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This is a fork of TimDettmers/bitsandbytes, supposed to build on Jetson Xavier using ARM NEON intrinsics. It compiles without complaints (g++ 9.4.0, Cuda compilation tools, release 11.4, V11.4.315, Build cuda_11.4.r11.4/compiler.31964100_0, pytorch 1.14.0a0+44dac51c.nv23.02) but builds a malfunctioning library. The HF example code produces zero weightsfixed
Pytests on Jetson Xavier:
- test_functional.py:
5 failedPASS - test_autograd.py: 96 failed
- test_modules.py: 3 failed
- test_linear8bitlt.py: 0 failed
- test_optim.py: 0 failed
The bitsandbytes is a lightweight wrapper around CUDA custom functions, in particular 8-bit optimizers, matrix multiplication (LLM.int8()), and quantization functions.
Resources:
-
8-bit Optimizer Paper -- Video -- Docs
-
LLM.int8() Paper -- LLM.int8() Software Blog Post -- LLM.int8() Emergent Features Blog Post
Requirements Python >=3.8. Linux distribution (Ubuntu, MacOS, etc.) + CUDA > 10.0.
(Deprecated: CUDA 10.0 is deprecated and only CUDA >= 11.0) will be supported with release 0.39.0)
Installation:
pip install bitsandbytes
In some cases it can happen that you need to compile from source. If this happens please consider submitting a bug report with python -m bitsandbytes
information. What now follows is some short instructions which might work out of the box if nvcc
is installed. If these do not work see further below.
Compilation quickstart:
git clone https://github.com/timdettmers/bitsandbytes.git
cd bitsandbytes
# CUDA_VERSIONS in {110, 111, 112, 113, 114, 115, 116, 117, 118, 119, 120, 120}
# make argument in {cuda110, cuda11x, cuda12x}
# if you do not know what CUDA you have, try looking at the output of: python -m bitsandbytes
CUDA_VERSION=117 make cuda11x
python setup.py install
Using Int8 inference with HuggingFace Transformers
from transformers import AutoModelForCausalLM
model = AutoModelForCausalLM.from_pretrained(
'decapoda-research/llama-7b-hf,
device_map='auto',
load_in_8bit=True,
max_memory=f'{int(torch.cuda.mem_get_info()[0]/1024**3)-2}GB')
A more detailed example, can be found in examples/int8_inference_huggingface.py.
Using 8-bit optimizer:
- Comment out optimizer:
#torch.optim.Adam(....)
- Add 8-bit optimizer of your choice
bnb.optim.Adam8bit(....)
(arguments stay the same) - Replace embedding layer if necessary:
torch.nn.Embedding(..) -> bnb.nn.Embedding(..)
Using 8-bit Inference:
- Comment out torch.nn.Linear:
#linear = torch.nn.Linear(...)
- Add bnb 8-bit linear light module:
linear = bnb.nn.Linear8bitLt(...)
(base arguments stay the same) - There are two modes:
- Mixed 8-bit training with 16-bit main weights. Pass the argument
has_fp16_weights=True
(default) - Int8 inference. Pass the argument
has_fp16_weights=False
- Mixed 8-bit training with 16-bit main weights. Pass the argument
- To use the full LLM.int8() method, use the
threshold=k
argument. We recommendk=6.0
.
# LLM.int8()
linear = bnb.nn.Linear8bitLt(dim1, dim2, bias=True, has_fp16_weights=False, threshold=6.0)
# inputs need to be fp16
out = linear(x.to(torch.float16))
- 8-bit Matrix multiplication with mixed precision decomposition
- LLM.int8() inference
- 8-bit Optimizers: Adam, AdamW, RMSProp, LARS, LAMB, Lion (saves 75% memory)
- Stable Embedding Layer: Improved stability through better initialization, and normalization
- 8-bit quantization: Quantile, Linear, and Dynamic quantization
- Fast quantile estimation: Up to 100x faster than other algorithms
Requirements: anaconda, cudatoolkit, pytorch
Hardware requirements:
- LLM.int8(): NVIDIA Turing (RTX 20xx; T4) or Ampere GPU (RTX 30xx; A4-A100); (a GPU from 2018 or older).
- 8-bit optimizers and quantization: NVIDIA Kepler GPU or newer (>=GTX 78X).
Supported CUDA versions: 10.2 - 12.0
The bitsandbytes library is currently only supported on Linux distributions. Windows is not supported at the moment.
The requirements can best be fulfilled by installing pytorch via anaconda. You can install PyTorch by following the "Get Started" instructions on the official website.
To install run:
pip install bitsandbytes
For straight Int8 matrix multiplication with mixed precision decomposition you can use bnb.matmul(...)
. To enable mixed precision decomposition, use the threshold parameter:
bnb.matmul(..., threshold=6.0)
For instructions how to use LLM.int8() inference layers in your own code, see the TL;DR above or for extended instruction see this blog post.
With bitsandbytes 8-bit optimizers can be used by changing a single line of code in your codebase. For NLP models we recommend also to use the StableEmbedding layers (see below) which improves results and helps with stable 8-bit optimization. To get started with 8-bit optimizers, it is sufficient to replace your old optimizer with the 8-bit optimizer in the following way:
import bitsandbytes as bnb
# adam = torch.optim.Adam(model.parameters(), lr=0.001, betas=(0.9, 0.995)) # comment out old optimizer
adam = bnb.optim.Adam8bit(model.parameters(), lr=0.001, betas=(0.9, 0.995)) # add bnb optimizer
adam = bnb.optim.Adam(model.parameters(), lr=0.001, betas=(0.9, 0.995), optim_bits=8) # equivalent
torch.nn.Embedding(...) -> bnb.nn.StableEmbedding(...) # recommended for NLP models
Note that by default all parameter tensors with less than 4096 elements are kept at 32-bit even if you initialize those parameters with 8-bit optimizers. This is done since such small tensors do not save much memory and often contain highly variable parameters (biases) or parameters that require high precision (batch norm, layer norm). You can change this behavior like so:
# parameter tensors with less than 16384 values are optimized in 32-bit
# it is recommended to use multiplies of 4096
adam = bnb.optim.Adam8bit(model.parameters(), min_8bit_size=16384)
If you want to optimize some unstable parameters with 32-bit Adam and others with 8-bit Adam, you can use the GlobalOptimManager
. With this, we can also configure specific hyperparameters for particular layers, such as embedding layers. To do that, we need two things: (1) register the parameter while they are still on the CPU, (2) override the config with the new desired hyperparameters (anytime, anywhere). See our guide for more details
To use the Stable Embedding Layer, override the respective build_embedding(...)
function of your model. Make sure to also use the --no-scale-embedding
flag to disable scaling of the word embedding layer (nor replaced with layer norm). You can use the optimizers by replacing the optimizer in the respective file (adam.py
etc.).
For upcoming features and changes and full history see Patch Notes.
- RuntimeError: CUDA error: no kernel image is available for execution on the device. Solution
- _fatbinwrap.. Solution
To compile from source, you need an installation of CUDA. If nvcc
is not installed, you can install the CUDA Toolkit with nvcc through the following commands.
wget https://raw.githubusercontent.com/TimDettmers/bitsandbytes/main/cuda_install.sh
# Syntax cuda_install CUDA_VERSION INSTALL_PREFIX EXPORT_TO_BASH
# CUDA_VERSION in {110, 111, 112, 113, 114, 115, 116, 117, 118, 120, 121}
# EXPORT_TO_BASH in {0, 1} with 0=False and 1=True
# For example, the following installs CUDA 11.8 to ~/local/cuda-11.8 and exports the path to your .bashrc
bash cuda install 118 ~/local 1
To use a specific CUDA version just for a single compile run, you can set the variable CUDA_HOME
, for example the following command compiles libbitsandbytes_cuda117.so
using compiler flags for cuda11x with the cuda version at ~/local/cuda-11.7
:
CUDA_HOME=~/local/cuda-11.7 CUDA_VERSION=117 make cuda11x
For more detailed instruction, please follow the compile_from_source.md instructions.
The majority of bitsandbytes is licensed under MIT, however portions of the project are available under separate license terms: Pytorch is licensed under the BSD license.
We thank Fabio Cannizzo for his work on FastBinarySearch which we use for CPU quantization.
If you found this library and found LLM.int8() useful, please consider citing our work:
@article{dettmers2022llmint8,
title={LLM.int8(): 8-bit Matrix Multiplication for Transformers at Scale},
author={Dettmers, Tim and Lewis, Mike and Belkada, Younes and Zettlemoyer, Luke},
journal={arXiv preprint arXiv:2208.07339},
year={2022}
}
For 8-bit optimizers or quantization routines, please consider citing the following work:
@article{dettmers2022optimizers,
title={8-bit Optimizers via Block-wise Quantization},
author={Dettmers, Tim and Lewis, Mike and Shleifer, Sam and Zettlemoyer, Luke},
journal={9th International Conference on Learning Representations, ICLR},
year={2022}
}