Gryphe/Pantheon-Reasoning-27B · Hugging Face
Mirrored from r/LocalLLaMA for archival readability. Support the source by reading on the original site.
| from Gryphe: An experiment in bringing reasoning capability to the Pantheon roleplay series in the form of an uncensored dense Qwen 3.6 27B. This specific model can be thought of as a successor to both the Pantheon series and the one-time Codex release since I used such a large variety of data this time around. Yet another theory being tested this time around: take the data that Pantheon is built on, pair it with full thinking traces, and let the model reason its way through character work — weighing tone, planning narrative beats, considering how a character would actually respond before committing to a line. Whether that meaningfully improves roleplay quality over a non-reasoning model is a question you'll hopefully be able to help me answer. GGUF quants are available here. Model detailsBase model is llmfan46/Qwen3.6-27B-uncensored-heretic-v2-Native-MTP-Preserved, and from what I can tell this worked out very, very nicely in regards to refusal reduction and writing capabilities. I considered Gemma 4 31B but that model has been an absolute pain to train. Something something special snowflake architectures. (grumble, grumble) All training sources include full reasoning traces, with thinking active across every assistant turn:
The model was trained with [link] [comments] |
More from r/LocalLLaMA
-
Local benchmarks with a RTX 3090 - Qwen3.6 27b vs Ornith
Jul 2
-
July 4th is coming up, is there any vision model that's good for picking up fire?
Jul 2
-
It's officially over. One of the fathers of AI at Nvidia doesn't believe in AGI and compares OpenAI and Anthropic's closed models to AOL and Prodigy's closed internets. Says the future is every business having a customized open source model.
Jul 2
-
6x P40 running Minimax M2.7_Q3_XL
Jul 2
Discussion (0)
Sign in to join the discussion. Free account, 30 seconds — email code or GitHub.
Sign in →No comments yet. Sign in and be the first to say something.