Avg. Total Time
8.54s
Avg. TTFT
5.91s
Avg. Prefill TPS
689.90
Avg. Gen TPS
17.33
Context Size
32768
Quantization
r64
Engine
aphrodite
Creation Method
Merge
Model Type
Llama70B
Chat Template
Llama 3
Reasoning
No
Vision
No
Parameters
70B
Added At
12/22/2024
license: llama3 license_name: llama3 license_link: LICENSE library_name: transformers tags:
Sunfall (2024-10-28) v0.7.0 trained directly against, and merged with Nemotron 70B Instruct.
It also contains samples from Antracite.Org datasets. See bottom for details.
Significant revamping of the dataset metadata generation process, resulting in higher quality dataset overall. The "Diamond Law" experiment has been removed as it didn't seem to affect the model output enough to warrant set up complexity.
Recommended starting point:
At early context, I recommend keeping XTC disabled. Once you hit higher context sizes (10k+), enabling XTC at 0.1 / 0.5 seems to significantly improve the output, but YMMV. If the output drones on and is uninspiring, XTC can be extremely effective.
General heuristic:
Mergers/fine-tuners: there is a LoRA of this model. Consider merging that instead of merging this model.
This model has been trained on context that mimics that of Silly Tavern's "Llama 3 Instruct" preset, with "Always add character's name to prompt" checked.
The model has also been trained to do interactive storywriting. You may steer the model towards specific content by "responding" to the model like so:
Continue writing adhering to the following scenario: (things you want to happen next)
Additional inclusions (random sampled sub-set, cursorily quality-checked) from:
As such, the dataset is not 100% slop free, but this addition likely helps the model be a better roleplayer. At some point, I intend to clean up and release the samples, deslopped.
Note on training:
The training was done using Fine-Tuning with Very Large Dropout (h/t https://huggingface.co/Envoid/Llama-3.05-NT-Storybreaker-Ministral-70B for the idea) with a LoRA dropout of 0.5 and a constant learning rate of 4e-6. In addition, the model seemed to retain more of Nemotron's smartness by halving the alpha, which is how this merge (and the LoRA adapter configuration) is set up. (The LoRA was trained with alpha=64, and merged with alpha set to 32.)