan-Shao/decodeshare patch_back/results artifacts/patch_back/results ``` For downstream profiling caches, use the split-file workflow in `docs/HUGGINGFACE_UPLOAD.md`. Reassembly notes are included under `artifacts/downstream/outputs/SPLIT_FILES.md` after upload. Model and dataset licenses remain governed by their upstream providers.