license: apache-2.0
Paper: Adapting Language Models to Compress Contexts
Code: https://github.com/princeton-nlp/AutoCompressors
Models:
- Llama-2-7b fine-tuned models: AutoCompressor-Llama-2-7b-6k, FullAttention-Llama-2-7b-6k
- OPT-2.7b fine-tuned models: AutoCompressor-2.7b-6k, AutoCompressor-2.7b-30k, RMT-2.7b-8k, FullAttention-2.7b-4k
- OPT-1.3b fine-tuned models: AutoCompressor-1.3b-30k, RMT-1.3b-30k
AutoCompressor-1.3b-30k is a model fine-tuned from facebook/opt-1.3b following the AutoCompressor method in Adapting Language Models to Compress Contexts. This model is fine-tuned on 2B tokens from Books3 in The Pile. The pre-trained OPT-1.3b model is fine-tuned on sequences of 30,720 tokens with 50 summary vectors, summary accumulation, randomized segmenting, and stop-gradients.
To get started, download the AutoCompressor
repository and load the model as follows:
from auto_compressor import AutoCompressorModel
model = AutoCompressorModel.from_pretrained("princeton-nlp/AutoCompressor-1.3b-30k")
Evaluation
We record the perplexity achieved by our 30k-fine-tuned OPT models on segments of 2,048 tokens sampled from Books3 and ArXiv in The Pile, conditioned on different amounts of context.
Context Tokens | 0 | 14,336 | 28,672 |
---|---|---|---|
RMT-1.3b-30k | 13.18 | 12.50 | 12.50 |
AutoCompressor-1.3b-30k | 13.21 | 12.49 | 12.47 |
AutoCompressor-2.7b-30k | 11.86 | 11.21 | 11.18 |
Bibtex
@misc{chevalier2023adapting,
title={Adapting Language Models to Compress Contexts},
author={Alexis Chevalier and Alexander Wettig and Anirudh Ajith and Danqi Chen},
year={2023},
eprint={2305.14788},
archivePrefix={arXiv},
primaryClass={cs.CL}
}
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