metadata
language:
- fi
base_model: LumiOpen/Viking-7B
license: apache-2.0
datasets:
- mpasila/Alpacazord-V1
This is an ExLlamaV2 quantized model in 4bpw of mpasila/Alpacazord-Viking-7B using the default calibration dataset.
Original Model card:
Model Card for Alpacazord-Viking-7B
This is a merge of mpasila/Alpacazord-Viking-LoRA-7B.
LoRA trained with text-generation-webui in 4-bit using LumiOpen/Viking-7B as the base model for 1 epoch. Dataset used with the LoRA is mpasila/Alpacazord-V1.
It uses Alpaca format like so:
{
"instruction,output": "Below is an instruction that describes a task. Write a response that appropriately completes the request.\n\n### Instruction:\n%instruction%\n\n### Response:\n%output%",
"instruction,input,output": "Below is an instruction that describes a task, paired with an input that provides further context. Write a response that appropriately completes the request.\n\n### Instruction:\n%instruction%\n\n### Input:\n%input%\n\n### Response:\n%output%"
}
Merged using this Colab notebook. It might not be the best way to merge a quantized LoRA on to a float16 model but I just wanted to quickly do something. You can try merging it better if you want.
Evaluation
Model | Size | Type | FIN-bench (score) |
---|---|---|---|
mpasila/Alpacazord-Viking-7B | 7B | Instruct | |
mpasila/Finnish-Viking-Alpaca-V1-7B | 7B | Instruct | 0.3943 |
mpasila/NordicAlpaca-Finnish-V1-7B | 7B | Instruct | 0.3891 |
Finnish-NLP/llama-7b-finnish-instruct-v0.1 | 7B | Instruct | 0.4365 |
Finnish-NLP/llama-7b-finnish-instruct-v0.2 | 7B | Instruct | 0.3993 |
Finnish-NLP/llama-7b-finnish | 7B | Base | 0.2350 |
LumiOpen/Viking-7B (1000B) | 7B | Base | 0.3721 |
HPLT/gpt-7b-nordic-prerelease | 7B | Base | 0.3169 |
FIN-bench scores:
Will add later. And possibly other evals?????
Framework versions
- PEFT 0.8.2