Skip to main content

Rotary Embedding - Pytorch

Project description

Rotary Embeddings - Pytorch

A standalone library for adding rotary embeddings to transformers in Pytorch, following its success as relative positional encoding. Specifically it will make rotating information into any axis of a tensor easy and efficient, whether they be fixed positional or learned. This library will give you state of the art results for positional embedding, at little costs.

My gut also tells me there is something more to rotations that can be exploited in artificial neural networks.

Potential successor

Install

$ pip install rotary-embedding-torch

Usage

import torch
from rotary_embedding_torch import RotaryEmbedding

# instantiate the positional embedding in your transformer and pass to all your attention layers

rotary_emb = RotaryEmbedding(dim = 32)

# mock queries and keys - dimensions should end with (seq_len, feature dimension), and any number of preceding dimensions (batch, heads, etc)

q = torch.randn(1, 8, 1024, 64) # queries - (batch, heads, seq len, dimension of head)
k = torch.randn(1, 8, 1024, 64) # keys

# apply the rotations to your queries and keys after the heads have been split out, but prior to the dot product and subsequent softmax (attention)

q = rotary_emb.rotate_queries_or_keys(q)
k = rotary_emb.rotate_queries_or_keys(k)

# then do your attention with your queries (q) and keys (k) as usual

If you do all the steps above correctly, you should see a dramatic improvement during training

Inference Key-Value Cache

When dealing with key / value caches at inference, the query position needs to be offset with the key_value_seq_length - query_seq_length

To make this easy, use the rotate_queries_with_cached_keys method

q = torch.randn(1, 8, 1, 64)     # only one query at a time
k = torch.randn(1, 8, 1024, 64)  # key / values with cache concatted

q, k = rotary_emb.rotate_queries_with_cached_keys(q, k)

You can also do this manually like so

q = rotary_emb.rotate_queries_or_keys(q, offset = k.shape[-2] - q.shape[-2])

Axial Rotary Embeddings

For easy use of n-dimensional axial relative positional embedding, ie. video transformers

import torch

from rotary_embedding_torch import (
    RotaryEmbedding,
    apply_rotary_emb
)

pos_emb = RotaryEmbedding(
    dim = 16,
    freqs_for = 'pixel',
    max_freq = 256
)

# queries and keys for frequencies to be rotated into
# say for a video with 8 frames, and rectangular image (feature dimension comes last)

q = torch.randn(1, 8, 64, 32, 64)
k = torch.randn(1, 8, 64, 32, 64)

# get axial frequencies - (8, 64, 32, 16 * 3 = 48)
# will automatically do partial rotary

freqs = pos_emb.get_axial_freqs(8, 64, 32)

# rotate in frequencies

q = apply_rotary_emb(freqs, q)
k = apply_rotary_emb(freqs, k)

Length Extrapolatable Rotary Embeddings

In this paper, they were able to fix length extrapolation issue with rotary embeddings by giving it a decay similar to ALiBi. They named this technique XPos, and you can use it by setting use_xpos = True on initialization.

This can only be used for autoregressive transformers

import torch
from rotary_embedding_torch import RotaryEmbedding

# instantiate the positional embedding in your transformer and pass to all your attention layers

rotary_emb = RotaryEmbedding(
    dim = 32,
    use_xpos = True   # set this to True to make rotary embeddings extrapolate better to sequence lengths greater than the one used at training time
)

# mock queries and keys - dimensions should end with (seq_len, feature dimension), and any number of preceding dimensions (batch, heads, etc)

q = torch.randn(1, 8, 1024, 64) # queries - (batch, heads, seq len, dimension of head)
k = torch.randn(1, 8, 1024, 64) # keys

# apply the rotations to your queries and keys after the heads have been split out, but prior to the dot product and subsequent softmax (attention)

# instead of using `rotate_queries_or_keys`, you will use `rotate_queries_and_keys`, the rest is taken care of

q, k = rotary_emb.rotate_queries_and_keys(q, k)

Interpolating Sequence Positions

This MetaAI paper proposes simply fine-tuning on interpolations of the sequence positions for extending to longer context length for pretrained models. They show this performs much better than simply fine-tuning on the same sequence positions but extended further.

You can use this by setting the interpolate_factor on initialization to a value greater than 1. (ex. if pretrained model was trained on 2048, setting interpolate_factor = 2. would allow fine-tuning to 2048 x 2. = 4096)

Update: someone in the community has reported that it does not work well. please email me if you see either a positive or negative result

import torch
from rotary_embedding_torch import RotaryEmbedding

rotary_emb = RotaryEmbedding(
    dim = 32,
    interpolate_factor = 2.    # add this line of code to pretrained model and fine-tune for ~1000 steps, as shown in paper
)

Fused Flash Attention with Rotary

You can also use a fused Flash Attention kernel that computes attention with rotary embeddings in one pass. It automatically falls back to a reference PyTorch implementation (CPU/GPU) if Triton is not available. It easily supports ignoring tokens from rotations (like CLS or register tokens) by explicitly passing rotary_pos_emb_indices.

import torch
from rotary_embedding_torch import RotaryEmbedding
from rotary_embedding_torch.flash_attn_with_rotary import flash_attn_with_rotary

rotary_emb = RotaryEmbedding(dim = 32)
freqs = rotary_emb.forward(torch.arange(1024))

q = torch.randn(1, 8, 1026, 64).cuda() # 2 extra tokens (e.g. CLS, register)
k = torch.randn(1, 8, 1026, 64).cuda()
v = torch.randn(1, 8, 1026, 64).cuda()

# Indices for the 1024 rotary positions, skipping the first 2 tokens (CLS / register)
pos_indices = torch.arange(1024).cuda() + 2

# fused flash attention with rotary
out = flash_attn_with_rotary(
    q, k, v,
    rotary_pos_emb = freqs,
    rotary_pos_emb_indices = pos_indices,
    is_causal = True
)

Citations

@misc{su2021roformer,
    title   = {RoFormer: Enhanced Transformer with Rotary Position Embedding},
    author  = {Jianlin Su and Yu Lu and Shengfeng Pan and Bo Wen and Yunfeng Liu},
    year    = {2021},
    eprint  = {2104.09864},
    archivePrefix = {arXiv},
    primaryClass = {cs.CL}
}
@inproceedings{Sun2022ALT,
    title     = {A Length-Extrapolatable Transformer},
    author    = {Yutao Sun and Li Dong and Barun Patra and Shuming Ma and Shaohan Huang and Alon Benhaim and Vishrav Chaudhary and Xia Song and Furu Wei},
    year      = {2022}
}
@inproceedings{Chen2023ExtendingCW,
    title   = {Extending Context Window of Large Language Models via Positional Interpolation},
    author  = {Shouyuan Chen and Sherman Wong and Liangjian Chen and Yuandong Tian},
    year    = {2023}
}
@misc{bloc97-2023
    title   = {NTK-Aware Scaled RoPE allows LLaMA models to have extended (8k+) context size without any fine-tuning and minimal perplexity degradation.},
    author  = {/u/bloc97},
    url     = {https://www.reddit.com/r/LocalLLaMA/comments/14lz7j5/ntkaware_scaled_rope_allows_llama_models_to_have/}
}

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

rotary_embedding_torch-0.9.0.tar.gz (13.1 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

rotary_embedding_torch-0.9.0-py3-none-any.whl (17.3 kB view details)

Uploaded Python 3

File details

Details for the file rotary_embedding_torch-0.9.0.tar.gz.

File metadata

File hashes

Hashes for rotary_embedding_torch-0.9.0.tar.gz
Algorithm Hash digest
SHA256 9e4189954cf40faec609ccb1c7bfb804ce6dda148fbd6e4ea684d60b7676569e
MD5 2abae43a0006f32da6444c71c325dc91
BLAKE2b-256 f1f6aedc4e3ed109729325188bf4b9088df66aff2ba71269c242f635fdb837e2

See more details on using hashes here.

File details

Details for the file rotary_embedding_torch-0.9.0-py3-none-any.whl.

File metadata

File hashes

Hashes for rotary_embedding_torch-0.9.0-py3-none-any.whl
Algorithm Hash digest
SHA256 9d208daa7258a8a2cdee071fdae48960e90c9dd7cc67ef16ebeb93425d856e1e
MD5 7cbb266d13952a2a6eff9ca908fb2fec
BLAKE2b-256 58873933140da8fc2f6adab4ea6e9463f92039617abf8bb0509bf49261cd58d0

See more details on using hashes here.

Supported by

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