Mistral-SUPRA
This model was initialized from the weights of the Mistral-7B transformer model and up-trained into a linear RNN.
This is an accompanying model of our paper Linearizing Large Language Models, where we detail our process of converting a softmax transformer into a linear transformer, which at inference time can function as both a transformer and a recurrent model. Our linear attention code can be found at https://github.com/TRI-ML/linear_open_lm/
We uptrain Mistral-7B on 100B tokens of RefinedWeb.
Model Details
- Developed by: Toyota Research Institute
- Model Type: This is an auto-regressive language model initialized from Mistral-7B and uptrained into a linear model based on the SUPRA architecture.
- Dataset: Initialized from Mistral-7B. Uprained on 100B tokens of RefinedWeb.
- Tokenizer:
mistralai/Mistral-7B-v0.1
- Library: OpenLM (we use a fork of OpenLM that supports linear attention)
- License: This model is licensed under Apache License, Version 2.0.
Parameters | Hidden Size | Layers | Vocab Size | Sequence Length |
---|---|---|---|---|
7B | 4096 | 32 | 32000 | 2048 |
Training Details
- Mistral-SUPRA was trained using AWS SageMaker on 128 H100 80GB GPUs.
- Training on 100B tokens finished in 1.5 days.
Hyperparameter Value Precision bfloat16
Optimizer AdamW Learning rate 3e-5 LR cooldown end 1e-5 Warmup steps 1000 Batch size 2M QK norm False
Usage
This model was trained using OpenLM. The weights have been converted to be compatible with HuggingFace.
To use the model, you need to first pip install our fork of OpenLM.
pip install git+https://github.com/tri-ml/linear_open_lm.git
Import the OpenLM classes with
from open_lm.open_lm_hf import *
The model can then be loaded normally using AutoTokenizer
and AutoModelForCausalLM
as follows:
from open_lm.open_lm_hf import *
from transformers import AutoTokenizer, AutoModelForCausalLM
tokenizer = AutoTokenizer.from_pretrained("tri-ml/mistral-supra")
model = AutoModelForCausalLM.from_pretrained("tri-ml/mistral-supra")
inputs = tokenizer(["Machine learning is"], return_tensors="pt")
gen_kwargs = {"max_new_tokens": 50, "top_p": 0.8, "temperature": 0.8, "do_sample": True, "repetition_penalty": 1.1}
output = model.generate(inputs['input_ids'], **gen_kwargs)
output = tokenizer.decode(output[0].tolist(), skip_special_tokens=True)
print(output)
# Machine learning is a branch of artificial intelligence (AI) that enables computers to learn from experience without being explicitly programmed. Machine learning is used in a wide range of applications, including spam filtering, image recognition, speech recognition, and computer-based medical diagnosis
The Mistral-SUPRA model can be used both in parallel mode and in recurrent mode. If use_cache
is set to False
for model.generate(...)
, then it will use parallel mode; otherwise, it will use recurrent mode.
The recurrent model uses xformers
and requires the inputs and models to be loaded to GPU.
# Recurrent mode
output = model.to('cuda').generate(inputs['input_ids'].to('cuda'), use_cache=True, **gen_kwargs)
# Parallel mode
output = model.to('cuda').generate(inputs['input_ids'].to('cuda'), use_cache=False, **gen_kwargs)
Performance Evaluation
Our evaluations were done using the Eleuther LM Eval Harness repo.
Below we report the performance of Mistral-SUPRA compared to other similarly sized models.
HellaSwag | PIQA | Winogrande | ARC-E | ARC-C | MMLU (5-shot) | |
---|---|---|---|---|---|---|
Llama2-7B | 76.0 | 79.1 | 69.1 | 76.3 | 46.3 | 45.9 |
Gemma-7B | 80.7 | 81.9 | 73.7 | 81.1 | 53.2 | 62.9 |
Mistral-7B | 81.0 | 82.1 | 74.0 | 80.9 | 53.8 | 62.4 |
RWKV5-1.7T-7B | 73.0 | 78.6 | 72.9 | 75.8 | 45.6 | 34.9 |
Mamba-7B | 77.9 | 81.0 | 71.8 | 77.5 | 46.7 | 33.3 |
Mistral-SUPRA | 77.1 | 80.4 | 70.3 | 75.9 | 45.8 | 34.2 |
How to Cite
If you use this model, please cite our paper on Linearizing Large Language Models.
@article{Mercat2024Linearizing,
title={Linearizing Large Language Models},
author={Jean Mercat and Igor Vasiljevic and Sedrick Keh and Kushal Arora and Achal Dave and Adrien Gaidon and Thomas Kollar},
year={2024},
journal={arXiv preprint arXiv:2405.06640},
}
Citations
OpenLM
@misc{open_lm,
author = {Gururangan, Suchin and Wortsman, Mitchell and Gadre, Samir Yitzhak and Dave, Achal and Kilian, Maciej and Shi, Weijia and Mercat, Jean and Smyrnis, Georgios and Ilharco, Gabriel and Jordan, Matt and Heckel, Reinhard and Dimakis, Alex and Farhadi, Ali and Shankar, Vaishaal and Schmidt, Ludwig},
title = {{open_lm}: a minimal but performative language modeling (LM) repository},
year = {2023},
note = {GitHub repository},
url = {https://github.com/mlfoundations/open_lm/}
}
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Dataset used to train TRI-ML/mistral-supra
Evaluation results
- accuracy on MMLUself-reported34.200
- accuracy on HellaSwagself-reported77.100
- accuracy on PIQAself-reported80.400
- accuracy on Winograndeself-reported70.300
- accuracy on ARC-Eself-reported75.900
- accuracy on ARC-Cself-reported45.800