Open-AI's DALL-E for large scale training in mesh-tensorflow.

Overview

DALL-E in Mesh-Tensorflow [WIP]

Open-AI's DALL-E in Mesh-Tensorflow.

If this is similarly efficient to GPT-Neo, this repo should be able to train models up to, and larger than, the size of Open-AI's DALL-E (12B params).

No pretrained models... Yet.

Thanks to Ben Wang for the tf vae implementation as well as getting the mtf version working, and Aran Komatsuzaki for help building the mtf VAE and input pipeline.

Setup

git clone https://github.com/EleutherAI/GPTNeo
cd GPTNeo
pip3 install -r requirements.txt

Training Setup

Runs on TPUs, untested on GPUs but should work in theory. The example configs are designed to run on a TPU v3-32 pod.

To set up TPUs, sign up for Google Cloud Platform, and create a storage bucket.

Create your VM through a google shell (https://ssh.cloud.google.com/) with ctpu up --vm-only so that it can connect to your Google bucket and TPUs and setup the repo as above.

VAE pretraining

DALLE needs a pretrained VAE to compress images to tokens. To run the VAE pretraining, adjust the params in configs/vae_example.json to a glob path pointing to a dataset of jpgs, and adjust image size to the appropriate size.

  "dataset": {
    "train_path": "gs://neo-datasets/CIFAR-10-images/train/**/*.jpg",
    "eval_path": "gs://neo-datasets/CIFAR-10-images/test/**/*.jpg",
    "image_size": 32
  }

Once this is all set up, create your TPU, then run:

python train_vae_tf.py --tpu your_tpu_name --model vae_example

The training logs image tensors and loss values, to check progress, you can run:

tensorboard --logdir your_model_dir

Dataset Creation [DALL-E]

Once the VAE is pretrained, you can move on to DALL-E.

Currently we are training on a dummy dataset. A public, large-scale dataset for DALL-E is in the works. In the meantime, to generate some dummy data, run:

python src/data/create_tfrecords.py

This should download CIFAR-10, and generate some random captions to act as text inputs.

Custom datasets should be formatted in a folder, with a jsonl file in the root folder containing caption data and paths to the respective images, as follows:

Folder structure:

        data_folder
            jsonl_file
            folder_1
                img1
                img2
                ...
            folder_2
                img1
                img2
                ...
            ...

jsonl structure:
    {"image_path": folder_1/img1, "caption": "some words"}
    {"image_path": folder_2/img2, "caption": "more words"}
    ...

you can then use the create_paired_dataset function in src/data/create_tfrecords.py to encode the dataset into tfrecords for use in training.

Once the dataset is created, copy it over to your bucket with gsutil:

gsutil cp -r DALLE-tfrecords gs://neo-datasets/

And finally, run training with

python train_dalle.py --tpu your_tpu_name --model dalle_example

Config Guide

VAE:

{
  "model_type": "vae",
  "dataset": {
    "train_path": "gs://neo-datasets/CIFAR-10-images/train/**/*.jpg", # glob path to training images
    "eval_path": "gs://neo-datasets/CIFAR-10-images/test/**/*.jpg", # glob path to eval images
    "image_size": 32 # size of images (all images will be cropped / padded to this size)
  },
  "train_batch_size": 32, 
  "eval_batch_size": 32,
  "predict_batch_size": 32,
  "steps_per_checkpoint": 1000, # how often to save a checkpoint
  "iterations": 500, # number of batches to infeed to the tpu at a time. Must be < steps_per_checkpoint
  "train_steps": 100000, # total training steps
  "eval_steps": 0, # run evaluation for this many steps every steps_per_checkpoint
  "model_path": "gs://neo-models/vae_test2/", # directory in which to save the model
  "mesh_shape": "data:16,model:2", # mapping of processors to named dimensions - see mesh-tensorflow repo for more info
  "layout": "batch_dim:data", # which named dimensions of the model to split across the mesh - see mesh-tensorflow repo for more info
  "num_tokens": 512, # vocab size
  "dim": 512, 
  "hidden_dim": 64, # size of hidden dim
  "n_channels": 3, # number of input channels
  "bf_16": false, # if true, the model is trained with bfloat16 precision
  "lr": 0.001, # learning rate [by default learning rate starts at this value, then decays to 10% of this value over the course of the training]
  "num_layers": 3, # number of blocks in the encoder / decoder
  "train_gumbel_hard": true, # whether to use hard or soft gumbel_softmax
  "eval_gumbel_hard": true
}

DALL-E:

{
  "model_type": "dalle",
  "dataset": {
    "train_path": "gs://neo-datasets/DALLE-tfrecords/*.tfrecords", # glob path to tfrecords data
    "eval_path": "gs://neo-datasets/DALLE-tfrecords/*.tfrecords",
    "image_size": 32 # size of images (all images will be cropped / padded to this size)
  },
  "train_batch_size": 32, # see above
  "eval_batch_size": 32,
  "predict_batch_size": 32,
  "steps_per_checkpoint": 1000,
  "iterations": 500,
  "train_steps": 100000,
  "predict_steps": 0,
  "eval_steps": 0,
  "n_channels": 3,
  "bf_16": false,
  "lr": 0.001,
  "model_path": "gs://neo-models/dalle_test/",
  "mesh_shape": "data:16,model:2",
  "layout": "batch_dim:data",
  "n_embd": 512, # size of embedding dim
  "text_vocab_size": 50258, # vocabulary size of the text tokenizer
  "image_vocab_size": 512, # vocabulary size of the vae - should equal num_tokens above
  "text_seq_len": 256, # length of text inputs (all inputs longer / shorter will be truncated / padded)
  "n_layers": 6, 
  "n_heads": 4, # number of attention heads. For best performance, n_embd / n_heads should equal 128
  "vae_model": "vae_example" # path to or name of vae model config
}
ChainerRL is a deep reinforcement learning library built on top of Chainer.

ChainerRL and PFRL ChainerRL (this repository) is a deep reinforcement learning library that implements various state-of-the-art deep reinforcement al

Chainer 1.1k Jan 01, 2023
Official PyTorch implementation of paper: Standardized Max Logits: A Simple yet Effective Approach for Identifying Unexpected Road Obstacles in Urban-Scene Segmentation (ICCV 2021 Oral Presentation)

SML (ICCV 2021, Oral) : Official Pytorch Implementation This repository provides the official PyTorch implementation of the following paper: Standardi

SangHun 61 Dec 27, 2022
Deep Learning: Architectures & Methods Project: Deep Learning for Audio Super-Resolution

Deep Learning: Architectures & Methods Project: Deep Learning for Audio Super-Resolution Figure: Example visualization of the method and baseline as a

Oliver Hahn 16 Dec 23, 2022
Code for "Universal inference meets random projections: a scalable test for log-concavity"

How to use this repository This repository contains code to replicate the results of "Universal inference meets random projections: a scalable test fo

Robin Dunn 0 Nov 21, 2021
A Real-World Benchmark for Reinforcement Learning based Recommender System

RL4RS: A Real-World Benchmark for Reinforcement Learning based Recommender System RL4RS is a real-world deep reinforcement learning recommender system

121 Dec 01, 2022
This repo provides function call to track multi-objects in videos

Custom Object Tracking Introduction This repo provides function call to track multi-objects in videos with a given trained object detection model and

Jeff Lo 51 Nov 22, 2022
An implementation of the Contrast Predictive Coding (CPC) method to train audio features in an unsupervised fashion.

CPC_audio This code implements the Contrast Predictive Coding algorithm on audio data, as described in the paper Unsupervised Pretraining Transfers we

Meta Research 283 Dec 30, 2022
MinkLoc++: Lidar and Monocular Image Fusion for Place Recognition

MinkLoc++: Lidar and Monocular Image Fusion for Place Recognition Paper: MinkLoc++: Lidar and Monocular Image Fusion for Place Recognition accepted fo

64 Dec 18, 2022
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
Official implementation of "An Image is Worth 16x16 Words, What is a Video Worth?" (2021 paper)

An Image is Worth 16x16 Words, What is a Video Worth? paper Official PyTorch Implementation Gilad Sharir, Asaf Noy, Lihi Zelnik-Manor DAMO Academy, Al

213 Nov 12, 2022
Official code repository for "Exploring Neural Models for Query-Focused Summarization"

Query-Focused Summarization Official code repository for "Exploring Neural Models for Query-Focused Summarization" This is a work in progress. Expect

Salesforce 29 Dec 18, 2022
PyTorch implementation of VAGAN: Visual Feature Attribution Using Wasserstein GANs

Prototypical Networks for Few shot Learning in PyTorch Simple alternative Implementation of Prototypical Networks for Few Shot Learning (paper, code)

Orobix 93 Aug 17, 2022
Project for music generation system based on object tracking and CGAN

Project for music generation system based on object tracking and CGAN The project was inspired by MIDINet: A Convolutional Generative Adversarial Netw

1 Nov 21, 2021
This is a five-step framework for the development of intrusion detection systems (IDS) using machine learning (ML) considering model realization, and performance evaluation.

AB-TRAP: building invisibility shields to protect network devices The AB-TRAP framework is applicable to the development of Network Intrusion Detectio

Lab-C2DC - Laboratory of Command and Control and Cyber-security 17 Jan 04, 2023
这是一个yolo3-tf2的源码,可以用于训练自己的模型。

YOLOV3:You Only Look Once目标检测模型在Tensorflow2当中的实现 目录 性能情况 Performance 所需环境 Environment 文件下载 Download 训练步骤 How2train 预测步骤 How2predict 评估步骤 How2eval 参考资料

Bubbliiiing 68 Dec 21, 2022
Rotary Transformer

[中文|English] Rotary Transformer Rotary Transformer is an MLM pre-trained language model with rotary position embedding (RoPE). The RoPE is a relative

325 Jan 03, 2023
Official implementation of the method ContIG, for self-supervised learning from medical imaging with genomics

ContIG: Self-supervised Multimodal Contrastive Learning for Medical Imaging with Genetics This is the code implementation of the paper "ContIG: Self-s

Digital Health & Machine Learning 22 Dec 13, 2022
Semantic Segmentation of images using PixelLib with help of Pascalvoc dataset trained with Deeplabv3+ framework.

CARscan- Approach 1 - Segmentation of images by detecting contours. It failed because in images with elements along with cars were also getting detect

Padmanabha Banerjee 5 Jul 29, 2021
An Open-Source Toolkit for Prompt-Learning.

An Open-Source Framework for Prompt-learning. Overview • Installation • How To Use • Docs • Paper • Citation • What's New? Nov 2021: Now we have relea

THUNLP 2.3k Jan 07, 2023
A PyTorch implementation of QANet.

QANet-pytorch NOTICE I'm very busy these months. I'll return to this repo in about 10 days. Introduction An implementation of QANet with PyTorch. Any

H. Z. 343 Nov 03, 2022