Attach custom heads to transformer models.
Project description
Documentation | Getting Started | Reddit Post with more info
Transformer Heads
This library aims to be an allround toolkit for attaching, training, saving and loading of new heads for transformer models.
A new head could be:
- A linear probe used to get an understanding of the information processing in a transformer architecture
- A head to be finetuned jointly with the weights of a pretrained transformer model to perform a completely different kind of task.
- E.g. a transformer pretrained to do causal language modelling could get a sequence classification head attached and be finetuned to do sentiment classification.
- Or one could attach a regression head to turn a large language model into a value function for a reinforcement learning problem.
On top of that, attaching multiple heads at once can make multi-task learning easy, making it possible to train very general models.
Installation
Install from pypi: pip install transformer-heads
.
Or, clone this repo and from the root of this repository:
pip install -e .
Usage
Create head configurations
head_config = HeadConfig(
name=f"imdb_head_3",
layer_hook=-3, # Attach at the output of the third-to-last transformer-block
in_size=hidden_size,
output_activation="linear",
pred_for_sequence=True,
loss_fct="cross_entropy",
num_outputs=2,
target="label" # The name of the ground-truth column in the dataset
)
Create a model with your head from a pretrained transformer model
model = load_headed(
LlamaForCausalLM,
"meta-llama/Llama-2-7b-hf",
head_configs=[heads_config],
)
Train you model using (for example) the simple to use huggingface Trainer interface:
trainer = Trainer(
model,
args=args,
train_dataset=imdb_dataset["train"],
data_collator=collator,
)
For a more in-depth introduction and a fully working example, check the linear probe notebook.
Joint training of multiple linear probes
Notebooks
This repository contains multiple jupyter notebooks for a tutorial/illustration of how do do certain things with this library. Here is an overview of which notebook you should check out depending on the use you are interested in.
- Linear Probes (understanding the inner workings of transformers)
- Basic example with one probe for causal LM: notebooks/gpt2/linear_probe.ipynb
- Train many probes for causal LM at once: notebooks/gpt2/multi_linear_probe.ipynb
- Train many probes for text classification at once: notebooks/gpt2/text_classification_linear_probe.ipynb
- Finetuning on a new type of task (with a new head)
- QLoRA: notebooks/gpt2/text_classification_qlora.ipynb
- Full finetuning: notebooks/gpt2/text_classification_full_finetune.ipynb
- Joint multi-task learning
- Many heads doing completely different tasks + QLoRA, all trained at the same time: notebooks/gpt2/joint_multitask_learning.ipynb
- Regression with pretrained transformers
- Check the regression heads of this notebook: notebooks/gpt2/joint_multitask_learning.ipynb
- Saving and loading
Joint multi-task training with different types of heads and QLoRA.
More custom loss functions and models
At the state of writing, only a subset of loss functions / models are supported out of the box. At the time of writing, the supported models are Mistral-7b
, LLaMA 2
(all model sizes) and gpt2
. Check transformer_heads/constants.py for more up to date info.
However, it is not so hard to add/use different loss functions/models. You'll just need to add their respective information to loss_fct_map
and model_type_map
. Just import from transformer_heads.constants
. To add a loss function, add a mapping from string to torch class. To add a model add a mapping from model type to a 2 tuple out of attribute name of the base model in the Model Class and Base model class. That may sound confusing, but what that means is just the following:
from transformer_heads.constants import model_type_map, loss_fct_map
import torch.nn as nn
from transformers import MistralModel
loss_fct_map["bce"] = nn.BCELoss()
model_type_map["mistral"] = ("model",MistralModel)
Can my transformer architecture be supported?
One of the basic assumtions of my library is that there is a transformer class such as the LlamaForCausalLM class of huggingface that has an attribute pointing to a base model that outputs raw hidden state. If your transformers model is built up in a similar way, adding support may be as easy as adding an entry to the model_type_map with the name of the attribute and the class of the base model. You can either do that by importing from constants.py or by adding it directly and creating a pull request.
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
Built Distribution
File details
Details for the file transformer_heads-0.0.9.tar.gz
.
File metadata
- Download URL: transformer_heads-0.0.9.tar.gz
- Upload date:
- Size: 148.6 kB
- Tags: Source
- Uploaded using Trusted Publishing? Yes
- Uploaded via: twine/5.0.0 CPython/3.12.2
File hashes
Algorithm | Hash digest | |
---|---|---|
SHA256 | 719d25b75e5c41e4fba96530dbff8c6ee173e95ebd084d37fcb890aab9f0564e |
|
MD5 | 4f941bb4e752b83b3895fd33740d46bf |
|
BLAKE2b-256 | d5a82b2535a372521239690cc07d4307cf48e43e6e6655f100344f709660611e |
File details
Details for the file transformer_heads-0.0.9-py3-none-any.whl
.
File metadata
- Download URL: transformer_heads-0.0.9-py3-none-any.whl
- Upload date:
- Size: 23.7 kB
- Tags: Python 3
- Uploaded using Trusted Publishing? Yes
- Uploaded via: twine/5.0.0 CPython/3.12.2
File hashes
Algorithm | Hash digest | |
---|---|---|
SHA256 | bf3b40ff67a6ed63908680cdaee679a306ed137bbae61f4244906d7be14a0cf3 |
|
MD5 | d70230567ba5b396f6a08795665d77d0 |
|
BLAKE2b-256 | cdd76d5e006fa9ebd35be2ec79a3018dd04b24c66de28f0cd8196d73ee4d78bb |