LLMBox | Training | Utilization
LLMBox is a comprehensive library for implementing LLMs, including a unified training pipeline and comprehensive model evaluation. LLMBox is designed to be a one-stop solution for training and utilizing LLMs. Through a pratical library design, we achieve a high-level of flexibility and efficiency in both training and utilization stages.
Training
- Diverse training strategies: We support multiple training strategies, including Supervised Fine-tuning (
SFT
), Pre-training (PT
),PPO
andDPO
. - Comprehensive SFT datasets: We support 9 SFT datasets as the inputs for training.
- Tokenizer Vocabulary Merging: We support the tokenizer merging function to expand the vocabulary.
- Data Construction Strategies: We currently support merging multiple datasets for training.
Self-Instruct
andEvol-Instruct
are also available to process the dataset. - Parameter Efficient Fine-Tuning:
LoRA
andQLoRA
are supported in SFT or PT. - Efficient Training: We support
Flash Attention
andDeepspeed
for efficient training.
Utilization
- Comprehensive Evaluation: We support 51 commonly used datasets.
- In-Context Learning: We support various ICL strategies, including
KATE
,GlobalE
, andAPE
. - Chain-of-Thought: For some datasets, we support three types of CoT evaluation:
base
,least-to-most
, andpal
. - Evaluation Methods: We currently support three evaluation methods for multiple choice questions or generation questions.
- Prefix Caching: By caching the
past_key_value
of prefix, we can speed up local inference by up to 6x. - vLLM and Flash Attention Support: We also support
vLLM
andFlash Attention
for efficient inference. - Quantization: BitsAndBytes and GPTQ quantization are supported.
git clone https://github.com/RUCAIBox/LLMBox.git && cd LLMBox
pip install -r requirements.txt
You can start with training a SFT model based on LLaMA-2 (7B) with deepspeed3:
cd training
bash download.sh
bash bash/run_7b_ds3.sh
To utilize your model, or evaluate an existing model, you can run the following command:
python inference.py -m gpt-3.5-turbo -d copa # --num_shot 0 --model_type instruction
This is default to run the OpenAI GPT 3.5 turbo model on the CoPA dataset in a zero-shot manner.
LLMBox Training supports various training strategies and dataset construction strategies, along with some efficiency-improving modules. You can train your model with the following command:
python train.py \
--model_name_or_path meta-llama/Llama-2-7b-hf \
--data_path data/ \
--dataset alpaca_data_1k.json \
--output_dir $OUTPUT_DIR \
--num_train_epochs 2 \
--per_device_train_batch_size 8 \
--gradient_accumulation_steps 2 \
--save_strategy "epoch" \
--save_steps 2 \
--save_total_limit 2 \
--learning_rate 1e-5 \
--lr_scheduler_type "constant"
Alternatively, you can use the following preset bash scripts to train your model:
If you want to pre-train your models on corpora with languages or tokens not well-supported in original language mdoels(e.g., LLaMA), we provide the tokenizer merging function to expand the vocabulary based on the corpora by using sentencepiece. You can check merge_tokenizer.py for detailed information. Please follow the guide in Pre-train.
bash bash/run_7b_pt.sh
If you want to train your models with a mix of multiple datasets, you can pass a list of dataset files or names to LLMBox. LLMBox will transfer each file or name into a PTDataset or SFTDataset, and merge them together to construct a combined dataset. You can also set the merging ratio of each dataset by passing a list of floats to LLMBox. Please follow the guide in Merge Dataset.
bash bash/run_7b_hybrid.sh
Since manually creating instruction data of high qualities to train the model is very time-consuming and labor-intensive, Self-Instruct and Evol-Instruct are proposed to create large amounts of instruction data with varying levels of complexity using LLM instead of humans. LLMBox support both Self-Instruct and Evol-Instruct to augment or enhance the input data files. Please follow the guide in Self-Insturct and Evol-Instruct
python self_instruct/self_instruct.py --seed_tasks_path=seed_tasks.jsonl
For more details, view the training documentation.
We provide a broad support on Huggingface models, OpenAI, Anthropic, QWen and models for further utilization. Currently a total of 51 commonly used datasets are supported, including: HellaSwag
, MMLU
, GSM8K
, AGIEval
, CEval
, and CMMLU
. For a full list of supported models and datasets, view the utilization documentation.
CUDA_VISIBLE_DEVICES=0 python inference.py \
-m llama-2-7b-hf \
-d mmlu agieval:[English] \
--model_type instruction \
--num_shot 5 \
--ranking_type ppl_no_option
Performance | |||
Model | get_ppl |
get_prob |
generation |
Hellaswag (0-shot) | MMLU (5-shot) | GSM (8-shot) | |
GPT-3.5 Turbo | 79.98 | 69.25 | 75.13 |
LLaMA-2 (7B) | 76 | 45.95 | 14.63 |
We by default enable prefix caching for efficient evaluation. vLLM is also supported.
Time | |||||
Model | Efficient Method | get_ppl |
get_prob |
generation |
|
Hellaswag (0-shot) | MMLU (5-shot) | GSM (8-shot) | |||
LLaMA-2 (7B) | Vanilla | 0:05:32 | 0:18:30 | 2:10:27 | |
vLLM | 0:06:37 | 0:14:55 | 0:03:36 | ||
Prefix Caching | 0:05:48 | 0:05:51 | 0:17:13 |
You can also use the following command to use vllm:
python inference.py -m ../Llama-2-7b-hf -d mmlu:abstract_algebra,anatomy --vllm True # --prefix_caching False --flash_attention False
To evaluate with quantization, you can use the following command:
python inference.py -m model -d dataset --load_in_4bits # --load_in_8_bits or --gptq
Various types of evaluation methods are supported:
Dataset | Evaluation Method | Variants (Ranking Type) |
GenerationDataset | generation |
|
MultipleChoiceDataset | get_ppl |
ppl_no_option , ppl |
get_prob |
prob |
By default, we use the get_ppl
method with ppl_no_option
ranking type for MultipleChoiceDataset
and the generation
method for GenerationDataset
. You can also use the following command to use the get_prob
method or ppl
variant of get_ppl
for MultipleChoiceDataset:
python inference.py -m model -d dataset --ranking_type prob # or ppl
We also support In-Context Learning and Chain-of-Thought evaluation for some datasets:
python inference.py -m model -d dataset --kate # --globale or --ape
python inference.py -m model -d dataset --cot least_to_most # --base or --pal
For a more detailed instruction on model utilization, view the utilization documentation.
Please let us know if you encounter a bug or have any suggestions by filing an issue.
We welcome all contributions from bug fixes to new features and extensions.
We expect all contributions discussed in the issue tracker and going through PRs.
Make sure to format your code with yapf --style style.cfg
and isort
before submitting a PR.
LLMBox is developed and maintained by AI Box.
LLMBox uses MIT License.
If you find LLMBox useful for your research or development, please cite the following papers: