Skip to main content

8-bit optimizers and quantization routines.

Project description

bitsandbytes

Bitsandbytes is a lightweight wrapper around CUDA custom functions, in particular 8-bit optimizers and quantization functions.

Paper -- Video -- Docs

TL;DR

Installation:

  1. Note down version: conda list | grep cudatoolkit
  2. Replace 111 with the version that you see: pip install bitsandbytes-cuda111

Usage:

  1. Comment out optimizer: #torch.optim.Adam(....)
  2. Add 8-bit optimizer of your choice bnb.optim.Adam8bit(....) (arguments stay the same)
  3. Replace embedding layer if necessary: torch.nn.Embedding(..) -> bnb.nn.Embedding(..)

Features

  • 8-bit Optimizers: Adam, AdamW, RMSProp, LARS, LAMB (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 & Installation

Requirements: anaconda, cudatoolkit, pytorch Hardware requirements: NVIDIA Maxwell GPU or newer (>=GTX 9XX) Supported CUDA versions: 9.2 - 11.3

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.

bitsandbytes is compatible with all major PyTorch releases and cudatoolkit versions, but for now, you need to select the right version manually. To do this run:

conda list | grep cudatoolkit

and take note of the Cuda version that you have installed. Then you can install bitsandbytes via:

# choices: {cuda92, cuda 100, cuda101, cuda102, cuda110, cuda111, cuda113}
# replace XXX with the respective number
pip install bitsandbytes-cudaXXX

To check if your installation was successful, you can execute the following command, which runs a single bnb Adam update.

wget https://gist.githubusercontent.com/TimDettmers/1f5188c6ee6ed69d211b7fe4e381e713/raw/4d17c3d09ccdb57e9ab7eca0171f2ace6e4d2858/check_bnb_install.py && python check_bnb_install.py

Using bitsandbytes

Using the 8-bit Optimizers

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) 

Change Bits and other Hyperparameters for Individual Parameters

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

Fairseq Users

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.).

Release and Feature History

For upcoming features and changes and full history see Patch Notes.

Errors

  1. RuntimeError: CUDA error: no kernel image is available for execution on the device. Solution
  2. _fatbinwrap.. Solution

Compile from source

To compile from source, please follow the compile_from_source.md instructions.

License

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.

Citation

If you found this library and 8-bit optimizers or quantization routines useful, please consider citing out work.

@misc{dettmers2021optim8bit,
      title={8-bit Optimizers via Block-wise Quantization},
      author={Tim Dettmers and Mike Lewis and Sam Shleifer and Luke Zettlemoyer},
      year={2021},
      eprint={2110.02861},
      archivePrefix={arXiv},
      primaryClass={cs.LG}
}

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

bitsandbytes-cuda102-0.26.0.post2.tar.gz (3.7 MB view details)

Uploaded Source

Built Distribution

File details

Details for the file bitsandbytes-cuda102-0.26.0.post2.tar.gz.

File metadata

File hashes

Hashes for bitsandbytes-cuda102-0.26.0.post2.tar.gz
Algorithm Hash digest
SHA256 f42a1b24c0859d9335d70af926fe08e9a8dfbe068a1b3475482576d8006acabe
MD5 39cfaaa5c20f2dc9fbc24b0a0ff6e3b6
BLAKE2b-256 b0b207106076a6fd94b6db343a24362c36361f697b02d1808a8533cd26e646d0

See more details on using hashes here.

File details

Details for the file bitsandbytes_cuda102-0.26.0.post2-py3-none-any.whl.

File metadata

File hashes

Hashes for bitsandbytes_cuda102-0.26.0.post2-py3-none-any.whl
Algorithm Hash digest
SHA256 9ed08903369b68a82a709d5dd1c4e1691a34a6470db517a2796af2b585e0a3f2
MD5 f1c70305ca28a0ff7247eeed843804d7
BLAKE2b-256 5408217f9f3224e63020d8fee02884d3cdd45d783a2599e22ff79522fd18a153

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page