Project Icon

CoCa-pytorch

CoCa模型的PyTorch开源实现

CoCa-pytorch项目提供了CoCa(Contrastive Captioners)模型的PyTorch实现。该项目将对比学习融入传统的编码器/解码器transformer,优化了图像到文本的转换。项目采用PaLM的transformer架构,包含单模态、多模态transformers和交叉注意力模块。这一实现为研究和开发图像-文本基础模型提供了有力工具。

CoCa - Pytorch

Implementation of CoCa, Contrastive Captioners are Image-Text Foundation Models, in Pytorch. They were able to elegantly fit in contrastive learning to a conventional encoder / decoder (image to text) transformer, achieving SOTA 91.0% top-1 accuracy on ImageNet with a finetuned encoder.

This repository also chooses to adopt the specific transformer architecture from PaLM, for both the unimodal and multimodal transformers as well as the cross attention blocks (parallel SwiGLU feedforwards)

Update: CoCa has been trained by the good folks over at OpenClip

Install

$ pip install coca-pytorch

Usage

First install the vit-pytorch for the image encoder, which needs to be pretrained

$ pip install vit-pytorch>=0.40.2

Then

import torch

# import vision transformer

from vit_pytorch.simple_vit_with_patch_dropout import SimpleViT
from vit_pytorch.extractor import Extractor

vit = SimpleViT(
    image_size = 256,
    patch_size = 32,
    num_classes = 1000,
    dim = 1024,
    depth = 6,
    heads = 16,
    mlp_dim = 2048,
    patch_dropout = 0.5  # https://arxiv.org/abs/2212.00794
)

vit = Extractor(vit, return_embeddings_only = True, detach = False)

# extractor will enable it so the vision transformer returns its embeddings

# import CoCa and instantiate it

from coca_pytorch.coca_pytorch import CoCa

coca = CoCa(
    dim = 512,                     # model dimension
    img_encoder = vit,             # vision transformer - image encoder, returning image embeddings as (batch, seq, dim)
    image_dim = 1024,              # image embedding dimension, if not the same as model dimensions
    num_tokens = 20000,            # number of text tokens
    unimodal_depth = 6,            # depth of the unimodal transformer
    multimodal_depth = 6,          # depth of the multimodal transformer
    dim_head = 64,                 # dimension per attention head
    heads = 8,                     # number of attention heads
    caption_loss_weight = 1.,      # weight on the autoregressive caption loss
    contrastive_loss_weight = 1.,  # weight on the contrastive loss between image and text CLS embeddings
).cuda()

# mock text and images

text = torch.randint(0, 20000, (4, 512)).cuda()
images = torch.randn(4, 3, 256, 256).cuda()

# train by giving CoCa your text and images with `return_loss = True`

loss = coca(
    text = text,
    images = images,
    return_loss = True  # set this to True to get the full caption + contrastive loss
)

loss.backward()

# do the above for as much text and images...
# then you can get the caption logits as so

logits = coca(
    text = text,
    images = images
) # (4, 512, 20000)

# and the CLIP-like text and image embeddings as

text_embeds, image_embeds = coca(
    text = text,
    images = images,
    return_embeddings = True
) # (4, 512), (4, 512)

Citations

@inproceedings{Yu2022CoCaCC,
  title   = {CoCa: Contrastive Captioners are Image-Text Foundation Models},
  author  = {Jiahui Yu and Zirui Wang and Vijay Vasudevan and Legg Yeung and Mojtaba Seyedhosseini and Yonghui Wu},
  year    = {2022}
}
@inproceedings{Chowdhery2022PaLMSL,
    title   = {PaLM: Scaling Language Modeling with Pathways},
    author  = {Aakanksha Chowdhery and Sharan Narang and Jacob Devlin and Maarten Bosma and Gaurav Mishra and Adam Roberts and Paul Barham and Hyung Won Chung and Charles Sutton and Sebastian Gehrmann and Parker Schuh and Kensen Shi and Sasha Tsvyashchenko and Joshua Maynez and Abhishek Rao and Parker Barnes and Yi Tay and Noam M. Shazeer and Vinodkumar Prabhakaran and Emily Reif and Nan Du and Benton C. Hutchinson and Reiner Pope and James Bradbury and Jacob Austin and Michael Isard and Guy Gur-Ari and Pengcheng Yin and Toju Duke and Anselm Levskaya and Sanjay Ghemawat and Sunipa Dev and Henryk Michalewski and Xavier Garc{\'i}a and Vedant Misra and Kevin Robinson and Liam Fedus and Denny Zhou and Daphne Ippolito and David Luan and Hyeontaek Lim and Barret Zoph and Alexander Spiridonov and Ryan Sepassi and David Dohan and Shivani Agrawal and Mark Omernick and Andrew M. Dai and Thanumalayan Sankaranarayana Pillai and Marie Pellat and Aitor Lewkowycz and Erica Oliveira Moreira and Rewon Child and Oleksandr Polozov and Katherine Lee and Zongwei Zhou and Xuezhi Wang and Brennan Saeta and Mark Diaz and Orhan Firat and Michele Catasta and Jason Wei and Kathleen S. Meier-Hellstern and Douglas Eck and Jeff Dean and Slav Petrov and Noah Fiedel},
    year    = {2022}
}
项目侧边栏1项目侧边栏2
推荐项目
Project Cover

豆包MarsCode

豆包 MarsCode 是一款革命性的编程助手,通过AI技术提供代码补全、单测生成、代码解释和智能问答等功能,支持100+编程语言,与主流编辑器无缝集成,显著提升开发效率和代码质量。

Project Cover

AI写歌

Suno AI是一个革命性的AI音乐创作平台,能在短短30秒内帮助用户创作出一首完整的歌曲。无论是寻找创作灵感还是需要快速制作音乐,Suno AI都是音乐爱好者和专业人士的理想选择。

Project Cover

有言AI

有言平台提供一站式AIGC视频创作解决方案,通过智能技术简化视频制作流程。无论是企业宣传还是个人分享,有言都能帮助用户快速、轻松地制作出专业级别的视频内容。

Project Cover

Kimi

Kimi AI助手提供多语言对话支持,能够阅读和理解用户上传的文件内容,解析网页信息,并结合搜索结果为用户提供详尽的答案。无论是日常咨询还是专业问题,Kimi都能以友好、专业的方式提供帮助。

Project Cover

阿里绘蛙

绘蛙是阿里巴巴集团推出的革命性AI电商营销平台。利用尖端人工智能技术,为商家提供一键生成商品图和营销文案的服务,显著提升内容创作效率和营销效果。适用于淘宝、天猫等电商平台,让商品第一时间被种草。

Project Cover

吐司

探索Tensor.Art平台的独特AI模型,免费访问各种图像生成与AI训练工具,从Stable Diffusion等基础模型开始,轻松实现创新图像生成。体验前沿的AI技术,推动个人和企业的创新发展。

Project Cover

SubCat字幕猫

SubCat字幕猫APP是一款创新的视频播放器,它将改变您观看视频的方式!SubCat结合了先进的人工智能技术,为您提供即时视频字幕翻译,无论是本地视频还是网络流媒体,让您轻松享受各种语言的内容。

Project Cover

美间AI

美间AI创意设计平台,利用前沿AI技术,为设计师和营销人员提供一站式设计解决方案。从智能海报到3D效果图,再到文案生成,美间让创意设计更简单、更高效。

Project Cover

AIWritePaper论文写作

AIWritePaper论文写作是一站式AI论文写作辅助工具,简化了选题、文献检索至论文撰写的整个过程。通过简单设定,平台可快速生成高质量论文大纲和全文,配合图表、参考文献等一应俱全,同时提供开题报告和答辩PPT等增值服务,保障数据安全,有效提升写作效率和论文质量。

投诉举报邮箱: service@vectorlightyear.com
@2024 懂AI·鲁ICP备2024100362号-6·鲁公网安备37021002001498号