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metadata
library_name: peft
base_model: meta-llama/Llama-2-7b-hf
license: cc-by-nc-4.0
datasets:
  - meta-math/MetaMathQA
  - open-web-math/open-web-math
  - bigcode/starcoderdata
  - ise-uiuc/Magicoder-Evol-Instruct-110K
language:
  - en

LoRA Learns Less and Forgets Less

These are model checkpoints and LoRA adapters from the research paper "LoRA Learns Less and Forgets Less" (Biderman et al. TMLR, 2024). This work was done in collaboration with Databricks Mosaic AI Research.

Model Details

  • Developed by: Databricks Mosaic AI
  • Model type: Research Artifacts
  • Language(s) (NLP): English
  • License: cc-by-nc-4.0
  • Finetuned from model: Llama-2-7b

We trained Llama-2-7B using full finetuning and LoRA. Model checkpoints and LoRA adapters can be found on HuggingFace here: LoRA-TMLR-2024. Intermediate checkpoints can be found in the branches of the respective models.

All training was done using the Databricks MosaicML composer, streaming, and llm-foundry repositories, as well as the HuggingFace peft library.

Model Sources

Abstract

Low-Rank Adaptation (LoRA) is a widely-used parameter-efficient finetuning method for large language models. LoRA saves memory by training only low rank perturbations to selected weight matrices. In this work, we compare the performance of LoRA and full finetuning on two target domains, programming and mathematics. We consider both the instruction finetuning (≈100K prompt-response pairs) and continued pretraining (≈20B unstructured tokens) data regimes. Our results show that, in the standard low-rank settings, LoRA substantially underperforms full finetuning. Nevertheless, LoRA better maintains the base model’s performance on tasks outside the target domain. We show that LoRA mitigates forgetting more than common regularization techniques such as weight decay and dropout; it also helps maintain more diverse generations. Finally, we show that full finetuning learns perturbations with a rank that is 10-100× greater than typical LoRA configurations, possibly explaining some of the reported gaps. We conclude by proposing best practices for finetuning with LoRA.

Uses

These are research artifacts that are intended for research purposes only.

Training Details

Training Data

The following datasets were used:

Setting Dataset
Continued Pretraining - Code StarCoder-Python
Continued Pretraing - Math OpenWebMath
Instruction Finetuning - Code Magicoder-Evol-Instruct-110K
Instruction Finetuning - Math MetaMathQA

Training Procedure

In all four scenarios below, we use the Llama-2-7B base model meta-llama/Llama-2-7b-hf. For the CPT runs, we use the meta-llama/Llama-2-7b-hf tokenizer, while for the IFT runs we use the meta-llama/Llama-2-7b-chat-hf tokenizer.

Code CPT (StarCoder-Python)

StarCoder-Python (Li et al., 2023a) This dataset consists of permissively licensed repositories from GitHub, including Git commits, in 80+ programming languages. We chose the Python subset and sub-sampled it to 20B tokens.

Parameter Value
seq_len 4096
optimizer decoupled_lionw (betas=[0.9, 0.95])
learning_rate 1.0e-05 for LoRA and Full Finetuning
scheduler inv_sqrt_with_warmup (t_scale=1000ba, t_warmup=1000ba, t_cooldown=5086ba, alpha_f_decay=1, alpha_f_cooldown=0)
weight_decay 1.0e-06
precision amp_bf16
global_train_batch_size 192
device_train_microbatch_size 6
gradient_clipping norm (threshold=1)
num_gpus 32

We trained models for 0.25B, 0.5B, 1B, 2B, 4B, 8B, 16B and 20B tokens. These checkpoints can be found for each LoRA and full finetuning setting in the HuggingFace model branches.

Math CPT (OpenWebMath)

OpenWebMath (Paster et al., 2023) - This dataset contains 14.7B tokens derived from mathematical web pages from Common Crawl, correctly formatted to preserve mathematical content such as LaTeX equations. To match with the StarCoder-Python dataset, we trained on up to 20B tokens, repeating tokens beyond the first 14.7B. An analysis of this dataset shows that it contains a considerable amount of full English sentences.

Parameter Value
max_seq_len 4096
optimizer decoupled_lionw (betas=[0.9, 0.95])
learning_rate 1.0e-05 for full finetuning, 4.0e-05 for LoRA
scheduler inv_sqrt_with_warmup (t_scale=1000ba, t_warmup=1000ba, t_cooldown=5086ba, alpha_f_decay=1, alpha_f_cooldown=0)
weight_decay 0
precision amp_bf16
global_train_batch_size 192
device_train_microbatch_size 6
gradient_clipping norm (threshold=1)
num_gpus 32

We trained models for 0.25B, 0.5B, 1B, 2B, 4B, 8B, 16B and 20B tokens. These checkpoints can be found for each LoRA and full finetuning setting in the HuggingFace model branches.

Code IFT (Magicoder-Evol-Instruct-110K)

Magicoder-Evol-Instruct-110K (Wei et al., 2023) This dataset contains 72.97M tokens of programming questions and answers. It reproduces the “Evol-Instruct” dataset of WizardCoder (Luo et al., 2023b) by iteratively prompting an LLM (GPT-4) to increase the difficulty of a set of question-answer pairs from Code Alpaca (Chaudhary, 2023).

Parameter Value
max_seq_len 4096
optimizer decoupled_lionw (betas=[0.9, 0.95])
learning_rate 5e-5 for full finetuning; 2e-4 for rank r = 16, 64 and 1e-4 for r = 256 α = 2r = 512 (due to instabilities/loss spikes at 2e-4)
scheduler cosine_with_warmup (alpha_f=0.01, t_warmup=0.1dur)
weight_decay 0
precision amp_bf16
global_train_batch_size 192
device_train_microbatch_size 6
gradient_clipping norm (threshold=1)
num_gpus 32

Each model was finetuned separately for 1, 2, 4, 8 and 16 epochs.

Epoch Number of Batches Estimated Tokens
1 193 72,970,000
2 386 145,940,000
4 772 291,880,000
8 1544 583,760,000
16 3088 1,167,520,000

Math IFT (MetaMathQA)

MetaMathQA (Yu et al., 2023) This dataset was built by bootstrapping mathematical word problems from the training sets of GSM8K (Cobbe et al., 2021) and MATH (Hendrycks et al., 2021) by rewriting the questions with variations using GPT-3.5. This dataset contains 395K question-answer pairs and roughly 103M tokens.

Parameter Value
seq_len 1024
optimizer decoupled_lionw (betas=[0.9, 0.95])
learning_rate Full finetuning: 1e-5, LoRA: 1e-4 for r = 16, 64, 5e-5 for r = 256 due to instabilities
scheduler cosine_with_warmup (alpha_f=0.01, t_warmup=0.1dur)
weight_decay 0
precision amp_bf16
global_train_batch_size 768
device_train_microbatch_size 24
gradient_clipping norm (threshold=1)
num_gpus 32

Each model was finetuned separately for 1, 2, 4, 8 and 16 epochs.

Epoch Estimated Tokens
1 103,000,000
2 206,000,000
4 412,000,000
8 824,000,000
16 1,648,000,000

Evaluation

Model performance can be found in the paper LoRA Learns Less and Forgets Less. See Appendix for relevant tables.

Citation

BibTeX:

@article{
biderman2024lora,
title={Lo{RA} Learns Less and Forgets Less},
author={Dan Biderman and Jacob Portes and Jose Javier Gonzalez Ortiz and Mansheej Paul and Philip Greengard and Connor Jennings and Daniel King and Sam Havens and Vitaliy Chiley and Jonathan Frankle and Cody Blakeney and John Patrick Cunningham},
journal={Transactions on Machine Learning Research},
issn={2835-8856},
year={2024},
url={https://openreview.net/forum?id=aloEru2qCG},
note={Featured Certification}
}

Framework versions

  • PEFT 0.11.1