Implementation of Invariant Point Attention, used for coordinate refinement in the structure module of Alphafold2, as a standalone Pytorch module

Overview

Invariant Point Attention - Pytorch

Implementation of Invariant Point Attention as a standalone module, which was used in the structure module of Alphafold2 for coordinate refinement.

  • write up a test for invariance under rotation
  • enforce float32 for certain operations

Install

$ pip install invariant-point-attention

Usage

import torch
from einops import repeat
from invariant_point_attention import InvariantPointAttention

attn = InvariantPointAttention(
    dim = 64,                  # single (and pairwise) representation dimension
    heads = 8,                 # number of attention heads
    scalar_key_dim = 16,       # scalar query-key dimension
    scalar_value_dim = 16,     # scalar value dimension
    point_key_dim = 4,         # point query-key dimension
    point_value_dim = 4        # point value dimension
)

single_repr   = torch.randn(1, 256, 64)      # (batch x seq x dim)
pairwise_repr = torch.randn(1, 256, 256, 64) # (batch x seq x seq x dim)
mask          = torch.ones(1, 256).bool()    # (batch x seq)

rotations     = repeat(torch.eye(3), '... -> b n ...', b = 1, n = 256)  # (batch x seq x rot1 x rot2) - example is identity
translations  = torch.zeros(1, 256, 3) # translation, also identity for example

attn_out = attn(
    single_repr,
    pairwise_repr,
    rotations = rotations,
    translations = translations,
    mask = mask
)

attn_out.shape # (1, 256, 64)

You can also use this module without the pairwise representations, which is very specific to the Alphafold2 architecture.

import torch
from einops import repeat
from invariant_point_attention import InvariantPointAttention

attn = InvariantPointAttention(
    dim = 64,
    heads = 8,
    require_pairwise_repr = False   # set this to False to use the module without pairwise representations
)

seq           = torch.randn(1, 256, 64)
mask          = torch.ones(1, 256).bool()

rotations     = repeat(torch.eye(3), '... -> b n ...', b = 1, n = 256)
translations  = torch.randn(1, 256, 3)

attn_out = attn(
    seq,
    rotations = rotations,
    translations = translations,
    mask = mask
)

attn_out.shape # (1, 256, 64)

You can also use one IPA-based transformer block, which is an IPA followed by a feedforward. By default it will use post-layernorm as done in the official code, but you can also try pre-layernorm by setting post_norm = False

import torch
from torch import nn
from einops import repeat
from invariant_point_attention import IPABlock

block = IPABlock(
    dim = 64,
    heads = 8,
    scalar_key_dim = 16,
    scalar_value_dim = 16,
    point_key_dim = 4,
    point_value_dim = 4
)

seq           = torch.randn(1, 256, 64)
pairwise_repr = torch.randn(1, 256, 256, 64)
mask          = torch.ones(1, 256).bool()

rotations     = repeat(torch.eye(3), 'r1 r2 -> b n r1 r2', b = 1, n = 256)
translations  = torch.randn(1, 256, 3)

block_out = block(
    seq,
    pairwise_repr = pairwise_repr,
    rotations = rotations,
    translations = translations,
    mask = mask
)

updates = nn.Linear(64, 6)(block_out)
quaternion_update, translation_update = updates.chunk(2, dim = -1) # (1, 256, 3), (1, 256, 3)

# apply updates to rotations and translations for the next iteration

Citations

@Article{AlphaFold2021,
    author  = {Jumper, John and Evans, Richard and Pritzel, Alexander and Green, Tim and Figurnov, Michael and Ronneberger, Olaf and Tunyasuvunakool, Kathryn and Bates, Russ and {\v{Z}}{\'\i}dek, Augustin and Potapenko, Anna and Bridgland, Alex and Meyer, Clemens and Kohl, Simon A A and Ballard, Andrew J and Cowie, Andrew and Romera-Paredes, Bernardino and Nikolov, Stanislav and Jain, Rishub and Adler, Jonas and Back, Trevor and Petersen, Stig and Reiman, David and Clancy, Ellen and Zielinski, Michal and Steinegger, Martin and Pacholska, Michalina and Berghammer, Tamas and Bodenstein, Sebastian and Silver, David and Vinyals, Oriol and Senior, Andrew W and Kavukcuoglu, Koray and Kohli, Pushmeet and Hassabis, Demis},
    journal = {Nature},
    title   = {Highly accurate protein structure prediction with {AlphaFold}},
    year    = {2021},
    doi     = {10.1038/s41586-021-03819-2},
    note    = {(Accelerated article preview)},
}
Comments
  • Computing point dist - use cartesian dimension instead of hidden dimension

    Computing point dist - use cartesian dimension instead of hidden dimension

    https://github.com/lucidrains/invariant-point-attention/blob/2f1fb7ca003d9c94d4144d1f281f8cbc914c01c2/invariant_point_attention/invariant_point_attention.py#L130

    I think it should be dim=-1, thus using the cartesian (xyz) axis, rather than dim=-2, which uses the hidden dimension.

    opened by aced125 3
  • In-place rotation detach not allowed

    In-place rotation detach not allowed

    Hi, this is probably highly version-dependent (I have pytorch=1.11.0, pytorch3d=0.7.0 nightly), but I thought I'd report it. Torch doesn't like the in-place detach of the rotation tensor. Full stack trace (from denoise.py):

    Traceback (most recent call last):
      File "denoise.py", line 56, in <module>
        denoised_coords = net(
      File "/home/pi-user/miniconda3/envs/piai/lib/python3.8/site-packages/torch/nn/modules/module.py", line 1110, in _call_impl
        return forward_call(*input, **kwargs)
      File "/home/pi-user/invariant-point-attention/invariant_point_attention/invariant_point_attention.py", line 336, in forward
        rotations.detach_()
    RuntimeError: Can't detach views in-place. Use detach() instead. If you are using DistributedDataParallel (DDP) for training, and gradient_as_bucket_view is set as True, gradients are views of DDP buckets, and hence detach_() cannot be called on these gradients. To fix this error, please refer to the Optimizer.zero_grad() function in torch/optim/optimizer.py as the solution.
    

    Switching to rotations = rotations.detach() seems to behave correctly (tested in denoise.py and my own code). I'm not totally sure if this allocates a separate tensor, or just creates a new node pointing to the same data.

    opened by sidnarayanan 1
  • Report a bug that causes instability in training

    Report a bug that causes instability in training

    Hi, I would like to report a bug in the rotation, that causes instability in training. https://github.com/lucidrains/invariant-point-attention/blob/de337568959eb7611ba56eace2f642ca41e26216/invariant_point_attention/invariant_point_attention.py#L322

    The IPA Transformer is similar to the structure module in AF2, where the recycling is used. Note that we usually detach the gradient of rotation, which may causes instability during training. The reason is that the gradient of rotation would update the rotation during back propagation, which results in the instability based on experiments. Therefore we usually detach the rotation to dispel the updating effect of gradient descent. I have seen you do this in your alphafold2 repo (https://github.com/lucidrains/alphafold2).

    If you think this is a problem, please let me know. I am happy to submit a pr to fix that.

    Best, Zhangzhi Peng

    opened by pengzhangzhi 1
  • Subtle mistake in the implementation

    Subtle mistake in the implementation

    Hi. Thanks for your implementation. It is very helpful. However, I find that you miss the dropout in the IPAModule.

    https://github.com/lucidrains/invariant-point-attention/blob/de337568959eb7611ba56eace2f642ca41e26216/invariant_point_attention/invariant_point_attention.py#L239

    In the alphafold2 supplementary, the dropout is nested in the layer norm, which also holds true in the layer norm at transition layer (line 9 in the figure below). image

    If you think this is a problem, please let me know. I will submit a pr to fix it. Thanks again for sharing such an amazing repo.

    Best, Zhangzhi Peng

    opened by pengzhangzhi 1
  • change quaternions update as original alphafold2

    change quaternions update as original alphafold2

    In the original alphafold2 IPA module, pure-quaternion (without real part) description is used for quaternion update. This can be broken down to the residual-update-like formulation. But in this code you use (1, a, b, c) style quaternion so I believe the quaternion update should be done as a simple multiply update. As far as I have tested, the loss seems to go down more efficiently with the modification.

    opened by ShintaroMinami 1
  • #126 maybe omit the 'self.point_attn_logits_scale'?

    #126 maybe omit the 'self.point_attn_logits_scale'?

    Hi luci:

    I read the original paper and compare it to your implement, found one place might be some mistake:

    #126. attn_logits_points = -0.5 * (point_dist * point_weights).sum(dim = -1),

    I thought it should be attn_logits_points = -0.5 * (point_dist * point_weights * self.point_attn_logits_scale).sum(dim = -1)

    Thanks for your sharing!

    opened by CiaoHe 1
  • Application of Invariant point attention : preserver part of structure.

    Application of Invariant point attention : preserver part of structure.

    Hi, lucidrian. First of all really thanks for your work!

    I have a question, how can I change(denoise) the structure only in the region I want, how do I do it? (denoise.py)

    opened by hw-protein 0
  • Equivariance test for IPA Transformer

    Equivariance test for IPA Transformer

    @lucidrains I would like to ask about the equivariance of the transformer (not IPA blocks). I wonder if you checked for the equivariance of the output when you allow the transformation of local points to global points using the updated quaternions and translations. I am not sure why this test fails in my case.

    opened by amrhamedp 1
Owner
Phil Wang
Working with Attention
Phil Wang
ReferFormer - Official Implementation of ReferFormer

The official implementation of the paper: Language as Queries for Referring Vide

Jonas Wu 232 Dec 29, 2022
E-RAFT: Dense Optical Flow from Event Cameras

E-RAFT: Dense Optical Flow from Event Cameras This is the code for the paper E-RAFT: Dense Optical Flow from Event Cameras by Mathias Gehrig, Mario Mi

Robotics and Perception Group 71 Dec 12, 2022
DFFNet: An IoT-perceptive Dual Feature Fusion Network for General Real-time Semantic Segmentation

DFFNet Paper DFFNet: An IoT-perceptive Dual Feature Fusion Network for General Real-time Semantic Segmentation. Xiangyan Tang, Wenxuan Tu, Keqiu Li, J

4 Sep 23, 2022
FridaHookAppTool - Frida Hook App Tool With Python

FridaHookAppTool(以下是Hook mpaas框架的例子) mpaas移动开发框架ios端抓包hook脚本 使用方法:链接数据线,开启burp设置

13 Nov 30, 2022
Yolo ros - YOLO-ROS for HUAWEI ATLAS200

YOLO-ROS YOLO-ROS for NVIDIA YOLO-ROS for HUAWEI ATLAS200, please checkout for b

ChrisLiu 5 Oct 18, 2022
Dynamic Visual Reasoning by Learning Differentiable Physics Models from Video and Language (NeurIPS 2021)

VRDP (NeurIPS 2021) Dynamic Visual Reasoning by Learning Differentiable Physics Models from Video and Language Mingyu Ding, Zhenfang Chen, Tao Du, Pin

Mingyu Ding 36 Sep 20, 2022
WORD: Revisiting Organs Segmentation in the Whole Abdominal Region

WORD: Revisiting Organs Segmentation in the Whole Abdominal Region. This repository provides the codebase and dataset for our work WORD: Revisiting Or

Healthcare Intelligence Laboratory 71 Jan 07, 2023
The repository for freeCodeCamp's YouTube course, Algorithmic Trading in Python

Algorithmic Trading in Python This repository Course Outline Section 1: Algorithmic Trading Fundamentals What is Algorithmic Trading? The Differences

Nick McCullum 1.8k Jan 02, 2023
Haze Removal can remove slight to extreme cases of haze affecting an image

Haze Removal can remove slight to extreme cases of haze affecting an image. Its most typical use is for landscape photography where the haze causes low contrast and low saturation, but it can also be

Grace Ugochi Nneji 3 Feb 15, 2022
(Personalized) Page-Rank computation using PyTorch

torch-ppr This package allows calculating page-rank and personalized page-rank via power iteration with PyTorch, which also supports calculation on GP

Max Berrendorf 69 Dec 03, 2022
ROMP: Monocular, One-stage, Regression of Multiple 3D People, ICCV21

Monocular, One-stage, Regression of Multiple 3D People ROMP, accepted by ICCV 2021, is a concise one-stage network for multi-person 3D mesh recovery f

Yu Sun 937 Jan 04, 2023
Distributed Evolutionary Algorithms in Python

DEAP DEAP is a novel evolutionary computation framework for rapid prototyping and testing of ideas. It seeks to make algorithms explicit and data stru

Distributed Evolutionary Algorithms in Python 4.9k Jan 05, 2023
🚩🚩🚩

My CTF Challenges 2021 AIS3 Pre-exam / MyFirstCTF Name Category Keywords Difficulty ⒸⓄⓋⒾⒹ-①⑨ (MyFirstCTF Only) Reverse Baby ★ Piano Reverse C#, .NET ★

6 Oct 28, 2021
Code For TDEER: An Efficient Translating Decoding Schema for Joint Extraction of Entities and Relations (EMNLP2021)

TDEER (WIP) Code For TDEER: An Efficient Translating Decoding Schema for Joint Extraction of Entities and Relations (EMNLP2021) Overview TDEER is an e

Alipay 6 Dec 17, 2022
Implementing Vision Transformer (ViT) in PyTorch

Lightning-Hydra-Template A clean and scalable template to kickstart your deep learning project 🚀 ⚡ 🔥 Click on Use this template to initialize new re

2 Dec 24, 2021
Deep Face Recognition in PyTorch

Face Recognition in PyTorch By Alexey Gruzdev and Vladislav Sovrasov Introduction A repository for different experimental Face Recognition models such

Alexey Gruzdev 141 Sep 11, 2022
Deep Markov Factor Analysis (NeurIPS2021)

Deep Markov Factor Analysis (DMFA) Codes and experiments for deep Markov factor analysis (DMFA) model accepted for publication at NeurIPS2021: A. Farn

Sarah Ostadabbas 2 Dec 16, 2022
Kaggle competition: Springleaf Marketing Response

PruebaEnel Prueba Kaggle-Springleaf-master Prueba Kaggle-Springleaf Kaggle competition: Springleaf Marketing Response Competencia de Kaggle: Marketing

1 Feb 09, 2022
NOMAD - A blackbox optimization software

################################################################################### #

Blackbox Optimization 78 Dec 29, 2022