EE-LLM is a framework for large-scale training and inference of early-exit (EE) large language models (LLMs), which is built upon Megatron-LM and compatible with 3D parallelism (namely data, tensor, sequence and pipeline parallelism).
As shown in the above figure, an early-exit LLM can convert intermediate hidden states into outputs. During inference, the model can select adaptively one early/final exit to generate the output for each input, without running the full-model forward pass.
Our system supports two methods of training early-exit LLMs:
- Full-parameter training, which updates model parameters by optimizing a weighted sum of losses from multiple exits;
- EE-Tuning, a parameter-efficient approach that augments an existing pre-trained LLM with early-exit layers and tunes them while modules of the original LLM are frozen.
Further details about the usage and functionalities of EE-LLM are introduced in the following.
The installation of EE-LLM is the same as Megatron-LM. We recommend using the 22.12 version of NGC's PyTorch container (nvcr.io/nvidia/pytorch:22.12-py3), which is also the development environment of EE-LLM.
For more details about the installation of Megatron-LM, please refer to Megatron-LM's README.
Below are several example training scripts used in our EE-LLM paper.
# train 1.3B model
./examples/ee_training/1-3B.sh
# train 7B model
./examples/ee_training/7B.sh
# train 13B model
./examples/ee_training/13B.sh
# train 30B model
./examples/ee_training/30B.sh
The training data used in these scripts can be found in Data-Juicer.
You can modify the DATA_PATH
environment variable in the scripts to use your own dataset.
Note that Megatron-LM can only recognize preprocessed binary data;
for more details about Megatron-LM's data preprocessing, please refer to Data Preprocessing
Running the training scripts requires 16 Nvidia A100-80G GPUs or higher hardware specifications. To run them with fewer GPUs, please set the parallelism degrees therein to smaller values.
Below are some new configurations of EE-LLM compared to Megatron-LM. You can customize your own early-exit LLM by modifying these configurations.
-
--exit-layer-nums
: indices of the Transformer layers converted to early-exit Transformer layers, starting from 1.For example,
--exit-layer-nums 6 12
will add early exits to the 6th and 12th Transformer layers. -
--pre-exit
: If set, the early-exit modules will be placed before the backbone of the Transformer layer, otherwise they will be placed after the backbone by default.For example, the overall model architectures represented by
--exit-layer-nums 6 12
and--exit-layer-nums 7 13 --pre-exit
are the same. -
--untie-exit-output-weights
: If set, each early exit uses a different output word embedding, otherwise all early exits share the same output word embedding. -
--use-exit-norm
: If set, add a Norm layer before the early-exit output word embedding. -
--use-exit-mlp
: If set, add a MLP layer before the early-exit output word embedding. -
--use-exit-block
: If set, add a complete Transformer layer before the early-exit output word embedding.
-
--exit-layer-weight
: The targeted loss weights of early exits. Must correspond to--exit-layer-nums
one-to-one. Default to 1.0. -
--exit-layer-weight-init
: The initial loss weights of early exits, which can be lower or higher than--exit-layer-weight
. -
--exit-layer-weight-warmup-iters
: The number of warm-up/cool-down iterations for early-exit loss weights (fromweight-init
toweight
), default to 0. -
--exit-layer-weight-warmup-style
: The increment function of early-exit loss weights, default to linear. -
--fill-explicit-bubbles
: Enable filling explicit bubbles of the 1F1B pipeline schedule with additional microbatches. [Experimental] -
--num-fill-warmup-microbatches
: The number of microbatches to be inserted during the warm-up phase of the 1F1B schedule. [Experimental] -
--num-fill-cooldown-microbatches
: The number of microbatches to be inserted during the cool-down phase of the 1F1B schedule. [Experimental] -
--backward-forward-ratio
: An estimate of the ratio of time consumption between backward and forward computation during training, used to automatically calculate the optimal number of inserted microbatches. Default to 2.0. [Experimental]
Before using EE-Tuning, please make sure that the existing LLM checkpoint is in Megatron-LM format. As an example,
examples/ee_tuning/convert/convert_llama_hf.sh
provides the functionality of converting the Llama 2 HuggingFace checkpoint into Megatron-LM format.
The first step of EE-Tuning is to use tools/checkpoint/checkpoint_converter.py
to add early-exit layers to the standard LLM checkpoint.
Example scripts can be found in the following file:
./examples/ee_tuning/convert/add_exit_layers.sh
The relevant arguments are listed below:
-
--load-dir
: Path to the standard LLM checkpoint in Megatron-LM format. -
--load-iteration
: The iteration number of the checkpoint to be loaded. -
--save-dir
: Path to the output early-exit LLM checkpoint. -
--add-exit-layer-nums
: Indices of the backbone Transformer layers that early exits are added to. -
--use-exit-norm
: Add layer normalization (LayerNorm/RMSNorm) to the early-exit layer. -
--use-exit-mlp
: Add a MLP to the early-exit layer. -
--use-exit-block
: Add a Transformer layer to the early-exit layer. -
--random-init
: Initialize model parameters of early-exit layers randomly. Otherwise, they are initialized as duplication of certain modules of the original LLM. -
--megatron-path
: Path to EE-LLM root directory.
The second step of EE-Tuning is to tune the early-exit layers of the converted checkpoint, using scripts similar to those for full-parameter training. Below are some example scripts.
# tune Llama 2-Chat 13B with 8 exits
./examples/ee_tuning/tune/llama2_13B_8_exit_mlp_pt.sh
# tune Llama 2-Chat 13B with 1 exit (only load the first 1/4 of the model)
./examples/ee_tuning/tune/llama2_13B_1_exit_mlp_pt.sh
Below are the new parameters relevant to EE-Tuning. Other parameters are the same as those for full-parameter training.
-
--tune-exit
: Activate the functionality of EE-Tuning. -
--tune-exit-pipeline-parallel-size
: Used to support partial checkpoint loading, only load pipeline stages whose stage numbers are not larger than this value.
We provided a text generation server for inference of early-exit LLMs.
To start a server, you can use the following script.
Before running, please set CHECKPOINT_PATH
to the root folder path of the checkpoint, and set TP
and PP
appropriately according to the parallelism degrees of the checkpoint.
./examples/ee_inference/ee_inference_server.sh
After the server is started, you can use tools/request_client.py
to send requests to the server.
Below are some parameters for early-exit LLM inference, which can be found in tools/request_client.py
.
-
use_early_exit
: The early-exit feature is only enabled when this option is set, otherwise the model behaves exactly like a standard model without early exits. -
early_exit_thres
: The confidence threshold used to determine whether to execute early exiting, ranging from 0.0 to 1.0. -
exit_layers
: Only the early-exit layers listed here will be activated. If empty, all available early-exit layers will be activated. -
print_max_prob
: If set, the inference server will print the token with the highest confidence and the confidence values at all exits.
The model checkpoints used in our EE-LLM paper have been released on ModelScope:
- 1.3B model with two early exits at Layer 6 and 12. [link]
- 7B model with two early exits at Layer 8 and 16. [link]
The provided checkpoints have a pipeline parallel size of 4 (PP=4) and a tensor parallel size of 1 (TP=1), please set those values properly in corresponding scripts.
For other parallelism degrees, you can use ./tools/convert_parallelism.sh
to convert the checkpoints.
Note: the above checkpoints are pre-trained base model without any fine-tuning or alignment.
@inproceedings{chen2023eellm,
title={EE-LLM: Large-Scale Training and Inference of Early-Exit Large Language Models with 3D Parallelism},
author={Yanxi Chen and Xuchen Pan and Yaliang Li and Bolin Ding and Jingren Zhou},
year={2024},
booktitle={The Forty-first International Conference on Machine Learning},
}
@misc{pan2024eetuning,
title={EE-Tuning: An Economical yet Scalable Solution for Tuning Early-Exit Large Language Models},
author={Xuchen Pan and Yanxi Chen and Yaliang Li and Bolin Ding and Jingren Zhou},
year={2024},
eprint={2402.00518},
archivePrefix={arXiv},
primaryClass={cs.LG}
}