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Implementation of the GBST block from the Charformer paper, in Pytorch

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Charformer - Pytorch

Implementation of the GBST (gradient-based subword tokenization) module from the Charformer paper, in Pytorch. The paper proposes a module that automatically learns subword representations, obviating the need for tokenizers in the encoder setting.

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Install

$ pip install charformer-pytorch

Usage

import torch
from charformer_pytorch import GBST

tokenizer = GBST(
    num_tokens = 257,             # number of tokens, should be 256 for byte encoding (+ 1 special token for padding in this example)
    dim = 512,                    # dimension of token and intra-block positional embedding
    max_block_size = 4,           # maximum block size
    downsample_factor = 4,        # the final downsample factor by which the sequence length will decrease by
    score_consensus_attn = True   # whether to do the cheap score consensus (aka attention) as in eq. 5 in the paper
)

tokens = torch.randint(0, 257, (1, 1023)) # uneven number of tokens (1023)
mask   = torch.ones(1, 1023).bool()

# both tokens and mask will be appropriately downsampled

tokens, mask = tokenizer(tokens, mask = mask) # (1, 256, 512), (1, 256)

# now pass this on to your transformer

Deviating from the paper, you can also specify block size(s) with different offsets. This is to cover a potential use-case for genomics pre-training, where the tokenizer should be able to learn the correct frame. Simply omit the max_block_size, and pass in blocks as a list of tuples of tuples, each tuple with the format (block size, offset). Offsets must be less than the block size

import torch
from charformer_pytorch import GBST

tokenizer = GBST(
    num_tokens = 4 + 1,
    dim = 512,
    blocks = ((3, 0), (3, 1), (3, 2)),  # block size of 3, with offsets of 0, 1, 2
    downsample_factor = 3,
    score_consensus_attn = True
).cuda()

basepairs = torch.randint(0, 4, (1, 1023)).cuda()
mask      = torch.ones(1, 1023).bool().cuda()

# both basepairs and mask will be appropriately downsampled

basepairs, mask = tokenizer(basepairs, mask = mask)

Citations

@misc{tay2021charformer,
    title   = {Charformer: Fast Character Transformers via Gradient-based Subword Tokenization}, 
    author  = {Yi Tay and Vinh Q. Tran and Sebastian Ruder and Jai Gupta and Hyung Won Chung and Dara Bahri and Zhen Qin and Simon Baumgartner and Cong Yu and Donald Metzler},
    year    = {2021},
    eprint  = {2106.12672},
    archivePrefix = {arXiv},
    primaryClass = {cs.CL}
}