Author: Henry Ndubuaku (Discord & Docs badges are clickable)
N/B: Codes are implemented pedagogically at the expense of repetition. Each model is purposefully contained in a file without inter-file dependencies.
Developing and training transformer-based models is typically resource-intensive and time-consuming and AI/ML experts frequently need to build smaller-scale versions of these models for specific problems. Jax, a low-resource yet powerful framework, accelerates the development of neural networks and abstracts distributed training, but existing resources for transformer development in Jax are limited. NanoDL addresses this challenge with the following features:
- A wide array of blocks and layers, facilitating the creation of customised transformer models from scratch.
- An extensive selection of models like Gemma, LlaMa3, Mistral, GPT3, GPT4 (inferred), T5, Whisper, ViT, Mixers, CLIP etc.
- Data-parallel distributed trainers models on multiple GPUs or TPUs, without the need for manual training loops.
- Dataloaders, making the process of data handling for Jax/Flax more straightforward and effective.
- Layers not found in Flax/Jax, such as RoPE, GQA, MQA, and SWin attention, allowing for more flexible model development.
- GPU/TPU-accelerated classical ML models like PCA, KMeans, Regression, Gaussian Processes etc.
- True random number generators in Jax which do not need the verbose code.
- A range of advanced algorithms for NLP and computer vision tasks, such as Gaussian Blur, BLEU, Tokenizer etc.
- Each model is contained in a single file with no external dependencies, so the source code can also be easily used.
- True random number generators in Jax which do not need the verbose code (examples shown in next sections).
There are experimental and/or unfinished features (like MAMBA, KAN, BitNet, GAT and RLHF) in the repo which are not yet available via the package, but can be copied from this repo. Feedback on any of our discussion, issue and pull request threads are welcomed! Please report any feature requests, issues, questions or concerns in the Discord, or just let us know what you're working on!
You will need Python 3.9 or later, and working JAX installation, FLAX installation, OPTAX installation (with GPU support for running training, without can only support creations). Models can be designed and tested on CPUs but trainers are all Distributed Data-Parallel which would require a GPU with 1 to N GPUS/TPUS. For CPU-only version of JAX:
pip install --upgrade pip # To support manylinux2010 wheels.
pip install jax flax optax
Then, install nanodl from PyPi:
pip install nanodl
We provide various example usages of the nanodl API.
import jax
import nanodl
import jax.numpy as jnp
from nanodl import ArrayDataset, DataLoader
from nanodl import GPT4, GPTDataParallelTrainer
# Preparing your dataset
batch_size = 8
max_length = 50
vocab_size = 1000
# Create random data
data = nanodl.uniform(
shape=(batch_size, max_length),
minval=0, maxval=vocab_size-1
).astype(jnp.int32)
# Shift to create next-token prediction dataset
dummy_inputs, dummy_targets = data[:, :-1], data[:, 1:]
# Create dataset and dataloader
dataset = ArrayDataset(dummy_inputs, dummy_targets)
dataloader = DataLoader(
dataset, batch_size=batch_size, shuffle=True, drop_last=False
)
# model parameters
hyperparams = {
'num_layers': 1,
'hidden_dim': 256,
'num_heads': 2,
'feedforward_dim': 256,
'dropout': 0.1,
'vocab_size': vocab_size,
'embed_dim': 256,
'max_length': max_length,
'start_token': 0,
'end_token': 50,
}
# Inferred GPT4 model
model = GPT4(**hyperparams)
trainer = GPTDataParallelTrainer(
model, dummy_inputs.shape, 'params.pkl'
)
trainer.train(
train_loader=dataloader, num_epochs=100, val_loader=dataloader
) # use actual val data
# Generating from a start token
start_tokens = jnp.array([[123, 456]])
# Remember to load the trained parameters
params = trainer.load_params('params.pkl')
outputs = model.apply(
{'params': params},
start_tokens,
rngs={'dropout': nanodl.time_rng_key()},
method=model.generate
)
Vision example
import nanodl
import jax.numpy as jnp
from nanodl import ArrayDataset, DataLoader
from nanodl import DiffusionModel, DiffusionDataParallelTrainer
image_size = 32
block_depth = 2
batch_size = 8
widths = [32, 64, 128]
input_shape = (101, image_size, image_size, 3)
images = nanodl.normal(shape=input_shape)
# Use your own images
dataset = ArrayDataset(images)
dataloader = DataLoader(dataset, batch_size=batch_size, shuffle=True, drop_last=False)
# Create diffusion model
diffusion_model = DiffusionModel(image_size, widths, block_depth)
# Training on your data
trainer = DiffusionDataParallelTrainer(diffusion_model,
input_shape=images.shape,
weights_filename='params.pkl',
learning_rate=1e-4)
trainer.train(dataloader, 10)
# Generate some samples: Each model is a Flax.linen module
# Use as you normally would
params = trainer.load_params('params.pkl')
generated_images = diffusion_model.apply({'params': params},
num_images=5,
diffusion_steps=5,
method=diffusion_model.generate)
Audio example
import jax
import jax.numpy as jnp
from nanodl import ArrayDataset, DataLoader
from nanodl import Whisper, WhisperDataParallelTrainer
# Dummy data parameters
batch_size = 8
max_length = 50
embed_dim = 256
vocab_size = 1000
# Generate data: replace with actual tokenised/quantised data
dummy_targets = jnp.ones((101, max_length), dtype=jnp.int32)
dummy_inputs = jnp.ones((101, max_length, embed_dim))
dataset = ArrayDataset(dummy_inputs, dummy_targets)
dataloader = DataLoader(dataset, batch_size=batch_size, shuffle=True, drop_last=False)
# model parameters
hyperparams = {
'num_layers': 1,
'hidden_dim': 256,
'num_heads': 2,
'feedforward_dim': 256,
'dropout': 0.1,
'vocab_size': 1000,
'embed_dim': embed_dim,
'max_length': max_length,
'start_token': 0,
'end_token': 50,
}
# Initialize model
model = Whisper(**hyperparams)
# Training on your data
trainer = WhisperDataParallelTrainer(model,
dummy_inputs.shape,
dummy_targets.shape,
'params.pkl')
trainer.train(dataloader, 2, dataloader)
# Sample inference
params = trainer.load_params('params.pkl')
# for more than one sample, often use model.generate_batch
transcripts = model.apply({'params': params},
dummy_inputs[:1],
method=model.generate)
Reward Model example for RLHF
import nanodl
import jax.numpy as jnp
from nanodl import ArrayDataset, DataLoader
from nanodl import Mistral, RewardModel, RewardDataParallelTrainer
# Generate dummy data
batch_size = 8
max_length = 10
# Replace with actual tokenised data
dummy_chosen = jnp.ones((101, max_length), dtype=jnp.int32)
dummy_rejected = jnp.zeros((101, max_length), dtype=jnp.int32)
# Create dataset and dataloader
dataset = ArrayDataset(dummy_chosen, dummy_rejected)
dataloader = DataLoader(dataset, batch_size=batch_size, shuffle=True, drop_last=False)
# model parameters
hyperparams = {
'num_layers': 1,
'hidden_dim': 256,
'num_heads': 2,
'feedforward_dim': 256,
'dropout': 0.1,
'vocab_size': 1000,
'embed_dim': 256,
'max_length': max_length,
'start_token': 0,
'end_token': 50,
'num_groups': 2,
'window_size': 5,
'shift_size': 2
}
# Initialize reward model from Mistral
model = Mistral(**hyperparams)
reward_model = RewardModel(model, dim=hyperparams['hidden_dim'], dropout=0.1)
# Train the reward model
trainer = RewardDataParallelTrainer(reward_model, dummy_chosen.shape, 'reward_model_weights.pkl')
trainer.train(dataloader, 5, dataloader)
params = trainer.load_params('reward_model_weights.pkl')
# Call as you would a regular Flax model
rewards = reward_model.apply({'params': params},
dummy_chosen,
rngs={'dropout': nanodl.time_rng_key()})
PCA example
import nanodl
from nanodl import PCA
# Use actual data
data = nanodl.normal(shape=(1000, 10))
# Initialise and train PCA model
pca = PCA(n_components=2)
pca.fit(data)
# Get PCA transforms
transformed_data = pca.transform(data)
# Get reverse transforms
original_data = pca.inverse_transform(transformed_data)
# Sample from the distribution
X_sampled = pca.sample(n_samples=1000, key=None)
This is still in dev, works great but roughness is expected, and contributions are therefore highly encouraged!
- Make your changes without changing the design patterns.
- Write tests for your changes if necessary.
- Install locally with
pip3 install -e .
. - Run tests with
python3 -m unittest discover -s tests
. - Then submit a pull request.
Contributions can be made in various forms:
- Writing documentation.
- Fixing bugs.
- Implementing papers.
- Writing high-coverage tests.
- Optimizing existing codes.
- Experimenting and submitting real-world examples to the examples section.
- Reporting bugs.
- Responding to reported issues.
Join the Discord Server for more.
The name "NanoDL" stands for Nano Deep Learning. Models are exploding in size, therefore gate-keeping experts and companies with limited resources from building flexible models without prohibitive costs. Following the success of Phi models, the long-term goal is to build and train nano versions of all available models, while ensuring they compete with the original models in performance, with total number of parameters not exceeding 1B. Trained weights will be made available via this library. Any form of sponsorship, funding will help with training resources. You can either sponsor via GitHub here or reach out via [email protected].
To cite this repository:
@software{nanodl2024github,
author = {Henry Ndubuaku},
title = {NanoDL: A Jax-based library for designing and training transformer models from scratch.},
url = {http://github.com/hmunachi/nanodl},
year = {2024},
}