--- license: apache-2.0 tags: - requests - gguf - abliterated - reap - quantization --- # Request a quant or abliteration Robinson Labs forges open models on a real homelab cluster: abliterated builds, REAP expert-pruned MoE variants, importance-matrix (imatrix) GGUF quant ladders, and custom cluster-fit quants. This repo is where you ask for one. See what we have published: [huggingface.co/RobinsonLabs](https://huggingface.co/RobinsonLabs). ## How to request Open a new **Discussion** (the **Community** tab at the top of this repo) with: - A link to the model on Hugging Face (the original or base repo). - What you want: a GGUF quant ladder, an abliterated build, a REAP-pruned variant, or a fit-quant tuned to a specific VRAM and context budget. - Your target, if you have one: VRAM size, context length, or a specific quant (for example IQ4_XS, Q6_K). One model per Discussion keeps things easy to track. ## What we prioritize We are a one-person homelab, not a quant farm, so we bias toward the gaps, the builds that do not already exist: - **Abliterated builds** where there is no good uncensored variant yet. - **Abliterated REAP / expert-pruned MoE**, a niche almost nobody fills. - **Custom cluster-fit quants** tuned to a real VRAM and context budget (attention-path precision kept high where it counts, experts run lighter). - Models that lack a solid imatrix GGUF ladder. If a model already has good quants from the usual sources, we will likely point you there. Where we add value is the build that is missing. ## What to expect Best-effort, on hardware we own. No SLA, no queue promises. Every release ships with full provenance and credits the upstream base author. On abliterated builds, harm guardrails stay intact by design (self-harm prompts still redirect to help, and the build is not meant to assist genuine wrongdoing). You are responsible for your use of any model published here.